Commit graph

3306 commits

Author SHA1 Message Date
Wenchen Fan 8ef3399aff [SPARK-13928] Move org.apache.spark.Logging into org.apache.spark.internal.Logging
## What changes were proposed in this pull request?

Logging was made private in Spark 2.0. If we move it, then users would be able to create a Logging trait themselves to avoid changing their own code.

## How was this patch tested?

existing tests.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #11764 from cloud-fan/logger.
2016-03-17 19:23:38 +08:00
Davies Liu 30c18841e4 Revert "[SPARK-13840][SQL] Split Optimizer Rule ColumnPruning to ColumnPruning and EliminateOperator"
This reverts commit 99bd2f0e94.
2016-03-16 23:11:13 -07:00
Ryan Blue 5faba9facc [SPARK-13403][SQL] Pass hadoopConfiguration to HiveConf constructors.
This commit updates the HiveContext so that sc.hadoopConfiguration is used to instantiate its internal instances of HiveConf.

I tested this by overriding the S3 FileSystem implementation from spark-defaults.conf as "spark.hadoop.fs.s3.impl" (to avoid [HADOOP-12810](https://issues.apache.org/jira/browse/HADOOP-12810)).

Author: Ryan Blue <blue@apache.org>

Closes #11273 from rdblue/SPARK-13403-new-hive-conf-from-hadoop-conf.
2016-03-16 22:57:06 -07:00
Josh Rosen de1a84e56e [SPARK-13926] Automatically use Kryo serializer when shuffling RDDs with simple types
Because ClassTags are available when constructing ShuffledRDD we can use them to automatically use Kryo for shuffle serialization when the RDD's types are known to be compatible with Kryo.

This patch introduces `SerializerManager`, a component which picks the "best" serializer for a shuffle given the elements' ClassTags. It will automatically pick a Kryo serializer for ShuffledRDDs whose key, value, and/or combiner types are primitives, arrays of primitives, or strings. In the future we can use this class as a narrow extension point to integrate specialized serializers for other types, such as ByteBuffers.

In a planned followup patch, I will extend the BlockManager APIs so that we're able to use similar automatic serializer selection when caching RDDs (this is a little trickier because the ClassTags need to be threaded through many more places).

Author: Josh Rosen <joshrosen@databricks.com>

Closes #11755 from JoshRosen/automatically-pick-best-serializer.
2016-03-16 22:52:55 -07:00
Daoyuan Wang d1c193a2f1 [SPARK-12855][MINOR][SQL][DOC][TEST] remove spark.sql.dialect from doc and test
## What changes were proposed in this pull request?

Since developer API of plug-able parser has been removed in #10801 , docs should be updated accordingly.

## How was this patch tested?

This patch will not affect the real code path.

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

Closes #11758 from adrian-wang/spark12855.
2016-03-16 22:52:10 -07:00
Dongjoon Hyun c890c359b1 [MINOR][SQL][BUILD] Remove duplicated lines
## What changes were proposed in this pull request?

This PR removes three minor duplicated lines. First one is making the following unreachable code warning.
```
JoinSuite.scala:52: unreachable code
[warn]       case j: BroadcastHashJoin => j
```
The other two are just consecutive repetitions in `Seq` of MiMa filters.

## How was this patch tested?

Pass the existing Jenkins test.

Author: Dongjoon Hyun <dongjoon@apache.org>

Closes #11773 from dongjoon-hyun/remove_duplicated_line.
2016-03-16 22:48:58 -07:00
Jakob Odersky 7eef2463ad [SPARK-13118][SQL] Expression encoding for optional synthetic classes
## What changes were proposed in this pull request?

Fix expression generation for optional types.
Standard Java reflection causes issues when dealing with synthetic Scala objects (things that do not map to Java and thus contain a dollar sign in their name). This patch introduces Scala reflection in such cases.

This patch also adds a regression test for Dataset's handling of classes defined in package objects (which was the initial purpose of this PR).

## How was this patch tested?
A new test in ExpressionEncoderSuite that tests optional inner classes and a regression test for Dataset's handling of package objects.

Author: Jakob Odersky <jakob@odersky.com>

Closes #11708 from jodersky/SPARK-13118-package-objects.
2016-03-16 21:53:16 -07:00
Davies Liu c100d31ddc [SPARK-13873] [SQL] Avoid copy of UnsafeRow when there is no join in whole stage codegen
## What changes were proposed in this pull request?

We need to copy the UnsafeRow since a Join could produce multiple rows from single input rows. We could avoid that if there is no join (or the join will not produce multiple rows) inside WholeStageCodegen.

Updated the benchmark for `collect`, we could see 20-30% speedup.

## How was this patch tested?

existing unit tests.

Author: Davies Liu <davies@databricks.com>

Closes #11740 from davies/avoid_copy2.
2016-03-16 21:46:04 -07:00
hyukjinkwon 917f4000b4 [SPARK-13719][SQL] Parse JSON rows having an array type and a struct type in the same fieild
## What changes were proposed in this pull request?

