Commit graph

2192 commits

Author SHA1 Message Date
Zee Chen 985b38dd2f [SPARK-11390][SQL] Query plan with/without filterPushdown indistinguishable
…ishable

Propagate pushed filters to PhyicalRDD in DataSourceStrategy.apply

Author: Zee Chen <zeechen@us.ibm.com>

Closes #9679 from zeocio/spark-11390.
2015-11-16 14:21:28 -08:00
hyukjinkwon e388b39d10 [SPARK-11692][SQL] Support for Parquet logical types, JSON and BSON (embedded types)
Parquet supports some JSON and BSON datatypes. They are represented as binary for BSON and string (UTF-8) for JSON internally.

I searched a bit and found Apache drill also supports both in this way, [link](https://drill.apache.org/docs/parquet-format/).

Author: hyukjinkwon <gurwls223@gmail.com>
Author: Hyukjin Kwon <gurwls223@gmail.com>

Closes #9658 from HyukjinKwon/SPARK-11692.
2015-11-16 21:59:33 +08:00
hyukjinkwon 7f8eb3bf6e [SPARK-11044][SQL] Parquet writer version fixed as version1
https://issues.apache.org/jira/browse/SPARK-11044

Spark writes a parquet file only with writer version1 ignoring the writer version given by user.

So, in this PR, it keeps the writer version if given or sets version1 as default.

Author: hyukjinkwon <gurwls223@gmail.com>
Author: HyukjinKwon <gurwls223@gmail.com>

Closes #9060 from HyukjinKwon/SPARK-11044.
2015-11-16 21:30:10 +08:00
Reynold Xin 42de5253f3 [SPARK-11745][SQL] Enable more JSON parsing options
This patch adds the following options to the JSON data source, for dealing with non-standard JSON files:
* `allowComments` (default `false`): ignores Java/C++ style comment in JSON records
* `allowUnquotedFieldNames` (default `false`): allows unquoted JSON field names
* `allowSingleQuotes` (default `true`): allows single quotes in addition to double quotes
* `allowNumericLeadingZeros` (default `false`): allows leading zeros in numbers (e.g. 00012)

To avoid passing a lot of options throughout the json package, I introduced a new JSONOptions case class to define all JSON config options.

Also updated documentation to explain these options.

Scala

![screen shot 2015-11-15 at 6 12 12 pm](https://cloud.githubusercontent.com/assets/323388/11172965/e3ace6ec-8bc4-11e5-805e-2d78f80d0ed6.png)

Python

![screen shot 2015-11-15 at 6 11 28 pm](https://cloud.githubusercontent.com/assets/323388/11172964/e23ed6ee-8bc4-11e5-8216-312f5983acd5.png)

Author: Reynold Xin <rxin@databricks.com>

Closes #9724 from rxin/SPARK-11745.
2015-11-16 00:06:14 -08:00
gatorsmile b58765caa6 [SPARK-9928][SQL] Removal of LogicalLocalTable
LogicalLocalTable in ExistingRDD.scala is replaced by localRelation in LocalRelation.scala?

Do you know any reason why we still keep this class?

Author: gatorsmile <gatorsmile@gmail.com>

Closes #9717 from gatorsmile/LogicalLocalTable.
2015-11-15 21:10:46 -08:00
Yin Huai 3e2e1873b2 [SPARK-11738] [SQL] Making ArrayType orderable
https://issues.apache.org/jira/browse/SPARK-11738

Author: Yin Huai <yhuai@databricks.com>

Closes #9718 from yhuai/makingArrayOrderable.
2015-11-15 13:59:59 -08:00
Reynold Xin d22fc10887 [SPARK-11734][SQL] Rename TungstenProject -> Project, TungstenSort -> Sort
I didn't remove the old Sort operator, since we still use it in randomized tests. I moved it into test module and renamed it ReferenceSort.

Author: Reynold Xin <rxin@databricks.com>

Closes #9700 from rxin/SPARK-11734.
2015-11-15 10:33:53 -08:00
Yin Huai d83c2f9f0b [SPARK-11736][SQL] Add monotonically_increasing_id to function registry.
https://issues.apache.org/jira/browse/SPARK-11736

Author: Yin Huai <yhuai@databricks.com>

Closes #9703 from yhuai/MonotonicallyIncreasingID.
2015-11-14 21:04:18 -08:00
hyukjinkwon 139c15b624 [SPARK-11694][SQL] Parquet logical types are not being tested properly
All the physical types are properly tested at `ParquetIOSuite` but logical type mapping is not being tested.

Author: hyukjinkwon <gurwls223@gmail.com>
Author: Hyukjin Kwon <gurwls223@gmail.com>

Closes #9660 from HyukjinKwon/SPARK-11694.
2015-11-14 18:36:01 +08:00
nitin goyal c939c70ac1 [SPARK-7970] Skip closure cleaning for SQL operations
Also introduces new spark private API in RDD.scala with name 'mapPartitionsInternal' which doesn't closure cleans the RDD elements.

Author: nitin goyal <nitin.goyal@guavus.com>
Author: nitin.goyal <nitin.goyal@guavus.com>

Closes #9253 from nitin2goyal/master.
2015-11-13 18:09:08 -08:00
Wenchen Fan d7b2b97ad6 [SPARK-11727][SQL] Split ExpressionEncoder into FlatEncoder and ProductEncoder
also add more tests for encoders, and fix bugs that I found:

* when convert array to catalyst array, we can only skip element conversion for native types(e.g. int, long, boolean), not `AtomicType`(String is AtomicType but we need to convert it)
* we should also handle scala `BigDecimal` when convert from catalyst `Decimal`.
* complex map type should be supported

other issues that still in investigation:

* encode java `BigDecimal` and decode it back, seems we will loss precision info.
* when encode case class that defined inside a object, `ClassNotFound` exception will be thrown.

I'll remove unused code in a follow-up PR.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #9693 from cloud-fan/split.
2015-11-13 11:25:33 -08:00
Wenchen Fan 23b8188f75 [SPARK-11654][SQL][FOLLOW-UP] fix some mistakes and clean up
* rename `AppendColumn` to `AppendColumns` to be consistent with the physical plan name.
* clean up stale comments.
* always pass in resolved encoder to `TypedColumn.withInputType`(test added)
* enable a mistakenly disabled java test.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #9688 from cloud-fan/follow.
2015-11-13 11:13:09 -08:00
Yin Huai 7b5d9051cf [SPARK-11678][SQL] Partition discovery should stop at the root path of the table.
https://issues.apache.org/jira/browse/SPARK-11678

The change of this PR is to pass root paths of table to the partition discovery logic. So, the process of partition discovery stops at those root paths instead of going all the way to the root path of the file system.

Author: Yin Huai <yhuai@databricks.com>

Closes #9651 from yhuai/SPARK-11678.
2015-11-13 18:36:56 +08:00
Michael Armbrust 41bbd23004 [SPARK-11654][SQL] add reduce to GroupedDataset
This PR adds a new method, `reduce`, to `GroupedDataset`, which allows similar operations to `reduceByKey` on a traditional `PairRDD`.

```scala
val ds = Seq("abc", "xyz", "hello").toDS()
ds.groupBy(_.length).reduce(_ + _).collect()  // not actually commutative :P

res0: Array(3 -> "abcxyz", 5 -> "hello")
```

While implementing this method and its test cases several more deficiencies were found in our encoder handling.  Specifically, in order to support positional resolution, named resolution and tuple composition, it is important to keep the unresolved encoder around and to use it when constructing new `Datasets` with the same object type but different output attributes.  We now divide the encoder lifecycle into three phases (that mirror the lifecycle of standard expressions) and have checks at various boundaries:

 - Unresoved Encoders: all users facing encoders (those constructed by implicits, static methods, or tuple composition) are unresolved, meaning they have only `UnresolvedAttributes` for named fields and `BoundReferences` for fields accessed by ordinal.
 - Resolved Encoders: internal to a `[Grouped]Dataset` the encoder is resolved, meaning all input has been resolved to a specific `AttributeReference`.  Any encoders that are placed into a logical plan for use in object construction should be resolved.
 - BoundEncoder: Are constructed by physical plans, right before actual conversion from row -> object is performed.

It is left to future work to add explicit checks for resolution and provide good error messages when it fails.  We might also consider enforcing the above constraints in the type system (i.e. `fromRow` only exists on a `ResolvedEncoder`), but we should probably wait before spending too much time on this.

Author: Michael Armbrust <michael@databricks.com>
Author: Wenchen Fan <wenchen@databricks.com>

Closes #9673 from marmbrus/pr/9628.
2015-11-12 17:20:30 -08:00
JihongMa d292f74831 [SPARK-11420] Updating Stddev support via Imperative Aggregate
switched stddev support from DeclarativeAggregate to ImperativeAggregate.

Author: JihongMa <linlin200605@gmail.com>

Closes #9380 from JihongMA/SPARK-11420.
2015-11-12 13:47:34 -08:00
hyukjinkwon f5a9526fec [SPARK-10113][SQL] Explicit error message for unsigned Parquet logical types
Parquet supports some unsigned datatypes. However, Since Spark does not support unsigned datatypes, it needs to emit an exception with a clear message rather then with the one saying illegal datatype.

Author: hyukjinkwon <gurwls223@gmail.com>

Closes #9646 from HyukjinKwon/SPARK-10113.
2015-11-12 12:29:50 -08:00
Reynold Xin 30e7433643 [SPARK-11673][SQL] Remove the normal Project physical operator (and keep TungstenProject)
Also make full outer join being able to produce UnsafeRows.

Author: Reynold Xin <rxin@databricks.com>

Closes #9643 from rxin/SPARK-11673.
2015-11-12 08:14:08 -08:00
Yin Huai 14cf753704 [SPARK-11661][SQL] Still pushdown filters returned by unhandledFilters.
https://issues.apache.org/jira/browse/SPARK-11661

Author: Yin Huai <yhuai@databricks.com>

Closes #9634 from yhuai/unhandledFilters.
2015-11-12 16:47:00 +08:00
Daoyuan Wang 39b1e36fbc [SPARK-11396] [SQL] add native implementation of datetime function to_unix_timestamp
`to_unix_timestamp` is the deterministic version of `unix_timestamp`, as it accepts at least one parameters.

Since the behavior here is quite similar to `unix_timestamp`, I think the dataframe API is not necessary here.

Author: Daoyuan Wang <daoyuan.wang@intel.com>

Closes #9347 from adrian-wang/to_unix_timestamp.
2015-11-11 20:36:21 -08:00
Reynold Xin e49e723392 [SPARK-11675][SQL] Remove shuffle hash joins.
Author: Reynold Xin <rxin@databricks.com>

Closes #9645 from rxin/SPARK-11675.
2015-11-11 19:32:52 -08:00
Andrew Ray b8ff6888e7 [SPARK-8992][SQL] Add pivot to dataframe api
This adds a pivot method to the dataframe api.

Following the lead of cube and rollup this adds a Pivot operator that is translated into an Aggregate by the analyzer.

Currently the syntax is like:
~~courseSales.pivot(Seq($"year"), $"course", Seq("dotNET", "Java"), sum($"earnings"))~~

~~Would we be interested in the following syntax also/alternatively? and~~

    courseSales.groupBy($"year").pivot($"course", "dotNET", "Java").agg(sum($"earnings"))
    //or
    courseSales.groupBy($"year").pivot($"course").agg(sum($"earnings"))

Later we can add it to `SQLParser`, but as Hive doesn't support it we cant add it there, right?

~~Also what would be the suggested Java friendly method signature for this?~~

Author: Andrew Ray <ray.andrew@gmail.com>

Closes #7841 from aray/sql-pivot.
2015-11-11 16:23:24 -08:00
Reynold Xin a9a6b80c71 [SPARK-11645][SQL] Remove OpenHashSet for the old aggregate.
Author: Reynold Xin <rxin@databricks.com>

Closes #9621 from rxin/SPARK-11645.
2015-11-11 12:48:51 -08:00
Reynold Xin df97df2b39 [SPARK-11644][SQL] Remove the option to turn off unsafe and codegen.
Author: Reynold Xin <rxin@databricks.com>

Closes #9618 from rxin/SPARK-11644.
2015-11-11 12:47:02 -08:00
Josh Rosen 529a1d3380 [SPARK-6152] Use shaded ASM5 to support closure cleaning of Java 8 compiled classes
This patch modifies Spark's closure cleaner (and a few other places) to use ASM 5, which is necessary in order to support cleaning of closures that were compiled by Java 8.

In order to avoid ASM dependency conflicts, Spark excludes ASM from all of its dependencies and uses a shaded version of ASM 4 that comes from `reflectasm` (see [SPARK-782](https://issues.apache.org/jira/browse/SPARK-782) and #232). This patch updates Spark to use a shaded version of ASM 5.0.4 that was published by the Apache XBean project; the POM used to create the shaded artifact can be found at https://github.com/apache/geronimo-xbean/blob/xbean-4.4/xbean-asm5-shaded/pom.xml.

http://movingfulcrum.tumblr.com/post/80826553604/asm-framework-50-the-missing-migration-guide was a useful resource while upgrading the code to use the new ASM5 opcodes.

I also added a new regression tests in the `java8-tests` subproject; the existing tests were insufficient to catch this bug, which only affected Scala 2.11 user code which was compiled targeting Java 8.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #9512 from JoshRosen/SPARK-6152.
2015-11-11 11:16:39 -08:00
Wenchen Fan e71ba56586 [SQL][MINOR] remove newLongEncoder in functions
it may shadows the one from implicits in some case.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #9629 from cloud-fan/minor.
2015-11-11 11:04:04 -08:00
Wenchen Fan ec2b807212 [SPARK-11564][SQL][FOLLOW-UP] clean up java tuple encoder
We need to support custom classes like java beans and combine them into tuple, and it's very hard to do it with the  TypeTag-based approach.
We should keep only the compose-based way to create tuple encoder.

This PR also move `Encoder` to `org.apache.spark.sql`

Author: Wenchen Fan <wenchen@databricks.com>

Closes #9567 from cloud-fan/java.
2015-11-11 10:52:23 -08:00
Wenchen Fan 9c57bc0efc [SPARK-11656][SQL] support typed aggregate in project list
insert `aEncoder` like we do in `agg`

Author: Wenchen Fan <wenchen@databricks.com>

Closes #9630 from cloud-fan/select.
2015-11-11 10:21:53 -08:00
Wenchen Fan c964fc1015 [SQL][MINOR] rename present to finish in Aggregator
Author: Wenchen Fan <wenchen@databricks.com>

Closes #9617 from cloud-fan/tmp.
2015-11-11 10:19:09 -08:00
hyukjinkwon 1bc41125ee [SPARK-11500][SQL] Not deterministic order of columns when using merging schemas.
https://issues.apache.org/jira/browse/SPARK-11500

As filed in SPARK-11500, if merging schemas is enabled, the order of files to touch is a matter which might affect the ordering of the output columns.

This was mostly because of the use of `Set` and `Map` so I replaced them to `LinkedHashSet` and `LinkedHashMap` to keep the insertion order.

Also, I changed `reduceOption` to `reduceLeftOption`, and replaced the order of `filesToTouch` from `metadataStatuses ++ commonMetadataStatuses ++ needMerged` to  `needMerged ++ metadataStatuses ++ commonMetadataStatuses` in order to touch the part-files first which always have the schema in footers whereas the others might not exist.

One nit is, If merging schemas is not enabled, but when multiple files are given, there is no guarantee of the output order, since there might not be a summary file for the first file, which ends up putting ahead the columns of the other files.

However, I thought this should be okay since disabling merging schemas means (assumes) all the files have the same schemas.

In addition, in the test code for this, I only checked the names of fields.

Author: hyukjinkwon <gurwls223@gmail.com>

Closes #9517 from HyukjinKwon/SPARK-11500.
2015-11-11 16:46:04 +08:00
Marc Prud'hommeaux 745e45d5ff [MINOR] License header formatting fix
The header wasn't indented properly.

Author: Marc Prud'hommeaux <mwp1@cornell.edu>

Closes #9312 from mprudhom/patch-1.
2015-11-10 16:57:12 -08:00
tedyu 9009175416 [SPARK-11615] Drop @VisibleForTesting annotation
See http://search-hadoop.com/m/q3RTtjpe8r1iRbTj2 for discussion.

Summary: addition of VisibleForTesting annotation resulted in spark-shell malfunctioning.

Author: tedyu <yuzhihong@gmail.com>

Closes #9585 from tedyu/master.
2015-11-10 16:52:59 -08:00
Yin Huai 3121e78168 [SPARK-9830][SPARK-11641][SQL][FOLLOW-UP] Remove AggregateExpression1 and update toString of Exchange
https://issues.apache.org/jira/browse/SPARK-9830

This is the follow-up pr for https://github.com/apache/spark/pull/9556 to address davies' comments.

Author: Yin Huai <yhuai@databricks.com>

Closes #9607 from yhuai/removeAgg1-followup.
2015-11-10 16:25:22 -08:00
Michael Armbrust 724cf7a38c [SPARK-11616][SQL] Improve toString for Dataset
Author: Michael Armbrust <michael@databricks.com>

Closes #9586 from marmbrus/dataset-toString.
2015-11-10 14:30:19 -08:00
Nong Li 87aedc48c0 [SPARK-10371][SQL] Implement subexpr elimination for UnsafeProjections
This patch adds the building blocks for codegening subexpr elimination and implements
it end to end for UnsafeProjection. The building blocks can be used to do the same thing
for other operators.

It introduces some utilities to compute common sub expressions. Expressions can be added to
this data structure. The expr and its children will be recursively matched against existing
expressions (ones previously added) and grouped into common groups. This is built using
the existing `semanticEquals`. It does not understand things like commutative or associative
expressions. This can be done as future work.

After building this data structure, the codegen process takes advantage of it by:
  1. Generating a helper function in the generated class that computes the common
     subexpression. This is done for all common subexpressions that have at least
     two occurrences and the expression tree is sufficiently complex.
  2. When generating the apply() function, if the helper function exists, call that
     instead of regenerating the expression tree. Repeated calls to the helper function
     shortcircuit the evaluation logic.

Author: Nong Li <nong@databricks.com>
Author: Nong Li <nongli@gmail.com>

This patch had conflicts when merged, resolved by
Committer: Michael Armbrust <michael@databricks.com>

Closes #9480 from nongli/spark-10371.
2015-11-10 11:28:53 -08:00
Wenchen Fan 53600854c2 [SPARK-11590][SQL] use native json_tuple in lateral view
Author: Wenchen Fan <wenchen@databricks.com>

Closes #9562 from cloud-fan/json-tuple.
2015-11-10 11:21:31 -08:00
Wenchen Fan dfcfcbcc04 [SPARK-11578][SQL][FOLLOW-UP] complete the user facing api for typed aggregation
Currently the user facing api for typed aggregation has some limitations:

* the customized typed aggregation must be the first of aggregation list
* the customized typed aggregation can only use long as buffer type
* the customized typed aggregation can only use flat type as result type

This PR tries to remove these limitations.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #9599 from cloud-fan/agg.
2015-11-10 11:14:25 -08:00
Yin Huai e0701c7560 [SPARK-9830][SQL] Remove AggregateExpression1 and Aggregate Operator used to evaluate AggregateExpression1s
https://issues.apache.org/jira/browse/SPARK-9830

This PR contains the following main changes.
* Removing `AggregateExpression1`.
* Removing `Aggregate` operator, which is used to evaluate `AggregateExpression1`.
* Removing planner rule used to plan `Aggregate`.
* Linking `MultipleDistinctRewriter` to analyzer.
* Renaming `AggregateExpression2` to `AggregateExpression` and `AggregateFunction2` to `AggregateFunction`.
* Updating places where we create aggregate expression. The way to create aggregate expressions is `AggregateExpression(aggregateFunction, mode, isDistinct)`.
* Changing `val`s in `DeclarativeAggregate`s that touch children of this function to `lazy val`s (when we create aggregate expression in DataFrame API, children of an aggregate function can be unresolved).

Author: Yin Huai <yhuai@databricks.com>

Closes #9556 from yhuai/removeAgg1.
2015-11-10 11:06:29 -08:00
Davies Liu 521b3cae11 [SPARK-11598] [SQL] enable tests for ShuffledHashOuterJoin
Author: Davies Liu <davies@databricks.com>

Closes #9573 from davies/join_condition.
2015-11-09 23:28:32 -08:00
Reynold Xin 675c7e723c [SPARK-11564][SQL] Fix documentation for DataFrame.take/collect
Author: Reynold Xin <rxin@databricks.com>

Closes #9557 from rxin/SPARK-11564-1.
2015-11-09 16:22:15 -08:00
Michael Armbrust 9c740a9ddf [SPARK-11578][SQL] User API for Typed Aggregation
This PR adds a new interface for user-defined aggregations, that can be used in `DataFrame` and `Dataset` operations to take all of the elements of a group and reduce them to a single value.

For example, the following aggregator extracts an `int` from a specific class and adds them up:

```scala
  case class Data(i: Int)

  val customSummer =  new Aggregator[Data, Int, Int] {
    def prepare(d: Data) = d.i
    def reduce(l: Int, r: Int) = l + r
    def present(r: Int) = r
  }.toColumn()

  val ds: Dataset[Data] = ...
  val aggregated = ds.select(customSummer)
```

By using helper functions, users can make a generic `Aggregator` that works on any input type:

```scala
/** An `Aggregator` that adds up any numeric type returned by the given function. */
class SumOf[I, N : Numeric](f: I => N) extends Aggregator[I, N, N] with Serializable {
  val numeric = implicitly[Numeric[N]]
  override def zero: N = numeric.zero
  override def reduce(b: N, a: I): N = numeric.plus(b, f(a))
  override def present(reduction: N): N = reduction
}

def sum[I, N : Numeric : Encoder](f: I => N): TypedColumn[I, N] = new SumOf(f).toColumn
```

These aggregators can then be used alongside other built-in SQL aggregations.

```scala
val ds = Seq(("a", 10), ("a", 20), ("b", 1), ("b", 2), ("c", 1)).toDS()
ds
  .groupBy(_._1)
  .agg(
    sum(_._2),                // The aggregator defined above.
    expr("sum(_2)").as[Int],  // A built-in dynatically typed aggregation.
    count("*"))               // A built-in statically typed aggregation.
  .collect()

res0: ("a", 30, 30, 2L), ("b", 3, 3, 2L), ("c", 1, 1, 1L)
```

The current implementation focuses on integrating this into the typed API, but currently only supports running aggregations that return a single long value as explained in `TypedAggregateExpression`.  This will be improved in a followup PR.

Author: Michael Armbrust <michael@databricks.com>

Closes #9555 from marmbrus/dataset-useragg.
2015-11-09 16:11:00 -08:00
hyukjinkwon 9565c246ea [SPARK-9557][SQL] Refactor ParquetFilterSuite and remove old ParquetFilters code
Actually this was resolved by https://github.com/apache/spark/pull/8275.

But I found the JIRA issue for this is not marked as resolved since the PR above was made for another issue but the PR above resolved both.

I commented that this is resolved by the PR above; however, I opened this PR as I would like to just add
a little bit of corrections.

In the previous PR, I refactored the test by not reducing just collecting filters; however, this would not test  properly `And` filter (which is not given to the tests). I unintentionally changed this from the original way (before being refactored).

In this PR, I just followed the original way to collect filters by reducing.

I would like to close this if this PR is inappropriate and somebody would like this deal with it in the separate PR related with this.

Author: hyukjinkwon <gurwls223@gmail.com>

Closes #9554 from HyukjinKwon/SPARK-9557.
2015-11-09 15:20:50 -08:00
Wenchen Fan fcb57e9c73 [SPARK-11564][SQL][FOLLOW-UP] improve java api for GroupedDataset
created `MapGroupFunction`, `FlatMapGroupFunction`, `CoGroupFunction`

Author: Wenchen Fan <wenchen@databricks.com>

Closes #9564 from cloud-fan/map.
2015-11-09 15:16:47 -08:00
Nick Buroojy f138cb8733 [SPARK-9301][SQL] Add collect_set and collect_list aggregate functions
For now they are thin wrappers around the corresponding Hive UDAFs.

One limitation with these in Hive 0.13.0 is they only support aggregating primitive types.

I chose snake_case here instead of camelCase because it seems to be used in the majority of the multi-word fns.

Do we also want to add these to `functions.py`?

This approach was recommended here: https://github.com/apache/spark/pull/8592#issuecomment-154247089

marmbrus rxin

Author: Nick Buroojy <nick.buroojy@civitaslearning.com>

Closes #9526 from nburoojy/nick/udaf-alias.

(cherry picked from commit a6ee4f989d)
Signed-off-by: Michael Armbrust <michael@databricks.com>
2015-11-09 14:30:52 -08:00
Wenchen Fan d8b50f7029 [SPARK-11453][SQL] append data to partitioned table will messes up the result
The reason is that:

1. For partitioned hive table, we will move the partitioned columns after data columns. (e.g. `<a: Int, b: Int>` partition by `a` will become `<b: Int, a: Int>`)
2. When append data to table, we use position to figure out how to match input columns to table's columns.

So when we append data to partitioned table, we will match wrong columns between input and table. A solution is reordering the input columns before match by position, like what we did for [`InsertIntoHadoopFsRelation`](https://github.com/apache/spark/blob/master/sql/core/src/main/scala/org/apache/spark/sql/execution/datasources/InsertIntoHadoopFsRelation.scala#L101-L105)

Author: Wenchen Fan <wenchen@databricks.com>

Closes #9408 from cloud-fan/append.
2015-11-08 21:01:53 -08:00
Reynold Xin 97b7080cf2 [SPARK-11564][SQL] Dataset Java API audit
A few changes:

1. Removed fold, since it can be confusing for distributed collections.
2. Created specific interfaces for each Dataset function (e.g. MapFunction, ReduceFunction, MapPartitionsFunction)
3. Added more documentation and test cases.

The other thing I'm considering doing is to have a "collector" interface for FlatMapFunction and MapPartitionsFunction, similar to MapReduce's map function.

Author: Reynold Xin <rxin@databricks.com>

Closes #9531 from rxin/SPARK-11564.
2015-11-08 20:57:09 -08:00
Wenchen Fan b2d195e137 [SPARK-11554][SQL] add map/flatMap to GroupedDataset
Author: Wenchen Fan <wenchen@databricks.com>

Closes #9521 from cloud-fan/map.
2015-11-08 12:59:35 -08:00
Herman van Hovell 30c8ba71a7 [SPARK-11451][SQL] Support single distinct count on multiple columns.
This PR adds support for multiple column in a single count distinct aggregate to the new aggregation path.

cc yhuai

Author: Herman van Hovell <hvanhovell@questtec.nl>

Closes #9409 from hvanhovell/SPARK-11451.
2015-11-08 11:06:10 -08:00
Liang-Chi Hsieh 4b69a42eda [SPARK-11362] [SQL] Use Spark BitSet in BroadcastNestedLoopJoin
JIRA: https://issues.apache.org/jira/browse/SPARK-11362

We use scala.collection.mutable.BitSet in BroadcastNestedLoopJoin now. We should use Spark's BitSet.

Author: Liang-Chi Hsieh <viirya@appier.com>

Closes #9316 from viirya/use-spark-bitset.
2015-11-07 19:44:45 -08:00
Herman van Hovell 6d0ead322e [SPARK-9241][SQL] Supporting multiple DISTINCT columns (2) - Rewriting Rule
The second PR for SPARK-9241, this adds support for multiple distinct columns to the new aggregation code path.

This PR solves the multiple DISTINCT column problem by rewriting these Aggregates into an Expand-Aggregate-Aggregate combination. See the [JIRA ticket](https://issues.apache.org/jira/browse/SPARK-9241) for some information on this. The advantages over the - competing - [first PR](https://github.com/apache/spark/pull/9280) are:
- This can use the faster TungstenAggregate code path.
- It is impossible to OOM due to an ```OpenHashSet``` allocating to much memory. However, this will multiply the number of input rows by the number of distinct clauses (plus one), and puts a lot more memory pressure on the aggregation code path itself.

The location of this Rule is a bit funny, and should probably change when the old aggregation path is changed.

cc yhuai - Could you also tell me where to add tests for this?

Author: Herman van Hovell <hvanhovell@questtec.nl>

Closes #9406 from hvanhovell/SPARK-9241-rewriter.
2015-11-06 16:04:20 -08:00
Wenchen Fan 7e9a9e603a [SPARK-11269][SQL] Java API support & test cases for Dataset
This simply brings https://github.com/apache/spark/pull/9358 up-to-date.

Author: Wenchen Fan <wenchen@databricks.com>
Author: Reynold Xin <rxin@databricks.com>

Closes #9528 from rxin/dataset-java.
2015-11-06 15:37:07 -08:00
Reynold Xin 3a652f691b [SPARK-11561][SQL] Rename text data source's column name to value.
Author: Reynold Xin <rxin@databricks.com>

Closes #9527 from rxin/SPARK-11561.
2015-11-06 14:47:41 -08:00
Herman van Hovell f328fedafd [SPARK-11450] [SQL] Add Unsafe Row processing to Expand
This PR enables the Expand operator to process and produce Unsafe Rows.

Author: Herman van Hovell <hvanhovell@questtec.nl>

Closes #9414 from hvanhovell/SPARK-11450.
2015-11-06 12:21:53 -08:00
Imran Rashid 49f1a82037 [SPARK-10116][CORE] XORShiftRandom.hashSeed is random in high bits
https://issues.apache.org/jira/browse/SPARK-10116

This is really trivial, just happened to notice it -- if `XORShiftRandom.hashSeed` is really supposed to have random bits throughout (as the comment implies), it needs to do something for the conversion to `long`.

mengxr mkolod

Author: Imran Rashid <irashid@cloudera.com>

Closes #8314 from squito/SPARK-10116.
2015-11-06 20:06:24 +00:00
Yin Huai 8211aab079 [SPARK-9858][SQL] Add an ExchangeCoordinator to estimate the number of post-shuffle partitions for aggregates and joins (follow-up)
https://issues.apache.org/jira/browse/SPARK-9858

This PR is the follow-up work of https://github.com/apache/spark/pull/9276. It addresses JoshRosen's comments.

Author: Yin Huai <yhuai@databricks.com>

Closes #9453 from yhuai/numReducer-followUp.
2015-11-06 11:13:51 -08:00
Cheng Lian c048929c6a [SPARK-10978][SQL][FOLLOW-UP] More comprehensive tests for PR #9399
This PR adds test cases that test various column pruning and filter push-down cases.

Author: Cheng Lian <lian@databricks.com>

Closes #9468 from liancheng/spark-10978.follow-up.
2015-11-06 11:11:36 -08:00
Liang-Chi Hsieh 574141a298 [SPARK-9162] [SQL] Implement code generation for ScalaUDF
JIRA: https://issues.apache.org/jira/browse/SPARK-9162

Currently ScalaUDF extends CodegenFallback and doesn't provide code generation implementation. This path implements code generation for ScalaUDF.

Author: Liang-Chi Hsieh <viirya@appier.com>

Closes #9270 from viirya/scalaudf-codegen.
2015-11-06 10:52:04 -08:00
Reynold Xin bc5d6c0389 [SPARK-11541][SQL] Break JdbcDialects.scala into multiple files and mark various dialects as private.
Author: Reynold Xin <rxin@databricks.com>

Closes #9511 from rxin/SPARK-11541.
2015-11-05 22:03:26 -08:00
Michael Armbrust 363a476c3f [SPARK-11528] [SQL] Typed aggregations for Datasets
This PR adds the ability to do typed SQL aggregations.  We will likely also want to provide an interface to allow users to do aggregations on objects, but this is deferred to another PR.

```scala
val ds = Seq(("a", 10), ("a", 20), ("b", 1), ("b", 2), ("c", 1)).toDS()
ds.groupBy(_._1).agg(sum("_2").as[Int]).collect()

res0: Array(("a", 30), ("b", 3), ("c", 1))
```

Author: Michael Armbrust <michael@databricks.com>

Closes #9499 from marmbrus/dataset-agg.
2015-11-05 21:42:32 -08:00
Davies Liu eec74ba8bd [SPARK-7542][SQL] Support off-heap index/sort buffer
This brings the support of off-heap memory for array inside BytesToBytesMap and InMemorySorter, then we could allocate all the memory from off-heap for execution.

Closes #8068

Author: Davies Liu <davies@databricks.com>

Closes #9477 from davies/unsafe_timsort.
2015-11-05 19:02:18 -08:00
Reynold Xin 3cc2c053b5 [SPARK-11540][SQL] API audit for QueryExecutionListener.
Author: Reynold Xin <rxin@databricks.com>

Closes #9509 from rxin/SPARK-11540.
2015-11-05 18:12:54 -08:00
Reynold Xin 6091e91fca Revert "[SPARK-11469][SQL] Allow users to define nondeterministic udfs."
This reverts commit 9cf56c96b7.
2015-11-05 17:10:35 -08:00
Reynold Xin b6974f8fed [SPARK-11536][SQL] Remove the internal implicit conversion from Expression to Column in functions.scala
Author: Reynold Xin <rxin@databricks.com>

Closes #9505 from rxin/SPARK-11536.
2015-11-05 15:34:05 -08:00
Wenchen Fan d9e30c59ce [SPARK-10656][SQL] completely support special chars in DataFrame
the main problem is: we interpret column name with special handling of `.` for DataFrame. This enables us to write something like `df("a.b")` to get the field `b` of `a`. However, we don't need this feature in `DataFrame.apply("*")` or `DataFrame.withColumnRenamed`. In these 2 cases, the column name is the final name already, we don't need extra process to interpret it.

The solution is simple, use `queryExecution.analyzed.output` to get resolved column directly, instead of using `DataFrame.resolve`.

close https://github.com/apache/spark/pull/8811

Author: Wenchen Fan <wenchen@databricks.com>

Closes #9462 from cloud-fan/special-chars.
2015-11-05 14:53:16 -08:00
Reynold Xin 8a5314efd1 [SPARK-11532][SQL] Remove implicit conversion from Expression to Column
Author: Reynold Xin <rxin@databricks.com>

Closes #9500 from rxin/SPARK-11532.
2015-11-05 13:34:36 -08:00
Travis Hegner 14ee0f5726 [SPARK-10648] Oracle dialect to handle nonspecific numeric types
This is the alternative/agreed upon solution to PR #8780.

Creating an OracleDialect to handle the nonspecific numeric types that can be defined in oracle.

Author: Travis Hegner <thegner@trilliumit.com>

Closes #9495 from travishegner/OracleDialect.
2015-11-05 12:36:57 -08:00
Reynold Xin 6b87acd664 [SPARK-11513][SQL] Remove implicit conversion from LogicalPlan to DataFrame
This internal implicit conversion has been a source of confusion for a lot of new developers.

Author: Reynold Xin <rxin@databricks.com>

Closes #9479 from rxin/SPARK-11513.
2015-11-05 11:58:13 -08:00
Huaxin Gao b072ff4d1d [SPARK-11474][SQL] change fetchSize to fetchsize
In DefaultDataSource.scala, it has
override def createRelation(
sqlContext: SQLContext,
parameters: Map[String, String]): BaseRelation
The parameters is CaseInsensitiveMap.
After this line
parameters.foreach(kv => properties.setProperty(kv._1, kv._2))
properties is set to all lower case key/value pairs and fetchSize becomes fetchsize.
However, in compute method in JDBCRDD, it has
val fetchSize = properties.getProperty("fetchSize", "0").toInt
so fetchSize value is always 0 and never gets set correctly.

Author: Huaxin Gao <huaxing@oc0558782468.ibm.com>

Closes #9473 from huaxingao/spark-11474.
2015-11-05 09:41:14 -08:00
Davies Liu 81498dd5c8 [SPARK-11425] [SPARK-11486] Improve hybrid aggregation
After aggregation, the dataset could be smaller than inputs, so it's better to do hash based aggregation for all inputs, then using sort based aggregation to merge them.

Author: Davies Liu <davies@databricks.com>

Closes #9383 from davies/fix_switch.
2015-11-04 21:30:21 -08:00
Zhenhua Wang a752ddad7f [SPARK-11398] [SQL] unnecessary def dialectClassName in HiveContext, and misleading dialect conf at the start of spark-sql
1. def dialectClassName in HiveContext is unnecessary.
In HiveContext, if conf.dialect == "hiveql", getSQLDialect() will return new HiveQLDialect(this);
else it will use super.getSQLDialect(). Then in super.getSQLDialect(), it calls dialectClassName, which is overriden in HiveContext and still return super.dialectClassName.
So we'll never reach the code "classOf[HiveQLDialect].getCanonicalName" of def dialectClassName in HiveContext.

2. When we start bin/spark-sql, the default context is HiveContext, and the corresponding dialect is hiveql.
However, if we type "set spark.sql.dialect;", the result is "sql", which is inconsistent with the actual dialect and is misleading. For example, we can use sql like "create table" which is only allowed in hiveql, but this dialect conf shows it's "sql".
Although this problem will not cause any execution error, it's misleading to spark sql users. Therefore I think we should fix it.
In this pr, while procesing “set spark.sql.dialect” in SetCommand, I use "conf.dialect" instead of "getConf()" for the case of key == SQLConf.DIALECT.key, so that it will return the right dialect conf.

Author: Zhenhua Wang <wangzhenhua@huawei.com>

Closes #9349 from wzhfy/dialect.
2015-11-04 17:16:00 -08:00
Reynold Xin b6e0a5ae6f [SPARK-11510][SQL] Remove SQL aggregation tests for higher order statistics
We have some aggregate function tests in both DataFrameAggregateSuite and SQLQuerySuite. The two have almost the same coverage and we should just remove the SQL one.

Author: Reynold Xin <rxin@databricks.com>

Closes #9475 from rxin/SPARK-11510.
2015-11-04 16:49:25 -08:00
Reynold Xin abf5e4285d [SPARK-11504][SQL] API audit for distributeBy and localSort
1. Renamed localSort -> sortWithinPartitions to avoid ambiguity in "local"
2. distributeBy -> repartition to match the existing repartition.

Author: Reynold Xin <rxin@databricks.com>

Closes #9470 from rxin/SPARK-11504.
2015-11-04 12:33:47 -08:00
Liang-Chi Hsieh de289bf279 [SPARK-10304][SQL] Following up checking valid dir structure for partition discovery
This patch follows up #8840.

Author: Liang-Chi Hsieh <viirya@appier.com>

Closes #9459 from viirya/detect_invalid_part_dir_following.
2015-11-04 10:56:32 -08:00
Reynold Xin 3bd6f5d2ae [SPARK-11490][SQL] variance should alias var_samp instead of var_pop.
stddev is an alias for stddev_samp. variance should be consistent with stddev.

Also took the chance to remove internal Stddev and Variance, and only kept StddevSamp/StddevPop and VarianceSamp/VariancePop.

Author: Reynold Xin <rxin@databricks.com>

Closes #9449 from rxin/SPARK-11490.
2015-11-04 09:34:52 -08:00
Reynold Xin cd1df66238 [SPARK-11485][SQL] Make DataFrameHolder and DatasetHolder public.
These two classes should be public, since they are used in public code.

Author: Reynold Xin <rxin@databricks.com>

Closes #9445 from rxin/SPARK-11485.
2015-11-04 09:32:30 -08:00
Wenchen Fan 2692bdb7db [SPARK-11455][SQL] fix case sensitivity of partition by
depend on `caseSensitive` to do column name equality check, instead of just `==`

Author: Wenchen Fan <wenchen@databricks.com>

Closes #9410 from cloud-fan/partition.
2015-11-03 20:25:58 -08:00
Nong e352de0db2 [SPARK-11329] [SQL] Cleanup from spark-11329 fix.
Author: Nong <nong@cloudera.com>

Closes #9442 from nongli/spark-11483.
2015-11-03 16:44:37 -08:00
Reynold Xin 5051262d4c [SPARK-11489][SQL] Only include common first order statistics in GroupedData
We added a bunch of higher order statistics such as skewness and kurtosis to GroupedData. I don't think they are common enough to justify being listed, since users can always use the normal statistics aggregate functions.

That is to say, after this change, we won't support
```scala
df.groupBy("key").kurtosis("colA", "colB")
```

However, we will still support
```scala
df.groupBy("key").agg(kurtosis(col("colA")), kurtosis(col("colB")))
```

Author: Reynold Xin <rxin@databricks.com>

Closes #9446 from rxin/SPARK-11489.
2015-11-03 16:27:56 -08:00
Wenchen Fan f6fcb4874c [SPARK-11477] [SQL] support create Dataset from RDD
Author: Wenchen Fan <wenchen@databricks.com>

Closes #9434 from cloud-fan/rdd2ds and squashes the following commits:

0892d72 [Wenchen Fan] support create Dataset from RDD
2015-11-04 00:15:50 +01:00
Davies Liu 1d04dc95c0 [SPARK-11467][SQL] add Python API for stddev/variance
Add Python API for stddev/stddev_pop/stddev_samp/variance/var_pop/var_samp/skewness/kurtosis

Author: Davies Liu <davies@databricks.com>

Closes #9424 from davies/py_var.
2015-11-03 13:33:46 -08:00
Cheng Lian ebf8b0b48d [SPARK-10978][SQL] Allow data sources to eliminate filters
This PR adds a new method `unhandledFilters` to `BaseRelation`. Data sources which implement this method properly may avoid the overhead of defensive filtering done by Spark SQL.

Author: Cheng Lian <lian@databricks.com>

Closes #9399 from liancheng/spark-10978.unhandled-filters.
2015-11-03 10:07:45 -08:00
Liang-Chi Hsieh d6035d97c9 [SPARK-10304] [SQL] Partition discovery should throw an exception if the dir structure is invalid
JIRA: https://issues.apache.org/jira/browse/SPARK-10304

This patch detects if the structure of partition directories is not valid.

The test cases are from #8547. Thanks zhzhan.

cc liancheng

Author: Liang-Chi Hsieh <viirya@appier.com>

Closes #8840 from viirya/detect_invalid_part_dir.
2015-11-03 07:41:50 -08:00
Daoyuan Wang d188a67762 [SPARK-10533][SQL] handle scientific notation in sqlParser
https://issues.apache.org/jira/browse/SPARK-10533

val df = sqlContext.createDataFrame(Seq(("a",1.0),("b",2.0),("c",3.0)))
df.filter("_2 < 2.0e1").show

Scientific notation didn't work.

Author: Daoyuan Wang <daoyuan.wang@intel.com>

Closes #9085 from adrian-wang/scinotation.
2015-11-03 22:30:23 +08:00
Michael Armbrust b86f2cab67 [SPARK-11404] [SQL] Support for groupBy using column expressions
This PR adds a new method `groupBy(cols: Column*)` to `Dataset` that allows users to group using column expressions instead of a lambda function.  Since the return type of these expressions is not known at compile time, we just set the key type as a generic `Row`.  If the user would like to work the key in a type-safe way, they can call `grouped.asKey[Type]`, which is also added in this PR.

```scala
val ds = Seq(("a", 10), ("a", 20), ("b", 1), ("b", 2), ("c", 1)).toDS()
val grouped = ds.groupBy($"_1").asKey[String]
val agged = grouped.mapGroups { case (g, iter) =>
  Iterator((g, iter.map(_._2).sum))
}

agged.collect()

res0: Array(("a", 30), ("b", 3), ("c", 1))
```

Author: Michael Armbrust <michael@databricks.com>

Closes #9359 from marmbrus/columnGroupBy and squashes the following commits:

bbcb03b [Michael Armbrust] Update DatasetSuite.scala
8fd2908 [Michael Armbrust] Update DatasetSuite.scala
0b0e2f8 [Michael Armbrust] [SPARK-11404] [SQL] Support for groupBy using column expressions
2015-11-03 13:02:17 +01:00
Wenchen Fan 425ff03f5a [SPARK-11436] [SQL] rebind right encoder when join 2 datasets
When we join 2 datasets, we will combine 2 encoders into a tupled one, and use it as the encoder for the jioned dataset. Assume both of the 2 encoders are flat, their `constructExpression`s both reference to the first element of input row. However, when we combine 2 encoders, the schema of input row changed,  now the right encoder should reference to second element of input row. So we should rebind right encoder to let it know the new schema of input row before combine it.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #9391 from cloud-fan/join and squashes the following commits:

846d3ab [Wenchen Fan] rebind right encoder when join 2 datasets
2015-11-03 12:47:39 +01:00
Yin Huai d728d5c986 [SPARK-9858][SPARK-9859][SPARK-9861][SQL] Add an ExchangeCoordinator to estimate the number of post-shuffle partitions for aggregates and joins
https://issues.apache.org/jira/browse/SPARK-9858
https://issues.apache.org/jira/browse/SPARK-9859
https://issues.apache.org/jira/browse/SPARK-9861

Author: Yin Huai <yhuai@databricks.com>

Closes #9276 from yhuai/numReducer.
2015-11-03 00:12:49 -08:00
navis.ryu c34c27fe92 [SPARK-9034][SQL] Reflect field names defined in GenericUDTF
Hive GenericUDTF#initialize() defines field names in a returned schema though,
the current HiveGenericUDTF drops these names.
We might need to reflect these in a logical plan tree.

Author: navis.ryu <navis@apache.org>

Closes #8456 from navis/SPARK-9034.
2015-11-02 23:52:36 -08:00
Yin Huai 9cf56c96b7 [SPARK-11469][SQL] Allow users to define nondeterministic udfs.
This is the first task (https://issues.apache.org/jira/browse/SPARK-11469) of https://issues.apache.org/jira/browse/SPARK-11438

Author: Yin Huai <yhuai@databricks.com>

Closes #9393 from yhuai/udfNondeterministic.
2015-11-02 21:18:38 -08:00
Nong Li 9cb5c731da [SPARK-11329][SQL] Support star expansion for structs.
1. Supporting expanding structs in Projections. i.e.
  "SELECT s.*" where s is a struct type.
  This is fixed by allowing the expand function to handle structs in addition to tables.

2. Supporting expanding * inside aggregate functions of structs.
   "SELECT max(struct(col1, structCol.*))"
   This requires recursively expanding the expressions. In this case, it it the aggregate
   expression "max(...)" and we need to recursively expand its children inputs.

Author: Nong Li <nongli@gmail.com>

Closes #9343 from nongli/spark-11329.
2015-11-02 20:32:08 -08:00
Nong Li 2cef1bb0b5 [SPARK-5354][SQL] Cached tables should preserve partitioning and ord…
…ering.

For cached tables, we can just maintain the partitioning and ordering from the
source relation.

Author: Nong Li <nongli@gmail.com>

Closes #9404 from nongli/spark-5354.
2015-11-02 19:18:45 -08:00
Liang-Chi Hsieh 3e770a64a4 [SPARK-9298][SQL] Add pearson correlation aggregation function
JIRA: https://issues.apache.org/jira/browse/SPARK-9298

This patch adds pearson correlation aggregation function based on `AggregateExpression2`.

Author: Liang-Chi Hsieh <viirya@appier.com>

Closes #8587 from viirya/corr_aggregation.
2015-11-01 18:37:27 -08:00
Nong Li 046e32ed84 [SPARK-11410][SQL] Add APIs to provide functionality similar to Hive's DISTRIBUTE BY and SORT BY.
DISTRIBUTE BY allows the user to hash partition the data by specified exprs. It also allows for
optioning sorting within each resulting partition. There is no required relationship between the
exprs for partitioning and sorting (i.e. one does not need to be a prefix of the other).

This patch adds to APIs to DataFrames which can be used together to provide this functionality:
  1. distributeBy() which partitions the data frame into a specified number of partitions using the
     partitioning exprs.
  2. localSort() which sorts each partition using the provided sorting exprs.

To get the DISTRIBUTE BY functionality, the user simply does: df.distributeBy(...).localSort(...)

Author: Nong Li <nongli@gmail.com>

Closes #9364 from nongli/spark-11410.
2015-11-01 14:34:06 -08:00
Cheng Lian aa494a9c2e [SPARK-11117] [SPARK-11345] [SQL] Makes all HadoopFsRelation data sources produce UnsafeRow
This PR fixes two issues:

1.  `PhysicalRDD.outputsUnsafeRows` is always `false`

    Thus a `ConvertToUnsafe` operator is often required even if the underlying data source relation does output `UnsafeRow`.

1.  Internal/external row conversion for `HadoopFsRelation` is kinda messy

    Currently we're using `HadoopFsRelation.needConversion` and [dirty type erasure hacks][1] to indicate whether the relation outputs external row or internal row and apply external-to-internal conversion when necessary.  Basically, all builtin `HadoopFsRelation` data sources, i.e. Parquet, JSON, ORC, and Text output `InternalRow`, while typical external `HadoopFsRelation` data sources, e.g. spark-avro and spark-csv, output `Row`.

This PR adds a `private[sql]` interface method `HadoopFsRelation.buildInternalScan`, which by default invokes `HadoopFsRelation.buildScan` and converts `Row`s to `UnsafeRow`s (which are also `InternalRow`s).  All builtin `HadoopFsRelation` data sources override this method and directly output `UnsafeRow`s.  In this way, now `HadoopFsRelation` always produces `UnsafeRow`s. Thus `PhysicalRDD.outputsUnsafeRows` can be properly set by checking whether the underlying data source is a `HadoopFsRelation`.

A remaining question is that, can we assume that all non-builtin `HadoopFsRelation` data sources output external rows?  At least all well known ones do so.  However it's possible that some users implemented their own `HadoopFsRelation` data sources that leverages `InternalRow` and thus all those unstable internal data representations.  If this assumption is safe, we can deprecate `HadoopFsRelation.needConversion` and cleanup some more conversion code (like [here][2] and [here][3]).

This PR supersedes #9125.

Follow-ups:

1.  Makes JSON and ORC data sources output `UnsafeRow` directly

1.  Makes `HiveTableScan` output `UnsafeRow` directly

    This is related to 1 since ORC data source shares the same `Writable` unwrapping code with `HiveTableScan`.

[1]: https://github.com/apache/spark/blob/v1.5.1/sql/core/src/main/scala/org/apache/spark/sql/execution/datasources/parquet/ParquetRelation.scala#L353
[2]: https://github.com/apache/spark/blob/v1.5.1/sql/core/src/main/scala/org/apache/spark/sql/execution/datasources/DataSourceStrategy.scala#L331-L335
[3]: https://github.com/apache/spark/blob/v1.5.1/sql/core/src/main/scala/org/apache/spark/sql/sources/interfaces.scala#L630-L669

Author: Cheng Lian <lian@databricks.com>

Closes #9305 from liancheng/spark-11345.unsafe-hadoop-fs-relation.
2015-10-31 21:16:09 -07:00
Jeff Zhang 97b3c8fb47 [SPARK-11226][SQL] Empty line in json file should be skipped
Currently the empty line in json file will be parsed into Row with all null field values. But in json, "{}" represents a json object, empty line is supposed to be skipped.

Make a trivial change for this.

Author: Jeff Zhang <zjffdu@apache.org>

Closes #9211 from zjffdu/SPARK-11226.
2015-10-31 11:10:37 +00:00
Yin Huai 3c471885dc [SPARK-11434][SPARK-11103][SQL] Fix test ": Filter applied on merged Parquet schema with new column fails"
https://issues.apache.org/jira/browse/SPARK-11434

Author: Yin Huai <yhuai@databricks.com>

Closes #9387 from yhuai/SPARK-11434.
2015-10-30 20:05:07 -07:00
Davies Liu 45029bfdea [SPARK-11423] remove MapPartitionsWithPreparationRDD
Since we do not need to preserve a page before calling compute(), MapPartitionsWithPreparationRDD is not needed anymore.

This PR basically revert #8543, #8511, #8038, #8011

Author: Davies Liu <davies@databricks.com>

Closes #9381 from davies/remove_prepare2.
2015-10-30 15:47:40 -07:00
Wenchen Fan 14d08b9908 [SPARK-11393] [SQL] CoGroupedIterator should respect the fact that GroupedIterator.hasNext is not idempotent
When we cogroup 2 `GroupedIterator`s in `CoGroupedIterator`, if the right side is smaller, we will consume right data and keep the left data unchanged. Then we call `hasNext` which will call `left.hasNext`. This will make `GroupedIterator` generate an extra group as the previous one has not been comsumed yet.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #9346 from cloud-fan/cogroup and squashes the following commits:

9be67c8 [Wenchen Fan] SPARK-11393
2015-10-30 12:17:51 +01:00
hyukjinkwon 59db9e9c38 [SPARK-11103][SQL] Filter applied on Merged Parquet shema with new column fail
When enabling mergedSchema and predicate filter, this fails since Parquet does not accept filters pushed down when the columns of the filters do not exist in the schema.
This is related with Parquet issue (https://issues.apache.org/jira/browse/PARQUET-389).

For now, it just simply disables predicate push down when using merged schema in this PR.

Author: hyukjinkwon <gurwls223@gmail.com>

Closes #9327 from HyukjinKwon/SPARK-11103.
2015-10-30 18:17:35 +08:00
Davies Liu 56419cf11f [SPARK-10342] [SPARK-10309] [SPARK-10474] [SPARK-10929] [SQL] Cooperative memory management
This PR introduce a mechanism to call spill() on those SQL operators that support spilling (for example, BytesToBytesMap, UnsafeExternalSorter and ShuffleExternalSorter) if there is not enough memory for execution. The preserved first page is needed anymore, so removed.

Other Spillable objects in Spark core (ExternalSorter and AppendOnlyMap) are not included in this PR, but those could benefit from this (trigger others' spilling).

The PrepareRDD may be not needed anymore, could be removed in follow up PR.

The following script will fail with OOM before this PR, finished in 150 seconds with 2G heap (also works in 1.5 branch, with similar duration).

```python
sqlContext.setConf("spark.sql.shuffle.partitions", "1")
df = sqlContext.range(1<<25).selectExpr("id", "repeat(id, 2) as s")
df2 = df.select(df.id.alias('id2'), df.s.alias('s2'))
j = df.join(df2, df.id==df2.id2).groupBy(df.id).max("id", "id2")
j.explain()
print j.count()
```

For thread-safety, here what I'm got:

1) Without calling spill(), the operators should only be used by single thread, no safety problems.

2) spill() could be triggered in two cases, triggered by itself, or by other operators. we can check trigger == this in spill(), so it's still in the same thread, so safety problems.

3) if it's triggered by other operators (right now cache will not trigger spill()), we only spill the data into disk when it's in scanning stage (building is finished), so the in-memory sorter or memory pages are read-only, we only need to synchronize the iterator and change it.

4) During scanning, the iterator will only use one record in one page, we can't free this page, because the downstream is currently using it (used by UnsafeRow or other objects). In BytesToBytesMap, we just skip the current page, and dump all others into disk. In UnsafeExternalSorter, we keep the page that is used by current record (having the same baseObject), free it when loading the next record. In ShuffleExternalSorter, the spill() will not trigger during scanning.

5) In order to avoid deadlock, we didn't call acquireMemory during spill (so we reused the pointer array in InMemorySorter).

Author: Davies Liu <davies@databricks.com>

Closes #9241 from davies/force_spill.
2015-10-29 23:38:06 -07:00
Wenchen Fan 96cf87f66d [SPARK-11301] [SQL] fix case sensitivity for filter on partitioned columns
Author: Wenchen Fan <wenchen@databricks.com>

Closes #9271 from cloud-fan/filter.
2015-10-29 16:36:52 -07:00
sethah a01cbf5daa [SPARK-10641][SQL] Add Skewness and Kurtosis Support
Implementing skewness and kurtosis support based on following algorithm:
https://en.wikipedia.org/wiki/Algorithms_for_calculating_variance#Higher-order_statistics

Author: sethah <seth.hendrickson16@gmail.com>

Closes #9003 from sethah/SPARK-10641.
2015-10-29 11:58:39 -07:00
xin Wu f7a51deeba [SPARK-11246] [SQL] Table cache for Parquet broken in 1.5
The root cause is that when spark.sql.hive.convertMetastoreParquet=true by default, the cached InMemoryRelation of the ParquetRelation can not be looked up from the cachedData of CacheManager because the key comparison fails even though it is the same LogicalPlan representing the Subquery that wraps the ParquetRelation.
The solution in this PR is overriding the LogicalPlan.sameResult function in Subquery case class to eliminate subquery node first before directly comparing the child (ParquetRelation), which will find the key  to the cached InMemoryRelation.

Author: xin Wu <xinwu@us.ibm.com>

Closes #9326 from xwu0226/spark-11246-commit.
2015-10-29 07:42:46 -07:00
Wenchen Fan f79ebf2a9e [SPARK-11370] [SQL] fix a bug in GroupedIterator and create unit test for it
Before this PR, user has to consume the iterator of one group before process next group, or we will get into infinite loops.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #9330 from cloud-fan/group.
2015-10-29 11:49:45 +01:00
Cheng Lian e5b89978ed [SPARK-11376][SQL] Removes duplicated mutableRow field
This PR fixes a mistake in the code generated by `GenerateColumnAccessor`. Interestingly, although the code is illegal in Java (the class has two fields with the same name), Janino accepts it happily and accidentally works properly.

Author: Cheng Lian <lian@databricks.com>

Closes #9335 from liancheng/spark-11376.fix-generated-code.
2015-10-29 11:34:54 +08:00
Liang-Chi Hsieh 20dfd46743 [SPARK-11363] [SQL] LeftSemiJoin should be LeftSemi in SparkStrategies
JIRA: https://issues.apache.org/jira/browse/SPARK-11363

In SparkStrategies some places use LeftSemiJoin. It should be LeftSemi.

cc chenghao-intel liancheng

Author: Liang-Chi Hsieh <viirya@appier.com>

Closes #9318 from viirya/no-left-semi-join.
2015-10-28 15:57:01 -07:00
Wenchen Fan 075ce4914f [SPARK-11313][SQL] implement cogroup on DataSets (support 2 datasets)
A simpler version of https://github.com/apache/spark/pull/9279, only support 2 datasets.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #9324 from cloud-fan/cogroup2.
2015-10-28 13:58:52 +01:00
Cheng Hao d9c6039897 [SPARK-10484] [SQL] Optimize the cartesian join with broadcast join for some cases
In some cases, we can broadcast the smaller relation in cartesian join, which improve the performance significantly.

Author: Cheng Hao <hao.cheng@intel.com>

Closes #8652 from chenghao-intel/cartesian.
2015-10-27 20:26:38 -07:00
Michael Armbrust 5a5f65905a [SPARK-11347] [SQL] Support for joinWith in Datasets
This PR adds a new operation `joinWith` to a `Dataset`, which returns a `Tuple` for each pair where a given `condition` evaluates to true.

```scala
case class ClassData(a: String, b: Int)

val ds1 = Seq(ClassData("a", 1), ClassData("b", 2)).toDS()
val ds2 = Seq(("a", 1), ("b", 2)).toDS()

> ds1.joinWith(ds2, $"_1" === $"a").collect()
res0: Array((ClassData("a", 1), ("a", 1)), (ClassData("b", 2), ("b", 2)))
```

This operation is similar to the relation `join` function with one important difference in the result schema. Since `joinWith` preserves objects present on either side of the join, the result schema is similarly nested into a tuple under the column names `_1` and `_2`.

This type of join can be useful both for preserving type-safety with the original object types as well as working with relational data where either side of the join has column names in common.

## Required Changes to Encoders
In the process of working on this patch, several deficiencies to the way that we were handling encoders were discovered.  Specifically, it turned out to be very difficult to `rebind` the non-expression based encoders to extract the nested objects from the results of joins (and also typed selects that return tuples).

As a result the following changes were made.
 - `ClassEncoder` has been renamed to `ExpressionEncoder` and has been improved to also handle primitive types.  Additionally, it is now possible to take arbitrary expression encoders and rewrite them into a single encoder that returns a tuple.
 - All internal operations on `Dataset`s now require an `ExpressionEncoder`.  If the users tries to pass a non-`ExpressionEncoder` in, an error will be thrown.  We can relax this requirement in the future by constructing a wrapper class that uses expressions to project the row to the expected schema, shielding the users code from the required remapping.  This will give us a nice balance where we don't force user encoders to understand attribute references and binding, but still allow our native encoder to leverage runtime code generation to construct specific encoders for a given schema that avoid an extra remapping step.
 - Additionally, the semantics for different types of objects are now better defined.  As stated in the `ExpressionEncoder` scaladoc:
  - Classes will have their sub fields extracted by name using `UnresolvedAttribute` expressions
  and `UnresolvedExtractValue` expressions.
  - Tuples will have their subfields extracted by position using `BoundReference` expressions.
  - Primitives will have their values extracted from the first ordinal with a schema that defaults
  to the name `value`.
 - Finally, the binding lifecycle for `Encoders` has now been unified across the codebase.  Encoders are now `resolved` to the appropriate schema in the constructor of `Dataset`.  This process replaces an unresolved expressions with concrete `AttributeReference` expressions.  Binding then happens on demand, when an encoder is going to be used to construct an object.  This closely mirrors the lifecycle for standard expressions when executing normal SQL or `DataFrame` queries.

Author: Michael Armbrust <michael@databricks.com>

Closes #9300 from marmbrus/datasets-tuples.
2015-10-27 13:28:52 -07:00
Yanbo Liang 360ed832f5 [SPARK-11303][SQL] filter should not be pushed down into sample
When sampling and then filtering DataFrame, the SQL Optimizer will push down filter into sample and produce wrong result. This is due to the sampler is calculated based on the original scope rather than the scope after filtering.

Author: Yanbo Liang <ybliang8@gmail.com>

Closes #9294 from yanboliang/spark-11303.
2015-10-27 11:28:59 +01:00
Stephen De Gennaro 82464fb2e0 [SPARK-10947] [SQL] With schema inference from JSON into a Dataframe, add option to infer all primitive object types as strings
Currently, when a schema is inferred from a JSON file using sqlContext.read.json, the primitive object types are inferred as string, long, boolean, etc.

However, if the inferred type is too specific (JSON obviously does not enforce types itself), this can cause issues with merging dataframe schemas.

This pull request adds the option "primitivesAsString" to the JSON DataFrameReader which when true (defaults to false if not set) will infer all primitives as strings.

Below is an example usage of this new functionality.
```
val jsonDf = sqlContext.read.option("primitivesAsString", "true").json(sampleJsonFile)

scala> jsonDf.printSchema()
root
|-- bigInteger: string (nullable = true)
|-- boolean: string (nullable = true)
|-- double: string (nullable = true)
|-- integer: string (nullable = true)
|-- long: string (nullable = true)
|-- null: string (nullable = true)
|-- string: string (nullable = true)
```

Author: Stephen De Gennaro <stepheng@realitymine.com>

Closes #9249 from stephend-realitymine/stephend-primitives.
2015-10-26 19:55:10 -07:00
Nong Li d4c397a64a [SPARK-11325] [SQL] Alias 'alias' in Scala's DataFrame API
Author: Nong Li <nongli@gmail.com>

Closes #9286 from nongli/spark-11325.
2015-10-26 18:27:02 -07:00
Alexander Slesarenko 4bb2b3698f [SQL][DOC] Minor document fixes in interfaces.scala
rxin just noticed this while reading the code.

Author: Alexander Slesarenko <avslesarenko@gmail.com>

Closes #9284 from aslesarenko/doc-typos.
2015-10-26 23:49:14 +01:00
Frank Rosner b60aab8a95 [SPARK-11258] Converting a Spark DataFrame into an R data.frame is slow / requires a lot of memory
https://issues.apache.org/jira/browse/SPARK-11258

I was not able to locate an existing unit test for this function so I wrote one.

Author: Frank Rosner <frank@fam-rosner.de>

Closes #9222 from FRosner/master.
2015-10-26 15:46:59 -07:00
Wenchen Fan 07ced43424 [SPARK-11253] [SQL] reset all accumulators in physical operators before execute an action
With this change, our query execution listener can get the metrics correctly.

The UI still looks good after this change.
<img width="257" alt="screen shot 2015-10-23 at 11 25 14 am" src="https://cloud.githubusercontent.com/assets/3182036/10683834/d516f37e-7978-11e5-8118-343ed40eb824.png">
<img width="494" alt="screen shot 2015-10-23 at 11 25 01 am" src="https://cloud.githubusercontent.com/assets/3182036/10683837/e1fa60da-7978-11e5-8ec8-178b88f27764.png">

Author: Wenchen Fan <wenchen@databricks.com>

Closes #9215 from cloud-fan/metric.
2015-10-25 22:47:39 -07:00
Josh Rosen 85e654c5ec [SPARK-10984] Simplify *MemoryManager class structure
This patch refactors the MemoryManager class structure. After #9000, Spark had the following classes:

- MemoryManager
- StaticMemoryManager
- ExecutorMemoryManager
- TaskMemoryManager
- ShuffleMemoryManager

This is fairly confusing. To simplify things, this patch consolidates several of these classes:

- ShuffleMemoryManager and ExecutorMemoryManager were merged into MemoryManager.
- TaskMemoryManager is moved into Spark Core.

**Key changes and tasks**:

- [x] Merge ExecutorMemoryManager into MemoryManager.
  - [x] Move pooling logic into Allocator.
- [x] Move TaskMemoryManager from `spark-unsafe` to `spark-core`.
- [x] Refactor the existing Tungsten TaskMemoryManager interactions so Tungsten code use only this and not both this and ShuffleMemoryManager.
- [x] Refactor non-Tungsten code to use the TaskMemoryManager instead of ShuffleMemoryManager.
- [x] Merge ShuffleMemoryManager into MemoryManager.
  - [x] Move code
  - [x] ~~Simplify 1/n calculation.~~ **Will defer to followup, since this needs more work.**
- [x] Port ShuffleMemoryManagerSuite tests.
- [x] Move classes from `unsafe` package to `memory` package.
- [ ] Figure out how to handle the hacky use of the memory managers in HashedRelation's broadcast variable construction.
- [x] Test porting and cleanup: several tests relied on mock functionality (such as `TestShuffleMemoryManager.markAsOutOfMemory`) which has been changed or broken during the memory manager consolidation
  - [x] AbstractBytesToBytesMapSuite
  - [x] UnsafeExternalSorterSuite
  - [x] UnsafeFixedWidthAggregationMapSuite
  - [x] UnsafeKVExternalSorterSuite

**Compatiblity notes**:

- This patch introduces breaking changes in `ExternalAppendOnlyMap`, which is marked as `DevloperAPI` (likely for legacy reasons): this class now cannot be used outside of a task.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #9127 from JoshRosen/SPARK-10984.
2015-10-25 21:19:52 -07:00
Reynold Xin e1a897b657 [SPARK-11274] [SQL] Text data source support for Spark SQL.
This adds API for reading and writing text files, similar to SparkContext.textFile and RDD.saveAsTextFile.
```
SQLContext.read.text("/path/to/something.txt")
DataFrame.write.text("/path/to/write.txt")
```

Using the new Dataset API, this also supports
```
val ds: Dataset[String] = SQLContext.read.text("/path/to/something.txt").as[String]
```

Author: Reynold Xin <rxin@databricks.com>

Closes #9240 from rxin/SPARK-11274.
2015-10-23 13:04:06 -07:00
Reynold Xin cdea0174e3 [SPARK-11273][SQL] Move ArrayData/MapData/DataTypeParser to catalyst.util package
Author: Reynold Xin <rxin@databricks.com>

Closes #9239 from rxin/types-private.
2015-10-23 00:00:21 -07:00
Michael Armbrust 53e83a3a77 [SPARK-11116][SQL] First Draft of Dataset API
*This PR adds a new experimental API to Spark, tentitively named Datasets.*

A `Dataset` is a strongly-typed collection of objects that can be transformed in parallel using functional or relational operations.  Example usage is as follows:

### Functional
```scala
> val ds: Dataset[Int] = Seq(1, 2, 3).toDS()
> ds.filter(_ % 1 == 0).collect()
res1: Array[Int] = Array(1, 2, 3)
```

### Relational
```scala
scala> ds.toDF().show()
+-----+
|value|
+-----+
|    1|
|    2|
|    3|
+-----+

> ds.select(expr("value + 1").as[Int]).collect()
res11: Array[Int] = Array(2, 3, 4)
```

## Comparison to RDDs
 A `Dataset` differs from an `RDD` in the following ways:
  - The creation of a `Dataset` requires the presence of an explicit `Encoder` that can be
    used to serialize the object into a binary format.  Encoders are also capable of mapping the
    schema of a given object to the Spark SQL type system.  In contrast, RDDs rely on runtime
    reflection based serialization.
  - Internally, a `Dataset` is represented by a Catalyst logical plan and the data is stored
    in the encoded form.  This representation allows for additional logical operations and
    enables many operations (sorting, shuffling, etc.) to be performed without deserializing to
    an object.

A `Dataset` can be converted to an `RDD` by calling the `.rdd` method.

## Comparison to DataFrames

A `Dataset` can be thought of as a specialized DataFrame, where the elements map to a specific
JVM object type, instead of to a generic `Row` container. A DataFrame can be transformed into
specific Dataset by calling `df.as[ElementType]`.  Similarly you can transform a strongly-typed
`Dataset` to a generic DataFrame by calling `ds.toDF()`.

## Implementation Status and TODOs

This is a rough cut at the least controversial parts of the API.  The primary purpose here is to get something committed so that we can better parallelize further work and get early feedback on the API.  The following is being deferred to future PRs:
 - Joins and Aggregations (prototype here f11f91e6f0)
 - Support for Java

Additionally, the responsibility for binding an encoder to a given schema is currently done in a fairly ad-hoc fashion.  This is an internal detail, and what we are doing today works for the cases we care about.  However, as we add more APIs we'll probably need to do this in a more principled way (i.e. separate resolution from binding as we do in DataFrames).

## COMPATIBILITY NOTE
Long term we plan to make `DataFrame` extend `Dataset[Row]`.  However,
making this change to che class hierarchy would break the function signatures for the existing
function operations (map, flatMap, etc).  As such, this class should be considered a preview
of the final API.  Changes will be made to the interface after Spark 1.6.

Author: Michael Armbrust <michael@databricks.com>

Closes #9190 from marmbrus/dataset-infra.
2015-10-22 15:20:17 -07:00
Cheng Hao d4950e6be4 [SPARK-9735][SQL] Respect the user specified schema than the infer partition schema for HadoopFsRelation
To enable the unit test of `hadoopFsRelationSuite.Partition column type casting`. It previously threw exception like below, as we treat the auto infer partition schema with higher priority than the user specified one.

```
java.lang.ClassCastException: java.lang.Integer cannot be cast to org.apache.spark.unsafe.types.UTF8String
	at org.apache.spark.sql.catalyst.expressions.BaseGenericInternalRow$class.getUTF8String(rows.scala:45)
	at org.apache.spark.sql.catalyst.expressions.GenericInternalRow.getUTF8String(rows.scala:220)
	at org.apache.spark.sql.catalyst.expressions.JoinedRow.getUTF8String(JoinedRow.scala:102)
	at org.apache.spark.sql.catalyst.expressions.GeneratedClass$SpecificUnsafeProjection.apply(generated.java:62)
	at org.apache.spark.sql.execution.datasources.DataSourceStrategy$$anonfun$17$$anonfun$apply$9.apply(DataSourceStrategy.scala:212)
	at org.apache.spark.sql.execution.datasources.DataSourceStrategy$$anonfun$17$$anonfun$apply$9.apply(DataSourceStrategy.scala:212)
	at scala.collection.Iterator$$anon$11.next(Iterator.scala:328)
	at scala.collection.Iterator$$anon$11.next(Iterator.scala:328)
	at scala.collection.Iterator$class.foreach(Iterator.scala:727)
	at scala.collection.AbstractIterator.foreach(Iterator.scala:1157)
	at scala.collection.generic.Growable$class.$plus$plus$eq(Growable.scala:48)
	at scala.collection.mutable.ArrayBuffer.$plus$plus$eq(ArrayBuffer.scala:103)
	at scala.collection.mutable.ArrayBuffer.$plus$plus$eq(ArrayBuffer.scala:47)
	at scala.collection.TraversableOnce$class.to(TraversableOnce.scala:273)
	at scala.collection.AbstractIterator.to(Iterator.scala:1157)
	at scala.collection.TraversableOnce$class.toBuffer(TraversableOnce.scala:265)
	at scala.collection.AbstractIterator.toBuffer(Iterator.scala:1157)
	at scala.collection.TraversableOnce$class.toArray(TraversableOnce.scala:252)
	at scala.collection.AbstractIterator.toArray(Iterator.scala:1157)
	at org.apache.spark.rdd.RDD$$anonfun$collect$1$$anonfun$12.apply(RDD.scala:903)
	at org.apache.spark.rdd.RDD$$anonfun$collect$1$$anonfun$12.apply(RDD.scala:903)
	at org.apache.spark.SparkContext$$anonfun$runJob$5.apply(SparkContext.scala:1846)
	at org.apache.spark.SparkContext$$anonfun$runJob$5.apply(SparkContext.scala:1846)
	at org.apache.spark.scheduler.ResultTask.runTask(ResultTask.scala:66)
	at org.apache.spark.scheduler.Task.run(Task.scala:88)
	at org.apache.spark.executor.Executor$TaskRunner.run(Executor.scala:214)
	at java.util.concurrent.ThreadPoolExecutor.runWorker(ThreadPoolExecutor.java:1145)
	at java.util.concurrent.ThreadPoolExecutor$Worker.run(ThreadPoolExecutor.java:615)
	at java.lang.Thread.run(Thread.java:745)
07:44:01.344 ERROR org.apache.spark.executor.Executor: Exception in task 14.0 in stage 3.0 (TID 206)
java.lang.ClassCastException: java.lang.Integer cannot be cast to org.apache.spark.unsafe.types.UTF8String
	at org.apache.spark.sql.catalyst.expressions.BaseGenericInternalRow$class.getUTF8String(rows.scala:45)
	at org.apache.spark.sql.catalyst.expressions.GenericInternalRow.getUTF8String(rows.scala:220)
	at org.apache.spark.sql.catalyst.expressions.JoinedRow.getUTF8String(JoinedRow.scala:102)
	at org.apache.spark.sql.catalyst.expressions.GeneratedClass$SpecificUnsafeProjection.apply(generated.java:62)
	at org.apache.spark.sql.execution.datasources.DataSourceStrategy$$anonfun$17$$anonfun$apply$9.apply(DataSourceStrategy.scala:212)
	at org.apache.spark.sql.execution.datasources.DataSourceStrategy$$anonfun$17$$anonfun$apply$9.apply(DataSourceStrategy.scala:212)
	at scala.collection.Iterator$$anon$11.next(Iterator.scala:328)
	at scala.collection.Iterator$$anon$11.next(Iterator.scala:328)
	at scala.collection.Iterator$class.foreach(Iterator.scala:727)
	at scala.collection.AbstractIterator.foreach(Iterator.scala:1157)
	at scala.collection.generic.Growable$class.$plus$plus$eq(Growable.scala:48)
	at scala.collection.mutable.ArrayBuffer.$plus$plus$eq(ArrayBuffer.scala:103)
	at scala.collection.mutable.ArrayBuffer.$plus$plus$eq(ArrayBuffer.scala:47)
	at scala.collection.TraversableOnce$class.to(TraversableOnce.scala:273)
	at scala.collection.AbstractIterator.to(Iterator.scala:1157)
	at scala.collection.TraversableOnce$class.toBuffer(TraversableOnce.scala:265)
	at scala.collection.AbstractIterator.toBuffer(Iterator.scala:1157)
	at scala.collection.TraversableOnce$class.toArray(TraversableOnce.scala:252)
	at scala.collection.AbstractIterator.toArray(Iterator.scala:1157)
	at org.apache.spark.rdd.RDD$$anonfun$collect$1$$anonfun$12.apply(RDD.scala:903)
	at org.apache.spark.rdd.RDD$$anonfun$collect$1$$anonfun$12.apply(RDD.scala:903)
	at org.apache.spark.SparkContext$$anonfun$runJob$5.apply(SparkContext.scala:1846)
	at org.apache.spark.SparkContext$$anonfun$runJob$5.apply(SparkContext.scala:1846)
	at org.apache.spark.scheduler.ResultTask.runTask(ResultTask.scala:66)
	at org.apache.spark.scheduler.Task.run(Task.scala:88)
	at org.apache.spark.executor.Executor$TaskRunner.run(Executor.scala:214)
	at java.util.concurrent.ThreadPoolExecutor.runWorker(ThreadPoolExecutor.java:1145)
	at java.util.concurrent.ThreadPoolExecutor$Worker.run(ThreadPoolExecutor.java:615)
	at java.lang.Thread.run(Thread.java:745)
```

Author: Cheng Hao <hao.cheng@intel.com>

Closes #8026 from chenghao-intel/partition_discovery.
2015-10-22 13:11:37 -07:00
Josh Rosen f6d06adf05 [SPARK-10708] Consolidate sort shuffle implementations
There's a lot of duplication between SortShuffleManager and UnsafeShuffleManager. Given that these now provide the same set of functionality, now that UnsafeShuffleManager supports large records, I think that we should replace SortShuffleManager's serialized shuffle implementation with UnsafeShuffleManager's and should merge the two managers together.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #8829 from JoshRosen/consolidate-sort-shuffle-implementations.
2015-10-22 09:46:30 -07:00
Davies Liu 1d97332715 [SPARK-11243][SQL] output UnsafeRow from columnar cache
This PR change InMemoryTableScan to output UnsafeRow, and optimize the unrolling and scanning by coping the bytes for var-length types between UnsafeRow and ByteBuffer directly without creating the wrapper objects. When scanning the decimals in TPC-DS store_sales table, it's 80% faster (copy it as long without create Decimal objects).