This https://github.com/apache/spark/pull/2400 added the support to parse JSON rows wrapped with an array. However, this throws an exception when the given data contains array data and struct data in the same field as below:

```json
{"a": {"b": 1}}
{"a": []}
```

and the schema is given as below:

```scala
val schema =
  StructType(
    StructField("a", StructType(
      StructField("b", StringType) :: Nil
    )) :: Nil)
```

- **Before**

```scala
sqlContext.read.schema(schema).json(path).show()
```

```scala
Exception in thread "main" org.apache.spark.SparkException: Job aborted due to stage failure: Task 7 in stage 0.0 failed 4 times, most recent failure: Lost task 7.3 in stage 0.0 (TID 10, 192.168.1.170): java.lang.ClassCastException: org.apache.spark.sql.types.GenericArrayData cannot be cast to org.apache.spark.sql.catalyst.InternalRow
	at org.apache.spark.sql.catalyst.expressions.BaseGenericInternalRow$class.getStruct(rows.scala:50)
	at org.apache.spark.sql.catalyst.expressions.GenericMutableRow.getStruct(rows.scala:247)
	at org.apache.spark.sql.catalyst.expressions.GeneratedClass$SpecificPredicate.eval(Unknown Source)
...
```

- **After**

```scala
sqlContext.read.schema(schema).json(path).show()
```

```bash
+----+
|   a|
+----+
| [1]|
|null|
+----+
```

For other data types, in this case it converts the given values are `null` but only this case emits an exception.

This PR makes the support for wrapped rows applied only at the top level.

## How was this patch tested?

Unit tests were used and `./dev/run_tests` for code style tests.

Author: hyukjinkwon <gurwls223@gmail.com>

Closes #11752 from HyukjinKwon/SPARK-3308-follow-up.
2016-03-16 18:20:30 -07:00
Andrew Or ca9ef86c84 [SPARK-13923][SQL] Implement SessionCatalog
## What changes were proposed in this pull request?

As part of the effort to merge `SQLContext` and `HiveContext`, this patch implements an internal catalog called `SessionCatalog` that handles temporary functions and tables and delegates metastore operations to `ExternalCatalog`. Currently, this is still dead code, but in the future it will be part of `SessionState` and will replace `o.a.s.sql.catalyst.analysis.Catalog`.

A recent patch #11573 parses Hive commands ourselves in Spark, but still passes the entire query text to Hive. In a future patch, we will use `SessionCatalog` to implement the parsed commands.

## How was this patch tested?

800+ lines of tests in `SessionCatalogSuite`.

Author: Andrew Or <andrew@databricks.com>

Closes #11750 from andrewor14/temp-catalog.
2016-03-16 18:02:43 -07:00
Jakob Odersky d4d84936fb [SPARK-11011][SQL] Narrow type of UDT serialization
## What changes were proposed in this pull request?

Narrow down the parameter type of `UserDefinedType#serialize()`. Currently, the parameter type is `Any`, however it would logically make more sense to narrow it down to the type of the actual user defined type.

## How was this patch tested?

Existing tests were successfully run on local machine.

Author: Jakob Odersky <jakob@odersky.com>

Closes #11379 from jodersky/SPARK-11011-udt-types.
2016-03-16 16:59:36 -07:00
Sameer Agarwal 77ba3021c1 [SPARK-13869][SQL] Remove redundant conditions while combining filters
## What changes were proposed in this pull request?

**[I'll link it to the JIRA once ASF JIRA is back online]**

This PR modifies the existing `CombineFilters` rule to remove redundant conditions while combining individual filter predicates. For instance, queries of the form `table.where('a === 1 && 'b === 1).where('a === 1 && 'c === 1)` will now be optimized to ` table.where('a === 1 && 'b === 1 && 'c === 1)` (instead of ` table.where('a === 1 && 'a === 1 && 'b === 1 && 'c === 1)`)

## How was this patch tested?

Unit test in `FilterPushdownSuite`

Author: Sameer Agarwal <sameer@databricks.com>

Closes #11670 from sameeragarwal/combine-filters.
2016-03-16 16:27:46 -07:00
Sameer Agarwal f96997ba24 [SPARK-13871][SQL] Support for inferring filters from data constraints
## What changes were proposed in this pull request?

This PR generalizes the `NullFiltering` optimizer rule in catalyst to `InferFiltersFromConstraints` that can automatically infer all relevant filters based on an operator's constraints while making sure of 2 things:

(a) no redundant filters are generated, and
(b) filters that do not contribute to any further optimizations are not generated.

## How was this patch tested?

Extended all tests in `InferFiltersFromConstraintsSuite` (that were initially based on `NullFilteringSuite` to test filter inference in `Filter` and `Join` operators.

In particular the 2 tests ( `single inner join with pre-existing filters: filter out values on either side` and `multiple inner joins: filter out values on all sides on equi-join keys` attempts to highlight/test the real potential of this rule for join optimization.

Author: Sameer Agarwal <sameer@databricks.com>

Closes #11665 from sameeragarwal/infer-filters.
2016-03-16 16:26:51 -07:00
Sameer Agarwal b90c0206fa [SPARK-13922][SQL] Filter rows with null attributes in vectorized parquet reader
# What changes were proposed in this pull request?

It's common for many SQL operators to not care about reading `null` values for correctness. Currently, this is achieved by performing `isNotNull` checks (for all relevant columns) on a per-row basis. Pushing these null filters in the vectorized parquet reader should bring considerable benefits (especially for cases when the underlying data doesn't contain any nulls or contains all nulls).