Author: Davies Liu <davies@databricks.com>

Closes #9203 from davies/unsafe_cache.
2015-10-21 19:20:31 -07:00
Yanbo Liang 40a10d7675 [SPARK-9392][SQL] Dataframe drop should work on unresolved columns
Dataframe drop should work on unresolved columns

Author: Yanbo Liang <ybliang8@gmail.com>

Closes #8821 from yanboliang/spark-9392.
2015-10-21 17:50:33 -07:00
Yin Huai 3afe448d39 [SPARK-9740][SPARK-9592][SPARK-9210][SQL] Change the default behavior of First/Last to RESPECT NULLS.
I am changing the default behavior of `First`/`Last` to respect null values (the SQL standard default behavior).

https://issues.apache.org/jira/browse/SPARK-9740

Author: Yin Huai <yhuai@databricks.com>

Closes #8113 from yhuai/firstLast.
2015-10-21 13:43:17 -07:00
Davies Liu f8c6bec657 [SPARK-11197][SQL] run SQL on files directly
This PR introduce a new feature to run SQL directly on files without create a table, for example:

```
select id from json.`path/to/json/files` as j
```

Author: Davies Liu <davies@databricks.com>

Closes #9173 from davies/source.
2015-10-21 13:38:30 -07:00
Wenchen Fan 7c74ebca05 [SPARK-10743][SQL] keep the name of expression if possible when do cast
Author: Wenchen Fan <cloud0fan@163.com>

Closes #8859 from cloud-fan/cast.
2015-10-21 13:22:35 -07:00
Pravin Gadakh 8e82e59834 [SPARK-11037][SQL] using Option instead of Some in JdbcDialects
Using Option instead of Some in getCatalystType method.

Author: Pravin Gadakh <prgadakh@in.ibm.com>

Closes #9195 from pravingadakh/master.
2015-10-21 10:35:09 -07:00
Cheng Lian 89e6db6150 [SPARK-11153][SQL] Disables Parquet filter push-down for string and binary columns
Due to PARQUET-251, `BINARY` columns in existing Parquet files may be written with corrupted statistics information. This information is used by filter push-down optimization. Since Spark 1.5 turns on Parquet filter push-down by default, we may end up with wrong query results. PARQUET-251 has been fixed in parquet-mr 1.8.1, but Spark 1.5 is still using 1.7.0.

This affects all Spark SQL data types that can be mapped to Parquet {{BINARY}}, namely:

- `StringType`

- `BinaryType`

- `DecimalType`

  (But Spark SQL doesn't support pushing down filters involving `DecimalType` columns for now.)

To avoid wrong query results, we should disable filter push-down for columns of `StringType` and `BinaryType` until we upgrade to parquet-mr 1.8.

Author: Cheng Lian <lian@databricks.com>

Closes #9152 from liancheng/spark-11153.workaround-parquet-251.

(cherry picked from commit 0887e5e878)
Signed-off-by: Cheng Lian <lian@databricks.com>
2015-10-21 09:02:59 +08:00
Davies Liu 06e6b765d0 [SPARK-11149] [SQL] Improve cache performance for primitive types
This PR improve the performance by:

1) Generate an Iterator that take Iterator[CachedBatch] as input, and call accessors (unroll the loop for columns), avoid the expensive Iterator.flatMap.

2) Use Unsafe.getInt/getLong/getFloat/getDouble instead of ByteBuffer.getInt/getLong/getFloat/getDouble, the later one actually read byte by byte.

3) Remove the unnecessary copy() in Coalesce(), which is not related to memory cache, found during benchmark.

The following benchmark showed that we can speedup the columnar cache of int by 2x.

```
path = '/opt/tpcds/store_sales/'
int_cols = ['ss_sold_date_sk', 'ss_sold_time_sk', 'ss_item_sk','ss_customer_sk']
df = sqlContext.read.parquet(path).select(int_cols).cache()
df.count()

t = time.time()
print df.select("*")._jdf.queryExecution().toRdd().count()
print time.time() - t
```

Author: Davies Liu <davies@databricks.com>

Closes #9145 from davies/byte_buffer.
2015-10-20 14:01:53 -07:00
Davies Liu 67d468f8d9 [SPARK-11111] [SQL] fast null-safe join
Currently, we use CartesianProduct for join with null-safe-equal condition.
```
scala> sqlContext.sql("select * from t a join t b on (a.i <=> b.i)").explain
== Physical Plan ==
TungstenProject [i#2,j#3,i#7,j#8]
 Filter (i#2 <=> i#7)
  CartesianProduct
   LocalTableScan [i#2,j#3], [[1,1]]
   LocalTableScan [i#7,j#8], [[1,1]]
```
Actually, we can have an equal-join condition as  `coalesce(i, default) = coalesce(b.i, default)`, then an partitioned join algorithm could be used.

After this PR, the plan will become:
```
>>> sqlContext.sql("select * from a join b ON a.id <=> b.id").explain()
TungstenProject [id#0L,id#1L]
 Filter (id#0L <=> id#1L)
  SortMergeJoin [coalesce(id#0L,0)], [coalesce(id#1L,0)]
   TungstenSort [coalesce(id#0L,0) ASC], false, 0
    TungstenExchange hashpartitioning(coalesce(id#0L,0),200)
     ConvertToUnsafe
      Scan PhysicalRDD[id#0L]
   TungstenSort [coalesce(id#1L,0) ASC], false, 0
    TungstenExchange hashpartitioning(coalesce(id#1L,0),200)
     ConvertToUnsafe
      Scan PhysicalRDD[id#1L]
```

Author: Davies Liu <davies@databricks.com>

Closes #9120 from davies/null_safe.
2015-10-20 13:40:24 -07:00
Cheng Lian 8b877cc4ee [SPARK-11088][SQL] Merges partition values using UnsafeProjection
`DataSourceStrategy.mergeWithPartitionValues` is essentially a projection implemented in a quite inefficient way. This PR optimizes this method with `UnsafeProjection` to avoid unnecessary boxing costs.

Author: Cheng Lian <lian@databricks.com>

Closes #9104 from liancheng/spark-11088.faster-partition-values-merging.
2015-10-19 16:57:20 -07:00
Rishabh Bhardwaj 5966817941 [SPARK-11180][SQL] Support BooleanType in DataFrame.na.fill
Added support for boolean types in fill and replace methods

Author: Rishabh Bhardwaj <rbnext29@gmail.com>

Closes #9166 from rishabhbhardwaj/master.
2015-10-19 14:38:58 -07:00
Wenchen Fan 7893cd95db [SPARK-11119] [SQL] cleanup for unsafe array and map
The purpose of this PR is to keep the unsafe format detail only inside the unsafe class itself, so when we use them(like use unsafe array in unsafe map, use unsafe array and map in columnar cache), we don't need to understand the format before use them.

change list:
* unsafe array's 4-bytes numElements header is now required(was optional), and become a part of unsafe array format.
* w.r.t the previous changing, the `sizeInBytes` of unsafe array now counts the 4-bytes header.
* unsafe map's format was `[numElements] [key array numBytes] [key array content(without numElements header)] [value array content(without numElements header)]` before, which is a little hacky as it makes unsafe array's header optional. I think saving 4 bytes is not a big deal, so the format is now: `[key array numBytes] [unsafe key array] [unsafe value array]`.
* w.r.t the previous changing, the `sizeInBytes` of unsafe map now counts both map's header and array's header.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #9131 from cloud-fan/unsafe.
2015-10-19 11:02:26 -07:00
zsxwing beb8bc1ea5 [SPARK-11126][SQL] Fix the potential flaky test
The unit test added in #9132 is flaky. This is a follow up PR to add `listenerBus.waitUntilEmpty` to fix it.

Author: zsxwing <zsxwing@gmail.com>

Closes #9163 from zsxwing/SPARK-11126-follow-up.
2015-10-19 00:06:51 -07:00
zsxwing 94c8fef296 [SPARK-11126][SQL] Fix a memory leak in SQLListener._stageIdToStageMetrics
SQLListener adds all stage infos to `_stageIdToStageMetrics`, but only removes stage infos belonging to SQL executions. This PR fixed it by ignoring stages that don't belong to SQL executions.

Reported by Terry Hoo in https://www.mail-archive.com/userspark.apache.org/msg38810.html

Author: zsxwing <zsxwing@gmail.com>

Closes #9132 from zsxwing/SPARK-11126.
2015-10-18 13:51:45 -07:00
tedyu 3895b2113a [SPARK-11172] Close JsonParser/Generator in test
Author: tedyu <yuzhihong@gmail.com>

Closes #9157 from tedyu/master.
2015-10-18 02:12:56 -07:00
Koert Kuipers 57f83e36d6 [SPARK-10185] [SQL] Feat sql comma separated paths
Make sure comma-separated paths get processed correcly in ResolvedDataSource for a HadoopFsRelationProvider

Author: Koert Kuipers <koert@tresata.com>

Closes #8416 from koertkuipers/feat-sql-comma-separated-paths.
2015-10-17 14:56:24 -07:00
Pravin Gadakh 3d683a139b [SPARK-10581] [DOCS] Groups are not resolved in scaladoc in sql classes
Groups are not resolved properly in scaladoc in following classes:

sql/core/src/main/scala/org/apache/spark/sql/Column.scala
sql/core/src/main/scala/org/apache/spark/sql/SQLContext.scala
sql/core/src/main/scala/org/apache/spark/sql/functions.scala

Author: Pravin Gadakh <pravingadakh177@gmail.com>

Closes #9148 from pravingadakh/master.
2015-10-16 13:38:50 -07:00
navis.ryu b9c5e5d4ac [SPARK-11124] JsonParser/Generator should be closed for resource recycle
Some json parsers are not closed. parser in JacksonParser#parseJson, for example.

Author: navis.ryu <navis@apache.org>

Closes #9130 from navis/SPARK-11124.
2015-10-16 11:19:37 -07:00
Josh Rosen eb0b4d6e2d [SPARK-11135] [SQL] Exchange incorrectly skips sorts when existing ordering is non-empty subset of required ordering
In Spark SQL, the Exchange planner tries to avoid unnecessary sorts in cases where the data has already been sorted by a superset of the requested sorting columns. For instance, let's say that a query calls for an operator's input to be sorted by `a.asc` and the input happens to already be sorted by `[a.asc, b.asc]`. In this case, we do not need to re-sort the input. The converse, however, is not true: if the query calls for `[a.asc, b.asc]`, then `a.asc` alone will not satisfy the ordering requirements, requiring an additional sort to be planned by Exchange.

However, the current Exchange code gets this wrong and incorrectly skips sorting when the existing output ordering is a subset of the required ordering. This is simple to fix, however.

This bug was introduced in https://github.com/apache/spark/pull/7458, so it affects 1.5.0+.

This patch fixes the bug and significantly improves the unit test coverage of Exchange's sort-planning logic.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #9140 from JoshRosen/SPARK-11135.
2015-10-15 17:36:55 -07:00
Wenchen Fan 6a2359ff1f [SPARK-10412] [SQL] report memory usage for tungsten sql physical operator
https://issues.apache.org/jira/browse/SPARK-10412

some screenshots:
### aggregate:
![screen shot 2015-10-12 at 2 23 11 pm](https://cloud.githubusercontent.com/assets/3182036/10439534/618320a4-70ef-11e5-94d8-62ea7f2d1531.png)

### join
![screen shot 2015-10-12 at 2 23 29 pm](https://cloud.githubusercontent.com/assets/3182036/10439537/6724797c-70ef-11e5-8f75-0cf5cbd42048.png)

Author: Wenchen Fan <wenchen@databricks.com>
Author: Wenchen Fan <cloud0fan@163.com>

Closes #8931 from cloud-fan/viz.
2015-10-15 14:50:58 -07:00
Andrew Or 3b364ff0a4 [SPARK-11078] Ensure spilling tests actually spill
#9084 uncovered that many tests that test spilling don't actually spill. This is a follow-up patch to fix that to ensure our unit tests actually catch potential bugs in spilling. The size of this patch is inflated by the refactoring of `ExternalSorterSuite`, which had a lot of duplicate code and logic.

Author: Andrew Or <andrew@databricks.com>

Closes #9124 from andrewor14/spilling-tests.
2015-10-15 14:50:01 -07:00
Josh Rosen 4ace4f8a9c [SPARK-11017] [SQL] Support ImperativeAggregates in TungstenAggregate
This patch extends TungstenAggregate to support ImperativeAggregate functions. The existing TungstenAggregate operator only supported DeclarativeAggregate functions, which are defined in terms of Catalyst expressions and can be evaluated via generated projections. ImperativeAggregate functions, on the other hand, are evaluated by calling their `initialize`, `update`, `merge`, and `eval` methods.

The basic strategy here is similar to how SortBasedAggregate evaluates both types of aggregate functions: use a generated projection to evaluate the expression-based declarative aggregates with dummy placeholder expressions inserted in place of the imperative aggregate function output, then invoke the imperative aggregate functions and target them against the aggregation buffer. The bulk of the diff here consists of code that was copied and adapted from SortBasedAggregate, with some key changes to handle TungstenAggregate's sort fallback path.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #9038 from JoshRosen/support-interpreted-in-tungsten-agg-final.
2015-10-14 17:27:50 -07:00
Cheng Hao 1baaf2b9bd [SPARK-10829] [SQL] Filter combine partition key and attribute doesn't work in DataSource scan
```scala
withSQLConf(SQLConf.PARQUET_FILTER_PUSHDOWN_ENABLED.key -> "true") {
      withTempPath { dir =>
        val path = s"${dir.getCanonicalPath}/part=1"
        (1 to 3).map(i => (i, i.toString)).toDF("a", "b").write.parquet(path)

        // If the "part = 1" filter gets pushed down, this query will throw an exception since
        // "part" is not a valid column in the actual Parquet file
        checkAnswer(
          sqlContext.read.parquet(path).filter("a > 0 and (part = 0 or a > 1)"),
          (2 to 3).map(i => Row(i, i.toString, 1)))
      }
    }
```

We expect the result to be:
```
2,1
3,1
```
But got
```
1,1
2,1
3,1
```

Author: Cheng Hao <hao.cheng@intel.com>

Closes #8916 from chenghao-intel/partition_filter.
2015-10-14 16:29:32 -07:00
Reynold Xin 2b5e31c7e9 [SPARK-11113] [SQL] Remove DeveloperApi annotation from private classes.
o.a.s.sql.catalyst and o.a.s.sql.execution are supposed to be private.

Author: Reynold Xin <rxin@databricks.com>

Closes #9121 from rxin/SPARK-11113.
2015-10-14 16:27:43 -07:00
Wenchen Fan 56d7da14ab [SPARK-10104] [SQL] Consolidate different forms of table identifiers
Right now, we have QualifiedTableName, TableIdentifier, and Seq[String] to represent table identifiers. We should only have one form and TableIdentifier is the best one because it provides methods to get table name, database name, return unquoted string, and return quoted string.

Author: Wenchen Fan <wenchen@databricks.com>
Author: Wenchen Fan <cloud0fan@163.com>

Closes #8453 from cloud-fan/table-name.
2015-10-14 16:05:37 -07:00
Wenchen Fan 9a430a027f [SPARK-11068] [SQL] [FOLLOW-UP] move execution listener to util
Author: Wenchen Fan <wenchen@databricks.com>

Closes #9119 from cloud-fan/callback.
2015-10-14 15:08:13 -07:00
Huaxin Gao 7e1308d37f [SPARK-8386] [SQL] add write.mode for insertIntoJDBC when the parm overwrite is false
the fix is for jira https://issues.apache.org/jira/browse/SPARK-8386

Author: Huaxin Gao <huaxing@us.ibm.com>

Closes #9042 from huaxingao/spark8386.
2015-10-14 12:31:29 -07:00
Yin Huai ce3f9a8065 [SPARK-11091] [SQL] Change spark.sql.canonicalizeView to spark.sql.nativeView.
https://issues.apache.org/jira/browse/SPARK-11091

Author: Yin Huai <yhuai@databricks.com>

Closes #9103 from yhuai/SPARK-11091.
2015-10-13 18:21:24 -07:00
Wenchen Fan 15ff85b316 [SPARK-11068] [SQL] add callback to query execution
With this feature, we can track the query plan, time cost, exception during query execution for spark users.

Author: Wenchen Fan <cloud0fan@163.com>

Closes #9078 from cloud-fan/callback.
2015-10-13 17:59:32 -07:00
Wenchen Fan e170c22160 [SPARK-11032] [SQL] correctly handle having
We should not stop resolving having when the having condtion is resolved, or something like `count(1)` will crash.

Author: Wenchen Fan <cloud0fan@163.com>

Closes #9105 from cloud-fan/having.
2015-10-13 17:11:22 -07:00
Andrew Or b3ffac5178 [SPARK-10983] Unified memory manager
This patch unifies the memory management of the storage and execution regions such that either side can borrow memory from each other. When memory pressure arises, storage will be evicted in favor of execution. To avoid regressions in cases where storage is crucial, we dynamically allocate a fraction of space for storage that execution cannot evict. Several configurations are introduced:

- **spark.memory.fraction (default 0.75)**: ​fraction of the heap space used for execution and storage. The lower this is, the more frequently spills and cached data eviction occur. The purpose of this config is to set aside memory for internal metadata, user data structures, and imprecise size estimation in the case of sparse, unusually large records.

- **spark.memory.storageFraction (default 0.5)**: size of the storage region within the space set aside by `s​park.memory.fraction`. ​Cached data may only be evicted if total storage exceeds this region.

- **spark.memory.useLegacyMode (default false)**: whether to use the memory management that existed in Spark 1.5 and before. This is mainly for backward compatibility.

For a detailed description of the design, see [SPARK-10000](https://issues.apache.org/jira/browse/SPARK-10000). This patch builds on top of the `MemoryManager` interface introduced in #9000.

Author: Andrew Or <andrew@databricks.com>

Closes #9084 from andrewor14/unified-memory-manager.
2015-10-13 13:49:59 -07:00
Sun Rui 5e3868ba13 [SPARK-10051] [SPARKR] Support collecting data of StructType in DataFrame
Two points in this PR:

1.    Originally thought was that a named R list is assumed to be a struct in SerDe. But this is problematic because some R functions will implicitly generate named lists that are not intended to be a struct when transferred by SerDe. So SerDe clients have to explicitly mark a names list as struct by changing its class from "list" to "struct".

2.    SerDe is in the Spark Core module, and data of StructType is represented as GenricRow which is defined in Spark SQL module. SerDe can't import GenricRow as in maven build  Spark SQL module depends on Spark Core module. So this PR adds a registration hook in SerDe to allow SQLUtils in Spark SQL module to register its functions for serialization and deserialization of StructType.

Author: Sun Rui <rui.sun@intel.com>

Closes #8794 from sun-rui/SPARK-10051.
2015-10-13 10:02:21 -07:00
Davies Liu d0cc79ccd0 [SPARK-11030] [SQL] share the SQLTab across sessions
The SQLTab will be shared by multiple sessions.

If we create multiple independent SQLContexts (not using newSession()), will still see multiple SQLTabs in the Spark UI.

Author: Davies Liu <davies@databricks.com>

Closes #9048 from davies/sqlui.
2015-10-13 09:57:53 -07:00
Davies Liu 6987c06793 [SPARK-11009] [SQL] fix wrong result of Window function in cluster mode
Currently, All windows function could generate wrong result in cluster sometimes.

The root cause is that AttributeReference is called in executor, then id of it may not be unique than others created in driver.

Here is the script that could reproduce the problem (run in local cluster):
```
from pyspark import SparkContext, HiveContext
from pyspark.sql.window import Window
from pyspark.sql.functions import rowNumber

sqlContext = HiveContext(SparkContext())
sqlContext.setConf("spark.sql.shuffle.partitions", "3")
df =  sqlContext.range(1<<20)
df2 = df.select((df.id % 1000).alias("A"), (df.id / 1000).alias('B'))
ws = Window.partitionBy(df2.A).orderBy(df2.B)
df3 = df2.select("client", "date", rowNumber().over(ws).alias("rn")).filter("rn < 0")
assert df3.count() == 0
```

Author: Davies Liu <davies@databricks.com>
Author: Yin Huai <yhuai@databricks.com>

Closes #9050 from davies/wrong_window.
2015-10-13 09:43:33 -07:00
Davies Liu c4da5345a0 [SPARK-10990] [SPARK-11018] [SQL] improve unrolling of complex types
This PR improve the unrolling and read of complex types in columnar cache:
1) Using UnsafeProjection to do serialization of complex types, so they will not be serialized three times (two for actualSize)
2) Copy the bytes from UnsafeRow/UnsafeArrayData to ByteBuffer directly, avoiding the immediate byte[]
3) Using the underlying array in ByteBuffer to create UTF8String/UnsafeRow/UnsafeArrayData without copy.

Combine these optimizations,  we can reduce the unrolling time from 25s to 21s (20% less), reduce the scanning time from 3.5s to 2.5s (28% less).

```
df = sqlContext.read.parquet(path)
t = time.time()
df.cache()
df.count()
print 'unrolling', time.time() - t

for i in range(10):
    t = time.time()
    print df.select("*")._jdf.queryExecution().toRdd().count()
    print time.time() - t
```

The schema is
```
root
 |-- a: struct (nullable = true)
 |    |-- b: long (nullable = true)
 |    |-- c: string (nullable = true)
 |-- d: array (nullable = true)
 |    |-- element: long (containsNull = true)
 |-- e: map (nullable = true)
 |    |-- key: long
 |    |-- value: string (valueContainsNull = true)
```

Now the columnar cache depends on that UnsafeProjection support all the data types (including UDT), this PR also fix that.

Author: Davies Liu <davies@databricks.com>

Closes #9016 from davies/complex2.
2015-10-12 21:12:59 -07:00
Yin Huai 8a354bef55 [SPARK-11042] [SQL] Add a mechanism to ban creating multiple root SQLContexts/HiveContexts in a JVM
https://issues.apache.org/jira/browse/SPARK-11042

Author: Yin Huai <yhuai@databricks.com>

Closes #9058 from yhuai/SPARK-11042.
2015-10-12 13:50:34 -07:00
Cheng Lian 64b1d00e1a [SPARK-11007] [SQL] Adds dictionary aware Parquet decimal converters
For Parquet decimal columns that are encoded using plain-dictionary encoding, we can make the upper level converter aware of the dictionary, so that we can pre-instantiate all the decimals to avoid duplicated instantiation.

Note that plain-dictionary encoding isn't available for `FIXED_LEN_BYTE_ARRAY` for Parquet writer version `PARQUET_1_0`. So currently only decimals written as `INT32` and `INT64` can benefit from this optimization.

Author: Cheng Lian <lian@databricks.com>

Closes #9040 from liancheng/spark-11007.decimal-converter-dict-support.
2015-10-12 10:17:19 -07:00
Josh Rosen 595012ea8b [SPARK-11053] Remove use of KVIterator in SortBasedAggregationIterator
SortBasedAggregationIterator uses a KVIterator interface in order to process input rows as key-value pairs, but this use of KVIterator is unnecessary, slightly complicates the code, and might hurt performance. This patch refactors this code to remove the use of this extra layer of iterator wrapping and simplifies other parts of the code in the process.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #9066 from JoshRosen/sort-iterator-cleanup.
2015-10-11 18:11:08 -07:00
Rick Hillegas 12b7191d20 [SPARK-10855] [SQL] Add a JDBC dialect for Apache Derby
marmbrus
rxin

This patch adds a JdbcDialect class, which customizes the datatype mappings for Derby backends. The patch also adds unit tests for the new dialect, corresponding to the existing tests for other JDBC dialects.

JDBCSuite runs cleanly for me with this patch. So does JDBCWriteSuite, although it produces noise as described here: https://issues.apache.org/jira/browse/SPARK-10890

This patch is my original work, which I license to the ASF. I am a Derby contributor, so my ICLA is on file under SVN id "rhillegas": http://people.apache.org/committer-index.html

Touches the following files:

---------------------------------

org.apache.spark.sql.jdbc.JdbcDialects

Adds a DerbyDialect.

---------------------------------

org.apache.spark.sql.jdbc.JDBCSuite

Adds unit tests for the new DerbyDialect.

Author: Rick Hillegas <rhilleg@us.ibm.com>

Closes #8982 from rick-ibm/b_10855.
2015-10-09 13:36:51 -07:00
Andrew Or 67fbecbf32 [SPARK-10956] Common MemoryManager interface for storage and execution
This patch introduces a `MemoryManager` that is the central arbiter of how much memory to grant to storage and execution. This patch is primarily concerned only with refactoring while preserving the existing behavior as much as possible.

This is the first step away from the existing rigid separation of storage and execution memory, which has several major drawbacks discussed on the [issue](https://issues.apache.org/jira/browse/SPARK-10956). It is the precursor of a series of patches that will attempt to address those drawbacks.

Author: Andrew Or <andrew@databricks.com>
Author: Josh Rosen <joshrosen@databricks.com>
Author: andrewor14 <andrew@databricks.com>

Closes #9000 from andrewor14/memory-manager.
2015-10-08 21:44:59 -07:00
Davies Liu 3390b400d0 [SPARK-10810] [SPARK-10902] [SQL] Improve session management in SQL
This PR improve the sessions management by replacing the thread-local based to one SQLContext per session approach, introduce separated temporary tables and UDFs/UDAFs for each session.

A new session of SQLContext could be created by:

1) create an new SQLContext
2) call newSession() on existing SQLContext

For HiveContext, in order to reduce the cost for each session, the classloader and Hive client are shared across multiple sessions (created by newSession).

CacheManager is also shared by multiple sessions, so cache a table multiple times in different sessions will not cause multiple copies of in-memory cache.

Added jars are still shared by all the sessions, because SparkContext does not support sessions.

cc marmbrus yhuai rxin

Author: Davies Liu <davies@databricks.com>

Closes #8909 from davies/sessions.
2015-10-08 17:34:24 -07:00
Reynold Xin 84ea287178 [SPARK-10914] UnsafeRow serialization breaks when two machines have different Oops size.
UnsafeRow contains 3 pieces of information when pointing to some data in memory (an object, a base offset, and length). When the row is serialized with Java/Kryo serialization, the object layout in memory can change if two machines have different pointer width (Oops in JVM).

To reproduce, launch Spark using

MASTER=local-cluster[2,1,1024] bin/spark-shell --conf "spark.executor.extraJavaOptions=-XX:-UseCompressedOops"

And then run the following

scala> sql("select 1 xx").collect()

Author: Reynold Xin <rxin@databricks.com>

Closes #9030 from rxin/SPARK-10914.
2015-10-08 17:25:14 -07:00
Cheng Lian 02149ff08e [SPARK-8848] [SQL] Refactors Parquet write path to follow parquet-format
This PR refactors Parquet write path to follow parquet-format spec.  It's a successor of PR #7679, but with less non-essential changes.

Major changes include:

1.  Replaces `RowWriteSupport` and `MutableRowWriteSupport` with `CatalystWriteSupport`

    - Writes Parquet data using standard layout defined in parquet-format

      Specifically, we are now writing ...

      - ... arrays and maps in standard 3-level structure with proper annotations and field names
      - ... decimals as `INT32` and `INT64` whenever possible, and taking `FIXED_LEN_BYTE_ARRAY` as the final fallback

    - Supports legacy mode which is compatible with Spark 1.4 and prior versions

      The legacy mode is by default off, and can be turned on by flipping SQL option `spark.sql.parquet.writeLegacyFormat` to `true`.

    - Eliminates per value data type dispatching costs via prebuilt composed writer functions

1.  Cleans up the last pieces of old Parquet support code

As pointed out by rxin previously, we probably want to rename all those `Catalyst*` Parquet classes to `Parquet*` for clarity.  But I'd like to do this in a follow-up PR to minimize code review noises in this one.

Author: Cheng Lian <lian@databricks.com>

Closes #8988 from liancheng/spark-8848/standard-parquet-write-path.
2015-10-08 16:18:35 -07:00
Josh Rosen 2816c89b6a [SPARK-10988] [SQL] Reduce duplication in Aggregate2's expression rewriting logic
In `aggregate/utils.scala`, there is a substantial amount of duplication in the expression-rewriting logic. As a prerequisite to supporting imperative aggregate functions in `TungstenAggregate`, this patch refactors this file so that the same expression-rewriting logic is used for both `SortAggregate` and `TungstenAggregate`.

In order to allow both operators to use the same rewriting logic, `TungstenAggregationIterator. generateResultProjection()` has been updated so that it first evaluates all declarative aggregate functions' `evaluateExpression`s and writes the results into a temporary buffer, and then uses this temporary buffer and the grouping expressions to evaluate the final resultExpressions. This matches the logic in SortAggregateIterator, where this two-pass approach is necessary in order to support imperative aggregates. If this change turns out to cause performance regressions, then we can look into re-implementing the single-pass evaluation in a cleaner way as part of a followup patch.

Since the rewriting logic is now shared across both operators, this patch also extracts that logic and places it in `SparkStrategies`. This makes the rewriting logic a bit easier to follow, I think.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #9015 from JoshRosen/SPARK-10988.
2015-10-08 14:56:27 -07:00
Wenchen Fan af2a554487 [SPARK-10337] [SQL] fix hive views on non-hive-compatible tables.
add a new config to deal with this special case.

Author: Wenchen Fan <cloud0fan@163.com>

Closes #8990 from cloud-fan/view-master.
2015-10-08 12:42:10 -07:00
Yin Huai 82d275f27c [SPARK-10887] [SQL] Build HashedRelation outside of HashJoinNode.
This PR refactors `HashJoinNode` to take a existing `HashedRelation`. So, we can reuse this node for both `ShuffledHashJoin` and `BroadcastHashJoin`.

https://issues.apache.org/jira/browse/SPARK-10887

Author: Yin Huai <yhuai@databricks.com>

Closes #8953 from yhuai/SPARK-10887.
2015-10-08 11:56:44 -07:00
tedyu 2a6f614cd6 [SPARK-11006] Rename NullColumnAccess as NullColumnAccessor
davies
I think NullColumnAccessor follows same convention for other accessors

Author: tedyu <yuzhihong@gmail.com>

Closes #9028 from tedyu/master.
2015-10-08 11:51:58 -07:00
Cheng Lian 59b0606f33 [SPARK-10999] [SQL] Coalesce should be able to handle UnsafeRow
Author: Cheng Lian <lian@databricks.com>

Closes #9024 from liancheng/spark-10999.coalesce-unsafe-row-handling.
2015-10-08 09:20:36 -07:00
0x0FFF b8f849b546 [SPARK-7869][SQL] Adding Postgres JSON and JSONb data types support
This PR addresses [SPARK-7869](https://issues.apache.org/jira/browse/SPARK-7869)

Before the patch, attempt to load the table from Postgres with JSON/JSONb datatype caused error `java.sql.SQLException: Unsupported type 1111`
Postgres data types JSON and JSONb are now mapped to String on Spark side thus they can be loaded into DF and processed on Spark side

Example

Postgres:
```
create table test_json  (id int, value json);
create table test_jsonb (id int, value jsonb);

insert into test_json (id, value) values
(1, '{"field1":"value1","field2":"value2","field3":[1,2,3]}'::json),
(2, '{"field1":"value3","field2":"value4","field3":[4,5,6]}'::json),
(3, '{"field3":"value5","field4":"value6","field3":[7,8,9]}'::json);

insert into test_jsonb (id, value) values
(4, '{"field1":"value1","field2":"value2","field3":[1,2,3]}'::jsonb),
(5, '{"field1":"value3","field2":"value4","field3":[4,5,6]}'::jsonb),
(6, '{"field3":"value5","field4":"value6","field3":[7,8,9]}'::jsonb);
```

PySpark:
```
>>> import json
>>> df1 = sqlContext.read.jdbc("jdbc:postgresql://127.0.0.1:5432/test?user=testuser", "test_json")
>>> df1.map(lambda x: (x.id, json.loads(x.value))).map(lambda (id, value): (id, value.get('field3'))).collect()
[(1, [1, 2, 3]), (2, [4, 5, 6]), (3, [7, 8, 9])]
>>> df2 = sqlContext.read.jdbc("jdbc:postgresql://127.0.0.1:5432/test?user=testuser", "test_jsonb")
>>> df2.map(lambda x: (x.id, json.loads(x.value))).map(lambda (id, value): (id, value.get('field1'))).collect()
[(4, u'value1'), (5, u'value3'), (6, None)]
```

Author: 0x0FFF <programmerag@gmail.com>

Closes #8948 from 0x0FFF/SPARK-7869.
2015-10-07 23:12:35 -07:00
Davies Liu 075a0b6582 [SPARK-10917] [SQL] improve performance of complex type in columnar cache
This PR improve the performance of complex types in columnar cache by using UnsafeProjection instead of KryoSerializer.

A simple benchmark show that this PR could improve the performance of scanning a cached table with complex columns by 15x (comparing to Spark 1.5).

Here is the code used to benchmark:

```
df = sc.range(1<<23).map(lambda i: Row(a=Row(b=i, c=str(i)), d=range(10), e=dict(zip(range(10), [str(i) for i in range(10)])))).toDF()
df.write.parquet("table")
```
```
df = sqlContext.read.parquet("table")
df.cache()
df.count()
t = time.time()
print df.select("*")._jdf.queryExecution().toRdd().count()
print time.time() - t
```

Author: Davies Liu <davies@databricks.com>

Closes #8971 from davies/complex.
2015-10-07 15:58:07 -07:00
Josh Rosen 7e2e268289 [SPARK-9702] [SQL] Use Exchange to implement logical Repartition operator
This patch allows `Repartition` to support UnsafeRows. This is accomplished by implementing the logical `Repartition` operator in terms of `Exchange` and a new `RoundRobinPartitioning`.

Author: Josh Rosen <joshrosen@databricks.com>
Author: Liang-Chi Hsieh <viirya@appier.com>

Closes #8083 from JoshRosen/SPARK-9702.
2015-10-07 15:53:37 -07:00
Reynold Xin 6dbfd7ecf4 [SPARK-10982] [SQL] Rename ExpressionAggregate -> DeclarativeAggregate.
DeclarativeAggregate matches more closely with ImperativeAggregate we already have.

Author: Reynold Xin <rxin@databricks.com>

Closes #9013 from rxin/SPARK-10982.
2015-10-07 15:38:46 -07:00
Liang-Chi Hsieh c14aee4da9 [SPARK-10856][SQL] Mapping TimestampType to DATETIME for SQL Server jdbc dialect
JIRA: https://issues.apache.org/jira/browse/SPARK-10856

For Microsoft SQL Server, TimestampType should be mapped to DATETIME instead of TIMESTAMP.

Related information for the datatype mapping: https://msdn.microsoft.com/en-us/library/ms378878(v=sql.110).aspx

Author: Liang-Chi Hsieh <viirya@appier.com>

Closes #8978 from viirya/mysql-jdbc-timestamp.
2015-10-07 14:49:08 -07:00
Marcelo Vanzin 94fc57afdf [SPARK-10300] [BUILD] [TESTS] Add support for test tags in run-tests.py.
Author: Marcelo Vanzin <vanzin@cloudera.com>

Closes #8775 from vanzin/SPARK-10300.
2015-10-07 14:11:21 -07:00
Josh Rosen a9ecd06149 [SPARK-10941] [SQL] Refactor AggregateFunction2 and AlgebraicAggregate interfaces to improve code clarity
This patch refactors several of the Aggregate2 interfaces in order to improve code clarity.

The biggest change is a refactoring of the `AggregateFunction2` class hierarchy. In the old code, we had a class named `AlgebraicAggregate` that inherited from `AggregateFunction2`, added a new set of methods, then banned the use of the inherited methods. I found this to be fairly confusing because.

If you look carefully at the existing code, you'll see that subclasses of `AggregateFunction2` fall into two disjoint categories: imperative aggregation functions which directly extended `AggregateFunction2` and declarative, expression-based aggregate functions which extended `AlgebraicAggregate`. In order to make this more explicit, this patch refactors things so that `AggregateFunction2` is a sealed abstract class with two subclasses, `ImperativeAggregateFunction` and `ExpressionAggregateFunction`. The superclass, `AggregateFunction2`, now only contains methods and fields that are common to both subclasses.

After making this change, I updated the various AggregationIterator classes to comply with this new naming scheme. I also performed several small renamings in the aggregate interfaces themselves in order to improve clarity and rewrote or expanded a number of comments.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #8973 from JoshRosen/tungsten-agg-comments.
2015-10-07 13:19:49 -07:00
Davies Liu 27ecfe61f0 [SPARK-10938] [SQL] remove typeId in columnar cache
This PR remove the typeId in columnar cache, it's not needed anymore, it also remove DATE and TIMESTAMP (use INT/LONG instead).

Author: Davies Liu <davies@databricks.com>

Closes #8989 from davies/refactor_cache.
2015-10-06 08:45:31 -07:00
Wenchen Fan a609eb20d9 [SPARK-10934] [SQL] handle hashCode of unsafe array correctly
`Murmur3_x86_32.hashUnsafeWords` only accepts word-aligned bytes, but unsafe array is not.

Author: Wenchen Fan <cloud0fan@163.com>

Closes #8987 from cloud-fan/hash.
2015-10-05 17:31:54 -07:00
gweidner 314bc68435 [SPARK-7275] [SQL] Make LogicalRelation public
Given LogicalRelation (and other classes) were moved from sources package to execution.sources package, removed private[sql] to make LogicalRelation public to facilitate access for data sources.

Author: gweidner <gweidner@us.ibm.com>

Closes #8965 from gweidner/SPARK-7275.
2015-10-03 01:04:14 -07:00
Cheng Lian 01cd688f52 [SPARK-10400] [SQL] Renames SQLConf.PARQUET_FOLLOW_PARQUET_FORMAT_SPEC
We introduced SQL option `spark.sql.parquet.followParquetFormatSpec` while working on implementing Parquet backwards-compatibility rules in SPARK-6777. It indicates whether we should use legacy Parquet format adopted by Spark 1.4 and prior versions or the standard format defined in parquet-format spec to write Parquet files.

This option defaults to `false` and is marked as a non-public option (`isPublic = false`) because we haven't finished refactored Parquet write path. The problem is, the name of this option is somewhat confusing, because it's not super intuitive why we shouldn't follow the spec. Would be nice to rename it to `spark.sql.parquet.writeLegacyFormat`, and invert its default value (the two option names have opposite meanings).

Although this option is private in 1.5, we'll make it public in 1.6 after refactoring Parquet write path. So that users can decide whether to write Parquet files in standard format or legacy format.

Author: Cheng Lian <lian@databricks.com>

Closes #8566 from liancheng/spark-10400/deprecate-follow-parquet-format-spec.
2015-10-01 17:23:27 -07:00
Cheng Hao 4d8c7c6d1c [SPARK-10865] [SPARK-10866] [SQL] Fix bug of ceil/floor, which should returns long instead of the Double type
Floor & Ceiling function should returns Long type, rather than Double.

Verified with MySQL & Hive.

Author: Cheng Hao <hao.cheng@intel.com>

Closes #8933 from chenghao-intel/ceiling.
2015-10-01 11:48:15 -07:00
Nathan Howell 89ea0041ae [SPARK-9617] [SQL] Implement json_tuple
This is an implementation of Hive's `json_tuple` function using Jackson Streaming.

Author: Nathan Howell <nhowell@godaddy.com>

Closes #7946 from NathanHowell/SPARK-9617.
2015-09-30 15:33:12 -07:00
Reynold Xin 03cca5dce2 [SPARK-10770] [SQL] SparkPlan.executeCollect/executeTake should return InternalRow rather than external Row.
Author: Reynold Xin <rxin@databricks.com>

Closes #8900 from rxin/SPARK-10770-1.
2015-09-30 14:36:54 -04:00
Cheng Lian 4d5a005b0d [SPARK-10811] [SQL] Eliminates unnecessary byte array copying
When reading Parquet string and binary-backed decimal values, Parquet `Binary.getBytes` always returns a copied byte array, which is unnecessary. Since the underlying implementation of `Binary` values there is guaranteed to be `ByteArraySliceBackedBinary`, and Parquet itself never reuses underlying byte arrays, we can use `Binary.toByteBuffer.array()` to steal the underlying byte arrays without copying them.

This brings performance benefits when scanning Parquet string and binary-backed decimal columns. Note that, this trick doesn't cover binary-backed decimals with precision greater than 18.

My micro-benchmark result is that, this brings a ~15% performance boost for scanning TPC-DS `store_sales` table (scale factor 15).

Another minor optimization done in this PR is that, now we directly construct a Java `BigDecimal` in `Decimal.toJavaBigDecimal` without constructing a Scala `BigDecimal` first. This brings another ~5% performance gain.

Author: Cheng Lian <lian@databricks.com>

Closes #8907 from liancheng/spark-10811/eliminate-array-copying.
2015-09-29 23:30:27 -07:00
Davies Liu ea02e5513a [SPARK-10859] [SQL] fix stats of StringType in columnar cache
The UTF8String may come from UnsafeRow, then underline buffer of it is not copied, so we should clone it in order to hold it in Stats.

cc yhuai

Author: Davies Liu <davies@databricks.com>

Closes #8929 from davies/pushdown_string.
2015-09-28 14:40:40 -07:00
Cheng Lian 14978b785a [SPARK-10395] [SQL] Simplifies CatalystReadSupport
Please refer to [SPARK-10395] [1] for details.

[1]: https://issues.apache.org/jira/browse/SPARK-10395

Author: Cheng Lian <lian@databricks.com>

Closes #8553 from liancheng/spark-10395/simplify-parquet-read-support.
2015-09-28 13:53:45 -07:00
Holden Karau 8ecba3e86e [SPARK-10720] [SQL] [JAVA] Add a java wrapper to create a dataframe from a local list of java beans
Similar to SPARK-10630 it would be nice if Java users didn't have to parallelize there data explicitly (as Scala users already can skip). Issue came up in http://stackoverflow.com/questions/32613413/apache-spark-machine-learning-cant-get-estimator-example-to-work

Author: Holden Karau <holden@pigscanfly.ca>

Closes #8879 from holdenk/SPARK-10720-add-a-java-wrapper-to-create-a-dataframe-from-a-local-list-of-java-beans.
2015-09-27 21:16:15 +01:00
Wenchen Fan 418e5e4cbd [SPARK-10741] [SQL] Hive Query Having/OrderBy against Parquet table is not working
https://issues.apache.org/jira/browse/SPARK-10741
I choose the second approach: do not change output exprIds when convert MetastoreRelation to LogicalRelation

Author: Wenchen Fan <cloud0fan@163.com>

Closes #8889 from cloud-fan/hot-bug.
2015-09-27 09:08:38 -07:00
Matei Zaharia 21fd12cb17 [SPARK-9852] Let reduce tasks fetch multiple map output partitions
This makes two changes:

- Allow reduce tasks to fetch multiple map output partitions -- this is a pretty small change to HashShuffleFetcher
- Move shuffle locality computation out of DAGScheduler and into ShuffledRDD / MapOutputTracker; this was needed because the code in DAGScheduler wouldn't work for RDDs that fetch multiple map output partitions from each reduce task

I also added an AdaptiveSchedulingSuite that creates RDDs depending on multiple map output partitions.

Author: Matei Zaharia <matei@databricks.com>

Closes #8844 from mateiz/spark-9852.
2015-09-24 23:39:04 -04:00
Liang-Chi Hsieh b3862d3c59 [SPARK-10705] [SQL] Avoid using external rows in DataFrame.toJSON
JIRA: https://issues.apache.org/jira/browse/SPARK-10705

As described in the JIRA ticket, `DataFrame.toJSON` uses `DataFrame.mapPartitions`, which converts internal rows to external rows. We should use `queryExecution.toRdd.mapPartitions` that directly uses internal rows for better performance.

Author: Liang-Chi Hsieh <viirya@appier.com>

Closes #8865 from viirya/df-tojson-internalrow.
2015-09-24 12:52:11 -07:00
Wenchen Fan 341b13f8f5 [SPARK-10765] [SQL] use new aggregate interface for hive UDAF
Author: Wenchen Fan <cloud0fan@163.com>

Closes #8874 from cloud-fan/hive-agg.
2015-09-24 09:54:07 -07:00
Andrew Or 83f6f54d12 [SPARK-10474] [SQL] Aggregation fails to allocate memory for pointer array (round 2)
This patch reverts most of the changes in a previous fix #8827.

The real cause of the issue is that in `TungstenAggregate`'s prepare method we only reserve 1 page, but later when we switch to sort-based aggregation we try to acquire 1 page AND a pointer array. The longer-term fix should be to reserve also the pointer array, but for now ***we will simply not track the pointer array***. (Note that elsewhere we already don't track the pointer array, e.g. [here](a18208047f/sql/core/src/main/java/org/apache/spark/sql/execution/UnsafeKVExternalSorter.java (L88)))

Note: This patch reuses the unit test added in #8827 so it doesn't show up in the diff.

Author: Andrew Or <andrew@databricks.com>

Closes #8888 from andrewor14/dont-track-pointer-array.
2015-09-23 19:34:31 -07:00
Reynold Xin 9952217749 [SPARK-10731] [SQL] Delegate to Scala's DataFrame.take implementation in Python DataFrame.
Python DataFrame.head/take now requires scanning all the partitions. This pull request changes them to delegate the actual implementation to Scala DataFrame (by calling DataFrame.take).

This is more of a hack for fixing this issue in 1.5.1. A more proper fix is to change executeCollect and executeTake to return InternalRow rather than Row, and thus eliminate the extra round-trip conversion.

Author: Reynold Xin <rxin@databricks.com>

Closes #8876 from rxin/SPARK-10731.
2015-09-23 16:43:21 -07:00
Josh Rosen a18208047f [SPARK-10403] Allow UnsafeRowSerializer to work with tungsten-sort ShuffleManager
This patch attempts to fix an issue where Spark SQL's UnsafeRowSerializer was incompatible with the `tungsten-sort` ShuffleManager.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #8873 from JoshRosen/SPARK-10403.
2015-09-23 11:31:01 -07:00
Reynold Xin a96ba40f7e [SPARK-10714] [SPARK-8632] [SPARK-10685] [SQL] Refactor Python UDF handling
This patch refactors Python UDF handling:

1. Extract the per-partition Python UDF calling logic from PythonRDD into a PythonRunner. PythonRunner itself expects iterator as input/output, and thus has no dependency on RDD. This way, we can use PythonRunner directly in a mapPartitions call, or in the future in an environment without RDDs.
2. Use PythonRunner in Spark SQL's BatchPythonEvaluation.
3. Updated BatchPythonEvaluation to only use its input once, rather than twice. This should fix Python UDF performance regression in Spark 1.5.

There are a number of small cleanups I wanted to do when I looked at the code, but I kept most of those out so the diff looks small.

This basically implements the approach in https://github.com/apache/spark/pull/8833, but with some code moving around so the correctness doesn't depend on the inner workings of Spark serialization and task execution.

Author: Reynold Xin <rxin@databricks.com>

Closes #8835 from rxin/python-iter-refactor.
2015-09-22 14:11:46 -07:00
Yin Huai 5aea987c90 [SPARK-10737] [SQL] When using UnsafeRows, SortMergeJoin may return wrong results
https://issues.apache.org/jira/browse/SPARK-10737

Author: Yin Huai <yhuai@databricks.com>

Closes #8854 from yhuai/SMJBug.
2015-09-22 13:31:35 -07:00
Wenchen Fan 5017c685f4 [SPARK-10740] [SQL] handle nondeterministic expressions correctly for set operations
https://issues.apache.org/jira/browse/SPARK-10740

Author: Wenchen Fan <cloud0fan@163.com>

Closes #8858 from cloud-fan/non-deter.
2015-09-22 12:14:59 -07:00
Reynold Xin f3b727c801 [SQL] [MINOR] map -> foreach.
DataFrame.explain should use foreach to print the explain content.

Author: Reynold Xin <rxin@databricks.com>

Closes #8862 from rxin/map-foreach.
2015-09-22 00:09:29 -07:00
Liang-Chi Hsieh 1fcefef069 [SPARK-10446][SQL] Support to specify join type when calling join with usingColumns
JIRA: https://issues.apache.org/jira/browse/SPARK-10446

Currently the method `join(right: DataFrame, usingColumns: Seq[String])` only supports inner join. It is more convenient to have it support other join types.

Author: Liang-Chi Hsieh <viirya@appier.com>

Closes #8600 from viirya/usingcolumns_df.
2015-09-21 23:46:00 -07:00
Ewan Leith 781b21ba2a [SPARK-10419] [SQL] Adding SQLServer support for datetimeoffset types to JdbcDialects
Reading from Microsoft SQL Server over jdbc fails when the table contains datetimeoffset types.

This patch registers a SQLServer JDBC Dialect that maps datetimeoffset to a String, as Microsoft suggest.

Author: Ewan Leith <ewan.leith@realitymine.com>

Closes #8575 from realitymine-coordinator/sqlserver.
2015-09-21 23:43:20 -07:00
Yin Huai 0494c80ef5 [SPARK-10495] [SQL] Read date values in JSON data stored by Spark 1.5.0.
https://issues.apache.org/jira/browse/SPARK-10681

Author: Yin Huai <yhuai@databricks.com>

Closes #8806 from yhuai/SPARK-10495.
2015-09-21 18:06:45 -07:00
Holden Karau 362539f8d9 [SPARK-10630] [SQL] Add a createDataFrame API that takes in a java list
It would be nice to support creating a DataFrame directly from a Java List of Row.

Author: Holden Karau <holden@pigscanfly.ca>

Closes #8779 from holdenk/SPARK-10630-create-DataFrame-from-Java-List.
2015-09-21 13:33:10 -07:00
Josh Rosen 2117eea71e [SPARK-10710] Remove ability to disable spilling in core and SQL
It does not make much sense to set `spark.shuffle.spill` or `spark.sql.planner.externalSort` to false: I believe that these configurations were initially added as "escape hatches" to guard against bugs in the external operators, but these operators are now mature and well-tested. In addition, these configurations are not handled in a consistent way anymore: SQL's Tungsten codepath ignores these configurations and will continue to use spilling operators. Similarly, Spark Core's `tungsten-sort` shuffle manager does not respect `spark.shuffle.spill=false`.

This pull request removes these configurations, adds warnings at the appropriate places, and deletes a large amount of code which was only used in code paths that did not support spilling.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #8831 from JoshRosen/remove-ability-to-disable-spilling.
2015-09-19 21:40:21 -07:00
zsxwing e789000b88 [SPARK-10155] [SQL] Change SqlParser to object to avoid memory leak
Since `scala.util.parsing.combinator.Parsers` is thread-safe since Scala 2.10 (See [SI-4929](https://issues.scala-lang.org/browse/SI-4929)), we can change SqlParser to object to avoid memory leak.

I didn't change other subclasses of `scala.util.parsing.combinator.Parsers` because there is only one instance in one SQLContext, which should not be an issue.

Author: zsxwing <zsxwing@gmail.com>

Closes #8357 from zsxwing/sql-memory-leak.
2015-09-19 18:22:43 -07:00
Andrew Or 7ff8d68cc1 [SPARK-10474] [SQL] Aggregation fails to allocate memory for pointer array
When `TungstenAggregation` hits memory pressure, it switches from hash-based to sort-based aggregation in-place. However, in the process we try to allocate the pointer array for writing to the new `UnsafeExternalSorter` *before* actually freeing the memory from the hash map. This lead to the following exception:
```
 java.io.IOException: Could not acquire 65536 bytes of memory
        at org.apache.spark.util.collection.unsafe.sort.UnsafeExternalSorter.initializeForWriting(UnsafeExternalSorter.java:169)
        at org.apache.spark.util.collection.unsafe.sort.UnsafeExternalSorter.spill(UnsafeExternalSorter.java:220)
        at org.apache.spark.sql.execution.UnsafeKVExternalSorter.<init>(UnsafeKVExternalSorter.java:126)
        at org.apache.spark.sql.execution.UnsafeFixedWidthAggregationMap.destructAndCreateExternalSorter(UnsafeFixedWidthAggregationMap.java:257)
        at org.apache.spark.sql.execution.aggregate.TungstenAggregationIterator.switchToSortBasedAggregation(TungstenAggregationIterator.scala:435)
```

Author: Andrew Or <andrew@databricks.com>

Closes #8827 from andrewor14/allocate-pointer-array.
2015-09-18 23:58:25 -07:00
Yijie Shen c6f8135ee5 [SPARK-10539] [SQL] Project should not be pushed down through Intersect or Except #8742
Intersect and Except are both set operators and they use the all the columns to compare equality between rows. When pushing their Project parent down, the relations they based on would change, therefore not an equivalent transformation.

JIRA: https://issues.apache.org/jira/browse/SPARK-10539

I added some comments based on the fix of https://github.com/apache/spark/pull/8742.

Author: Yijie Shen <henry.yijieshen@gmail.com>
Author: Yin Huai <yhuai@databricks.com>

Closes #8823 from yhuai/fix_set_optimization.
2015-09-18 13:20:13 -07:00
Yash Datta 20fd35dfd1 [SPARK-10451] [SQL] Prevent unnecessary serializations in InMemoryColumnarTableScan
Many of the fields in InMemoryColumnar scan and InMemoryRelation can be made transient.

This  reduces my 1000ms job to abt 700 ms . The task size reduces from 2.8 mb to ~1300kb

Author: Yash Datta <Yash.Datta@guavus.com>

Closes #8604 from saucam/serde.
2015-09-18 08:22:38 -07:00
Yin Huai aad644fbe2 [SPARK-10639] [SQL] Need to convert UDAF's result from scala to sql type
https://issues.apache.org/jira/browse/SPARK-10639

Author: Yin Huai <yhuai@databricks.com>

Closes #8788 from yhuai/udafConversion.
2015-09-17 11:14:52 -07:00
Liang-Chi Hsieh 2a508df20d [SPARK-10459] [SQL] Do not need to have ConvertToSafe for PythonUDF
JIRA: https://issues.apache.org/jira/browse/SPARK-10459

As mentioned in the JIRA, `PythonUDF` actually could process `UnsafeRow`.

Specially, the rows in `childResults` in `BatchPythonEvaluation` will be projected to a `MutableRow`. So I think we can enable `canProcessUnsafeRows` for `BatchPythonEvaluation` and get rid of redundant `ConvertToSafe`.

Author: Liang-Chi Hsieh <viirya@appier.com>

Closes #8616 from viirya/pyudf-unsafe.
2015-09-17 09:21:21 -07:00
Sun Rui 896edb51ab [SPARK-10050] [SPARKR] Support collecting data of MapType in DataFrame.
1. Support collecting data of MapType from DataFrame.
2. Support data of MapType in createDataFrame.

Author: Sun Rui <rui.sun@intel.com>

Closes #8711 from sun-rui/SPARK-10050.
2015-09-16 13:20:39 -07:00
sureshthalamati 64c29afcb7 [SPARK-9078] [SQL] Allow jdbc dialects to override the query used to check the table.
Current implementation uses query with a LIMIT clause to find if table already exists. This syntax works only in some database systems. This patch changes the default query to the one that is likely to work on most databases, and adds a new method to the  JdbcDialect abstract class to allow  dialects to override the default query.

I looked at using the JDBC meta data calls, it turns out there is no common way to find the current schema, catalog..etc.  There is a new method Connection.getSchema() , but that is available only starting jdk1.7 , and existing jdbc drivers may not have implemented it.  Other option was to use jdbc escape syntax clause for LIMIT, not sure on how well this supported in all the databases also. After looking at all the jdbc metadata options my conclusion was most common way is to use the simple select query with 'where 1 =0' , and allow dialects to customize as needed

Author: sureshthalamati <suresh.thalamati@gmail.com>

Closes #8676 from sureshthalamati/table_exists_spark-9078.
2015-09-15 19:41:38 -07:00
Andrew Or 35a19f3357 [SPARK-10613] [SPARK-10624] [SQL] Reduce LocalNode tests dependency on SQLContext
Instead of relying on `DataFrames` to verify our answers, we can just use simple arrays. This significantly simplifies the test logic for `LocalNode`s and reduces a lot of code duplicated from `SparkPlanTest`.

This also fixes an additional issue [SPARK-10624](https://issues.apache.org/jira/browse/SPARK-10624) where the output of `TakeOrderedAndProjectNode` is not actually ordered.

Author: Andrew Or <andrew@databricks.com>

Closes #8764 from andrewor14/sql-local-tests-cleanup.
2015-09-15 17:24:32 -07:00
Josh Rosen 38700ea40c [SPARK-10381] Fix mixup of taskAttemptNumber & attemptId in OutputCommitCoordinator
When speculative execution is enabled, consider a scenario where the authorized committer of a particular output partition fails during the OutputCommitter.commitTask() call. In this case, the OutputCommitCoordinator is supposed to release that committer's exclusive lock on committing once that task fails. However, due to a unit mismatch (we used task attempt number in one place and task attempt id in another) the lock will not be released, causing Spark to go into an infinite retry loop.

This bug was masked by the fact that the OutputCommitCoordinator does not have enough end-to-end tests (the current tests use many mocks). Other factors contributing to this bug are the fact that we have many similarly-named identifiers that have different semantics but the same data types (e.g. attemptNumber and taskAttemptId, with inconsistent variable naming which makes them difficult to distinguish).

This patch adds a regression test and fixes this bug by always using task attempt numbers throughout this code.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #8544 from JoshRosen/SPARK-10381.
2015-09-15 17:11:21 -07:00
Reynold Xin a63cdc769f [SPARK-10612] [SQL] Add prepare to LocalNode.
The idea is that we should separate the function call that does memory reservation (i.e. prepare) from the function call that consumes the input (e.g. open()), so all operators can be a chance to reserve memory before they are all consumed.

Author: Reynold Xin <rxin@databricks.com>

Closes #8761 from rxin/SPARK-10612.
2015-09-15 16:53:27 -07:00
Andrew Or b6e998634e [SPARK-10548] [SPARK-10563] [SQL] Fix concurrent SQL executions
*Note: this is for master branch only.* The fix for branch-1.5 is at #8721.

The query execution ID is currently passed from a thread to its children, which is not the intended behavior. This led to `IllegalArgumentException: spark.sql.execution.id is already set` when running queries in parallel, e.g.:
```
(1 to 100).par.foreach { _ =>
  sc.parallelize(1 to 5).map { i => (i, i) }.toDF("a", "b").count()
}
```
The cause is `SparkContext`'s local properties are inherited by default. This patch adds a way to exclude keys we don't want to be inherited, and makes SQL go through that code path.

Author: Andrew Or <andrew@databricks.com>

Closes #8710 from andrewor14/concurrent-sql-executions.
2015-09-15 16:45:47 -07:00
Liang-Chi Hsieh 841972e22c [SPARK-10437] [SQL] Support aggregation expressions in Order By
JIRA: https://issues.apache.org/jira/browse/SPARK-10437

If an expression in `SortOrder` is a resolved one, such as `count(1)`, the corresponding rule in `Analyzer` to make it work in order by will not be applied.

Author: Liang-Chi Hsieh <viirya@appier.com>

Closes #8599 from viirya/orderby-agg.
2015-09-15 13:33:32 -07:00
Marcelo Vanzin b42059d2ef Revert "[SPARK-10300] [BUILD] [TESTS] Add support for test tags in run-tests.py."
This reverts commit 8abef21dac.
2015-09-15 13:03:38 -07:00
Marcelo Vanzin 8abef21dac [SPARK-10300] [BUILD] [TESTS] Add support for test tags in run-tests.py.
This change does two things:

- tag a few tests and adds the mechanism in the build to be able to disable those tags,
  both in maven and sbt, for both junit and scalatest suites.
- add some logic to run-tests.py to disable some tags depending on what files have
  changed; that's used to disable expensive tests when a module hasn't explicitly
  been changed, to speed up testing for changes that don't directly affect those
  modules.

Author: Marcelo Vanzin <vanzin@cloudera.com>

Closes #8437 from vanzin/test-tags.
2015-09-15 10:45:02 -07:00
Reynold Xin 09b7e7c198 Update version to 1.6.0-SNAPSHOT.
Author: Reynold Xin <rxin@databricks.com>

Closes #8350 from rxin/1.6.
2015-09-15 00:54:20 -07:00
zsxwing 217e496444 [SPARK-9996] [SPARK-9997] [SQL] Add local expand and NestedLoopJoin operators
This PR is in conflict with #8535 and #8573. Will update this one when they are merged.

Author: zsxwing <zsxwing@gmail.com>

Closes #8642 from zsxwing/expand-nest-join.
2015-09-14 15:00:27 -07:00
Edoardo Vacchi 64f04154e3 [SPARK-6981] [SQL] Factor out SparkPlanner and QueryExecution from SQLContext
Alternative to PR #6122; in this case the refactored out classes are replaced by inner classes with the same name for backwards binary compatibility

   * process in a lighter-weight, backwards-compatible way

Author: Edoardo Vacchi <uncommonnonsense@gmail.com>

Closes #6356 from evacchi/sqlctx-refactoring-lite.
2015-09-14 14:56:04 -07:00
Josh Rosen b3a7480ab0 [SPARK-10330] Add Scalastyle rule to require use of SparkHadoopUtil JobContext methods
This is a followup to #8499 which adds a Scalastyle rule to mandate the use of SparkHadoopUtil's JobContext accessor methods and fixes the existing violations.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #8521 from JoshRosen/SPARK-10330-part2.
2015-09-12 16:23:55 -07:00
JihongMa f4a22808e0 [SPARK-6548] Adding stddev to DataFrame functions
Adding STDDEV support for DataFrame using 1-pass online /parallel algorithm to compute variance. Please review the code change.

Author: JihongMa <linlin200605@gmail.com>
Author: Jihong MA <linlin200605@gmail.com>
Author: Jihong MA <jihongma@jihongs-mbp.usca.ibm.com>
Author: Jihong MA <jihongma@Jihongs-MacBook-Pro.local>

Closes #6297 from JihongMA/SPARK-SQL.
2015-09-12 10:17:15 -07:00
Sean Owen 22730ad54d [SPARK-10547] [TEST] Streamline / improve style of Java API tests
Fix a few Java API test style issues: unused generic types, exceptions, wrong assert argument order

Author: Sean Owen <sowen@cloudera.com>

Closes #8706 from srowen/SPARK-10547.
2015-09-12 10:40:10 +01:00
Andrew Or c2af42b5f3 [SPARK-9990] [SQL] Local hash join follow-ups
1. Hide `LocalNodeIterator` behind the `LocalNode#asIterator` method
2. Add tests for this

Author: Andrew Or <andrew@databricks.com>

Closes #8708 from andrewor14/local-hash-join-follow-up.
2015-09-11 15:01:37 -07:00
zsxwing e626ac5f5c [SPARK-9992] [SPARK-9994] [SPARK-9998] [SQL] Implement the local TopK, sample and intersect operators
This PR is in conflict with #8535. I will update this one when #8535 gets merged.

Author: zsxwing <zsxwing@gmail.com>

Closes #8573 from zsxwing/more-local-operators.
2015-09-11 15:00:13 -07:00
Cheng Lian e1d7f64296 [SPARK-10472] [SQL] Fixes DataType.typeName for UDT
Before this fix, `MyDenseVectorUDT.typeName` gives `mydensevecto`, which is not desirable.

Author: Cheng Lian <lian@databricks.com>

Closes #8640 from liancheng/spark-10472/udt-type-name.
2015-09-11 18:26:56 +08:00
Andrew Or 3db72554be [SPARK-10443] [SQL] Refactor SortMergeOuterJoin to reduce duplication
`LeftOutputIterator` and `RightOutputIterator` are symmetrically identical and can share a lot of code. If someone makes a change in one but forgets to do the same thing in the other we'll end up with inconsistent behavior. This patch also adds inline comments to clarify the intention of the code.

Author: Andrew Or <andrew@databricks.com>

Closes #8596 from andrewor14/smoj-cleanup.
2015-09-10 13:22:35 -07:00
Sun Rui 45e3be5c13 [SPARK-10049] [SPARKR] Support collecting data of ArraryType in DataFrame.
this PR :
1.  Enhance reflection in RBackend. Automatically matching a Java array to Scala Seq when finding methods. Util functions like seq(), listToSeq() in R side can be removed, as they will conflict with the Serde logic that transferrs a Scala seq to R side.

2.  Enhance the SerDe to support transferring  a Scala seq to R side. Data of ArrayType in DataFrame
after collection is observed to be of Scala Seq type.

3.  Support ArrayType in createDataFrame().

Author: Sun Rui <rui.sun@intel.com>

Closes #8458 from sun-rui/SPARK-10049.
2015-09-10 12:21:13 -07:00
zsxwing d88abb7e21 [SPARK-9990] [SQL] Create local hash join operator
This PR includes the following changes:
- Add SQLConf to LocalNode
- Add HashJoinNode
- Add ConvertToUnsafeNode and ConvertToSafeNode.scala to test unsafe hash join.

Author: zsxwing <zsxwing@gmail.com>

Closes #8535 from zsxwing/SPARK-9990.
2015-09-10 12:06:49 -07:00
Cheng Hao e048111376 [SPARK-10466] [SQL] UnsafeRow SerDe exception with data spill
Data Spill with UnsafeRow causes assert failure.

```
java.lang.AssertionError: assertion failed
	at scala.Predef$.assert(Predef.scala:165)
	at org.apache.spark.sql.execution.UnsafeRowSerializerInstance$$anon$2.writeKey(UnsafeRowSerializer.scala:75)
	at org.apache.spark.storage.DiskBlockObjectWriter.write(DiskBlockObjectWriter.scala:180)
	at org.apache.spark.util.collection.ExternalSorter$$anonfun$writePartitionedFile$2$$anonfun$apply$1.apply(ExternalSorter.scala:688)
	at org.apache.spark.util.collection.ExternalSorter$$anonfun$writePartitionedFile$2$$anonfun$apply$1.apply(ExternalSorter.scala:687)
	at scala.collection.Iterator$class.foreach(Iterator.scala:727)
	at scala.collection.AbstractIterator.foreach(Iterator.scala:1157)
	at org.apache.spark.util.collection.ExternalSorter$$anonfun$writePartitionedFile$2.apply(ExternalSorter.scala:687)
	at org.apache.spark.util.collection.ExternalSorter$$anonfun$writePartitionedFile$2.apply(ExternalSorter.scala:683)
	at scala.collection.Iterator$class.foreach(Iterator.scala:727)
	at scala.collection.AbstractIterator.foreach(Iterator.scala:1157)
	at org.apache.spark.util.collection.ExternalSorter.writePartitionedFile(ExternalSorter.scala:683)
	at org.apache.spark.shuffle.sort.SortShuffleWriter.write(SortShuffleWriter.scala:80)
	at org.apache.spark.scheduler.ShuffleMapTask.runTask(ShuffleMapTask.scala:73)
	at org.apache.spark.scheduler.ShuffleMapTask.runTask(ShuffleMapTask.scala:41)
	at org.apache.spark.scheduler.Task.run(Task.scala:88)
	at org.apache.spark.executor.Executor$TaskRunner.run(Executor.scala:214)
```

To reproduce that with code (thanks andrewor14):
```scala
bin/spark-shell --master local
  --conf spark.shuffle.memoryFraction=0.005
  --conf spark.shuffle.sort.bypassMergeThreshold=0

sc.parallelize(1 to 2 * 1000 * 1000, 10)
  .map { i => (i, i) }.toDF("a", "b").groupBy("b").avg().count()
```

Author: Cheng Hao <hao.cheng@intel.com>

Closes #8635 from chenghao-intel/unsafe_spill.
2015-09-10 11:48:43 -07:00
Cheng Lian 49da38e5f7 [SPARK-10301] [SPARK-10428] [SQL] Addresses comments of PR #8583 and #8509 for master
Author: Cheng Lian <lian@databricks.com>

Closes #8670 from liancheng/spark-10301/address-pr-comments.
2015-09-10 11:01:08 -07:00
Liang-Chi Hsieh 45de518742 [SPARK-9730] [SQL] Add Full Outer Join support for SortMergeJoin
This PR is based on #8383 , thanks to viirya

JIRA: https://issues.apache.org/jira/browse/SPARK-9730

This patch adds the Full Outer Join support for SortMergeJoin. A new class SortMergeFullJoinScanner is added to scan rows from left and right iterators. FullOuterIterator is simply a wrapper of type RowIterator to consume joined rows from SortMergeFullJoinScanner.

Closes #8383

Author: Liang-Chi Hsieh <viirya@appier.com>
Author: Davies Liu <davies@databricks.com>

Closes #8579 from davies/smj_fullouter.
2015-09-09 16:02:27 -07:00
Luc Bourlier c1bc4f439f [SPARK-10227] fatal warnings with sbt on Scala 2.11
The bulk of the changes are on `transient` annotation on class parameter. Often the compiler doesn't generate a field for this parameters, so the the transient annotation would be unnecessary.
But if the class parameter are used in methods, then fields are created. So it is safer to keep the annotations.

The remainder are some potential bugs, and deprecated syntax.

Author: Luc Bourlier <luc.bourlier@typesafe.com>

Closes #8433 from skyluc/issue/sbt-2.11.
2015-09-09 09:57:58 +01:00
Michael Armbrust 2143d592c8 [HOTFIX] Fix build break caused by #8494
Author: Michael Armbrust <michael@databricks.com>

Closes #8659 from marmbrus/testBuildBreak.
2015-09-08 16:51:45 -07:00
Cheng Hao d637a666d5 [SPARK-10327] [SQL] Cache Table is not working while subquery has alias in its project list
```scala
    import org.apache.spark.sql.hive.execution.HiveTableScan
    sql("select key, value, key + 1 from src").registerTempTable("abc")
    cacheTable("abc")

    val sparkPlan = sql(
      """select a.key, b.key, c.key from
        |abc a join abc b on a.key=b.key
        |join abc c on a.key=c.key""".stripMargin).queryExecution.sparkPlan

    assert(sparkPlan.collect { case e: InMemoryColumnarTableScan => e }.size === 3) // failed
    assert(sparkPlan.collect { case e: HiveTableScan => e }.size === 0) // failed
```

The actual plan is:

```
== Parsed Logical Plan ==
'Project [unresolvedalias('a.key),unresolvedalias('b.key),unresolvedalias('c.key)]
 'Join Inner, Some(('a.key = 'c.key))
  'Join Inner, Some(('a.key = 'b.key))
   'UnresolvedRelation [abc], Some(a)
   'UnresolvedRelation [abc], Some(b)
  'UnresolvedRelation [abc], Some(c)

== Analyzed Logical Plan ==
key: int, key: int, key: int
Project [key#14,key#61,key#66]
 Join Inner, Some((key#14 = key#66))
  Join Inner, Some((key#14 = key#61))
   Subquery a
    Subquery abc
     Project [key#14,value#15,(key#14 + 1) AS _c2#16]
      MetastoreRelation default, src, None
   Subquery b
    Subquery abc
     Project [key#61,value#62,(key#61 + 1) AS _c2#58]
      MetastoreRelation default, src, None
  Subquery c
   Subquery abc
    Project [key#66,value#67,(key#66 + 1) AS _c2#63]
     MetastoreRelation default, src, None

== Optimized Logical Plan ==
Project [key#14,key#61,key#66]
 Join Inner, Some((key#14 = key#66))
  Project [key#14,key#61]
   Join Inner, Some((key#14 = key#61))
    Project [key#14]
     InMemoryRelation [key#14,value#15,_c2#16], true, 10000, StorageLevel(true, true, false, true, 1), (Project [key#14,value#15,(key#14 + 1) AS _c2#16]), Some(abc)
    Project [key#61]
     MetastoreRelation default, src, None
  Project [key#66]
   MetastoreRelation default, src, None

== Physical Plan ==
TungstenProject [key#14,key#61,key#66]
 BroadcastHashJoin [key#14], [key#66], BuildRight
  TungstenProject [key#14,key#61]
   BroadcastHashJoin [key#14], [key#61], BuildRight
    ConvertToUnsafe
     InMemoryColumnarTableScan [key#14], (InMemoryRelation [key#14,value#15,_c2#16], true, 10000, StorageLevel(true, true, false, true, 1), (Project [key#14,value#15,(key#14 + 1) AS _c2#16]), Some(abc))
    ConvertToUnsafe
     HiveTableScan [key#61], (MetastoreRelation default, src, None)
  ConvertToUnsafe
   HiveTableScan [key#66], (MetastoreRelation default, src, None)
```

Author: Cheng Hao <hao.cheng@intel.com>

Closes #8494 from chenghao-intel/weird_cache.
2015-09-08 16:16:50 -07:00
Yin Huai 7a9dcbc91d [SPARK-10441] [SQL] Save data correctly to json.
https://issues.apache.org/jira/browse/SPARK-10441

Author: Yin Huai <yhuai@databricks.com>

Closes #8597 from yhuai/timestampJson.
2015-09-08 14:10:12 -07:00
Wenchen Fan 5fd57955ef [SPARK-10316] [SQL] respect nondeterministic expressions in PhysicalOperation
We did a lot of special handling for non-deterministic expressions in `Optimizer`. However, `PhysicalOperation` just collects all Projects and Filters and mess it up. We should respect the operators order caused by non-deterministic expressions in `PhysicalOperation`.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #8486 from cloud-fan/fix.
2015-09-08 12:05:41 -07:00
Cheng Lian bca8c072bd [SPARK-10434] [SQL] Fixes Parquet schema of arrays that may contain null
To keep full compatibility of Parquet write path with Spark 1.4, we should rename the innermost field name of arrays that may contain null from "array_element" to "array".

Please refer to [SPARK-10434] [1] for more details.

[1]: https://issues.apache.org/jira/browse/SPARK-10434

Author: Cheng Lian <lian@databricks.com>

Closes #8586 from liancheng/spark-10434/fix-parquet-array-type.
2015-09-05 17:50:12 +08:00
Cheng Lian 6c751940ea [HOTFIX] [SQL] Fixes compilation error
Jenkins master builders are currently broken by a merge conflict between PR #8584 and PR #8155.

Author: Cheng Lian <lian@databricks.com>

Closes #8614 from liancheng/hotfix/fix-pr-8155-8584-conflict.
2015-09-04 22:57:52 -10:00
Yin Huai 47058ca5db [SPARK-9925] [SQL] [TESTS] Set SQLConf.SHUFFLE_PARTITIONS.key correctly for tests
This PR fix the failed test and conflict for #8155

https://issues.apache.org/jira/browse/SPARK-9925

Closes #8155

Author: Yin Huai <yhuai@databricks.com>
Author: Davies Liu <davies@databricks.com>

Closes #8602 from davies/shuffle_partitions.
2015-09-04 18:58:25 -07:00
Andrew Or 3339e6f674 [SPARK-10450] [SQL] Minor improvements to readability / style / typos etc.
Author: Andrew Or <andrew@databricks.com>

Closes #8603 from andrewor14/minor-sql-changes.
2015-09-04 15:20:20 -07:00
Wenchen Fan c3c0e431a6 [SPARK-10176] [SQL] Show partially analyzed plans when checkAnswer fails to analyze
This PR takes over https://github.com/apache/spark/pull/8389.

This PR improves `checkAnswer` to print the partially analyzed plan in addition to the user friendly error message, in order to aid debugging failing tests.

In doing so, I ran into a conflict with the various ways that we bring a SQLContext into the tests. Depending on the trait we refer to the current context as `sqlContext`, `_sqlContext`, `ctx` or `hiveContext` with access modifiers `public`, `protected` and `private` depending on the defining class.

I propose we refactor as follows:

1. All tests should only refer to a `protected sqlContext` when testing general features, and `protected hiveContext` when it is a method that only exists on a `HiveContext`.
2. All tests should only import `testImplicits._` (i.e., don't import `TestHive.implicits._`)

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #8584 from cloud-fan/cleanupTests.
2015-09-04 15:17:37 -07:00
zsxwing 0349b5b438 [SPARK-10411] [SQL] Move visualization above explain output and hide explain by default
New screenshots after this fix:

<img width="627" alt="s1" src="https://cloud.githubusercontent.com/assets/1000778/9625782/4b2dba36-518b-11e5-9104-c713ff026e3d.png">

Default:
<img width="462" alt="s2" src="https://cloud.githubusercontent.com/assets/1000778/9625817/92366e50-518b-11e5-9981-cdfb774d66b8.png">

After clicking `+details`:
<img width="377" alt="s3" src="https://cloud.githubusercontent.com/assets/1000778/9625784/4ba24342-518b-11e5-8522-846a16a95d44.png">

Author: zsxwing <zsxwing@gmail.com>

Closes #8570 from zsxwing/SPARK-10411.
2015-09-02 22:17:39 -07:00
Yin Huai 03f3e91ff2 [SPARK-10422] [SQL] String column in InMemoryColumnarCache needs to override clone method
https://issues.apache.org/jira/browse/SPARK-10422

Author: Yin Huai <yhuai@databricks.com>

Closes #8578 from yhuai/SPARK-10422.
2015-09-02 21:00:13 -07:00
Wenchen Fan fc48307797 [SPARK-10389] [SQL] support order by non-attribute grouping expression on Aggregate
For example, we can write `SELECT MAX(value) FROM src GROUP BY key + 1 ORDER BY key + 1` in PostgreSQL, and we should support this in Spark SQL.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #8548 from cloud-fan/support-order-by-non-attribute.
2015-09-02 11:32:27 -07:00
Wenchen Fan 56c4c172e9 [SPARK-10034] [SQL] add regression test for Sort on Aggregate
Before #8371, there was a bug for `Sort` on `Aggregate` that we can't use aggregate expressions named `_aggOrdering` and can't use more than one ordering expressions which contains aggregate functions. The reason of this bug is that: The aggregate expression in `SortOrder` never get resolved, we alias it with `_aggOrdering` and call `toAttribute` which gives us an `UnresolvedAttribute`. So actually we are referencing aggregate expression by name, not by exprId like we thought. And if there is already an aggregate expression named `_aggOrdering` or there are more than one ordering expressions having aggregate functions, we will have conflict names and can't search by name.

However, after #8371 got merged, the `SortOrder`s are guaranteed to be resolved and we are always referencing aggregate expression by exprId. The Bug doesn't exist anymore and this PR add regression tests for it.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #8231 from cloud-fan/sort-agg.
2015-09-02 11:13:17 -07:00
Cheng Lian 391e6be0ae [SPARK-10301] [SQL] Fixes schema merging for nested structs
This PR can be quite challenging to review.  I'm trying to give a detailed description of the problem as well as its solution here.

When reading Parquet files, we need to specify a potentially nested Parquet schema (of type `MessageType`) as requested schema for column pruning.  This Parquet schema is translated from a Catalyst schema (of type `StructType`), which is generated by the query planner and represents all requested columns.  However, this translation can be fairly complicated because of several reasons:

1.  Requested schema must conform to the real schema of the physical file to be read.

    This means we have to tailor the actual file schema of every individual physical Parquet file to be read according to the given Catalyst schema.  Fortunately we are already doing this in Spark 1.5 by pushing request schema conversion to executor side in PR #7231.

1.  Support for schema merging.

    A single Parquet dataset may consist of multiple physical Parquet files come with different but compatible schemas.  This means we may request for a column path that doesn't exist in a physical Parquet file.  All requested column paths can be nested.  For example, for a Parquet file schema

    ```
    message root {
      required group f0 {
        required group f00 {
          required int32 f000;
          required binary f001 (UTF8);
        }
      }
    }
    ```

    we may request for column paths defined in the following schema:

    ```
    message root {
      required group f0 {
        required group f00 {
          required binary f001 (UTF8);
          required float f002;
        }
      }

      optional double f1;
    }
    ```

    Notice that we pruned column path `f0.f00.f000`, but added `f0.f00.f002` and `f1`.

    The good news is that Parquet handles non-existing column paths properly and always returns null for them.

1.  The map from `StructType` to `MessageType` is a one-to-many map.

    This is the most unfortunate part.

    Due to historical reasons (dark histories!), schemas of Parquet files generated by different libraries have different "flavors".  For example, to handle a schema with a single non-nullable column, whose type is an array of non-nullable integers, parquet-protobuf generates the following Parquet schema:

    ```
    message m0 {
      repeated int32 f;
    }
    ```

    while parquet-avro generates another version:

    ```
    message m1 {
      required group f (LIST) {
        repeated int32 array;
      }
    }
    ```

    and parquet-thrift spills this:

    ```
    message m1 {
      required group f (LIST) {
        repeated int32 f_tuple;
      }
    }
    ```

    All of them can be mapped to the following _unique_ Catalyst schema:

    ```
    StructType(
      StructField(
        "f",
        ArrayType(IntegerType, containsNull = false),
        nullable = false))
    ```

    This greatly complicates Parquet requested schema construction, since the path of a given column varies in different cases.  To read the array elements from files with the above schemas, we must use `f` for `m0`, `f.array` for `m1`, and `f.f_tuple` for `m2`.

In earlier Spark versions, we didn't try to fix this issue properly.  Spark 1.4 and prior versions simply translate the Catalyst schema in a way more or less compatible with parquet-hive and parquet-avro, but is broken in many other cases.  Earlier revisions of Spark 1.5 only try to tailor the Parquet file schema at the first level, and ignore nested ones.  This caused [SPARK-10301] [spark-10301] as well as [SPARK-10005] [spark-10005].  In PR #8228, I tried to avoid the hard part of the problem and made a minimum change in `CatalystRowConverter` to fix SPARK-10005.  However, when taking SPARK-10301 into consideration, keeping hacking `CatalystRowConverter` doesn't seem to be a good idea.  So this PR is an attempt to fix the problem in a proper way.

For a given physical Parquet file with schema `ps` and a compatible Catalyst requested schema `cs`, we use the following algorithm to tailor `ps` to get the result Parquet requested schema `ps'`:

For a leaf column path `c` in `cs`:

- if `c` exists in `cs` and a corresponding Parquet column path `c'` can be found in `ps`, `c'` should be included in `ps'`;
- otherwise, we convert `c` to a Parquet column path `c"` using `CatalystSchemaConverter`, and include `c"` in `ps'`;
- no other column paths should exist in `ps'`.

Then comes the most tedious part:

> Given `cs`, `ps`, and `c`, how to locate `c'` in `ps`?

Unfortunately, there's no quick answer, and we have to enumerate all possible structures defined in parquet-format spec.  They are:

1.  the standard structure of nested types, and
1.  cases defined in all backwards-compatibility rules for `LIST` and `MAP`.

The core part of this PR is `CatalystReadSupport.clipParquetType()`, which tailors a given Parquet file schema according to a requested schema in its Catalyst form.  Backwards-compatibility rules of `LIST` and `MAP` are covered in `clipParquetListType()` and `clipParquetMapType()` respectively.  The column path selection algorithm is implemented in `clipParquetGroupFields()`.

With this PR, we no longer need to do schema tailoring in `CatalystReadSupport` and `CatalystRowConverter`.  Another benefit is that, now we can also read Parquet datasets consist of files with different physical Parquet schema but share the same logical schema, for example, files generated by different Parquet libraries.  This situation is illustrated by [this test case] [test-case].

[spark-10301]: https://issues.apache.org/jira/browse/SPARK-10301
[spark-10005]: https://issues.apache.org/jira/browse/SPARK-10005
[test-case]: 38644d8a45 (diff-a9b98e28ce3ae30641829dffd1173be2R26)

Author: Cheng Lian <lian@databricks.com>

Closes #8509 from liancheng/spark-10301/fix-parquet-requested-schema.
2015-09-01 16:52:59 +08:00
sureshthalamati a2d5c72091 [SPARK-10170] [SQL] Add DB2 JDBC dialect support.
Data frame write to DB2 database is failing because by default JDBC data source implementation is generating a table schema with DB2 unsupported data types TEXT for String, and BIT1(1) for Boolean.

This patch registers DB2 JDBC Dialect that maps String, Boolean to valid DB2 data types.

Author: sureshthalamati <suresh.thalamati@gmail.com>

Closes #8393 from sureshthalamati/db2_dialect_spark-10170.
2015-08-31 12:39:58 -07:00
Feynman Liang 8694c3ad7d [SPARK-10351] [SQL] Fixes UTF8String.fromAddress to handle off-heap memory
CC rxin marmbrus

Author: Feynman Liang <fliang@databricks.com>

Closes #8523 from feynmanliang/SPARK-10351.
2015-08-30 23:12:56 -07:00
zsxwing 13f5f8ec97 [SPARK-9986] [SPARK-9991] [SPARK-9993] [SQL] Create a simple test framework for local operators
This PR includes the following changes:
- Add `LocalNodeTest` for local operator tests and add unit tests for FilterNode and ProjectNode.
- Add `LimitNode` and `UnionNode` and their unit tests to show how to use `LocalNodeTest`. (SPARK-9991, SPARK-9993)

Author: zsxwing <zsxwing@gmail.com>

Closes #8464 from zsxwing/local-execution.
2015-08-29 18:10:44 -07:00
Yin Huai 097a7e36e0 [SPARK-10339] [SPARK-10334] [SPARK-10301] [SQL] Partitioned table scan can OOM driver and throw a better error message when users need to enable parquet schema merging
This fixes the problem that scanning partitioned table causes driver have a high memory pressure and takes down the cluster. Also, with this fix, we will be able to correctly show the query plan of a query consuming partitioned tables.

https://issues.apache.org/jira/browse/SPARK-10339
https://issues.apache.org/jira/browse/SPARK-10334

Finally, this PR squeeze in a "quick fix" for SPARK-10301. It is not a real fix, but it just throw a better error message to let user know what to do.

Author: Yin Huai <yhuai@databricks.com>

Closes #8515 from yhuai/partitionedTableScan.
2015-08-29 16:39:40 -07:00
Josh Rosen 6a6f3c91ee [SPARK-10330] Use SparkHadoopUtil TaskAttemptContext reflection methods in more places
SparkHadoopUtil contains methods that use reflection to work around TaskAttemptContext binary incompatibilities between Hadoop 1.x and 2.x. We should use these methods in more places.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #8499 from JoshRosen/use-hadoop-reflection-in-more-places.
2015-08-29 13:36:25 -07:00
Michael Armbrust 5c3d16a9b9 [SPARK-10344] [SQL] Add tests for extraStrategies
Actually using this API requires access to a lot of classes that we might make private by accident.  I've added some tests to prevent this.

Author: Michael Armbrust <michael@databricks.com>

Closes #8516 from marmbrus/extraStrategiesTests.
2015-08-29 13:26:01 -07:00
Cheng Lian 24ffa85c00 [SPARK-10289] [SQL] A direct write API for testing Parquet
This PR introduces a direct write API for testing Parquet. It's a DSL flavored version of the [`writeDirect` method] [1] comes with parquet-avro testing code. With this API, it's much easier to construct arbitrary Parquet structures. It's especially useful when adding regression tests for various compatibility corner cases.

Sample usage of this API can be found in the new test case added in `ParquetThriftCompatibilitySuite`.

[1]: https://github.com/apache/parquet-mr/blob/apache-parquet-1.8.1/parquet-avro/src/test/java/org/apache/parquet/avro/TestArrayCompatibility.java#L945-L972

Author: Cheng Lian <lian@databricks.com>

Closes #8454 from liancheng/spark-10289/parquet-testing-direct-write-api.
2015-08-29 13:24:32 -07:00
Davies Liu bb7f352393 [SPARK-10323] [SQL] fix nullability of In/InSet/ArrayContain
After this PR, In/InSet/ArrayContain will return null if value is null, instead of false. They also will return null even if there is a null in the set/array.

Author: Davies Liu <davies@databricks.com>

Closes #8492 from davies/fix_in.
2015-08-28 14:38:20 -07:00
Josh Rosen d3f87dc394 [SPARK-10325] Override hashCode() for public Row
This commit fixes an issue where the public SQL `Row` class did not override `hashCode`, causing it to violate the hashCode() + equals() contract. To fix this, I simply ported the `hashCode` implementation from the 1.4.x version of `Row`.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #8500 from JoshRosen/SPARK-10325 and squashes the following commits:

51ffea1 [Josh Rosen] Override hashCode() for public Row.
2015-08-28 11:51:42 -07:00
Davies Liu 54cda0deb6 [SPARK-10321] sizeInBytes in HadoopFsRelation
Having sizeInBytes in HadoopFsRelation to enable broadcast join.

cc marmbrus

Author: Davies Liu <davies@databricks.com>

Closes #8490 from davies/sizeInByte.
2015-08-27 16:38:00 -07:00
Yin Huai b3dd569ad4 [SPARK-10287] [SQL] Fixes JSONRelation refreshing on read path
https://issues.apache.org/jira/browse/SPARK-10287

After porting json to HadoopFsRelation, it seems hard to keep the behavior of picking up new files automatically for JSON. This PR removes this behavior, so JSON is consistent with others (ORC and Parquet).

Author: Yin Huai <yhuai@databricks.com>

Closes #8469 from yhuai/jsonRefresh.
2015-08-27 16:11:25 -07:00
Davies Liu 7467b52ed0 [SPARK-10215] [SQL] Fix precision of division (follow the rule in Hive)
Follow the rule in Hive for decimal division. see ac755ebe26/ql/src/java/org/apache/hadoop/hive/ql/udf/generic/GenericUDFOPDivide.java (L113)

cc chenghao-intel

Author: Davies Liu <davies@databricks.com>

Closes #8415 from davies/decimal_div2.
2015-08-25 15:20:24 -07:00
Davies Liu ec89bd840a [SPARK-10245] [SQL] Fix decimal literals with precision < scale
In BigDecimal or java.math.BigDecimal, the precision could be smaller than scale, for example, BigDecimal("0.001") has precision = 1 and scale = 3. But DecimalType require that the precision should be larger than scale, so we should use the maximum of precision and scale when inferring the schema from decimal literal.

Author: Davies Liu <davies@databricks.com>

Closes #8428 from davies/smaller_decimal.
2015-08-25 14:55:34 -07:00
Sun Rui 71a138cd0e [SPARK-10048] [SPARKR] Support arbitrary nested Java array in serde.
This PR:
1. supports transferring arbitrary nested array from JVM to R side in SerDe;
2. based on 1, collect() implemenation is improved. Now it can support collecting data of complex types
   from a DataFrame.

Author: Sun Rui <rui.sun@intel.com>

Closes #8276 from sun-rui/SPARK-10048.
2015-08-25 13:14:10 -07:00
Michael Armbrust 5c08c86bfa [SPARK-10198] [SQL] Turn off partition verification by default
Author: Michael Armbrust <michael@databricks.com>

Closes #8404 from marmbrus/turnOffPartitionVerification.
2015-08-25 10:22:54 -07:00
Sean Owen 69c9c17716 [SPARK-9613] [CORE] Ban use of JavaConversions and migrate all existing uses to JavaConverters
Replace `JavaConversions` implicits with `JavaConverters`

Most occurrences I've seen so far are necessary conversions; a few have been avoidable. None are in critical code as far as I see, yet.

Author: Sean Owen <sowen@cloudera.com>

Closes #8033 from srowen/SPARK-9613.
2015-08-25 12:33:13 +01:00
Josh Rosen 7bc9a8c624 [SPARK-10195] [SQL] Data sources Filter should not expose internal types
Spark SQL's data sources API exposes Catalyst's internal types through its Filter interfaces. This is a problem because types like UTF8String are not stable developer APIs and should not be exposed to third-parties.

This issue caused incompatibilities when upgrading our `spark-redshift` library to work against Spark 1.5.0.  To avoid these issues in the future we should only expose public types through these Filter objects. This patch accomplishes this by using CatalystTypeConverters to add the appropriate conversions.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #8403 from JoshRosen/datasources-internal-vs-external-types.
2015-08-25 01:06:36 -07:00
Cheng Lian bf03fe68d6 [SPARK-10136] [SQL] A more robust fix for SPARK-10136
PR #8341 is a valid fix for SPARK-10136, but it didn't catch the real root cause.  The real problem can be rather tricky to explain, and requires audiences to be pretty familiar with parquet-format spec, especially details of `LIST` backwards-compatibility rules.  Let me have a try to give an explanation here.

The structure of the problematic Parquet schema generated by parquet-avro is something like this:

```
message m {
  <repetition> group f (LIST) {         // Level 1
    repeated group array (LIST) {       // Level 2
      repeated <primitive-type> array;  // Level 3
    }
  }
}
```

(The schema generated by parquet-thrift is structurally similar, just replace the `array` at level 2 with `f_tuple`, and the other one at level 3 with `f_tuple_tuple`.)

This structure consists of two nested legacy 2-level `LIST`-like structures:

1. The repeated group type at level 2 is the element type of the outer array defined at level 1

   This group should map to an `CatalystArrayConverter.ElementConverter` when building converters.

2. The repeated primitive type at level 3 is the element type of the inner array defined at level 2

   This group should also map to an `CatalystArrayConverter.ElementConverter`.

The root cause of SPARK-10136 is that, the group at level 2 isn't properly recognized as the element type of level 1.  Thus, according to parquet-format spec, the repeated primitive at level 3 is left as a so called "unannotated repeated primitive type", and is recognized as a required list of required primitive type, thus a `RepeatedPrimitiveConverter` instead of a `CatalystArrayConverter.ElementConverter` is created for it.

According to  parquet-format spec, unannotated repeated type shouldn't appear in a `LIST`- or `MAP`-annotated group.  PR #8341 fixed this issue by allowing such unannotated repeated type appear in `LIST`-annotated groups, which is a non-standard, hacky, but valid fix.  (I didn't realize this when authoring #8341 though.)

As for the reason why level 2 isn't recognized as a list element type, it's because of the following `LIST` backwards-compatibility rule defined in the parquet-format spec:

> If the repeated field is a group with one field and is named either `array` or uses the `LIST`-annotated group's name with `_tuple` appended then the repeated type is the element type and elements are required.

(The `array` part is for parquet-avro compatibility, while the `_tuple` part is for parquet-thrift.)

This rule is implemented in [`CatalystSchemaConverter.isElementType`] [1], but neglected in [`CatalystRowConverter.isElementType`] [2].  This PR delivers a more robust fix by adding this rule in the latter method.

Note that parquet-avro 1.7.0 also suffers from this issue. Details can be found at [PARQUET-364] [3].

[1]: 85f9a61357/sql/core/src/main/scala/org/apache/spark/sql/execution/datasources/parquet/CatalystSchemaConverter.scala (L259-L305)
[2]: 85f9a61357/sql/core/src/main/scala/org/apache/spark/sql/execution/datasources/parquet/CatalystRowConverter.scala (L456-L463)
[3]: https://issues.apache.org/jira/browse/PARQUET-364

Author: Cheng Lian <lian@databricks.com>

Closes #8361 from liancheng/spark-10136/proper-version.
2015-08-25 14:58:42 +08:00
Yin Huai df7041d02d [SPARK-10196] [SQL] Correctly saving decimals in internal rows to JSON.
https://issues.apache.org/jira/browse/SPARK-10196

Author: Yin Huai <yhuai@databricks.com>

Closes #8408 from yhuai/DecimalJsonSPARK-10196.
2015-08-24 23:38:32 -07:00
Feynman Liang 642c43c81c [SQL] [MINOR] [DOC] Clarify docs for inferring DataFrame from RDD of Products
* Makes `SQLImplicits.rddToDataFrameHolder` scaladoc consistent with `SQLContext.createDataFrame[A <: Product](rdd: RDD[A])` since the former is essentially a wrapper for the latter
 * Clarifies `createDataFrame[A <: Product]` scaladoc to apply for any `RDD[Product]`, not just case classes

Author: Feynman Liang <fliang@databricks.com>

Closes #8406 from feynmanliang/sql-doc-fixes.
2015-08-24 19:45:41 -07:00
Burak Yavuz 9ce0c7ad33 [SPARK-7710] [SPARK-7998] [DOCS] Docs for DataFrameStatFunctions
This PR contains examples on how to use some of the Stat Functions available for DataFrames under `df.stat`.

rxin

Author: Burak Yavuz <brkyvz@gmail.com>

Closes #8378 from brkyvz/update-sql-docs.
2015-08-24 13:48:01 -07:00
Yin Huai e3355090d4 [SPARK-10143] [SQL] Use parquet's block size (row group size) setting as the min split size if necessary.
https://issues.apache.org/jira/browse/SPARK-10143

With this PR, we will set min split size to parquet's block size (row group size) set in the conf if the min split size is smaller. So, we can avoid have too many tasks and even useless tasks for reading parquet data.

I tested it locally. The table I have has 343MB and it is in my local FS. Because I did not set any min/max split size, the default split size was 32MB and the map stage had 11 tasks. But there were only three tasks that actually read data. With my PR, there were only three tasks in the map stage. Here is the difference.

Without this PR:
![image](https://cloud.githubusercontent.com/assets/2072857/9399179/8587dba6-4765-11e5-9189-7ebba52a2b6d.png)

With this PR:
![image](https://cloud.githubusercontent.com/assets/2072857/9399185/a4735d74-4765-11e5-8848-1f1e361a6b4b.png)

Even if the block size setting does match the actual block size of parquet file, I think it is still generally good to use parquet's block size setting if min split size is smaller than this block size.

Tested it on a cluster using
```
val count = sqlContext.table("""store_sales""").groupBy().count().queryExecution.executedPlan(3).execute().count
```
Basically, it reads 0 column of table `store_sales`. My table has 1824 parquet files with size from 80MB to 280MB (1 to 3 row group sizes). Without this patch, in a 16 worker cluster, the job had 5023 tasks and spent 102s. With this patch, the job had 2893 tasks and spent 64s. It is still not as good as using one mapper per file (1824 tasks and 42s), but it is much better than our master.

Author: Yin Huai <yhuai@databricks.com>

Closes #8346 from yhuai/parquetMinSplit.
2015-08-21 14:30:00 -07:00
Daoyuan Wang 3c462f5d87 [SPARK-10130] [SQL] type coercion for IF should have children resolved first
Type coercion for IF should have children resolved first, or we could meet unresolved exception.

Author: Daoyuan Wang <daoyuan.wang@intel.com>

Closes #8331 from adrian-wang/spark10130.
2015-08-21 12:21:51 -07:00
Liang-Chi Hsieh bb220f6570 [SPARK-10040] [SQL] Use batch insert for JDBC writing
JIRA: https://issues.apache.org/jira/browse/SPARK-10040

We should use batch insert instead of single row in JDBC.

Author: Liang-Chi Hsieh <viirya@appier.com>

Closes #8273 from viirya/jdbc-insert-batch.
2015-08-21 01:43:49 -07:00
Wenchen Fan 907df2fce0 [SQL] [MINOR] remove unnecessary class
This class is identical to `org.apache.spark.sql.execution.datasources.jdbc. DefaultSource` and is not needed.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #8334 from cloud-fan/minor.
2015-08-20 13:51:54 -07:00
Cheng Lian 85f9a61357 [SPARK-10136] [SQL] Fixes Parquet support for Avro array of primitive array
I caught SPARK-10136 while adding more test cases to `ParquetAvroCompatibilitySuite`. Actual bug fix code lies in `CatalystRowConverter.scala`.

Author: Cheng Lian <lian@databricks.com>

Closes #8341 from liancheng/spark-10136/parquet-avro-nested-primitive-array.
2015-08-20 11:00:29 -07:00
Reynold Xin b4f4e91c39 [SPARK-10100] [SQL] Eliminate hash table lookup if there is no grouping key in aggregation.
This improves performance by ~ 20 - 30% in one of my local test and should fix the performance regression from 1.4 to 1.5 on ss_max.

Author: Reynold Xin <rxin@databricks.com>

Closes #8332 from rxin/SPARK-10100.
2015-08-20 07:53:27 -07:00
Yin Huai 43e0135421 [SPARK-10092] [SQL] Multi-DB support follow up.
https://issues.apache.org/jira/browse/SPARK-10092

This pr is a follow-up one for Multi-DB support. It has the following changes:

* `HiveContext.refreshTable` now accepts `dbName.tableName`.
* `HiveContext.analyze` now accepts `dbName.tableName`.
* `CreateTableUsing`, `CreateTableUsingAsSelect`, `CreateTempTableUsing`, `CreateTempTableUsingAsSelect`, `CreateMetastoreDataSource`, and `CreateMetastoreDataSourceAsSelect` all take `TableIdentifier` instead of the string representation of table name.
* When you call `saveAsTable` with a specified database, the data will be saved to the correct location.
* Explicitly do not allow users to create a temporary with a specified database name (users cannot do it before).
* When we save table to metastore, we also check if db name and table name can be accepted by hive (using `MetaStoreUtils.validateName`).

Author: Yin Huai <yhuai@databricks.com>

Closes #8324 from yhuai/saveAsTableDB.
2015-08-20 15:30:31 +08:00
Reynold Xin 2f2686a73f [SPARK-9242] [SQL] Audit UDAF interface.
A few minor changes:

1. Improved documentation
2. Rename apply(distinct....) to distinct.
3. Changed MutableAggregationBuffer from a trait to an abstract class.
4. Renamed returnDataType to dataType to be more consistent with other expressions.

And unrelated to UDAFs:

1. Renamed file names in expressions to use suffix "Expressions" to be more consistent.
2. Moved regexp related expressions out to its own file.
3. Renamed StringComparison => StringPredicate.

Author: Reynold Xin <rxin@databricks.com>

Closes #8321 from rxin/SPARK-9242.
2015-08-19 17:35:41 -07:00
hyukjinkwon ba5f7e1842 [SPARK-10035] [SQL] Parquet filters does not process EqualNullSafe filter.
As I talked with Lian,

1. I added EquelNullSafe to ParquetFilters
 - It uses the same equality comparison filter with EqualTo since the Parquet filter performs actually null-safe equality comparison.

2. Updated the test code (ParquetFilterSuite)
 - Convert catalyst.Expression to sources.Filter
 - Removed Cast since only Literal is picked up as a proper Filter in DataSourceStrategy
 - Added EquelNullSafe comparison

3. Removed deprecated createFilter for catalyst.Expression

Author: hyukjinkwon <gurwls223@gmail.com>
Author: 권혁진 <gurwls223@gmail.com>

Closes #8275 from HyukjinKwon/master.
2015-08-20 08:13:25 +08:00
Cheng Lian f3ff4c41d2 [SPARK-9899] [SQL] Disables customized output committer when speculation is on
Speculation hates direct output committer, as there are multiple corner cases that may cause data corruption and/or data loss.

Please see this [PR comment] [1] for more details.

[1]: https://github.com/apache/spark/pull/8191#issuecomment-131598385

Author: Cheng Lian <lian@databricks.com>

Closes #8317 from liancheng/spark-9899/speculation-hates-direct-output-committer.
2015-08-19 14:15:28 -07:00
Davies Liu 1f4c4fe6df [SPARK-10090] [SQL] fix decimal scale of division
We should rounding the result of multiply/division of decimal to expected precision/scale, also check overflow.

Author: Davies Liu <davies@databricks.com>

Closes #8287 from davies/decimal_division.
2015-08-19 14:03:47 -07:00
Cheng Lian 21bdbe9fe6 [SPARK-9627] [SQL] Stops using Scala runtime reflection in DictionaryEncoding
`DictionaryEncoding` uses Scala runtime reflection to avoid boxing costs while building the directory array. However, this code path may hit [SI-6240] [1] and throw exception.

[1]: https://issues.scala-lang.org/browse/SI-6240

Author: Cheng Lian <lian@databricks.com>

Closes #8306 from liancheng/spark-9627/in-memory-cache-scala-reflection.
2015-08-19 13:57:52 -07:00
Davies Liu 08887369c8 [SPARK-10073] [SQL] Python withColumn should replace the old column
DataFrame.withColumn in Python should be consistent with the Scala one (replacing the existing column  that has the same name).

cc marmbrus

Author: Davies Liu <davies@databricks.com>

Closes #8300 from davies/with_column.
2015-08-19 13:56:40 -07:00
Davies Liu e05da5cb5e [SPARK-10107] [SQL] fix NPE in format_number
Author: Davies Liu <davies@databricks.com>

Closes #8305 from davies/format_number.
2015-08-19 13:43:04 -07:00
Reynold Xin 1ff0580eda [SPARK-10093] [SPARK-10096] [SQL] Avoid transformation on executors & fix UDFs on complex types
This is kind of a weird case, but given a sufficiently complex query plan (in this case a TungstenProject with an Exchange underneath), we could have NPEs on the executors due to the time when we were calling transformAllExpressions

In general we should ensure that all transformations occur on the driver and not on the executors. Some reasons for avoid executor side transformations include:

* (this case) Some operator constructors require state such as access to the Spark/SQL conf so doing a makeCopy on the executor can fail.
* (unrelated reason for avoid executor transformations) ExprIds are calculated using an atomic integer, so you can violate their uniqueness constraint by constructing them anywhere other than the driver.

This subsumes #8285.

Author: Reynold Xin <rxin@databricks.com>
Author: Michael Armbrust <michael@databricks.com>

Closes #8295 from rxin/SPARK-10096.
2015-08-18 22:08:15 -07:00
Cheng Lian a5b5b93659 [SPARK-9939] [SQL] Resorts to Java process API in CliSuite, HiveSparkSubmitSuite and HiveThriftServer2 test suites
Scala process API has a known bug ([SI-8768] [1]), which may be the reason why several test suites which fork sub-processes are flaky.

This PR replaces Scala process API with Java process API in `CliSuite`, `HiveSparkSubmitSuite`, and `HiveThriftServer2` related test suites to see whether it fix these flaky tests.

[1]: https://issues.scala-lang.org/browse/SI-8768

Author: Cheng Lian <lian@databricks.com>

Closes #8168 from liancheng/spark-9939/use-java-process-api.
2015-08-19 11:21:46 +08:00
Michael Armbrust 80cb25b228 [SPARK-10080] [SQL] Fix binary incompatibility for $ column interpolation
Turns out that inner classes of inner objects are referenced directly, and thus moving it will break binary compatibility.

Author: Michael Armbrust <michael@databricks.com>

Closes #8281 from marmbrus/binaryCompat.
2015-08-18 13:50:51 -07:00
Cheng Lian 5723d26d7e [SPARK-8118] [SQL] Redirects Parquet JUL logger via SLF4J
Parquet hard coded a JUL logger which always writes to stdout. This PR redirects it via SLF4j JUL bridge handler, so that we can control Parquet logs via `log4j.properties`.

This solution is inspired by https://github.com/Parquet/parquet-mr/issues/390#issuecomment-46064909.

Author: Cheng Lian <lian@databricks.com>

Closes #8196 from liancheng/spark-8118/redirect-parquet-jul.
2015-08-18 20:15:33 +08:00
Yu ISHIKAWA a0910315da [MINOR] Format the comment of translate at functions.scala
Author: Yu ISHIKAWA <yuu.ishikawa@gmail.com>

Closes #8265 from yu-iskw/minor-translate-comment.
2015-08-17 23:27:11 -07:00
zsxwing f10660fe7b [SPARK-10036] [SQL] Load JDBC driver in DataFrameReader.jdbc and DataFrameWriter.jdbc
This PR uses `JDBCRDD.getConnector` to load JDBC driver before creating connection in `DataFrameReader.jdbc` and `DataFrameWriter.jdbc`.

Author: zsxwing <zsxwing@gmail.com>

Closes #8232 from zsxwing/SPARK-10036 and squashes the following commits:

adf75de [zsxwing] Add extraOptions to the connection properties
57f59d4 [zsxwing] Load JDBC driver in DataFrameReader.jdbc and DataFrameWriter.jdbc
2015-08-17 11:53:33 -07:00
Wenchen Fan a4acdabb10 [SPARK-9950] [SQL] Wrong Analysis Error for grouping/aggregating on struct fields
This issue has been fixed by https://github.com/apache/spark/pull/8215, this PR added regression test for it.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #8222 from cloud-fan/minor and squashes the following commits:

0bbfb1c [Wenchen Fan] fix style...
7e2d8d9 [Wenchen Fan] add test
2015-08-17 11:36:18 -07:00
Cheng Lian 76c155dd44 [SPARK-7837] [SQL] Avoids double closing output writers when commitTask() fails
When inserting data into a `HadoopFsRelation`, if `commitTask()` of the writer container fails, `abortTask()` will be invoked. However, both `commitTask()` and `abortTask()` try to close the output writer(s). The problem is that, closing underlying writers may not be an idempotent operation. E.g., `ParquetRecordWriter.close()` throws NPE when called twice.

Author: Cheng Lian <lian@databricks.com>

Closes #8236 from liancheng/spark-7837/double-closing.
2015-08-18 00:59:05 +08:00
Cheng Lian ae2370e72f [SPARK-10005] [SQL] Fixes schema merging for nested structs
In case of schema merging, we only handled first level fields when converting Parquet groups to `InternalRow`s. Nested struct fields are not properly handled.

For example, the schema of a Parquet file to be read can be:

```
message individual {
  required group f1 {
    optional binary f11 (utf8);
  }
}
```

while the global schema is:

```
message global {
  required group f1 {
    optional binary f11 (utf8);
    optional int32 f12;
  }
}
```

This PR fixes this issue by padding missing fields when creating actual converters.

Author: Cheng Lian <lian@databricks.com>

Closes #8228 from liancheng/spark-10005/nested-schema-merging.
2015-08-16 10:17:58 -07:00
Kun Xu 182f9b7a6d [SPARK-9973] [SQL] Correct in-memory columnar buffer size
The `initialSize` argument of `ColumnBuilder.initialize()` should be the
number of rows rather than bytes.  However `InMemoryColumnarTableScan`
passes in a byte size, which makes Spark SQL allocate more memory than
necessary when building in-memory columnar buffers.

Author: Kun Xu <viper_kun@163.com>

Closes #8189 from viper-kun/errorSize.
2015-08-16 14:44:45 +08:00
Wenchen Fan 570567258b [SPARK-9955] [SQL] correct error message for aggregate
We should skip unresolved `LogicalPlan`s for `PullOutNondeterministic`, as calling `output` on unresolved `LogicalPlan` will produce confusing error message.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #8203 from cloud-fan/error-msg and squashes the following commits:

1c67ca7 [Wenchen Fan] move test
7593080 [Wenchen Fan] correct error message for aggregate
2015-08-15 14:13:12 -07:00
Reynold Xin 609ce3c07d [SPARK-9984] [SQL] Create local physical operator interface.
This pull request creates a new operator interface that is more similar to traditional database query iterators (with open/close/next/get).

These local operators are not currently used anywhere, but will become the basis for SPARK-9983 (local physical operators for query execution).

cc zsxwing

Author: Reynold Xin <rxin@databricks.com>

Closes #8212 from rxin/SPARK-9984.
2015-08-14 21:12:11 -07:00
Yijie Shen 6c4fdbec33 [SPARK-8887] [SQL] Explicit define which data types can be used as dynamic partition columns
This PR enforce dynamic partition column data type requirements by adding analysis rules.

JIRA: https://issues.apache.org/jira/browse/SPARK-8887

Author: Yijie Shen <henry.yijieshen@gmail.com>

Closes #8201 from yjshen/dynamic_partition_columns.
2015-08-14 21:03:14 -07:00
Wenchen Fan ec29f2034a [SPARK-9634] [SPARK-9323] [SQL] cleanup unnecessary Aliases in LogicalPlan at the end of analysis
Also alias the ExtractValue instead of wrapping it with UnresolvedAlias when resolve attribute in LogicalPlan, as this alias will be trimmed if it's unnecessary.

Based on #7957 without the changes to mllib, but instead maintaining earlier behavior when using `withColumn` on expressions that already have metadata.

Author: Wenchen Fan <cloud0fan@outlook.com>
Author: Michael Armbrust <michael@databricks.com>

Closes #8215 from marmbrus/pr/7957.
2015-08-14 20:59:54 -07:00
Davies Liu 37586e5449 [HOTFIX] fix duplicated braces
Author: Davies Liu <davies@databricks.com>

Closes #8219 from davies/fix_typo.
2015-08-14 20:56:55 -07:00
Yin Huai 932b24fd14 [SPARK-9949] [SQL] Fix TakeOrderedAndProject's output.
https://issues.apache.org/jira/browse/SPARK-9949

Author: Yin Huai <yhuai@databricks.com>

Closes #8179 from yhuai/SPARK-9949.
2015-08-14 17:35:17 -07:00
Wenchen Fan 1150a19b18 [SPARK-8670] [SQL] Nested columns can't be referenced in pyspark
This bug is caused by a wrong column-exist-check in `__getitem__` of pyspark dataframe. `DataFrame.apply` accepts not only top level column names, but also nested column name like `a.b`, so we should remove that check from `__getitem__`.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #8202 from cloud-fan/nested.
2015-08-14 14:09:46 -07:00
Andrew Or ece00566e4 [SPARK-9561] Re-enable BroadcastJoinSuite
We can do this now that SPARK-9580 is resolved.

Author: Andrew Or <andrew@databricks.com>

Closes #8208 from andrewor14/reenable-sql-tests.
2015-08-14 12:37:21 -07:00
Wenchen Fan 34d610be85 [SPARK-9929] [SQL] support metadata in withColumn
in MLlib sometimes we need to set metadata for the new column, thus we will alias the new column with metadata before call `withColumn` and in `withColumn` we alias this clolumn again. Here I overloaded `withColumn` to allow user set metadata, just like what we did  for `Column.as`.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #8159 from cloud-fan/withColumn.
2015-08-14 12:00:01 -07:00
Davies Liu bd35385d53 [SPARK-9945] [SQL] pageSize should be calculated from executor.memory
Currently, pageSize of TungstenSort is calculated from driver.memory, it should use executor.memory instead.

Also, in the worst case, the safeFactor could be 4 (because of rounding), increase it to 16.

cc rxin

Author: Davies Liu <davies@databricks.com>

Closes #8175 from davies/page_size.
2015-08-13 21:12:59 -07:00
Andrew Or 8187b3ae47 [SPARK-9580] [SQL] Replace singletons in SQL tests
A fundamental limitation of the existing SQL tests is that *there is simply no way to create your own `SparkContext`*. This is a serious limitation because the user may wish to use a different master or config. As a case in point, `BroadcastJoinSuite` is entirely commented out because there is no way to make it pass with the existing infrastructure.

This patch removes the singletons `TestSQLContext` and `TestData`, and instead introduces a `SharedSQLContext` that starts a context per suite. Unfortunately the singletons were so ingrained in the SQL tests that this patch necessarily needed to touch *all* the SQL test files.

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Author: Andrew Or <andrew@databricks.com>

Closes #8111 from andrewor14/sql-tests-refactor.
2015-08-13 17:42:01 -07:00
Davies Liu c50f97dafd [SPARK-9943] [SQL] deserialized UnsafeHashedRelation should be serializable
When the free memory in executor goes low, the cached broadcast objects need to serialized into disk, but currently the deserialized UnsafeHashedRelation can't be serialized , fail with NPE. This PR fixes that.

cc rxin

Author: Davies Liu <davies@databricks.com>

Closes #8174 from davies/serialize_hashed.
2015-08-13 17:35:11 -07:00
Yijie Shen d0b18919d1 [SPARK-9927] [SQL] Revert 8049 since it's pushing wrong filter down
I made a mistake in #8049 by casting literal value to attribute's data type, which would cause simply truncate the literal value and push a wrong filter down.

JIRA: https://issues.apache.org/jira/browse/SPARK-9927

Author: Yijie Shen <henry.yijieshen@gmail.com>

Closes #8157 from yjshen/rever8049.
2015-08-13 13:33:39 +08:00
Davies Liu a8ab2634c1 [SPARK-9832] [SQL] add a thread-safe lookup for BytesToBytseMap
This patch add a thread-safe lookup for BytesToBytseMap, and use that in broadcasted HashedRelation.

Author: Davies Liu <davies@databricks.com>

Closes #8151 from davies/safeLookup.
2015-08-12 21:26:00 -07:00
Yin Huai 2278219054 [SPARK-9920] [SQL] The simpleString of TungstenAggregate does not show its output
https://issues.apache.org/jira/browse/SPARK-9920

Taking `sqlContext.sql("select i, sum(j1) as sum from testAgg group by i").explain()` as an example, the output of our current master is
```
== Physical Plan ==
TungstenAggregate(key=[i#0], value=[(sum(cast(j1#1 as bigint)),mode=Final,isDistinct=false)]
 TungstenExchange hashpartitioning(i#0)
  TungstenAggregate(key=[i#0], value=[(sum(cast(j1#1 as bigint)),mode=Partial,isDistinct=false)]
   Scan ParquetRelation[file:/user/hive/warehouse/testagg][i#0,j1#1]
```
With this PR, the output will be
```
== Physical Plan ==
TungstenAggregate(key=[i#0], functions=[(sum(cast(j1#1 as bigint)),mode=Final,isDistinct=false)], output=[i#0,sum#18L])
 TungstenExchange hashpartitioning(i#0)
  TungstenAggregate(key=[i#0], functions=[(sum(cast(j1#1 as bigint)),mode=Partial,isDistinct=false)], output=[i#0,currentSum#22L])
   Scan ParquetRelation[file:/user/hive/warehouse/testagg][i#0,j1#1]
```

Author: Yin Huai <yhuai@databricks.com>

Closes #8150 from yhuai/SPARK-9920.
2015-08-12 21:24:15 -07:00
Yin Huai 4413d0855a [SPARK-9908] [SQL] When spark.sql.tungsten.enabled is false, broadcast join does not work
https://issues.apache.org/jira/browse/SPARK-9908

Author: Yin Huai <yhuai@databricks.com>

Closes #8149 from yhuai/SPARK-9908.
2015-08-12 20:03:55 -07:00
Davies Liu 7c35746c91 [SPARK-9827] [SQL] fix fd leak in UnsafeRowSerializer
Currently, UnsafeRowSerializer does not close the InputStream, will cause fd leak if the InputStream has an open fd in it.

TODO: the fd could still be leaked, if any items in the stream is not consumed. Currently it replies on GC to close the fd in this case.

cc JoshRosen

Author: Davies Liu <davies@databricks.com>

Closes #8116 from davies/fd_leak.
2015-08-12 20:02:55 -07:00
Michael Armbrust 660e6dcff8 [SPARK-9449] [SQL] Include MetastoreRelation's inputFiles
Author: Michael Armbrust <michael@databricks.com>

Closes #8119 from marmbrus/metastoreInputFiles.
2015-08-12 17:07:29 -07:00
Yin Huai 7035d880a0 [SPARK-9894] [SQL] Json writer should handle MapData.
https://issues.apache.org/jira/browse/SPARK-9894

Author: Yin Huai <yhuai@databricks.com>

Closes #8137 from yhuai/jsonMapData.
2015-08-12 16:45:15 -07:00
Andrew Or e0110792ef [SPARK-9747] [SQL] Avoid starving an unsafe operator in aggregation
This is the sister patch to #8011, but for aggregation.

In a nutshell: create the `TungstenAggregationIterator` before computing the parent partition. Internally this creates a `BytesToBytesMap` which acquires a page in the constructor as of this patch. This ensures that the aggregation operator is not starved since we reserve at least 1 page in advance.

rxin yhuai

Author: Andrew Or <andrew@databricks.com>

Closes #8038 from andrewor14/unsafe-starve-memory-agg.
2015-08-12 10:08:35 -07:00
Cheng Lian 3ecb379430 [SPARK-9407] [SQL] Relaxes Parquet ValidTypeMap to allow ENUM predicates to be pushed down
This PR adds a hacky workaround for PARQUET-201, and should be removed once we upgrade to parquet-mr 1.8.1 or higher versions.

In Parquet, not all types of columns can be used for filter push-down optimization.  The set of valid column types is controlled by `ValidTypeMap`.  Unfortunately, in parquet-mr 1.7.0 and prior versions, this limitation is too strict, and doesn't allow `BINARY (ENUM)` columns to be pushed down.  On the other hand, `BINARY (ENUM)` is commonly seen in Parquet files written by libraries like `parquet-avro`.

This restriction is problematic for Spark SQL, because Spark SQL doesn't have a type that maps to Parquet `BINARY (ENUM)` directly, and always converts `BINARY (ENUM)` to Catalyst `StringType`.  Thus, a predicate involving a `BINARY (ENUM)` is recognized as one involving a string field instead and can be pushed down by the query optimizer.  Such predicates are actually perfectly legal except that it fails the `ValidTypeMap` check.

The workaround added here is relaxing `ValidTypeMap` to include `BINARY (ENUM)`.  I also took the chance to simplify `ParquetCompatibilityTest` a little bit when adding regression test.

Author: Cheng Lian <lian@databricks.com>

Closes #8107 from liancheng/spark-9407/parquet-enum-filter-push-down.
2015-08-12 20:01:34 +08:00
Yijie Shen 9d0822455d [SPARK-9182] [SQL] Filters are not passed through to jdbc source
This PR fixes unable to push filter down to JDBC source caused by `Cast` during pattern matching.

While we are comparing columns of different type, there's a big chance we need a cast on the column, therefore not match the pattern directly on Attribute and would fail to push down.

Author: Yijie Shen <henry.yijieshen@gmail.com>

Closes #8049 from yjshen/jdbc_pushdown.
2015-08-12 19:54:00 +08:00
Davies Liu c3e9a120e3 [SPARK-9831] [SQL] fix serialization with empty broadcast
Author: Davies Liu <davies@databricks.com>

Closes #8117 from davies/fix_serialization and squashes the following commits:

d21ac71 [Davies Liu] fix serialization with empty broadcast
2015-08-11 22:45:18 -07:00
Reynold Xin afa757c98c [SPARK-9849] [SQL] DirectParquetOutputCommitter qualified name should be backward compatible
DirectParquetOutputCommitter was moved in SPARK-9763. However, users can explicitly set the class as a config option, so we must be able to resolve the old committer qualified name.

Author: Reynold Xin <rxin@databricks.com>

Closes #8114 from rxin/SPARK-9849.
2015-08-11 18:08:49 -07:00
hyukjinkwon 00c02728a6 [SPARK-9814] [SQL] EqualNotNull not passing to data sources
Author: hyukjinkwon <gurwls223@gmail.com>
Author: 권혁진 <gurwls223@gmail.com>

Closes #8096 from HyukjinKwon/master.
2015-08-11 14:04:09 -07:00
zsxwing 5831294a7a [SPARK-9646] [SQL] Add metrics for all join and aggregate operators
This PR added metrics for all join and aggregate operators. However, I found the metrics may be confusing in the following two case:
1. The iterator is not totally consumed and the metric values will be less.
2. Recreating the iterators will make metric values look bigger than the size of the input source, such as `CartesianProduct`.

Author: zsxwing <zsxwing@gmail.com>

Closes #8060 from zsxwing/sql-metrics and squashes the following commits:

40f3fc1 [zsxwing] Mark LongSQLMetric private[metric] to avoid using incorrectly and leak memory
b1b9071 [zsxwing] Merge branch 'master' into sql-metrics
4bef25a [zsxwing] Add metrics for SortMergeOuterJoin
95ccfc6 [zsxwing] Merge branch 'master' into sql-metrics
67cb4dd [zsxwing] Add metrics for Project and TungstenProject; remove metrics from PhysicalRDD and LocalTableScan
0eb47d4 [zsxwing] Merge branch 'master' into sql-metrics
dd9d932 [zsxwing] Avoid creating new Iterators
589ea26 [zsxwing] Add metrics for all join and aggregate operators
2015-08-11 12:39:13 -07:00
Reynold Xin d378396f86 [SPARK-9815] Rename PlatformDependent.UNSAFE -> Platform.
PlatformDependent.UNSAFE is way too verbose.

Author: Reynold Xin <rxin@databricks.com>

Closes #8094 from rxin/SPARK-9815 and squashes the following commits:

229b603 [Reynold Xin] [SPARK-9815] Rename PlatformDependent.UNSAFE -> Platform.
2015-08-11 08:41:06 -07:00
Josh Rosen 91e9389f39 [SPARK-9729] [SPARK-9363] [SQL] Use sort merge join for left and right outer join
This patch adds a new `SortMergeOuterJoin` operator that performs left and right outer joins using sort merge join.  It also refactors `SortMergeJoin` in order to improve performance and code clarity.

Along the way, I also performed a couple pieces of minor cleanup and optimization:

- Rename the `HashJoin` physical planner rule to `EquiJoinSelection`, since it's also used for non-hash joins.
- Rewrite the comment at the top of `HashJoin` to better explain the precedence for choosing join operators.
- Update `JoinSuite` to use `SqlTestUtils.withConf` for changing SQLConf settings.

This patch incorporates several ideas from adrian-wang's patch, #5717.

Closes #5717.

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Author: Josh Rosen <joshrosen@databricks.com>
Author: Daoyuan Wang <daoyuan.wang@intel.com>

Closes #7904 from JoshRosen/outer-join-smj and squashes 1 commits.
2015-08-10 22:04:41 -07:00
Damian Guy 071bbad5db [SPARK-9340] [SQL] Fixes converting unannotated Parquet lists
This PR is inspired by #8063 authored by dguy. Especially, testing Parquet files added here are all taken from that PR.

**Committer who merges this PR should attribute it to "Damian Guy <damian.guygmail.com>".**

----

SPARK-6776 and SPARK-6777 followed `parquet-avro` to implement backwards-compatibility rules defined in `parquet-format` spec. However, both Spark SQL and `parquet-avro` neglected the following statement in `parquet-format`:

> This does not affect repeated fields that are not annotated: A repeated field that is neither contained by a `LIST`- or `MAP`-annotated group nor annotated by `LIST` or `MAP` should be interpreted as a required list of required elements where the element type is the type of the field.

One of the consequences is that, Parquet files generated by `parquet-protobuf` containing unannotated repeated fields are not correctly converted to Catalyst arrays.

This PR fixes this issue by

1. Handling unannotated repeated fields in `CatalystSchemaConverter`.
2. Converting this kind of special repeated fields to Catalyst arrays in `CatalystRowConverter`.

   Two special converters, `RepeatedPrimitiveConverter` and `RepeatedGroupConverter`, are added. They delegate actual conversion work to a child `elementConverter` and accumulates elements in an `ArrayBuffer`.

   Two extra methods, `start()` and `end()`, are added to `ParentContainerUpdater`. So that they can be used to initialize new `ArrayBuffer`s for unannotated repeated fields, and propagate converted array values to upstream.

Author: Cheng Lian <lian@databricks.com>

Closes #8070 from liancheng/spark-9340/unannotated-parquet-list and squashes the following commits:

ace6df7 [Cheng Lian] Moves ParquetProtobufCompatibilitySuite
f1c7bfd [Cheng Lian] Updates .rat-excludes
420ad2b [Cheng Lian] Fixes converting unannotated Parquet lists
2015-08-11 12:46:33 +08:00
Reynold Xin 40ed2af587 [SPARK-9763][SQL] Minimize exposure of internal SQL classes.
There are a few changes in this pull request:

1. Moved all data sources to execution.datasources, except the public JDBC APIs.
2. In order to maintain backward compatibility from 1, added a backward compatibility translation map in data source resolution.
3. Moved ui and metric package into execution.
4. Added more documentation on some internal classes.
5. Renamed DataSourceRegister.format -> shortName.
6. Added "override" modifier on shortName.
7. Removed IntSQLMetric.

Author: Reynold Xin <rxin@databricks.com>

Closes #8056 from rxin/SPARK-9763 and squashes the following commits:

9df4801 [Reynold Xin] Removed hardcoded name in test cases.
d9babc6 [Reynold Xin] Shorten.
e484419 [Reynold Xin] Removed VisibleForTesting.
171b812 [Reynold Xin] MimaExcludes.
2041389 [Reynold Xin] Compile ...
79dda42 [Reynold Xin] Compile.
0818ba3 [Reynold Xin] Removed IntSQLMetric.
c46884f [Reynold Xin] Two more fixes.
f9aa88d [Reynold Xin] [SPARK-9763][SQL] Minimize exposure of internal SQL classes.
2015-08-10 13:49:23 -07:00
Josh Rosen 0fe66744f1 [SPARK-9784] [SQL] Exchange.isUnsafe should check whether codegen and unsafe are enabled
Exchange.isUnsafe should check whether codegen and unsafe are enabled.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #8073 from JoshRosen/SPARK-9784 and squashes the following commits:

7a1019f [Josh Rosen] [SPARK-9784] Exchange.isUnsafe should check whether codegen and unsafe are enabled
2015-08-10 13:05:03 -07:00
Cheng Lian e3fef0f9e1 [SPARK-9743] [SQL] Fixes JSONRelation refreshing
PR #7696 added two `HadoopFsRelation.refresh()` calls ([this] [1], and [this] [2]) in `DataSourceStrategy` to make test case `InsertSuite.save directly to the path of a JSON table` pass. However, this forces every `HadoopFsRelation` table scan to do a refresh, which can be super expensive for tables with large number of partitions.

The reason why the original test case fails without the `refresh()` calls is that, the old JSON relation builds the base RDD with the input paths, while `HadoopFsRelation` provides `FileStatus`es of leaf files. With the old JSON relation, we can create a temporary table based on a path, writing data to that, and then read newly written data without refreshing the table. This is no long true for `HadoopFsRelation`.

This PR removes those two expensive refresh calls, and moves the refresh into `JSONRelation` to fix this issue. We might want to update `HadoopFsRelation` interface to provide better support for this use case.

[1]: ebfd91c542/sql/core/src/main/scala/org/apache/spark/sql/execution/datasources/DataSourceStrategy.scala (L63)
[2]: ebfd91c542/sql/core/src/main/scala/org/apache/spark/sql/execution/datasources/DataSourceStrategy.scala (L91)

Author: Cheng Lian <lian@databricks.com>

Closes #8035 from liancheng/spark-9743/fix-json-relation-refreshing and squashes the following commits:

ec1957d [Cheng Lian] Fixes JSONRelation refreshing
2015-08-10 09:07:08 -07:00
Yin Huai be80def0d0 [SPARK-9777] [SQL] Window operator can accept UnsafeRows
https://issues.apache.org/jira/browse/SPARK-9777

Author: Yin Huai <yhuai@databricks.com>

Closes #8064 from yhuai/windowUnsafe and squashes the following commits:

8fb3537 [Yin Huai] Set canProcessUnsafeRows to true.
2015-08-09 22:33:53 -07:00
Josh Rosen 23cf5af08d [SPARK-9703] [SQL] Refactor EnsureRequirements to avoid certain unnecessary shuffles
This pull request refactors the `EnsureRequirements` planning rule in order to avoid the addition of certain unnecessary shuffles.

As an example of how unnecessary shuffles can occur, consider SortMergeJoin, which requires clustered distribution and sorted ordering of its children's input rows. Say that both of SMJ's children produce unsorted output but are both SinglePartition. In this case, we will need to inject sort operators but should not need to inject Exchanges. Unfortunately, it looks like the EnsureRequirements unnecessarily repartitions using a hash partitioning.

This patch solves this problem by refactoring `EnsureRequirements` to properly implement the `compatibleWith` checks that were broken in earlier implementations. See the significant inline comments for a better description of how this works. The majority of this PR is new comments and test cases, with few actual changes to the code.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #7988 from JoshRosen/exchange-fixes and squashes the following commits:

38006e7 [Josh Rosen] Rewrite EnsureRequirements _yet again_ to make things even simpler
0983f75 [Josh Rosen] More guarantees vs. compatibleWith cleanup; delete BroadcastPartitioning.
8784bd9 [Josh Rosen] Giant comment explaining compatibleWith vs. guarantees
1307c50 [Josh Rosen] Update conditions for requiring child compatibility.
18cddeb [Josh Rosen] Rename DummyPlan to DummySparkPlan.
2c7e126 [Josh Rosen] Merge remote-tracking branch 'origin/master' into exchange-fixes
fee65c4 [Josh Rosen] Further refinement to comments / reasoning
642b0bb [Josh Rosen] Further expand comment / reasoning
06aba0c [Josh Rosen] Add more comments
8dbc845 [Josh Rosen] Add even more tests.
4f08278 [Josh Rosen] Fix the test by adding the compatibility check to EnsureRequirements
a1c12b9 [Josh Rosen] Add failing test to demonstrate allCompatible bug
0725a34 [Josh Rosen] Small assertion cleanup.
5172ac5 [Josh Rosen] Add test for requiresChildrenToProduceSameNumberOfPartitions.
2e0f33a [Josh Rosen] Write a more generic test for EnsureRequirements.
752b8de [Josh Rosen] style fix
c628daf [Josh Rosen] Revert accidental ExchangeSuite change.
c9fb231 [Josh Rosen] Rewrite exchange to fix better handle this case.
adcc742 [Josh Rosen] Move test to PlannerSuite.
0675956 [Josh Rosen] Preserving ordering and partitioning in row format converters also does not help.
cc5669c [Josh Rosen] Adding outputPartitioning to Repartition does not fix the test.
2dfc648 [Josh Rosen] Add failing test illustrating bad exchange planning.
2015-08-09 14:26:01 -07:00
Yijie Shen 68ccc6e184 [SPARK-8930] [SQL] Throw a AnalysisException with meaningful messages if DataFrame#explode takes a star in expressions
Author: Yijie Shen <henry.yijieshen@gmail.com>

Closes #8057 from yjshen/explode_star and squashes the following commits:

eae181d [Yijie Shen] change explaination message
54c9d11 [Yijie Shen] meaning message for * in explode
2015-08-09 11:44:51 -07:00
Reynold Xin e9c36938ba [SPARK-9752][SQL] Support UnsafeRow in Sample operator.
In order for this to work, I had to disable gap sampling.

Author: Reynold Xin <rxin@databricks.com>

Closes #8040 from rxin/SPARK-9752 and squashes the following commits:

f9e248c [Reynold Xin] Fix the test case for real this time.
adbccb3 [Reynold Xin] Fixed test case.
589fb23 [Reynold Xin] Merge branch 'SPARK-9752' of github.com:rxin/spark into SPARK-9752
55ccddc [Reynold Xin] Fixed core test.
78fa895 [Reynold Xin] [SPARK-9752][SQL] Support UnsafeRow in Sample operator.
c9e7112 [Reynold Xin] [SPARK-9752][SQL] Support UnsafeRow in Sample operator.
2015-08-09 10:58:36 -07:00
Yijie Shen 3ca995b78f [SPARK-6212] [SQL] The EXPLAIN output of CTAS only shows the analyzed plan
JIRA: https://issues.apache.org/jira/browse/SPARK-6212

Author: Yijie Shen <henry.yijieshen@gmail.com>

Closes #7986 from yjshen/ctas_explain and squashes the following commits:

bb6fee5 [Yijie Shen] refine test
f731041 [Yijie Shen] address comment
b2cf8ab [Yijie Shen] bug fix
bd7eb20 [Yijie Shen] ctas explain
2015-08-08 21:05:50 -07:00
CodingCat 25c363e93b [MINOR] inaccurate comments for showString()
Author: CodingCat <zhunansjtu@gmail.com>

Closes #8050 from CodingCat/minor and squashes the following commits:

5bc4b89 [CodingCat] inaccurate comments
2015-08-08 18:22:46 -07:00
Joseph Batchik a3aec918be [SPARK-9486][SQL] Add data source aliasing for external packages
Users currently have to provide the full class name for external data sources, like:

`sqlContext.read.format("com.databricks.spark.avro").load(path)`

This allows external data source packages to register themselves using a Service Loader so that they can add custom alias like:

`sqlContext.read.format("avro").load(path)`

This makes it so that using external data source packages uses the same format as the internal data sources like parquet, json, etc.

Author: Joseph Batchik <joseph.batchik@cloudera.com>
Author: Joseph Batchik <josephbatchik@gmail.com>

Closes #7802 from JDrit/service_loader and squashes the following commits:

49a01ec [Joseph Batchik] fixed a couple of format / error bugs
e5e93b2 [Joseph Batchik] modified rat file to only excluded added services
72b349a [Joseph Batchik] fixed error with orc data source actually
9f93ea7 [Joseph Batchik] fixed error with orc data source
87b7f1c [Joseph Batchik] fixed typo
101cd22 [Joseph Batchik] removing unneeded changes
8f3cf43 [Joseph Batchik] merged in changes
b63d337 [Joseph Batchik] merged in master
95ae030 [Joseph Batchik] changed the new trait to be used as a mixin for data source to register themselves
74db85e [Joseph Batchik] reformatted class loader
ac2270d [Joseph Batchik] removing some added test
a6926db [Joseph Batchik] added test cases for data source loader
208a2a8 [Joseph Batchik] changes to do error catching if there are multiple data sources
946186e [Joseph Batchik] started working on service loader
2015-08-08 11:03:01 -07:00
Wenchen Fan 106c0789d8 [SPARK-9738] [SQL] remove FromUnsafe and add its codegen version to GenerateSafe
In https://github.com/apache/spark/pull/7752 we added `FromUnsafe` to convert nexted unsafe data like array/map/struct to safe versions. It's a quick solution and we already have `GenerateSafe` to do the conversion which is codegened. So we should remove `FromUnsafe` and implement its codegen version in `GenerateSafe`.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #8029 from cloud-fan/from-unsafe and squashes the following commits:

ed40d8f [Wenchen Fan] add the copy back
a93fd4b [Wenchen Fan] cogengen FromUnsafe
2015-08-08 08:33:14 -07:00
Cheng Lian 11caf1ce29 [SPARK-4176] [SQL] [MINOR] Should use unscaled Long to write decimals for precision <= 18 rather than 8
This PR fixes a minor bug introduced in #7455: when writing decimals, we should use the unscaled Long for better performance when the precision <= 18 rather than 8 (should be a typo). This bug doesn't affect correctness, but hurts Parquet decimal writing performance.

This PR also replaced similar magic numbers with newly defined constants.

Author: Cheng Lian <lian@databricks.com>

Closes #8031 from liancheng/spark-4176/minor-fix-for-writing-decimals and squashes the following commits:

10d4ea3 [Cheng Lian] Should use unscaled Long to write decimals for precision <= 18 rather than 8
2015-08-08 18:09:48 +08:00
Yin Huai c564b27447 [SPARK-9753] [SQL] TungstenAggregate should also accept InternalRow instead of just UnsafeRow
https://issues.apache.org/jira/browse/SPARK-9753

This PR makes TungstenAggregate to accept `InternalRow` instead of just `UnsafeRow`. Also, it adds an `getAggregationBufferFromUnsafeRow` method to `UnsafeFixedWidthAggregationMap`. It is useful when we already have grouping keys stored in `UnsafeRow`s. Finally, it wraps `InputStream` and `OutputStream` in `UnsafeRowSerializer` with `BufferedInputStream` and `BufferedOutputStream`, respectively.

Author: Yin Huai <yhuai@databricks.com>

Closes #8041 from yhuai/joinedRowForProjection and squashes the following commits:

7753e34 [Yin Huai] Use BufferedInputStream and BufferedOutputStream.
d68b74e [Yin Huai] Use joinedRow instead of UnsafeRowJoiner.
e93c009 [Yin Huai] Add getAggregationBufferFromUnsafeRow for cases that the given groupingKeyRow is already an UnsafeRow.
2015-08-07 20:04:17 -07:00
Reynold Xin 998f4ff94d [SPARK-9754][SQL] Remove TypeCheck in debug package.
TypeCheck no longer applies in the new "Tungsten" world.

Author: Reynold Xin <rxin@databricks.com>

Closes #8043 from rxin/SPARK-9754 and squashes the following commits:

4ec471e [Reynold Xin] [SPARK-9754][SQL] Remove TypeCheck in debug package.
2015-08-07 19:09:28 -07:00
Michael Armbrust 49702bd738 [SPARK-8890] [SQL] Fallback on sorting when writing many dynamic partitions
Previously, we would open a new file for each new dynamic written out using `HadoopFsRelation`.  For formats like parquet this is very costly due to the buffers required to get good compression.  In this PR I refactor the code allowing us to fall back on an external sort when many partitions are seen.  As such each task will open no more than `spark.sql.sources.maxFiles` files.  I also did the following cleanup:

 - Instead of keying the file HashMap on an expensive to compute string representation of the partition, we now use a fairly cheap UnsafeProjection that avoids heap allocations.
 - The control flow for instantiating and invoking a writer container has been simplified.  Now instead of switching in two places based on the use of partitioning, the specific writer container must implement a single method `writeRows` that is invoked using `runJob`.
 - `InternalOutputWriter` has been removed.  Instead we have a `private[sql]` method `writeInternal` that converts and calls the public method.  This method can be overridden by internal datasources to avoid the conversion.  This change remove a lot of code duplication and per-row `asInstanceOf` checks.
 - `commands.scala` has been split up.

Author: Michael Armbrust <michael@databricks.com>

Closes #8010 from marmbrus/fsWriting and squashes the following commits:

00804fe [Michael Armbrust] use shuffleMemoryManager.pageSizeBytes
775cc49 [Michael Armbrust] Merge remote-tracking branch 'origin/master' into fsWriting
17b690e [Michael Armbrust] remove comment
40f0372 [Michael Armbrust] address comments
f5675bd [Michael Armbrust] char -> string
7e2d0a4 [Michael Armbrust] make sure we close current writer
8100100 [Michael Armbrust] delete empty commands.scala
71cc717 [Michael Armbrust] update comment
8ec75ac [Michael Armbrust] [SPARK-8890][SQL] Fallback on sorting when writing many dynamic partitions
2015-08-07 16:24:50 -07:00
Andrew Or 881548ab20 [SPARK-9674] Re-enable ignored test in SQLQuerySuite
The original code that this test tests is removed in 9270bd06fd. It was ignored shortly before that so we never caught it. This patch re-enables the test and adds the code necessary to make it pass.

JoshRosen yhuai

Author: Andrew Or <andrew@databricks.com>

Closes #8015 from andrewor14/SPARK-9674 and squashes the following commits:

225eac2 [Andrew Or] Merge branch 'master' of github.com:apache/spark into SPARK-9674
8c24209 [Andrew Or] Fix NPE
e541d64 [Andrew Or] Track aggregation memory for both sort and hash
0be3a42 [Andrew Or] Fix test
2015-08-07 14:20:13 -07:00
Reynold Xin 05d04e10a8 [SPARK-9733][SQL] Improve physical plan explain for data sources
All data sources show up as "PhysicalRDD" in physical plan explain. It'd be better if we can show the name of the data source.

Without this patch:
```
== Physical Plan ==
NewAggregate with UnsafeHybridAggregationIterator ArrayBuffer(date#0, cat#1) ArrayBuffer((sum(CAST((CAST(count#2, IntegerType) + 1), LongType))2,mode=Final,isDistinct=false))
 Exchange hashpartitioning(date#0,cat#1)
  NewAggregate with UnsafeHybridAggregationIterator ArrayBuffer(date#0, cat#1) ArrayBuffer((sum(CAST((CAST(count#2, IntegerType) + 1), LongType))2,mode=Partial,isDistinct=false))
   PhysicalRDD [date#0,cat#1,count#2], MapPartitionsRDD[3] at
```

With this patch:
```
== Physical Plan ==
TungstenAggregate(key=[date#0,cat#1], value=[(sum(CAST((CAST(count#2, IntegerType) + 1), LongType)),mode=Final,isDistinct=false)]
 Exchange hashpartitioning(date#0,cat#1)
  TungstenAggregate(key=[date#0,cat#1], value=[(sum(CAST((CAST(count#2, IntegerType) + 1), LongType)),mode=Partial,isDistinct=false)]
   ConvertToUnsafe
    Scan ParquetRelation[file:/scratch/rxin/spark/sales4][date#0,cat#1,count#2]
```

Author: Reynold Xin <rxin@databricks.com>

Closes #8024 from rxin/SPARK-9733 and squashes the following commits:

811b90e [Reynold Xin] Fixed Python test case.
52cab77 [Reynold Xin] Cast.
eea9ccc [Reynold Xin] Fix test case.
fcecb22 [Reynold Xin] [SPARK-9733][SQL] Improve explain message for data source scan node.
2015-08-07 13:41:45 -07:00
Reynold Xin aeddeafc03 [SPARK-9667][SQL] followup: Use GenerateUnsafeProjection.canSupport to test Exchange supported data types.
This way we recursively test the data types.

cc chenghao-intel

Author: Reynold Xin <rxin@databricks.com>

Closes #8036 from rxin/cansupport and squashes the following commits:

f7302ff [Reynold Xin] Can GenerateUnsafeProjection.canSupport to test Exchange supported data types.
2015-08-07 13:26:03 -07:00
Reynold Xin 76eaa70183 [SPARK-9674][SPARK-9667] Remove SparkSqlSerializer2
It is now subsumed by various Tungsten operators.

Author: Reynold Xin <rxin@databricks.com>

Closes #7981 from rxin/SPARK-9674 and squashes the following commits:

144f96e [Reynold Xin] Re-enable test
58b7332 [Reynold Xin] Disable failing list.
fb797e3 [Reynold Xin] Match all UDTs.
be9f243 [Reynold Xin] Updated if.
71fc99c [Reynold Xin] [SPARK-9674][SPARK-9667] Remove GeneratedAggregate & SparkSqlSerializer2.
2015-08-07 11:02:53 -07:00
zsxwing ebfd91c542 [SPARK-9467][SQL]Add SQLMetric to specialize accumulators to avoid boxing
This PR adds SQLMetric/SQLMetricParam/SQLMetricValue to specialize accumulators to avoid boxing. All SQL metrics should use these classes rather than `Accumulator`.

Author: zsxwing <zsxwing@gmail.com>

Closes #7996 from zsxwing/sql-accu and squashes the following commits:

14a5f0a [zsxwing] Address comments
367ca23 [zsxwing] Use localValue directly to avoid changing Accumulable
42f50c3 [zsxwing] Add SQLMetric to specialize accumulators to avoid boxing
2015-08-07 00:09:58 -07:00
Wenchen Fan e57d6b5613 [SPARK-9683] [SQL] copy UTF8String when convert unsafe array/map to safe
When we convert unsafe row to safe row, we will do copy if the column is struct or string type. However, the string inside unsafe array/map are not copied, which may cause problems.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7990 from cloud-fan/copy and squashes the following commits:

c13d1e3 [Wenchen Fan] change test name
fe36294 [Wenchen Fan] we should deep copy UTF8String when convert unsafe row to safe row
2015-08-07 00:00:43 -07:00
Reynold Xin 4309262ec9 [SPARK-9700] Pick default page size more intelligently.
Previously, we use 64MB as the default page size, which was way too big for a lot of Spark applications (especially for single node).

This patch changes it so that the default page size, if unset by the user, is determined by the number of cores available and the total execution memory available.

Author: Reynold Xin <rxin@databricks.com>

Closes #8012 from rxin/pagesize and squashes the following commits:

16f4756 [Reynold Xin] Fixed failing test.
5afd570 [Reynold Xin] private...
0d5fb98 [Reynold Xin] Update default value.
674a6cd [Reynold Xin] Address review feedback.
dc00e05 [Reynold Xin] Merge with master.
73ebdb6 [Reynold Xin] [SPARK-9700] Pick default page size more intelligently.
2015-08-06 23:18:29 -07:00
zsxwing 7aaed1b114 [SPARK-8862][SQL]Support multiple SQLContexts in Web UI
This is a follow-up PR to solve the UI issue when there are multiple SQLContexts. Each SQLContext has a separate tab and contains queries which are executed by this SQLContext.

<img width="1366" alt="multiple sqlcontexts" src="https://cloud.githubusercontent.com/assets/1000778/9088391/54584434-3bc2-11e5-9caf-94c2b0da528e.png">

Author: zsxwing <zsxwing@gmail.com>

Closes #7962 from zsxwing/multi-sqlcontext-ui and squashes the following commits:

cf661e1 [zsxwing] sql -> SQL
39b0c97 [zsxwing] Support multiple SQLContexts in Web UI
2015-08-06 22:52:23 -07:00
Davies Liu 17284db314 [SPARK-9228] [SQL] use tungsten.enabled in public for both of codegen/unsafe
spark.sql.tungsten.enabled will be the default value for both codegen and unsafe, they are kept internally for debug/testing.

cc marmbrus rxin

Author: Davies Liu <davies@databricks.com>

Closes #7998 from davies/tungsten and squashes the following commits:

c1c16da [Davies Liu] update doc
1a47be1 [Davies Liu] use tungsten.enabled for both of codegen/unsafe

(cherry picked from commit 4e70e8256c)
Signed-off-by: Reynold Xin <rxin@databricks.com>
2015-08-06 19:42:02 -07:00
Andrew Or 014a9f9d8c [SPARK-9709] [SQL] Avoid starving unsafe operators that use sort
The issue is that a task may run multiple sorts, and the sorts run by the child operator (i.e. parent RDD) may acquire all available memory such that other sorts in the same task do not have enough to proceed. This manifests itself in an `IOException("Unable to acquire X bytes of memory")` thrown by `UnsafeExternalSorter`.

The solution is to reserve a page in each sorter in the chain before computing the child operator's (parent RDD's) partitions. This requires us to use a new special RDD that does some preparation before computing the parent's partitions.

Author: Andrew Or <andrew@databricks.com>

Closes #8011 from andrewor14/unsafe-starve-memory and squashes the following commits:

35b69a4 [Andrew Or] Simplify test
0b07782 [Andrew Or] Minor: update comments
5d5afdf [Andrew Or] Merge branch 'master' of github.com:apache/spark into unsafe-starve-memory
254032e [Andrew Or] Add tests
234acbd [Andrew Or] Reserve a page in sorter when preparing each partition
b889e08 [Andrew Or] MapPartitionsWithPreparationRDD
2015-08-06 19:04:57 -07:00
Reynold Xin b87825310a [SPARK-9692] Remove SqlNewHadoopRDD's generated Tuple2 and InterruptibleIterator.
A small performance optimization – we don't need to generate a Tuple2 and then immediately discard the key. We also don't need an extra wrapper from InterruptibleIterator.

Author: Reynold Xin <rxin@databricks.com>

Closes #8000 from rxin/SPARK-9692 and squashes the following commits:

1d4d0b3 [Reynold Xin] [SPARK-9692] Remove SqlNewHadoopRDD's generated Tuple2 and InterruptibleIterator.
2015-08-06 18:25:38 -07:00
Davies Liu 49b1504fe3 Revert "[SPARK-9228] [SQL] use tungsten.enabled in public for both of codegen/unsafe"
This reverts commit 4e70e8256c.
2015-08-06 17:36:12 -07:00
Michael Armbrust 0867b23c74 [SPARK-9650][SQL] Fix quoting behavior on interpolated column names
Make sure that `$"column"` is consistent with other methods with respect to backticks.  Adds a bunch of tests for various ways of constructing columns.