## How was this patch tested?

        Intel(R) Core(TM) i7-4960HQ CPU  2.60GHz
        String with Nulls Scan (0%):        Best/Avg Time(ms)    Rate(M/s)   Per Row(ns)   Relative
        -------------------------------------------------------------------------------------------
        SQL Parquet Vectorized                   1229 / 1648          8.5         117.2       1.0X
        PR Vectorized                             833 /  846         12.6          79.4       1.5X
        PR Vectorized (Null Filtering)            732 /  782         14.3          69.8       1.7X

        Intel(R) Core(TM) i7-4960HQ CPU  2.60GHz
        String with Nulls Scan (50%):       Best/Avg Time(ms)    Rate(M/s)   Per Row(ns)   Relative
        -------------------------------------------------------------------------------------------
        SQL Parquet Vectorized                    995 / 1053         10.5          94.9       1.0X
        PR Vectorized                             732 /  772         14.3          69.8       1.4X
        PR Vectorized (Null Filtering)            725 /  790         14.5          69.1       1.4X

        Intel(R) Core(TM) i7-4960HQ CPU  2.60GHz
        String with Nulls Scan (95%):       Best/Avg Time(ms)    Rate(M/s)   Per Row(ns)   Relative
        -------------------------------------------------------------------------------------------
        SQL Parquet Vectorized                    326 /  333         32.2          31.1       1.0X
        PR Vectorized                             190 /  200         55.1          18.2       1.7X
        PR Vectorized (Null Filtering)            168 /  172         62.2          16.1       1.9X

Author: Sameer Agarwal <sameer@databricks.com>

Closes #11749 from sameeragarwal/perf-testing.
2016-03-16 16:25:40 -07:00
gatorsmile c4bd57602c [SPARK-12721][SQL] SQL Generation for Script Transformation
#### What changes were proposed in this pull request?

This PR is to convert to SQL from analyzed logical plans containing operator `ScriptTransformation`.

For example, below is the SQL containing `Transform`
```
SELECT TRANSFORM (a, b, c, d) USING 'cat' FROM parquet_t2
```

Its logical plan is like
```
ScriptTransformation [a#210L,b#211L,c#212L,d#213L], cat, [key#208,value#209], HiveScriptIOSchema(List(),List(),Some(org.apache.hadoop.hive.serde2.lazy.LazySimpleSerDe),Some(org.apache.hadoop.hive.serde2.lazy.LazySimpleSerDe),List((field.delim,	)),List((field.delim,	)),Some(org.apache.hadoop.hive.ql.exec.TextRecordReader),Some(org.apache.hadoop.hive.ql.exec.TextRecordWriter),true)
+- SubqueryAlias parquet_t2
   +- Relation[a#210L,b#211L,c#212L,d#213L] ParquetRelation
```

The generated SQL will be like
```
SELECT TRANSFORM (`parquet_t2`.`a`, `parquet_t2`.`b`, `parquet_t2`.`c`, `parquet_t2`.`d`) USING 'cat' AS (`key` string, `value` string) FROM `default`.`parquet_t2`
```
#### How was this patch tested?

Seven test cases are added to `LogicalPlanToSQLSuite`.

Author: gatorsmile <gatorsmile@gmail.com>
Author: xiaoli <lixiao1983@gmail.com>
Author: Xiao Li <xiaoli@Xiaos-MacBook-Pro.local>

Closes #11503 from gatorsmile/transformToSQL.
2016-03-16 13:11:11 -07:00
Wenchen Fan 1d1de28a3c [SPARK-13827][SQL] Can't add subquery to an operator with same-name outputs while generate SQL string
## What changes were proposed in this pull request?

This PR tries to solve a fundamental issue in the `SQLBuilder`. When we want to turn a logical plan into SQL string and put it after FROM clause, we need to wrap it with a sub-query. However, a logical plan is allowed to have same-name outputs with different qualifiers(e.g. the `Join` operator), and this kind of plan can't be put under a subquery as we will erase and assign a new qualifier to all outputs and make it impossible to distinguish same-name outputs.

To solve this problem, this PR renames all attributes with globally unique names(using exprId), so that we don't need qualifiers to resolve ambiguity anymore.

For example, `SELECT x.key, MAX(y.key) OVER () FROM t x JOIN t y`, we will parse this SQL to a Window operator and a Project operator, and add a sub-query between them. The generated SQL looks like:
```
SELECT sq_1.key, sq_1.max
FROM (
    SELECT sq_0.key, sq_0.key, MAX(sq_0.key) OVER () AS max
    FROM (
        SELECT x.key, y.key FROM t1 AS x JOIN t2 AS y
    ) AS sq_0
) AS sq_1
```
You can see, the `key` columns become ambiguous after `sq_0`.

After this PR, it will generate something like:
```
SELECT attr_30 AS key, attr_37 AS max
FROM (
    SELECT attr_30, attr_37
    FROM (
        SELECT attr_30, attr_35, MAX(attr_35) AS attr_37
        FROM (
            SELECT attr_30, attr_35 FROM
                (SELECT key AS attr_30 FROM t1) AS sq_0
            INNER JOIN
                (SELECT key AS attr_35 FROM t1) AS sq_1
        ) AS sq_2
    ) AS sq_3
) AS sq_4
```
The outermost SELECT is used to turn the generated named to real names back, and the innermost SELECT is used to alias real columns to our generated names. Between them, there is no name ambiguity anymore.