Author: Michael Armbrust <michael@databricks.com>

Closes #7969 from marmbrus/namesWithDots and squashes the following commits:

53ef3d7 [Michael Armbrust] [SPARK-9650][SQL] Fix quoting behavior on interpolated column names
2bf7a92 [Michael Armbrust] WIP
2015-08-06 17:31:16 -07:00
Davies Liu 4e70e8256c [SPARK-9228] [SQL] use tungsten.enabled in public for both of codegen/unsafe
spark.sql.tungsten.enabled will be the default value for both codegen and unsafe, they are kept internally for debug/testing.

cc marmbrus rxin

Author: Davies Liu <davies@databricks.com>

Closes #7998 from davies/tungsten and squashes the following commits:

c1c16da [Davies Liu] update doc
1a47be1 [Davies Liu] use tungsten.enabled for both of codegen/unsafe
2015-08-06 17:30:31 -07:00
Yin Huai 3504bf3aa9 [SPARK-9630] [SQL] Clean up new aggregate operators (SPARK-9240 follow up)
This is the followup of https://github.com/apache/spark/pull/7813. It renames `HybridUnsafeAggregationIterator` to `TungstenAggregationIterator` and makes it only work with `UnsafeRow`. Also, I add a `TungstenAggregate` that uses `TungstenAggregationIterator` and make `SortBasedAggregate` (renamed from `SortBasedAggregate`) only works with `SafeRow`.

Author: Yin Huai <yhuai@databricks.com>

Closes #7954 from yhuai/agg-followUp and squashes the following commits:

4d2f4fc [Yin Huai] Add comments and free map.
0d7ddb9 [Yin Huai] Add TungstenAggregationQueryWithControlledFallbackSuite to test fall back process.
91d69c2 [Yin Huai] Rename UnsafeHybridAggregationIterator to  TungstenAggregateIteraotr and make it only work with UnsafeRow.
2015-08-06 15:04:44 -07:00
Liang-Chi Hsieh 21fdfd7d6f [SPARK-9548][SQL] Add a destructive iterator for BytesToBytesMap
This pull request adds a destructive iterator to BytesToBytesMap. When used, the iterator frees pages as it traverses them. This is part of the effort to avoid starving when we have more than one operators that can exhaust memory.

This is based on #7924, but fixes a bug there (Don't use destructive iterator in UnsafeKVExternalSorter).

Closes #7924.

Author: Liang-Chi Hsieh <viirya@appier.com>
Author: Reynold Xin <rxin@databricks.com>

Closes #8003 from rxin/map-destructive-iterator and squashes the following commits:

6b618c3 [Reynold Xin] Don't use destructive iterator in UnsafeKVExternalSorter.
a7bd8ec [Reynold Xin] Merge remote-tracking branch 'viirya/destructive_iter' into map-destructive-iterator
7652083 [Liang-Chi Hsieh] For comments: add destructiveIterator(), modify unit test, remove code block.
4a3e9de [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into destructive_iter
581e9e3 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into destructive_iter
f0ff783 [Liang-Chi Hsieh] No need to free last page.
9e9d2a3 [Liang-Chi Hsieh] Add a destructive iterator for BytesToBytesMap.
2015-08-06 14:33:29 -07:00
Wenchen Fan 1f62f104c7 [SPARK-9632][SQL] update InternalRow.toSeq to make it accept data type info
This re-applies #7955, which was reverted due to a race condition to fix build breaking.

Author: Wenchen Fan <cloud0fan@outlook.com>
Author: Reynold Xin <rxin@databricks.com>

Closes #8002 from rxin/InternalRow-toSeq and squashes the following commits:

332416a [Reynold Xin] Merge pull request #7955 from cloud-fan/toSeq
21665e2 [Wenchen Fan] fix hive again...
4addf29 [Wenchen Fan] fix hive
bc16c59 [Wenchen Fan] minor fix
33d802c [Wenchen Fan] pass data type info to InternalRow.toSeq
3dd033e [Wenchen Fan] move the default special getters implementation from InternalRow to BaseGenericInternalRow
2015-08-06 13:11:59 -07:00
Davies Liu 2eca46a17a Revert "[SPARK-9632][SQL] update InternalRow.toSeq to make it accept data type info"
This reverts commit 6e009cb9c4.
2015-08-06 11:15:37 -07:00
Wenchen Fan 6e009cb9c4 [SPARK-9632][SQL] update InternalRow.toSeq to make it accept data type info
Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7955 from cloud-fan/toSeq and squashes the following commits:

21665e2 [Wenchen Fan] fix hive again...
4addf29 [Wenchen Fan] fix hive
bc16c59 [Wenchen Fan] minor fix
33d802c [Wenchen Fan] pass data type info to InternalRow.toSeq
3dd033e [Wenchen Fan] move the default special getters implementation from InternalRow to BaseGenericInternalRow
2015-08-06 10:40:54 -07:00
Reynold Xin 5e1b0ef079 [SPARK-9659][SQL] Rename inSet to isin to match Pandas function.
Inspiration drawn from this blog post: https://lab.getbase.com/pandarize-spark-dataframes/

Author: Reynold Xin <rxin@databricks.com>

Closes #7977 from rxin/isin and squashes the following commits:

9b1d3d6 [Reynold Xin] Added return.
2197d37 [Reynold Xin] Fixed test case.
7c1b6cf [Reynold Xin] Import warnings.
4f4a35d [Reynold Xin] [SPARK-9659][SQL] Rename inSet to isin to match Pandas function.
2015-08-06 10:39:16 -07:00
Burak Yavuz 98e69467d4 [SPARK-9615] [SPARK-9616] [SQL] [MLLIB] Bugs related to FrequentItems when merging and with Tungsten
In short:
1- FrequentItems should not use the InternalRow representation, because the keys in the map get messed up. For example, every key in the Map correspond to the very last element observed in the partition, when the elements are strings.

2- Merging two partitions had a bug:

**Existing behavior with size 3**
Partition A -> Map(1 -> 3, 2 -> 3, 3 -> 4)
Partition B -> Map(4 -> 25)
Result -> Map()

**Correct Behavior:**
Partition A -> Map(1 -> 3, 2 -> 3, 3 -> 4)
Partition B -> Map(4 -> 25)
Result -> Map(3 -> 1, 4 -> 22)

cc mengxr rxin JoshRosen

Author: Burak Yavuz <brkyvz@gmail.com>

Closes #7945 from brkyvz/freq-fix and squashes the following commits:

07fa001 [Burak Yavuz] address 2
1dc61a8 [Burak Yavuz] address 1
506753e [Burak Yavuz] fixed and added reg test
47bfd50 [Burak Yavuz] pushing
2015-08-06 10:29:40 -07:00
Davies Liu 93085c992e [SPARK-9482] [SQL] Fix thread-safey issue of using UnsafeProjection in join
This PR also change to use `def` instead of `lazy val` for UnsafeProjection, because it's not thread safe.

TODO: cleanup the debug code once the flaky test passed 100 times.

Author: Davies Liu <davies@databricks.com>

Closes #7940 from davies/semijoin and squashes the following commits:

93baac7 [Davies Liu] fix outerjoin
5c40ded [Davies Liu] address comments
aa3de46 [Davies Liu] Merge branch 'master' of github.com:apache/spark into semijoin
7590a25 [Davies Liu] Merge branch 'master' of github.com:apache/spark into semijoin
2d4085b [Davies Liu] use def for resultProjection
0833407 [Davies Liu] Merge branch 'semijoin' of github.com:davies/spark into semijoin
e0d8c71 [Davies Liu] use lazy val
6a59e8f [Davies Liu] Update HashedRelation.scala
0fdacaf [Davies Liu] fix broadcast and thread-safety of UnsafeProjection
2fc3ef6 [Davies Liu] reproduce failure in semijoin
2015-08-06 09:12:41 -07:00
Davies Liu 5b965d64ee [SPARK-9644] [SQL] Support update DecimalType with precision > 18 in UnsafeRow
In order to support update a varlength (actually fixed length) object, the space should be preserved even  it's null. And, we can't call setNullAt(i) for it anymore, we because setNullAt(i) will remove the offset of the preserved space, should call setDecimal(i, null, precision) instead.

After this, we can do hash based aggregation on DecimalType with precision > 18. In a tests, this could decrease the end-to-end run time of aggregation query from 37 seconds (sort based) to 24 seconds (hash based).

cc rxin

Author: Davies Liu <davies@databricks.com>

Closes #7978 from davies/update_decimal and squashes the following commits:

bed8100 [Davies Liu] isSettable -> isMutable
923c9eb [Davies Liu] address comments and fix bug
385891d [Davies Liu] Merge branch 'master' of github.com:apache/spark into update_decimal
36a1872 [Davies Liu] fix tests
cd6c524 [Davies Liu] support set decimal with precision > 18
2015-08-06 09:10:57 -07:00
zhichao.li aead18ffca [SPARK-8266] [SQL] add function translate
![translate](http://www.w3resource.com/PostgreSQL/postgresql-translate-function.png)

Author: zhichao.li <zhichao.li@intel.com>

Closes #7709 from zhichao-li/translate and squashes the following commits:

9418088 [zhichao.li] refine checking condition
f2ab77a [zhichao.li] clone string
9d88f2d [zhichao.li] fix indent
6aa2962 [zhichao.li] style
e575ead [zhichao.li] add python api
9d4bab0 [zhichao.li] add special case for fodable and refactor unittest
eda7ad6 [zhichao.li] update to use TernaryExpression
cdfd4be [zhichao.li] add function translate
2015-08-06 09:02:30 -07:00
Yin Huai d5a9af3230 [SPARK-9664] [SQL] Remove UDAFRegistration and add apply to UserDefinedAggregateFunction.
https://issues.apache.org/jira/browse/SPARK-9664

Author: Yin Huai <yhuai@databricks.com>

Closes #7982 from yhuai/udafRegister and squashes the following commits:

0cc2287 [Yin Huai] Remove UDAFRegistration and add apply to UserDefinedAggregateFunction.
2015-08-05 21:50:35 -07:00
Reynold Xin 9270bd06fd [SPARK-9674][SQL] Remove GeneratedAggregate.
The new aggregate replaces the old GeneratedAggregate.

Author: Reynold Xin <rxin@databricks.com>

Closes #7983 from rxin/remove-generated-agg and squashes the following commits:

8334aae [Reynold Xin] [SPARK-9674][SQL] Remove GeneratedAggregate.
2015-08-05 21:50:14 -07:00
Cheng Hao 119b590538 [SPARK-6923] [SPARK-7550] [SQL] Persists data source relations in Hive compatible format when possible
This PR is a fork of PR #5733 authored by chenghao-intel.  For committers who's going to merge this PR, please set the author to "Cheng Hao <hao.chengintel.com>".

----

When a data source relation meets the following requirements, we persist it in Hive compatible format, so that other systems like Hive can access it:

1. It's a `HadoopFsRelation`
2. It has only one input path
3. It's non-partitioned
4. It's data source provider can be naturally mapped to a Hive builtin SerDe (e.g. ORC and Parquet)

Author: Cheng Lian <lian@databricks.com>
Author: Cheng Hao <hao.cheng@intel.com>

Closes #7967 from liancheng/spark-6923/refactoring-pr-5733 and squashes the following commits:

5175ee6 [Cheng Lian] Fixes an oudated comment
3870166 [Cheng Lian] Fixes build error and comments
864acee [Cheng Lian] Refactors PR #5733
3490cdc [Cheng Hao] update the scaladoc
6f57669 [Cheng Hao] write schema info to hivemetastore for data source
2015-08-06 11:13:44 +08:00
Yin Huai 4581badbc8 [SPARK-9611] [SQL] Fixes a few corner cases when we spill a UnsafeFixedWidthAggregationMap
This PR has the following three small fixes.

1. UnsafeKVExternalSorter does not use 0 as the initialSize to create an UnsafeInMemorySorter if its BytesToBytesMap is empty.
2. We will not not spill a InMemorySorter if it is empty.
3. We will not add a SpillReader to a SpillMerger if this SpillReader is empty.

JIRA: https://issues.apache.org/jira/browse/SPARK-9611

Author: Yin Huai <yhuai@databricks.com>

Closes #7948 from yhuai/unsafeEmptyMap and squashes the following commits:

9727abe [Yin Huai] Address Josh's comments.
34b6f76 [Yin Huai] 1. UnsafeKVExternalSorter does not use 0 as the initialSize to create an UnsafeInMemorySorter if its BytesToBytesMap is empty. 2. Do not spill a InMemorySorter if it is empty. 3. Do not add spill to SpillMerger if this spill is empty.
2015-08-05 19:19:09 -07:00
Josh Rosen 9c878923db [SPARK-9054] [SQL] Rename RowOrdering to InterpretedOrdering; use newOrdering in SMJ
This patches renames `RowOrdering` to `InterpretedOrdering` and updates SortMergeJoin to use the `SparkPlan` methods for constructing its ordering so that it may benefit from codegen.

This is an updated version of #7408.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #7973 from JoshRosen/SPARK-9054 and squashes the following commits:

e610655 [Josh Rosen] Add comment RE: Ascending ordering
34b8e0c [Josh Rosen] Import ordering
be19a0f [Josh Rosen] [SPARK-9054] [SQL] Rename RowOrdering to InterpretedOrdering; use newOrdering in more places.
2015-08-05 16:33:42 -07:00
Liang-Chi Hsieh e1e05873fc [SPARK-9403] [SQL] Add codegen support in In and InSet
This continues tarekauel's work in #7778.

Author: Liang-Chi Hsieh <viirya@appier.com>
Author: Tarek Auel <tarek.auel@googlemail.com>

Closes #7893 from viirya/codegen_in and squashes the following commits:

81ff97b [Liang-Chi Hsieh] For comments.
47761c6 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into codegen_in
cf4bf41 [Liang-Chi Hsieh] For comments.
f532b3c [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into codegen_in
446bbcd [Liang-Chi Hsieh] Fix bug.
b3d0ab4 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into codegen_in
4610eff [Liang-Chi Hsieh] Relax the types of references and update optimizer test.
224f18e [Liang-Chi Hsieh] Beef up the test cases for In and InSet to include all primitive data types.
86dc8aa [Liang-Chi Hsieh] Only convert In to InSet when the number of items in set is more than the threshold.
b7ded7e [Tarek Auel] [SPARK-9403][SQL] codeGen in / inSet
2015-08-05 11:38:56 -07:00
Michael Armbrust 23d982204b [SPARK-9141] [SQL] Remove project collapsing from DataFrame API
Currently we collapse successive projections that are added by `withColumn`.  However, this optimization violates the constraint that adding nodes to a plan will never change its analyzed form and thus breaks caching.  Instead of doing early optimization, in this PR I just fix some low-hanging slowness in the analyzer.  In particular, I add a mechanism for skipping already analyzed subplans, `resolveOperators` and `resolveExpression`.  Since trees are generally immutable after construction, it's safe to annotate a plan as already analyzed as any transformation will create a new tree with this bit no longer set.

Together these result in a faster analyzer than before, even with added timing instrumentation.

```
Original Code
[info] 3430ms
[info] 2205ms
[info] 1973ms
[info] 1982ms
[info] 1916ms

Without Project Collapsing in DataFrame
[info] 44610ms
[info] 45977ms
[info] 46423ms
[info] 46306ms
[info] 54723ms

With analyzer optimizations
[info] 6394ms
[info] 4630ms
[info] 4388ms
[info] 4093ms
[info] 4113ms

With resolveOperators
[info] 2495ms
[info] 1380ms
[info] 1685ms
[info] 1414ms
[info] 1240ms
```

Author: Michael Armbrust <michael@databricks.com>

Closes #7920 from marmbrus/withColumnCache and squashes the following commits:

2145031 [Michael Armbrust] fix hive udfs tests
5a5a525 [Michael Armbrust] remove wrong comment
7a507d5 [Michael Armbrust] style
b59d710 [Michael Armbrust] revert small change
1fa5949 [Michael Armbrust] move logic into LogicalPlan, add tests
0e2cb43 [Michael Armbrust] Merge remote-tracking branch 'origin/master' into withColumnCache
c926e24 [Michael Armbrust] naming
e593a2d [Michael Armbrust] style
f5a929e [Michael Armbrust] [SPARK-9141][SQL] Remove project collapsing from DataFrame API
38b1c83 [Michael Armbrust] WIP
2015-08-05 09:01:45 -07:00
Cheng Hao 519cf6d3f7 [SPARK-9381] [SQL] Migrate JSON data source to the new partitioning data source
Support partitioning for the JSON data source.

Still 2 open issues for the `HadoopFsRelation`
- `refresh()` will invoke the `discoveryPartition()`, which will auto infer the data type for the partition columns, and maybe conflict with the given partition columns. (TODO enable `HadoopFsRelationSuite.Partition column type casting"
- When insert data into a cached HadoopFsRelation based table, we need to invalidate the cache after the insertion (TODO enable `InsertSuite.Caching`)

Author: Cheng Hao <hao.cheng@intel.com>

Closes #7696 from chenghao-intel/json and squashes the following commits:

d90b104 [Cheng Hao] revert the change for JacksonGenerator.apply
307111d [Cheng Hao] fix bug in the unit test
8738c8a [Cheng Hao] fix bug in unit testing
35f2cde [Cheng Hao] support partition for json format
2015-08-05 22:35:55 +08:00
Nathan Howell eb8bfa3eaa [SPARK-9618] [SQL] Use the specified schema when reading Parquet files
The user specified schema is currently ignored when loading Parquet files.

One workaround is to use the `format` and `load` methods instead of `parquet`, e.g.:

```
val schema = ???

// schema is ignored
sqlContext.read.schema(schema).parquet("hdfs:///test")

// schema is retained
sqlContext.read.schema(schema).format("parquet").load("hdfs:///test")
```

The fix is simple, but I wonder if the `parquet` method should instead be written in a similar fashion to `orc`:

```
def parquet(path: String): DataFrame = format("parquet").load(path)
```

Author: Nathan Howell <nhowell@godaddy.com>

Closes #7947 from NathanHowell/SPARK-9618 and squashes the following commits:

d1ea62c [Nathan Howell] [SPARK-9618] [SQL] Use the specified schema when reading Parquet files
2015-08-05 22:16:56 +08:00
zsxwing 1b0317f64c [SPARK-8861][SPARK-8862][SQL] Add basic instrumentation to each SparkPlan operator and add a new SQL tab
This PR includes the following changes:

### SPARK-8862: Add basic instrumentation to each SparkPlan operator

A SparkPlan can override `def accumulators: Map[String, Accumulator[_]]` to expose its metrics that can be displayed in UI. The UI will use them to track the updates and show them in the web page in real-time.

### SparkSQLExecution and SQLSparkListener

`SparkSQLExecution.withNewExecutionId` will set `spark.sql.execution.id` to the local properties so that we can use it to track all jobs that belong to the same query.

SQLSparkListener is a listener to track all accumulator updates of all tasks for a query. It receives them from heartbeats can the UI can query them in real-time.

When running a query, `SQLSparkListener.onExecutionStart` will be called. When a query is finished,  `SQLSparkListener.onExecutionEnd` will be called. And the Spark jobs with the same execution id will be tracked and stored with this query.

`SQLSparkListener` has to store all accumulator updates for tasks separately. When a task fails and starts to retry, we need to drop the old accumulator updates. Because we can not revert our changes to an accumulator, we have to maintain these accumulator updates by ourselves so as to drop accumulator updates for a failed task.

### SPARK-8862: A new SQL tab
Includes two pages:
#### A page for all DataFrame/SQL queries
It will show the running, completed and failed queries in 3 tables. It also displays the jobs and their links for a query in each row.
#### A detail page for a DataFrame/SQL query
In this page, it also shows the SparkPlan metrics in real-time. Run a long-running query, such as
```
val testData = sc.parallelize((1 to 1000000).map(i => (i, i.toString))).toDF()
testData.select($"_1").filter($"_1" < 1000).foreach(_ => Thread.sleep(60))
```
and you will see the metrics keep updating in real-time.

<!-- Reviewable:start -->
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Author: zsxwing <zsxwing@gmail.com>

Closes #7774 from zsxwing/sql-ui and squashes the following commits:

5a2bc99 [zsxwing] Remove UISeleniumSuite and its dependency
57d4cd2 [zsxwing] Use VisibleForTesting annotation
cc1c736 [zsxwing] Add SparkPlan.trackNumOfRowsEnabled to make subclasses easy to track the number of rows; fix the issue that the "save" action cannot collect metrics
3771ab0 [zsxwing] Register SQL metrics accmulators
3a101c0 [zsxwing] Change prepareCalled's type to AtomicBoolean for thread-safety
b8d5605 [zsxwing] Make prepare idempotent; call children's prepare in SparkPlan.prepare; change doPrepare to def
4ed11a1 [zsxwing] var -> val
332639c [zsxwing] Ignore UISeleniumSuite and SQLListenerSuite."no memory leak" because of SPARK-9580
bb52359 [zsxwing] Address other commens in SQLListener
c4d0f5d [zsxwing] Move newPredicate out of the iterator loop
957473c [zsxwing] Move STATIC_RESOURCE_DIR to object SQLTab
7ab4816 [zsxwing] Make SparkPlan accumulator API private[sql]
dae195e [zsxwing] Fix the code style and comments
3a66207 [zsxwing] Ignore irrelevant accumulators
b8484a1 [zsxwing] Merge branch 'master' into sql-ui
9406592 [zsxwing] Implement the SparkPlan viz
4ebce68 [zsxwing] Add SparkPlan.prepare to support BroadcastHashJoin to run background work in parallel
ca1811f [zsxwing] Merge branch 'master' into sql-ui
fef6fc6 [zsxwing] Fix a corner case
25f335c [zsxwing] Fix the code style
6eae828 [zsxwing] SQLSparkListener -> SQLListener; SparkSQLExecutionUIData -> SQLExecutionUIData; SparkSQLExecution -> SQLExecution
822af75 [zsxwing] Add SQLSparkListenerSuite and fix the issue about onExecutionEnd and onJobEnd
6be626f [zsxwing] Add UISeleniumSuite to test UI
d02a24d [zsxwing] Make ExecutionPage private
23abf73 [zsxwing] [SPARK-8862][SPARK-8862][SQL] Add basic instrumentation to each SparkPlan operator and add a new SQL tab
2015-08-05 01:51:22 -07:00
Takeshi YAMAMURO 6d8a6e4161 [SPARK-9360] [SQL] Support BinaryType in PrefixComparators for UnsafeExternalSort
The current implementation of UnsafeExternalSort uses NoOpPrefixComparator for binary-typed data.
So, we need to add BinaryPrefixComparator in PrefixComparators.

Author: Takeshi YAMAMURO <linguin.m.s@gmail.com>

Closes #7676 from maropu/BinaryTypePrefixComparator and squashes the following commits:

fe6f31b [Takeshi YAMAMURO] Apply comments
d943c04 [Takeshi YAMAMURO] Add a codegen'd entry for BinaryType in SortPrefix
ecf3ac5 [Takeshi YAMAMURO] Support BinaryType in PrefixComparator
2015-08-05 00:56:35 -07:00
Emiliano Leporati 1d1a76c8c5 [SPARK-9581][SQL] Add unit test for JSON UDT
This brings #7416 up-to-date by drubbo.

Author: Emiliano Leporati <emiliano.leporati@gmail.com>
Author: Reynold Xin <rxin@databricks.com>

Closes #7917 from rxin/udt-json-test and squashes the following commits:

93e3954 [Reynold Xin] Fix test.
7035308 [Reynold Xin] Merge pull request #7416 from drubbo/master
b5bcd94 [Emiliano Leporati] removed unneded case in MyDenseVector::equals
508a399 [Emiliano Leporati] Merge remote branch 'upstream/master'
7569e42 [Emiliano Leporati] using checkAnswer
62daccd [Emiliano Leporati] added coverage for UDTs in JSON RDDs
2015-08-05 00:42:08 -07:00
Davies Liu 781c8d71a0 [SPARK-9119] [SPARK-8359] [SQL] match Decimal.precision/scale with DecimalType
Let Decimal carry the correct precision and scale with DecimalType.

cc rxin yhuai

Author: Davies Liu <davies@databricks.com>

Closes #7925 from davies/decimal_scale and squashes the following commits:

e19701a [Davies Liu] some tweaks
57d78d2 [Davies Liu] fix tests
5d5bc69 [Davies Liu] match precision and scale with DecimalType
2015-08-04 23:12:49 -07:00
Pedro Rodriguez d34548587a [SPARK-8231] [SQL] Add array_contains
This PR is based on #7580 , thanks to EntilZha

PR for work on https://issues.apache.org/jira/browse/SPARK-8231

Currently, I have an initial implementation for contains. Based on discussion on JIRA, it should behave same as Hive: https://github.com/apache/hive/blob/master/ql/src/java/org/apache/hadoop/hive/ql/udf/generic/GenericUDFArrayContains.java#L102-L128

Main points are:
1. If the array is empty, null, or the value is null, return false
2. If there is a type mismatch, throw error
3. If comparison is not supported, throw error

Closes #7580

Author: Pedro Rodriguez <prodriguez@trulia.com>
Author: Pedro Rodriguez <ski.rodriguez@gmail.com>
Author: Davies Liu <davies@databricks.com>

Closes #7949 from davies/array_contains and squashes the following commits:

d3c08bc [Davies Liu] use foreach() to avoid copy
bc3d1fe [Davies Liu] fix array_contains
719e37d [Davies Liu] Merge branch 'master' of github.com:apache/spark into array_contains
e352cf9 [Pedro Rodriguez] fixed diff from master
4d5b0ff [Pedro Rodriguez] added docs and another type check
ffc0591 [Pedro Rodriguez] fixed unit test
7a22deb [Pedro Rodriguez] Changed test to use strings instead of long/ints which are different between python 2 an 3
b5ffae8 [Pedro Rodriguez] fixed pyspark test
4e7dce3 [Pedro Rodriguez] added more docs
3082399 [Pedro Rodriguez] fixed unit test
46f9789 [Pedro Rodriguez] reverted change
d3ca013 [Pedro Rodriguez] Fixed type checking to match hive behavior, then added tests to insure this
8528027 [Pedro Rodriguez] added more tests
686e029 [Pedro Rodriguez] fix scala style
d262e9d [Pedro Rodriguez] reworked type checking code and added more tests
2517a58 [Pedro Rodriguez] removed unused import
28b4f71 [Pedro Rodriguez] fixed bug with type conversions and re-added tests
12f8795 [Pedro Rodriguez] fix scala style checks
e8a20a9 [Pedro Rodriguez] added python df (broken atm)
65b562c [Pedro Rodriguez] made array_contains nullable false
33b45aa [Pedro Rodriguez] reordered test
9623c64 [Pedro Rodriguez] fixed test
4b4425b [Pedro Rodriguez] changed Arrays in tests to Seqs
72cb4b1 [Pedro Rodriguez] added checkInputTypes and docs
69c46fb [Pedro Rodriguez] added tests and codegen
9e0bfc4 [Pedro Rodriguez] initial attempt at implementation
2015-08-04 22:34:02 -07:00
Davies Liu 2b67fdb60b [SPARK-9513] [SQL] [PySpark] Add python API for DataFrame functions
This adds Python API for those DataFrame functions that is introduced in 1.5.

There is issue with serialize byte_array in Python 3, so some of functions (for BinaryType) does not have tests.

cc rxin

Author: Davies Liu <davies@databricks.com>

Closes #7922 from davies/python_functions and squashes the following commits:

8ad942f [Davies Liu] fix test
5fb6ec3 [Davies Liu] fix bugs
3495ed3 [Davies Liu] fix issues
ea5f7bb [Davies Liu] Add python API for DataFrame functions
2015-08-04 19:25:24 -07:00
Wenchen Fan 7c8fc1f7cb [SPARK-9598][SQL] do not expose generic getter in internal row
Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7932 from cloud-fan/generic-getter and squashes the following commits:

c60de4c [Wenchen Fan] do not expose generic getter in internal row
2015-08-04 17:05:19 -07:00
Josh Rosen ab8ee1a3b9 [SPARK-9452] [SQL] Support records larger than page size in UnsafeExternalSorter
This patch extends UnsafeExternalSorter to support records larger than the page size. The basic strategy is the same as in #7762: store large records in their own overflow pages.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #7891 from JoshRosen/large-records-in-sql-sorter and squashes the following commits:

967580b [Josh Rosen] Merge remote-tracking branch 'origin/master' into large-records-in-sql-sorter
948c344 [Josh Rosen] Add large records tests for KV sorter.
3c17288 [Josh Rosen] Combine memory and disk cleanup into general cleanupResources() method
380f217 [Josh Rosen] Merge remote-tracking branch 'origin/master' into large-records-in-sql-sorter
27eafa0 [Josh Rosen] Fix page size in PackedRecordPointerSuite
a49baef [Josh Rosen] Address initial round of review comments
3edb931 [Josh Rosen] Remove accidentally-committed debug statements.
2b164e2 [Josh Rosen] Support large records in UnsafeExternalSorter.
2015-08-04 14:42:11 -07:00
Davies Liu 73dedb589d [SPARK-8246] [SQL] Implement get_json_object
This is based on #7485 , thanks to NathanHowell

Tests were copied from Hive, but do not seem to be super comprehensive. I've generally replicated Hive's unusual behavior rather than following a JSONPath reference, except for one case (as noted in the comments). I don't know if there is a way of fully replicating Hive's behavior without a slower TreeNode implementation, so I've erred on the side of performance instead.

Author: Davies Liu <davies@databricks.com>
Author: Yin Huai <yhuai@databricks.com>
Author: Nathan Howell <nhowell@godaddy.com>

Closes #7901 from davies/get_json_object and squashes the following commits:

3ace9b9 [Davies Liu] Merge branch 'get_json_object' of github.com:davies/spark into get_json_object
98766fc [Davies Liu] Merge branch 'master' of github.com:apache/spark into get_json_object
a7dc6d0 [Davies Liu] Update JsonExpressionsSuite.scala
c818519 [Yin Huai] new results.
18ce26b [Davies Liu] fix tests
6ac29fb [Yin Huai] Golden files.
25eebef [Davies Liu] use HiveQuerySuite
e0ac6ec [Yin Huai] Golden answer files.
940c060 [Davies Liu] tweat code style
44084c5 [Davies Liu] Merge branch 'master' of github.com:apache/spark into get_json_object
9192d09 [Nathan Howell] Match Hive’s behavior for unwrapping arrays of one element
8dab647 [Nathan Howell] [SPARK-8246] [SQL] Implement get_json_object
2015-08-04 09:07:09 -07:00
Tarek Auel b1f88a38d5 [SPARK-8244] [SQL] string function: find in set
This PR is based on #7186 (just fix the conflict), thanks to tarekauel .

find_in_set(string str, string strList): int

Returns the first occurance of str in strList where strList is a comma-delimited string. Returns null if either argument is null. Returns 0 if the first argument contains any commas. For example, find_in_set('ab', 'abc,b,ab,c,def') returns 3.

Only add this to SQL, not DataFrame.

Closes #7186

Author: Tarek Auel <tarek.auel@googlemail.com>
Author: Davies Liu <davies@databricks.com>

Closes #7900 from davies/find_in_set and squashes the following commits:

4334209 [Davies Liu] Merge branch 'master' of github.com:apache/spark into find_in_set
8f00572 [Davies Liu] Merge branch 'master' of github.com:apache/spark into find_in_set
243ede4 [Tarek Auel] [SPARK-8244][SQL] hive compatibility
1aaf64e [Tarek Auel] [SPARK-8244][SQL] unit test fix
e4093a4 [Tarek Auel] [SPARK-8244][SQL] final modifier for COMMA_UTF8
0d05df5 [Tarek Auel] Merge branch 'master' into SPARK-8244
208d710 [Tarek Auel] [SPARK-8244] address comments & bug fix
71b2e69 [Tarek Auel] [SPARK-8244] find_in_set
66c7fda [Tarek Auel] Merge branch 'master' into SPARK-8244
61b8ca2 [Tarek Auel] [SPARK-8224] removed loop and split; use unsafe String comparison
4f75a65 [Tarek Auel] Merge branch 'master' into SPARK-8244
e3b20c8 [Tarek Auel] [SPARK-8244] added type check
1c2bbb7 [Tarek Auel] [SPARK-8244] findInSet
2015-08-04 08:59:42 -07:00
Sean Owen 76d74090d6 [SPARK-9534] [BUILD] Enable javac lint for scalac parity; fix a lot of build warnings, 1.5.0 edition
Enable most javac lint warnings; fix a lot of build warnings. In a few cases, touch up surrounding code in the process.

I'll explain several of the changes inline in comments.

Author: Sean Owen <sowen@cloudera.com>

Closes #7862 from srowen/SPARK-9534 and squashes the following commits:

ea51618 [Sean Owen] Enable most javac lint warnings; fix a lot of build warnings. In a few cases, touch up surrounding code in the process.
2015-08-04 12:02:26 +01:00
Reynold Xin 5eb89f67e3 [SPARK-9577][SQL] Surface concrete iterator types in various sort classes.
We often return abstract iterator types in various sort-related classes (e.g. UnsafeKVExternalSorter). It is actually better to return a more concrete type, so the callsite uses that type and JIT can inline the iterator calls.

Author: Reynold Xin <rxin@databricks.com>

Closes #7911 from rxin/surface-concrete-type and squashes the following commits:

0422add [Reynold Xin] [SPARK-9577][SQL] Surface concrete iterator types in various sort classes.
2015-08-03 18:47:02 -07:00
Steve Loughran a2409d1c8e [SPARK-8064] [SQL] Build against Hive 1.2.1
Cherry picked the parts of the initial SPARK-8064 WiP branch needed to get sql/hive to compile against hive 1.2.1. That's the ASF release packaged under org.apache.hive, not any fork.

Tests not run yet: that's what the machines are for

Author: Steve Loughran <stevel@hortonworks.com>
Author: Cheng Lian <lian@databricks.com>
Author: Michael Armbrust <michael@databricks.com>
Author: Patrick Wendell <patrick@databricks.com>

Closes #7191 from steveloughran/stevel/feature/SPARK-8064-hive-1.2-002 and squashes the following commits:

7556d85 [Cheng Lian] Updates .q files and corresponding golden files
ef4af62 [Steve Loughran] Merge commit '6a92bb09f46a04d6cd8c41bdba3ecb727ebb9030' into stevel/feature/SPARK-8064-hive-1.2-002
6a92bb0 [Cheng Lian] Overrides HiveConf time vars
dcbb391 [Cheng Lian] Adds com.twitter:parquet-hadoop-bundle:1.6.0 for Hive Parquet SerDe
0bbe475 [Steve Loughran] SPARK-8064 scalastyle rejects the standard Hadoop ASF license header...
fdf759b [Steve Loughran] SPARK-8064 classpath dependency suite to be in sync with shading in final (?) hive-exec spark
7a6c727 [Steve Loughran] SPARK-8064 switch to second staging repo of the spark-hive artifacts. This one has the protobuf-shaded hive-exec jar
376c003 [Steve Loughran] SPARK-8064 purge duplicate protobuf declaration
2c74697 [Steve Loughran] SPARK-8064 switch to the protobuf shaded hive-exec jar with tests to chase it down
cc44020 [Steve Loughran] SPARK-8064 remove hadoop.version from runtest.py, as profile will fix that automatically.
6901fa9 [Steve Loughran] SPARK-8064 explicit protobuf import
da310dc [Michael Armbrust] Fixes for Hive tests.
a775a75 [Steve Loughran] SPARK-8064 cherry-pick-incomplete
7404f34 [Patrick Wendell] Add spark-hive staging repo
832c164 [Steve Loughran] SPARK-8064 try to supress compiler warnings on Complex.java pasted-thrift-code
312c0d4 [Steve Loughran] SPARK-8064  maven/ivy dependency purge; calcite declaration needed
fa5ae7b [Steve Loughran] HIVE-8064 fix up hive-thriftserver dependencies and cut back on evicted references in the hive- packages; this keeps mvn and ivy resolution compatible, as the reconciliation policy is "by hand"
c188048 [Steve Loughran] SPARK-8064 manage the Hive depencencies to that -things that aren't needed are excluded -sql/hive built with ivy is in sync with the maven reconciliation policy, rather than latest-first
4c8be8d [Cheng Lian] WIP: Partial fix for Thrift server and CLI tests
314eb3c [Steve Loughran] SPARK-8064 deprecation warning  noise in one of the tests
17b0341 [Steve Loughran] SPARK-8064 IDE-hinted cleanups of Complex.java to reduce compiler warnings. It's all autogenerated code, so still ugly.
d029b92 [Steve Loughran] SPARK-8064 rely on unescaping to have already taken place, so go straight to map of serde options
23eca7e [Steve Loughran] HIVE-8064 handle raw and escaped property tokens
54d9b06 [Steve Loughran] SPARK-8064 fix compilation regression surfacing from rebase
0b12d5f [Steve Loughran] HIVE-8064 use subset of hive complex type whose types deserialize
fce73b6 [Steve Loughran] SPARK-8064 poms rely implicitly on the version of kryo chill provides
fd3aa5d [Steve Loughran] SPARK-8064 version of hive to d/l from ivy is 1.2.1
dc73ece [Steve Loughran] SPARK-8064 revert to master's determinstic pushdown strategy
d3c1e4a [Steve Loughran] SPARK-8064 purge UnionType
051cc21 [Steve Loughran] SPARK-8064 switch to an unshaded version of hive-exec-core, which must have been built with Kryo 2.21. This currently looks for a (locally built) version 1.2.1.spark
6684c60 [Steve Loughran] SPARK-8064 ignore RTE raised in blocking process.exitValue() call
e6121e5 [Steve Loughran] SPARK-8064 address review comments
aa43dc6 [Steve Loughran] SPARK-8064  more robust teardown on JavaMetastoreDatasourcesSuite
f2bff01 [Steve Loughran] SPARK-8064 better takeup of asynchronously caught error text
8b1ef38 [Steve Loughran] SPARK-8064: on failures executing spark-submit in HiveSparkSubmitSuite, print command line and all logged output.
5a9ce6b [Steve Loughran] SPARK-8064 add explicit reason for kv split failure, rather than array OOB. *does not address the issue*
642b63a [Steve Loughran] SPARK-8064 reinstate something cut briefly during rebasing
97194dc [Steve Loughran] SPARK-8064 add extra logging to the YarnClusterSuite classpath test. There should be no reason why this is failing on jenkins, but as it is (and presumably its CP-related), improve the logging including any exception raised.
335357f [Steve Loughran] SPARK-8064 fail fast on thrive process spawning tests on exit codes and/or error string patterns seen in log.
3ed872f [Steve Loughran] SPARK-8064 rename field double to  dbl
bca55e5 [Steve Loughran] SPARK-8064 missed one of the `date` escapes
41d6479 [Steve Loughran] SPARK-8064 wrap tests with withTable() calls to avoid table-exists exceptions
2bc29a4 [Steve Loughran] SPARK-8064 ParquetSuites to escape `date` field name
1ab9bc4 [Steve Loughran] SPARK-8064 TestHive to use sered2.thrift.test.Complex
bf3a249 [Steve Loughran] SPARK-8064: more resubmit than fix; tighten startup timeout to 60s. Still no obvious reason why jersey server code in spark-assembly isn't being picked up -it hasn't been shaded
c829b8f [Steve Loughran] SPARK-8064: reinstate yarn-rm-server dependencies to hive-exec to ensure that jersey server is on classpath on hadoop versions < 2.6
0b0f738 [Steve Loughran] SPARK-8064: thrift server startup to fail fast on any exception in the main thread
13abaf1 [Steve Loughran] SPARK-8064 Hive compatibilty tests sin sync with explain/show output from Hive 1.2.1
d14d5ea [Steve Loughran] SPARK-8064: DATE is now a predicate; you can't use it as a field in select ops
26eef1c [Steve Loughran] SPARK-8064: HIVE-9039 renamed TOK_UNION => TOK_UNIONALL while adding TOK_UNIONDISTINCT
3d64523 [Steve Loughran] SPARK-8064 improve diagns on uknown token; fix scalastyle failure
d0360f6 [Steve Loughran] SPARK-8064: delicate merge in of the branch vanzin/hive-1.1
1126e5a [Steve Loughran] SPARK-8064: name of unrecognized file format wasn't appearing in error text
8cb09c4 [Steve Loughran] SPARK-8064: test resilience/assertion improvements. Independent of the rest of the work; can be backported to earlier versions
dec12cb [Steve Loughran] SPARK-8064: when a CLI suite test fails include the full output text in the raised exception; this ensures that the stdout/stderr is included in jenkins reports, so it becomes possible to diagnose the cause.
463a670 [Steve Loughran] SPARK-8064 run-tests.py adds a hadoop-2.6 profile, and changes info messages to say "w/Hive 1.2.1" in console output
2531099 [Steve Loughran] SPARK-8064 successful attempt to get rid of pentaho as a transitive dependency of hive-exec
1d59100 [Steve Loughran] SPARK-8064 (unsuccessful) attempt to get rid of pentaho as a transitive dependency of hive-exec
75733fc [Steve Loughran] SPARK-8064 change thrift binary startup message to "Starting ThriftBinaryCLIService on port"
3ebc279 [Steve Loughran] SPARK-8064 move strings used to check for http/bin thrift services up into constants
c80979d [Steve Loughran] SPARK-8064: SparkSQLCLIDriver drops remote mode support. CLISuite Tests pass instead of timing out: undetected regression?
27e8370 [Steve Loughran] SPARK-8064 fix some style & IDE warnings
00e50d6 [Steve Loughran] SPARK-8064 stop excluding hive shims from dependency (commented out , for now)
cb4f142 [Steve Loughran] SPARK-8054 cut pentaho dependency from calcite
f7aa9cb [Steve Loughran] SPARK-8064 everything compiles with some commenting and moving of classes into a hive package
6c310b4 [Steve Loughran] SPARK-8064 subclass  Hive ServerOptionsProcessor to make it public again
f61a675 [Steve Loughran] SPARK-8064 thrift server switched to Hive 1.2.1, though it doesn't compile everywhere
4890b9d [Steve Loughran] SPARK-8064, build against Hive 1.2.1
2015-08-03 15:24:42 -07:00
Reynold Xin b2e4b85d2d Revert "[SPARK-9372] [SQL] Filter nulls in join keys"
This reverts commit 687c8c3715.
2015-08-03 14:51:15 -07:00
Andrew Or 702aa9d7fb [SPARK-8735] [SQL] Expose memory usage for shuffles, joins and aggregations
This patch exposes the memory used by internal data structures on the SparkUI. This tracks memory used by all spilling operations and SQL operators backed by Tungsten, e.g. `BroadcastHashJoin`, `ExternalSort`, `GeneratedAggregate` etc. The metric exposed is "peak execution memory", which broadly refers to the peak in-memory sizes of each of these data structure.

A separate patch will extend this by linking the new information to the SQL operators themselves.

<img width="950" alt="screen shot 2015-07-29 at 7 43 17 pm" src="https://cloud.githubusercontent.com/assets/2133137/8974776/b90fc980-362a-11e5-9e2b-842da75b1641.png">
<img width="802" alt="screen shot 2015-07-29 at 7 43 05 pm" src="https://cloud.githubusercontent.com/assets/2133137/8974777/baa76492-362a-11e5-9b77-e364a6a6b64e.png">

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Author: Andrew Or <andrew@databricks.com>

Closes #7770 from andrewor14/expose-memory-metrics and squashes the following commits:

9abecb9 [Andrew Or] Merge branch 'master' of github.com:apache/spark into expose-memory-metrics
f5b0d68 [Andrew Or] Merge branch 'master' of github.com:apache/spark into expose-memory-metrics
d7df332 [Andrew Or] Merge branch 'master' of github.com:apache/spark into expose-memory-metrics
8eefbc5 [Andrew Or] Fix non-failing tests
9de2a12 [Andrew Or] Fix tests due to another logical merge conflict
876bfa4 [Andrew Or] Fix failing test after logical merge conflict
361a359 [Andrew Or] Merge branch 'master' of github.com:apache/spark into expose-memory-metrics
40b4802 [Andrew Or] Fix style?
d0fef87 [Andrew Or] Fix tests?
b3b92f6 [Andrew Or] Address comments
0625d73 [Andrew Or] Merge branch 'master' of github.com:apache/spark into expose-memory-metrics
c00a197 [Andrew Or] Fix potential NPEs
10da1cd [Andrew Or] Fix compile
17f4c2d [Andrew Or] Fix compile?
a87b4d0 [Andrew Or] Fix compile?
d70874d [Andrew Or] Fix test compile + address comments
2840b7d [Andrew Or] Merge branch 'master' of github.com:apache/spark into expose-memory-metrics
6aa2f7a [Andrew Or] Merge branch 'master' of github.com:apache/spark into expose-memory-metrics
b889a68 [Andrew Or] Minor changes: comments, spacing, style
663a303 [Andrew Or] UnsafeShuffleWriter: update peak memory before close
d090a94 [Andrew Or] Fix style
2480d84 [Andrew Or] Expand test coverage
5f1235b [Andrew Or] Merge branch 'master' of github.com:apache/spark into expose-memory-metrics
1ecf678 [Andrew Or] Minor changes: comments, style, unused imports
0b6926c [Andrew Or] Oops
111a05e [Andrew Or] Merge branch 'master' of github.com:apache/spark into expose-memory-metrics
a7a39a5 [Andrew Or] Strengthen presence check for accumulator
a919eb7 [Andrew Or] Add tests for unsafe shuffle writer
23c845d [Andrew Or] Add tests for SQL operators
a757550 [Andrew Or] Address comments
b5c51c1 [Andrew Or] Re-enable test in JavaAPISuite
5107691 [Andrew Or] Add tests for internal accumulators
59231e4 [Andrew Or] Fix tests
9528d09 [Andrew Or] Merge branch 'master' of github.com:apache/spark into expose-memory-metrics
5b5e6f3 [Andrew Or] Add peak execution memory to summary table + tooltip
92b4b6b [Andrew Or] Display peak execution memory on the UI
eee5437 [Andrew Or] Merge branch 'master' of github.com:apache/spark into expose-memory-metrics
d9b9015 [Andrew Or] Track execution memory in unsafe shuffles
770ee54 [Andrew Or] Track execution memory in broadcast joins
9c605a4 [Andrew Or] Track execution memory in GeneratedAggregate
9e824f2 [Andrew Or] Add back execution memory tracking for *ExternalSort
4ef4cb1 [Andrew Or] Merge branch 'master' of github.com:apache/spark into expose-memory-metrics
e6c3e2f [Andrew Or] Move internal accumulators creation to Stage
a417592 [Andrew Or] Expose memory metrics in UnsafeExternalSorter
3c4f042 [Andrew Or] Track memory usage in ExternalAppendOnlyMap / ExternalSorter
bd7ab3f [Andrew Or] Add internal accumulators to TaskContext
2015-08-03 14:22:07 -07:00
Cheng Lian 703e44bff1 [SPARK-9554] [SQL] Enables in-memory partition pruning by default
Author: Cheng Lian <lian@databricks.com>

Closes #7895 from liancheng/spark-9554/enable-in-memory-partition-pruning and squashes the following commits:

67c403e [Cheng Lian] Enables in-memory partition pruning by default
2015-08-03 12:06:58 -07:00
Reynold Xin 7a9d09f0bb [SQL][minor] Simplify UnsafeRow.calculateBitSetWidthInBytes.
Author: Reynold Xin <rxin@databricks.com>

Closes #7897 from rxin/calculateBitSetWidthInBytes and squashes the following commits:

2e73b3a [Reynold Xin] [SQL][minor] Simplify UnsafeRow.calculateBitSetWidthInBytes.
2015-08-03 11:22:02 -07:00
Joseph Batchik dfe7bd168d [SPARK-9511] [SQL] Fixed Table Name Parsing
The issue was that the tokenizer was parsing "1one" into the numeric 1 using the code on line 110. I added another case to accept strings that start with a number and then have a letter somewhere else in it as well.

Author: Joseph Batchik <joseph.batchik@cloudera.com>

Closes #7844 from JDrit/parse_error and squashes the following commits:

b8ca12f [Joseph Batchik] fixed parsing issue by adding another case
2015-08-03 11:17:38 -07:00
Wenchen Fan 137f47865d [SPARK-9551][SQL] add a cheap version of copy for UnsafeRow to reuse a copy buffer
Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7885 from cloud-fan/cheap-copy and squashes the following commits:

0900ca1 [Wenchen Fan] replace == with ===
73f4ada [Wenchen Fan] add tests
07b865a [Wenchen Fan] add a cheap version of copy
2015-08-03 04:21:15 -07:00
Yin Huai 1ebd41b141 [SPARK-9240] [SQL] Hybrid aggregate operator using unsafe row
This PR adds a base aggregation iterator `AggregationIterator`, which is used to create `SortBasedAggregationIterator` (for sort-based aggregation) and `UnsafeHybridAggregationIterator` (first it tries hash-based aggregation and falls back to the sort-based aggregation (using external sorter) if we cannot allocate memory for the map). With these two iterators, we will not need existing iterators and I am removing those. Also, we can use a single physical `Aggregate` operator and it internally determines what iterators to used.

https://issues.apache.org/jira/browse/SPARK-9240

Author: Yin Huai <yhuai@databricks.com>

Closes #7813 from yhuai/AggregateOperator and squashes the following commits:

e317e2b [Yin Huai] Remove unnecessary change.
74d93c5 [Yin Huai] Merge remote-tracking branch 'upstream/master' into AggregateOperator
ba6afbc [Yin Huai] Add a little bit more comments.
c9cf3b6 [Yin Huai] update
0f1b06f [Yin Huai] Remove unnecessary code.
21fd15f [Yin Huai] Remove unnecessary change.
964f88b [Yin Huai] Implement fallback strategy.
b1ea5cf [Yin Huai] wip
7fcbd87 [Yin Huai] Add a flag to control what iterator to use.
533d5b2 [Yin Huai] Prepare for fallback!
33b7022 [Yin Huai] wip
bd9282b [Yin Huai] UDAFs now supports UnsafeRow.
f52ee53 [Yin Huai] wip
3171f44 [Yin Huai] wip
d2c45a0 [Yin Huai] wip
f60cc83 [Yin Huai] Also check input schema.
af32210 [Yin Huai] Check iter.hasNext before we create an iterator because the constructor of the iterato will read at least one row from a non-empty input iter.
299008c [Yin Huai] First round cleanup.
3915bac [Yin Huai] Create a base iterator class for aggregation iterators and add the initial version of the hybrid iterator.
2015-08-03 00:23:08 -07:00
Yijie Shen 98d6d9c7a9 [SPARK-9549][SQL] fix bugs in expressions
JIRA: https://issues.apache.org/jira/browse/SPARK-9549

This PR fix the following bugs:
1.  `UnaryMinus`'s codegen version would fail to compile when the input is `Long.MinValue`
2.  `BinaryComparison` would fail to compile in codegen mode when comparing Boolean types.
3.  `AddMonth` would fail if passed a huge negative month, which would lead accessing negative index of `monthDays` array.
4.  `Nanvl` with different type operands.

Author: Yijie Shen <henry.yijieshen@gmail.com>

Closes #7882 from yjshen/minor_bug_fix and squashes the following commits:

41bbd2c [Yijie Shen] fix bug in Nanvl type coercion
3dee204 [Yijie Shen] address comments
4fa5de0 [Yijie Shen] fix bugs in expressions
2015-08-03 00:15:24 -07:00
Yin Huai 687c8c3715 [SPARK-9372] [SQL] Filter nulls in join keys
This PR adds an optimization rule, `FilterNullsInJoinKey`, to add `Filter` before join operators to filter out rows having null values for join keys.

This optimization is guarded by a new SQL conf, `spark.sql.advancedOptimization`.

The code in this PR was authored by yhuai; I'm opening this PR to factor out this change from #7685, a larger pull request which contains two other optimizations.

Author: Yin Huai <yhuai@databricks.com>
Author: Josh Rosen <joshrosen@databricks.com>

Closes #7768 from JoshRosen/filter-nulls-in-join-key and squashes the following commits:

c02fc3f [Yin Huai] Address Josh's comments.
0a8e096 [Yin Huai] Update comments.
ea7d5a6 [Yin Huai] Make sure we do not keep adding filters.
be88760 [Yin Huai] Make it clear that FilterNullsInJoinKeySuite.scala is used to test FilterNullsInJoinKey.
8bb39ad [Yin Huai] Fix non-deterministic tests.
303236b [Josh Rosen] Revert changes that are unrelated to null join key filtering
40eeece [Josh Rosen] Merge remote-tracking branch 'origin/master' into filter-nulls-in-join-key
c57a954 [Yin Huai] Bug fix.
d3d2e64 [Yin Huai] First round of cleanup.
f9516b0 [Yin Huai] Style
c6667e7 [Yin Huai] Add PartitioningCollection.
e616d3b [Yin Huai] wip
7c2d2d8 [Yin Huai] Bug fix and refactoring.
69bb072 [Yin Huai] Introduce NullSafeHashPartitioning and NullUnsafePartitioning.
d5b84c3 [Yin Huai] Do not add unnessary filters.
2201129 [Yin Huai] Filter out rows that will not be joined in equal joins early.
2015-08-02 23:32:09 -07:00
Yin Huai 114ff926fc [SPARK-2205] [SQL] Avoid unnecessary exchange operators in multi-way joins
This PR adds `PartitioningCollection`, which is used to represent the `outputPartitioning` for SparkPlans with multiple children (e.g. `ShuffledHashJoin`). So, a `SparkPlan` can have multiple descriptions of its partitioning schemes. Taking `ShuffledHashJoin` as an example, it has two descriptions of its partitioning schemes, i.e. `left.outputPartitioning` and `right.outputPartitioning`. So when we have a query like `select * from t1 join t2 on (t1.x = t2.x) join t3 on (t2.x = t3.x)` will only have three Exchange operators (when shuffled joins are needed) instead of four.

The code in this PR was authored by yhuai; I'm opening this PR to factor out this change from #7685, a larger pull request which contains two other optimizations.

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Author: Yin Huai <yhuai@databricks.com>
Author: Josh Rosen <joshrosen@databricks.com>

Closes #7773 from JoshRosen/multi-way-join-planning-improvements and squashes the following commits:

5c45924 [Josh Rosen] Merge remote-tracking branch 'origin/master' into multi-way-join-planning-improvements
cd8269b [Josh Rosen] Refactor test to use SQLTestUtils
2963857 [Yin Huai] Revert unnecessary SqlConf change.
73913f7 [Yin Huai] Add comments and test. Also, revert the change in ShuffledHashOuterJoin for now.
4a99204 [Josh Rosen] Delete unrelated expression change
884ab95 [Josh Rosen] Carve out only SPARK-2205 changes.
247e5fa [Josh Rosen] Merge remote-tracking branch 'origin/master' into multi-way-join-planning-improvements
c57a954 [Yin Huai] Bug fix.
d3d2e64 [Yin Huai] First round of cleanup.
f9516b0 [Yin Huai] Style
c6667e7 [Yin Huai] Add PartitioningCollection.
e616d3b [Yin Huai] wip
7c2d2d8 [Yin Huai] Bug fix and refactoring.
69bb072 [Yin Huai] Introduce NullSafeHashPartitioning and NullUnsafePartitioning.
d5b84c3 [Yin Huai] Do not add unnessary filters.
2201129 [Yin Huai] Filter out rows that will not be joined in equal joins early.
2015-08-02 20:44:23 -07:00
Reynold Xin 30e89111d6 [SPARK-9546][SQL] Centralize orderable data type checking.
This pull request creates two isOrderable functions in RowOrdering that can be used to check whether a data type or a sequence of expressions can be used in sorting.

Author: Reynold Xin <rxin@databricks.com>

Closes #7880 from rxin/SPARK-9546 and squashes the following commits:

f9e322d [Reynold Xin] Fixed tests.
0439b43 [Reynold Xin] [SPARK-9546][SQL] Centralize orderable data type checking.
2015-08-02 20:12:03 -07:00
Reynold Xin 9d03ad910b [SPARK-9543][SQL] Add randomized testing for UnsafeKVExternalSorter.
The detailed approach is documented in UnsafeKVExternalSorterSuite.testKVSorter(), working as follows:

1. Create input by generating data randomly based on the given key/value schema (which is also randomly drawn from a list of candidate types)
2. Run UnsafeKVExternalSorter on the generated data
3. Collect the output from the sorter, and make sure the keys are sorted in ascending order
4. Sort the input by both key and value, and sort the sorter output also by both key and value. Compare the sorted input and sorted output together to make sure all the key/values match.
5. Check memory allocation to make sure there is no memory leak.

There is also a spill flag. When set to true, the sorter will spill probabilistically roughly every 100 records.

Author: Reynold Xin <rxin@databricks.com>

Closes #7873 from rxin/kvsorter-randomized-test and squashes the following commits:

a08c251 [Reynold Xin] Resource cleanup.
0488b5c [Reynold Xin] [SPARK-9543][SQL] Add randomized testing for UnsafeKVExternalSorter.
2015-08-02 17:54:30 -07:00
Reynold Xin 2e981b7bfa [SPARK-9531] [SQL] UnsafeFixedWidthAggregationMap.destructAndCreateExternalSorter
This pull request adds a destructAndCreateExternalSorter method to UnsafeFixedWidthAggregationMap. The new method does the following:

1. Creates a new external sorter UnsafeKVExternalSorter
2. Adds all the data into an in-memory sorter, sorts them
3. Spills the sorted in-memory data to disk

This method can be used to fallback to sort-based aggregation when under memory pressure.

The pull request also includes accounting fixes from JoshRosen.

TODOs (that can be done in follow-up PRs)
- [x] Address Josh's feedbacks from #7849
- [x] More documentation and test cases
- [x] Make sure we are doing memory accounting correctly with test cases (e.g. did we release the memory in BytesToBytesMap twice?)
- [ ] Look harder at possible memory leaks and exception handling
- [ ] Randomized tester for the KV sorter as well as the aggregation map

Author: Reynold Xin <rxin@databricks.com>
Author: Josh Rosen <joshrosen@databricks.com>

Closes #7860 from rxin/kvsorter and squashes the following commits:

986a58c [Reynold Xin] Bug fix.
599317c [Reynold Xin] Style fix and slightly more compact code.
fe7bd4e [Reynold Xin] Bug fixes.
fd71bef [Reynold Xin] Merge remote-tracking branch 'josh/large-records-in-sql-sorter' into kvsorter-with-josh-fix
3efae38 [Reynold Xin] More fixes and documentation.
45f1b09 [Josh Rosen] Ensure that spill files are cleaned up
f6a9bd3 [Reynold Xin] Josh feedback.
9be8139 [Reynold Xin] Remove testSpillFrequency.
7cbe759 [Reynold Xin] [SPARK-9531][SQL] UnsafeFixedWidthAggregationMap.destructAndCreateExternalSorter.
ae4a8af [Josh Rosen] Detect leaked unsafe memory in UnsafeExternalSorterSuite.
52f9b06 [Josh Rosen] Detect ShuffleMemoryManager leaks in UnsafeExternalSorter.
2015-08-02 12:32:14 -07:00
Reynold Xin 8eafa2aeb6 [SPARK-9208][SQL] Sort DataFrame functions alphabetically.
Author: Reynold Xin <rxin@databricks.com>

Closes #7861 from rxin/api-audit and squashes the following commits:

7200256 [Reynold Xin] [SPARK-9208][SQL] Sort DataFrame functions alphabetically.
2015-08-02 11:36:11 -07:00
Davies Liu 16b928c543 [SPARK-9529] [SQL] improve TungstenSort on DecimalType
Generate prefix for DecimalType, fix the random generator of decimal

cc JoshRosen

Author: Davies Liu <davies@databricks.com>

Closes #7857 from davies/sort_decimal and squashes the following commits:

2433959 [Davies Liu] Merge branch 'master' of github.com:apache/spark into sort_decimal
de24253 [Davies Liu] fix style
0a54c1a [Davies Liu] sort decimal
2015-08-01 23:36:06 -07:00
Davies Liu 57084e0c7c [SPARK-9459] [SQL] use generated FromUnsafeProjection to do deep copy for UTF8String and struct
When accessing a column in UnsafeRow, it's good to avoid the copy, then we should do deep copy when turn the UnsafeRow into generic Row, this PR brings generated FromUnsafeProjection to do that.

This PR also fix the expressions that cache the UTF8String, which should also copy it.

Author: Davies Liu <davies@databricks.com>

Closes #7840 from davies/avoid_copy and squashes the following commits:

230c8a1 [Davies Liu] address comment
fd797c9 [Davies Liu] Merge branch 'master' of github.com:apache/spark into avoid_copy
e095dd0 [Davies Liu] rollback rename
8ef5b0b [Davies Liu] copy String in Columnar
81360b8 [Davies Liu] fix class name
9aecb88 [Davies Liu] use FromUnsafeProjection to do deep copy for UTF8String and struct
2015-08-01 21:50:42 -07:00
Davies Liu c1b0cbd762 [SPARK-8185] [SPARK-8188] [SPARK-8191] [SQL] function datediff, to_utc_timestamp, from_utc_timestamp
This PR is based on #7643 , thanks to adrian-wang

Author: Davies Liu <davies@databricks.com>
Author: Daoyuan Wang <daoyuan.wang@intel.com>

Closes #7847 from davies/datediff and squashes the following commits:

74333d7 [Davies Liu] fix bug
22d8a8c [Davies Liu] optimize
85cdd21 [Davies Liu] remove unnecessary tests
241d90c [Davies Liu] Merge branch 'master' of github.com:apache/spark into datediff
e9dc0f5 [Davies Liu] fix datediff/to_utc_timestamp/from_utc_timestamp
c360447 [Daoyuan Wang] function datediff, to_utc_timestamp, from_utc_timestamp (commits merged)
2015-08-01 21:46:46 -07:00
HuJiayin 00cd92f32f [SPARK-8269] [SQL] string function: initcap
This PR is based on #7208 , thanks to HuJiayin

Closes #7208

Author: HuJiayin <jiayin.hu@intel.com>
Author: Davies Liu <davies@databricks.com>

Closes #7850 from davies/initcap and squashes the following commits:

54472e9 [Davies Liu] fix python test
17ffe51 [Davies Liu] Merge branch 'master' of github.com:apache/spark into initcap
ca46390 [Davies Liu] Merge branch 'master' of github.com:apache/spark into initcap
3a906e4 [Davies Liu] implement title case in UTF8String
8b2506a [HuJiayin] Update functions.py
2cd43e5 [HuJiayin] fix python style check
b616c0e [HuJiayin] add python api
1f5a0ef [HuJiayin] add codegen
7e0c604 [HuJiayin] Merge branch 'master' of https://github.com/apache/spark into initcap
6a0b958 [HuJiayin] add column
c79482d [HuJiayin] support soundex
7ce416b [HuJiayin] support initcap rebase code
2015-08-01 21:44:57 -07:00
Davies Liu 5d9e33d9a2 [SPARK-9495] prefix of DateType/TimestampType
cc rxin

Author: Davies Liu <davies@databricks.com>

Closes #7856 from davies/sort_improve and squashes the following commits:

5fc81bd [Davies Liu] support DateType/TimestampType
2015-08-01 18:22:46 -07:00
Reynold Xin 3d1535d488 [SPARK-9520] [SQL] Support in-place sort in UnsafeFixedWidthAggregationMap
This pull request adds a sortedIterator method to UnsafeFixedWidthAggregationMap that sorts its data in-place by the grouping key.

This is needed so we can fallback to external sorting for aggregation.

Author: Reynold Xin <rxin@databricks.com>

Closes #7849 from rxin/bytes2bytes-sorting and squashes the following commits:

75018c6 [Reynold Xin] Updated documentation.
81a8694 [Reynold Xin] [SPARK-9520][SQL] Support in-place sort in UnsafeFixedWidthAggregationMap.
2015-08-01 13:20:26 -07:00
zhichao.li c5166f7a69 [SPARK-8263] [SQL] substr/substring should also support binary type
This is based on #7641, thanks to zhichao-li

Closes #7641

Author: zhichao.li <zhichao.li@intel.com>
Author: Davies Liu <davies@databricks.com>

Closes #7848 from davies/substr and squashes the following commits:

461b709 [Davies Liu] remove bytearry from tests
b45377a [Davies Liu] Merge branch 'master' of github.com:apache/spark into substr
01d795e [zhichao.li] scala style
99aa130 [zhichao.li] add substring to dataframe
4f68bfe [zhichao.li] add binary type support for substring
2015-08-01 08:48:46 -07:00
Cheng Hao cf6c9ca32a [SPARK-8232] [SQL] Add sort_array support
This PR is based on #7581 , just fix the conflict.

Author: Cheng Hao <hao.cheng@intel.com>
Author: Davies Liu <davies@databricks.com>

Closes #7851 from davies/sort_array and squashes the following commits:

a80ef66 [Davies Liu] fix conflict
7cfda65 [Davies Liu] Merge branch 'master' of github.com:apache/spark into sort_array
664c960 [Cheng Hao] update the sort_array by using the ArrayData
276d2d5 [Cheng Hao] add empty line
0edab9c [Cheng Hao] Add asending/descending support for sort_array
80fc0f8 [Cheng Hao] Add type checking
a42b678 [Cheng Hao] Add sort_array support
2015-08-01 08:32:29 -07:00
Davies Liu 60ea7ab4bb Revert "[SPARK-8232] [SQL] Add sort_array support"
This reverts commit 67ad4e21fc.
2015-08-01 00:41:15 -07:00
Wenchen Fan 1d59a4162b [SPARK-9480][SQL] add MapData and cleanup internal row stuff
This PR adds a `MapData` as internal representation of map type in Spark SQL, and provides a default implementation with just 2 `ArrayData`.

After that, we have specialized getters for all internal type, so I removed generic getter in `ArrayData` and added specialized `toArray` for it.
Also did some refactor and cleanup for `InternalRow` and its subclasses.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7799 from cloud-fan/map-data and squashes the following commits:

77d482f [Wenchen Fan] fix python
e8f6682 [Wenchen Fan] skip MapData equality check in HiveInspectorSuite
40cc9db [Wenchen Fan] add toString
6e06ec9 [Wenchen Fan] some more cleanup
a90aca1 [Wenchen Fan] add MapData
2015-08-01 00:17:15 -07:00
Reynold Xin d90f2cf7a2 [SPARK-9517][SQL] BytesToBytesMap should encode data the same way as UnsafeExternalSorter
BytesToBytesMap current encodes key/value data in the following format:
```
8B key length, key data, 8B value length, value data
```

UnsafeExternalSorter, on the other hand, encodes data this way:
```
4B record length, data
```

As a result, we cannot pass records encoded by BytesToBytesMap directly into UnsafeExternalSorter for sorting. However, if we rearrange data slightly, we can then pass the key/value records directly into UnsafeExternalSorter:
```
4B key+value length, 4B key length, key data, value data
```

Author: Reynold Xin <rxin@databricks.com>

Closes #7845 from rxin/kvsort-rebase and squashes the following commits:

5716b59 [Reynold Xin] Fixed test.
2e62ccb [Reynold Xin] Updated BytesToBytesMap's data encoding to put the key first.
a51b641 [Reynold Xin] Added a KV sorter interface.
2015-07-31 23:55:16 -07:00
Cheng Hao 67ad4e21fc [SPARK-8232] [SQL] Add sort_array support
Add expression `sort_array` support.

Author: Cheng Hao <hao.cheng@intel.com>

This patch had conflicts when merged, resolved by
Committer: Davies Liu <davies.liu@gmail.com>

Closes #7581 from chenghao-intel/sort_array and squashes the following commits:

664c960 [Cheng Hao] update the sort_array by using the ArrayData
276d2d5 [Cheng Hao] add empty line
0edab9c [Cheng Hao] Add asending/descending support for sort_array
80fc0f8 [Cheng Hao] Add type checking
a42b678 [Cheng Hao] Add sort_array support
2015-07-31 23:11:22 -07:00
Liang-Chi Hsieh 3320b0ba26 [SPARK-9415][SQL] Throw AnalysisException when using MapType on Join and Aggregate
JIRA: https://issues.apache.org/jira/browse/SPARK-9415

Following up #7787. We shouldn't use MapType as grouping keys and join keys too.

Author: Liang-Chi Hsieh <viirya@appier.com>

Closes #7819 from viirya/map_join_groupby and squashes the following commits:

005ee0c [Liang-Chi Hsieh] For comments.
7463398 [Liang-Chi Hsieh] MapType can't be used as join keys, grouping keys.
2015-07-31 22:26:30 -07:00
zhichao.li 6996bd2e81 [SPARK-8264][SQL]add substring_index function
This PR is based on #7533 , thanks to zhichao-li

Closes #7533

Author: zhichao.li <zhichao.li@intel.com>
Author: Davies Liu <davies@databricks.com>

Closes #7843 from davies/str_index and squashes the following commits:

391347b [Davies Liu] add python api
3ce7802 [Davies Liu] fix substringIndex
f2d29a1 [Davies Liu] Merge branch 'master' of github.com:apache/spark into str_index
515519b [zhichao.li] add foldable and remove null checking
9546991 [zhichao.li] scala style
67c253a [zhichao.li] hide some apis and clean code
b19b013 [zhichao.li] add codegen and clean code
ac863e9 [zhichao.li] reduce the calling of numChars
12e108f [zhichao.li] refine unittest
d92951b [zhichao.li] add lastIndexOf
52d7b03 [zhichao.li] add substring_index function
2015-07-31 21:18:01 -07:00
Reynold Xin 03377d2522 [SPARK-9358][SQL] Code generation for UnsafeRow joiner.
This patch creates a code generated unsafe row concatenator that can be used to concatenate/join two UnsafeRows into a single UnsafeRow.

Since it is inherently hard to test these low level stuff, the test suites employ randomized testing heavily in order to guarantee correctness.

Author: Reynold Xin <rxin@databricks.com>

Closes #7821 from rxin/rowconcat and squashes the following commits:

8717f35 [Reynold Xin] Rebase and code review.
72c5d8e [Reynold Xin] Fixed a bug.
a84ed2e [Reynold Xin] Fixed offset.
40c3fb2 [Reynold Xin] Reset random data generator.
f0913aa [Reynold Xin] Test fixes.
6687b6f [Reynold Xin] Updated documentation.
00354b9 [Reynold Xin] Support concat data as well.
e9a4347 [Reynold Xin] Updated.
6269f96 [Reynold Xin] Fixed a bug .
0f89716 [Reynold Xin] [SPARK-9358][SQL][WIP] Code generation for UnsafeRow concat.
2015-07-31 21:09:00 -07:00
Josh Rosen 8cb415a4b9 [SPARK-9451] [SQL] Support entries larger than default page size in BytesToBytesMap & integrate with ShuffleMemoryManager
This patch adds support for entries larger than the default page size in BytesToBytesMap.  These large rows are handled by allocating special overflow pages to hold individual entries.

In addition, this patch integrates BytesToBytesMap with the ShuffleMemoryManager:

- Move BytesToBytesMap from `unsafe` to `core` so that it can import `ShuffleMemoryManager`.
- Before allocating new data pages, ask the ShuffleMemoryManager to reserve the memory:
  - `putNewKey()` now returns a boolean to indicate whether the insert succeeded or failed due to a lack of memory.  The caller can use this value to respond to the memory pressure (e.g. by spilling).
- `UnsafeFixedWidthAggregationMap. getAggregationBuffer()` now returns `null` to signal failure due to a lack of memory.
- Updated all uses of these classes to handle these error conditions.
- Added new tests for allocating large records and for allocations which fail due to memory pressure.
- Extended the `afterAll()` test teardown methods to detect ShuffleMemoryManager leaks.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #7762 from JoshRosen/large-rows and squashes the following commits:

ae7bc56 [Josh Rosen] Fix compilation
82fc657 [Josh Rosen] Merge remote-tracking branch 'origin/master' into large-rows
34ab943 [Josh Rosen] Remove semi
31a525a [Josh Rosen] Integrate BytesToBytesMap with ShuffleMemoryManager.
626b33c [Josh Rosen] Move code to sql/core and spark/core packages so that ShuffleMemoryManager can be integrated
ec4484c [Josh Rosen] Move BytesToBytesMap from unsafe package to core.
642ed69 [Josh Rosen] Rename size to numElements
bea1152 [Josh Rosen] Add basic test.
2cd3570 [Josh Rosen] Remove accidental duplicated code
07ff9ef [Josh Rosen] Basic support for large rows in BytesToBytesMap.
2015-07-31 19:19:27 -07:00
HuJiayin 4d5a6e7b60 [SPARK-8271][SQL]string function: soundex
This PR brings SQL function soundex(), see https://issues.apache.org/jira/browse/HIVE-9738

It's based on #7115 , thanks to HuJiayin

Author: HuJiayin <jiayin.hu@intel.com>
Author: Davies Liu <davies@databricks.com>

Closes #7812 from davies/soundex and squashes the following commits:

fa75941 [Davies Liu] Merge branch 'master' of github.com:apache/spark into soundex
a4bd6d8 [Davies Liu] fix soundex
2538908 [HuJiayin] add codegen soundex
d15d329 [HuJiayin] add back ut
ded1a14 [HuJiayin] Merge branch 'master' of https://github.com/apache/spark
e2dec2c [HuJiayin] support soundex rebase code
2015-07-31 16:05:26 -07:00
Herman van Hovell 39ab199a3f [SPARK-8640] [SQL] Enable Processing of Multiple Window Frames in a Single Window Operator
This PR enables the processing of multiple window frames in a single window operator. This should improve the performance of processing multiple window expressions wich share partition by/order by clauses, because it will be more efficient with respect to memory use and group processing.

Author: Herman van Hovell <hvanhovell@questtec.nl>

Closes #7515 from hvanhovell/SPARK-8640 and squashes the following commits:

f0e1c21 [Herman van Hovell] Changed Window Logical/Physical plans to use partition by/order by specs directly instead of using WindowSpec.
e1711c2 [Herman van Hovell] Enabled the processing of multiple window frames in a single Window operator.
2015-07-31 12:08:25 -07:00
Davies Liu 0024da9157 [SQL] address comments for to_date/trunc
This PR address the comments in #7805

cc rxin

Author: Davies Liu <davies@databricks.com>

Closes #7817 from davies/trunc and squashes the following commits:

f729d5f [Davies Liu] rollback
cb7f7832 [Davies Liu] genCode() is protected
31e52ef [Davies Liu] fix style
ed1edc7 [Davies Liu] address comments for #7805
2015-07-31 11:07:34 -07:00
Daoyuan Wang 83670fc9e6 [SPARK-8176] [SPARK-8197] [SQL] function to_date/ trunc
This PR is based on #6988 , thanks to adrian-wang .

This brings two SQL functions: to_date() and trunc().

Closes #6988

Author: Daoyuan Wang <daoyuan.wang@intel.com>
Author: Davies Liu <davies@databricks.com>

Closes #7805 from davies/to_date and squashes the following commits:

2c7beba [Davies Liu] Merge branch 'master' of github.com:apache/spark into to_date
310dd55 [Daoyuan Wang] remove dup test in rebase
980b092 [Daoyuan Wang] resolve rebase conflict
a476c5a [Daoyuan Wang] address comments from davies
d44ea5f [Daoyuan Wang] function to_date, trunc
2015-07-30 19:22:38 -07:00
Josh Rosen 3c66ff727d [SPARK-9489] Remove unnecessary compatibility and requirements checks from Exchange
While reviewing yhuai's patch for SPARK-2205 (#7773), I noticed that Exchange's `compatible` check may be incorrectly returning `false` in many cases.  As far as I know, this is not actually a problem because the `compatible`, `meetsRequirements`, and `needsAnySort` checks are serving only as short-circuit performance optimizations that are not necessary for correctness.

In order to reduce code complexity, I think that we should remove these checks and unconditionally rewrite the operator's children.  This should be safe because we rewrite the tree in a single bottom-up pass.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #7807 from JoshRosen/SPARK-9489 and squashes the following commits:

9d76ce9 [Josh Rosen] [SPARK-9489] Remove compatibleWith, meetsRequirements, and needsAnySort checks from Exchange
2015-07-30 17:38:48 -07:00
Liang-Chi Hsieh 351eda0e2f [SPARK-6319][SQL] Throw AnalysisException when using BinaryType on Join and Aggregate
JIRA: https://issues.apache.org/jira/browse/SPARK-6319

Spark SQL uses plain byte arrays to represent binary values. However, the arrays are compared by reference rather than by values. Thus, we should not use BinaryType on Join and Aggregate in current implementation.

Author: Liang-Chi Hsieh <viirya@appier.com>

Closes #7787 from viirya/agg_no_binary_type and squashes the following commits:

4f76cac [Liang-Chi Hsieh] Throw AnalysisException when using BinaryType on Join and Aggregate.
2015-07-30 17:22:51 -07:00
Davies Liu 0b1a464b6e [SPARK-9425] [SQL] support DecimalType in UnsafeRow
This PR brings the support of DecimalType in UnsafeRow, for precision <= 18, it's settable, otherwise it's not settable.

Author: Davies Liu <davies@databricks.com>

Closes #7758 from davies/unsafe_decimal and squashes the following commits:

478b1ba [Davies Liu] address comments
536314c [Davies Liu] Merge branch 'master' of github.com:apache/spark into unsafe_decimal
7c2e77a [Davies Liu] fix JoinedRow
76d6fa4 [Davies Liu] fix tests
99d3151 [Davies Liu] Merge branch 'master' of github.com:apache/spark into unsafe_decimal
d49c6ae [Davies Liu] support DecimalType in UnsafeRow
2015-07-30 17:18:32 -07:00
Reynold Xin e7a0976e99 [SPARK-9458][SPARK-9469][SQL] Code generate prefix computation in sorting & moves unsafe conversion out of TungstenSort.
Author: Reynold Xin <rxin@databricks.com>

Closes #7803 from rxin/SPARK-9458 and squashes the following commits:

5b032dc [Reynold Xin] Fix string.
b670dbb [Reynold Xin] [SPARK-9458][SPARK-9469][SQL] Code generate prefix computation in sorting & moves unsafe conversion out of TungstenSort.
2015-07-30 17:17:27 -07:00
Xiangrui Meng df32669514 [SPARK-7157][SQL] add sampleBy to DataFrame
This was previously committed but then reverted due to test failures (see #6769).

Author: Xiangrui Meng <meng@databricks.com>

Closes #7755 from rxin/SPARK-7157 and squashes the following commits:

fbf9044 [Xiangrui Meng] fix python test
542bd37 [Xiangrui Meng] update test
604fe6d [Xiangrui Meng] Merge remote-tracking branch 'apache/master' into SPARK-7157
f051afd [Xiangrui Meng] use udf instead of building expression
f4e9425 [Xiangrui Meng] Merge remote-tracking branch 'apache/master' into SPARK-7157
8fb990b [Xiangrui Meng] Merge remote-tracking branch 'apache/master' into SPARK-7157
103beb3 [Xiangrui Meng] add Java-friendly sampleBy
991f26f [Xiangrui Meng] fix seed
4a14834 [Xiangrui Meng] move sampleBy to stat
832f7cc [Xiangrui Meng] add sampleBy to DataFrame
2015-07-30 17:16:03 -07:00
Daoyuan Wang 1abf7dc16c [SPARK-8186] [SPARK-8187] [SPARK-8194] [SPARK-8198] [SPARK-9133] [SPARK-9290] [SQL] functions: date_add, date_sub, add_months, months_between, time-interval calculation
This PR is based on #7589 , thanks to adrian-wang

Added SQL function date_add, date_sub, add_months, month_between, also add a rule for
add/subtract of date/timestamp and interval.

Closes #7589

cc rxin

Author: Daoyuan Wang <daoyuan.wang@intel.com>
Author: Davies Liu <davies@databricks.com>

Closes #7754 from davies/date_add and squashes the following commits:

e8c633a [Davies Liu] Merge branch 'master' of github.com:apache/spark into date_add
9e8e085 [Davies Liu] Merge branch 'master' of github.com:apache/spark into date_add
6224ce4 [Davies Liu] fix conclict
bd18cd4 [Davies Liu] Merge branch 'master' of github.com:apache/spark into date_add
e47ff2c [Davies Liu] add python api, fix date functions
01943d0 [Davies Liu] Merge branch 'master' into date_add
522e91a [Daoyuan Wang] fix
e8a639a [Daoyuan Wang] fix
42df486 [Daoyuan Wang] fix style
87c4b77 [Daoyuan Wang] function add_months, months_between and some fixes
1a68e03 [Daoyuan Wang] poc of time interval calculation
c506661 [Daoyuan Wang] function date_add , date_sub
2015-07-30 13:21:46 -07:00
Daoyuan Wang 6d94bf6ac1 [SPARK-8174] [SPARK-8175] [SQL] function unix_timestamp, from_unixtime
unix_timestamp(): long
Gets current Unix timestamp in seconds.

unix_timestamp(string|date): long
Converts time string in format yyyy-MM-dd HH:mm:ss to Unix timestamp (in seconds), using the default timezone and the default locale, return null if fail: unix_timestamp('2009-03-20 11:30:01') = 1237573801

unix_timestamp(string date, string pattern): long
Convert time string with given pattern (see [http://docs.oracle.com/javase/tutorial/i18n/format/simpleDateFormat.html]) to Unix time stamp (in seconds), return null if fail: unix_timestamp('2009-03-20', 'yyyy-MM-dd') = 1237532400.

from_unixtime(bigint unixtime[, string format]): string
Converts the number of seconds from unix epoch (1970-01-01 00:00:00 UTC) to a string representing the timestamp of that moment in the current system time zone in the format of "1970-01-01 00:00:00".

Jira:
https://issues.apache.org/jira/browse/SPARK-8174
https://issues.apache.org/jira/browse/SPARK-8175

Author: Daoyuan Wang <daoyuan.wang@intel.com>

Closes #7644 from adrian-wang/udfunixtime and squashes the following commits:

2fe20c4 [Daoyuan Wang] util.Date
ea2ec16 [Daoyuan Wang] use util.Date for better performance
a2cf929 [Daoyuan Wang] doc return null instead of 0
f6f070a [Daoyuan Wang] address comments from davies
6a4cbb3 [Daoyuan Wang] temp
56ded53 [Daoyuan Wang] rebase and address comments
14a8b37 [Daoyuan Wang] function unix_timestamp, from_unixtime
2015-07-30 11:14:09 -07:00
Josh Rosen 520ec0ff9d [SPARK-8850] [SQL] Enable Unsafe mode by default
This pull request enables Unsafe mode by default in Spark SQL. In order to do this, we had to fix a number of small issues:

**List of fixed blockers**:

- [x] Make some default buffer sizes configurable so that HiveCompatibilitySuite can run properly (#7741).
- [x] Memory leak on grouped aggregation of empty input (fixed by #7560 to fix this)
- [x] Update planner to also check whether codegen is enabled before planning unsafe operators.
- [x] Investigate failing HiveThriftBinaryServerSuite test.  This turns out to be caused by a ClassCastException that occurs when Exchange tries to apply an interpreted RowOrdering to an UnsafeRow when range partitioning an RDD.  This could be fixed by #7408, but a shorter-term fix is to just skip the Unsafe exchange path when RangePartitioner is used.
- [x] Memory leak exceptions masking exceptions that actually caused tasks to fail (will be fixed by #7603).
- [x]  ~~https://issues.apache.org/jira/browse/SPARK-9162, to implement code generation for ScalaUDF.  This is necessary for `UDFSuite` to pass.  For now, I've just ignored this test in order to try to find other problems while we wait for a fix.~~ This is no longer necessary as of #7682.
- [x] Memory leaks from Limit after UnsafeExternalSort cause the memory leak detector to fail tests. This is a huge problem in the HiveCompatibilitySuite (fixed by f4ac642a4e5b2a7931c5e04e086bb10e263b1db6).
- [x] Tests in `AggregationQuerySuite` are failing due to NaN-handling issues in UnsafeRow, which were fixed in #7736.
- [x] `org.apache.spark.sql.ColumnExpressionSuite.rand` needs to be updated so that the planner check also matches `TungstenProject`.
- [x] After having lowered the buffer sizes to 4MB so that most of HiveCompatibilitySuite runs:
  - [x] Wrong answer in `join_1to1` (fixed by #7680)
  - [x] Wrong answer in `join_nulls` (fixed by #7680)
  - [x] Managed memory OOM / leak in `lateral_view`
  - [x] Seems to hang indefinitely in `partcols1`.  This might be a deadlock in script transformation or a bug in error-handling code? The hang was fixed by #7710.
  - [x] Error while freeing memory in `partcols1`: will be fixed by #7734.
- [x] After fixing the `partcols1` hang, it appears that a number of later tests have issues as well.
- [x] Fix thread-safety bug in codegen fallback expression evaluation (#7759).

Author: Josh Rosen <joshrosen@databricks.com>

Closes #7564 from JoshRosen/unsafe-by-default and squashes the following commits:

83c0c56 [Josh Rosen] Merge remote-tracking branch 'origin/master' into unsafe-by-default
f4cc859 [Josh Rosen] Merge remote-tracking branch 'origin/master' into unsafe-by-default
963f567 [Josh Rosen] Reduce buffer size for R tests
d6986de [Josh Rosen] Lower page size in PySpark tests
013b9da [Josh Rosen] Also match TungstenProject in checkNumProjects
5d0b2d3 [Josh Rosen] Add task completion callback to avoid leak in limit after sort
ea250da [Josh Rosen] Disable unsafe Exchange path when RangePartitioning is used
715517b [Josh Rosen] Enable Unsafe by default
2015-07-30 10:45:32 -07:00
Liang-Chi Hsieh 5363ed7156 [SPARK-9361] [SQL] Refactor new aggregation code to reduce the times of checking compatibility
JIRA: https://issues.apache.org/jira/browse/SPARK-9361

Currently, we call `aggregate.Utils.tryConvert` in many places to check it the logical.Aggregate can be run with new aggregation. But looks like `aggregate.Utils.tryConvert` will cost considerable time to run. We should only call `tryConvert` once and keep it value in `logical.Aggregate` and reuse it.

In `org.apache.spark.sql.execution.aggregate.Utils`, the codes involving with `tryConvert` should be moved to catalyst because it actually doesn't deal with execution details.

Author: Liang-Chi Hsieh <viirya@appier.com>

Closes #7677 from viirya/refactor_aggregate and squashes the following commits:

babea30 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into refactor_aggregate
9a589d7 [Liang-Chi Hsieh] Fix scala style.
0a91329 [Liang-Chi Hsieh] Refactor new aggregation code to reduce the times to call tryConvert.
2015-07-30 10:32:12 -07:00
Wenchen Fan c0cc0eaec6 [SPARK-9390][SQL] create a wrapper for array type
Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7724 from cloud-fan/array-data and squashes the following commits:

d0408a1 [Wenchen Fan] fix python
661e608 [Wenchen Fan] rebase
f39256c [Wenchen Fan] fix hive...
6dbfa6f [Wenchen Fan] fix hive again...
8cb8842 [Wenchen Fan] remove element type parameter from getArray
43e9816 [Wenchen Fan] fix mllib
e719afc [Wenchen Fan] fix hive
4346290 [Wenchen Fan] address comment
d4a38da [Wenchen Fan] remove sizeInBytes and add license
7e283e2 [Wenchen Fan] create a wrapper for array type
2015-07-30 10:04:30 -07:00
Liang-Chi Hsieh 6175d6cfe7 [SPARK-8838] [SQL] Add config to enable/disable merging part-files when merging parquet schema
JIRA: https://issues.apache.org/jira/browse/SPARK-8838

Currently all part-files are merged when merging parquet schema. However, in case there are many part-files and we can make sure that all the part-files have the same schema as their summary file. If so, we provide a configuration to disable merging part-files when merging parquet schema.

In short, we need to merge parquet schema because different summary files may contain different schema. But the part-files are confirmed to have the same schema with summary files.

Author: Liang-Chi Hsieh <viirya@appier.com>

Closes #7238 from viirya/option_partfile_merge and squashes the following commits:

71d5b5f [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into option_partfile_merge
8816f44 [Liang-Chi Hsieh] For comments.
dbc8e6b [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into option_partfile_merge
afc2fa1 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into option_partfile_merge
d4ed7e6 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into option_partfile_merge
df43027 [Liang-Chi Hsieh] Get dataStatuses' partitions based on all paths.
4eb2f00 [Liang-Chi Hsieh] Use given parameter.
ea8f6e5 [Liang-Chi Hsieh] Correct the code comments.
a57be0e [Liang-Chi Hsieh] Merge part-files if there are no summary files.
47df981 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into option_partfile_merge
4caf293 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into option_partfile_merge
0e734e0 [Liang-Chi Hsieh] Use correct API.
3b6be5b [Liang-Chi Hsieh] Fix key not found.
4bdd7e0 [Liang-Chi Hsieh] Don't read footer files if we can skip them.
8bbebcb [Liang-Chi Hsieh] Figure out how to test the config.
bbd4ce7 [Liang-Chi Hsieh] Add config to enable/disable merging part-files when merging parquet schema.
2015-07-30 17:45:30 +08:00
Reynold Xin 5ba2d44068 Fix flaky HashedRelationSuite
SparkEnv might not have been set in local unit tests.

Author: Reynold Xin <rxin@databricks.com>

Closes #7784 from rxin/HashedRelationSuite and squashes the following commits:

435d64b [Reynold Xin] Fix flaky HashedRelationSuite
2015-07-30 01:21:39 -07:00
Reynold Xin 4a8bb9d00d Revert "[SPARK-9458] Avoid object allocation in prefix generation."
This reverts commit 9514d874f0.
2015-07-30 01:04:24 -07:00
Joseph Batchik 1221849f91 [SPARK-8005][SQL] Input file name
Users can now get the file name of the partition being read in. A thread local variable is in `SQLNewHadoopRDD` and is set when the partition is computed. `SQLNewHadoopRDD` is moved to core so that the catalyst package can reach it.

This supports:

`df.select(inputFileName())`

and

`sqlContext.sql("select input_file_name() from table")`

Author: Joseph Batchik <josephbatchik@gmail.com>

Closes #7743 from JDrit/input_file_name and squashes the following commits:

abb8609 [Joseph Batchik] fixed failing test and changed the default value to be an empty string
d2f323d [Joseph Batchik] updates per review
102061f [Joseph Batchik] updates per review
75313f5 [Joseph Batchik] small fixes
c7f7b5a [Joseph Batchik] addeding input file name to Spark SQL
2015-07-29 23:35:55 -07:00
Yijie Shen e127ec34d5 [SPARK-9428] [SQL] Add test cases for null inputs for expression unit tests
JIRA: https://issues.apache.org/jira/browse/SPARK-9428

Author: Yijie Shen <henry.yijieshen@gmail.com>

Closes #7748 from yjshen/string_cleanup and squashes the following commits:

e0c2b3d [Yijie Shen] update codegen in RegExpExtract and RegExpReplace
26614d2 [Yijie Shen] MathFunctionSuite
a402859 [Yijie Shen] complex_create, conditional and cast
6e4e608 [Yijie Shen] arithmetic and cast
52593c1 [Yijie Shen] null input test cases for StringExpressionSuite
2015-07-29 23:24:20 -07:00
Reynold Xin 712465b68e HOTFIX: disable HashedRelationSuite. 2015-07-29 22:51:06 -07:00
Davies Liu e044705b44 [SPARK-9116] [SQL] [PYSPARK] support Python only UDT in __main__
Also we could create a Python UDT without having a Scala one, it's important for Python users.

cc mengxr JoshRosen

Author: Davies Liu <davies@databricks.com>

Closes #7453 from davies/class_in_main and squashes the following commits:

4dfd5e1 [Davies Liu] add tests for Python and Scala UDT
793d9b2 [Davies Liu] Merge branch 'master' of github.com:apache/spark into class_in_main
dc65f19 [Davies Liu] address comment
a9a3c40 [Davies Liu] Merge branch 'master' of github.com:apache/spark into class_in_main
a86e1fc [Davies Liu] fix serialization
ad528ba [Davies Liu] Merge branch 'master' of github.com:apache/spark into class_in_main
63f52ef [Davies Liu] fix pylint check
655b8a9 [Davies Liu] Merge branch 'master' of github.com:apache/spark into class_in_main
316a394 [Davies Liu] support Python UDT with UTF
0bcb3ef [Davies Liu] fix bug in mllib
de986d6 [Davies Liu] fix test
83d65ac [Davies Liu] fix bug in StructType
55bb86e [Davies Liu] support Python UDT in __main__ (without Scala one)
2015-07-29 22:30:49 -07:00
Reynold Xin 9514d874f0 [SPARK-9458] Avoid object allocation in prefix generation.
In our existing sort prefix generation code, we use expression's eval method to generate the prefix, which results in object allocation for every prefix. We can use the specialized getters available on InternalRow directly to avoid the object allocation.

I also removed the FLOAT prefix, opting for converting float directly to double.

Author: Reynold Xin <rxin@databricks.com>

Closes #7763 from rxin/sort-prefix and squashes the following commits:

5dc2f06 [Reynold Xin] [SPARK-9458] Avoid object allocation in prefix generation.
2015-07-29 20:46:03 -07:00
Josh Rosen 1b0099fc62 [SPARK-9411] [SQL] Make Tungsten page sizes configurable
We need to make page sizes configurable so we can reduce them in unit tests and increase them in real production workloads.  These sizes are now controlled by a new configuration, `spark.buffer.pageSize`.  The new default is 64 megabytes.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #7741 from JoshRosen/SPARK-9411 and squashes the following commits:

a43c4db [Josh Rosen] Fix pow
2c0eefc [Josh Rosen] Fix MAXIMUM_PAGE_SIZE_BYTES comment + value
bccfb51 [Josh Rosen] Lower page size to 4MB in TestHive
ba54d4b [Josh Rosen] Make UnsafeExternalSorter's page size configurable
0045aa2 [Josh Rosen] Make UnsafeShuffle's page size configurable
bc734f0 [Josh Rosen] Rename configuration
e614858 [Josh Rosen] Makes BytesToBytesMap page size configurable
2015-07-29 16:00:30 -07:00
Reynold Xin 5340dfaf94 [SPARK-9430][SQL] Rename IntervalType to CalendarIntervalType.
We want to introduce a new IntervalType in 1.6 that is based on only the number of microseoncds,
so interval can be compared.

Renaming the existing IntervalType to CalendarIntervalType so we can do that in the future.

Author: Reynold Xin <rxin@databricks.com>

Closes #7745 from rxin/calendarintervaltype and squashes the following commits:

99f64e8 [Reynold Xin] One more line ...
13466c8 [Reynold Xin] Fixed tests.
e20f24e [Reynold Xin] [SPARK-9430][SQL] Rename IntervalType to CalendarIntervalType.
2015-07-29 13:49:22 -07:00
Wenchen Fan 708794e8aa [SPARK-9251][SQL] do not order by expressions which still need evaluation
as an offline discussion with rxin , it's weird to be computing stuff while doing sorting, we should only order by bound reference during execution.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7593 from cloud-fan/sort and squashes the following commits:

7b1bef7 [Wenchen Fan] add test
daf206d [Wenchen Fan] add more comments
289bee0 [Wenchen Fan] do not order by expressions which still need evaluation
2015-07-29 00:08:45 -07:00
Davies Liu 15667a0afa [SPARK-9281] [SQL] use decimal or double when parsing SQL
Right now, we use double to parse all the float number in SQL. When it's used in expression together with DecimalType, it will turn the decimal into double as well. Also it will loss some precision when using double.

This PR change to parse float number to decimal or double, based on it's  using scientific notation or not, see https://msdn.microsoft.com/en-us/library/ms179899.aspx

This is a break change, should we doc it somewhere?

Author: Davies Liu <davies@databricks.com>

Closes #7642 from davies/parse_decimal and squashes the following commits:

1f576d9 [Davies Liu] Merge branch 'master' of github.com:apache/spark into parse_decimal
5e142b6 [Davies Liu] fix scala style
eca99de [Davies Liu] fix tests
2afe702 [Davies Liu] Merge branch 'master' of github.com:apache/spark into parse_decimal
f4a320b [Davies Liu] Update SqlParser.scala
1c48e34 [Davies Liu] use decimal or double when parsing SQL
2015-07-28 22:51:08 -07:00
Wenchen Fan 429b2f0df4 [SPARK-8608][SPARK-8609][SPARK-9083][SQL] reset mutable states of nondeterministic expression before evaluation and fix PullOutNondeterministic
We will do local projection for LocalRelation, and thus reuse the same Expression object among multiply evaluations. We should reset the mutable states of Expression before evaluate it.

Fix `PullOutNondeterministic` rule to make it work for `Sort`.

Also got a chance to cleanup the dataframe test suite.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7674 from cloud-fan/show and squashes the following commits:

888934f [Wenchen Fan] fix sort
c0e93e8 [Wenchen Fan] local DataFrame with random columns should return same value when call `show`
2015-07-28 21:37:50 -07:00
Yin Huai 3744b7fd42 [SPARK-9422] [SQL] Remove the placeholder attributes used in the aggregation buffers
https://issues.apache.org/jira/browse/SPARK-9422

Author: Yin Huai <yhuai@databricks.com>

Closes #7737 from yhuai/removePlaceHolder and squashes the following commits:

ec29b44 [Yin Huai]  Remove placeholder attributes.
2015-07-28 19:01:25 -07:00
Josh Rosen e78ec1a8fa [SPARK-9421] Fix null-handling bugs in UnsafeRow.getDouble, getFloat(), and get(ordinal, dataType)
UnsafeRow.getDouble and getFloat() return NaN when called on columns that are null, which is inconsistent with the behavior of other row classes (which is to return 0.0).

In addition, the generic get(ordinal, dataType) method should always return null for a null literal, but currently it handles nulls by calling the type-specific accessors.

This patch addresses both of these issues and adds a regression test.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #7736 from JoshRosen/unsafe-row-null-fixes and squashes the following commits:

c8eb2ee [Josh Rosen] Fix test in UnsafeRowConverterSuite
6214682 [Josh Rosen] Fixes to null handling in UnsafeRow
2015-07-28 17:51:58 -07:00
Reynold Xin 6662ee2124 [SPARK-9418][SQL] Use sort-merge join as the default shuffle join.
Sort-merge join is more robust in Spark since sorting can be made using the Tungsten sort operator.

Author: Reynold Xin <rxin@databricks.com>

Closes #7733 from rxin/smj and squashes the following commits:

61e4d34 [Reynold Xin] Fixed test case.
5ffd731 [Reynold Xin] Fixed JoinSuite.
a137dc0 [Reynold Xin] [SPARK-9418][SQL] Use sort-merge join as the default shuffle join.
2015-07-28 17:42:35 -07:00
Reynold Xin b7f54119f8 [SPARK-9420][SQL] Move expressions in sql/core package to catalyst.
Since catalyst package already depends on Spark core, we can move those expressions
into catalyst, and simplify function registry.

This is a followup of #7478.

Author: Reynold Xin <rxin@databricks.com>

Closes #7735 from rxin/SPARK-8003 and squashes the following commits:

2ffbdc3 [Reynold Xin] [SPARK-8003][SQL] Move expressions in sql/core package to catalyst.
2015-07-28 17:03:59 -07:00
Josh Rosen 59b92add7c [SPARK-9393] [SQL] Fix several error-handling bugs in ScriptTransform operator
SparkSQL's ScriptTransform operator has several serious bugs which make debugging fairly difficult:

- If exceptions are thrown in the writing thread then the child process will not be killed, leading to a deadlock because the reader thread will block while waiting for input that will never arrive.
- TaskContext is not propagated to the writer thread, which may cause errors in upstream pipelined operators.
- Exceptions which occur in the writer thread are not propagated to the main reader thread, which may cause upstream errors to be silently ignored instead of killing the job.  This can lead to silently incorrect query results.
- The writer thread is not a daemon thread, but it should be.

In addition, the code in this file is extremely messy:

- Lots of fields are nullable but the nullability isn't clearly explained.
- Many confusing variable names: for instance, there are variables named `ite` and `iterator` that are defined in the same scope.
- Some code was misindented.
- The `*serdeClass` variables are actually expected to be single-quoted strings, which is really confusing: I feel that this parsing / extraction should be performed in the analyzer, not in the operator itself.
- There were no unit tests for the operator itself, only end-to-end tests.

This pull request addresses these issues, borrowing some error-handling techniques from PySpark's PythonRDD.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #7710 from JoshRosen/script-transform and squashes the following commits:

16c44e2 [Josh Rosen] Update some comments
983f200 [Josh Rosen] Use unescapeSQLString instead of stripQuotes
6a06a8c [Josh Rosen] Clean up handling of quotes in serde class name
494cde0 [Josh Rosen] Propagate TaskContext to writer thread
323bb2b [Josh Rosen] Fix error-swallowing bug
b31258d [Josh Rosen] Rename iterator variables to disambiguate.
88278de [Josh Rosen] Split ScriptTransformation writer thread into own class.
8b162b6 [Josh Rosen] Add failing test which demonstrates exception masking issue
4ee36a2 [Josh Rosen] Kill script transform subprocess when error occurs in input writer.
bd4c948 [Josh Rosen] Skip launching of external command for empty partitions.
b43e4ec [Josh Rosen] Clean up nullability in ScriptTransformation
fa18d26 [Josh Rosen] Add basic unit test for script transform with 'cat' command.
2015-07-28 16:04:48 -07:00
Davies Liu 21825529ea [SPARK-9247] [SQL] Use BytesToBytesMap for broadcast join
This PR introduce BytesToBytesMap to UnsafeHashedRelation, use it in executor for better performance.

It serialize all the key and values from java HashMap, put them into a BytesToBytesMap while deserializing. All the values for a same key are stored continuous to have better memory locality.

This PR also address the comments for #7480 , do some clean up.

Author: Davies Liu <davies@databricks.com>

Closes #7592 from davies/unsafe_map2 and squashes the following commits:

42c578a [Davies Liu] Merge branch 'master' of github.com:apache/spark into unsafe_map2
fd09528 [Davies Liu] remove thread local cache and update docs
1c5ad8d [Davies Liu] fix test
5eb1b5a [Davies Liu] address comments in #7480
46f1f22 [Davies Liu] fix style
fc221e0 [Davies Liu] use BytesToBytesMap for broadcast join
2015-07-28 15:56:19 -07:00
Joseph Batchik b88b868eb3 [SPARK-8003][SQL] Added virtual column support to Spark
Added virtual column support by adding a new resolution role to the query analyzer. Additional virtual columns can be added by adding case expressions to [the new rule](https://github.com/JDrit/spark/blob/virt_columns/sql/core/src/main/scala/org/apache/spark/sql/SQLContext.scala#L1026) and my modifying the [logical plan](https://github.com/JDrit/spark/blob/virt_columns/sql/catalyst/src/main/scala/org/apache/spark/sql/catalyst/plans/logical/LogicalPlan.scala#L216) to resolve them.

This also solves [SPARK-8003](https://issues.apache.org/jira/browse/SPARK-8003)

This allows you to perform queries such as:
```sql
select spark__partition__id, count(*) as c from table group by spark__partition__id;
```

Author: Joseph Batchik <josephbatchik@gmail.com>
Author: JD <jd@csh.rit.edu>

Closes #7478 from JDrit/virt_columns and squashes the following commits:

7932bf0 [Joseph Batchik] adding spark__partition__id to hive as well
f8a9c6c [Joseph Batchik] merging in master
e49da48 [JD] fixes for @rxin's suggestions
60e120b [JD] fixing test in merge
4bf8554 [JD] merging in master
c68bc0f [Joseph Batchik] Adding function register ability to SQLContext and adding a function for spark__partition__id()
2015-07-28 14:39:25 -07:00
Yin Huai 6cdcc21fe6 [SPARK-9196] [SQL] Ignore test DatetimeExpressionsSuite: function current_timestamp.
This test is flaky. https://issues.apache.org/jira/browse/SPARK-9196 will track the fix of it. For now, let's disable this test.

Author: Yin Huai <yhuai@databricks.com>

Closes #7727 from yhuai/SPARK-9196-ignore and squashes the following commits:

f92bded [Yin Huai] Ignore current_timestamp.
2015-07-28 13:16:48 -07:00
Aaron Davidson 35ef853b3f [SPARK-9397] DataFrame should provide an API to find source data files if applicable
Certain applications would benefit from being able to inspect DataFrames that are straightforwardly produced by data sources that stem from files, and find out their source data. For example, one might want to display to a user the size of the data underlying a table, or to copy or mutate it.

This PR exposes an `inputFiles` method on DataFrame which attempts to discover the source data in a best-effort manner, by inspecting HadoopFsRelations and JSONRelations.

Author: Aaron Davidson <aaron@databricks.com>

Closes #7717 from aarondav/paths and squashes the following commits:

ff67430 [Aaron Davidson] inputFiles
0acd3ad [Aaron Davidson] [SPARK-9397] DataFrame should provide an API to find source data files if applicable
2015-07-28 10:12:09 -07:00
Reynold Xin 9bbe0171cb [SPARK-8196][SQL] Fix null handling & documentation for next_day.
The original patch didn't handle nulls correctly for next_day.

Author: Reynold Xin <rxin@databricks.com>

Closes #7718 from rxin/next_day and squashes the following commits:

616a425 [Reynold Xin] Merged DatetimeExpressionsSuite into DateFunctionsSuite.
faa78cf [Reynold Xin] Merged DatetimeFunctionsSuite into DateExpressionsSuite.
6c4fb6a [Reynold Xin] [SPARK-8196][SQL] Fix null handling & documentation for next_day.
2015-07-28 09:43:39 -07:00
Reynold Xin c740bed172 [SPARK-9373][SQL] follow up for StructType support in Tungsten projection.
Author: Reynold Xin <rxin@databricks.com>

Closes #7720 from rxin/struct-followup and squashes the following commits:

d9757f5 [Reynold Xin] [SPARK-9373][SQL] follow up for StructType support in Tungsten projection.
2015-07-28 09:43:12 -07:00
Cheng Hao 9c5612f4e1 [MINOR] [SQL] Support mutable expression unit test with codegen projection
This is actually contains 3 minor issues:
1) Enable the unit test(codegen) for mutable expressions (FormatNumber, Regexp_Replace/Regexp_Extract)
2) Use the `PlatformDependent.copyMemory` instead of the `System.arrayCopy`

Author: Cheng Hao <hao.cheng@intel.com>

Closes #7566 from chenghao-intel/codegen_ut and squashes the following commits:

24f43ea [Cheng Hao] enable codegen for mutable expression & UTF8String performance
2015-07-27 23:02:23 -07:00
Reynold Xin 60f08c7c87 [SPARK-9373][SQL] Support StructType in Tungsten projection
This pull request updates GenerateUnsafeProjection to support StructType. If an input struct type is backed already by an UnsafeRow, GenerateUnsafeProjection copies the bytes directly into its buffer space without any conversion. However, if the input is not an UnsafeRow, GenerateUnsafeProjection runs the code generated recursively to convert the input into an UnsafeRow and then copies it into the buffer space.

Also create a TungstenProject operator that projects data directly into UnsafeRow. Note that I'm not sure if this is the way we want to structure Unsafe+codegen operators, but we can defer that decision to follow-up pull requests.

Author: Reynold Xin <rxin@databricks.com>

Closes #7689 from rxin/tungsten-struct-type and squashes the following commits:

9162f42 [Reynold Xin] Support IntervalType in UnsafeRow's getter.
be9f377 [Reynold Xin] Fixed tests.
10c4b7c [Reynold Xin] Format generated code.
77e8d0e [Reynold Xin] Fixed NondeterministicSuite.
ac4951d [Reynold Xin] Yay.
ac203bf [Reynold Xin] More comments.
9f36216 [Reynold Xin] Updated comment.
6b781fe [Reynold Xin] Reset the change in DataFrameSuite.
525b95b [Reynold Xin] Merged with master, more documentation & test cases.
321859a [Reynold Xin] [SPARK-9373][SQL] Support StructType in Tungsten projection [WIP]
2015-07-27 22:51:15 -07:00
Yijie Shen 63a492b931 [SPARK-8828] [SQL] Revert SPARK-5680
JIRA: https://issues.apache.org/jira/browse/SPARK-8828

Author: Yijie Shen <henry.yijieshen@gmail.com>

Closes #7667 from yjshen/revert_combinesum_2 and squashes the following commits:

c37ccb1 [Yijie Shen] add test case
8377214 [Yijie Shen] revert spark.sql.useAggregate2 to its default value
e2305ac [Yijie Shen] fix bug - avg on decimal column
7cb0e95 [Yijie Shen] [wip] resolving bugs
1fadb5a [Yijie Shen] remove occurance
17c6248 [Yijie Shen] revert SPARK-5680
2015-07-27 22:47:33 -07:00
Reynold Xin 3bc7055e26 Fixed a test failure. 2015-07-27 22:04:54 -07:00
Daoyuan Wang 2e7f99a004 [SPARK-8195] [SPARK-8196] [SQL] udf next_day last_day
next_day, returns next certain dayofweek.
last_day, returns the last day of the month which given date belongs to.

Author: Daoyuan Wang <daoyuan.wang@intel.com>

Closes #6986 from adrian-wang/udfnlday and squashes the following commits:

ef7e3da [Daoyuan Wang] fix
02b3426 [Daoyuan Wang] address 2 comments
dc69630 [Daoyuan Wang] address comments from rxin
8846086 [Daoyuan Wang] address comments from rxin
d09bcce [Daoyuan Wang] multi fix
1a9de3d [Daoyuan Wang] function next_day and last_day
2015-07-27 21:08:56 -07:00
Michael Armbrust ce89ff477a [SPARK-9386] [SQL] Feature flag for metastore partition pruning
Since we have been seeing a lot of failures related to this new feature, lets put it behind a flag and turn it off by default.

Author: Michael Armbrust <michael@databricks.com>

Closes #7703 from marmbrus/optionalMetastorePruning and squashes the following commits:

6ad128c [Michael Armbrust] style
8447835 [Michael Armbrust] [SPARK-9386][SQL] Feature flag for metastore partition pruning
fd37b87 [Michael Armbrust] add config flag
2015-07-27 17:32:34 -07:00
Wenchen Fan 3ab7525dce [SPARK-9355][SQL] Remove InternalRow.get generic getter call in columnar cache code
Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7673 from cloud-fan/row-generic-getter-columnar and squashes the following commits:

88b1170 [Wenchen Fan] fix style
eeae712 [Wenchen Fan] Remove Internal.get generic getter call in columnar cache code
2015-07-27 13:40:50 -07:00
Yin Huai 55946e76fd [SPARK-9349] [SQL] UDAF cleanup
https://issues.apache.org/jira/browse/SPARK-9349

With this PR, we only expose `UserDefinedAggregateFunction` (an abstract class) and `MutableAggregationBuffer` (an interface). Other internal wrappers and helper classes are moved to `org.apache.spark.sql.execution.aggregate` and marked as `private[sql]`.

Author: Yin Huai <yhuai@databricks.com>

Closes #7687 from yhuai/UDAF-cleanup and squashes the following commits:

db36542 [Yin Huai] Add comments to UDAF examples.
ae17f66 [Yin Huai] Address comments.
9c9fa5f [Yin Huai] UDAF cleanup.
2015-07-27 13:26:57 -07:00
Wenchen Fan dd9ae7945a [SPARK-9351] [SQL] remove literals from grouping expressions in Aggregate
literals in grouping expressions have no effect at all, only make our grouping key bigger, so we should remove them in Optimizer.

I also make old and new aggregation code consistent about literals in grouping here. In old aggregation, actually literals in grouping are already removed but new aggregation is not. So I explicitly make it a rule in Optimizer.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7583 from cloud-fan/minor and squashes the following commits:

471adff [Wenchen Fan] add test
0839925 [Wenchen Fan] use transformDown when rewrite final result expressions
2015-07-27 11:23:29 -07:00
Rene Treffer aa19c696e2 [SPARK-4176] [SQL] Supports decimal types with precision > 18 in Parquet
This PR is based on #6796 authored by rtreffer.

To support large decimal precisions (> 18), we do the following things in this PR:

1. Making `CatalystSchemaConverter` support large decimal precision

   Decimal types with large precision are always converted to fixed-length byte array.

2. Making `CatalystRowConverter` support reading decimal values with large precision

   When the precision is > 18, constructs `Decimal` values with an unscaled `BigInteger` rather than an unscaled `Long`.

3. Making `RowWriteSupport` support writing decimal values with large precision

   In this PR we always write decimals as fixed-length byte array, because Parquet write path hasn't been refactored to conform Parquet format spec (see SPARK-6774 & SPARK-8848).

Two follow-up tasks should be done in future PRs:

- [ ] Writing decimals as `INT32`, `INT64` when possible while fixing SPARK-8848
- [ ] Adding compatibility tests as part of SPARK-5463

Author: Cheng Lian <lian@databricks.com>

Closes #7455 from liancheng/spark-4176 and squashes the following commits:

a543d10 [Cheng Lian] Fixes errors introduced while rebasing
9e31cdf [Cheng Lian] Supports decimals with precision > 18 for Parquet
2015-07-27 23:29:40 +08:00
Cheng Lian 72981bc8f0 [SPARK-7943] [SPARK-8105] [SPARK-8435] [SPARK-8714] [SPARK-8561] Fixes multi-database support
This PR fixes a set of issues related to multi-database. A new data structure `TableIdentifier` is introduced to identify a table among multiple databases. We should stop using a single `String` (table name without database name), or `Seq[String]` (optional database name plus table name) to identify tables internally.

Author: Cheng Lian <lian@databricks.com>

Closes #7623 from liancheng/spark-8131-multi-db and squashes the following commits:

f3bcd4b [Cheng Lian] Addresses PR comments
e0eb76a [Cheng Lian] Fixes styling issues
41e2207 [Cheng Lian] Fixes multi-database support
d4d1ec2 [Cheng Lian] Adds multi-database test cases
2015-07-27 17:15:35 +08:00
Liang-Chi Hsieh 945d8bcbf6 [SPARK-9306] [SQL] Don't use SortMergeJoin when joining on unsortable columns
JIRA: https://issues.apache.org/jira/browse/SPARK-9306

Author: Liang-Chi Hsieh <viirya@appier.com>

Closes #7645 from viirya/smj_unsortable and squashes the following commits:

a240707 [Liang-Chi Hsieh] Use forall instead of exists for readability.
55221fa [Liang-Chi Hsieh] Shouldn't use SortMergeJoin when joining on unsortable columns.
2015-07-26 22:13:37 -07:00
Cheng Hao 1efe97dc9e [SPARK-8867][SQL] Support list / describe function usage
As Hive does, we need to list all of the registered UDF and its usage for user.

We add the annotation to describe a UDF, so we can get the literal description info while registering the UDF.
e.g.
```scala
ExpressionDescription(
    usage = "_FUNC_(expr) - Returns the absolute value of the numeric value",
    extended = """> SELECT _FUNC_('-1')
                  1""")
 case class Abs(child: Expression) extends UnaryArithmetic {
...
```

Author: Cheng Hao <hao.cheng@intel.com>

Closes #7259 from chenghao-intel/desc_function and squashes the following commits:

cf29bba [Cheng Hao] fixing the code style issue
5193855 [Cheng Hao] Add more powerful parser for show functions
c645a6b [Cheng Hao] fix bug in unit test
78d40f1 [Cheng Hao] update the padding issue for usage
48ee4b3 [Cheng Hao] update as feedback
70eb4e9 [Cheng Hao] add show/describe function support
2015-07-26 18:34:19 -07:00
Cheng Lian c025c3d0a1 [SPARK-9095] [SQL] Removes the old Parquet support
This PR removes the old Parquet support:

- Removes the old `ParquetRelation` together with related SQL configuration, plan nodes, strategies, utility classes, and test suites.

- Renames `ParquetRelation2` to `ParquetRelation`

- Renames `RowReadSupport` and `RowRecordMaterializer` to `CatalystReadSupport` and `CatalystRecordMaterializer` respectively, and moved them to separate files.

  This follows naming convention used in other Parquet data models implemented in parquet-mr. It should be easier for developers who are familiar with Parquet to follow.

There's still some other code that can be cleaned up. Especially `RowWriteSupport`. But I'd like to leave this part to SPARK-8848.

Author: Cheng Lian <lian@databricks.com>

Closes #7441 from liancheng/spark-9095 and squashes the following commits:

c7b6e38 [Cheng Lian] Removes WriteToFile
2d688d6 [Cheng Lian] Renames ParquetRelation2 to ParquetRelation
ca9e1b7 [Cheng Lian] Removes old Parquet support
2015-07-26 16:49:19 -07:00
Yijie Shen fb5d43fb25 [SPARK-9356][SQL]Remove the internal use of DecimalType.Unlimited
JIRA: https://issues.apache.org/jira/browse/SPARK-9356

Author: Yijie Shen <henry.yijieshen@gmail.com>

Closes #7671 from yjshen/deprecated_unlimit and squashes the following commits:

c707f56 [Yijie Shen] remove pattern matching in changePrecision
4a1823c [Yijie Shen] remove internal occurrence of Decimal.Unlimited
2015-07-26 10:29:22 -07:00
Reynold Xin 4a01bfc2a2 [SPARK-9350][SQL] Introduce an InternalRow generic getter that requires a DataType
Currently UnsafeRow cannot support a generic getter. However, if the data type is known, we can support a generic getter.

Author: Reynold Xin <rxin@databricks.com>

Closes #7666 from rxin/generic-getter-with-datatype and squashes the following commits:

ee2874c [Reynold Xin] Add a default implementation for getStruct.
1e109a0 [Reynold Xin] [SPARK-9350][SQL] Introduce an InternalRow generic getter that requires a DataType.
033ee88 [Reynold Xin] Removed getAs in non test code.
2015-07-25 23:52:37 -07:00
Reynold Xin b1f4b4abfd [SPARK-9348][SQL] Remove apply method on InternalRow.
Author: Reynold Xin <rxin@databricks.com>

Closes #7665 from rxin/remove-row-apply and squashes the following commits:

0b43001 [Reynold Xin] support getString in UnsafeRow.
176d633 [Reynold Xin] apply -> get.
2941324 [Reynold Xin] [SPARK-9348][SQL] Remove apply method on InternalRow.
2015-07-25 18:41:51 -07:00
Wenchen Fan 2c94d0f24a [SPARK-9192][SQL] add initialization phase for nondeterministic expression
Currently nondeterministic expression is broken without a explicit initialization phase.

Let me take `MonotonicallyIncreasingID` as an example. This expression need a mutable state to remember how many times it has been evaluated, so we use `transient var count: Long` there. By being transient, the `count` will be reset to 0 and **only** to 0 when serialize and deserialize it, as deserialize transient variable will result to default value. There is *no way* to use another initial value for `count`, until we add the explicit initialization phase.

Another use case is local execution for `LocalRelation`, there is no serialize and deserialize phase and thus we can't reset mutable states for it.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7535 from cloud-fan/init and squashes the following commits:

6c6f332 [Wenchen Fan] add test
ef68ff4 [Wenchen Fan] fix comments
9eac85e [Wenchen Fan] move init code to interpreted class
bb7d838 [Wenchen Fan] pulls out nondeterministic expressions into a project
b4a4fc7 [Wenchen Fan] revert a refactor
86fee36 [Wenchen Fan] add initialization phase for nondeterministic expression
2015-07-25 12:10:02 -07:00
Cheng Lian e2ec018e37 [SPARK-9285] [SQL] Fixes Row/InternalRow conversion for HadoopFsRelation
This is a follow-up of #7626. It fixes `Row`/`InternalRow` conversion for data sources extending `HadoopFsRelation` with `needConversion` being `true`.

Author: Cheng Lian <lian@databricks.com>

Closes #7649 from liancheng/spark-9285-conversion-fix and squashes the following commits:

036a50c [Cheng Lian] Addresses PR comment
f6d7c6a [Cheng Lian] Fixes Row/InternalRow conversion for HadoopFsRelation
2015-07-25 11:42:49 -07:00
Reynold Xin 215713e199 [SPARK-9334][SQL] Remove UnsafeRowConverter in favor of UnsafeProjection.
The two are redundant.

Once this patch is merged, I plan to remove the inbound conversions from unsafe aggregates.

Author: Reynold Xin <rxin@databricks.com>

Closes #7658 from rxin/unsafeconverters and squashes the following commits:

ed19e6c [Reynold Xin] Updated support types.
2a56d7e [Reynold Xin] [SPARK-9334][SQL] Remove UnsafeRowConverter in favor of UnsafeProjection.
2015-07-25 01:37:41 -07:00
Reynold Xin f0ebab3f6d [SPARK-9336][SQL] Remove extra JoinedRows
They were added to improve performance (so JIT can inline the JoinedRow calls). However, we can also just improve it by projecting output out to UnsafeRow in Tungsten variant of the operators.

Author: Reynold Xin <rxin@databricks.com>

Closes #7659 from rxin/remove-joinedrows and squashes the following commits:

7510447 [Reynold Xin] [SPARK-9336][SQL] Remove extra JoinedRows
2015-07-25 01:28:46 -07:00
JD 723db13e06 [Spark-8668][SQL] Adding expr to functions
Author: JD <jd@csh.rit.edu>
Author: Joseph Batchik <josephbatchik@gmail.com>

Closes #7606 from JDrit/expr and squashes the following commits:

ad7f607 [Joseph Batchik] fixing python linter error
9d6daea [Joseph Batchik] removed order by per @rxin's comment
707d5c6 [Joseph Batchik] Added expr to fuctions.py
79df83c [JD] added example to the docs
b89eec8 [JD] moved function up as per @rxin's comment
4960909 [JD] updated per @JoshRosen's comment
2cb329c [JD] updated per @rxin's comment
9a9ad0c [JD] removing unused import
6dc26d0 [JD] removed split
7f2222c [JD] Adding expr function as per SPARK-8668
2015-07-25 00:34:59 -07:00
Liang-Chi Hsieh 64135cbb33 [SPARK-9067] [SQL] Close reader in NewHadoopRDD early if there is no more data
JIRA: https://issues.apache.org/jira/browse/SPARK-9067

According to the description of the JIRA ticket, calling `reader.close()` only after the task is finished will cause memory and file open limit problem since these resources are occupied even we don't need that anymore.

This PR simply closes the reader early when we know there is no more data to read.

Author: Liang-Chi Hsieh <viirya@appier.com>

Closes #7424 from viirya/close_reader and squashes the following commits:

3ff64e5 [Liang-Chi Hsieh] For comments.
3d20267 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into close_reader
e152182 [Liang-Chi Hsieh] For comments.
5116cbe [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into close_reader
3ceb755 [Liang-Chi Hsieh] For comments.
e34d98e [Liang-Chi Hsieh] For comments.
50ed729 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into close_reader
216912f [Liang-Chi Hsieh] Fix it.
f429016 [Liang-Chi Hsieh] Release reader if we don't need it.
a305621 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into close_reader
67569da [Liang-Chi Hsieh] Close reader early if there is no more data.
2015-07-24 12:36:44 -07:00
Reynold Xin 431ca39be5 [SPARK-9285][SQL] Remove InternalRow's inheritance from Row.
I also changed InternalRow's size/length function to numFields, to make it more obvious that it is not about bytes, but the number of fields.

Author: Reynold Xin <rxin@databricks.com>

Closes #7626 from rxin/internalRow and squashes the following commits:

e124daf [Reynold Xin] Fixed test case.
805ceb7 [Reynold Xin] Commented out the failed test suite.
f8a9ca5 [Reynold Xin] Fixed more bugs. Still at least one more remaining.
76d9081 [Reynold Xin] Fixed data sources.
7807f70 [Reynold Xin] Fixed DataFrameSuite.
cb60cd2 [Reynold Xin] Code review & small bug fixes.
0a2948b [Reynold Xin] Fixed style.
3280d03 [Reynold Xin] [SPARK-9285][SQL] Remove InternalRow's inheritance from Row.
2015-07-24 09:37:36 -07:00
Liang-Chi Hsieh 6a7e537f3a [SPARK-8756] [SQL] Keep cached information and avoid re-calculating footers in ParquetRelation2
JIRA: https://issues.apache.org/jira/browse/SPARK-8756

Currently, in ParquetRelation2, footers are re-read every time refresh() is called. But we can check if it is possibly changed before we do the reading because reading all footers will be expensive when there are too many partitions. This pr fixes this by keeping some cached information to check it.

Author: Liang-Chi Hsieh <viirya@appier.com>

Closes #7154 from viirya/cached_footer_parquet_relation and squashes the following commits:

92e9347 [Liang-Chi Hsieh] Fix indentation.
ae0ec64 [Liang-Chi Hsieh] Fix wrong assignment.
c8fdfb7 [Liang-Chi Hsieh] Fix it.
a52b6d1 [Liang-Chi Hsieh] For comments.
c2a2420 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into cached_footer_parquet_relation
fa5458f [Liang-Chi Hsieh] Use Map to cache FileStatus and do merging previously loaded schema and newly loaded one.
6ae0911 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into cached_footer_parquet_relation
21bbdec [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into cached_footer_parquet_relation
12a0ed9 [Liang-Chi Hsieh] Add check of FileStatus's modification time.
186429d [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into cached_footer_parquet_relation
0ef8caf [Liang-Chi Hsieh] Keep cached information and avoid re-calculating footers.
2015-07-24 17:39:57 +08:00
Wenchen Fan 408e64b284 [SPARK-9294][SQL] cleanup comments, code style, naming typo for the new aggregation
fix some comments and code style for https://github.com/apache/spark/pull/7458

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7619 from cloud-fan/agg-clean and squashes the following commits:

3925457 [Wenchen Fan] one more...
cc78357 [Wenchen Fan] one more cleanup
26f6a93 [Wenchen Fan] some minor cleanup for the new aggregation
2015-07-23 23:40:01 -07:00
Davies Liu 8a94eb23d5 [SPARK-9069] [SPARK-9264] [SQL] remove unlimited precision support for DecimalType
Romove Decimal.Unlimited (change to support precision up to 38, to match with Hive and other databases).

In order to keep backward source compatibility, Decimal.Unlimited is still there, but change to Decimal(38, 18).

If no precision and scale is provide, it's Decimal(10, 0) as before.

Author: Davies Liu <davies@databricks.com>

Closes #7605 from davies/decimal_unlimited and squashes the following commits:

aa3f115 [Davies Liu] fix tests and style
fb0d20d [Davies Liu] address comments
bfaae35 [Davies Liu] fix style
df93657 [Davies Liu] address comments and clean up
06727fd [Davies Liu] Merge branch 'master' of github.com:apache/spark into decimal_unlimited
4c28969 [Davies Liu] fix tests
8d783cc [Davies Liu] fix tests
788631c [Davies Liu] fix double with decimal in Union/except
1779bde [Davies Liu] fix scala style
c9c7c78 [Davies Liu] remove Decimal.Unlimited
2015-07-23 18:31:13 -07:00
Cheng Lian bebe3f7b45 [SPARK-9207] [SQL] Enables Parquet filter push-down by default
PARQUET-136 and PARQUET-173 have been fixed in parquet-mr 1.7.0. It's time to enable filter push-down by default now.

Author: Cheng Lian <lian@databricks.com>

Closes #7612 from liancheng/spark-9207 and squashes the following commits:

77e6b5e [Cheng Lian] Enables Parquet filter push-down by default
2015-07-23 17:49:33 -07:00
David Arroyo Cazorla 662d60db3f [SPARK-5447][SQL] Replace reference 'schema rdd' with DataFrame @rxin.
Author: David Arroyo Cazorla <darroyo@stratio.com>

Closes #7618 from darroyocazorla/master and squashes the following commits:

5f91379 [David Arroyo Cazorla] [SPARK-5447][SQL] Replace reference 'schema rdd' with DataFrame
2015-07-23 10:34:32 -07:00
Xiangrui Meng ecfb312767 [SPARK-9243] [Documentation] null -> zero in crosstab doc
We forgot to update doc. brkyvz

Author: Xiangrui Meng <meng@databricks.com>

Closes #7608 from mengxr/SPARK-9243 and squashes the following commits:

0ea3236 [Xiangrui Meng] null -> zero in crosstab doc
2015-07-23 10:32:11 -07:00
Reynold Xin fb36397b3c Revert "[SPARK-8579] [SQL] support arbitrary object in UnsafeRow"
Reverts ObjectPool. As it stands, it has a few problems:

1. ObjectPool doesn't work with spilling and memory accounting.
2. I don't think in the long run the idea of an object pool is what we want to support, since it essentially goes back to unmanaged memory, and creates pressure on GC, and is hard to account for the total in memory size.
3. The ObjectPool patch removed the specialized getters for strings and binary, and as a result, actually introduced branches when reading non primitive data types.

If we do want to support arbitrary user defined types in the future, I think we can just add an object array in UnsafeRow, rather than relying on indirect memory addressing through a pool. We also need to pick execution strategies that are optimized for those, rather than keeping a lot of unserialized JVM objects in memory during aggregation.

This is probably the hardest thing I had to revert in Spark, due to recent patches that also change the same part of the code. Would be great to get a careful look.

Author: Reynold Xin <rxin@databricks.com>

Closes #7591 from rxin/revert-object-pool and squashes the following commits:

01db0bc [Reynold Xin] Scala style.
eda89fc [Reynold Xin] Fixed describe.
2967118 [Reynold Xin] Fixed accessor for JoinedRow.
e3294eb [Reynold Xin] Merge branch 'master' into revert-object-pool
657855f [Reynold Xin] Temp commit.
c20f2c8 [Reynold Xin] Style fix.
fe37079 [Reynold Xin] Revert "[SPARK-8579] [SQL] support arbitrary object in UnsafeRow"
2015-07-23 01:51:34 -07:00
Josh Rosen b217230f2a [SPARK-9144] Remove DAGScheduler.runLocallyWithinThread and spark.localExecution.enabled
Spark has an option called spark.localExecution.enabled; according to the docs:

> Enables Spark to run certain jobs, such as first() or take() on the driver, without sending tasks to the cluster. This can make certain jobs execute very quickly, but may require shipping a whole partition of data to the driver.

This feature ends up adding quite a bit of complexity to DAGScheduler, especially in the runLocallyWithinThread method, but as far as I know nobody uses this feature (I searched the mailing list and haven't seen any recent mentions of the configuration nor stacktraces including the runLocally method). As a step towards scheduler complexity reduction, I propose that we remove this feature and all code related to it for Spark 1.5.

This pull request simply brings #7484 up to date.

Author: Josh Rosen <joshrosen@databricks.com>
Author: Reynold Xin <rxin@databricks.com>

Closes #7585 from rxin/remove-local-exec and squashes the following commits:

84bd10e [Reynold Xin] Python fix.
1d9739a [Reynold Xin] Merge pull request #7484 from JoshRosen/remove-localexecution
eec39fa [Josh Rosen] Remove allowLocal(); deprecate user-facing uses of it.
b0835dc [Josh Rosen] Remove local execution code in DAGScheduler
8975d96 [Josh Rosen] Remove local execution tests.
ffa8c9b [Josh Rosen] Remove documentation for configuration
2015-07-22 21:04:04 -07:00
Reynold Xin d71a13f475 [SPARK-9262][build] Treat Scala compiler warnings as errors
I've seen a few cases in the past few weeks that the compiler is throwing warnings that are caused by legitimate bugs. This patch upgrades warnings to errors, except deprecation warnings.

Note that ideally we should be able to mark deprecation warnings as errors as well. However, due to the lack of ability to suppress individual warning messages in the Scala compiler, we cannot do that (since we do need to access deprecated APIs in Hadoop).

Most of the work are done by ericl.

Author: Reynold Xin <rxin@databricks.com>
Author: Eric Liang <ekl@databricks.com>

Closes #7598 from rxin/warnings and squashes the following commits:

beb311b [Reynold Xin] Fixed tests.
542c031 [Reynold Xin] Fixed one more warning.
87c354a [Reynold Xin] Fixed all non-deprecation warnings.
78660ac [Eric Liang] first effort to fix warnings
2015-07-22 21:02:19 -07:00
Davies Liu e0b7ba59a1 [SPARK-9024] Unsafe HashJoin/HashOuterJoin/HashSemiJoin
This PR introduce unsafe version (using UnsafeRow) of HashJoin, HashOuterJoin and HashSemiJoin, including the broadcast one and shuffle one (except FullOuterJoin, which is better to be implemented using SortMergeJoin).

It use HashMap to store UnsafeRow right now, will change to use BytesToBytesMap for better performance (in another PR).

Author: Davies Liu <davies@databricks.com>

Closes #7480 from davies/unsafe_join and squashes the following commits:

6294b1e [Davies Liu] fix projection
10583f1 [Davies Liu] Merge branch 'master' of github.com:apache/spark into unsafe_join
dede020 [Davies Liu] fix test
84c9807 [Davies Liu] address comments
a05b4f6 [Davies Liu] support UnsafeRow in LeftSemiJoinBNL and BroadcastNestedLoopJoin
611d2ed [Davies Liu] Merge branch 'master' of github.com:apache/spark into unsafe_join
9481ae8 [Davies Liu] return UnsafeRow after join()
ca2b40f [Davies Liu] revert unrelated change
68f5cd9 [Davies Liu] Merge branch 'master' of github.com:apache/spark into unsafe_join
0f4380d [Davies Liu] ada a comment
69e38f5 [Davies Liu] Merge branch 'master' of github.com:apache/spark into unsafe_join
1a40f02 [Davies Liu] refactor
ab1690f [Davies Liu] address comments
60371f2 [Davies Liu] use UnsafeRow in SemiJoin
a6c0b7d [Davies Liu] Merge branch 'master' of github.com:apache/spark into unsafe_join
184b852 [Davies Liu] fix style
6acbb11 [Davies Liu] fix tests
95d0762 [Davies Liu] remove println
bea4a50 [Davies Liu] Unsafe HashJoin
2015-07-22 13:02:43 -07:00
Yin Huai c03299a18b [SPARK-4233] [SPARK-4367] [SPARK-3947] [SPARK-3056] [SQL] Aggregation Improvement
This is the first PR for the aggregation improvement, which is tracked by https://issues.apache.org/jira/browse/SPARK-4366 (umbrella JIRA). This PR contains work for its subtasks, SPARK-3056, SPARK-3947, SPARK-4233, and SPARK-4367.

This PR introduces a new code path for evaluating aggregate functions. This code path is guarded by `spark.sql.useAggregate2` and by default the value of this flag is true.

This new code path contains:
* A new aggregate function interface (`AggregateFunction2`) and 7 built-int aggregate functions based on this new interface (`AVG`, `COUNT`, `FIRST`, `LAST`, `MAX`, `MIN`, `SUM`)
* A UDAF interface (`UserDefinedAggregateFunction`) based on the new code path and two example UDAFs (`MyDoubleAvg` and `MyDoubleSum`).
* A sort-based aggregate operator (`Aggregate2Sort`) for the new aggregate function interface .
* A sort-based aggregate operator (`FinalAndCompleteAggregate2Sort`) for distinct aggregations (for distinct aggregations the query plan will use `Aggregate2Sort` and `FinalAndCompleteAggregate2Sort` together).

With this change, `spark.sql.useAggregate2` is `true`, the flow of compiling an aggregation query is:
1. Our analyzer looks up functions and returns aggregate functions built based on the old aggregate function interface.
2. When our planner is compiling the physical plan, it tries try to convert all aggregate functions to the ones built based on the new interface. The planner will fallback to the old code path if any of the following two conditions is true:
* code-gen is disabled.
* there is any function that cannot be converted (right now, Hive UDAFs).
* the schema of grouping expressions contain any complex data type.
* There are multiple distinct columns.

Right now, the new code path handles a single distinct column in the query (you can have multiple aggregate functions using that distinct column). For a query having a aggregate function with DISTINCT and regular aggregate functions, the generated plan will do partial aggregations for those regular aggregate function.

Thanks chenghao-intel for his initial work on it.

Author: Yin Huai <yhuai@databricks.com>
Author: Michael Armbrust <michael@databricks.com>

Closes #7458 from yhuai/UDAF and squashes the following commits:

7865f5e [Yin Huai] Put the catalyst expression in the comment of the generated code for it.
b04d6c8 [Yin Huai] Remove unnecessary change.
f1d5901 [Yin Huai] Merge remote-tracking branch 'upstream/master' into UDAF
35b0520 [Yin Huai] Use semanticEquals to replace grouping expressions in the output of the aggregate operator.
3b43b24 [Yin Huai] bug fix.
00eb298 [Yin Huai] Make it compile.
a3ca551 [Yin Huai] Merge remote-tracking branch 'upstream/master' into UDAF
e0afca3 [Yin Huai] Gracefully fallback to old aggregation code path.
8a8ac4a [Yin Huai] Merge remote-tracking branch 'upstream/master' into UDAF
88c7d4d [Yin Huai] Enable spark.sql.useAggregate2 by default for testing purpose.
dc96fd1 [Yin Huai] Many updates:
85c9c4b [Yin Huai] newline.
43de3de [Yin Huai] Merge remote-tracking branch 'upstream/master' into UDAF
c3614d7 [Yin Huai] Handle single distinct column.
68b8ee9 [Yin Huai] Support single distinct column set. WIP
3013579 [Yin Huai] Format.
d678aee [Yin Huai] Remove AggregateExpressionSuite.scala since our built-in aggregate functions will be based on AlgebraicAggregate and we need to have another way to test it.
e243ca6 [Yin Huai] Add aggregation iterators.
a101960 [Yin Huai] Change MyJavaUDAF to MyDoubleSum.
594cdf5 [Yin Huai] Change existing AggregateExpression to AggregateExpression1 and add an AggregateExpression as the common interface for both AggregateExpression1 and AggregateExpression2.
380880f [Yin Huai] Merge remote-tracking branch 'upstream/master' into UDAF
0a827b3 [Yin Huai] Add comments and doc. Move some classes to the right places.
a19fea6 [Yin Huai] Add UDAF interface.
262d4c4 [Yin Huai] Make it compile.
b2e358e [Yin Huai] Merge remote-tracking branch 'upstream/master' into UDAF
6edb5ac [Yin Huai] Format update.
70b169c [Yin Huai] Remove groupOrdering.
4721936 [Yin Huai] Add CheckAggregateFunction to extendedCheckRules.
d821a34 [Yin Huai] Cleanup.
32aea9c [Yin Huai] Merge remote-tracking branch 'upstream/master' into UDAF
5b46d41 [Yin Huai] Bug fix.
aff9534 [Yin Huai] Make Aggregate2Sort work with both algebraic AggregateFunctions and non-algebraic AggregateFunctions.
2857b55 [Yin Huai] Merge remote-tracking branch 'upstream/master' into UDAF
4435f20 [Yin Huai] Add ConvertAggregateFunction to HiveContext's analyzer.
1b490ed [Michael Armbrust] make hive test
8cfa6a9 [Michael Armbrust] add test
1b0bb3f [Yin Huai] Do not bind references in AlgebraicAggregate and use code gen for all places.
072209f [Yin Huai] Bug fix: Handle expressions in grouping columns that are not attribute references.
f7d9e54 [Michael Armbrust] Merge remote-tracking branch 'apache/master' into UDAF
39ee975 [Yin Huai] Code cleanup: Remove unnecesary AttributeReferences.
b7720ba [Yin Huai] Add an analysis rule to convert aggregate function to the new version.
5c00f3f [Michael Armbrust] First draft of codegen
6bbc6ba [Michael Armbrust] now with correct answers\!
f7996d0 [Michael Armbrust] Add AlgebraicAggregate
dded1c5 [Yin Huai] wip
2015-07-21 23:26:11 -07:00
Andrew Or f4785f5b82 [SPARK-9232] [SQL] Duplicate code in JSONRelation
Author: Andrew Or <andrew@databricks.com>

Closes #7576 from andrewor14/clean-up-json-relation and squashes the following commits:

ea80803 [Andrew Or] Clean up duplicate code
2015-07-21 23:00:13 -07:00
Reynold Xin a4c83cb1e4 [SPARK-9154][SQL] Rename formatString to format_string.
Also make format_string the canonical form, rather than printf.

Author: Reynold Xin <rxin@databricks.com>

Closes #7579 from rxin/format_strings and squashes the following commits:

53ee54f [Reynold Xin] Fixed unit tests.
52357e1 [Reynold Xin] Add format_string alias.
b40a42a [Reynold Xin] [SPARK-9154][SQL] Rename formatString to format_string.
2015-07-21 19:14:07 -07:00
Tarek Auel d4c7a7a364 [SPARK-9154] [SQL] codegen StringFormat
Jira: https://issues.apache.org/jira/browse/SPARK-9154

fixes bug of #7546

marmbrus I can't reopen the other PR, because I didn't closed it. Can you trigger Jenkins?

Author: Tarek Auel <tarek.auel@googlemail.com>

Closes #7571 from tarekauel/SPARK-9154 and squashes the following commits:

dcae272 [Tarek Auel] [SPARK-9154][SQL] build fix
1487602 [Tarek Auel] Merge remote-tracking branch 'upstream/master' into SPARK-9154
f512c5f [Tarek Auel] [SPARK-9154][SQL] build fix
a943d3e [Tarek Auel] [SPARK-9154] implicit input cast, added tests for null, support for null primitives
10b4de8 [Tarek Auel] [SPARK-9154][SQL] codegen removed fallback trait
cd8322b [Tarek Auel] [SPARK-9154][SQL] codegen string format
086caba [Tarek Auel] [SPARK-9154][SQL] codegen string format
2015-07-21 15:47:40 -07:00
Reynold Xin 60c0ce134d [SPARK-8906][SQL] Move all internal data source classes into execution.datasources.
This way, the sources package contains only public facing interfaces.

Author: Reynold Xin <rxin@databricks.com>

Closes #7565 from rxin/move-ds and squashes the following commits:

7661aff [Reynold Xin] Mima
9d5196a [Reynold Xin] Rearranged imports.
3dd7174 [Reynold Xin] [SPARK-8906][SQL] Move all internal data source classes into execution.datasources.
2015-07-21 11:56:38 -07:00
navis.ryu 9ba7c64dec [SPARK-8357] Fix unsafe memory leak on empty inputs in GeneratedAggregate
This patch fixes a managed memory leak in GeneratedAggregate.  The leak occurs when the unsafe aggregation path is used to perform grouped aggregation on an empty input; in this case, GeneratedAggregate allocates an UnsafeFixedWidthAggregationMap that is never cleaned up because `next()` is never called on the aggregate result iterator.

This patch fixes this by short-circuiting on empty inputs.

This patch is an updated version of #6810.

Closes #6810.

Author: navis.ryu <navis@apache.org>
Author: Josh Rosen <joshrosen@databricks.com>

Closes #7560 from JoshRosen/SPARK-8357 and squashes the following commits:

3486ce4 [Josh Rosen] Some minor cleanup
c649310 [Josh Rosen] Revert SparkPlan change:
3c7db0f [Josh Rosen] Merge remote-tracking branch 'origin/master' into SPARK-8357
adc8239 [Josh Rosen] Back out Projection changes.
c5419b3 [navis.ryu] addressed comments
143e1ef [navis.ryu] fixed format & added test for CCE case
735972f [navis.ryu] used new conf apis
1a02a55 [navis.ryu] Rolled-back test-conf cleanup & fixed possible CCE & added more tests
51178e8 [navis.ryu] addressed comments
4d326b9 [navis.ryu] fixed test fails
15c5afc [navis.ryu] added a test as suggested by JoshRosen
d396589 [navis.ryu] added comments
1b07556 [navis.ryu] [SPARK-8357] [SQL] Memory leakage on unsafe aggregation path with empty input
2015-07-21 11:52:52 -07:00
Michael Armbrust 87d890cc10 Revert "[SPARK-9154] [SQL] codegen StringFormat"
This reverts commit 7f072c3d5e.

Revert #7546

Author: Michael Armbrust <michael@databricks.com>

Closes #7570 from marmbrus/revert9154 and squashes the following commits:

ed2c32a [Michael Armbrust] Revert "[SPARK-9154] [SQL] codegen StringFormat"
2015-07-21 11:18:39 -07:00
Tarek Auel 7f072c3d5e [SPARK-9154] [SQL] codegen StringFormat
Jira: https://issues.apache.org/jira/browse/SPARK-9154

Author: Tarek Auel <tarek.auel@googlemail.com>

Closes #7546 from tarekauel/SPARK-9154 and squashes the following commits:

a943d3e [Tarek Auel] [SPARK-9154] implicit input cast, added tests for null, support for null primitives
10b4de8 [Tarek Auel] [SPARK-9154][SQL] codegen removed fallback trait
cd8322b [Tarek Auel] [SPARK-9154][SQL] codegen string format
086caba [Tarek Auel] [SPARK-9154][SQL] codegen string format
2015-07-21 09:58:16 -07:00
Yijie Shen be5c5d3741 [SPARK-9081] [SPARK-9168] [SQL] nanvl & dropna/fillna supporting nan as well
JIRA:
https://issues.apache.org/jira/browse/SPARK-9081
https://issues.apache.org/jira/browse/SPARK-9168

This PR target at two modifications:
1.  Change `isNaN` to return `false` on `null` input
2.  Make `dropna` and `fillna` to fill/drop NaN values as well
3.  Implement `nanvl`

Author: Yijie Shen <henry.yijieshen@gmail.com>

Closes #7523 from yjshen/fillna_dropna and squashes the following commits:

f0a51db [Yijie Shen] make coalesce untouched and implement nanvl
1d3e35f [Yijie Shen] make Coalesce aware of NaN in order to support fillna
2760cbc [Yijie Shen] change isNaN(null) to false as well as implement dropna
2015-07-21 08:25:50 -07:00
Pedro Rodriguez 560c658a74 [SPARK-8230][SQL] Add array/map size method
Pull Request for: https://issues.apache.org/jira/browse/SPARK-8230

Primary issue resolved is to implement array/map size for Spark SQL. Code is ready for review by a committer. Chen Hao is on the JIRA ticket, but I don't know his username on github, rxin is also on JIRA ticket.

Things to review:
1. Where to put added functions namespace wise, they seem to be part of a few operations on collections which includes `sort_array` and `array_contains`. Hence the name given `collectionOperations.scala` and `_collection_functions` in python.
2. In Python code, should it be in a `1.5.0` function array or in a collections array?
3. Are there any missing methods on the `Size` case class? Looks like many of these functions have generated Java code, is that also needed in this case?
4. Something else?

Author: Pedro Rodriguez <ski.rodriguez@gmail.com>
Author: Pedro Rodriguez <prodriguez@trulia.com>

Closes #7462 from EntilZha/SPARK-8230 and squashes the following commits:

9a442ae [Pedro Rodriguez] fixed functions and sorted __all__
9aea3bb [Pedro Rodriguez] removed imports from python docs
15d4bf1 [Pedro Rodriguez] Added null test case and changed to nullSafeCodeGen
d88247c [Pedro Rodriguez] removed python code
bd5f0e4 [Pedro Rodriguez] removed duplicate function from rebase/merge
59931b4 [Pedro Rodriguez] fixed compile bug instroduced when merging
c187175 [Pedro Rodriguez] updated code to add size to __all__ directly and removed redundent pretty print
130839f [Pedro Rodriguez] fixed failing test
aa9bade [Pedro Rodriguez] fix style
e093473 [Pedro Rodriguez] updated python code with docs, switched classes/traits implemented, added (failing) expression tests
0449377 [Pedro Rodriguez] refactored code to use better abstract classes/traits and implementations
9a1a2ff [Pedro Rodriguez] added unit tests for map size
2bfbcb6 [Pedro Rodriguez] added unit test for size
20df2b4 [Pedro Rodriguez] Finished working version of size function and added it to python
b503e75 [Pedro Rodriguez] First attempt at implementing size for maps and arrays
99a6a5c [Pedro Rodriguez] fixed failing test
cac75ac [Pedro Rodriguez] fix style
933d843 [Pedro Rodriguez] updated python code with docs, switched classes/traits implemented, added (failing) expression tests
42bb7d4 [Pedro Rodriguez] refactored code to use better abstract classes/traits and implementations
f9c3b8a [Pedro Rodriguez] added unit tests for map size
2515d9f [Pedro Rodriguez] added documentation
0e60541 [Pedro Rodriguez] added unit test for size
acf9853 [Pedro Rodriguez] Finished working version of size function and added it to python
84a5d38 [Pedro Rodriguez] First attempt at implementing size for maps and arrays
2015-07-21 00:53:20 -07:00
Cheng Hao 8c8f0ef59e [SPARK-8255] [SPARK-8256] [SQL] Add regex_extract/regex_replace
Add expressions `regex_extract` & `regex_replace`

Author: Cheng Hao <hao.cheng@intel.com>

Closes #7468 from chenghao-intel/regexp and squashes the following commits:

e5ea476 [Cheng Hao] minor update for documentation
ef96fd6 [Cheng Hao] update the code gen
72cf28f [Cheng Hao] Add more log for compilation error
4e11381 [Cheng Hao] Add regexp_replace / regexp_extract support
2015-07-21 00:48:07 -07:00
Cheng Lian d38c5029a2 [SPARK-9100] [SQL] Adds DataFrame reader/writer shortcut methods for ORC
This PR adds DataFrame reader/writer shortcut methods for ORC in both Scala and Python.

Author: Cheng Lian <lian@databricks.com>

Closes #7444 from liancheng/spark-9100 and squashes the following commits:

284d043 [Cheng Lian] Fixes PySpark test cases and addresses PR comments
e0b09fb [Cheng Lian] Adds DataFrame reader/writer shortcut methods for ORC
2015-07-21 15:08:44 +08:00
Josh Rosen 48f8fd46b3 [SPARK-9023] [SQL] Followup for #7456 (Efficiency improvements for UnsafeRows in Exchange)
This patch addresses code review feedback from #7456.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #7551 from JoshRosen/unsafe-exchange-followup and squashes the following commits:

76dbdf8 [Josh Rosen] Add comments + more methods to UnsafeRowSerializer
3d7a1f2 [Josh Rosen] Add writeToStream() method to UnsafeRow
2015-07-20 23:28:35 -07:00
Reynold Xin 67570beed5 [SPARK-9208][SQL] Remove variant of DataFrame string functions that accept column names.
It can be ambiguous whether that is a string literal or a column name.

cc marmbrus

Author: Reynold Xin <rxin@databricks.com>

Closes #7556 from rxin/str-exprs and squashes the following commits:

92afa83 [Reynold Xin] [SPARK-9208][SQL] Remove variant of DataFrame string functions that accept column names.
2015-07-20 22:48:13 -07:00
Josh Rosen c032b0bf92 [SPARK-8797] [SPARK-9146] [SPARK-9145] [SPARK-9147] Support NaN ordering and equality comparisons in Spark SQL
This patch addresses an issue where queries that sorted float or double columns containing NaN values could fail with "Comparison method violates its general contract!" errors from TimSort.  The root of this problem is that `NaN > anything`, `NaN == anything`, and `NaN < anything` all return `false`.

Per the design specified in SPARK-9079, we have decided that `NaN = NaN` should return true and that NaN should appear last when sorting in ascending order (i.e. it is larger than any other numeric value).

In addition to implementing these semantics, this patch also adds canonicalization of NaN values in UnsafeRow, which is necessary in order to be able to do binary equality comparisons on equal NaNs that might have different bit representations (see SPARK-9147).