## How was this patch tested?

existing tests and new tests in LogicalPlanToSQLSuite.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #11658 from cloud-fan/gensql.
2016-03-16 11:57:28 -07:00
Cheng Hao d9670f8473 [SPARK-13894][SQL] SqlContext.range return type from DataFrame to DataSet
## What changes were proposed in this pull request?
https://issues.apache.org/jira/browse/SPARK-13894
Change the return type of the `SQLContext.range` API from `DataFrame` to `Dataset`.

## How was this patch tested?
No additional unit test required.

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

Closes #11730 from chenghao-intel/range.
2016-03-16 11:20:15 -07:00
Wenchen Fan d9e8f26d03 [SPARK-13924][SQL] officially support multi-insert
## What changes were proposed in this pull request?

There is a feature of hive SQL called multi-insert. For example:
```
FROM src
INSERT OVERWRITE TABLE dest1
SELECT key + 1
INSERT OVERWRITE TABLE dest2
SELECT key WHERE key > 2
INSERT OVERWRITE TABLE dest3
SELECT col EXPLODE(arr) exp AS col
...
```

We partially support it currently, with some limitations: 1) WHERE can't reference columns produced by LATERAL VIEW. 2) It's not executed eagerly, i.e. `sql("...multi-insert clause...")` won't take place right away like other commands, e.g. CREATE TABLE.

This PR removes these limitations and make us fully support multi-insert.

## How was this patch tested?

new tests in `SQLQuerySuite`

Author: Wenchen Fan <wenchen@databricks.com>

Closes #11754 from cloud-fan/lateral-view.
2016-03-16 10:52:36 -07:00
Sean Owen 3b461d9ecd [SPARK-13823][SPARK-13397][SPARK-13395][CORE] More warnings, StandardCharset follow up
## What changes were proposed in this pull request?

Follow up to https://github.com/apache/spark/pull/11657

- Also update `String.getBytes("UTF-8")` to use `StandardCharsets.UTF_8`
- And fix one last new Coverity warning that turned up (use of unguarded `wait()` replaced by simpler/more robust `java.util.concurrent` classes in tests)
- And while we're here cleaning up Coverity warnings, just fix about 15 more build warnings

## How was this patch tested?

Jenkins tests

Author: Sean Owen <sowen@cloudera.com>

Closes #11725 from srowen/SPARK-13823.2.
2016-03-16 09:36:34 +00:00
Dongjoon Hyun 431a3d04b4 [SPARK-12653][SQL] Re-enable test "SPARK-8489: MissingRequirementError during reflection"
## What changes were proposed in this pull request?

The purpose of [SPARK-12653](https://issues.apache.org/jira/browse/SPARK-12653) is re-enabling a regression test.
Historically, the target regression test is added by [SPARK-8498](093c34838d), but is temporarily disabled by [SPARK-12615](8ce645d4ee) due to binary compatibility error.

The following is the current error message at the submitting spark job with the pre-built `test.jar` file in the target regression test.
```
Exception in thread "main" java.lang.NoSuchMethodError: org.apache.spark.SparkContext$.$lessinit$greater$default$6()Lscala/collection/Map;
```

Simple rebuilding `test.jar` can not recover the purpose of testcase since we need to support both Scala 2.10 and 2.11 for a while. For example, we will face the following Scala 2.11 error if we use `test.jar` built by Scala 2.10.
```
Exception in thread "main" java.lang.NoSuchMethodError: scala.reflect.api.JavaUniverse.runtimeMirror(Ljava/lang/ClassLoader;)Lscala/reflect/api/JavaMirrors$JavaMirror;
```

This PR replace the existing `test.jar` with `test-2.10.jar` and `test-2.11.jar` and improve the regression test to use the suitable jar file.

## How was this patch tested?

Pass the existing Jenkins test.

Author: Dongjoon Hyun <dongjoon@apache.org>

Closes #11744 from dongjoon-hyun/SPARK-12653.
2016-03-16 09:05:53 +00:00
hyukjinkwon 92024797a4 [SPARK-13899][SQL] Produce InternalRow instead of external Row at CSV data source
## What changes were proposed in this pull request?

https://issues.apache.org/jira/browse/SPARK-13899

This PR makes CSV data source produce `InternalRow` instead of `Row`.

Basically, this resembles JSON data source. It uses the same codes for casting.

## How was this patch tested?

Unit tests were used within IDE and code style was checked by `./dev/run_tests`.

Author: hyukjinkwon <gurwls223@gmail.com>

Closes #11717 from HyukjinKwon/SPARK-13899.
2016-03-15 23:31:46 -07:00
Davies Liu 421f6c20e8 [SPARK-13917] [SQL] generate broadcast semi join
## What changes were proposed in this pull request?

This PR brings codegen support for broadcast left-semi join.

## How was this patch tested?

Existing tests. Added benchmark, the result show 7X speedup.

Author: Davies Liu <davies@databricks.com>

Closes #11742 from davies/gen_semi.
2016-03-15 22:17:04 -07:00
Yucai Yu 52b6a899be [MINOR][TEST][SQL] Remove wrong "expected" parameter in checkNaNWithoutCodegen
## What changes were proposed in this pull request?