Author: Josh Rosen <joshrosen@databricks.com>

Closes #7194 from JoshRosen/nan and squashes the following commits:

983d4fc [Josh Rosen] Merge remote-tracking branch 'origin/master' into nan
88bd73c [Josh Rosen] Fix Row.equals()
a702e2e [Josh Rosen] normalization -> canonicalization
a7267cf [Josh Rosen] Normalize NaNs in UnsafeRow
fe629ae [Josh Rosen] Merge remote-tracking branch 'origin/master' into nan
fbb2a29 [Josh Rosen] Fix NaN comparisons in BinaryComparison expressions
c1fd4fe [Josh Rosen] Fold NaN test into existing test framework
b31eb19 [Josh Rosen] Uncomment failing tests
7fe67af [Josh Rosen] Support NaN == NaN (SPARK-9145)
58bad2c [Josh Rosen] Revert "Compare rows' string representations to work around NaN incomparability."
fc6b4d2 [Josh Rosen] Update CodeGenerator
3998ef2 [Josh Rosen] Remove unused code
a2ba2e7 [Josh Rosen] Fix prefix comparision for NaNs
a30d371 [Josh Rosen] Compare rows' string representations to work around NaN incomparability.
6f03f85 [Josh Rosen] Fix bug in Double / Float ordering
42a1ad5 [Josh Rosen] Stop filtering NaNs in UnsafeExternalSortSuite
bfca524 [Josh Rosen] Change ordering so that NaN is maximum value.
8d7be61 [Josh Rosen] Update randomized test to use ScalaTest's assume()
b20837b [Josh Rosen] Add failing test for new NaN comparision ordering
5b88b2b [Josh Rosen] Fix compilation of CodeGenerationSuite
d907b5b [Josh Rosen] Merge remote-tracking branch 'origin/master' into nan
630ebc5 [Josh Rosen] Specify an ordering for NaN values.
9bf195a [Josh Rosen] Re-enable NaNs in CodeGenerationSuite to produce more regression tests
13fc06a [Josh Rosen] Add regression test for NaN sorting issue
f9efbb5 [Josh Rosen] Fix ORDER BY NULL
e7dc4fb [Josh Rosen] Add very generic test for ordering
7d5c13e [Josh Rosen] Add regression test for SPARK-8782 (ORDER BY NULL)
b55875a [Josh Rosen] Generate doubles and floats over entire possible range.
5acdd5c [Josh Rosen] Infinity and NaN are interesting.
ab76cbd [Josh Rosen] Move code to Catalyst package.
d2b4a4a [Josh Rosen] Add random data generator test utilities to Spark SQL.
2015-07-20 22:38:05 -07:00
Cheng Lian a1064df0ee [SPARK-8125] [SQL] Accelerates Parquet schema merging and partition discovery
This PR tries to accelerate Parquet schema discovery and `HadoopFsRelation` partition discovery.  The acceleration is done by the following means:

- Turning off schema merging by default

  Schema merging is not the most common case, but requires reading footers of all Parquet part-files and can be very slow.

- Avoiding `FileSystem.globStatus()` call when possible

  `FileSystem.globStatus()` may issue multiple synchronous RPC calls, and can be very slow (esp. on S3).  This PR adds `SparkHadoopUtil.globPathIfNecessary()`, which only issues RPC calls when the path contain glob-pattern specific character(s) (`{}[]*?\`).

  This is especially useful when converting a metastore Parquet table with lots of partitions, since Spark SQL adds all partition directories as the input paths, and currently we do a `globStatus` call on each input path sequentially.

- Listing leaf files in parallel when the number of input paths exceeds a threshold

  Listing leaf files is required by partition discovery.  Currently it is done on driver side, and can be slow when there are lots of (nested) directories, since each `FileSystem.listStatus()` call issues an RPC.  In this PR, we list leaf files in a BFS style, and resort to a Spark job once we found that the number of directories need to be listed exceed a threshold.

  The threshold is controlled by `SQLConf` option `spark.sql.sources.parallelPartitionDiscovery.threshold`, which defaults to 32.

- Discovering Parquet schema in parallel

  Currently, schema merging is also done on driver side, and needs to read footers of all part-files.  This PR uses a Spark job to do schema merging.  Together with task side metadata reading in Parquet 1.7.0, we never read any footers on driver side now.

Author: Cheng Lian <lian@databricks.com>

Closes #7396 from liancheng/accel-parquet and squashes the following commits:

5598efc [Cheng Lian] Uses ParquetInputFormat[InternalRow] instead of ParquetInputFormat[Row]
ff32cd0 [Cheng Lian] Excludes directories while listing leaf files
3c580f1 [Cheng Lian] Fixes test failure caused by making "mergeSchema" default to "false"
b1646aa [Cheng Lian] Should allow empty input paths
32e5f0d [Cheng Lian] Moves schema merging to executor side
2015-07-20 16:42:43 -07:00
Davies Liu 9f913c4fd6 [SPARK-9114] [SQL] [PySpark] convert returned object from UDF into internal type
This PR also remove the duplicated code between registerFunction and UserDefinedFunction.

cc JoshRosen

Author: Davies Liu <davies@databricks.com>

Closes #7450 from davies/fix_return_type and squashes the following commits:

e80bf9f [Davies Liu] remove debugging code
f94b1f6 [Davies Liu] fix mima
8f9c58b [Davies Liu] convert returned object from UDF into internal type
2015-07-20 12:14:47 -07:00
Reynold Xin c6fe9b4a17 [SQL] Remove space from DataFrame Scala/Java API.
I don't think this function is useful at all in Scala/Java, since users can easily compute n * space easily.

Author: Reynold Xin <rxin@databricks.com>

Closes #7530 from rxin/remove-space and squashes the following commits:

c147873 [Reynold Xin] [SQL] Remove space from DataFrame Scala/Java API.
2015-07-20 09:43:25 -07:00
Wenchen Fan 04db58ae30 [SPARK-9186][SQL] make deterministic describing the tree rather than the expression
Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7525 from cloud-fan/deterministic and squashes the following commits:

4189bfa [Wenchen Fan] make deterministic describing the tree rather than the expression
2015-07-20 09:42:18 -07:00
Josh Rosen 79ec07290d [SPARK-9023] [SQL] Efficiency improvements for UnsafeRows in Exchange
This pull request aims to improve the performance of SQL's Exchange operator when shuffling UnsafeRows.  It also makes several general efficiency improvements to Exchange.

Key changes:

- When performing hash partitioning, the old Exchange projected the partitioning columns into a new row then passed a `(partitioningColumRow: InternalRow, row: InternalRow)` pair into the shuffle. This is very inefficient because it ends up redundantly serializing the partitioning columns only to immediately discard them after the shuffle.  After this patch's changes, Exchange now shuffles `(partitionId: Int, row: InternalRow)` pairs.  This still isn't optimal, since we're still shuffling extra data that we don't need, but it's significantly more efficient than the old implementation; in the future, we may be able to further optimize this once we implement a new shuffle write interface that accepts non-key-value-pair inputs.
- Exchange's `compute()` method has been significantly simplified; the new code has less duplication and thus is easier to understand.
- When the Exchange's input operator produces UnsafeRows, Exchange will use a specialized `UnsafeRowSerializer` to serialize these rows.  This serializer is significantly more efficient since it simply copies the UnsafeRow's underlying bytes.  Note that this approach does not work for UnsafeRows that use the ObjectPool mechanism; I did not add support for this because we are planning to remove ObjectPool in the next few weeks.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #7456 from JoshRosen/unsafe-exchange and squashes the following commits:

7e75259 [Josh Rosen] Fix cast in SparkSqlSerializer2Suite
0082515 [Josh Rosen] Some additional comments + small cleanup to remove an unused parameter
a27cfc1 [Josh Rosen] Add missing newline
741973c [Josh Rosen] Add simple test of UnsafeRow shuffling in Exchange.
359c6a4 [Josh Rosen] Remove println() and add comments
93904e7 [Josh Rosen] Merge remote-tracking branch 'origin/master' into unsafe-exchange
8dd3ff2 [Josh Rosen] Exchange outputs UnsafeRows when its child outputs them
dd9c66d [Josh Rosen] Fix for copying logic
035af21 [Josh Rosen] Add logic for choosing when to use UnsafeRowSerializer
7876f31 [Josh Rosen] Merge remote-tracking branch 'origin/master' into unsafe-shuffle
cbea80b [Josh Rosen] Add UnsafeRowSerializer
0f2ac86 [Josh Rosen] Import ordering
3ca8515 [Josh Rosen] Big code simplification in Exchange
3526868 [Josh Rosen] Iniitial cut at removing shuffle on KV pairs
2015-07-19 23:41:28 -07:00
Jacky Li 972d8900a1 [SQL][DOC] Minor document fix in HadoopFsRelationProvider
Catch this while reading the code

Author: Jacky Li <lee.unreal@gmail.com>
Author: Jacky Li <jackylk@users.noreply.github.com>

Closes #7524 from jackylk/patch-11 and squashes the following commits:

b679011 [Jacky Li] fix doc
e10e211 [Jacky Li] [SQL] Minor document fix in HadoopFsRelationProvider
2015-07-19 23:19:17 -07:00
Wenchen Fan 930253e076 [SPARK-9185][SQL] improve code gen for mutable states to support complex initialization
Sometimes we need more than one step to initialize the mutable states in code gen like https://github.com/apache/spark/pull/7516

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7521 from cloud-fan/init and squashes the following commits:

2106445 [Wenchen Fan] improve code gen for mutable states
2015-07-19 22:42:44 -07:00
Reynold Xin 163e3f1df9 [SPARK-8241][SQL] string function: concat_ws.
I also changed the semantics of concat w.r.t. null back to the same behavior as Hive.
That is to say, concat now returns null if any input is null.

Author: Reynold Xin <rxin@databricks.com>

Closes #7504 from rxin/concat_ws and squashes the following commits:

83fd950 [Reynold Xin] Fixed type casting.
3ae85f7 [Reynold Xin] Write null better.
cdc7be6 [Reynold Xin] Added code generation for pure string mode.
a61c4e4 [Reynold Xin] Updated comments.
2d51406 [Reynold Xin] [SPARK-8241][SQL] string function: concat_ws.
2015-07-19 16:48:47 -07:00
Herman van Hovell 7a81245345 [SPARK-8638] [SQL] Window Function Performance Improvements - Cleanup
This PR contains a few clean-ups that are a part of SPARK-8638: a few style issues got fixed, and a few tests were moved.

Git commit message is wrong BTW :(...

Author: Herman van Hovell <hvanhovell@questtec.nl>

Closes #7513 from hvanhovell/SPARK-8638-cleanup and squashes the following commits:

4e69d08 [Herman van Hovell] Fixed Perfomance Regression for Shrinking Window Frames (+Rebase)
2015-07-19 16:29:50 -07:00
Reynold Xin 3427937ea2 [SQL] Make date/time functions more consistent with other database systems.
This pull request fixes some of the problems in #6981.

- Added date functions to `__all__` so they get exposed
- Rename day_of_month -> dayofmonth
- Rename day_in_year -> dayofyear
- Rename week_of_year -> weekofyear
- Removed "day" from Scala/Python API since it is ambiguous. Only leaving the alias in SQL.

Author: Reynold Xin <rxin@databricks.com>

This patch had conflicts when merged, resolved by
Committer: Reynold Xin <rxin@databricks.com>

Closes #7506 from rxin/datetime and squashes the following commits:

0cb24d9 [Reynold Xin] Export all functions in Python.
e44a4a0 [Reynold Xin] Removed day function from Scala and Python.
9c08fdc [Reynold Xin] [SQL] Make date/time functions more consistent with other database systems.
2015-07-19 01:17:22 -07:00
Herman van Hovell a9a0d0cebf [SPARK-8638] [SQL] Window Function Performance Improvements
## Description
Performance improvements for Spark Window functions. This PR will also serve as the basis for moving away from Hive UDAFs to Spark UDAFs. See JIRA tickets SPARK-8638 and SPARK-7712 for more information.

## Improvements
* Much better performance (10x) in running cases (e.g. BETWEEN UNBOUNDED PRECEDING AND CURRENT ROW) and UNBOUDED FOLLOWING cases. The current implementation in spark uses a sliding window approach in these cases. This means that an aggregate is maintained for every row, so space usage is N (N being the number of rows). This also means that all these aggregates all need to be updated separately, this takes N*(N-1)/2 updates. The running case differs from the Sliding case because we are only adding data to an aggregate function (no reset is required), we only need to maintain one aggregate (like in the UNBOUNDED PRECEDING AND UNBOUNDED case), update the aggregate for each row, and get the aggregate value after each update. This is what the new implementation does. This approach only uses 1 buffer, and only requires N updates; I am currently working on data with window sizes of 500-1000 doing running sums and this saves a lot of time. The CURRENT ROW AND UNBOUNDED FOLLOWING case also uses this approach and the fact that aggregate operations are communitative, there is one twist though it will process the input buffer in reverse.
* Fewer comparisons in the sliding case. The current implementation determines frame boundaries for every input row. The new implementation makes more use of the fact that the window is sorted, maintains the boundaries, and only moves them when the current row order changes. This is a minor improvement.
* A single Window node is able to process all types of Frames for the same Partitioning/Ordering. This saves a little time/memory spent buffering and managing partitions. This will be enabled in a follow-up PR.
* A lot of the staging code is moved from the execution phase to the initialization phase. Minor performance improvement, and improves readability of the execution code.

## Benchmarking
I have done a small benchmark using [on time performance](http://www.transtats.bts.gov) data of the month april. I have used the origin as a partioning key, as a result there is quite some variation in window sizes. The code for the benchmark can be found in the JIRA ticket. These are the results per Frame type:

Frame | Master | SPARK-8638
----- | ------ | ----------
Entire Frame | 2 s | 1 s
Sliding | 18 s | 1 s
Growing | 14 s | 0.9 s
Shrinking | 13 s | 1 s

Author: Herman van Hovell <hvanhovell@questtec.nl>

Closes #7057 from hvanhovell/SPARK-8638 and squashes the following commits:

3bfdc49 [Herman van Hovell] Fixed Perfomance Regression for Shrinking Window Frames (+Rebase)
2eb3b33 [Herman van Hovell] Corrected reverse range frame processing.
2cd2d5b [Herman van Hovell] Corrected reverse range frame processing.
b0654d7 [Herman van Hovell] Tests for exotic frame specifications.
e75b76e [Herman van Hovell] More docs, added support for reverse sliding range frames, and some reorganization of code.
1fdb558 [Herman van Hovell] Changed Data In HiveDataFrameWindowSuite.
ac2f682 [Herman van Hovell] Added a few more comments.
1938312 [Herman van Hovell] Added Documentation to the createBoundOrdering methods.
bb020e6 [Herman van Hovell] Major overhaul of Window operator.
2015-07-18 23:44:38 -07:00
Tarek Auel 83b682beec [SPARK-8199][SPARK-8184][SPARK-8183][SPARK-8182][SPARK-8181][SPARK-8180][SPARK-8179][SPARK-8177][SPARK-8178][SPARK-9115][SQL] date functions
Jira:
https://issues.apache.org/jira/browse/SPARK-8199
https://issues.apache.org/jira/browse/SPARK-8184
https://issues.apache.org/jira/browse/SPARK-8183
https://issues.apache.org/jira/browse/SPARK-8182
https://issues.apache.org/jira/browse/SPARK-8181
https://issues.apache.org/jira/browse/SPARK-8180
https://issues.apache.org/jira/browse/SPARK-8179
https://issues.apache.org/jira/browse/SPARK-8177
https://issues.apache.org/jira/browse/SPARK-8179
https://issues.apache.org/jira/browse/SPARK-9115

Regarding `day`and `dayofmonth` are both necessary?

~~I am going to add `Quarter` to this PR as well.~~ Done.

~~As soon as the Scala coding is reviewed and discussed, I'll add the python api.~~ Done

Author: Tarek Auel <tarek.auel@googlemail.com>
Author: Tarek Auel <tarek.auel@gmail.com>

Closes #6981 from tarekauel/SPARK-8199 and squashes the following commits:

f7b4c8c [Tarek Auel] [SPARK-8199] fixed bug in tests
bb567b6 [Tarek Auel] [SPARK-8199] fixed test
3e095ba [Tarek Auel] [SPARK-8199] style and timezone fix
256c357 [Tarek Auel] [SPARK-8199] code cleanup
5983dcc [Tarek Auel] [SPARK-8199] whitespace fix
6e0c78f [Tarek Auel] [SPARK-8199] removed setTimeZone in tests, according to cloud-fans comment in #7488
4afc09c [Tarek Auel] [SPARK-8199] concise leap year handling
ea6c110 [Tarek Auel] [SPARK-8199] fix after merging master
70238e0 [Tarek Auel] Merge branch 'master' into SPARK-8199
3c6ae2e [Tarek Auel] [SPARK-8199] removed binary search
fb98ba0 [Tarek Auel] [SPARK-8199] python docstring fix
cdfae27 [Tarek Auel] [SPARK-8199] cleanup & python docstring fix
746b80a [Tarek Auel] [SPARK-8199] build fix
0ad6db8 [Tarek Auel] [SPARK-8199] minor fix
523542d [Tarek Auel] [SPARK-8199] address comments
2259299 [Tarek Auel] [SPARK-8199] day_of_month alias
d01b977 [Tarek Auel] [SPARK-8199] python underscore
56c4a92 [Tarek Auel] [SPARK-8199] update python docu
e223bc0 [Tarek Auel] [SPARK-8199] refactoring
d6aa14e [Tarek Auel] [SPARK-8199] fixed Hive compatibility
b382267 [Tarek Auel] [SPARK-8199] fixed bug in day calculation; removed set TimeZone in HiveCompatibilitySuite for test purposes; removed Hive tests for second and minute, because we can cast '2015-03-18' to a timestamp and extract a minute/second from it
1b2e540 [Tarek Auel] [SPARK-8119] style fix
0852655 [Tarek Auel] [SPARK-8119] changed from ExpectsInputTypes to implicit casts
ec87c69 [Tarek Auel] [SPARK-8119] bug fixing and refactoring
1358cdc [Tarek Auel] Merge remote-tracking branch 'origin/master' into SPARK-8199
740af0e [Tarek Auel] implement date function using a calculation based on days
4fb66da [Tarek Auel] WIP: date functions on calculation only
1a436c9 [Tarek Auel] wip
f775f39 [Tarek Auel] fixed return type
ad17e96 [Tarek Auel] improved implementation
c42b444 [Tarek Auel] Removed merge conflict file
ccb723c [Tarek Auel] [SPARK-8199] style and fixed merge issues
10e4ad1 [Tarek Auel] Merge branch 'master' into date-functions-fast
7d9f0eb [Tarek Auel] [SPARK-8199] git renaming issue
f3e7a9f [Tarek Auel] [SPARK-8199] revert change in DataFrameFunctionsSuite
6f5d95c [Tarek Auel] [SPARK-8199] fixed year interval
d9f8ac3 [Tarek Auel] [SPARK-8199] implement fast track
7bc9d93 [Tarek Auel] Merge branch 'master' into SPARK-8199
5a105d9 [Tarek Auel] [SPARK-8199] rebase after #6985 got merged
eb6760d [Tarek Auel] Merge branch 'master' into SPARK-8199
f120415 [Tarek Auel] improved runtime
a8edebd [Tarek Auel] use Calendar instead of SimpleDateFormat
5fe74e1 [Tarek Auel] fixed python style
3bfac90 [Tarek Auel] fixed style
356df78 [Tarek Auel] rely on cast mechanism of Spark. Simplified implementation
02efc5d [Tarek Auel] removed doubled code
a5ea120 [Tarek Auel] added python api; changed test to be more meaningful
b680db6 [Tarek Auel] added codegeneration to all functions
c739788 [Tarek Auel] added support for quarter SPARK-8178
849fb41 [Tarek Auel] fixed stupid test
638596f [Tarek Auel] improved codegen
4d8049b [Tarek Auel] fixed tests and added type check
5ebb235 [Tarek Auel] resolved naming conflict
d0e2f99 [Tarek Auel] date functions
2015-07-18 22:48:05 -07:00
Reynold Xin 45d798c323 [SPARK-8278] Remove non-streaming JSON reader.
Author: Reynold Xin <rxin@databricks.com>

Closes #7501 from rxin/jsonrdd and squashes the following commits:

767ec55 [Reynold Xin] More Mima
51f456e [Reynold Xin] Mima exclude.
789cb80 [Reynold Xin] Fixed compilation error.
b4cf50d [Reynold Xin] [SPARK-8278] Remove non-streaming JSON reader.
2015-07-18 20:27:55 -07:00
Reynold Xin 9914b1b2c5 [SPARK-9150][SQL] Create CodegenFallback and Unevaluable trait
It is very hard to track which expressions have code gen implemented or not. This patch removes the default fallback gencode implementation from Expression, and moves that into a new trait called CodegenFallback. Each concrete expression needs to either implement code generation, or mix in CodegenFallback. This makes it very easy to track which expressions have code generation implemented already.

Additionally, this patch creates an Unevaluable trait that can be used to track expressions that don't support evaluation (e.g. Star).

Author: Reynold Xin <rxin@databricks.com>

Closes #7487 from rxin/codegenfallback and squashes the following commits:

14ebf38 [Reynold Xin] Fixed Conv
6c1c882 [Reynold Xin] Fixed Alias.
b42611b [Reynold Xin] [SPARK-9150][SQL] Create a trait to track code generation for expressions.
cb5c066 [Reynold Xin] Removed extra import.
39cbe40 [Reynold Xin] [SPARK-8240][SQL] string function: concat
2015-07-18 18:18:19 -07:00
Reynold Xin e16a19a39e [SPARK-9174][SQL] Add documentation for all public SQLConfs.
Author: Reynold Xin <rxin@databricks.com>

Closes #7500 from rxin/sqlconf and squashes the following commits:

a5726c8 [Reynold Xin] [SPARK-9174][SQL] Add documentation for all public SQLConfs.
2015-07-18 15:29:38 -07:00
Reynold Xin 6e1e2eba69 [SPARK-8240][SQL] string function: concat
Author: Reynold Xin <rxin@databricks.com>

Closes #7486 from rxin/concat and squashes the following commits:

5217d6e [Reynold Xin] Removed Hive's concat test.
f5cb7a3 [Reynold Xin] Concat is never nullable.
ae4e61f [Reynold Xin] Removed extra import.
fddcbbd [Reynold Xin] Fixed NPE.
22e831c [Reynold Xin] Added missing file.
57a2352 [Reynold Xin] [SPARK-8240][SQL] string function: concat
2015-07-18 14:07:56 -07:00
Wenchen Fan 86c50bf72c [SPARK-9171][SQL] add and improve tests for nondeterministic expressions
Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7496 from cloud-fan/tests and squashes the following commits:

0958f90 [Wenchen Fan] improve test for nondeterministic expressions
2015-07-18 11:58:53 -07:00
Wenchen Fan 1b4ff05538 [SPARK-9142][SQL] remove more self type in catalyst
a follow up of https://github.com/apache/spark/pull/7479.
The `TreeNode` is the root case of the requirement of `self: Product =>` stuff, so why not make `TreeNode` extend `Product`?

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7495 from cloud-fan/self-type and squashes the following commits:

8676af7 [Wenchen Fan] remove more self type
2015-07-18 11:13:49 -07:00
Josh Rosen b8aec6cd23 [SPARK-9143] [SQL] Add planner rule for automatically inserting Unsafe <-> Safe row format converters
Now that we have two different internal row formats, UnsafeRow and the old Java-object-based row format, we end up having to perform conversions between these two formats. These conversions should not be performed by the operators themselves; instead, the planner should be responsible for inserting appropriate format conversions when they are needed.

This patch makes the following changes:

- Add two new physical operators for performing row format conversions, `ConvertToUnsafe` and `ConvertFromUnsafe`.
- Add new methods to `SparkPlan` to allow operators to express whether they output UnsafeRows and whether they can handle safe or unsafe rows as inputs.
- Implement an `EnsureRowFormats` rule to automatically insert converter operators where necessary.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #7482 from JoshRosen/unsafe-converter-planning and squashes the following commits:

7450fa5 [Josh Rosen] Resolve conflicts in favor of choosing UnsafeRow
5220cce [Josh Rosen] Add roundtrip converter test
2bb8da8 [Josh Rosen] Add Union unsafe support + tests to bump up test coverage
6f79449 [Josh Rosen] Add even more assertions to execute()
08ce199 [Josh Rosen] Rename ConvertFromUnsafe -> ConvertToSafe
0e2d548 [Josh Rosen] Add assertion if operators' input rows are in different formats
cabb703 [Josh Rosen] Add tests for Filter
3b11ce3 [Josh Rosen] Add missing test file.
ae2195a [Josh Rosen] Fixes
0fef0f8 [Josh Rosen] Rename file.
d5f9005 [Josh Rosen] Finish writing EnsureRowFormats planner rule
b5df19b [Josh Rosen] Merge remote-tracking branch 'origin/master' into unsafe-converter-planning
9ba3038 [Josh Rosen] WIP
2015-07-18 11:08:18 -07:00
Yijie Shen 529a2c2d92 [SPARK-8280][SPARK-8281][SQL]Handle NaN, null and Infinity in math
JIRA:
https://issues.apache.org/jira/browse/SPARK-8280
https://issues.apache.org/jira/browse/SPARK-8281

Author: Yijie Shen <henry.yijieshen@gmail.com>

Closes #7451 from yijieshen/nan_null2 and squashes the following commits:

47a529d [Yijie Shen] style fix
63dee44 [Yijie Shen] handle log expressions similar to Hive
188be51 [Yijie Shen] null to nan in Math Expression
2015-07-17 17:33:19 -07:00
Daoyuan Wang 1707238601 [SPARK-7026] [SQL] fix left semi join with equi key and non-equi condition
When the `condition` extracted by `ExtractEquiJoinKeys` contain join Predicate for left semi join, we can not plan it as semiJoin. Such as

    SELECT * FROM testData2 x
    LEFT SEMI JOIN testData2 y
    ON x.b = y.b
    AND x.a >= y.a + 2
Condition `x.a >= y.a + 2` can not evaluate on table `x`, so it throw errors

Author: Daoyuan Wang <daoyuan.wang@intel.com>

Closes #5643 from adrian-wang/spark7026 and squashes the following commits:

cc09809 [Daoyuan Wang] refactor semijoin and add plan test
575a7c8 [Daoyuan Wang] fix notserializable
27841de [Daoyuan Wang] fix rebase
10bf124 [Daoyuan Wang] fix style
72baa02 [Daoyuan Wang] fix style
8e0afca [Daoyuan Wang] merge commits for rebase
2015-07-17 16:45:46 -07:00
Yijie Shen 15fc2ffe55 [SPARK-9080][SQL] add isNaN predicate expression
JIRA: https://issues.apache.org/jira/browse/SPARK-9080

cc rxin

Author: Yijie Shen <henry.yijieshen@gmail.com>

Closes #7464 from yijieshen/isNaN and squashes the following commits:

11ae039 [Yijie Shen] add isNaN in functions
666718e [Yijie Shen] add isNaN predicate expression
2015-07-17 15:49:31 -07:00
Reynold Xin b2aa490bb6 [SPARK-9142] [SQL] Removing unnecessary self types in Catalyst.
Just a small change to add Product type to the base expression/plan abstract classes, based on suggestions on #7434 and offline discussions.

Author: Reynold Xin <rxin@databricks.com>

Closes #7479 from rxin/remove-self-types and squashes the following commits:

e407ffd [Reynold Xin] [SPARK-9142][SQL] Removing unnecessary self types in Catalyst.
2015-07-17 15:02:13 -07:00
Liang-Chi Hsieh eba6a1af4c [SPARK-8945][SQL] Add add and subtract expressions for IntervalType
JIRA: https://issues.apache.org/jira/browse/SPARK-8945

Add add and subtract expressions for IntervalType.

Author: Liang-Chi Hsieh <viirya@appier.com>

This patch had conflicts when merged, resolved by
Committer: Reynold Xin <rxin@databricks.com>

Closes #7398 from viirya/interval_add_subtract and squashes the following commits:

acd1f1e [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into interval_add_subtract
5abae28 [Liang-Chi Hsieh] For comments.
6f5b72e [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into interval_add_subtract
dbe3906 [Liang-Chi Hsieh] For comments.
13a2fc5 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into interval_add_subtract
83ec129 [Liang-Chi Hsieh] Remove intervalMethod.
acfe1ab [Liang-Chi Hsieh] Fix scala style.
d3e9d0e [Liang-Chi Hsieh] Add add and subtract expressions for IntervalType.
2015-07-17 09:38:08 -07:00
zhichao.li 305e77cd83 [SPARK-8209[SQL]Add function conv
cc chenghao-intel  adrian-wang

Author: zhichao.li <zhichao.li@intel.com>

Closes #6872 from zhichao-li/conv and squashes the following commits:

6ef3b37 [zhichao.li] add unittest and comments
78d9836 [zhichao.li] polish dataframe api and add unittest
e2bace3 [zhichao.li] update to use ImplicitCastInputTypes
cbcad3f [zhichao.li] add function conv
2015-07-17 09:32:27 -07:00
Wenchen Fan 3f6d28a5ca [SPARK-9102] [SQL] Improve project collapse with nondeterministic expressions
Currently we will stop project collapse when the lower projection has nondeterministic expressions. However it's overkill sometimes, we should be able to optimize `df.select(Rand(10)).select('a)` to `df.select('a)`

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7445 from cloud-fan/non-deterministic and squashes the following commits:

0deaef6 [Wenchen Fan] Improve project collapse with nondeterministic expressions
2015-07-17 00:59:15 -07:00
Reynold Xin fec10f0c63 [SPARK-9085][SQL] Remove LeafNode, UnaryNode, BinaryNode from TreeNode.
This builds on #7433 but also removes LeafNode/UnaryNode. These are slightly more complicated to remove. I had to change some abstract classes to traits in order for it to work.

The problem with LeafNode/UnaryNode is that they are often mixed in at the end of an Expression, and then the toString function actually gets resolved to the ones defined in TreeNode, rather than in Expression.

Author: Reynold Xin <rxin@databricks.com>

Closes #7434 from rxin/remove-binary-unary-leaf-node and squashes the following commits:

9e8a4de [Reynold Xin] Generator should not be foldable.
3135a8b [Reynold Xin] SortOrder should not be foldable.
9c589cf [Reynold Xin] Fixed one more test case...
2225331 [Reynold Xin] Aggregate expressions should not be foldable.
16b5c90 [Reynold Xin] [SPARK-9085][SQL] Remove LeafNode, UnaryNode, BinaryNode from TreeNode.
2015-07-16 13:58:39 -07:00
Yijie Shen 43dac2c880 [SPARK-6941] [SQL] Provide a better error message to when inserting into RDD based table
JIRA: https://issues.apache.org/jira/browse/SPARK-6941

Author: Yijie Shen <henry.yijieshen@gmail.com>

Closes #7342 from yijieshen/SPARK-6941 and squashes the following commits:

f82cbe7 [Yijie Shen] reorder import
dd67e40 [Yijie Shen] resolve comments
09518af [Yijie Shen] fix import order in DataframeSuite
0c635d4 [Yijie Shen] make match more specific
9df388d [Yijie Shen] move check into PreWriteCheck
847ab20 [Yijie Shen] Detect insertion error in DataSourceStrategy
2015-07-16 10:52:09 -07:00
Jan Prach b536d5dc6c [SPARK-9015] [BUILD] Clean project import in scala ide
Cleanup maven for a clean import in scala-ide / eclipse.

* remove groovy plugin which is really not needed at all
* add-source from build-helper-maven-plugin is not needed as recent version of scala-maven-plugin do it automatically
* add lifecycle-mapping plugin to hide a few useless warnings from ide

Author: Jan Prach <jendap@gmail.com>

Closes #7375 from jendap/clean-project-import-in-scala-ide and squashes the following commits:

c4b4c0f [Jan Prach] fix whitespaces
5a83e07 [Jan Prach] Revert "remove java compiler warnings from java tests"
312007e [Jan Prach] scala-maven-plugin itself add scala sources by default
f47d856 [Jan Prach] remove spark-1.4-staging repository
c8a54db [Jan Prach] remove java compiler warnings from java tests
999a068 [Jan Prach] remove some maven warnings in scala ide
80fbdc5 [Jan Prach] remove groovy and gmavenplus plugin
2015-07-16 18:42:41 +01:00
Cheng Hao 42dea3acf9 [SPARK-8245][SQL] FormatNumber/Length Support for Expression
- `BinaryType` for `Length`
- `FormatNumber`

Author: Cheng Hao <hao.cheng@intel.com>

Closes #7034 from chenghao-intel/expression and squashes the following commits:

e534b87 [Cheng Hao] python api style issue
601bbf5 [Cheng Hao] add python API support
3ebe288 [Cheng Hao] update as feedback
52274f7 [Cheng Hao] add support for udf_format_number and length for binary
2015-07-15 21:47:21 -07:00
Reynold Xin b0645195d0 [SPARK-9086][SQL] Remove BinaryNode from TreeNode.
These traits are not super useful, and yet cause problems with toString in expressions due to the orders they are mixed in.

Author: Reynold Xin <rxin@databricks.com>

Closes #7433 from rxin/remove-binary-node and squashes the following commits:

1881f78 [Reynold Xin] [SPARK-9086][SQL] Remove BinaryNode from TreeNode.
2015-07-15 17:50:11 -07:00
Reynold Xin affbe329ae [SPARK-9071][SQL] MonotonicallyIncreasingID and SparkPartitionID should be marked as nondeterministic.
I also took the chance to more explicitly define the semantics of deterministic.

Author: Reynold Xin <rxin@databricks.com>

Closes #7428 from rxin/non-deterministic and squashes the following commits:

a760827 [Reynold Xin] [SPARK-9071][SQL] MonotonicallyIncreasingID and SparkPartitionID should be marked as nondeterministic.
2015-07-15 14:52:02 -07:00
zhichao.li a9385271a9 [SPARK-8221][SQL]Add pmod function
https://issues.apache.org/jira/browse/SPARK-8221

One concern is the result would be negative if the divisor is not positive( i.e pmod(7, -3) ), but the behavior is the same as hive.

Author: zhichao.li <zhichao.li@intel.com>

Closes #6783 from zhichao-li/pmod2 and squashes the following commits:

7083eb9 [zhichao.li] update to the latest type checking
d26dba7 [zhichao.li] add pmod
2015-07-15 10:43:38 -07:00
Wenchen Fan fa4ec3606a [SPARK-9020][SQL] Support mutable state in code gen expressions
We can keep expressions' mutable states in generated class(like `SpecificProjection`) as member variables, so that we can read and modify them inside codegened expressions.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7392 from cloud-fan/mutable-state and squashes the following commits:

eb3a221 [Wenchen Fan] fix order
73144d8 [Wenchen Fan] naming improvement
318f41d [Wenchen Fan] address more comments
d43b65d [Wenchen Fan] address comments
fd45c7a [Wenchen Fan] Support mutable state in code gen expressions
2015-07-15 10:31:39 -07:00
Liang-Chi Hsieh 6f6902597d [SPARK-8840] [SPARKR] Add float coercion on SparkR
JIRA: https://issues.apache.org/jira/browse/SPARK-8840

Currently the type coercion rules don't include float type. This PR simply adds it.

Author: Liang-Chi Hsieh <viirya@appier.com>

Closes #7280 from viirya/add_r_float_coercion and squashes the following commits:

c86dc0e [Liang-Chi Hsieh] For comments.
dbf0c1b [Liang-Chi Hsieh] Implicitly convert Double to Float based on provided schema.
733015a [Liang-Chi Hsieh] Add test case for DataFrame with float type.
30c2a40 [Liang-Chi Hsieh] Update test case.
52b5294 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into add_r_float_coercion
6f9159d [Liang-Chi Hsieh] Add another test case.
8db3244 [Liang-Chi Hsieh] schema also needs to support float. add test case.
0dcc992 [Liang-Chi Hsieh] Add float coercion on SparkR.
2015-07-15 09:48:33 -07:00
Yijie Shen f0e129740d [SPARK-8279][SQL]Add math function round
JIRA: https://issues.apache.org/jira/browse/SPARK-8279

Author: Yijie Shen <henry.yijieshen@gmail.com>

Closes #6938 from yijieshen/udf_round_3 and squashes the following commits:

07a124c [Yijie Shen] remove useless def children
392b65b [Yijie Shen] add negative scale test in DecimalSuite
61760ee [Yijie Shen] address reviews
302a78a [Yijie Shen] Add dataframe function test
31dfe7c [Yijie Shen] refactor round to make it readable
8c7a949 [Yijie Shen] rebase & inputTypes update
9555e35 [Yijie Shen] tiny style fix
d10be4a [Yijie Shen] use TypeCollection to specify wanted input and implicit cast
c3b9839 [Yijie Shen] rely on implict cast to handle string input
b0bff79 [Yijie Shen] make round's inner method's name more meaningful
9bd6930 [Yijie Shen] revert accidental change
e6f44c4 [Yijie Shen] refactor eval and genCode
1b87540 [Yijie Shen] modify checkInputDataTypes using foldable
5486b2d [Yijie Shen] DataFrame API modification
2077888 [Yijie Shen] codegen versioned eval
6cd9a64 [Yijie Shen] refactor Round's constructor
9be894e [Yijie Shen] add round functions in o.a.s.sql.functions
7c83e13 [Yijie Shen] more tests on round
56db4bb [Yijie Shen] Add decimal support to Round
7e163ae [Yijie Shen] style fix
653d047 [Yijie Shen] Add math function round
2015-07-14 23:30:41 -07:00
Reynold Xin f23a721c10 [SPARK-8993][SQL] More comprehensive type checking in expressions.
This patch makes the following changes:

1. ExpectsInputTypes only defines expected input types, but does not perform any implicit type casting.
2. ImplicitCastInputTypes is a new trait that defines both expected input types, as well as performs implicit type casting.
3. BinaryOperator has a new abstract function "inputType", which defines the expected input type for both left/right. Concrete BinaryOperator expressions no longer perform any implicit type casting.
4. For BinaryOperators, convert NullType (i.e. null literals) into some accepted type so BinaryOperators don't need to handle NullTypes.

TODOs needed: fix unit tests for error reporting.

I'm intentionally not changing anything in aggregate expressions because yhuai is doing a big refactoring on that right now.

Author: Reynold Xin <rxin@databricks.com>

Closes #7348 from rxin/typecheck and squashes the following commits:

8fcf814 [Reynold Xin] Fixed ordering of cases.
3bb63e7 [Reynold Xin] Style fix.
f45408f [Reynold Xin] Comment update.
aa7790e [Reynold Xin] Moved RemoveNullTypes into ImplicitTypeCasts.
438ea07 [Reynold Xin] space
d55c9e5 [Reynold Xin] Removes NullTypes.
360d124 [Reynold Xin] Fixed the rule.
fb66657 [Reynold Xin] Convert NullType into some accepted type for BinaryOperators.
2e22330 [Reynold Xin] Fixed unit tests.
4932d57 [Reynold Xin] Style fix.
d061691 [Reynold Xin] Rename existing ExpectsInputTypes -> ImplicitCastInputTypes.
e4727cc [Reynold Xin] BinaryOperator should not be doing implicit cast.
d017861 [Reynold Xin] Improve expression type checking.
2015-07-14 22:52:53 -07:00
Josh Rosen cc57d705e7 [SPARK-9050] [SQL] Remove unused newOrdering argument from Exchange (cleanup after SPARK-8317)
SPARK-8317 changed the SQL Exchange operator so that it no longer pushed sorting into Spark's shuffle layer, a change which allowed more efficient SQL-specific sorters to be used.

This patch performs some leftover cleanup based on those changes:

- Exchange's constructor should no longer accept a `newOrdering` since it's no longer used and no longer works as expected.
- `addOperatorsIfNecessary` looked at shuffle input's output ordering to decide whether to sort, but this is the wrong node to be examining: it needs to look at whether the post-shuffle node has the right ordering, since shuffling will not preserve row orderings.  Thanks to davies for spotting this.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #7407 from JoshRosen/SPARK-9050 and squashes the following commits:

e70be50 [Josh Rosen] No need to wrap line
e866494 [Josh Rosen] Refactor addOperatorsIfNecessary to make code clearer
2e467da [Josh Rosen] Remove `newOrdering` from Exchange.
2015-07-14 18:55:34 -07:00
Josh Rosen 11e5c37286 [SPARK-8962] Add Scalastyle rule to ban direct use of Class.forName; fix existing uses
This pull request adds a Scalastyle regex rule which fails the style check if `Class.forName` is used directly.  `Class.forName` always loads classes from the default / system classloader, but in a majority of cases, we should be using Spark's own `Utils.classForName` instead, which tries to load classes from the current thread's context classloader and falls back to the classloader which loaded Spark when the context classloader is not defined.

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Author: Josh Rosen <joshrosen@databricks.com>

Closes #7350 from JoshRosen/ban-Class.forName and squashes the following commits:

e3e96f7 [Josh Rosen] Merge remote-tracking branch 'origin/master' into ban-Class.forName
c0b7885 [Josh Rosen] Hopefully fix the last two cases
d707ba7 [Josh Rosen] Fix uses of Class.forName that I missed in my first cleanup pass
046470d [Josh Rosen] Merge remote-tracking branch 'origin/master' into ban-Class.forName
62882ee [Josh Rosen] Fix uses of Class.forName or add exclusion.
d9abade [Josh Rosen] Add stylechecker rule to ban uses of Class.forName
2015-07-14 16:08:17 -07:00
Daoyuan Wang 257236c3e1 [SPARK-6851] [SQL] function least/greatest follow up
This is a follow up of remaining comments from #6851

Author: Daoyuan Wang <daoyuan.wang@intel.com>

Closes #7387 from adrian-wang/udflgfollow and squashes the following commits:

6163e62 [Daoyuan Wang] add skipping null values
e8c2e09 [Daoyuan Wang] use seq
8362966 [Daoyuan Wang] pr6851 follow up
2015-07-14 01:09:33 -07:00
Daoyuan Wang 92540d22e4 [SPARK-8203] [SPARK-8204] [SQL] conditional function: least/greatest
chenghao-intel zhichao-li qiansl127

Author: Daoyuan Wang <daoyuan.wang@intel.com>

Closes #6851 from adrian-wang/udflg and squashes the following commits:

0f1bff2 [Daoyuan Wang] address comments from davis
7a6bdbb [Daoyuan Wang] add '.' for hex()
c1f6824 [Daoyuan Wang] add codegen, test for all types
ec625b0 [Daoyuan Wang] conditional function: least/greatest
2015-07-13 00:14:32 -07:00
Cheng Lian 3363088368 [SPARK-8961] [SQL] Makes BaseWriterContainer.outputWriterForRow accepts InternalRow instead of Row
This is a follow-up of [SPARK-8888] [1], which also aims to optimize writing dynamic partitions.

Three more changes can be made here:

1. Using `InternalRow` instead of `Row` in `BaseWriterContainer.outputWriterForRow`
2. Using `Cast` expressions to convert partition columns to strings, so that we can leverage code generation.
3. Replacing the FP-style `zip` and `map` calls with a faster imperative `while` loop.

[1]: https://issues.apache.org/jira/browse/SPARK-8888

Author: Cheng Lian <lian@databricks.com>

Closes #7331 from liancheng/spark-8961 and squashes the following commits:

b5ab9ae [Cheng Lian] Casts Java iterator to Scala iterator explicitly
719e63b [Cheng Lian] Makes BaseWriterContainer.outputWriterForRow accepts InternalRow instead of Row
2015-07-10 18:15:36 -07:00
Cheng Lian 857e325f30 [SPARK-8990] [SQL] SPARK-8990 DataFrameReader.parquet() should respect user specified options
Author: Cheng Lian <lian@databricks.com>

Closes #7347 from liancheng/spark-8990 and squashes the following commits:

045698c [Cheng Lian] SPARK-8990 DataFrameReader.parquet() should respect user specified options
2015-07-10 16:49:45 -07:00
Josh Rosen fb8807c9b0 [SPARK-7078] [SPARK-7079] Binary processing sort for Spark SQL
This patch adds a cache-friendly external sorter which operates on serialized bytes and uses this sorter to implement a new sort operator for Spark SQL and DataFrames.

### Overview of the new sorter

The new sorter design is inspired by [Alphasort](http://research.microsoft.com/pubs/68249/alphasort.doc) and implements a key-prefix optimization in order to improve the cache friendliness of the sort.  In naive sort implementations, the sorting algorithm operates on an array of record pointers.  To compare two records for ordering, the sorter must dereference these pointers, which likely involves random memory access, then compare the objects themselves.

![image](https://cloud.githubusercontent.com/assets/50748/8611390/3b1402ae-2675-11e5-8308-1a10bf347e6e.png)

In a key-prefix sort, the sort operates on an array which stores the record pointer alongside a prefix of the record's key. When comparing two records for ordering, the sorter first compares the the stored key prefixes. If the ordering can be determined from the key prefixes (i.e. the prefixes are unequal), then the sort can avoid directly comparing the records, avoiding random memory accesses and full record comparisons. For example, if we're sorting a list of strings then we can store the first 8 bytes of the UTF-8 encoded string as the key-prefix and can perform unsigned byte-at-a-time comparisons to determine the ordering of strings based on their prefixes, only resorting to full comparisons for strings that share a common prefix.  In cases where the sort key can fit entirely in the space allotted for the key prefix (e.g. the sorting key is an integer), we completely avoid direct record comparison.

In this patch's implementation of key-prefix sorting, our sorter's internal array stores a 64-bit long and 64-bit pointer for each record being sorted. The key prefixes are generated by the user when inserting records into the sorter, which uses a user-defined comparison function for comparing them.  The `PrefixComparators` object implements a set of comparators for many common types, including primitive numeric types and UTF-8 strings.

The actual sorting is implemented by `UnsafeInMemorySorter`.  Most consumers will not use this directly, but instead will use `UnsafeExternalSorter`, a class which implements a sort that can spill to disk in response to memory pressure.  Internally, `UnsafeExternalSorter` creates `UnsafeInMemorySorters` to perform sorting and uses `UnsafeSortSpillReader/Writer` to spill and read back runs of sorted records and `UnsafeSortSpillMerger` to merge multiple sorted spills into a single sorted iterator.  This external sorter integrates with Spark's existing ShuffleMemoryManager for controlling spilling.

Many parts of this sorter's design are based on / copied from the more specialized external sort implementation that I designed for the new UnsafeShuffleManager write path; see #5868 for more details on that patch.

### Sorting rows in Spark SQL

For now, `UnsafeExternalSorter` is only used by Spark SQL, which uses it to implement a new sort operator, `UnsafeExternalSort`.  This sort operator uses a SQL-specific class called `UnsafeExternalRowSorter` that configures an `UnsafeExternalSorter` to use prefix generators and comparators that operate on rows encoded in the UnsafeRow format that was designed for Project Tungsten.

I used some interesting unit-testing techniques to test this patch's SQL-specific components.  `UnsafeExternalSortSuite` uses the SQL random data generators introduced in #7176 to test the UnsafeSort operator with all atomic types both with and without nullability and in both ascending and descending sort orders.  `PrefixComparatorsSuite` contains a cool use of ScalaCheck + ScalaTest's `GeneratorDrivenPropertyChecks` in order to test UTF8String prefix comparison.

### Misc. additional improvements made in this patch

This patch made several miscellaneous improvements to related code in Spark SQL:

- The logic for selecting physical sort operator implementations, which was partially duplicated in both `Exchange` and `SparkStrategies, has now been consolidated into a `getSortOperator()` helper function in `SparkStrategies`.
- The `SparkPlanTest` unit testing helper trait has been extended with new methods for comparing the output produced by two different physical plans. This makes it easy to write tests which assert that two physical operator implementations should produce the same output.  I also added a method for disabling the implicit sorting of outputs prior to comparing them, a change which is necessary in order to be able to write proper SparkPlan tests for sort operators.

### Tasks deferred to followup patches

While most of this patch's features are reasonably well-tested and complete, there are a number of tasks that are intentionally being deferred to followup patches:

- Add tests which mock the ShuffleMemoryManager to check that memory pressure properly triggers spilling (there are examples of this type of test in #5868).
- Add tests to ensure that spill files are properly cleaned up after errors.  I'd like to do this in the context of a patch which introduces more general metrics for ensuring proper cleanup of tasks' temporary files; see https://issues.apache.org/jira/browse/SPARK-8966 for more details.
- Metrics integration: there are some open questions regarding how to track / report spill metrics for non-shuffle operations, so I've deferred most of the IO / shuffle metrics integration for now.
- Performance profiling.

<!-- Reviewable:start -->
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Author: Josh Rosen <joshrosen@databricks.com>

Closes #6444 from JoshRosen/sql-external-sort and squashes the following commits:

6beb467 [Josh Rosen] Remove a bunch of overloaded methods to avoid default args. issue
2bbac9c [Josh Rosen] Merge remote-tracking branch 'origin/master' into sql-external-sort
35dad9f [Josh Rosen] Make sortAnswers = false the default in SparkPlanTest
5135200 [Josh Rosen] Fix spill reading for large rows; add test
2f48777 [Josh Rosen] Add test and fix bug for sorting empty arrays
d1e28bc [Josh Rosen] Merge remote-tracking branch 'origin/master' into sql-external-sort
cd05866 [Josh Rosen] Fix scalastyle
3947fc1 [Josh Rosen] Merge remote-tracking branch 'origin/master' into sql-external-sort
d13ac55 [Josh Rosen] Hacky approach to copying of UnsafeRows for sort followed by limit.
845bea3 [Josh Rosen] Remove unnecessary zeroing of row conversion buffer
c56ec18 [Josh Rosen] Clean up final row copying code.
d31f180 [Josh Rosen] Re-enable NullType sorting test now that SPARK-8868 is fixed
844f4ca [Josh Rosen] Merge remote-tracking branch 'origin/master' into sql-external-sort
293f109 [Josh Rosen] Add missing license header.
f99a612 [Josh Rosen] Fix bugs in string prefix comparison.
9d00afc [Josh Rosen] Clean up prefix comparators for integral types
88aff18 [Josh Rosen] NULL_PREFIX has to be negative infinity for floating point types
613e16f [Josh Rosen] Test with larger data.
1d7ffaa [Josh Rosen] Somewhat hacky fix for descending sorts
08701e7 [Josh Rosen] Fix prefix comparison of null primitives.
b86e684 [Josh Rosen] Set global = true in UnsafeExternalSortSuite.
1c7bad8 [Josh Rosen] Make sorting of answers explicit in SparkPlanTest.checkAnswer().
b81a920 [Josh Rosen] Temporarily enable only the passing sort tests
5d6109d [Josh Rosen] Fix inconsistent handling / encoding of record lengths.
87b6ed9 [Josh Rosen] Fix critical issues in test which led to false negatives.
8d7fbe7 [Josh Rosen] Fixes to multiple spilling-related bugs.
82e21c1 [Josh Rosen] Force spilling in UnsafeExternalSortSuite.
88b72db [Josh Rosen] Test ascending and descending sort orders.
f27be09 [Josh Rosen] Fix tests by binding attributes.
0a79d39 [Josh Rosen] Revert "Undo part of a SparkPlanTest change in #7162 that broke my test."
7c3c864 [Josh Rosen] Undo part of a SparkPlanTest change in #7162 that broke my test.
9969c14 [Josh Rosen] Merge remote-tracking branch 'origin/master' into sql-external-sort
5822e6f [Josh Rosen] Fix test compilation issue
939f824 [Josh Rosen] Remove code gen experiment.
0dfe919 [Josh Rosen] Implement prefix sort for strings (albeit inefficiently).
66a813e [Josh Rosen] Prefix comparators for float and double
b310c88 [Josh Rosen] Integrate prefix comparators for Int and Long (others coming soon)
95058d9 [Josh Rosen] Add missing SortPrefixUtils file
4c37ba6 [Josh Rosen] Add tests for sorting on all primitive types.
6890863 [Josh Rosen] Fix memory leak on empty inputs.
d246e29 [Josh Rosen] Fix consideration of column types when choosing sort implementation.
6b156fb [Josh Rosen] Some WIP work on prefix comparison.
7f875f9 [Josh Rosen] Commit failing test demonstrating bug in handling objects in spills
41b8881 [Josh Rosen] Get UnsafeInMemorySorterSuite to pass (WIP)
90c2b6a [Josh Rosen] Update test name
6d6a1e6 [Josh Rosen] Centralize logic for picking sort operator implementations
9869ec2 [Josh Rosen] Clean up Exchange code a bit
82bb0ec [Josh Rosen] Fix IntelliJ complaint due to negated if condition
1db845a [Josh Rosen] Many more changes to harmonize with shuffle sorter
ebf9eea [Josh Rosen] Harmonization with shuffle's unsafe sorter
206bfa2 [Josh Rosen] Add some missing newlines at the ends of files
26c8931 [Josh Rosen] Back out some Hive changes that aren't needed anymore
62f0bb8 [Josh Rosen] Update to reflect SparkPlanTest changes
21d7d93 [Josh Rosen] Back out of BlockObjectWriter change
7eafecf [Josh Rosen] Port test to SparkPlanTest
d468a88 [Josh Rosen] Update for InternalRow refactoring
269cf86 [Josh Rosen] Back out SMJ operator change; isolate changes to selection of sort op.
1b841ca [Josh Rosen] WIP towards copying
b420a71 [Josh Rosen] Move most of the existing SMJ code into Java.
dfdb93f [Josh Rosen] SparkFunSuite change
73cc761 [Josh Rosen] Fix whitespace
9cc98f5 [Josh Rosen] Move more code to Java; fix bugs in UnsafeRowConverter length type.
c8792de [Josh Rosen] Remove some debug logging
dda6752 [Josh Rosen] Commit some missing code from an old git stash.
58f36d0 [Josh Rosen] Merge in a sketch of a unit test for the new sorter (now failing).
2bd8c9a [Josh Rosen] Import my original tests and get them to pass.
d5d3106 [Josh Rosen] WIP towards external sorter for Spark SQL.
2015-07-10 16:44:51 -07:00
Jonathan Alter e14b545d2d [SPARK-7977] [BUILD] Disallowing println
Author: Jonathan Alter <jonalter@users.noreply.github.com>

Closes #7093 from jonalter/SPARK-7977 and squashes the following commits:

ccd44cc [Jonathan Alter] Changed println to log in ThreadingSuite
7fcac3e [Jonathan Alter] Reverting to println in ThreadingSuite
10724b6 [Jonathan Alter] Changing some printlns to logs in tests
eeec1e7 [Jonathan Alter] Merge branch 'master' of github.com:apache/spark into SPARK-7977
0b1dcb4 [Jonathan Alter] More println cleanup
aedaf80 [Jonathan Alter] Merge branch 'master' of github.com:apache/spark into SPARK-7977
925fd98 [Jonathan Alter] Merge branch 'master' of github.com:apache/spark into SPARK-7977
0c16fa3 [Jonathan Alter] Replacing some printlns with logs
45c7e05 [Jonathan Alter] Merge branch 'master' of github.com:apache/spark into SPARK-7977
5c8e283 [Jonathan Alter] Allowing println in audit-release examples
5b50da1 [Jonathan Alter] Allowing printlns in example files
ca4b477 [Jonathan Alter] Merge branch 'master' of github.com:apache/spark into SPARK-7977
83ab635 [Jonathan Alter] Fixing new printlns
54b131f [Jonathan Alter] Merge branch 'master' of github.com:apache/spark into SPARK-7977
1cd8a81 [Jonathan Alter] Removing some unnecessary comments and printlns
b837c3a [Jonathan Alter] Disallowing println
2015-07-10 11:34:01 +01:00
Cheng Lian 2d45571fcb [SPARK-8959] [SQL] [HOTFIX] Removes parquet-thrift and libthrift dependencies
These two dependencies were introduced in #7231 to help testing Parquet compatibility with `parquet-thrift`. However, they somehow crash the Scala compiler in Maven builds.

This PR fixes this issue by:

1. Removing these two dependencies, and
2. Instead of generating the testing Parquet file programmatically, checking in an actual testing Parquet file generated by `parquet-thrift` as a test resource.

This is just a quick fix to bring back Maven builds. Need to figure out the root case as binary Parquet files are harder to maintain.

Author: Cheng Lian <lian@databricks.com>

Closes #7330 from liancheng/spark-8959 and squashes the following commits:

cf69512 [Cheng Lian] Brings back Maven builds
2015-07-09 17:09:16 -07:00
Davies Liu c9e2ef52bb [SPARK-7902] [SPARK-6289] [SPARK-8685] [SQL] [PYSPARK] Refactor of serialization for Python DataFrame
This PR fix the long standing issue of serialization between Python RDD and DataFrame, it change to using a customized Pickler for InternalRow to enable customized unpickling (type conversion, especially for UDT), now we can support UDT for UDF, cc mengxr .

There is no generated `Row` anymore.

Author: Davies Liu <davies@databricks.com>

Closes #7301 from davies/sql_ser and squashes the following commits:

81bef71 [Davies Liu] address comments
e9217bd [Davies Liu] add regression tests
db34167 [Davies Liu] Refactor of serialization for Python DataFrame
2015-07-09 14:43:38 -07:00
Cheng Hao 0b0b9ceaf7 [SPARK-8247] [SPARK-8249] [SPARK-8252] [SPARK-8254] [SPARK-8257] [SPARK-8258] [SPARK-8259] [SPARK-8261] [SPARK-8262] [SPARK-8253] [SPARK-8260] [SPARK-8267] [SQL] Add String Expressions
Author: Cheng Hao <hao.cheng@intel.com>

Closes #6762 from chenghao-intel/str_funcs and squashes the following commits:

b09a909 [Cheng Hao] update the code as feedback
7ebbf4c [Cheng Hao] Add more string expressions
2015-07-09 11:11:34 -07:00
Davies Liu 23448a9e98 [SPARK-8931] [SQL] Fallback to interpreted evaluation if failed to compile in codegen
Exception will not be catched during tests.

cc marmbrus rxin

Author: Davies Liu <davies@databricks.com>

Closes #7309 from davies/fallback and squashes the following commits:

969a612 [Davies Liu] throw exception during tests
f844f77 [Davies Liu] fallback
a3091bc [Davies Liu] Merge branch 'master' of github.com:apache/spark into fallback
364a0d6 [Davies Liu] fallback to interpret mode if failed to compile
2015-07-09 09:20:16 -07:00
Weizhong Lin 851e247caa [SPARK-8928] [SQL] Makes CatalystSchemaConverter sticking to 1.4.x- when handling Parquet LISTs in compatible mode
This PR is based on #7209 authored by Sephiroth-Lin.

Author: Weizhong Lin <linweizhong@huawei.com>

Closes #7314 from liancheng/spark-8928 and squashes the following commits:

75267fe [Cheng Lian] Makes CatalystSchemaConverter sticking to 1.4.x- when handling LISTs in compatible mode
2015-07-08 22:19:19 -07:00
Cheng Lian c056484c07 Revert "[SPARK-8928] [SQL] Makes CatalystSchemaConverter sticking to 1.4.x- when handling Parquet LISTs in compatible mode"
This reverts commit 3dab0da429.
2015-07-08 22:14:38 -07:00
Cheng Lian 3dab0da429 [SPARK-8928] [SQL] Makes CatalystSchemaConverter sticking to 1.4.x- when handling Parquet LISTs in compatible mode
This PR is based on #7209 authored by Sephiroth-Lin.

Author: Weizhong Lin <linweizhong@huawei.com>

Closes #7304 from liancheng/spark-8928 and squashes the following commits:

75267fe [Cheng Lian] Makes CatalystSchemaConverter sticking to 1.4.x- when handling LISTs in compatible mode
2015-07-08 22:09:14 -07:00
Andrew Or 47ef423f86 [SPARK-8910] Fix MiMa flaky due to port contention issue
Due to the way MiMa works, we currently start a `SQLContext` pretty early on. This causes us to start a `SparkUI` that attempts to bind to port 4040. Because many tests run in parallel on the Jenkins machines, this  causes port contention sometimes and fails the MiMa tests.

Note that we already disabled the SparkUI for scalatests. However, the MiMa test is run before we even have a chance to load the default scalatest settings, so we need to explicitly disable the UI ourselves.

Author: Andrew Or <andrew@databricks.com>

Closes #7300 from andrewor14/mima-flaky and squashes the following commits:

b55a547 [Andrew Or] Do not enable SparkUI during tests
2015-07-08 20:29:08 -07:00
Yijie Shen a290814877 [SPARK-8866][SQL] use 1us precision for timestamp type
JIRA: https://issues.apache.org/jira/browse/SPARK-8866

Author: Yijie Shen <henry.yijieshen@gmail.com>

Closes #7283 from yijieshen/micro_timestamp and squashes the following commits:

dc735df [Yijie Shen] update CastSuite to avoid round error
714eaea [Yijie Shen] add timestamp_udf into blacklist due to precision lose
c3ca2f4 [Yijie Shen] fix unhandled case in CurrentTimestamp
8d4aa6b [Yijie Shen] use 1us precision for timestamp type
2015-07-08 20:20:17 -07:00
Davies Liu 74d8d3d928 [SPARK-8450] [SQL] [PYSARK] cleanup type converter for Python DataFrame
This PR fixes the converter for Python DataFrame, especially for DecimalType

Closes #7106

Author: Davies Liu <davies@databricks.com>

Closes #7131 from davies/decimal_python and squashes the following commits:

4d3c234 [Davies Liu] Merge branch 'master' of github.com:apache/spark into decimal_python
20531d6 [Davies Liu] Merge branch 'master' of github.com:apache/spark into decimal_python
7d73168 [Davies Liu] fix conflit
6cdd86a [Davies Liu] Merge branch 'master' of github.com:apache/spark into decimal_python
7104e97 [Davies Liu] improve type infer
9cd5a21 [Davies Liu] run python tests with SPARK_PREPEND_CLASSES
829a05b [Davies Liu] fix UDT in python
c99e8c5 [Davies Liu] fix mima
c46814a [Davies Liu] convert decimal for Python DataFrames
2015-07-08 18:22:53 -07:00
Kousuke Saruta 2a4f88b6c1 [SPARK-8914][SQL] Remove RDDApi
As rxin suggested in #7298 , we should consider to remove `RDDApi`.

Author: Kousuke Saruta <sarutak@oss.nttdata.co.jp>

Closes #7302 from sarutak/remove-rddapi and squashes the following commits:

e495d35 [Kousuke Saruta] Fixed mima
cb7ebb9 [Kousuke Saruta] Removed overriding RDDApi
2015-07-08 18:09:39 -07:00
Cheng Lian 4ffc27caaf [SPARK-6123] [SPARK-6775] [SPARK-6776] [SQL] Refactors Parquet read path for interoperability and backwards-compatibility
This PR is a follow-up of #6617 and is part of [SPARK-6774] [2], which aims to ensure interoperability and backwards-compatibility for Spark SQL Parquet support.  And this one fixes the read path.  Now Spark SQL is expected to be able to read legacy Parquet data files generated by most (if not all) common libraries/tools like parquet-thrift, parquet-avro, and parquet-hive. However, we still need to refactor the write path to write standard Parquet LISTs and MAPs ([SPARK-8848] [4]).

### Major changes

1. `CatalystConverter` class hierarchy refactoring

   - Replaces `CatalystConverter` trait with a much simpler `ParentContainerUpdater`.

     Now instead of extending the original `CatalystConverter` trait, every converter class accepts an updater which is responsible for propagating the converted value to some parent container. For example, appending array elements to a parent array buffer, appending a key-value pairs to a parent mutable map, or setting a converted value to some specific field of a parent row. Root converter doesn't have a parent and thus uses a `NoopUpdater`.

     This simplifies the design since converters don't need to care about details of their parent converters anymore.

   - Unifies `CatalystRootConverter`, `CatalystGroupConverter` and `CatalystPrimitiveRowConverter` into `CatalystRowConverter`

     Specifically, now all row objects are represented by `SpecificMutableRow` during conversion.

   - Refactors `CatalystArrayConverter`, and removes `CatalystArrayContainsNullConverter` and `CatalystNativeArrayConverter`

     `CatalystNativeArrayConverter` was probably designed with the intention of avoiding boxing costs. However, the way it uses Scala generics actually doesn't achieve this goal.

     The new `CatalystArrayConverter` handles both nullable and non-nullable array elements in a consistent way.

   - Implements backwards-compatibility rules in `CatalystArrayConverter`

     When Parquet records are being converted, schema of Parquet files should have already been verified. So we only need to care about the structure rather than field names in the Parquet schema. Since all map objects represented in legacy systems have the same structure as the standard one (see [backwards-compatibility rules for MAP] [1]), we only need to deal with LIST (namely array) in `CatalystArrayConverter`.

2. Requested columns handling

   When specifying requested columns in `RowReadSupport`, we used to use a Parquet `MessageType` converted from a Catalyst `StructType` which contains all requested columns.  This is not preferable when taking compatibility and interoperability into consideration.  Because the actual Parquet file may have different physical structure from the converted schema.

   In this PR, the schema for requested columns is constructed using the following method:

   - For a column that exists in the target Parquet file, we extract the column type by name from the full file schema, and construct a single-field `MessageType` for that column.
   - For a column that doesn't exist in the target Parquet file, we create a single-field `StructType` and convert it to a `MessageType` using `CatalystSchemaConverter`.
   - Unions all single-field `MessageType`s into a full schema containing all requested fields

   With this change, we also fix [SPARK-6123] [3] by validating the global schema against each individual Parquet part-files.

### Testing

This PR also adds compatibility tests for parquet-avro, parquet-thrift, and parquet-hive. Please refer to `README.md` under `sql/core/src/test` for more information about these tests. To avoid build time code generation and adding extra complexity to the build system, Java code generated from testing Thrift schema and Avro IDL is also checked in.

[1]: https://github.com/apache/incubator-parquet-format/blob/master/LogicalTypes.md#backward-compatibility-rules-1
[2]: https://issues.apache.org/jira/browse/SPARK-6774
[3]: https://issues.apache.org/jira/browse/SPARK-6123
[4]: https://issues.apache.org/jira/browse/SPARK-8848

Author: Cheng Lian <lian@databricks.com>

Closes #7231 from liancheng/spark-6776 and squashes the following commits:

360fe18 [Cheng Lian] Adds ParquetHiveCompatibilitySuite
c6fbc06 [Cheng Lian] Removes WIP file committed by mistake
b8c1295 [Cheng Lian] Excludes the whole parquet package from MiMa
598c3e8 [Cheng Lian] Adds extra Maven repo for hadoop-lzo, which is a transitive dependency of parquet-thrift
926af87 [Cheng Lian] Simplifies Parquet compatibility test suites
7946ee1 [Cheng Lian] Fixes Scala styling issues
3d7ab36 [Cheng Lian] Fixes .rat-excludes
a8f13bb [Cheng Lian] Using Parquet writer API to do compatibility tests
f2208cd [Cheng Lian] Adds README.md for Thrift/Avro code generation
1d390aa [Cheng Lian] Adds parquet-thrift compatibility test
440f7b3 [Cheng Lian] Adds generated files to .rat-excludes
13b9121 [Cheng Lian] Adds ParquetAvroCompatibilitySuite
06cfe9d [Cheng Lian] Adds comments about TimestampType handling
a099d3e [Cheng Lian] More comments
0cc1b37 [Cheng Lian] Fixes MiMa checks
884d3e6 [Cheng Lian] Fixes styling issue and reverts unnecessary changes
802cbd7 [Cheng Lian] Fixes bugs related to schema merging and empty requested columns
38fe1e7 [Cheng Lian] Adds explicit return type
7fb21f1 [Cheng Lian] Reverts an unnecessary debugging change
1781dff [Cheng Lian] Adds test case for SPARK-8811
6437d4b [Cheng Lian] Assembles requested schema from Parquet file schema
bcac49f [Cheng Lian] Removes the 16-byte restriction of decimals
a74fb2c [Cheng Lian] More comments
0525346 [Cheng Lian] Removes old Parquet record converters
03c3bd9 [Cheng Lian] Refactors Parquet read path to implement backwards-compatibility rules
2015-07-08 15:51:01 -07:00
Cheolsoo Park 00b265f12c [SPARK-8908] [SQL] Add () to distinct definition in dataframe
Adding `()` to the definition of `distinct` in DataFrame allows distinct to be called with parentheses, which is consistent with `dropDuplicates`.

Author: Cheolsoo Park <cheolsoop@netflix.com>

Closes #7298 from piaozhexiu/SPARK-8908 and squashes the following commits:

7f0d923 [Cheolsoo Park] Add () to distinct definition in dataframe
2015-07-08 15:18:24 -07:00
Reynold Xin f61c989b40 [SPARK-8888][SQL] Use java.util.HashMap in DynamicPartitionWriterContainer.
Just a baby step towards making it more efficient.

Author: Reynold Xin <rxin@databricks.com>

Closes #7282 from rxin/SPARK-8888 and squashes the following commits:

3da51ae [Reynold Xin] [SPARK-8888][SQL] Use java.util.HashMap in DynamicPartitionWriterContainer.
2015-07-08 10:56:31 -07:00
Wenchen Fan 0ba98c04c7 [SPARK-8753][SQL] Create an IntervalType data type
We need a new data type to represent time intervals. Because we can't determine how many days in a month, so we need 2 values for interval: a int `months`, a long `microseconds`.

The interval literal syntax looks like:
`interval 3 years -4 month 4 weeks 3 second`

Because we use number of 100ns as value of `TimestampType`, so it may not makes sense to support nano second unit.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7226 from cloud-fan/interval and squashes the following commits:

632062d [Wenchen Fan] address comments
ac348c3 [Wenchen Fan] use case class
0342d2e [Wenchen Fan] use array byte
df9256c [Wenchen Fan] fix style
fd6f18a [Wenchen Fan] address comments
1856af3 [Wenchen Fan] support interval type
2015-07-08 10:51:32 -07:00
Davies Liu 74335b3107 [SPARK-5707] [SQL] fix serialization of generated projection
Author: Davies Liu <davies@databricks.com>

Closes #7272 from davies/fix_projection and squashes the following commits:

075ef76 [Davies Liu] fix codegen with BroadcastHashJion
2015-07-08 10:43:00 -07:00
Liang-Chi Hsieh 6722aca809 [SPARK-8785] [SQL] Improve Parquet schema merging
JIRA: https://issues.apache.org/jira/browse/SPARK-8785

Currently, the parquet schema merging (`ParquetRelation2.readSchema`) may spend much time to merge duplicate schema. We can select only non duplicate schema and merge them later.

Author: Liang-Chi Hsieh <viirya@gmail.com>
Author: Liang-Chi Hsieh <viirya@appier.com>

Closes #7182 from viirya/improve_parquet_merging and squashes the following commits:

5cf934f [Liang-Chi Hsieh] Refactor it to make it faster.
f3411ea [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into improve_parquet_merging
a63c3ff [Liang-Chi Hsieh] Improve Parquet schema merging.
2015-07-08 10:09:50 -07:00
Cheng Hao 351a36d0c5 [SPARK-8883][SQL]Remove the OverrideFunctionRegistry
Remove the `OverrideFunctionRegistry` from the Spark SQL, as the subclasses of `FunctionRegistry` have their own way to the delegate to the right underlying `FunctionRegistry`.

Author: Cheng Hao <hao.cheng@intel.com>

Closes #7260 from chenghao-intel/override and squashes the following commits:

164d093 [Cheng Hao] enable the function registry
2ca8459 [Cheng Hao] remove the OverrideFunctionRegistry
2015-07-08 00:10:24 -07:00
Yin Huai 68a4a16971 [SPARK-8868] SqlSerializer2 can go into infinite loop when row consists only of NullType columns
https://issues.apache.org/jira/browse/SPARK-8868

Author: Yin Huai <yhuai@databricks.com>

Closes #7262 from yhuai/SPARK-8868 and squashes the following commits:

cb58780 [Yin Huai] Andrew's comment.
e456857 [Yin Huai] Josh's comments.
5122e65 [Yin Huai] If types of all columns are NullTypes, do not use serializer2.
2015-07-07 18:36:35 -07:00
Reynold Xin 770ff1025e [SPARK-8876][SQL] Remove InternalRow type alias in expressions package.
The type alias was there because initially when I moved Row around, I didn't want to do massive changes to the expression code. But now it should be pretty easy to just remove it. One less concept to worry about.

Author: Reynold Xin <rxin@databricks.com>

Closes #7270 from rxin/internalrow and squashes the following commits:

72fc842 [Reynold Xin] [SPARK-8876][SQL] Remove InternalRow type alias in expressions package.
2015-07-07 17:40:14 -07:00
Liang-Chi Hsieh d4d6d31db5 [SPARK-8463][SQL] Use DriverRegistry to load jdbc driver at writing path
JIRA: https://issues.apache.org/jira/browse/SPARK-8463

Currently, at the reading path, `DriverRegistry` is used to load needed jdbc driver at executors. However, at the writing path, we also need `DriverRegistry` to load jdbc driver.

Author: Liang-Chi Hsieh <viirya@gmail.com>

Closes #6900 from viirya/jdbc_write_driver and squashes the following commits:

16cd04b [Liang-Chi Hsieh] Use DriverRegistry to load jdbc driver at writing path.
2015-07-06 17:16:44 -07:00
animesh 09a06418de [SPARK-8072] [SQL] Better AnalysisException for writing DataFrame with identically named columns
Adding a function checkConstraints which will check for the constraints to be applied on the dataframe / dataframe schema. Function called before storing the dataframe to an external storage. Function added in the corresponding datasource API.
cc rxin marmbrus

Author: animesh <animesh@apache.spark>

This patch had conflicts when merged, resolved by
Committer: Michael Armbrust <michael@databricks.com>

Closes #7013 from animeshbaranawal/8072 and squashes the following commits:

f70dd0e [animesh] Change IO exception to Analysis Exception
fd45e1b [animesh] 8072: Fix Style Issues
a8a964f [animesh] 8072: Improving on previous commits
3cc4d2c [animesh] Fix Style Issues
1a89115 [animesh] Fix Style Issues
98b4399 [animesh] 8072 : Moved the exception handling to ResolvedDataSource specific to parquet format
7c3d928 [animesh] 8072: Adding check to DataFrameWriter.scala
2015-07-06 16:39:49 -07:00
Daoyuan Wang 132e7fca12 [MINOR] [SQL] remove unused code in Exchange
Author: Daoyuan Wang <daoyuan.wang@intel.com>

Closes #7234 from adrian-wang/exchangeclean and squashes the following commits:

b093ec9 [Daoyuan Wang] remove unused code
2015-07-06 15:54:43 -07:00
kai 2471c0bf7f [SPARK-4485] [SQL] 1) Add broadcast hash outer join, (2) Fix SparkPlanTest
This pull request
(1) extracts common functions used by hash outer joins and put it in interface HashOuterJoin
(2) adds ShuffledHashOuterJoin and BroadcastHashOuterJoin
(3) adds test cases for shuffled and broadcast hash outer join
(3) makes SparkPlanTest to support binary or more complex operators, and fixes bugs in plan composition in SparkPlanTest

Author: kai <kaizeng@eecs.berkeley.edu>

Closes #7162 from kai-zeng/outer and squashes the following commits:

3742359 [kai] Fix not-serializable exception for code-generated keys in broadcasted relations
14e4bf8 [kai] Use CanBroadcast in broadcast outer join planning
dc5127e [kai] code style fixes
b5a4efa [kai] (1) Add broadcast hash outer join, (2) Fix SparkPlanTest
2015-07-06 14:33:30 -07:00
Davies Liu 37e4d92142 [SPARK-8784] [SQL] Add Python API for hex and unhex
Add Python API for hex/unhex,  also cleanup Hex/Unhex

Author: Davies Liu <davies@databricks.com>

Closes #7223 from davies/hex and squashes the following commits:

6f1249d [Davies Liu] no explicit rule to cast string into binary
711a6ed [Davies Liu] fix test
f9fe5a3 [Davies Liu] Merge branch 'master' of github.com:apache/spark into hex
f032fbb [Davies Liu] Merge branch 'hex' of github.com:davies/spark into hex
49e325f [Davies Liu] Merge branch 'master' of github.com:apache/spark into hex
b31fc9a [Davies Liu] Update math.scala
25156b7 [Davies Liu] address comments and fix test
c3af78c [Davies Liu] address commments
1a24082 [Davies Liu] Add Python API for hex and unhex
2015-07-06 13:31:31 -07:00
Wenchen Fan 0e194645f4 [SPARK-8837][SPARK-7114][SQL] support using keyword in column name
Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7237 from cloud-fan/parser and squashes the following commits:

e7b49bb [Wenchen Fan] support using keyword in column name
2015-07-06 13:26:46 -07:00
Steve Lindemann 39e4e7e4d8 [SPARK-8841] [SQL] Fix partition pruning percentage log message
When pruning partitions for a query plan, a message is logged indicating what how many partitions were selected based on predicate criteria, and what percent were pruned.

The current release erroneously uses `1 - total/selected` to compute this quantity, leading to nonsense messages like "pruned -1000% partitions". The fix is simple and obvious.

Author: Steve Lindemann <steve.lindemann@engineersgatelp.com>

Closes #7227 from srlindemann/master and squashes the following commits:

c788061 [Steve Lindemann] fix percentPruned log message
2015-07-06 10:17:05 -07:00
Cheng Hao 6d0411b4f3 [SQL][Minor] Update the DataFrame API for encode/decode
This is a the follow up of #6843.