Remove the wrong "expected" parameter in MathFunctionsSuite.scala's checkNaNWithoutCodegen.
This function is to check NaN value, so the "expected" parameter is useless. The Callers do not pass "expected" value and the similar function like checkNaNWithGeneratedProjection and checkNaNWithOptimization do not use it also.

Author: Yucai Yu <yucai.yu@intel.com>

Closes #11718 from yucai/unused_expected.
2016-03-15 21:44:58 -07:00
Davies Liu bbd887f53c [SPARK-13918][SQL] Merge SortMergeJoin and SortMergerOuterJoin
## What changes were proposed in this pull request?

This PR just move some code from SortMergeOuterJoin into SortMergeJoin.

This is for support codegen for outer join.

## How was this patch tested?

existing tests.

Author: Davies Liu <davies@databricks.com>

Closes #11743 from davies/gen_smjouter.
2016-03-15 19:58:49 -07:00
Reynold Xin 643649dcbf [SPARK-13895][SQL] DataFrameReader.text should return Dataset[String]
## What changes were proposed in this pull request?
This patch changes DataFrameReader.text()'s return type from DataFrame to Dataset[String].

Closes #11731.

## How was this patch tested?
Updated existing integration tests to reflect the change.

Author: Reynold Xin <rxin@databricks.com>

Closes #11739 from rxin/SPARK-13895.
2016-03-15 14:57:54 -07:00
Stavros Kontopoulos 50e3644d00 [SPARK-13896][SQL][STRING] Dataset.toJSON should return Dataset
## What changes were proposed in this pull request?
Change the return type of toJson in Dataset class
## How was this patch tested?
No additional unit test required.

Author: Stavros Kontopoulos <stavros.kontopoulos@typesafe.com>

Closes #11732 from skonto/fix_toJson.
2016-03-15 12:18:30 -07:00
Reynold Xin 5e6f2f4563 [SPARK-13893][SQL] Remove SQLContext.catalog/analyzer (internal method)
## What changes were proposed in this pull request?
Our internal code can go through SessionState.catalog and SessionState.analyzer. This brings two small benefits:
1. Reduces internal dependency on SQLContext.
2. Removes 2 public methods in Java (Java does not obey package private visibility).

More importantly, according to the design in SPARK-13485, we'd need to claim this catalog function for the user-facing public functions, rather than having an internal field.

## How was this patch tested?
Existing unit/integration test code.

Author: Reynold Xin <rxin@databricks.com>

Closes #11716 from rxin/SPARK-13893.
2016-03-15 10:12:32 -07:00
Xin Ren 10251a7457 [SPARK-13660][SQL][TESTS] ContinuousQuerySuite floods the logs with garbage
## What changes were proposed in this pull request?

Use method 'testQuietly' to avoid ContinuousQuerySuite flooding the console logs with garbage

Make ContinuousQuerySuite not output logs to the console. The logs will still output to unit-tests.log.

## How was this patch tested?

Just check Jenkins output.

Author: Xin Ren <iamshrek@126.com>

Closes #11703 from keypointt/SPARK-13660.
2016-03-15 01:02:28 -07:00
gatorsmile 99bd2f0e94 [SPARK-13840][SQL] Split Optimizer Rule ColumnPruning to ColumnPruning and EliminateOperator
#### What changes were proposed in this pull request?

Before this PR, two Optimizer rules `ColumnPruning` and `PushPredicateThroughProject` reverse each other's effects. Optimizer always reaches the max iteration when optimizing some queries. Extra `Project` are found in the plan. For example, below is the optimized plan after reaching 100 iterations:

```
Join Inner, Some((cast(id1#16 as bigint) = id1#18L))
:- Project [id1#16]
:  +- Filter isnotnull(cast(id1#16 as bigint))
:     +- Project [id1#16]
:        +- Relation[id1#16,newCol#17] JSON part: struct<>, data: struct<id1:int,newCol:int>
+- Filter isnotnull(id1#18L)
   +- Relation[id1#18L] JSON part: struct<>, data: struct<id1:bigint>
```

This PR splits the optimizer rule `ColumnPruning` to `ColumnPruning` and `EliminateOperators`

The issue becomes worse when having another rule `NullFiltering`, which could add extra Filters for `IsNotNull`. We have to be careful when introducing extra `Filter` if the benefit is not large enough. Another PR will be submitted by sameeragarwal to handle this issue.

cc sameeragarwal marmbrus

In addition, `ColumnPruning` should not push `Project` through non-deterministic `Filter`. This could cause wrong results. This will be put in a separate PR.

cc davies cloud-fan yhuai

#### How was this patch tested?

Modified the existing test cases.

Author: gatorsmile <gatorsmile@gmail.com>

Closes #11682 from gatorsmile/viewDuplicateNames.
2016-03-15 00:30:14 -07:00
Reynold Xin 276c2d51a3 [SPARK-13890][SQL] Remove some internal classes' dependency on SQLContext
## What changes were proposed in this pull request?
In general it is better for internal classes to not depend on the external class (in this case SQLContext) to reduce coupling between user-facing APIs and the internal implementations. This patch removes SQLContext dependency from some internal classes such as SparkPlanner, SparkOptimizer.