Author: Cheng Hao <hao.cheng@intel.com>

Closes #7230 from chenghao-intel/str_funcs2_followup and squashes the following commits:

52cc553 [Cheng Hao] update the code as comment
2015-07-05 21:50:52 -07:00
Liang-Chi Hsieh 2b820f2a4b [MINOR] [SQL] Minor fix for CatalystSchemaConverter
ping liancheng

Author: Liang-Chi Hsieh <viirya@gmail.com>

Closes #7224 from viirya/few_fix_catalystschema and squashes the following commits:

d994330 [Liang-Chi Hsieh] Minor fix for CatalystSchemaConverter.
2015-07-04 22:52:50 -07:00
Reynold Xin 48f7aed686 Fixed minor style issue with the previous merge. 2015-07-04 01:11:35 -07:00
Tarek Auel 6b3574e687 [SPARK-8270][SQL] levenshtein distance
Jira: https://issues.apache.org/jira/browse/SPARK-8270

Info: I can not build the latest master, it stucks during the build process: `[INFO] Dependency-reduced POM written at: /Users/tarek/test/spark/bagel/dependency-reduced-pom.xml`

Author: Tarek Auel <tarek.auel@googlemail.com>

Closes #7214 from tarekauel/SPARK-8270 and squashes the following commits:

ab348b9 [Tarek Auel] Merge branch 'master' into SPARK-8270
a2ad318 [Tarek Auel] [SPARK-8270] changed order of fields
d91b12c [Tarek Auel] [SPARK-8270] python fix
adbd075 [Tarek Auel] [SPARK-8270] fixed typo
23185c9 [Tarek Auel] [SPARK-8270] levenshtein distance
2015-07-04 01:10:52 -07:00
Cheng Hao f35b0c3436 [SPARK-8238][SPARK-8239][SPARK-8242][SPARK-8243][SPARK-8268][SQL]Add ascii/base64/unbase64/encode/decode functions
Add `ascii`,`base64`,`unbase64`,`encode` and `decode` expressions.

Author: Cheng Hao <hao.cheng@intel.com>

Closes #6843 from chenghao-intel/str_funcs2 and squashes the following commits:

78dee7d [Cheng Hao] base 64 -> base64
9d6f9f4 [Cheng Hao] remove the toString method for expressions
ed5c19c [Cheng Hao] update code as comments
96170fc [Cheng Hao] scalastyle issues
e2df768 [Cheng Hao] remove the unused import
491ce7b [Cheng Hao] add ascii/base64/unbase64/encode/decode functions
2015-07-03 23:45:21 -07:00
Daoyuan Wang 9fb6b832bc [SPARK-8192] [SPARK-8193] [SQL] udf current_date, current_timestamp
Author: Daoyuan Wang <daoyuan.wang@intel.com>

Closes #6985 from adrian-wang/udfcurrent and squashes the following commits:

6a20b64 [Daoyuan Wang] remove codegen and add lazy in testsuite
27c9f95 [Daoyuan Wang] refine tests..
e11ae75 [Daoyuan Wang] refine tests
61ed3d5 [Daoyuan Wang] add in functions
98e8550 [Daoyuan Wang] fix sytle
427d9dc [Daoyuan Wang] add tests and codegen
0b69a1f [Daoyuan Wang] udf current
2015-07-03 22:19:43 -07:00
Cheolsoo Park 4a22bce8fc [SPARK-8572] [SQL] Type coercion for ScalaUDFs
Implemented type coercion for udf arguments in Scala. The changes include-
* Add `with ExpectsInputTypes ` to `ScalaUDF` class.
* Pass down argument types info from `UDFRegistration` and `functions`.

With this patch, the example query in [SPARK-8572](https://issues.apache.org/jira/browse/SPARK-8572) no longer throws a type cast error at runtime.

Also added a unit test to `UDFSuite` in which a decimal type is passed to a udf that expects an int.

Author: Cheolsoo Park <cheolsoop@netflix.com>

Closes #7203 from piaozhexiu/SPARK-8572 and squashes the following commits:

2d0ed15 [Cheolsoo Park] Incorporate comments
dce1efd [Cheolsoo Park] Fix unit tests and update the codegen script
066deed [Cheolsoo Park] Type coercion for udf inputs
2015-07-03 22:14:21 -07:00
Spiro Michaylov e92c24d37c [SPARK-8810] [SQL] Added several UDF unit tests for Spark SQL
One test for each of the GROUP BY, WHERE and HAVING clauses, and one that combines all three with an additional UDF in the SELECT.

(Since this is my first attempt at contributing to SPARK, meta-level guidance on anything I've screwed up would be greatly appreciated, whether important or minor.)

Author: Spiro Michaylov <spiro@michaylov.com>

Closes #7207 from spirom/udf-test-branch and squashes the following commits:

6bbba9e [Spiro Michaylov] Responded to review comments on UDF unit tests
1a3c5ff [Spiro Michaylov] Added several UDF unit tests for Spark SQL
2015-07-03 20:15:58 -07:00
zhichao.li ab535b9a1d [SPARK-8226] [SQL] Add function shiftrightunsigned
Author: zhichao.li <zhichao.li@intel.com>

Closes #7035 from zhichao-li/shiftRightUnsigned and squashes the following commits:

6bcca5a [zhichao.li] change coding style
3e9f5ae [zhichao.li] python style
d85ae0b [zhichao.li] add shiftrightunsigned
2015-07-03 15:39:16 -07:00
Burak Yavuz 9b23e92c72 [SPARK-8803] handle special characters in elements in crosstab
cc rxin

Having back ticks or null as elements causes problems.
Since elements become column names, we have to drop them from the element as back ticks are special characters.
Having null throws exceptions, we could replace them with empty strings.

Handling back ticks should be improved for 1.5

Author: Burak Yavuz <brkyvz@gmail.com>

Closes #7201 from brkyvz/weird-ct-elements and squashes the following commits:

e06b840 [Burak Yavuz] fix scalastyle
93a0d3f [Burak Yavuz] added tests for NaN and Infinity
9dba6ce [Burak Yavuz] address cr1
db71dbd [Burak Yavuz] handle special characters in elements in crosstab
2015-07-02 22:10:24 -07:00
zhichao.li 1a7a7d7d57 [SPARK-8213][SQL]Add function factorial
Author: zhichao.li <zhichao.li@intel.com>

Closes #6822 from zhichao-li/factorial and squashes the following commits:

26edf4f [zhichao.li] add factorial
2015-07-02 20:37:31 -07:00
Josh Rosen d9838196ff [SPARK-8782] [SQL] Fix code generation for ORDER BY NULL
This fixes code generation for queries containing `ORDER BY NULL`.  Previously, the generated code would fail to compile.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #7179 from JoshRosen/generate-order-fixes and squashes the following commits:

6ef49a6 [Josh Rosen] Fix ORDER BY NULL
0036696 [Josh Rosen] Add regression test for SPARK-8782 (ORDER BY NULL)
2015-07-02 18:07:09 -07:00
Reynold Xin e589e71a29 Revert "[SPARK-8784] [SQL] Add Python API for hex and unhex"
This reverts commit fc7aebd94a.
2015-07-02 16:25:10 -07:00
Davies Liu fc7aebd94a [SPARK-8784] [SQL] Add Python API for hex and unhex
Also improve the performance of hex/unhex

Author: Davies Liu <davies@databricks.com>

Closes #7181 from davies/hex and squashes the following commits:

f032fbb [Davies Liu] Merge branch 'hex' of github.com:davies/spark into hex
49e325f [Davies Liu] Merge branch 'master' of github.com:apache/spark into hex
b31fc9a [Davies Liu] Update math.scala
25156b7 [Davies Liu] address comments and fix test
c3af78c [Davies Liu] address commments
1a24082 [Davies Liu] Add Python API for hex and unhex
2015-07-02 15:43:02 -07:00
Yijie Shen 52302a8039 [SPARK-8407] [SQL] complex type constructors: struct and named_struct
This is a follow up of [SPARK-8283](https://issues.apache.org/jira/browse/SPARK-8283) ([PR-6828](https://github.com/apache/spark/pull/6828)), to support both `struct` and `named_struct` in Spark SQL.

After [#6725](https://github.com/apache/spark/pull/6828), the semantic of [`CreateStruct`](https://github.com/apache/spark/blob/master/sql/catalyst/src/main/scala/org/apache/spark/sql/catalyst/expressions/complexTypes.scala#L56) methods have changed a little and do not limited to cols of `NamedExpressions`, it will name non-NamedExpression fields following the hive convention, col1, col2 ...

This PR would both loosen [`struct`](https://github.com/apache/spark/blob/master/sql/core/src/main/scala/org/apache/spark/sql/functions.scala#L723) to take children of `Expression` type and add `named_struct` support.

Author: Yijie Shen <henry.yijieshen@gmail.com>

Closes #6874 from yijieshen/SPARK-8283 and squashes the following commits:

4cd3375ac [Yijie Shen] change struct documentation
d599d0b [Yijie Shen] rebase code
9a7039e [Yijie Shen] fix reviews and regenerate golden answers
b487354 [Yijie Shen] replace assert using checkAnswer
f07e114 [Yijie Shen] tiny fix
9613be9 [Yijie Shen] review fix
7fef712 [Yijie Shen] Fix checkInputTypes' implementation using foldable and nullable
60812a7 [Yijie Shen] Fix type check
828d694 [Yijie Shen] remove unnecessary resolved assertion inside dataType method
fd3cd8e [Yijie Shen] remove type check from eval
7a71255 [Yijie Shen] tiny fix
ccbbd86 [Yijie Shen] Fix reviews
47da332 [Yijie Shen] remove nameStruct API from DataFrame
917e680 [Yijie Shen] Fix reviews
4bd75ad [Yijie Shen] loosen struct method in functions.scala to take Expression children
0acb7be [Yijie Shen] Add CreateNamedStruct in both DataFrame function API and FunctionRegistery
2015-07-02 10:12:25 -07:00
Tarek Auel 5b3338130d [SPARK-8223] [SPARK-8224] [SQL] shift left and shift right
Jira:
https://issues.apache.org/jira/browse/SPARK-8223
https://issues.apache.org/jira/browse/SPARK-8224

~~I am aware of #7174 and will update this pr, if it's merged.~~ Done
I don't know if #7034 can simplify this, but we can have a look on it, if it gets merged

rxin In the Jira ticket the function as no second argument. I added a `numBits` argument that allows to specify the number of bits. I guess this improves the usability. I wanted to add `shiftleft(value)` as well, but the `selectExpr` dataframe tests crashes, if I have both. I order to do this, I added the following to the functions.scala `def shiftRight(e: Column): Column = ShiftRight(e.expr, lit(1).expr)`, but as I mentioned this doesn't pass tests like `df.selectExpr("shiftRight(a)", ...` (not enough arguments exception).

If we need the bitwise shift in order to be hive compatible, I suggest to add `shiftLeft` and something like `shiftLeftX`

Author: Tarek Auel <tarek.auel@googlemail.com>

Closes #7178 from tarekauel/8223 and squashes the following commits:

8023bb5 [Tarek Auel] [SPARK-8223][SPARK-8224] fixed test
f3f64e6 [Tarek Auel] [SPARK-8223][SPARK-8224] Integer -> Int
f628706 [Tarek Auel] [SPARK-8223][SPARK-8224] removed toString; updated function description
3b56f2a [Tarek Auel] Merge remote-tracking branch 'origin/master' into 8223
5189690 [Tarek Auel] [SPARK-8223][SPARK-8224] minor fix and style fix
9434a28 [Tarek Auel] Merge remote-tracking branch 'origin/master' into 8223
44ee324 [Tarek Auel] [SPARK-8223][SPARK-8224] docu fix
ac7fe9d [Tarek Auel] [SPARK-8223][SPARK-8224] right and left bit shift
2015-07-02 10:02:19 -07:00
Wisely Chen 246265f2bb [SPARK-8690] [SQL] Add a setting to disable SparkSQL parquet schema merge by using datasource API
The detail problem story is in https://issues.apache.org/jira/browse/SPARK-8690

General speaking, I add a config spark.sql.parquet.mergeSchema to achieve the  sqlContext.load("parquet" , Map( "path" -> "..." , "mergeSchema" -> "false" ))

It will become a simple flag and without any side affect.

Author: Wisely Chen <wiselychen@appier.com>

Closes #7070 from thegiive/SPARK8690 and squashes the following commits:

c6f3e86 [Wisely Chen] Refactor some code style and merge the test case to ParquetSchemaMergeConfigSuite
94c9307 [Wisely Chen] Remove some style problem
db8ef1b [Wisely Chen] Change config to SQLConf and add test case
b6806fb [Wisely Chen] remove text
c0edb8c [Wisely Chen] [SPARK-8690] add a config spark.sql.parquet.mergeSchema to disable datasource API schema merge feature.
2015-07-02 09:58:12 -07:00
Vinod K C c572e25617 [SPARK-8787] [SQL] Changed parameter order of @deprecated in package object sql
Parameter order of deprecated annotation in package object sql is wrong
>>deprecated("1.3.0", "use DataFrame") .

This has to be changed to deprecated("use DataFrame", "1.3.0")

Author: Vinod K C <vinod.kc@huawei.com>

Closes #7183 from vinodkc/fix_deprecated_param_order and squashes the following commits:

1cbdbe8 [Vinod K C] Modified the message
700911c [Vinod K C] Changed order of parameters
2015-07-02 13:42:48 +01:00
Kousuke Saruta 41588365ad [DOCS] Fix minor wrong lambda expression example.
It's a really minor issue but there is an example with wrong lambda-expression usage in `SQLContext.scala` like as follows.

```
sqlContext.udf().register("myUDF",
       (Integer arg1, String arg2) -> arg2 + arg1),  <- We have an extra `)` here.
       DataTypes.StringType);
```

Author: Kousuke Saruta <sarutak@oss.nttdata.co.jp>

Closes #7187 from sarutak/fix-minor-wrong-lambda-expression and squashes the following commits:

a13196d [Kousuke Saruta] Fixed minor wrong lambda expression example.
2015-07-02 21:16:35 +09:00
zhichao.li b285ac5ba8 [SPARK-8227] [SQL] Add function unhex
cc chenghao-intel  adrian-wang

Author: zhichao.li <zhichao.li@intel.com>

Closes #7113 from zhichao-li/unhex and squashes the following commits:

379356e [zhichao.li] remove exception checking
a4ae6dc [zhichao.li] add udf_unhex to whitelist
fe5c14a [zhichao.li] add todigit
607d7a3 [zhichao.li] use checkInputTypes
bffd37f [zhichao.li] change to use Hex in apache common package
cde73f5 [zhichao.li] update to use AutoCastInputTypes
11945c7 [zhichao.li] style
c852d46 [zhichao.li] Add function unhex
2015-07-01 22:19:51 -07:00
Wenchen Fan 31b4a3d7f2 [SPARK-8621] [SQL] support empty string as column name
improve the empty check in `parseAttributeName` so that we can allow empty string as column name.
Close https://github.com/apache/spark/pull/7117

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7149 from cloud-fan/8621 and squashes the following commits:

efa9e3e [Wenchen Fan] support empty string
2015-07-01 10:31:35 -07:00
Reynold Xin 97652416e2 [SPARK-8750][SQL] Remove the closure in functions.callUdf.
Author: Reynold Xin <rxin@databricks.com>

Closes #7148 from rxin/calludf-closure and squashes the following commits:

00df372 [Reynold Xin] Fixed index out of bound exception.
4beba76 [Reynold Xin] [SPARK-8750][SQL] Remove the closure in functions.callUdf.
2015-07-01 01:08:20 -07:00
Wenchen Fan 0eee061589 [SQL] [MINOR] remove internalRowRDD in DataFrame
Developers have already familiar with `queryExecution.toRDD` as internal row RDD, and we should not add new concept.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7116 from cloud-fan/internal-rdd and squashes the following commits:

24756ca [Wenchen Fan] remove internalRowRDD
2015-07-01 01:02:33 -07:00
Reynold Xin 8133125ca0 [SPARK-8741] [SQL] Remove e and pi from DataFrame functions.
Author: Reynold Xin <rxin@databricks.com>

Closes #7137 from rxin/SPARK-8741 and squashes the following commits:

32c7e75 [Reynold Xin] [SPARK-8741][SQL] Remove e and pi from DataFrame functions.
2015-06-30 16:54:51 -07:00
Christian Kadner 1e1f339976 [SPARK-6785] [SQL] fix DateTimeUtils for dates before 1970
Hi Michael,
this Pull-Request is a follow-up to [PR-6242](https://github.com/apache/spark/pull/6242). I removed the two obsolete test cases from the HiveQuerySuite and deleted the corresponding golden answer files.
Thanks for your review!

Author: Christian Kadner <ckadner@us.ibm.com>

Closes #6983 from ckadner/SPARK-6785 and squashes the following commits:

ab1e79b [Christian Kadner] Merge remote-tracking branch 'origin/SPARK-6785' into SPARK-6785
1fed877 [Christian Kadner] [SPARK-6785][SQL] failed Scala style test, remove spaces on empty line DateTimeUtils.scala:61
9d8021d [Christian Kadner] [SPARK-6785][SQL] merge recent changes in DateTimeUtils & MiscFunctionsSuite
b97c3fb [Christian Kadner] [SPARK-6785][SQL] move test case for DateTimeUtils to DateTimeUtilsSuite
a451184 [Christian Kadner] [SPARK-6785][SQL] fix DateTimeUtils.fromJavaDate(java.util.Date) for Dates before 1970
2015-06-30 12:22:34 -07:00
Davies Liu fbb267ed6f [SPARK-8713] Make codegen thread safe
Codegen takes three steps:

1. Take a list of expressions, convert them into Java source code and a list of expressions that don't not support codegen (fallback to interpret mode).
2. Compile the Java source into Java class (bytecode)
3. Using the Java class and the list of expression to build a Projection.

Currently, we cache the whole three steps, the key is a list of expression, result is projection. Because some of expressions (which may not thread-safe, for example, Random) will be hold by the Projection, the projection maybe not thread safe.

This PR change to only cache the second step, then we can build projection using codegen even some expressions are not thread-safe, because the cache will not hold any expression anymore.

cc marmbrus rxin JoshRosen

Author: Davies Liu <davies@databricks.com>

Closes #7101 from davies/codegen_safe and squashes the following commits:

7dd41f1 [Davies Liu] Merge branch 'master' of github.com:apache/spark into codegen_safe
847bd08 [Davies Liu] don't use scala.refect
4ddaaed [Davies Liu] Merge branch 'master' of github.com:apache/spark into codegen_safe
1793cf1 [Davies Liu] make codegen thread safe
2015-06-30 10:48:49 -07:00
Shilei 722aa5f48e [SPARK-8236] [SQL] misc functions: crc32
https://issues.apache.org/jira/browse/SPARK-8236

Author: Shilei <shilei.qian@intel.com>

Closes #7108 from qiansl127/Crc32 and squashes the following commits:

5477352 [Shilei] Change to AutoCastInputTypes
5f16e5d [Shilei] Add misc function crc32
2015-06-30 09:49:58 -07:00
zsxwing 12671dd5e4 [SPARK-8434][SQL]Add a "pretty" parameter to the "show" method to display long strings
Sometimes the user may want to show the complete content of cells. Now `sql("set -v").show()` displays:

![screen shot 2015-06-18 at 4 34 51 pm](https://cloud.githubusercontent.com/assets/1000778/8227339/14d3c5ea-15d9-11e5-99b9-f00b7e93beef.png)

The user needs to use something like `sql("set -v").collect().foreach(r => r.toSeq.mkString("\t"))` to show the complete content.

This PR adds a `pretty` parameter to show. If `pretty` is false, `show` won't truncate strings or align cells right.

![screen shot 2015-06-18 at 4 21 44 pm](https://cloud.githubusercontent.com/assets/1000778/8227407/b6f8dcac-15d9-11e5-8219-8079280d76fc.png)

Author: zsxwing <zsxwing@gmail.com>

Closes #6877 from zsxwing/show and squashes the following commits:

22e28e9 [zsxwing] pretty -> truncate
e582628 [zsxwing] Add pretty parameter to the show method in R
a3cd55b [zsxwing] Fix calling showString in R
923cee4 [zsxwing] Add a "pretty" parameter to show to display long strings
2015-06-29 23:44:11 -07:00
Steven She 4915e9e3bf [SPARK-8669] [SQL] Fix crash with BINARY (ENUM) fields with Parquet 1.7
Patch to fix crash with BINARY fields with ENUM original types.

Author: Steven She <steven@canopylabs.com>

Closes #7048 from stevencanopy/SPARK-8669 and squashes the following commits:

2e72979 [Steven She] [SPARK-8669] [SQL] Fix crash with BINARY (ENUM) fields with Parquet 1.7
2015-06-29 18:50:09 -07:00
Burak Yavuz ecacb1e88a [SPARK-8715] ArrayOutOfBoundsException fixed for DataFrameStatSuite.crosstab
cc yhuai

Author: Burak Yavuz <brkyvz@gmail.com>

Closes #7100 from brkyvz/ct-flakiness-fix and squashes the following commits:

abc299a [Burak Yavuz] change 'to' to until
7e96d7c [Burak Yavuz] ArrayOutOfBoundsException fixed for DataFrameStatSuite.crosstab
2015-06-29 18:48:28 -07:00
Davies Liu ed359de595 [SPARK-8579] [SQL] support arbitrary object in UnsafeRow
This PR brings arbitrary object support in UnsafeRow (both in grouping key and aggregation buffer).

Two object pools will be created to hold those non-primitive objects, and put the index of them into UnsafeRow. In order to compare the grouping key as bytes, the objects in key will be stored in a unique object pool, to make sure same objects will have same index (used as hashCode).

For StringType and BinaryType, we still put them as var-length in UnsafeRow when initializing for better performance. But for update, they will be an object inside object pools (there will be some garbages left in the buffer).

BTW: Will create a JIRA once issue.apache.org is available.

cc JoshRosen rxin

Author: Davies Liu <davies@databricks.com>

Closes #6959 from davies/unsafe_obj and squashes the following commits:

5ce39da [Davies Liu] fix comment
5e797bf [Davies Liu] Merge branch 'master' of github.com:apache/spark into unsafe_obj
5803d64 [Davies Liu] fix conflict
461d304 [Davies Liu] Merge branch 'master' of github.com:apache/spark into unsafe_obj
2f41c90 [Davies Liu] Merge branch 'master' of github.com:apache/spark into unsafe_obj
b04d69c [Davies Liu] address comments
4859b80 [Davies Liu] fix comments
f38011c [Davies Liu] add a test for grouping by decimal
d2cf7ab [Davies Liu] add more tests for null checking
71983c5 [Davies Liu] add test for timestamp
e8a1649 [Davies Liu] reuse buffer for string
39f09ca [Davies Liu] Merge branch 'master' of github.com:apache/spark into unsafe_obj
035501e [Davies Liu] fix style
236d6de [Davies Liu] support arbitrary object in UnsafeRow
2015-06-29 15:59:20 -07:00
BenFradet 931da5c8ab [SPARK-8478] [SQL] Harmonize UDF-related code to use uniformly UDF instead of Udf
Follow-up of #6902 for being coherent between ```Udf``` and ```UDF```

Author: BenFradet <benjamin.fradet@gmail.com>

Closes #6920 from BenFradet/SPARK-8478 and squashes the following commits:

c500f29 [BenFradet] renamed a few variables in functions to use UDF
8ab0f2d [BenFradet] renamed idUdf to idUDF in SQLQuerySuite
98696c2 [BenFradet] renamed originalUdfs in TestHive to originalUDFs
7738f74 [BenFradet] modified HiveUDFSuite to use only UDF
c52608d [BenFradet] renamed HiveUdfSuite to HiveUDFSuite
e51b9ac [BenFradet] renamed ExtractPythonUdfs to ExtractPythonUDFs
8c756f1 [BenFradet] renamed Hive UDF related code
2a1ca76 [BenFradet] renamed pythonUdfs to pythonUDFs
261e6fb [BenFradet] renamed ScalaUdf to ScalaUDF
2015-06-29 15:27:13 -07:00
Burak Yavuz be7ef06762 [SPARK-8681] fixed wrong ordering of columns in crosstab
I specifically randomized the test. What crosstab does is equivalent to a countByKey, therefore if this test fails again for any reason, we will know that we hit a corner case or something.

cc rxin marmbrus

Author: Burak Yavuz <brkyvz@gmail.com>

Closes #7060 from brkyvz/crosstab-fixes and squashes the following commits:

0a65234 [Burak Yavuz] addressed comments v1
d96da7e [Burak Yavuz] fixed wrong ordering of columns in crosstab
2015-06-29 13:15:04 -07:00
zhichao.li 637b4eedad [SPARK-8214] [SQL] Add function hex
cc chenghao-intel  adrian-wang

Author: zhichao.li <zhichao.li@intel.com>

Closes #6976 from zhichao-li/hex and squashes the following commits:

e218d1b [zhichao.li] turn off scalastyle for non-ascii
de3f5ea [zhichao.li] non-ascii char
cf9c936 [zhichao.li] give separated buffer for each hex method
967ec90 [zhichao.li] Make 'value' as a feild of Hex
3b2fa13 [zhichao.li] tiny fix
a647641 [zhichao.li] remove duplicate null check
7cab020 [zhichao.li] tiny refactoring
35ecfe5 [zhichao.li] add function hex
2015-06-29 12:25:16 -07:00
Kousuke Saruta 94e040d059 [SQL][DOCS] Remove wrong example from DataFrame.scala
In DataFrame.scala, there are examples like as follows.

```
 * // The following are equivalent:
 * peopleDf.filter($"age" > 15)
 * peopleDf.where($"age" > 15)
 * peopleDf($"age" > 15)
```

But, I think the last example doesn't work.

Author: Kousuke Saruta <sarutak@oss.nttdata.co.jp>

Closes #6977 from sarutak/fix-dataframe-example and squashes the following commits:

46efbd7 [Kousuke Saruta] Removed wrong example
2015-06-29 12:16:12 -07:00
Tarek Auel a5c2961caa [SPARK-8235] [SQL] misc function sha / sha1
Jira: https://issues.apache.org/jira/browse/SPARK-8235

I added the support for sha1. If I understood rxin correctly, sha and sha1 should execute the same algorithm, shouldn't they?

Please take a close look on the Python part. This is adopted from #6934

Author: Tarek Auel <tarek.auel@gmail.com>
Author: Tarek Auel <tarek.auel@googlemail.com>

Closes #6963 from tarekauel/SPARK-8235 and squashes the following commits:

f064563 [Tarek Auel] change to shaHex
7ce3cdc [Tarek Auel] rely on automatic cast
a1251d6 [Tarek Auel] Merge remote-tracking branch 'upstream/master' into SPARK-8235
68eb043 [Tarek Auel] added docstring
be5aff1 [Tarek Auel] improved error message
7336c96 [Tarek Auel] added type check
cf23a80 [Tarek Auel] simplified example
ebf75ef [Tarek Auel] [SPARK-8301] updated the python documentation. Removed sha in python and scala
6d6ff0d [Tarek Auel] [SPARK-8233] added docstring
ea191a9 [Tarek Auel] [SPARK-8233] fixed signatureof python function. Added expected type to misc
e3fd7c3 [Tarek Auel] SPARK[8235] added sha to the list of __all__
e5dad4e [Tarek Auel] SPARK[8235] sha / sha1
2015-06-29 11:57:19 -07:00
Wenchen Fan ed413bcc78 [SPARK-8692] [SQL] re-order the case statements that handling catalyst data types
use same order: boolean, byte, short, int, date, long, timestamp, float, double, string, binary, decimal.

Then we can easily check whether some data types are missing by just one glance, and make sure we handle data/timestamp just as int/long.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7073 from cloud-fan/fix-date and squashes the following commits:

463044d [Wenchen Fan] fix style
51cd347 [Wenchen Fan] refactor handling of date and timestmap
2015-06-29 11:41:26 -07:00
BenFradet 0b10662fef [SPARK-8575] [SQL] Deprecate callUDF in favor of udf
Follow up of [SPARK-8356](https://issues.apache.org/jira/browse/SPARK-8356) and #6902.
Removes the unit test for the now deprecated ```callUdf```
Unit test in SQLQuerySuite now uses ```udf``` instead of ```callUDF```
Replaced ```callUDF``` by ```udf``` where possible in mllib

Author: BenFradet <benjamin.fradet@gmail.com>

Closes #6993 from BenFradet/SPARK-8575 and squashes the following commits:

26f5a7a [BenFradet] 2 spaces instead of 1
1ddb452 [BenFradet] renamed initUDF in order to be consistent in OneVsRest
48ca15e [BenFradet] used vector type tag for udf call in VectorIndexer
0ebd0da [BenFradet] replace the now deprecated callUDF by udf in VectorIndexer
8013409 [BenFradet] replaced the now deprecated callUDF by udf in Predictor
94345b5 [BenFradet] unifomized udf calls in ProbabilisticClassifier
1305492 [BenFradet] uniformized udf calls in Classifier
a672228 [BenFradet] uniformized udf calls in OneVsRest
49e4904 [BenFradet] Revert "removal of the unit test for the now deprecated callUdf"
bbdeaf3 [BenFradet] fixed syntax for init udf in OneVsRest
fe2a10b [BenFradet] callUDF => udf in ProbabilisticClassifier
0ea30b3 [BenFradet] callUDF => udf in Classifier where possible
197ec82 [BenFradet] callUDF => udf in OneVsRest
84d6780 [BenFradet] modified unit test in SQLQuerySuite to use udf instead of callUDF
477709f [BenFradet] removal of the unit test for the now deprecated callUdf
2015-06-28 22:43:47 -07:00
Kousuke Saruta ec78438196 [SPARK-8686] [SQL] DataFrame should support where with expression represented by String
DataFrame supports `filter` function with two types of argument, `Column` and `String`. But `where` doesn't.

Author: Kousuke Saruta <sarutak@oss.nttdata.co.jp>

Closes #7063 from sarutak/SPARK-8686 and squashes the following commits:

180f9a4 [Kousuke Saruta] Added test
d61aec4 [Kousuke Saruta] Add "where" method with String argument to DataFrame
2015-06-28 08:29:07 -07:00
Davies Liu 77da5be6f1 [SPARK-8610] [SQL] Separate Row and InternalRow (part 2)
Currently, we use GenericRow both for Row and InternalRow, which is confusing because it could contain Scala type also Catalyst types.

This PR changes to use GenericInternalRow for InternalRow (contains catalyst types), GenericRow for Row (contains Scala types).

Also fixes some incorrect use of InternalRow or Row.

Author: Davies Liu <davies@databricks.com>

Closes #7003 from davies/internalrow and squashes the following commits:

d05866c [Davies Liu] fix test: rollback changes for pyspark
72878dd [Davies Liu] Merge branch 'master' of github.com:apache/spark into internalrow
efd0b25 [Davies Liu] fix copy of MutableRow
87b13cf [Davies Liu] fix test
d2ebd72 [Davies Liu] fix style
eb4b473 [Davies Liu] mark expensive API as final
bd4e99c [Davies Liu] Merge branch 'master' of github.com:apache/spark into internalrow
bdfb78f [Davies Liu] remove BaseMutableRow
6f99a97 [Davies Liu] fix catalyst test
defe931 [Davies Liu] remove BaseRow
288b31f [Davies Liu] Merge branch 'master' of github.com:apache/spark into internalrow
9d24350 [Davies Liu] separate Row and InternalRow (part 2)
2015-06-28 08:03:58 -07:00
Wenchen Fan 1a79f0eb8d [SPARK-8635] [SQL] improve performance of CatalystTypeConverters
In `CatalystTypeConverters.createToCatalystConverter`, we add special handling for primitive types. We can apply this strategy to more places to improve performance.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #7018 from cloud-fan/converter and squashes the following commits:

8b16630 [Wenchen Fan] another fix
326c82c [Wenchen Fan] optimize type converter
2015-06-25 22:44:26 -07:00
Liang-Chi Hsieh 47c874babe [SPARK-8237] [SQL] Add misc function sha2
JIRA: https://issues.apache.org/jira/browse/SPARK-8237

Author: Liang-Chi Hsieh <viirya@gmail.com>

Closes #6934 from viirya/expr_sha2 and squashes the following commits:

35e0bb3 [Liang-Chi Hsieh] For comments.
68b5284 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into expr_sha2
8573aff [Liang-Chi Hsieh] Remove unnecessary Product.
ee61e06 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into expr_sha2
59e41aa [Liang-Chi Hsieh] Add misc function: sha2.
2015-06-25 22:07:37 -07:00
Cheng Lian c337844ed7 [SPARK-8604] [SQL] HadoopFsRelation subclasses should set their output format class
`HadoopFsRelation` subclasses, especially `ParquetRelation2` should set its own output format class, so that the default output committer can be setup correctly when doing appending (where we ignore user defined output committers).

Author: Cheng Lian <lian@databricks.com>

Closes #6998 from liancheng/spark-8604 and squashes the following commits:

9be51d1 [Cheng Lian] Adds more comments
6db1368 [Cheng Lian] HadoopFsRelation subclasses should set their output format class
2015-06-25 00:06:23 -07:00
Wenchen Fan b71d3254e5 [SPARK-8075] [SQL] apply type check interface to more expressions
a follow up of https://github.com/apache/spark/pull/6405.
Note: It's not a big change, a lot of changing is due to I swap some code in `aggregates.scala` to make aggregate functions right below its corresponding aggregate expressions.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #6723 from cloud-fan/type-check and squashes the following commits:

2124301 [Wenchen Fan] fix tests
5a658bb [Wenchen Fan] add tests
287d3bb [Wenchen Fan] apply type check interface to more expressions
2015-06-24 16:26:00 -07:00
Cheng Lian 8ab50765cd [SPARK-6777] [SQL] Implements backwards compatibility rules in CatalystSchemaConverter
This PR introduces `CatalystSchemaConverter` for converting Parquet schema to Spark SQL schema and vice versa.  Original conversion code in `ParquetTypesConverter` is removed. Benefits of the new version are:

1. When converting Spark SQL schemas, it generates standard Parquet schemas conforming to [the most updated Parquet format spec] [1]. Converting to old style Parquet schemas is also supported via feature flag `spark.sql.parquet.followParquetFormatSpec` (which is set to `false` for now, and should be set to `true` after both read and write paths are fixed).

   Note that although this version of Parquet format spec hasn't been officially release yet, Parquet MR 1.7.0 already sticks to it. So it should be safe to follow.

1. It implements backwards-compatibility rules described in the most updated Parquet format spec. Thus can recognize more schema patterns generated by other/legacy systems/tools.
1. Code organization follows convention used in [parquet-mr] [2], which is easier to follow. (Structure of `CatalystSchemaConverter` is similar to `AvroSchemaConverter`).

To fully implement backwards-compatibility rules in both read and write path, we also need to update `CatalystRowConverter` (which is responsible for converting Parquet records to `Row`s), `RowReadSupport`, and `RowWriteSupport`. These would be done in follow-up PRs.

TODO

- [x] More schema conversion test cases for legacy schema patterns.

[1]: ea09522659/LogicalTypes.md
[2]: https://github.com/apache/parquet-mr/

Author: Cheng Lian <lian@databricks.com>

Closes #6617 from liancheng/spark-6777 and squashes the following commits:

2a2062d [Cheng Lian] Don't convert decimals without precision information
b60979b [Cheng Lian] Adds a constructor which accepts a Configuration, and fixes default value of assumeBinaryIsString
743730f [Cheng Lian] Decimal scale shouldn't be larger than precision
a104a9e [Cheng Lian] Fixes Scala style issue
1f71d8d [Cheng Lian] Adds feature flag to allow falling back to old style Parquet schema conversion
ba84f4b [Cheng Lian] Fixes MapType schema conversion bug
13cb8d5 [Cheng Lian] Fixes MiMa failure
81de5b0 [Cheng Lian] Fixes UDT, workaround read path, and add tests
28ef95b [Cheng Lian] More AnalysisExceptions
b10c322 [Cheng Lian] Replaces require() with analysisRequire() which throws AnalysisException
cceaf3f [Cheng Lian] Implements backwards compatibility rules in CatalystSchemaConverter
2015-06-24 15:03:43 -07:00
Wenchen Fan f04b5672c5 [SPARK-7289] handle project -> limit -> sort efficiently
make the `TakeOrdered` strategy and operator more general, such that it can optionally handle a projection when necessary

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #6780 from cloud-fan/limit and squashes the following commits:

34aa07b [Wenchen Fan] revert
07d5456 [Wenchen Fan] clean closure
20821ec [Wenchen Fan] fix
3676a82 [Wenchen Fan] address comments
b558549 [Wenchen Fan] address comments
214842b [Wenchen Fan] fix style
2d8be83 [Wenchen Fan] add LimitPushDown
948f740 [Wenchen Fan] fix existing
2015-06-24 13:28:50 -07:00
Yin Huai bba6699d0e [SPARK-8578] [SQL] Should ignore user defined output committer when appending data
https://issues.apache.org/jira/browse/SPARK-8578

It is not very safe to use a custom output committer when append data to an existing dir. This changes adds the logic to check if we are appending data, and if so, we use the output committer associated with the file output format.

Author: Yin Huai <yhuai@databricks.com>

Closes #6964 from yhuai/SPARK-8578 and squashes the following commits:

43544c4 [Yin Huai] Do not use a custom output commiter when appendiing data.
2015-06-24 09:50:03 -07:00
Cheng Lian cc465fd924 [SPARK-8138] [SQL] Improves error message when conflicting partition columns are found
This PR improves the error message shown when conflicting partition column names are detected.  This can be particularly annoying and confusing when there are a large number of partitions while a handful of them happened to contain unexpected temporary file(s).  Now all suspicious directories are listed as below:

```
java.lang.AssertionError: assertion failed: Conflicting partition column names detected:

        Partition column name list #0: b, c, d
        Partition column name list #1: b, c
        Partition column name list #2: b

For partitioned table directories, data files should only live in leaf directories. Please check the following directories for unexpected files:

        file:/tmp/foo/b=0
        file:/tmp/foo/b=1
        file:/tmp/foo/b=1/c=1
        file:/tmp/foo/b=0/c=0
```

Author: Cheng Lian <lian@databricks.com>

Closes #6610 from liancheng/part-errmsg and squashes the following commits:

7d05f2c [Cheng Lian] Fixes Scala style issue
a149250 [Cheng Lian] Adds test case for the error message
6b74dd8 [Cheng Lian] Also lists suspicious non-leaf partition directories
a935eb8 [Cheng Lian] Improves error message when conflicting partition columns are found
2015-06-24 02:17:12 -07:00
Reynold Xin a458efc66c Revert "[SPARK-7157][SQL] add sampleBy to DataFrame"
This reverts commit 0401cbaa8e.

The new test case on Jenkins is failing.
2015-06-23 19:30:25 -07:00
Xiangrui Meng 0401cbaa8e [SPARK-7157][SQL] add sampleBy to DataFrame
Add `sampleBy` to DataFrame. rxin

Author: Xiangrui Meng <meng@databricks.com>

Closes #6769 from mengxr/SPARK-7157 and squashes the following commits:

991f26f [Xiangrui Meng] fix seed
4a14834 [Xiangrui Meng] move sampleBy to stat
832f7cc [Xiangrui Meng] add sampleBy to DataFrame
2015-06-23 17:46:29 -07:00
Cheng Lian 111d6b9b8a [SPARK-8139] [SQL] Updates docs and comments of data sources and Parquet output committer options
This PR only applies to master branch (1.5.0-SNAPSHOT) since it references `org.apache.parquet` classes which only appear in Parquet 1.7.0.

Author: Cheng Lian <lian@databricks.com>

Closes #6683 from liancheng/output-committer-docs and squashes the following commits:

b4648b8 [Cheng Lian] Removes spark.sql.sources.outputCommitterClass as it's not a public option
ee63923 [Cheng Lian] Updates docs and comments of data sources and Parquet output committer options
2015-06-23 17:24:26 -07:00
Cheng Hao 7b1450b666 [SPARK-7235] [SQL] Refactor the grouping sets
The logical plan `Expand` takes the `output` as constructor argument, which break the references chain. We need to refactor the code, as well as the column pruning.

Author: Cheng Hao <hao.cheng@intel.com>

Closes #5780 from chenghao-intel/expand and squashes the following commits:

76e4aa4 [Cheng Hao] revert the change for case insenstive
7c10a83 [Cheng Hao] refactor the grouping sets
2015-06-23 10:52:17 -07:00
lockwobr 4f7fbefb8d [SQL] [DOCS] updated the documentation for explode
the syntax was incorrect in the example in explode

Author: lockwobr <lockwobr@gmail.com>

Closes #6943 from lockwobr/master and squashes the following commits:

3d864d1 [lockwobr] updated the documentation for explode
2015-06-24 02:48:56 +09:00
Reynold Xin 6ceb169608 [SPARK-8300] DataFrame hint for broadcast join.
Users can now do
```scala
left.join(broadcast(right), "joinKey")
```
to give the query planner a hint that "right" DataFrame is small and should be broadcasted.

Author: Reynold Xin <rxin@databricks.com>

Closes #6751 from rxin/broadcastjoin-hint and squashes the following commits:

953eec2 [Reynold Xin] Code review feedback.
88752d8 [Reynold Xin] Fixed import.
8187b88 [Reynold Xin] [SPARK-8300] DataFrame hint for broadcast join.
2015-06-23 01:50:31 -07:00
Davies Liu 6b7f2ceafd [SPARK-8307] [SQL] improve timestamp from parquet
This PR change to convert julian day to unix timestamp directly (without Calendar and Timestamp).

cc adrian-wang rxin

Author: Davies Liu <davies@databricks.com>

Closes #6759 from davies/improve_ts and squashes the following commits:

849e301 [Davies Liu] Merge branch 'master' of github.com:apache/spark into improve_ts
b0e4cad [Davies Liu] Merge branch 'master' of github.com:apache/spark into improve_ts
8e2d56f [Davies Liu] address comments
634b9f5 [Davies Liu] fix mima
4891efb [Davies Liu] address comment
bfc437c [Davies Liu] fix build
ae5979c [Davies Liu] Merge branch 'master' of github.com:apache/spark into improve_ts
602b969 [Davies Liu] remove jodd
2f2e48c [Davies Liu] fix test
8ace611 [Davies Liu] fix mima
212143b [Davies Liu] fix mina
c834108 [Davies Liu] Merge branch 'master' of github.com:apache/spark into improve_ts
a3171b8 [Davies Liu] Merge branch 'master' of github.com:apache/spark into improve_ts
5233974 [Davies Liu] fix scala style
361fd62 [Davies Liu] address comments
ea196d4 [Davies Liu] improve timestamp from parquet
2015-06-22 18:03:59 -07:00
BenFradet 50d3242d6a [SPARK-8356] [SQL] Reconcile callUDF and callUdf
Deprecates ```callUdf``` in favor of ```callUDF```.

Author: BenFradet <benjamin.fradet@gmail.com>

Closes #6902 from BenFradet/SPARK-8356 and squashes the following commits:

ef4e9d8 [BenFradet] deprecated callUDF, use udf instead
9b1de4d [BenFradet] reinstated unit test for the deprecated callUdf
cbd80a5 [BenFradet] deprecated callUdf in favor of callUDF
2015-06-22 15:06:47 -07:00
Wenchen Fan da7bbb9435 [SPARK-8104] [SQL] auto alias expressions in analyzer
Currently we auto alias expression in parser. However, during parser phase we don't have enough information to do the right alias. For example, Generator that has more than 1 kind of element need MultiAlias, ExtractValue don't need Alias if it's in middle of a ExtractValue chain.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #6647 from cloud-fan/alias and squashes the following commits:

552eba4 [Wenchen Fan] fix python
5b5786d [Wenchen Fan] fix agg
73a90cb [Wenchen Fan] fix case-preserve of ExtractValue
4cfd23c [Wenchen Fan] fix order by
d18f401 [Wenchen Fan] refine
9f07359 [Wenchen Fan] address comments
39c1aef [Wenchen Fan] small fix
33640ec [Wenchen Fan] auto alias expressions in analyzer
2015-06-22 12:13:00 -07:00
Cheng Lian 0818fdec37 [SPARK-8406] [SQL] Adding UUID to output file name to avoid accidental overwriting
This PR fixes a Parquet output file name collision bug which may cause data loss.  Changes made:

1.  Identify each write job issued by `InsertIntoHadoopFsRelation` with a UUID

    All concrete data sources which extend `HadoopFsRelation` (Parquet and ORC for now) must use this UUID to generate task output file path to avoid name collision.

2.  Make `TestHive` use a local mode `SparkContext` with 32 threads to increase parallelism

    The major reason for this is that, the original parallelism of 2 is too low to reproduce the data loss issue.  Also, higher concurrency may potentially caught more concurrency bugs during testing phase. (It did help us spotted SPARK-8501.)

3. `OrcSourceSuite` was updated to workaround SPARK-8501, which we detected along the way.

NOTE: This PR is made a little bit more complicated than expected because we hit two other bugs on the way and have to work them around. See [SPARK-8501] [1] and [SPARK-8513] [2].

[1]: https://github.com/liancheng/spark/tree/spark-8501
[2]: https://github.com/liancheng/spark/tree/spark-8513

----

Some background and a summary of offline discussion with yhuai about this issue for better understanding:

In 1.4.0, we added `HadoopFsRelation` to abstract partition support of all data sources that are based on Hadoop `FileSystem` interface.  Specifically, this makes partition discovery, partition pruning, and writing dynamic partitions for data sources much easier.

To support appending, the Parquet data source tries to find out the max part number of part-files in the destination directory (i.e., `<id>` in output file name `part-r-<id>.gz.parquet`) at the beginning of the write job.  In 1.3.0, this step happens on driver side before any files are written.  However, in 1.4.0, this is moved to task side.  Unfortunately, for tasks scheduled later, they may see wrong max part number generated of files newly written by other finished tasks within the same job.  This actually causes a race condition.  In most cases, this only causes nonconsecutive part numbers in output file names.  But when the DataFrame contains thousands of RDD partitions, it's likely that two tasks may choose the same part number, then one of them gets overwritten by the other.

Before `HadoopFsRelation`, Spark SQL already supports appending data to Hive tables.  From a user's perspective, these two look similar.  However, they differ a lot internally.  When data are inserted into Hive tables via Spark SQL, `InsertIntoHiveTable` simulates Hive's behaviors:

1.  Write data to a temporary location

2.  Move data in the temporary location to the final destination location using

    -   `Hive.loadTable()` for non-partitioned table
    -   `Hive.loadPartition()` for static partitions
    -   `Hive.loadDynamicPartitions()` for dynamic partitions

The important part is that, `Hive.copyFiles()` is invoked in step 2 to move the data to the destination directory (I found the name is kinda confusing since no "copying" occurs here, we are just moving and renaming stuff).  If a file in the source directory and another file in the destination directory happen to have the same name, say `part-r-00001.parquet`, the former is moved to the destination directory and renamed with a `_copy_N` postfix (`part-r-00001_copy_1.parquet`).  That's how Hive handles appending and avoids name collision between different write jobs.

Some alternatives fixes considered for this issue:

1.  Use a similar approach as Hive

    This approach is not preferred in Spark 1.4.0 mainly because file metadata operations in S3 tend to be slow, especially for tables with lots of file and/or partitions.  That's why `InsertIntoHadoopFsRelation` just inserts to destination directory directly, and is often used together with `DirectParquetOutputCommitter` to reduce latency when working with S3.  This means, we don't have the chance to do renaming, and must avoid name collision from the very beginning.

2.  Same as 1.3, just move max part number detection back to driver side

    This isn't doable because unlike 1.3, 1.4 also takes dynamic partitioning into account.  When inserting into dynamic partitions, we don't know which partition directories will be touched on driver side before issuing the write job.  Checking all partition directories is simply too expensive for tables with thousands of partitions.

3.  Add extra component to output file names to avoid name collision

    This seems to be the only reasonable solution for now.  To be more specific, we need a JOB level unique identifier to identify all write jobs issued by `InsertIntoHadoopFile`.  Notice that TASK level unique identifiers can NOT be used.  Because in this way a speculative task will write to a different output file from the original task.  If both tasks succeed, duplicate output will be left behind.  Currently, the ORC data source adds `System.currentTimeMillis` to the output file name for uniqueness.  This doesn't work because of exactly the same reason.

    That's why this PR adds a job level random UUID in `BaseWriterContainer` (which is used by `InsertIntoHadoopFsRelation` to issue write jobs).  The drawback is that record order is not preserved any more (output files of a later job may be listed before those of a earlier job).  However, we never promise to preserve record order when writing data, and Hive doesn't promise this either because the `_copy_N` trick breaks the order.

Author: Cheng Lian <lian@databricks.com>

Closes #6864 from liancheng/spark-8406 and squashes the following commits:

db7a46a [Cheng Lian] More comments
f5c1133 [Cheng Lian] Addresses comments
85c478e [Cheng Lian] Workarounds SPARK-8513
088c76c [Cheng Lian] Adds comment about SPARK-8501
99a5e7e [Cheng Lian] Uses job level UUID in SimpleTextRelation and avoids double task abortion
4088226 [Cheng Lian] Works around SPARK-8501
1d7d206 [Cheng Lian] Adds more logs
8966bbb [Cheng Lian] Fixes Scala style issue
18b7003 [Cheng Lian] Uses job level UUID to take speculative tasks into account
3806190 [Cheng Lian] Lets TestHive use all cores by default
748dbd7 [Cheng Lian] Adding UUID to output file name to avoid accidental overwriting
2015-06-22 10:03:57 -07:00
Michael Armbrust a333a72e02 [SPARK-8420] [SQL] Fix comparision of timestamps/dates with strings
In earlier versions of Spark SQL we casted `TimestampType` and `DataType` to `StringType` when it was involved in a binary comparison with a `StringType`.  This allowed comparing a timestamp with a partial date as a user would expect.
 - `time > "2014-06-10"`
 - `time > "2014"`

In 1.4.0 we tried to cast the String instead into a Timestamp.  However, since partial dates are not a valid complete timestamp this results in `null` which results in the tuple being filtered.

This PR restores the earlier behavior.  Note that we still special case equality so that these comparisons are not affected by not printing zeros for subsecond precision.

Author: Michael Armbrust <michael@databricks.com>

Closes #6888 from marmbrus/timeCompareString and squashes the following commits:

bdef29c [Michael Armbrust] test partial date
1f09adf [Michael Armbrust] special handling of equality
1172c60 [Michael Armbrust] more test fixing
4dfc412 [Michael Armbrust] fix tests
aaa9508 [Michael Armbrust] newline
04d908f [Michael Armbrust] [SPARK-8420][SQL] Fix comparision of timestamps/dates with strings
2015-06-19 16:54:51 -07:00
Nathan Howell 9814b971f0 [SPARK-8093] [SQL] Remove empty structs inferred from JSON documents
Author: Nathan Howell <nhowell@godaddy.com>

Closes #6799 from NathanHowell/spark-8093 and squashes the following commits:

76ac3e8 [Nathan Howell] [SPARK-8093] [SQL] Remove empty structs inferred from JSON documents
2015-06-19 16:19:28 -07:00
Shilei 0c32fc125c [SPARK-8234][SQL] misc function: md5
Author: Shilei <shilei.qian@intel.com>

Closes #6779 from qiansl127/MD5 and squashes the following commits:

11fcdb2 [Shilei] Fix the indent
04bd27b [Shilei] Add codegen
da60eb3 [Shilei] Remove checkInputDataTypes function
9509ad0 [Shilei] Format code
12c61f4 [Shilei] Accept only BinaryType for Md5
1df0b5b [Shilei] format to scala type
60ccde1 [Shilei] Add more test case
b8c73b4 [Shilei] Rewrite the type check for Md5
c166167 [Shilei] Add md5 function
2015-06-19 10:49:27 -07:00
Liang-Chi Hsieh 2c59d5c12a [SPARK-8207] [SQL] Add math function bin
JIRA: https://issues.apache.org/jira/browse/SPARK-8207

Author: Liang-Chi Hsieh <viirya@gmail.com>

Closes #6721 from viirya/expr_bin and squashes the following commits:

07e1c8f [Liang-Chi Hsieh] Remove AbstractUnaryMathExpression and let BIN inherit UnaryExpression.
0677f1a [Liang-Chi Hsieh] For comments.
cf62b95 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into expr_bin
0cf20f2 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into expr_bin
dea9c12 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into expr_bin
d4f4774 [Liang-Chi Hsieh] Add @ignore_unicode_prefix.
7a0196f [Liang-Chi Hsieh] Fix python style.
ac2bacd [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into expr_bin
a0a2d0f [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into expr_bin
4cb764d [Liang-Chi Hsieh] For comments.
0f78682 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into expr_bin
c0c3197 [Liang-Chi Hsieh] Add bin to FunctionRegistry.
824f761 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into expr_bin
50e0c3b [Liang-Chi Hsieh] Add math function bin(a: long): string.
2015-06-19 10:09:31 -07:00
Yu ISHIKAWA 754929b153 [SPARK-8348][SQL] Add in operator to DataFrame Column
I have added it for only Scala.

TODO: we should also support `in` operator in Python.

Author: Yu ISHIKAWA <yuu.ishikawa@gmail.com>

Closes #6824 from yu-iskw/SPARK-8348 and squashes the following commits:

e76d02f [Yu ISHIKAWA] Not use infix notation
6f744ac [Yu ISHIKAWA] Fit the test cases because these used the old test data set.
00077d3 [Yu ISHIKAWA] [SPARK-8348][SQL] Add in operator to DataFrame Column
2015-06-18 23:13:05 -07:00
Sandy Ryza 43f50decdd [SPARK-8135] Don't load defaults when reconstituting Hadoop Configurations
Author: Sandy Ryza <sandy@cloudera.com>

Closes #6679 from sryza/sandy-spark-8135 and squashes the following commits:

c5554ff [Sandy Ryza] SPARK-8135. In SerializableWritable, don't load defaults when instantiating Configuration
2015-06-18 19:36:05 -07:00
Josh Rosen 207a98ca59 [SPARK-8446] [SQL] Add helper functions for testing SparkPlan physical operators
This patch introduces `SparkPlanTest`, a base class for unit tests of SparkPlan physical operators.  This is analogous to Spark SQL's existing `QueryTest`, which does something similar for end-to-end tests with actual queries.

These helper methods provide nicer error output when tests fail and help developers to avoid writing lots of boilerplate in order to execute manually constructed physical plans.

Author: Josh Rosen <joshrosen@databricks.com>
Author: Josh Rosen <rosenville@gmail.com>
Author: Michael Armbrust <michael@databricks.com>

Closes #6885 from JoshRosen/spark-plan-test and squashes the following commits:

f8ce275 [Josh Rosen] Fix some IntelliJ inspections and delete some dead code
84214be [Josh Rosen] Add an extra column which isn't part of the sort
ae1896b [Josh Rosen] Provide implicits automatically
a80f9b0 [Josh Rosen] Merge pull request #4 from marmbrus/pr/6885
d9ab1e4 [Michael Armbrust] Add simple resolver
c60a44d [Josh Rosen] Manually bind references
996332a [Josh Rosen] Add types so that tests compile
a46144a [Josh Rosen] WIP
2015-06-18 16:45:14 -07:00
Liang-Chi Hsieh 31641128b3 [SPARK-8363][SQL] Move sqrt to math and extend UnaryMathExpression
JIRA: https://issues.apache.org/jira/browse/SPARK-8363

Author: Liang-Chi Hsieh <viirya@gmail.com>

Closes #6823 from viirya/move_sqrt and squashes the following commits:

8977e11 [Liang-Chi Hsieh] Remove unnecessary old tests.
d23e79e [Liang-Chi Hsieh] Explicitly indicate sqrt value sequence.
699f48b [Liang-Chi Hsieh] Use correct @since tag.
8dff6d1 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into move_sqrt
bc2ed77 [Liang-Chi Hsieh] Remove/move arithmetic expression test and expression type checking test. Remove unnecessary Sqrt type rule.
d38492f [Liang-Chi Hsieh] Now sqrt accepts boolean because type casting is handled by HiveTypeCoercion.
297cc90 [Liang-Chi Hsieh] Sqrt only accepts double input.
ef4a21a [Liang-Chi Hsieh] Move sqrt to math.
2015-06-18 13:00:31 -07:00
Liang-Chi Hsieh fee3438a32 [SPARK-8218][SQL] Add binary log math function
JIRA: https://issues.apache.org/jira/browse/SPARK-8218

Because there is already `log` unary function defined, the binary log function is called `logarithm` for now.

Author: Liang-Chi Hsieh <viirya@gmail.com>

Closes #6725 from viirya/expr_binary_log and squashes the following commits:

bf96bd9 [Liang-Chi Hsieh] Compare log result in string.
102070d [Liang-Chi Hsieh] Round log result to better comparing in python test.
fd01863 [Liang-Chi Hsieh] For comments.
beed631 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into expr_binary_log
6089d11 [Liang-Chi Hsieh] Remove unnecessary override.
8cf37b7 [Liang-Chi Hsieh] For comments.
bc89597 [Liang-Chi Hsieh] For comments.
db7dc38 [Liang-Chi Hsieh] Use ctor instead of companion object.
0634ef7 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into expr_binary_log
1750034 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into expr_binary_log
3d75bfc [Liang-Chi Hsieh] Fix scala style.
5b39c02 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into expr_binary_log
23c54a3 [Liang-Chi Hsieh] Fix scala style.
ebc9929 [Liang-Chi Hsieh] Let Logarithm accept one parameter too.
605574d [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into expr_binary_log
21c3bfd [Liang-Chi Hsieh] Fix scala style.
c6c187f [Liang-Chi Hsieh] For comments.
c795342 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into expr_binary_log
f373bac [Liang-Chi Hsieh] Add binary log expression.
2015-06-17 23:31:30 -07:00
zsxwing 78a430ea4d [SPARK-7961][SQL]Refactor SQLConf to display better error message
1. Add `SQLConfEntry` to store the information about a configuration. For those configurations that cannot be found in `sql-programming-guide.md`, I left the doc as `<TODO>`.
2. Verify the value when setting a configuration if this is in SQLConf.
3. Use `SET -v` to display all public configurations.

Author: zsxwing <zsxwing@gmail.com>

Closes #6747 from zsxwing/sqlconf and squashes the following commits:

7d09bad [zsxwing] Use SQLConfEntry in HiveContext
49f6213 [zsxwing] Add getConf, setConf to SQLContext and HiveContext
e014f53 [zsxwing] Merge branch 'master' into sqlconf
93dad8e [zsxwing] Fix the unit tests
cf950c1 [zsxwing] Fix the code style and tests
3c5f03e [zsxwing] Add unsetConf(SQLConfEntry) and fix the code style
a2f4add [zsxwing] getConf will return the default value if a config is not set
037b1db [zsxwing] Add schema to SetCommand
0520c3c [zsxwing] Merge branch 'master' into sqlconf
7afb0ec [zsxwing] Fix the configurations about HiveThriftServer
7e728e3 [zsxwing] Add doc for SQLConfEntry and fix 'toString'
5e95b10 [zsxwing] Add enumConf
c6ba76d [zsxwing] setRawString => setConfString, getRawString => getConfString
4abd807 [zsxwing] Fix the test for 'set -v'
6e47e56 [zsxwing] Fix the compilation error
8973ced [zsxwing] Remove floatConf
1fc3a8b [zsxwing] Remove the 'conf' command and use 'set -v' instead
99c9c16 [zsxwing] Fix tests that use SQLConfEntry as a string
88a03cc [zsxwing] Add new lines between confs and return types
ce7c6c8 [zsxwing] Remove seqConf
f3c1b33 [zsxwing] Refactor SQLConf to display better error message
2015-06-17 23:22:54 -07:00
Lianhui Wang 9db73ec124 [SPARK-8381][SQL]reuse typeConvert when convert Seq[Row] to catalyst type
reuse-typeConvert when convert Seq[Row] to CatalystType

Author: Lianhui Wang <lianhuiwang09@gmail.com>

Closes #6831 from lianhuiwang/reuse-typeConvert and squashes the following commits:

1fec395 [Lianhui Wang] remove CatalystTypeConverters.convertToCatalyst
714462d [Lianhui Wang] add package[sql]
9d1fbf3 [Lianhui Wang] address JoshRosen's comments
768956f [Lianhui Wang] update scala style
4498c62 [Lianhui Wang] reuse typeConvert
2015-06-17 22:52:47 -07:00
Wenchen Fan 7f05b1fe69 [SPARK-7067] [SQL] fix bug when use complex nested fields in ORDER BY
This PR is a improvement for https://github.com/apache/spark/pull/5189.

The resolution rule for ORDER BY is: first resolve based on what comes from the select clause and then fall back on its child only when this fails.

There are 2 steps. First, try to resolve `Sort` in `ResolveReferences` based on select clause, and ignore exceptions. Second, try to resolve `Sort` in `ResolveSortReferences` and add missing projection.

However, the way we resolve `SortOrder` is wrong. We just resolve `UnresolvedAttribute` and use the result to indicate if we can resolve `SortOrder`. But `UnresolvedAttribute` is only part of `GetField` chain(broken by `GetItem`), so we need to go through the whole chain to indicate if we can resolve `SortOrder`.

With this change, we can also avoid re-throw GetField exception in `CheckAnalysis` which is little ugly.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #5659 from cloud-fan/order-by and squashes the following commits:

cfa79f8 [Wenchen Fan] update test
3245d28 [Wenchen Fan] minor improve
465ee07 [Wenchen Fan] address comment
1fc41a2 [Wenchen Fan] fix SPARK-7067
2015-06-17 14:46:00 -07:00
OopsOutOfMemory 98ee3512b2 [SPARK-8010] [SQL] Promote types to StringType as implicit conversion in non-binary expression of HiveTypeCoercion
1. Given a query
`select coalesce(null, 1, '1') from dual` will cause exception:
java.lang.RuntimeException: Could not determine return type of Coalesce for IntegerType,StringType
2. Given a query:
`select case when true then 1 else '1' end from dual` will cause exception:
java.lang.RuntimeException: Types in CASE WHEN must be the same or coercible to a common type: StringType != IntegerType
I checked the code, the main cause is the HiveTypeCoercion doesn't do implicit convert when there is a IntegerType and StringType.

Numeric types can be promoted to string type

Hive will always do this implicit conversion.

Author: OopsOutOfMemory <victorshengli@126.com>

Closes #6551 from OopsOutOfMemory/pnts and squashes the following commits:

7a209d7 [OopsOutOfMemory] rebase master
6018613 [OopsOutOfMemory] convert function to method
4cd5618 [OopsOutOfMemory] limit the data type to primitive type
df365d2 [OopsOutOfMemory] refine
95cbd58 [OopsOutOfMemory] fix style
403809c [OopsOutOfMemory] promote non-string to string when can not found tighestCommonTypeOfTwo
2015-06-17 13:37:59 -07:00
dragonli bedff7d532 [SPARK-8220][SQL]Add positive identify function
chenghao-intel adrian-wang

Author: dragonli <lisurprise@gmail.com>
Author: zhichao.li <zhichao.li@intel.com>

Closes #6838 from zhichao-li/positive and squashes the following commits:

e1032a0 [dragonli] remove useless import and refactor code
624d438 [zhichao.li] add positive identify function
2015-06-16 23:44:10 -07:00
Radek Ostrowski 4bd10fd509 [SQL] [DOC] improved a comment
[SQL][DOC] I found it a bit confusing when I came across it for the first time in the docs

Author: Radek Ostrowski <dest.hawaii@gmail.com>
Author: radek <radek@radeks-MacBook-Pro-2.local>

Closes #6332 from radek1st/master and squashes the following commits:

dae3347 [Radek Ostrowski] fixed typo
c76bb3a [radek] improved a comment
2015-06-16 21:04:26 +01:00
Davies Liu bc76a0f750 [SPARK-7184] [SQL] enable codegen by default
In order to have better performance out of box, this PR turn on codegen by default, then codegen can be tested by sql/test and hive/test.

This PR also fix some corner cases for codegen.

Before 1.5 release, we should re-visit this, turn it off if it's not stable or causing regressions.

cc rxin JoshRosen

Author: Davies Liu <davies@databricks.com>

Closes #6726 from davies/enable_codegen and squashes the following commits:

f3b25a5 [Davies Liu] fix warning
73750ea [Davies Liu] fix long overflow when compare
3017a47 [Davies Liu] Merge branch 'master' of github.com:apache/spark into enable_codegen
a7d75da [Davies Liu] Merge branch 'master' of github.com:apache/spark into enable_codegen
ff5b75a [Davies Liu] Merge branch 'master' of github.com:apache/spark into enable_codegen
f4cf2c2 [Davies Liu] fix style
99fc139 [Davies Liu] Merge branch 'enable_codegen' of github.com:davies/spark into enable_codegen
91fc7a2 [Davies Liu] disable codegen for ScalaUDF
207e339 [Davies Liu] Update CodeGenerator.scala
44573a3 [Davies Liu] check thread safety of expression
f3886fa [Davies Liu] don't inline primitiveTerm for null literal
c8e7cd2 [Davies Liu] address comment
a8618c9 [Davies Liu] enable codegen by default
2015-06-15 23:03:14 -07:00
Yadong Qi 6ae21a944a [SPARK-6583] [SQL] Support aggregate functions in ORDER BY
Add aggregates in ORDER BY clauses to the `Aggregate` operator beneath.  Project these results away after the Sort.

Based on work by watermen.  Also Closes #5290.

Author: Yadong Qi <qiyadong2010@gmail.com>
Author: Michael Armbrust <michael@databricks.com>

Closes #6816 from marmbrus/pr/5290 and squashes the following commits:

3226a97 [Michael Armbrust] consistent ordering
eb8938d [Michael Armbrust] no vars
c8b25c1 [Yadong Qi] move the test data.
7f9b736 [Yadong Qi] delete Substring case
a1e87c1 [Yadong Qi] fix conflict
f119849 [Yadong Qi] order by aggregated function
2015-06-15 12:01:52 -07:00
Michael Armbrust 9073a426e4 [SPARK-8358] [SQL] Wait for child resolution when resolving generators
Author: Michael Armbrust <michael@databricks.com>

Closes #6811 from marmbrus/aliasExplodeStar and squashes the following commits:

fbd2065 [Michael Armbrust] more style
806a373 [Michael Armbrust] fix style
7cbb530 [Michael Armbrust] [SPARK-8358][SQL] Wait for child resolution when resolving generatorsa
2015-06-14 11:21:42 -07:00
Reynold Xin a138953391 [SPARK-8347][SQL] Add unit tests for abs.
Also addressed code review feedback from #6754

Author: Reynold Xin <rxin@databricks.com>

Closes #6803 from rxin/abs and squashes the following commits:

d07beba [Reynold Xin] [SPARK-8347] Add unit tests for abs.
2015-06-13 17:10:13 -07:00
Josh Rosen af31335adc [SPARK-8319] [CORE] [SQL] Update logic related to key orderings in shuffle dependencies
This patch updates two pieces of logic that are related to handling of keyOrderings in ShuffleDependencies:

- The Tungsten ShuffleManager falls back to regular SortShuffleManager whenever the shuffle dependency specifies a key ordering, but technically we only need to fall back when an aggregator is also specified. This patch updates the fallback logic to reflect this so that the Tungsten optimizations can apply to more workloads.

- The SQL Exchange operator performs defensive copying of shuffle inputs when a key ordering is specified, but this is unnecessary. The copying was added to guard against cases where ExternalSorter would buffer non-serialized records in memory.  When ExternalSorter is configured without an aggregator, it uses the following logic to determine whether to buffer records in a serialized or deserialized format:

   ```scala
     private val useSerializedPairBuffer =
        ordering.isEmpty &&
        conf.getBoolean("spark.shuffle.sort.serializeMapOutputs", true) &&
        ser.supportsRelocationOfSerializedObjects
   ```

   The `newOrdering.isDefined` branch in `ExternalSorter.needToCopyObjectsBeforeShuffle`, removed by this patch, is not necessary:

   - It was checked even if we weren't using sort-based shuffle, but this was unnecessary because only SortShuffleManager performs map-side sorting.
   - Map-side sorting during shuffle writing is only performed for shuffles that perform map-side aggregation as part of the shuffle (to see this, look at how SortShuffleWriter constructs ExternalSorter).  Since SQL never pushes aggregation into Spark's shuffle, we can guarantee that both the aggregator and ordering will be empty and Spark SQL always uses serializers that support relocation, so sort-shuffle will use the serialized pair buffer unless the user has explicitly disabled it via the SparkConf feature-flag.  Therefore, I think my optimization in Exchange should be safe.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #6773 from JoshRosen/SPARK-8319 and squashes the following commits:

7a14129 [Josh Rosen] Revise comments; add handler to guard against future ShuffleManager implementations
07bb2c9 [Josh Rosen] Update comment to clarify circumstances under which shuffle operates on serialized records
269089a [Josh Rosen] Avoid unnecessary copy in SQL Exchange
34e526e [Josh Rosen] Enable Tungsten shuffle for non-agg shuffles w/ key orderings
2015-06-13 16:14:24 -07:00
Davies Liu ce1041c38f [SPARK-8346] [SQL] Use InternalRow instread of catalyst.InternalRow
cc rxin marmbrus

Author: Davies Liu <davies@databricks.com>

Closes #6802 from davies/cleanup_internalrow and squashes the following commits:

769d2aa [Davies Liu] remove not needed cast
4acbbe4 [Davies Liu] catalyst.Internal -> InternalRow
2015-06-13 16:13:26 -07:00
Rene Treffer d986fb9a37 [SPARK-7897] Improbe type for jdbc/"unsigned bigint"
The original fix uses DecimalType.Unlimited, which is harder to
handle afterwards. There is no scale and most data should fit into
a long, thus DecimalType(20,0) should be better.

Author: Rene Treffer <treffer@measite.de>

Closes #6789 from rtreffer/spark-7897-unsigned-bigint-as-decimal and squashes the following commits:

2006613 [Rene Treffer] Fix type for "unsigned bigint" jdbc loading.
2015-06-13 11:58:22 -07:00
Michael Armbrust 4aed66f299 [SPARK-8329][SQL] Allow _ in DataSource options
Author: Michael Armbrust <michael@databricks.com>

Closes #6786 from marmbrus/optionsParser and squashes the following commits:

e7d18ef [Michael Armbrust] add dots
99a3452 [Michael Armbrust] [SPARK-8329][SQL] Allow _ in DataSource options
2015-06-12 23:11:16 -07:00
Davies Liu d46f8e5d4b [SPARK-7186] [SQL] Decouple internal Row from external Row
Currently, we use o.a.s.sql.Row both internally and externally. The external interface is wider than what the internal needs because it is designed to facilitate end-user programming. This design has proven to be very error prone and cumbersome for internal Row implementations.

As a first step, we create an InternalRow interface in the catalyst module, which is identical to the current Row interface. And we switch all internal operators/expressions to use this InternalRow instead. When we need to expose Row, we convert the InternalRow implementation into Row for users.

For all public API, we use Row (for example, data source APIs), which will be converted into/from InternalRow by CatalystTypeConverters.

For all internal data sources (Json, Parquet, JDBC, Hive), we use InternalRow for better performance, casted into Row in buildScan() (without change the public API). When create a PhysicalRDD, we cast them back to InternalRow.

cc rxin marmbrus JoshRosen

Author: Davies Liu <davies@databricks.com>

Closes #6792 from davies/internal_row and squashes the following commits:

f2abd13 [Davies Liu] fix scalastyle
a7e025c [Davies Liu] move InternalRow into catalyst
30db8ba [Davies Liu] Merge branch 'master' of github.com:apache/spark into internal_row
7cbced8 [Davies Liu] separate Row and InternalRow
2015-06-12 23:06:31 -07:00
akhilthatipamula 19834fa918 [SPARK-7993] [SQL] Improved DataFrame.show() output
Closes #6633

Author: akhilthatipamula <130050068@iitb.ac.in>
Author: zsxwing <zsxwing@gmail.com>

Closes #6784 from zsxwing/pr6633 and squashes the following commits:

5da1c51 [zsxwing] Address comments and add unit tests
17eab7b [akhilthatipamula] refactored code
19874b3 [akhilthatipamula] Update DataFrame.scala
0a76a5e [akhilthatipamula] Optimised showString()
e3dd03f [akhilthatipamula] Modified showString() method
a21012b [akhilthatipamula] improved the show()
4bb742f [akhilthatipamula] Modified dataframe.show() method
2015-06-12 10:40:28 -07:00
Wenchen Fan c19c78577a [SQL] [MINOR] correct semanticEquals logic
It's a follow up of https://github.com/apache/spark/pull/6173, for expressions like `Coalesce` that have a `Seq[Expression]`, when we do semantic equal check for it, we need to do semantic equal check for all of its children.
Also we can just use `Seq[(Expression, NamedExpression)]` instead of `Map[Expression, NamedExpression]` as we only search it with `find`.

chenghao-intel, I agree that we probably never knows `semanticEquals` in a general way, but I think we have done that in `TreeNode`, so we can use similar logic. Then we can handle something like `Coalesce(children: Seq[Expression])` correctly.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #6261 from cloud-fan/tmp and squashes the following commits:

4daef88 [Wenchen Fan] address comments
dd8fbd9 [Wenchen Fan] correct semanticEquals
2015-06-12 16:38:28 +08:00
Yash Datta e428b3a951 [SPARK-6566] [SQL] Related changes for newer parquet version
This brings in major improvement in that footers are not read on the driver. This also cleans up the code in parquetTableOperations, where we had to override getSplits to eliminate multiple listStatus calls.

cc liancheng

are there any other changes we need for this ?

Author: Yash Datta <Yash.Datta@guavus.com>

Closes #5889 from saucam/parquet_1.6 and squashes the following commits:

d1bf41e [Yash Datta] SPARK-7340: Fix scalastyle and incorporate review comments
c9aa042 [Yash Datta] SPARK-7340: Use the new user defined filter predicate for pushing down inset into parquet
56bc750 [Yash Datta] SPARK-7340: Change parquet version to latest release
2015-06-12 13:44:09 +08:00
Josh Rosen b9d177c511 [SPARK-8317] [SQL] Do not push sort into shuffle in Exchange operator
In some cases, Spark SQL pushes sorting operations into the shuffle layer by specifying a key ordering as part of the shuffle dependency. I think that we should not do this:

- Since we do not delegate aggregation to Spark's shuffle, specifying the keyOrdering as part of the shuffle has no effect on the shuffle map side.
- By performing the shuffle ourselves (by inserting a sort operator after the shuffle instead), we can use the Exchange planner to choose specialized sorting implementations based on the types of rows being sorted.
- We can remove some complexity from SqlSerializer2 by not requiring it to know about sort orderings, since SQL's own sort operators will already perform the necessary defensive copying.

This patch removes Exchange's `canSortWithShuffle` path and the associated code in `SqlSerializer2`.  Shuffles that used to go through the `canSortWithShuffle` path would always wind up using Spark's `ExternalSorter` (inside of `HashShuffleReader`); to avoid a performance regression as a result of handling these shuffles ourselves, I've changed the SQLConf defaults so that external sorting is enabled by default.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #6772 from JoshRosen/SPARK-8317 and squashes the following commits:

ebf9c0f [Josh Rosen] Do not push sort into shuffle in Exchange operator
bf3b4c8 [Josh Rosen] Enable external sort by default
2015-06-11 22:15:15 -07:00
Cheng Hao 767cc94ca6 [SPARK-7158] [SQL] Fix bug of cached data cannot be used in collect() after cache()
When df.cache() method called, the `withCachedData` of `QueryExecution` has been created, which mean it will not look up the cached tables when action method called afterward.