As part of this patch, I also removed the following internal methods from SQLContext:
```
protected[sql] def functionRegistry: FunctionRegistry
protected[sql] def optimizer: Optimizer
protected[sql] def sqlParser: ParserInterface
protected[sql] def planner: SparkPlanner
protected[sql] def continuousQueryManager
protected[sql] def prepareForExecution: RuleExecutor[SparkPlan]
```

## How was this patch tested?
Existing unit/integration tests.

Author: Reynold Xin <rxin@databricks.com>

Closes #11712 from rxin/sqlContext-planner.
2016-03-14 23:58:57 -07:00
Dongjoon Hyun a51f877b5d [SPARK-13870][SQL] Add scalastyle escaping correctly in CVSSuite.scala
## What changes were proposed in this pull request?

When initial creating `CVSSuite.scala` in SPARK-12833, there was a typo on `scalastyle:on`: `scalstyle:on`. So, it turns off ScalaStyle checking for the rest of the file mistakenly. So, it can not find a violation on the code of `SPARK-12668` added recently. This issue fixes the existing escaping correctly and adds a new escaping for `SPARK-12668` code like the following.

```scala
   test("test aliases sep and encoding for delimiter and charset") {
+    // scalastyle:off
     val cars = sqlContext
...
       .load(testFile(carsFile8859))
+    // scalastyle:on
```
This will prevent future potential problems, too.

## How was this patch tested?

Pass the Jenkins test.

Author: Dongjoon Hyun <dongjoon@apache.org>

Closes #11700 from dongjoon-hyun/SPARK-13870.
2016-03-14 23:23:05 -07:00
Reynold Xin e64958001c [SPARK-13884][SQL] Remove DescribeCommand's dependency on LogicalPlan
## What changes were proposed in this pull request?
This patch removes DescribeCommand's dependency on LogicalPlan. After this patch, DescribeCommand simply accepts a TableIdentifier. It minimizes the dependency, and blocks my next patch (removes SQLContext dependency from SparkPlanner).

## How was this patch tested?
Should be covered by existing unit tests and Hive compatibility tests that run describe table.

Author: Reynold Xin <rxin@databricks.com>

Closes #11710 from rxin/SPARK-13884.
2016-03-14 23:09:10 -07:00
Davies Liu f72743d971 [SPARK-13353][SQL] fast serialization for collecting DataFrame/Dataset
## What changes were proposed in this pull request?

When we call DataFrame/Dataset.collect(), Java serializer (or Kryo Serializer) will be used to serialize the UnsafeRows in executor, then deserialize them into UnsafeRows in driver. Java serializer (and Kyro serializer) are slow on millions rows, because they try to find out the same rows, but usually there is no same rows.

This PR will serialize the UnsafeRows as byte array by packing them together, then Java serializer (or Kyro serializer) serialize the bytes very fast (there are fewer blocks and byte array are not compared by content).

The UnsafeRow format is highly compressible, the serialized bytes are also compressed (configurable by spark.io.compression.codec).

## How was this patch tested?

Existing unit tests.

Add a benchmark for collect, before this patch:
```
Intel(R) Core(TM) i7-4558U CPU  2.80GHz
collect:                        Best/Avg Time(ms)    Rate(M/s)   Per Row(ns)   Relative
-------------------------------------------------------------------------------------------
collect 1 million                      3991 / 4311          0.3        3805.7       1.0X
collect 2 millions                  10083 / 10637          0.1        9616.0       0.4X
collect 4 millions                  29551 / 30072          0.0       28182.3       0.1X
```

```
Intel(R) Core(TM) i7-4558U CPU  2.80GHz
collect:                        Best/Avg Time(ms)    Rate(M/s)   Per Row(ns)   Relative
-------------------------------------------------------------------------------------------
collect 1 million                        775 / 1170          1.4         738.9       1.0X
collect 2 millions                     1153 / 1758          0.9        1099.3       0.7X
collect 4 millions                     4451 / 5124          0.2        4244.9       0.2X
```

We can see about 5-7X speedup.

Author: Davies Liu <davies@databricks.com>

Closes #11664 from davies/serialize_row.
2016-03-14 22:32:22 -07:00
Davies Liu 9256840cb6 [SPARK-13661][SQL] avoid the copy in HashedRelation
## What changes were proposed in this pull request?

Avoid the copy in HashedRelation, since most of the HashedRelation are built with Array[Row], added the copy() for LeftSemiJoinHash. This could help to reduce the memory consumption for Broadcast join.

## How was this patch tested?

Existing tests.

Author: Davies Liu <davies@databricks.com>

Closes #11666 from davies/remove_copy.
2016-03-14 22:25:57 -07:00
Reynold Xin e76679a814 [SPARK-13880][SPARK-13881][SQL] Rename DataFrame.scala Dataset.scala, and remove LegacyFunctions
## What changes were proposed in this pull request?
1. Rename DataFrame.scala Dataset.scala, since the class is now named Dataset.
2. Remove LegacyFunctions. It was introduced in Spark 1.6 for backward compatibility, and can be removed in Spark 2.0.

## How was this patch tested?
Should be covered by existing unit/integration tests.

Author: Reynold Xin <rxin@databricks.com>

Closes #11704 from rxin/SPARK-13880.
2016-03-15 10:39:07 +08:00
Shixiong Zhu b5e3bd87f5 [SPARK-13791][SQL] Add MetadataLog and HDFSMetadataLog
## What changes were proposed in this pull request?

- Add a MetadataLog interface for  metadata reliably storage.
- Add HDFSMetadataLog as a MetadataLog implementation based on HDFS.
- Update FileStreamSource to use HDFSMetadataLog instead of managing metadata by itself.

## How was this patch tested?

unit tests

Author: Shixiong Zhu <shixiong@databricks.com>

Closes #11625 from zsxwing/metadata-log.
2016-03-14 19:28:13 -07:00
Reynold Xin 4bf4609795 [SPARK-13882][SQL] Remove org.apache.spark.sql.execution.local
## What changes were proposed in this pull request?
We introduced some local operators in org.apache.spark.sql.execution.local package but never fully wired the engine to actually use these. We still plan to implement a full local mode, but it's probably going to be fairly different from what the current iterator-based local mode would look like. Based on what we know right now, we might want a push-based columnar version of these operators.

Let's just remove them for now, and we can always re-introduced them in the future by looking at branch-1.6.

## How was this patch tested?
This is simply dead code removal.

Author: Reynold Xin <rxin@databricks.com>

Closes #11705 from rxin/SPARK-13882.
2016-03-14 19:22:11 -07:00
Michael Armbrust 17eec0a71b [SPARK-13664][SQL] Add a strategy for planning partitioned and bucketed scans of files
This PR adds a new strategy, `FileSourceStrategy`, that can be used for planning scans of collections of files that might be partitioned or bucketed.

Compared with the existing planning logic in `DataSourceStrategy` this version has the following desirable properties:
 - It removes the need to have `RDD`, `broadcastedHadoopConf` and other distributed concerns  in the public API of `org.apache.spark.sql.sources.FileFormat`
 - Partition column appending is delegated to the format to avoid an extra copy / devectorization when appending partition columns
 - It minimizes the amount of data that is shipped to each executor (i.e. it does not send the whole list of files to every worker in the form of a hadoop conf)
 - it natively supports bucketing files into partitions, and thus does not require coalescing / creating a `UnionRDD` with the correct partitioning.
 - Small files are automatically coalesced into fewer tasks using an approximate bin-packing algorithm.

Currently only a testing source is planned / tested using this strategy.  In follow-up PRs we will port the existing formats to this API.

A stub for `FileScanRDD` is also added, but most methods remain unimplemented.

Other minor cleanups:
 - partition pruning is pushed into `FileCatalog` so both the new and old code paths can use this logic.  This will also allow future implementations to use indexes or other tricks (i.e. a MySQL metastore)
 - The partitions from the `FileCatalog` now propagate information about file sizes all the way up to the planner so we can intelligently spread files out.
 - `Array` -> `Seq` in some internal APIs to avoid unnecessary `toArray` calls
 - Rename `Partition` to `PartitionDirectory` to differentiate partitions used earlier in pruning from those where we have already enumerated the files and their sizes.

Author: Michael Armbrust <michael@databricks.com>

Closes #11646 from marmbrus/fileStrategy.
2016-03-14 19:21:12 -07:00
Marcelo Vanzin 8301fadd8d [SPARK-13626][CORE] Avoid duplicate config deprecation warnings.
Three different things were needed to get rid of spurious warnings:
- silence deprecation warnings when cloning configuration
- change the way SparkHadoopUtil instantiates SparkConf to silence
  warnings
- avoid creating new SparkConf instances where it's not needed.

On top of that, I changed the way that Logging.scala detects the repl;
now it uses a method that is overridden in the repl's Main class, and
the hack in Utils.scala is not needed anymore. This makes the 2.11 repl
behave like the 2.10 one and set the default log level to WARN, which
is a lot better. Previously, this wasn't working because the 2.11 repl
triggers log initialization earlier than the 2.10 one.

I also removed and simplified some other code in the 2.11 repl's Main
to avoid replicating logic that already exists elsewhere in Spark.

Tested the 2.11 repl in local and yarn modes.

Author: Marcelo Vanzin <vanzin@cloudera.com>

Closes #11510 from vanzin/SPARK-13626.
2016-03-14 14:27:33 -07:00
Liang-Chi Hsieh 6a4bfcd62b [SPARK-13658][SQL] BooleanSimplification rule is slow with large boolean expressions
JIRA: https://issues.apache.org/jira/browse/SPARK-13658

## What changes were proposed in this pull request?

Quoted from JIRA description: When run TPCDS Q3 [1] with lots predicates to filter out the partitions, the optimizer rule BooleanSimplification take about 2 seconds (it use lots of sematicsEqual, which require copy the whole tree).

It will great if we could speedup it.

[1] https://github.com/cloudera/impala-tpcds-kit/blob/master/queries/q3.sql

How to speed up it:

When we ask the canonicalized expression in `Expression`, it calls `Canonicalize.execute` on itself. `Canonicalize.execute` basically transforms up all expressions included in this expression. However, we don't keep the canonicalized versions for these children expressions. So in next time we ask the canonicalized expressions for the children expressions (e.g., `BooleanSimplification`), we will rerun `Canonicalize.execute` on each of them. It wastes much time.

By forcing the children expressions to get and keep their canonicalized versions first, we can avoid re-canonicalize these expressions.