Author: Cheng Hao <hao.cheng@intel.com>

Closes #5714 from chenghao-intel/SPARK-7158 and squashes the following commits:

58ea8aa [Cheng Hao] style issue
2bf740f [Cheng Hao] create new QueryExecution instance for CacheManager
a5647d9 [Cheng Hao] hide the queryExecution of DataFrame
fbfd3c5 [Cheng Hao] make the DataFrame.queryExecution mutable for cache/persist/unpersist
2015-06-11 18:01:47 -07:00
Reynold Xin 337c16d57e [SQL] Miscellaneous SQL/DF expression changes.
SPARK-8201 conditional function: if
SPARK-8205 conditional function: nvl
SPARK-8208 math function: ceiling
SPARK-8210 math function: degrees
SPARK-8211 math function: radians
SPARK-8219 math function: negative
SPARK-8216 math function: rename log -> ln
SPARK-8222 math function: alias power / pow
SPARK-8225 math function: alias sign / signum
SPARK-8228 conditional function: isnull
SPARK-8229 conditional function: isnotnull
SPARK-8250 string function: alias lower/lcase
SPARK-8251 string function: alias upper / ucase

Author: Reynold Xin <rxin@databricks.com>

Closes #6754 from rxin/expressions-misc and squashes the following commits:

35fce15 [Reynold Xin] Removed println.
2647067 [Reynold Xin] Promote to string type.
3c32bbc [Reynold Xin] Fixed if.
de827ac [Reynold Xin] Fixed style
b201cd4 [Reynold Xin] Removed if.
6b21a9b [Reynold Xin] [SQL] Miscellaneous SQL/DF expression changes.
2015-06-11 17:06:21 -07:00
Reynold Xin 7d669a56ff [SPARK-8286] Rewrite UTF8String in Java and move it into unsafe package.
Unit test is still in Scala.

Author: Reynold Xin <rxin@databricks.com>

Closes #6738 from rxin/utf8string-java and squashes the following commits:

562dc6e [Reynold Xin] Flag...
98e600b [Reynold Xin] Another try with encoding setting ..
cfa6bdf [Reynold Xin] Merge branch 'master' into utf8string-java
a3b124d [Reynold Xin] Try different UTF-8 encoded characters.
1ff7c82 [Reynold Xin] Enable UTF-8 encoding.
82d58cc [Reynold Xin] Reset run-tests.
2cb3c69 [Reynold Xin] Use utf-8 encoding in set bytes.
53f8ef4 [Reynold Xin] Hack Jenkins to run one test.
9a48e8d [Reynold Xin] Fixed runtime compilation error.
911c450 [Reynold Xin] Moved unit test also to Java.
4eff7bd [Reynold Xin] Improved unit test coverage.
8e89a3c [Reynold Xin] Fixed tests.
77c64bd [Reynold Xin] Fixed string type codegen.
ffedb62 [Reynold Xin] Code review feedback.
0967ce6 [Reynold Xin] Fixed import ordering.
45a123d [Reynold Xin] [SPARK-8286] Rewrite UTF8String in Java and move it into unsafe package.
2015-06-11 16:07:15 -07:00
Davies Liu 424b0075a1 [SPARK-6411] [SQL] [PySpark] support date/datetime with timezone in Python
Spark SQL does not support timezone, and Pyrolite does not support timezone well. This patch will convert datetime into POSIX timestamp (without confusing of timezone), which is used by SQL. If the datetime object does not have timezone, it's treated as local time.

The timezone in RDD will be lost after one round trip, all the datetime from SQL will be local time.

Because of Pyrolite, datetime from SQL only has precision as 1 millisecond.

This PR also drop the timezone in date, convert it to number of days since epoch (used in SQL).

Author: Davies Liu <davies@databricks.com>

Closes #6250 from davies/tzone and squashes the following commits:

44d8497 [Davies Liu] add timezone support for DateType
99d9d9c [Davies Liu] use int for timestamp
10aa7ca [Davies Liu] Merge branch 'master' of github.com:apache/spark into tzone
6a29aa4 [Davies Liu] support datetime with timezone
2015-06-11 01:00:41 -07:00
Daoyuan Wang 2758ff0a96 [SPARK-8217] [SQL] math function log2
Author: Daoyuan Wang <daoyuan.wang@intel.com>

This patch had conflicts when merged, resolved by
Committer: Reynold Xin <rxin@databricks.com>

Closes #6718 from adrian-wang/udflog2 and squashes the following commits:

3909f48 [Daoyuan Wang] math function: log2
2015-06-10 20:22:32 -07:00
Cheng Hao 9fe3adccef [SPARK-8248][SQL] string function: length
Author: Cheng Hao <hao.cheng@intel.com>

Closes #6724 from chenghao-intel/length and squashes the following commits:

aaa3c31 [Cheng Hao] revert the additional change
97148a9 [Cheng Hao] remove the codegen testing temporally
ae08003 [Cheng Hao] update the comments
1eb1fd1 [Cheng Hao] simplify the code as commented
3e92d32 [Cheng Hao] use the selectExpr in unit test intead of SQLQuery
3c729aa [Cheng Hao] fix bug for constant null value in codegen
3641f06 [Cheng Hao] keep the length() method for registered function
8e30171 [Cheng Hao] update the code as comment
db604ae [Cheng Hao] Add code gen support
548d2ef [Cheng Hao] register the length()
09a0738 [Cheng Hao] add length support
2015-06-10 19:55:10 -07:00
Wenchen Fan 4e42842e82 [SPARK-8164] transformExpressions should support nested expression sequence
Currently we only support `Seq[Expression]`, we should handle cases like `Seq[Seq[Expression]]` so that we can remove the unnecessary `GroupExpression`.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #6706 from cloud-fan/clean and squashes the following commits:

60a1193 [Wenchen Fan] support nested expression sequence and remove GroupExpression
2015-06-10 18:22:47 -07:00
navis.ryu 6a47114bc2 [SPARK-8285] [SQL] CombineSum should be calculated as unlimited decimal first
case cs  CombineSum(expr) =>
        val calcType = expr.dataType
          expr.dataType match {
            case DecimalType.Fixed(_, _) =>
              DecimalType.Unlimited
            case _ =>
              expr.dataType
          }
calcType is always expr.dataType. credits are all belong to IntelliJ

Author: navis.ryu <navis@apache.org>

Closes #6736 from navis/SPARK-8285 and squashes the following commits:

20382c1 [navis.ryu] [SPARK-8285] [SQL] CombineSum should be calculated as unlimited decimal first
2015-06-10 18:19:12 -07:00
Davies Liu 37719e0cd0 [SPARK-8189] [SQL] use Long for TimestampType in SQL
This PR change to use Long as internal type for TimestampType for efficiency, which means it will the precision below 100ns.

Author: Davies Liu <davies@databricks.com>

Closes #6733 from davies/timestamp and squashes the following commits:

d9565fa [Davies Liu] remove print
65cf2f1 [Davies Liu] fix Timestamp in SparkR
86fecfb [Davies Liu] disable two timestamp tests
8f77ee0 [Davies Liu] fix scala style
246ee74 [Davies Liu] address comments
309d2e1 [Davies Liu] use Long for TimestampType in SQL
2015-06-10 16:55:39 -07:00
Daoyuan Wang c6ba7cca33 [SPARK-8215] [SPARK-8212] [SQL] add leaf math expression for e and pi
Author: Daoyuan Wang <daoyuan.wang@intel.com>

Closes #6716 from adrian-wang/epi and squashes the following commits:

e2e8dbd [Daoyuan Wang] move tests
11b351c [Daoyuan Wang] add tests and remove pu
db331c9 [Daoyuan Wang] py style
599ddd8 [Daoyuan Wang] add py
e6783ef [Daoyuan Wang] register function
82d426e [Daoyuan Wang] add function entry
dbf3ab5 [Daoyuan Wang] add PI and E
2015-06-10 09:45:45 -07:00
Reynold Xin e90035e676 [SPARK-7886] Added unit test for HAVING aggregate pushdown.
This is a followup to #6712.

Author: Reynold Xin <rxin@databricks.com>

Closes #6739 from rxin/6712-followup and squashes the following commits:

fd9acfb [Reynold Xin] [SPARK-7886] Added unit test for HAVING aggregate pushdown.
2015-06-10 18:58:01 +08:00
Reynold Xin 57c60c5be7 [SPARK-7886] Use FunctionRegistry for built-in expressions in HiveContext.
This builds on #6710 and also uses FunctionRegistry for function lookup in HiveContext.

Author: Reynold Xin <rxin@databricks.com>

Closes #6712 from rxin/udf-registry-hive and squashes the following commits:

f4c2df0 [Reynold Xin] Fixed style violation.
0bd4127 [Reynold Xin] Fixed Python UDFs.
f9a0378 [Reynold Xin] Disable one more test.
5609494 [Reynold Xin] Disable some failing tests.
4efea20 [Reynold Xin] Don't check children resolved for UDF resolution.
2ebe549 [Reynold Xin] Removed more hardcoded functions.
aadce78 [Reynold Xin] [SPARK-7886] Use FunctionRegistry for built-in expressions in HiveContext.
2015-06-10 00:36:16 -07:00
Reynold Xin 1b499993ad [SPARK-7886] Add built-in expressions to FunctionRegistry.
This patch switches to using FunctionRegistry for built-in expressions. It is based on #6463, but with some work to simplify it along with unit tests.

TODOs for future pull requests:
- Use static registration so we don't need to register all functions every time we start a new SQLContext
- Switch to using this in HiveContext

Author: Reynold Xin <rxin@databricks.com>
Author: Santiago M. Mola <santi@mola.io>

Closes #6710 from rxin/udf-registry and squashes the following commits:

6930822 [Reynold Xin] Fixed Python test.
b802c9a [Reynold Xin] Made UDF case insensitive.
e60d815 [Reynold Xin] Made UDF case insensitive.
852f9c0 [Reynold Xin] Fixed style violation.
e76a3c1 [Reynold Xin] Fixed parser.
52ddaba [Reynold Xin] Fixed compilation.
ee7854f [Reynold Xin] Improved error reporting.
ff906f2 [Reynold Xin] More robust constructor calling.
77b46f1 [Reynold Xin] Simplified the code.
2a2a149 [Reynold Xin] Merge pull request #6463 from smola/SPARK-7886
8616924 [Santiago M. Mola] [SPARK-7886] Add built-in expressions to FunctionRegistry.
2015-06-09 16:24:38 +08:00
Liang-Chi Hsieh 7658eb28a2 [SPARK-7990][SQL] Add methods to facilitate equi-join on multiple joining keys
JIRA: https://issues.apache.org/jira/browse/SPARK-7990

Author: Liang-Chi Hsieh <viirya@gmail.com>

Closes #6616 from viirya/multi_keys_equi_join and squashes the following commits:

cd5c888 [Liang-Chi Hsieh] Import reduce in python3.
c43722c [Liang-Chi Hsieh] For comments.
0400e89 [Liang-Chi Hsieh] Fix scala style.
cc90015 [Liang-Chi Hsieh] Add methods to facilitate equi-join on multiple joining keys.
2015-06-08 23:27:05 -07:00
Reynold Xin 5185389168 [SPARK-8148] Do not use FloatType in partition column inference.
Use DoubleType instead to be more stable and robust.

Author: Reynold Xin <rxin@databricks.com>

Closes #6692 from rxin/SPARK-8148 and squashes the following commits:

6742ecc [Reynold Xin] [SPARK-8148] Do not use FloatType in partition column inference.
2015-06-08 13:15:44 -07:00
Cheng Lian bbdfc0a40f [SPARK-8121] [SQL] Fixes InsertIntoHadoopFsRelation job initialization for Hadoop 1.x
For Hadoop 1.x, `TaskAttemptContext` constructor clones the `Configuration` argument, thus configurations done in `HadoopFsRelation.prepareForWriteJob()` are not populated to *driver* side `TaskAttemptContext` (executor side configurations are properly populated). Currently this should only affect Parquet output committer class configuration.

Author: Cheng Lian <lian@databricks.com>

Closes #6669 from liancheng/spark-8121 and squashes the following commits:

73819e8 [Cheng Lian] Minor logging fix
fce089c [Cheng Lian] Adds more logging
b6f78a6 [Cheng Lian] Fixes compilation error introduced while rebasing
963a1aa [Cheng Lian] Addresses @yhuai's comment
c3a0b1a [Cheng Lian] Fixes InsertIntoHadoopFsRelation job initialization
2015-06-08 11:34:18 -07:00
Daoyuan Wang 49f19b954b [MINOR] change new Exception to IllegalArgumentException
Author: Daoyuan Wang <daoyuan.wang@intel.com>

Closes #6434 from adrian-wang/joinerr and squashes the following commits:

ee1b64f [Daoyuan Wang] break line
f7c53e9 [Daoyuan Wang] to IllegalArgumentException
f8dea2d [Daoyuan Wang] sys.err to IllegalStateException
be82259 [Daoyuan Wang] change new exception to sys.err
2015-06-08 09:41:06 -07:00
Liang-Chi Hsieh 03ef6be9ce [SPARK-7939] [SQL] Add conf to enable/disable partition column type inference
JIRA: https://issues.apache.org/jira/browse/SPARK-7939

Author: Liang-Chi Hsieh <viirya@gmail.com>

Closes #6503 from viirya/disable_partition_type_inference and squashes the following commits:

3e90470 [Liang-Chi Hsieh] Default to enable type inference and update docs.
455edb1 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into disable_partition_type_inference
9a57933 [Liang-Chi Hsieh] Add conf to enable/disable partition column type inference.
2015-06-08 17:50:38 +08:00
Reynold Xin f74be744d4 [SPARK-8149][SQL] Break ExpressionEvaluationSuite down to multiple files
Also moved a few files in expressions package around to match test suites.

Author: Reynold Xin <rxin@databricks.com>

Closes #6693 from rxin/expr-refactoring and squashes the following commits:

857599f [Reynold Xin] Fixed style violation.
c0eb74b [Reynold Xin] Fixed compilation.
b3a40f8 [Reynold Xin] Refactored expression test suites.
2015-06-07 18:45:24 -07:00
Davies Liu 5e7b6b67be [SPARK-8117] [SQL] Push codegen implementation into each Expression
This PR move codegen implementation of expressions into Expression class itself, make it easy to manage.

It introduces two APIs in Expression:
```
def gen(ctx: CodeGenContext): GeneratedExpressionCode
def genCode(ctx: CodeGenContext, ev: GeneratedExpressionCode): Code
```

gen(ctx) will call genSource(ctx, ev) to generate Java source code for the current expression. A expression needs to override genSource().

Here are the types:
```
type Term String
type Code String

/**
 * Java source for evaluating an [[Expression]] given a [[Row]] of input.
 */
case class GeneratedExpressionCode(var code: Code,
                               nullTerm: Term,
                               primitiveTerm: Term,
                               objectTerm: Term)
/**
 * A context for codegen, which is used to bookkeeping the expressions those are not supported
 * by codegen, then they are evaluated directly. The unsupported expression is appended at the
 * end of `references`, the position of it is kept in the code, used to access and evaluate it.
 */
class CodeGenContext {
  /**
   * Holding all the expressions those do not support codegen, will be evaluated directly.
   */
  val references: Seq[Expression] = new mutable.ArrayBuffer[Expression]()
}
```

This is basically #6660, but fixed style violation and compilation failure.

Author: Davies Liu <davies@databricks.com>
Author: Reynold Xin <rxin@databricks.com>

Closes #6690 from rxin/codegen and squashes the following commits:

e1368c2 [Reynold Xin] Fixed tests.
73db80e [Reynold Xin] Fixed compilation failure.
19d6435 [Reynold Xin] Fixed style violation.
9adaeaf [Davies Liu] address comments
f42c732 [Davies Liu] improve coverage and tests
bad6828 [Davies Liu] address comments
e03edaa [Davies Liu] consts fold
86fac2c [Davies Liu] fix style
02262c9 [Davies Liu] address comments
b5d3617 [Davies Liu] Merge pull request #5 from rxin/codegen
48c454f [Reynold Xin] Some code gen update.
2344bc0 [Davies Liu] fix test
12ff88a [Davies Liu] fix build
c5fb514 [Davies Liu] rename
8c6d82d [Davies Liu] update docs
b145047 [Davies Liu] fix style
e57959d [Davies Liu] add type alias
3ff25f8 [Davies Liu] refactor
593d617 [Davies Liu] pushing codegen into Expression
2015-06-07 14:11:20 -07:00
Reynold Xin d6d601a07b [SPARK-8004][SQL] Quote identifier in JDBC data source.
This is a follow-up patch to #6577 to replace columnEnclosing to quoteIdentifier.

I also did some minor cleanup to the JdbcDialect file.

Author: Reynold Xin <rxin@databricks.com>

Closes #6689 from rxin/jdbc-quote and squashes the following commits:

bad365f [Reynold Xin] Fixed test compilation...
e39e14e [Reynold Xin] Fixed compilation.
db9a8e0 [Reynold Xin] [SPARK-8004][SQL] Quote identifier in JDBC data source.
2015-06-07 10:52:02 -07:00
Cheng Lian 8c321d66d7 [SPARK-8118] [SQL] Mutes noisy Parquet log output reappeared after upgrading Parquet to 1.7.0
Author: Cheng Lian <lian@databricks.com>

Closes #6670 from liancheng/spark-8118 and squashes the following commits:

b6e85a6 [Cheng Lian] Suppresses unnecesary ParquetRecordReader log message (PARQUET-220)
385603c [Cheng Lian] Mutes noisy Parquet log output reappeared after upgrading Parquet to 1.7.0
2015-06-07 16:59:55 +08:00
Liang-Chi Hsieh 26d07f1ece [SPARK-8141] [SQL] Precompute datatypes for partition columns and reuse it
JIRA: https://issues.apache.org/jira/browse/SPARK-8141

Author: Liang-Chi Hsieh <viirya@gmail.com>

Closes #6687 from viirya/reuse_partition_column_types and squashes the following commits:

dab0688 [Liang-Chi Hsieh] Reuse partitionColumnTypes.
2015-06-07 15:33:48 +08:00
Liang-Chi Hsieh 901a552c5e [SPARK-8004][SQL] Enclose column names by JDBC Dialect
JIRA: https://issues.apache.org/jira/browse/SPARK-8004

Author: Liang-Chi Hsieh <viirya@gmail.com>

Closes #6577 from viirya/enclose_jdbc_columns and squashes the following commits:

614606a [Liang-Chi Hsieh] For comment.
bc50182 [Liang-Chi Hsieh] Enclose column names by JDBC Dialect.
2015-06-06 22:59:31 -07:00
Cheng Lian 16fc49617e [SPARK-8079] [SQL] Makes InsertIntoHadoopFsRelation job/task abortion more robust
As described in SPARK-8079, when writing a DataFrame to a `HadoopFsRelation`, if `HadoopFsRelation.prepareForWriteJob` throws exception, an unexpected NPE will be thrown during job abortion. (This issue doesn't bring much damage since the job is failing anyway.)

This PR makes the job/task abortion logic in `InsertIntoHadoopFsRelation` more robust to avoid such confusing exceptions.

Author: Cheng Lian <lian@databricks.com>

Closes #6612 from liancheng/spark-8079 and squashes the following commits:

87cd81e [Cheng Lian] Addresses @rxin's comment
1864c75 [Cheng Lian] Addresses review comments
9e6dbb3 [Cheng Lian] Makes InsertIntoHadoopFsRelation job/task abortion more robust
2015-06-06 17:23:12 +08:00
Reynold Xin a71be0a36d [SPARK-8114][SQL] Remove some wildcard import on TestSQLContext._ round 3.
Author: Reynold Xin <rxin@databricks.com>

Closes #6677 from rxin/test-wildcard and squashes the following commits:

8a17b33 [Reynold Xin] Fixed line length.
6663813 [Reynold Xin] [SPARK-8114][SQL] Remove some wildcard import on TestSQLContext._ round 3.
2015-06-05 23:15:10 -07:00
Dong Wang eb19d3f75c [SPARK-6964] [SQL] Support Cancellation in the Thrift Server
Support runInBackground in SparkExecuteStatementOperation, and add cancellation

Author: Dong Wang <dong@databricks.com>

Closes #6207 from dongwang218/SPARK-6964-jdbc-cancel and squashes the following commits:

687c113 [Dong Wang] fix 100 characters
7bfa2a7 [Dong Wang] fix merge
380480f [Dong Wang] fix for liancheng's comments
eb3e385 [Dong Wang] small nit
341885b [Dong Wang] small fix
3d8ebf8 [Dong Wang] add spark.sql.hive.thriftServer.async flag
04142c3 [Dong Wang] set SQLSession for async execution
184ec35 [Dong Wang] keep hive conf
819ae03 [Dong Wang] [SPARK-6964][SQL][WIP] Support Cancellation in the Thrift Server
2015-06-05 17:41:12 -07:00
Reynold Xin 6ebe419f33 [SPARK-8114][SQL] Remove some wildcard import on TestSQLContext._ cont'd.
Fixed the following packages:
sql.columnar
sql.jdbc
sql.json
sql.parquet

Author: Reynold Xin <rxin@databricks.com>

Closes #6667 from rxin/testsqlcontext_wildcard and squashes the following commits:

134a776 [Reynold Xin] Fixed compilation break.
6da7b69 [Reynold Xin] [SPARK-8114][SQL] Remove some wildcard import on TestSQLContext._ cont'd.
2015-06-05 13:57:21 -07:00
Shivaram Venkataraman 12f5eaeee1 [SPARK-8085] [SPARKR] Support user-specified schema in read.df
cc davies sun-rui

Author: Shivaram Venkataraman <shivaram@cs.berkeley.edu>

Closes #6620 from shivaram/sparkr-read-schema and squashes the following commits:

16a6726 [Shivaram Venkataraman] Fix loadDF to pass schema Also add a unit test
a229877 [Shivaram Venkataraman] Use wrapper function to DataFrameReader
ee70ba8 [Shivaram Venkataraman] Support user-specified schema in read.df
2015-06-05 10:19:03 -07:00
Reynold Xin 8f16b94afb [SPARK-8114][SQL] Remove some wildcard import on TestSQLContext._
I kept some of the sql import there to avoid changing too many lines.

Author: Reynold Xin <rxin@databricks.com>

Closes #6661 from rxin/remove-wildcard-import-sqlcontext and squashes the following commits:

c265347 [Reynold Xin] Fixed ListTablesSuite failure.
de9d491 [Reynold Xin] Fixed tests.
73b5365 [Reynold Xin] Mima.
8f6b642 [Reynold Xin] Fixed style violation.
443f6e8 [Reynold Xin] [SPARK-8113][SQL] Remove some wildcard import on TestSQLContext._
2015-06-04 22:15:58 -07:00
Reynold Xin 2bcdf8c239 [SPARK-7440][SQL] Remove physical Distinct operator in favor of Aggregate
This patch replaces Distinct with Aggregate in the optimizer, so Distinct will become
more efficient over time as we optimize Aggregate (via Tungsten).

Author: Reynold Xin <rxin@databricks.com>

Closes #6637 from rxin/replace-distinct and squashes the following commits:

b3cc50e [Reynold Xin] Mima excludes.
93d6117 [Reynold Xin] Code review feedback.
87e4741 [Reynold Xin] [SPARK-7440][SQL] Remove physical Distinct operator in favor of Aggregate.
2015-06-04 13:52:53 -07:00
Thomas Omans cd3176bd86 [SPARK-7743] [SQL] Parquet 1.7
Resolves [SPARK-7743](https://issues.apache.org/jira/browse/SPARK-7743).

Trivial changes of versions, package names, as well as a small issue in `ParquetTableOperations.scala`

```diff
-    val readContext = getReadSupport(configuration).init(
+    val readContext = ParquetInputFormat.getReadSupportInstance(configuration).init(
```

Since ParquetInputFormat.getReadSupport was made package private in the latest release.

Thanks
-- Thomas Omans

Author: Thomas Omans <tomans@cj.com>

Closes #6597 from eggsby/SPARK-7743 and squashes the following commits:

2df0d1b [Thomas Omans] [SPARK-7743] [SQL] Upgrading parquet version to 1.7.0
2015-06-04 11:32:03 -07:00
Mike Dusenberry df7da07a86 [SPARK-7969] [SQL] Added a DataFrame.drop function that accepts a Column reference.
Added a `DataFrame.drop` function that accepts a `Column` reference rather than a `String`, and added associated unit tests.  Basically iterates through the `DataFrame` to find a column with an expression that is equivalent to that of the `Column` argument supplied to the function.

Author: Mike Dusenberry <dusenberrymw@gmail.com>

Closes #6585 from dusenberrymw/SPARK-7969_Drop_method_on_Dataframes_should_handle_Column and squashes the following commits:

514727a [Mike Dusenberry] Updating the @since tag of the drop(Column) function doc to reflect version 1.4.1 instead of 1.4.0.
2f1bb4e [Mike Dusenberry] Adding an additional assert statement to the 'drop column after join' unit test in order to make sure the correct column was indeed left over.
6bf7c0e [Mike Dusenberry] Minor code formatting change.
e583888 [Mike Dusenberry] Adding more Python doctests for the df.drop with column reference function to test joined datasets that have columns with the same name.
5f74401 [Mike Dusenberry] Updating DataFrame.drop with column reference function to use logicalPlan.output to prevent ambiguities resulting from columns with the same name. Also added associated unit tests for joined datasets with duplicate column names.
4b8bbe8 [Mike Dusenberry] Adding Python support for Dataframe.drop with a Column reference.
986129c [Mike Dusenberry] Added a DataFrame.drop function that accepts a Column reference rather than a String, and added associated unit tests.  Basically iterates through the DataFrame to find a column with an expression that is equivalent to one supplied to the function.
2015-06-04 11:30:07 -07:00
Davies Liu c8709dcfd1 [SPARK-7956] [SQL] Use Janino to compile SQL expressions into bytecode
In order to reduce the overhead of codegen, this PR switch to use Janino to compile SQL expressions into bytecode.

After this, the time used to compile a SQL expression is decreased from 100ms to 5ms, which is necessary to turn on codegen for general workload, also tests.

cc rxin

Author: Davies Liu <davies@databricks.com>

Closes #6479 from davies/janino and squashes the following commits:

cc689f5 [Davies Liu] remove globalLock
262d848 [Davies Liu] Merge branch 'master' of github.com:apache/spark into janino
eec3a33 [Davies Liu] address comments from Josh
f37c8c3 [Davies Liu] fix DecimalType and cast to String
202298b [Davies Liu] Merge branch 'master' of github.com:apache/spark into janino
a21e968 [Davies Liu] fix style
0ed3dc6 [Davies Liu] Merge branch 'master' of github.com:apache/spark into janino
551a851 [Davies Liu] fix tests
c3bdffa [Davies Liu] remove print
6089ce5 [Davies Liu] change logging level
7e46ac3 [Davies Liu] fix style
d8f0f6c [Davies Liu] Merge branch 'master' of github.com:apache/spark into janino
da4926a [Davies Liu] fix tests
03660f3 [Davies Liu] WIP: use Janino to compile Java source
f2629cd [Davies Liu] Merge branch 'master' of github.com:apache/spark into janino
f7d66cf [Davies Liu] use template based string for codegen
2015-06-04 10:28:59 -07:00
Reynold Xin 2c5a06cafd Update documentation for [SPARK-7980] [SQL] Support SQLContext.range(end) 2015-06-03 14:20:27 -07:00
Reynold Xin 939e4f3d8d [SPARK-8074] Parquet should throw AnalysisException during setup for data type/name related failures.
Author: Reynold Xin <rxin@databricks.com>

Closes #6608 from rxin/parquet-analysis and squashes the following commits:

b5dc8e2 [Reynold Xin] Code review feedback.
5617cf6 [Reynold Xin] [SPARK-8074] Parquet should throw AnalysisException during setup for data type/name related failures.
2015-06-03 13:57:57 -07:00
animesh d053a31be9 [SPARK-7980] [SQL] Support SQLContext.range(end)
1. range() overloaded in SQLContext.scala
2. range() modified in python sql context.py
3. Tests added accordingly in DataFrameSuite.scala and python sql tests.py

Author: animesh <animesh@apache.spark>

Closes #6609 from animeshbaranawal/SPARK-7980 and squashes the following commits:

935899c [animesh] SPARK-7980:python+scala changes
2015-06-03 11:28:18 -07:00
Patrick Wendell 2c4d550eda [SPARK-7801] [BUILD] Updating versions to SPARK 1.5.0
Author: Patrick Wendell <patrick@databricks.com>

Closes #6328 from pwendell/spark-1.5-update and squashes the following commits:

2f42d02 [Patrick Wendell] A few more excludes
4bebcf0 [Patrick Wendell] Update to RC4
61aaf46 [Patrick Wendell] Using new release candidate
55f1610 [Patrick Wendell] Another exclude
04b4f04 [Patrick Wendell] More issues with transient 1.4 changes
36f549b [Patrick Wendell] [SPARK-7801] [BUILD] Updating versions to SPARK 1.5.0
2015-06-03 10:11:27 -07:00
Wenchen Fan d38cf217e0 [SPARK-7562][SPARK-6444][SQL] Improve error reporting for expression data type mismatch
It seems hard to find a common pattern of checking types in `Expression`. Sometimes we know what input types we need(like `And`, we know we need two booleans), sometimes we just have some rules(like `Add`, we need 2 numeric types which are equal). So I defined a general interface `checkInputDataTypes` in `Expression` which returns a `TypeCheckResult`. `TypeCheckResult` can tell whether this expression passes the type checking or what the type mismatch is.

This PR mainly works on apply input types checking for arithmetic and predicate expressions.

TODO: apply type checking interface to more expressions.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #6405 from cloud-fan/6444 and squashes the following commits:

b5ff31b [Wenchen Fan] address comments
b917275 [Wenchen Fan] rebase
39929d9 [Wenchen Fan] add todo
0808fd2 [Wenchen Fan] make constrcutor of TypeCheckResult private
3bee157 [Wenchen Fan] and decimal type coercion rule for binary comparison
8883025 [Wenchen Fan] apply type check interface to CaseWhen
cffb67c [Wenchen Fan] to have resolved call the data type check function
6eaadff [Wenchen Fan] add equal type constraint to EqualTo
3affbd8 [Wenchen Fan] more fixes
654d46a [Wenchen Fan] improve tests
e0a3628 [Wenchen Fan] improve error message
1524ff6 [Wenchen Fan] fix style
69ca3fe [Wenchen Fan] add error message and tests
c71d02c [Wenchen Fan] fix hive tests
6491721 [Wenchen Fan] use value class TypeCheckResult
7ae76b9 [Wenchen Fan] address comments
cb77e4f [Wenchen Fan] Improve error reporting for expression data type mismatch
2015-06-03 00:47:52 -07:00
Josh Rosen cafd5056e1 [SPARK-7691] [SQL] Refactor CatalystTypeConverter to use type-specific row accessors
This patch significantly refactors CatalystTypeConverters to both clean up the code and enable these conversions to work with future Project Tungsten features.

At a high level, I've reorganized the code so that all functions dealing with the same type are grouped together into type-specific subclasses of `CatalystTypeConveter`.  In addition, I've added new methods that allow the Catalyst Row -> Scala Row conversions to access the Catalyst row's fields through type-specific `getTYPE()` methods rather than the generic `get()` / `Row.apply` methods.  This refactoring is a blocker to being able to unit test new operators that I'm developing as part of Project Tungsten, since those operators may output `UnsafeRow` instances which don't support the generic `get()`.

The stricter type usage of types here has uncovered some bugs in other parts of Spark SQL:

- #6217: DescribeCommand is assigned wrong output attributes in SparkStrategies
- #6218: DataFrame.describe() should cast all aggregates to String
- #6400: Use output schema, not relation schema, for data source input conversion

Spark SQL current has undefined behavior for what happens when you try to create a DataFrame from user-specified rows whose values don't match the declared schema.  According to the `createDataFrame()` Scaladoc:

>  It is important to make sure that the structure of every [[Row]] of the provided RDD matches the provided schema. Otherwise, there will be runtime exception.

Given this, it sounds like it's technically not a break of our API contract to fail-fast when the data types don't match. However, there appear to be many cases where we don't fail even though the types don't match. For example, `JavaHashingTFSuite.hasingTF` passes a column of integers values for a "label" column which is supposed to contain floats.  This column isn't actually read or modified as part of query processing, so its actual concrete type doesn't seem to matter. In other cases, there could be situations where we have generic numeric aggregates that tolerate being called with different numeric types than the schema specified, but this can be okay due to numeric conversions.

In the long run, we will probably want to come up with precise semantics for implicit type conversions / widening when converting Java / Scala rows to Catalyst rows.  Until then, though, I think that failing fast with a ClassCastException is a reasonable behavior; this is the approach taken in this patch.  Note that certain optimizations in the inbound conversion functions for primitive types mean that we'll probably preserve the old undefined behavior in a majority of cases.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #6222 from JoshRosen/catalyst-converters-refactoring and squashes the following commits:

740341b [Josh Rosen] Optimize method dispatch for primitive type conversions
befc613 [Josh Rosen] Add tests to document Option-handling behavior.
5989593 [Josh Rosen] Use new SparkFunSuite base in CatalystTypeConvertersSuite
6edf7f8 [Josh Rosen] Re-add convertToScala(), since a Hive test still needs it
3f7b2d8 [Josh Rosen] Initialize converters lazily so that the attributes are resolved first
6ad0ebb [Josh Rosen] Fix JavaHashingTFSuite ClassCastException
677ff27 [Josh Rosen] Fix null handling bug; add tests.
8033d4c [Josh Rosen] Fix serialization error in UserDefinedGenerator.
85bba9d [Josh Rosen] Fix wrong input data in InMemoryColumnarQuerySuite
9c0e4e1 [Josh Rosen] Remove last use of convertToScala().
ae3278d [Josh Rosen] Throw ClassCastException errors during inbound conversions.
7ca7fcb [Josh Rosen] Comments and cleanup
1e87a45 [Josh Rosen] WIP refactoring of CatalystTypeConverters
2015-06-02 22:11:03 -07:00
Cheng Lian 686a45f0b9 [SPARK-8014] [SQL] Avoid premature metadata discovery when writing a HadoopFsRelation with a save mode other than Append
The current code references the schema of the DataFrame to be written before checking save mode. This triggers expensive metadata discovery prematurely. For save mode other than `Append`, this metadata discovery is useless since we either ignore the result (for `Ignore` and `ErrorIfExists`) or delete existing files (for `Overwrite`) later.

This PR fixes this issue by deferring metadata discovery after save mode checking.

Author: Cheng Lian <lian@databricks.com>

Closes #6583 from liancheng/spark-8014 and squashes the following commits:

1aafabd [Cheng Lian] Updates comments
088abaa [Cheng Lian] Avoids schema merging and partition discovery when data schema and partition schema are defined
8fbd93f [Cheng Lian] Fixes SPARK-8014
2015-06-02 13:32:13 -07:00
Cheng Lian 1bb5d716c0 [SPARK-8037] [SQL] Ignores files whose name starts with dot in HadoopFsRelation
Author: Cheng Lian <lian@databricks.com>

Closes #6581 from liancheng/spark-8037 and squashes the following commits:

d08e97b [Cheng Lian] Ignores files whose name starts with dot in HadoopFsRelation
2015-06-03 00:59:50 +08:00
Yin Huai 0f80990bfa [SPARK-8023][SQL] Add "deterministic" attribute to Expression to avoid collapsing nondeterministic projects.
This closes #6570.

Author: Yin Huai <yhuai@databricks.com>
Author: Reynold Xin <rxin@databricks.com>

Closes #6573 from rxin/deterministic and squashes the following commits:

356cd22 [Reynold Xin] Added unit test for the optimizer.
da3fde1 [Reynold Xin] Merge pull request #6570 from yhuai/SPARK-8023
da56200 [Yin Huai] Comments.
e38f264 [Yin Huai] Comment.
f9d6a73 [Yin Huai] Add a deterministic method to Expression.
2015-06-02 00:20:52 -07:00
Yin Huai 7b7f7b6c6f [SPARK-8020] [SQL] Spark SQL conf in spark-defaults.conf make metadataHive get constructed too early
https://issues.apache.org/jira/browse/SPARK-8020

Author: Yin Huai <yhuai@databricks.com>

Closes #6571 from yhuai/SPARK-8020-1 and squashes the following commits:

0398f5b [Yin Huai] First populate the SQLConf and then construct executionHive and metadataHive.
2015-06-02 00:16:56 -07:00
Davies Liu bcb47ad771 [SPARK-6917] [SQL] DecimalType is not read back when non-native type exists
cc yhuai

Author: Davies Liu <davies@databricks.com>

Closes #6558 from davies/decimalType and squashes the following commits:

c877ca8 [Davies Liu] Update ParquetConverter.scala
48cc57c [Davies Liu] Update ParquetConverter.scala
b43845c [Davies Liu] add test
3b4a94f [Davies Liu] DecimalType is not read back when non-native type exists
2015-06-01 23:12:29 -07:00
Reynold Xin 75dda33f3e Revert "[SPARK-8020] Spark SQL in spark-defaults.conf make metadataHive get constructed too early"
This reverts commit 91f6be87bc.
2015-06-01 21:35:55 -07:00
Yin Huai 91f6be87bc [SPARK-8020] Spark SQL in spark-defaults.conf make metadataHive get constructed too early
https://issues.apache.org/jira/browse/SPARK-8020

Author: Yin Huai <yhuai@databricks.com>

Closes #6563 from yhuai/SPARK-8020 and squashes the following commits:

4e5addc [Yin Huai] style
bf766c6 [Yin Huai] Failed test.
0398f5b [Yin Huai] First populate the SQLConf and then construct executionHive and metadataHive.
2015-06-01 21:33:57 -07:00
Reynold Xin 4c868b9943 [minor doc] Add exploratory data analysis warning for DataFrame.stat.freqItem API
Author: Reynold Xin <rxin@databricks.com>

Closes #6569 from rxin/freqItemsWarning and squashes the following commits:

7eec145 [Reynold Xin] [minor doc] Add exploratory data analysis warning for DataFrame.stat.freqItem API.
2015-06-01 21:29:39 -07:00
Reynold Xin 89f642a0e8 [SPARK-8026][SQL] Add Column.alias to Scala/Java DataFrame API
Author: Reynold Xin <rxin@databricks.com>

Closes #6565 from rxin/alias and squashes the following commits:

286d880 [Reynold Xin] [SPARK-8026][SQL] Add Column.alias to Scala/Java DataFrame API
2015-06-01 21:13:15 -07:00
Reynold Xin 6396cc0303 [SPARK-7982][SQL] DataFrame.stat.crosstab should use 0 instead of null for pairs that don't appear
Author: Reynold Xin <rxin@databricks.com>

Closes #6566 from rxin/crosstab and squashes the following commits:

e0ace1c [Reynold Xin] [SPARK-7982][SQL] DataFrame.stat.crosstab should use 0 instead of null for pairs that don't appear
2015-06-01 21:11:19 -07:00
Wenchen Fan a0e46a0d2a [SPARK-7952][SPARK-7984][SQL] equality check between boolean type and numeric type is broken.
The origin code has several problems:
* `true <=> 1` will return false as we didn't set a rule to handle it.
* `true = a` where `a` is not `Literal` and its value is 1, will return false as we only handle literal values.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #6505 from cloud-fan/tmp1 and squashes the following commits:

77f0f39 [Wenchen Fan] minor fix
b6401ba [Wenchen Fan] add type coercion for CaseKeyWhen and address comments
ebc8c61 [Wenchen Fan] use SQLTestUtils and If
625973c [Wenchen Fan] improve
9ba2130 [Wenchen Fan] address comments
fc0d741 [Wenchen Fan] fix style
2846a04 [Wenchen Fan] fix 7952
2015-05-31 21:01:46 -07:00
Reynold Xin 866652c903 [SPARK-3850] Turn style checker on for trailing whitespaces.
Author: Reynold Xin <rxin@databricks.com>

Closes #6541 from rxin/trailing-whitespace-on and squashes the following commits:

f72ebe4 [Reynold Xin] [SPARK-3850] Turn style checker on for trailing whitespaces.
2015-05-31 14:23:42 -07:00
Reynold Xin 63a50be13d [SPARK-3850] Trim trailing spaces for SQL.
Author: Reynold Xin <rxin@databricks.com>

Closes #6535 from rxin/whitespace-sql and squashes the following commits:

de50316 [Reynold Xin] [SPARK-3850] Trim trailing spaces for SQL.
2015-05-31 00:48:49 -07:00
Reynold Xin 7896e99b2a [SPARK-7975] Add style checker to disallow overriding equals covariantly.
Author: Reynold Xin <rxin@databricks.com>

This patch had conflicts when merged, resolved by
Committer: Reynold Xin <rxin@databricks.com>

Closes #6527 from rxin/covariant-equals and squashes the following commits:

e7d7784 [Reynold Xin] [SPARK-7975] Enforce CovariantEqualsChecker
2015-05-31 00:05:55 -07:00
Cheng Lian 8764dccebd [SQL] [MINOR] Adds @deprecated Scaladoc entry for SchemaRDD
Author: Cheng Lian <lian@databricks.com>

Closes #6529 from liancheng/schemardd-deprecation-fix and squashes the following commits:

49765c2 [Cheng Lian] Adds @deprecated Scaladoc entry for SchemaRDD
2015-05-30 23:49:42 -07:00
Reynold Xin c63e1a742b [SPARK-7971] Add JavaDoc style deprecation for deprecated DataFrame methods
Scala deprecated annotation actually doesn't show up in JavaDoc.

Author: Reynold Xin <rxin@databricks.com>

Closes #6523 from rxin/df-deprecated-javadoc and squashes the following commits:

26da2b2 [Reynold Xin] [SPARK-7971] Add JavaDoc style deprecation for deprecated DataFrame methods.
2015-05-30 19:51:53 -07:00
Reynold Xin 14b314dc2c [SQL] Tighten up visibility for JavaDoc.
I went through all the JavaDocs and tightened up visibility.

Author: Reynold Xin <rxin@databricks.com>

Closes #6526 from rxin/sql-1.4-visibility-for-docs and squashes the following commits:

bc37d1e [Reynold Xin] Tighten up visibility for JavaDoc.
2015-05-30 19:50:52 -07:00
Andrew Or 8c9979337f [HOTFIX] [SQL] Maven test compilation issue
Tests compile in SBT but not Maven.
2015-05-29 15:26:49 -07:00
Andrew Or 9eb222c139 [SPARK-7558] Demarcate tests in unit-tests.log
Right now `unit-tests.log` are not of much value because we can't tell where the test boundaries are easily. This patch adds log statements before and after each test to outline the test boundaries, e.g.:

```
===== TEST OUTPUT FOR o.a.s.serializer.KryoSerializerSuite: 'kryo with parallelize for primitive arrays' =====

15/05/27 12:36:39.596 pool-1-thread-1-ScalaTest-running-KryoSerializerSuite INFO SparkContext: Starting job: count at KryoSerializerSuite.scala:230
15/05/27 12:36:39.596 dag-scheduler-event-loop INFO DAGScheduler: Got job 3 (count at KryoSerializerSuite.scala:230) with 4 output partitions (allowLocal=false)
15/05/27 12:36:39.596 dag-scheduler-event-loop INFO DAGScheduler: Final stage: ResultStage 3(count at KryoSerializerSuite.scala:230)
15/05/27 12:36:39.596 dag-scheduler-event-loop INFO DAGScheduler: Parents of final stage: List()
15/05/27 12:36:39.597 dag-scheduler-event-loop INFO DAGScheduler: Missing parents: List()
15/05/27 12:36:39.597 dag-scheduler-event-loop INFO DAGScheduler: Submitting ResultStage 3 (ParallelCollectionRDD[5] at parallelize at KryoSerializerSuite.scala:230), which has no missing parents

...

15/05/27 12:36:39.624 pool-1-thread-1-ScalaTest-running-KryoSerializerSuite INFO DAGScheduler: Job 3 finished: count at KryoSerializerSuite.scala:230, took 0.028563 s
15/05/27 12:36:39.625 pool-1-thread-1-ScalaTest-running-KryoSerializerSuite INFO KryoSerializerSuite:

***** FINISHED o.a.s.serializer.KryoSerializerSuite: 'kryo with parallelize for primitive arrays' *****

...
```

Author: Andrew Or <andrew@databricks.com>

Closes #6441 from andrewor14/demarcate-tests and squashes the following commits:

879b060 [Andrew Or] Fix compile after rebase
d622af7 [Andrew Or] Merge branch 'master' of github.com:apache/spark into demarcate-tests
017c8ba [Andrew Or] Merge branch 'master' of github.com:apache/spark into demarcate-tests
7790b6c [Andrew Or] Fix tests after logical merge conflict
c7460c0 [Andrew Or] Merge branch 'master' of github.com:apache/spark into demarcate-tests
c43ffc4 [Andrew Or] Fix tests?
8882581 [Andrew Or] Fix tests
ee22cda [Andrew Or] Fix log message
fa9450e [Andrew Or] Merge branch 'master' of github.com:apache/spark into demarcate-tests
12d1e1b [Andrew Or] Various whitespace changes (minor)
69cbb24 [Andrew Or] Make all test suites extend SparkFunSuite instead of FunSuite
bbce12e [Andrew Or] Fix manual things that cannot be covered through automation
da0b12f [Andrew Or] Add core tests as dependencies in all modules
f7d29ce [Andrew Or] Introduce base abstract class for all test suites
2015-05-29 14:03:12 -07:00
Reynold Xin 94f62a4979 [SPARK-7940] Enforce whitespace checking for DO, TRY, CATCH, FINALLY, MATCH, LARROW, RARROW in style checker.
…

Author: Reynold Xin <rxin@databricks.com>

Closes #6491 from rxin/more-whitespace and squashes the following commits:

f6e63dc [Reynold Xin] [SPARK-7940] Enforce whitespace checking for DO, TRY, CATCH, FINALLY, MATCH, LARROW, RARROW in style checker.
2015-05-29 13:38:37 -07:00
Reynold Xin ff44c711ab [SPARK-7927] whitespace fixes for SQL core.
So we can enable a whitespace enforcement rule in the style checker to save code review time.

Author: Reynold Xin <rxin@databricks.com>

Closes #6477 from rxin/whitespace-sql-core and squashes the following commits:

ce6e369 [Reynold Xin] Fixed tests.
6095fed [Reynold Xin] [SPARK-7927] whitespace fixes for SQL core.
2015-05-28 20:10:21 -07:00
Liang-Chi Hsieh a1e092eae5 [SPARK-7897][SQL] Use DecimalType to represent unsigned bigint in JDBCRDD
JIRA: https://issues.apache.org/jira/browse/SPARK-7897

Author: Liang-Chi Hsieh <viirya@gmail.com>

Closes #6438 from viirya/jdbc_unsigned_bigint and squashes the following commits:

ccb3c3f [Liang-Chi Hsieh] Use DecimalType to represent unsigned bigint.
2015-05-27 18:51:36 -07:00
Cheng Lian b97ddff000 [SPARK-7684] [SQL] Refactoring MetastoreDataSourcesSuite to workaround SPARK-7684
As stated in SPARK-7684, currently `TestHive.reset` has some execution order specific bug, which makes running specific test suites locally pretty frustrating. This PR refactors `MetastoreDataSourcesSuite` (which relies on `TestHive.reset` heavily) using various `withXxx` utility methods in `SQLTestUtils` to ask each test case to cleanup their own mess so that we can avoid calling `TestHive.reset`.

Author: Cheng Lian <lian@databricks.com>
Author: Yin Huai <yhuai@databricks.com>

Closes #6353 from liancheng/workaround-spark-7684 and squashes the following commits:

26939aa [Yin Huai] Move the initialization of jsonFilePath to beforeAll.
a423d48 [Cheng Lian] Fixes Scala style issue
dfe45d0 [Cheng Lian] Refactors MetastoreDataSourcesSuite to workaround SPARK-7684
92a116d [Cheng Lian] Fixes minor styling issues
2015-05-27 13:09:33 -07:00
Reynold Xin 6fec1a9409 Removed Guava dependency from JavaTypeInference's type signature.
This should also close #6243.

Author: Reynold Xin <rxin@databricks.com>

Closes #6431 from rxin/JavaTypeInference-guava and squashes the following commits:

e58df3c [Reynold Xin] Removed Gauva dependency from JavaTypeInference's type signature.
2015-05-27 11:54:35 -07:00
Cheng Lian 15459db4f6 [SPARK-7847] [SQL] Fixes dynamic partition directory escaping
Please refer to [SPARK-7847] [1] for details.

[1]: https://issues.apache.org/jira/browse/SPARK-7847

Author: Cheng Lian <lian@databricks.com>

Closes #6389 from liancheng/spark-7847 and squashes the following commits:

935c652 [Cheng Lian] Adds test case for writing various data types as dynamic partition value
f4fc398 [Cheng Lian] Converts partition columns to Scala type when writing dynamic partitions
d0aeca0 [Cheng Lian] Fixes dynamic partition directory escaping
2015-05-27 10:09:12 -07:00
Reynold Xin 9f48bf6b37 [SPARK-7887][SQL] Remove EvaluatedType from SQL Expression.
This type is not really used. Might as well remove it.

Author: Reynold Xin <rxin@databricks.com>

Closes #6427 from rxin/evalutedType and squashes the following commits:

51a319a [Reynold Xin] [SPARK-7887][SQL] Remove EvaluatedType from SQL Expression.
2015-05-27 01:12:59 -07:00
Liang-Chi Hsieh 4f98d7a7f1 [SPARK-7697][SQL] Use LongType for unsigned int in JDBCRDD
JIRA: https://issues.apache.org/jira/browse/SPARK-7697

The reported problem case is mysql. But for h2 db, there is no unsigned int. So it is not able to add corresponding test.

Author: Liang-Chi Hsieh <viirya@gmail.com>

Closes #6229 from viirya/unsignedint_as_long and squashes the following commits:

dc4b5d8 [Liang-Chi Hsieh] Merge remote-tracking branch 'upstream/master' into unsignedint_as_long
608695b [Liang-Chi Hsieh] Use LongType for unsigned int in JDBCRDD.
2015-05-27 00:27:39 -07:00
Cheng Lian b463e6d618 [SPARK-7868] [SQL] Ignores _temporary directories in HadoopFsRelation
So that potential partial/corrupted data files left by failed tasks/jobs won't affect normal data scan.

Author: Cheng Lian <lian@databricks.com>

Closes #6411 from liancheng/spark-7868 and squashes the following commits:

273ea36 [Cheng Lian] Ignores _temporary directories
2015-05-26 20:48:56 -07:00
Josh Rosen 0c33c7b4a6 [SPARK-7858] [SQL] Use output schema, not relation schema, for data source input conversion
In `DataSourceStrategy.createPhysicalRDD`, we use the relation schema as the target schema for converting incoming rows into Catalyst rows.  However, we should be using the output schema instead, since our scan might return a subset of the relation's columns.

This patch incorporates #6414 by liancheng, which fixes an issue in `SimpleTestRelation` that prevented this bug from being caught by our old tests:

> In `SimpleTextRelation`, we specified `needsConversion` to `true`, indicating that values produced by this testing relation should be of Scala types, and need to be converted to Catalyst types when necessary. However, we also used `Cast` to convert strings to expected data types. And `Cast` always produces values of Catalyst types, thus no conversion is done at all. This PR makes `SimpleTextRelation` produce Scala values so that data conversion code paths can be properly tested.

Closes #5986.

Author: Josh Rosen <joshrosen@databricks.com>
Author: Cheng Lian <lian@databricks.com>
Author: Cheng Lian <liancheng@users.noreply.github.com>

Closes #6400 from JoshRosen/SPARK-7858 and squashes the following commits:

e71c866 [Josh Rosen] Re-fix bug so that the tests pass again
56b13e5 [Josh Rosen] Add regression test to hadoopFsRelationSuites
2169a0f [Josh Rosen] Remove use of SpecificMutableRow and BufferedIterator
6cd7366 [Josh Rosen] Fix SPARK-7858 by using output types for conversion.
5a00e66 [Josh Rosen] Add assertions in order to reproduce SPARK-7858
8ba195c [Cheng Lian] Merge 9968fba9979287aaa1f141ba18bfb9d4c116a3b3 into 61664732b2
9968fba [Cheng Lian] Tests the data type conversion code paths
2015-05-26 20:24:35 -07:00
Cheng Lian 8af1bf10b7 [SPARK-7842] [SQL] Makes task committing/aborting in InsertIntoHadoopFsRelation more robust
When committing/aborting a write task issued in `InsertIntoHadoopFsRelation`, if an exception is thrown from `OutputWriter.close()`, the committing/aborting process will be interrupted, and leaves messy stuff behind (e.g., the `_temporary` directory created by `FileOutputCommitter`).

This PR makes these two process more robust by catching potential exceptions and falling back to normal task committment/abort.

Author: Cheng Lian <lian@databricks.com>

Closes #6378 from liancheng/spark-7838 and squashes the following commits:

f18253a [Cheng Lian] Makes task committing/aborting in InsertIntoHadoopFsRelation more robust
2015-05-26 00:28:47 +08:00
Yin Huai ed21476bc0 [SPARK-7805] [SQL] Move SQLTestUtils.scala and ParquetTest.scala to src/test
https://issues.apache.org/jira/browse/SPARK-7805

Because `sql/hive`'s tests depend on the test jar of `sql/core`, we do not need to store `SQLTestUtils` and `ParquetTest` in `src/main`. We should only add stuff that will be needed by `sql/console` or Python tests (for Python, we need it in `src/main`, right? davies).

Author: Yin Huai <yhuai@databricks.com>

Closes #6334 from yhuai/SPARK-7805 and squashes the following commits:

af6d0c9 [Yin Huai] mima
b86746a [Yin Huai] Move SQLTestUtils.scala and ParquetTest.scala to src/test.
2015-05-24 09:51:37 -07:00
Yin Huai 2b7e63585d [SPARK-7654] [SQL] Move insertInto into reader/writer interface.
This one continues the work of https://github.com/apache/spark/pull/6216.

Author: Yin Huai <yhuai@databricks.com>
Author: Reynold Xin <rxin@databricks.com>

Closes #6366 from yhuai/insert and squashes the following commits:

3d717fb [Yin Huai] Use insertInto to handle the casue when table exists and Append is used for saveAsTable.
56d2540 [Yin Huai] Add PreWriteCheck to HiveContext's analyzer.
c636e35 [Yin Huai] Remove unnecessary empty lines.
cf83837 [Yin Huai] Move insertInto to write. Also, remove the partition columns from InsertIntoHadoopFsRelation.
0841a54 [Reynold Xin] Removed experimental tag for deprecated methods.
33ed8ef [Reynold Xin] [SPARK-7654][SQL] Move insertInto into reader/writer interface.
2015-05-23 09:48:20 -07:00
Davies Liu efe3bfdf49 [SPARK-7322, SPARK-7836, SPARK-7822][SQL] DataFrame window function related updates
1. ntile should take an integer as parameter.
2. Added Python API (based on #6364)
3. Update documentation of various DataFrame Python functions.

Author: Davies Liu <davies@databricks.com>
Author: Reynold Xin <rxin@databricks.com>

Closes #6374 from rxin/window-final and squashes the following commits:

69004c7 [Reynold Xin] Style fix.
288cea9 [Reynold Xin] Update documentaiton.
7cb8985 [Reynold Xin] Merge pull request #6364 from davies/window
66092b4 [Davies Liu] update docs
ed73cb4 [Reynold Xin] [SPARK-7322][SQL] Improve DataFrame window function documentation.
ef55132 [Davies Liu] Merge branch 'master' of github.com:apache/spark into window4
8936ade [Davies Liu] fix maxint in python 3
2649358 [Davies Liu] update docs
778e2c0 [Davies Liu] SPARK-7836 and SPARK-7822: Python API of window functions
2015-05-23 08:30:05 -07:00
Michael Armbrust 3b68cb0430 [SPARK-6743] [SQL] Fix empty projections of cached data
Author: Michael Armbrust <michael@databricks.com>

Closes #6165 from marmbrus/wrongColumn and squashes the following commits:

4fad158 [Michael Armbrust] Merge remote-tracking branch 'origin/master' into wrongColumn
aad7eab [Michael Armbrust] rxins comments
f1e8df1 [Michael Armbrust] [SPARK-6743][SQL] Fix empty projections of cached data
2015-05-22 09:43:46 -07:00
Cheng Hao f6f2eeb179 [SPARK-7322][SQL] Window functions in DataFrame
This closes #6104.

Author: Cheng Hao <hao.cheng@intel.com>
Author: Reynold Xin <rxin@databricks.com>

Closes #6343 from rxin/window-df and squashes the following commits:

026d587 [Reynold Xin] Address code review feedback.
dc448fe [Reynold Xin] Fixed Hive tests.
9794d9d [Reynold Xin] Moved Java test package.
9331605 [Reynold Xin] Refactored API.
3313e2a [Reynold Xin] Merge pull request #6104 from chenghao-intel/df_window
d625a64 [Cheng Hao] Update the dataframe window API as suggsted
c141fb1 [Cheng Hao] hide all of properties of the WindowFunctionDefinition
3b1865f [Cheng Hao] scaladoc typos
f3fd2d0 [Cheng Hao] polish the unit test
6847825 [Cheng Hao] Add additional analystcs functions
57e3bc0 [Cheng Hao] typos
24a08ec [Cheng Hao] scaladoc
28222ed [Cheng Hao] fix bug of range/row Frame
1d91865 [Cheng Hao] style issue
53f89f2 [Cheng Hao] remove the over from the functions.scala
964c013 [Cheng Hao] add more unit tests and window functions
64e18a7 [Cheng Hao] Add Window Function support for DataFrame
2015-05-22 01:00:16 -07:00
Yin Huai 347b50106b [SPARK-7737] [SQL] Use leaf dirs having data files to discover partitions.
https://issues.apache.org/jira/browse/SPARK-7737

cc liancheng

Author: Yin Huai <yhuai@databricks.com>

Closes #6329 from yhuai/spark-7737 and squashes the following commits:

7e0dfc7 [Yin Huai] Use leaf dirs having data files to discover partitions.
2015-05-22 07:10:26 +08:00
Andrew Or 5287eec5a6 [SPARK-7718] [SQL] Speed up partitioning by avoiding closure cleaning
According to yhuai we spent 6-7 seconds cleaning closures in a partitioning job that takes 12 seconds. Since we provide these closures in Spark we know for sure they are serializable, so we can bypass the cleaning.

Author: Andrew Or <andrew@databricks.com>

Closes #6256 from andrewor14/sql-partition-speed-up and squashes the following commits:

a82b451 [Andrew Or] Fix style
10f7e3e [Andrew Or] Avoid getting call sites and cleaning closures
17e2943 [Andrew Or] Merge branch 'master' of github.com:apache/spark into sql-partition-speed-up
523f042 [Andrew Or] Skip unnecessary Utils.getCallSites too
f7fe143 [Andrew Or] Avoid unnecessary closure cleaning
2015-05-21 14:33:11 -07:00
Tathagata Das 3d0cccc858 [SPARK-7478] [SQL] Added SQLContext.getOrCreate
Having a SQLContext singleton would make it easier for applications to use a lazily instantiated single shared instance of SQLContext when needed. It would avoid problems like

1. In REPL/notebook environment, rerunning the line {{val sqlContext = new SQLContext}} multiple times created different contexts while overriding the reference to previous context, leading to issues like registered temp tables going missing.

2. In Streaming, creating SQLContext directly leads to serialization/deserialization issues when attempting to recover from DStream checkpoints. See [SPARK-6770]. Also to get around this problem I had to suggest creating a singleton instance - https://github.com/apache/spark/blob/master/examples/src/main/scala/org/apache/spark/examples/streaming/SqlNetworkWordCount.scala

This can be solved by {{SQLContext.getOrCreate}} which get or creates a new singleton instance of SQLContext using either a given SparkContext or a given SparkConf.

rxin marmbrus

Author: Tathagata Das <tathagata.das1565@gmail.com>

Closes #6006 from tdas/SPARK-7478 and squashes the following commits:

25f4da9 [Tathagata Das] Addressed comments.
79fe069 [Tathagata Das] Added comments.
c66ca76 [Tathagata Das] Merge remote-tracking branch 'apache-github/master' into SPARK-7478
48adb14 [Tathagata Das] Removed HiveContext.getOrCreate
bf8cf50 [Tathagata Das] Fix more bug
dec5594 [Tathagata Das] Fixed bug
b4e9721 [Tathagata Das] Remove unnecessary import
4ef513b [Tathagata Das] Merge remote-tracking branch 'apache-github/master' into SPARK-7478
d3ea8e4 [Tathagata Das] Added HiveContext
83bc950 [Tathagata Das] Updated tests
f82ae81 [Tathagata Das] Fixed test
bc72868 [Tathagata Das] Added SQLContext.getOrCreate
2015-05-21 14:08:20 -07:00
Yin Huai 30f3f556f7 [SPARK-7763] [SPARK-7616] [SQL] Persists partition columns into metastore
Author: Yin Huai <yhuai@databricks.com>
Author: Cheng Lian <lian@databricks.com>

Closes #6285 from liancheng/spark-7763 and squashes the following commits:

bb2829d [Yin Huai] Fix hashCode.
d677f7d [Cheng Lian] Fixes Scala style issue
44b283f [Cheng Lian] Adds test case for SPARK-7616
6733276 [Yin Huai] Fix a bug that potentially causes https://issues.apache.org/jira/browse/SPARK-7616.
6cabf3c [Yin Huai] Update unit test.
7e02910 [Yin Huai] Use metastore partition columns and do not hijack maybePartitionSpec.
e9a03ec [Cheng Lian] Persists partition columns into metastore
2015-05-21 13:51:40 -07:00
Cheng Lian 8730fbb47b [SPARK-7749] [SQL] Fixes partition discovery for non-partitioned tables
When no partition columns can be found, we should have an empty `PartitionSpec`, rather than a `PartitionSpec` with empty partition columns.

This PR together with #6285 should fix SPARK-7749.

Author: Cheng Lian <lian@databricks.com>
Author: Yin Huai <yhuai@databricks.com>

Closes #6287 from liancheng/spark-7749 and squashes the following commits:

a799ff3 [Cheng Lian] Adds test cases for SPARK-7749
c4949be [Cheng Lian] Minor refactoring, and tolerant _TEMPORARY directory name
5aa87ea [Yin Huai] Make parsePartitions more robust.
fc56656 [Cheng Lian] Returns empty PartitionSpec if no partition columns can be inferred
19ae41e [Cheng Lian] Don't list base directory as leaf directory
2015-05-21 10:56:17 -07:00
Davies Liu a25c1ab8f0 [SPARK-7565] [SQL] fix MapType in JsonRDD
The key of Map in JsonRDD should be converted into UTF8String (also failed records), Thanks to yhuai viirya

Closes #6084

Author: Davies Liu <davies@databricks.com>

Closes #6299 from davies/string_in_json and squashes the following commits:

0dbf559 [Davies Liu] improve test, fix corrupt record
6836a80 [Davies Liu] move unit tests into Scala
b97af11 [Davies Liu] fix MapType in JsonRDD
2015-05-21 09:58:47 -07:00
Liang-Chi Hsieh d0eb9ffe97 [SPARK-7746][SQL] Add FetchSize parameter for JDBC driver
JIRA: https://issues.apache.org/jira/browse/SPARK-7746

Looks like an easy to add parameter but can show significant performance improvement if the JDBC driver accepts it.

Author: Liang-Chi Hsieh <viirya@gmail.com>

Closes #6283 from viirya/jdbc_fetchsize and squashes the following commits:

de47f94 [Liang-Chi Hsieh] Don't keep fetchSize as single parameter.
b7bff2f [Liang-Chi Hsieh] Add FetchSize parameter for JDBC driver.
2015-05-20 22:23:49 -07:00
Cheng Hao 42c592adb3 [SPARK-7320] [SQL] Add Cube / Rollup for dataframe
This is a follow up for #6257, which broke the maven test.

Add cube & rollup for DataFrame
For example:
```scala
testData.rollup($"a" + $"b", $"b").agg(sum($"a" - $"b"))
testData.cube($"a" + $"b", $"b").agg(sum($"a" - $"b"))
```

Author: Cheng Hao <hao.cheng@intel.com>

Closes #6304 from chenghao-intel/rollup and squashes the following commits:

04bb1de [Cheng Hao] move the table register/unregister into beforeAll/afterAll
a6069f1 [Cheng Hao] cancel the implicit keyword
ced4b8f [Cheng Hao] remove the unnecessary code changes
9959dfa [Cheng Hao] update the code as comments
e1d88aa [Cheng Hao] update the code as suggested
03bc3d9 [Cheng Hao] Remove the CubedData & RollupedData
5fd62d0 [Cheng Hao] hiden the CubedData & RollupedData
5ffb196 [Cheng Hao] Add Cube / Rollup for dataframe
2015-05-20 19:58:22 -07:00
Patrick Wendell 6338c40da6 Revert "[SPARK-7320] [SQL] Add Cube / Rollup for dataframe"
This reverts commit 10698e1131.
2015-05-20 13:39:04 -07:00
Yin Huai b631bf73b9 [SPARK-7713] [SQL] Use shared broadcast hadoop conf for partitioned table scan.
https://issues.apache.org/jira/browse/SPARK-7713

I tested the performance with the following code:
```scala
import sqlContext._
import sqlContext.implicits._

(1 to 5000).foreach { i =>
  val df = (1 to 1000).map(j => (j, s"str$j")).toDF("a", "b").save(s"/tmp/partitioned/i=$i")
}

sqlContext.sql("""
CREATE TEMPORARY TABLE partitionedParquet
USING org.apache.spark.sql.parquet
OPTIONS (
  path '/tmp/partitioned'
)""")

table("partitionedParquet").explain(true)
```

In our master `explain` takes 40s in my laptop. With this PR, `explain` takes 14s.

Author: Yin Huai <yhuai@databricks.com>

Closes #6252 from yhuai/broadcastHadoopConf and squashes the following commits:

6fa73df [Yin Huai] Address comments of Josh and Andrew.
807fbf9 [Yin Huai] Make the new buildScan and SqlNewHadoopRDD private sql.
e393555 [Yin Huai] Cheng's comments.
2eb53bb [Yin Huai] Use a shared broadcast Hadoop Configuration for partitioned HadoopFsRelations.
2015-05-20 11:23:40 -07:00
Cheng Hao 09265ad7c8 [SPARK-7320] [SQL] Add Cube / Rollup for dataframe
Add `cube` & `rollup` for DataFrame
For example:
```scala
testData.rollup($"a" + $"b", $"b").agg(sum($"a" - $"b"))
testData.cube($"a" + $"b", $"b").agg(sum($"a" - $"b"))
```

Author: Cheng Hao <hao.cheng@intel.com>

Closes #6257 from chenghao-intel/rollup and squashes the following commits:

7302319 [Cheng Hao] cancel the implicit keyword
a66e38f [Cheng Hao] remove the unnecessary code changes
a2869d4 [Cheng Hao] update the code as comments
c441777 [Cheng Hao] update the code as suggested
84c9564 [Cheng Hao] Remove the CubedData & RollupedData
279584c [Cheng Hao] hiden the CubedData & RollupedData
ef357e1 [Cheng Hao] Add Cube / Rollup for dataframe
2015-05-20 19:09:47 +08:00
scwf 60336e3bc0 [SPARK-7656] [SQL] use CatalystConf in FunctionRegistry
follow up for #5806

Author: scwf <wangfei1@huawei.com>

Closes #6164 from scwf/FunctionRegistry and squashes the following commits:

15e6697 [scwf] use catalogconf in FunctionRegistry
2015-05-19 17:36:00 -07:00
Josh Rosen c9fa870a6d [SPARK-7687] [SQL] DataFrame.describe() should cast all aggregates to String
In `DataFrame.describe()`, the `count` aggregate produces an integer, the `avg` and `stdev` aggregates produce doubles, and `min` and `max` aggregates can produce varying types depending on what type of column they're applied to.  As a result, we should cast all aggregate results to String so that `describe()`'s output types match its declared output schema.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #6218 from JoshRosen/SPARK-7687 and squashes the following commits:

146b615 [Josh Rosen] Fix R test.
2974bd5 [Josh Rosen] Cast to string type instead
f206580 [Josh Rosen] Cast to double to fix SPARK-7687
307ecbf [Josh Rosen] Add failing regression test for SPARK-7687
2015-05-18 21:53:44 -07:00
Daoyuan Wang c2437de189 [SPARK-7150] SparkContext.range() and SQLContext.range()
This PR is based on #6081, thanks adrian-wang.

Closes #6081

Author: Daoyuan Wang <daoyuan.wang@intel.com>
Author: Davies Liu <davies@databricks.com>

Closes #6230 from davies/range and squashes the following commits:

d3ce5fe [Davies Liu] add tests
789eda5 [Davies Liu] add range() in Python
4590208 [Davies Liu] Merge commit 'refs/pull/6081/head' of github.com:apache/spark into range
cbf5200 [Daoyuan Wang] let's add python support in a separate PR
f45e3b2 [Daoyuan Wang] remove redundant toLong
617da76 [Daoyuan Wang] fix safe marge for corner cases
867c417 [Daoyuan Wang] fix
13dbe84 [Daoyuan Wang] update
bd998ba [Daoyuan Wang] update comments
d3a0c1b [Daoyuan Wang] add range api()
2015-05-18 21:43:12 -07:00
Davies Liu 32fbd297dd [SPARK-6216] [PYSPARK] check python version of worker with driver
This PR revert #5404, change to pass the version of python in driver into JVM, check it in worker before deserializing closure, then it can works with different major version of Python.

Author: Davies Liu <davies@databricks.com>

Closes #6203 from davies/py_version and squashes the following commits:

b8fb76e [Davies Liu] fix test
6ce5096 [Davies Liu] use string for version
47c6278 [Davies Liu] check python version of worker with driver
2015-05-18 12:55:13 -07:00
Cheng Lian 9dadf019b9 [SPARK-7673] [SQL] WIP: HadoopFsRelation and ParquetRelation2 performance optimizations
This PR introduces several performance optimizations to `HadoopFsRelation` and `ParquetRelation2`:

1.  Moving `FileStatus` listing from `DataSourceStrategy` into a cache within `HadoopFsRelation`.

    This new cache generalizes and replaces the one used in `ParquetRelation2`.

    This also introduces an interface change: to reuse cached `FileStatus` objects, `HadoopFsRelation.buildScan` methods now receive `Array[FileStatus]` instead of `Array[String]`.

1.  When Parquet task side metadata reading is enabled, skip reading row group information when reading Parquet footers.

    This is basically what PR #5334 does. Also, now we uses `ParquetFileReader.readAllFootersInParallel` to read footers in parallel.

Another optimization in question is, instead of asking `HadoopFsRelation.buildScan` to return an `RDD[Row]` for a single selected partition and then union them all, we ask it to return an `RDD[Row]` for all selected partitions. This optimization is based on the fact that Hadoop configuration broadcasting used in `NewHadoopRDD` takes 34% time in the following microbenchmark.  However, this complicates data source user code because user code must merge partition values manually.

To check the cost of broadcasting in `NewHadoopRDD`, I also did microbenchmark after removing the `broadcast` call in `NewHadoopRDD`.  All results are shown below.

### Microbenchmark

#### Preparation code

Generating a partitioned table with 50k partitions, 1k rows per partition:

```scala
import sqlContext._
import sqlContext.implicits._

for (n <- 0 until 500) {
  val data = for {
    p <- (n * 10) until ((n + 1) * 10)
    i <- 0 until 1000
  } yield (i, f"val_$i%04d", f"$p%04d")

  data.
    toDF("a", "b", "p").
    write.
    partitionBy("p").
    mode("append").
    parquet(path)
}
```

#### Benchmarking code

```scala
import sqlContext._
import sqlContext.implicits._

import org.apache.spark.sql.types._
import com.google.common.base.Stopwatch

val path = "hdfs://localhost:9000/user/lian/5k"

def benchmark(n: Int)(f: => Unit) {
  val stopwatch = new Stopwatch()

  def run() = {
    stopwatch.reset()
    stopwatch.start()
    f
    stopwatch.stop()
    stopwatch.elapsedMillis()
  }

  val records = (0 until n).map(_ => run())

  (0 until n).foreach(i => println(s"Round $i: ${records(i)} ms"))
  println(s"Average: ${records.sum / n.toDouble} ms")
}

benchmark(3) { read.parquet(path).explain(extended = true) }
```

#### Results

Before:

```
Round 0: 72528 ms
Round 1: 68938 ms
Round 2: 65372 ms
Average: 68946.0 ms
```

After:

```
Round 0: 59499 ms
Round 1: 53645 ms
Round 2: 53844 ms
Round 3: 49093 ms
Round 4: 50555 ms
Average: 53327.2 ms
```

Also removing Hadoop configuration broadcasting:

(Note that I was testing on a local laptop, thus network cost is pretty low.)

```
Round 0: 15806 ms
Round 1: 14394 ms
Round 2: 14699 ms
Round 3: 15334 ms
Round 4: 14123 ms
Average: 14871.2 ms
```

Author: Cheng Lian <lian@databricks.com>

Closes #6225 from liancheng/spark-7673 and squashes the following commits:

2d58a2b [Cheng Lian] Skips reading row group information when using task side metadata reading
7aa3748 [Cheng Lian] Optimizes FileStatusCache by introducing a map from parent directories to child files
ba41250 [Cheng Lian] Reuses HadoopFsRelation FileStatusCache in ParquetRelation2
3d278f7 [Cheng Lian] Fixes a bug when reading a single Parquet data file
b84612a [Cheng Lian] Fixes Scala style issue
6a08b02 [Cheng Lian] WIP: Moves file status cache into HadoopFSRelation
2015-05-18 12:45:37 -07:00
Yin Huai 530397ba2f [SPARK-7567] [SQL] [follow-up] Use a new flag to set output committer based on mapreduce apis
cc liancheng marmbrus

Author: Yin Huai <yhuai@databricks.com>

Closes #6130 from yhuai/directOutput and squashes the following commits:

312b07d [Yin Huai] A data source can use spark.sql.sources.outputCommitterClass to override the output committer.
2015-05-18 12:17:10 -07:00
Zhan Zhang aa31e431fc [SPARK-2883] [SQL] ORC data source for Spark SQL
This PR updates PR #6135 authored by zhzhan from Hortonworks.

----

This PR implements a Spark SQL data source for accessing ORC files.

> **NOTE**
>
> Although ORC is now an Apache TLP, the codebase is still tightly coupled with Hive.  That's why the new ORC data source is under `org.apache.spark.sql.hive` package, and must be used with `HiveContext`.  However, it doesn't require existing Hive installation to access ORC files.

1.  Saving/loading ORC files without contacting Hive metastore

1.  Support for complex data types (i.e. array, map, and struct)

1.  Aware of common optimizations provided by Spark SQL:

    - Column pruning
    - Partitioning pruning
    - Filter push-down

1.  Schema evolution support
1.  Hive metastore table conversion

This PR also include initial work done by scwf from Huawei (PR #3753).

Author: Zhan Zhang <zhazhan@gmail.com>
Author: Cheng Lian <lian@databricks.com>

Closes #6194 from liancheng/polishing-orc and squashes the following commits:

55ecd96 [Cheng Lian] Reorganizes ORC test suites
d4afeed [Cheng Lian] Addresses comments
21ada22 [Cheng Lian] Adds @since and @Experimental annotations
128bd3b [Cheng Lian] ORC filter bug fix
d734496 [Cheng Lian] Polishes the ORC data source
2650a42 [Zhan Zhang] resolve review comments
3c9038e [Zhan Zhang] resolve review comments
7b3c7c5 [Zhan Zhang] save mode fix
f95abfd [Zhan Zhang] reuse test suite
7cc2c64 [Zhan Zhang] predicate fix
4e61c16 [Zhan Zhang] minor change
305418c [Zhan Zhang] orc data source support
2015-05-18 12:03:40 -07:00
Cheng Lian 010a1c2780 [SPARK-7570] [SQL] Ignores _temporary during partition discovery
<!-- Reviewable:start -->
[<img src="https://reviewable.io/review_button.png" height=40 alt="Review on Reviewable"/>](https://reviewable.io/reviews/apache/spark/6091)
<!-- Reviewable:end -->

Author: Cheng Lian <lian@databricks.com>

Closes #6091 from liancheng/spark-7570 and squashes the following commits:

8ff07e8 [Cheng Lian] Ignores _temporary during partition discovery
2015-05-18 11:59:44 -07:00