I simply benchmark it with an expression which is part of the where clause in TPCDS Q3:

    val testRelation = LocalRelation('ss_sold_date_sk.int, 'd_moy.int, 'i_manufact_id.int, 'ss_item_sk.string, 'i_item_sk.string, 'd_date_sk.int)

    val input = ('d_date_sk === 'ss_sold_date_sk) && ('ss_item_sk === 'i_item_sk) && ('i_manufact_id === 436) && ('d_moy === 12) && (('ss_sold_date_sk > 2415355 && 'ss_sold_date_sk < 2415385) || ('ss_sold_date_sk > 2415720 && 'ss_sold_date_sk < 2415750) || ('ss_sold_date_sk > 2416085 && 'ss_sold_date_sk < 2416115) || ('ss_sold_date_sk > 2416450 && 'ss_sold_date_sk < 2416480) || ('ss_sold_date_sk > 2416816 && 'ss_sold_date_sk < 2416846) || ('ss_sold_date_sk > 2417181 && 'ss_sold_date_sk < 2417211) || ('ss_sold_date_sk > 2417546 && 'ss_sold_date_sk < 2417576) || ('ss_sold_date_sk > 2417911 && 'ss_sold_date_sk < 2417941) || ('ss_sold_date_sk > 2418277 && 'ss_sold_date_sk < 2418307) || ('ss_sold_date_sk > 2418642 && 'ss_sold_date_sk < 2418672) || ('ss_sold_date_sk > 2419007 && 'ss_sold_date_sk < 2419037) || ('ss_sold_date_sk > 2419372 && 'ss_sold_date_sk < 2419402) || ('ss_sold_date_sk > 2419738 && 'ss_sold_date_sk < 2419768) || ('ss_sold_date_sk > 2420103 && 'ss_sold_date_sk < 2420133) || ('ss_sold_date_sk > 2420468 && 'ss_sold_date_sk < 2420498) || ('ss_sold_date_sk > 2420833 && 'ss_sold_date_sk < 2420863) || ('ss_sold_date_sk > 2421199 && 'ss_sold_date_sk < 2421229) || ('ss_sold_date_sk > 2421564 && 'ss_sold_date_sk < 2421594) || ('ss_sold_date_sk > 2421929 && 'ss_sold_date_sk < 2421959) || ('ss_sold_date_sk > 2422294 && 'ss_sold_date_sk < 2422324) || ('ss_sold_date_sk > 2422660 && 'ss_sold_date_sk < 2422690) || ('ss_sold_date_sk > 2423025 && 'ss_sold_date_sk < 2423055) || ('ss_sold_date_sk > 2423390 && 'ss_sold_date_sk < 2423420) || ('ss_sold_date_sk > 2423755 && 'ss_sold_date_sk < 2423785) || ('ss_sold_date_sk > 2424121 && 'ss_sold_date_sk < 2424151) || ('ss_sold_date_sk > 2424486 && 'ss_sold_date_sk < 2424516) || ('ss_sold_date_sk > 2424851 && 'ss_sold_date_sk < 2424881) || ('ss_sold_date_sk > 2425216 && 'ss_sold_date_sk < 2425246) || ('ss_sold_date_sk > 2425582 && 'ss_sold_date_sk < 2425612) || ('ss_sold_date_sk > 2425947 && 'ss_sold_date_sk < 2425977) || ('ss_sold_date_sk > 2426312 && 'ss_sold_date_sk < 2426342) || ('ss_sold_date_sk > 2426677 && 'ss_sold_date_sk < 2426707) || ('ss_sold_date_sk > 2427043 && 'ss_sold_date_sk < 2427073) || ('ss_sold_date_sk > 2427408 && 'ss_sold_date_sk < 2427438) || ('ss_sold_date_sk > 2427773 && 'ss_sold_date_sk < 2427803) || ('ss_sold_date_sk > 2428138 && 'ss_sold_date_sk < 2428168) || ('ss_sold_date_sk > 2428504 && 'ss_sold_date_sk < 2428534) || ('ss_sold_date_sk > 2428869 && 'ss_sold_date_sk < 2428899) || ('ss_sold_date_sk > 2429234 && 'ss_sold_date_sk < 2429264) || ('ss_sold_date_sk > 2429599 && 'ss_sold_date_sk < 2429629) || ('ss_sold_date_sk > 2429965 && 'ss_sold_date_sk < 2429995) || ('ss_sold_date_sk > 2430330 && 'ss_sold_date_sk < 2430360) || ('ss_sold_date_sk > 2430695 && 'ss_sold_date_sk < 2430725) || ('ss_sold_date_sk > 2431060 && 'ss_sold_date_sk < 2431090) || ('ss_sold_date_sk > 2431426 && 'ss_sold_date_sk < 2431456) || ('ss_sold_date_sk > 2431791 && 'ss_sold_date_sk < 2431821) || ('ss_sold_date_sk > 2432156 && 'ss_sold_date_sk < 2432186) || ('ss_sold_date_sk > 2432521 && 'ss_sold_date_sk < 2432551) || ('ss_sold_date_sk > 2432887 && 'ss_sold_date_sk < 2432917) || ('ss_sold_date_sk > 2433252 && 'ss_sold_date_sk < 2433282) || ('ss_sold_date_sk > 2433617 && 'ss_sold_date_sk < 2433647) || ('ss_sold_date_sk > 2433982 && 'ss_sold_date_sk < 2434012) || ('ss_sold_date_sk > 2434348 && 'ss_sold_date_sk < 2434378) || ('ss_sold_date_sk > 2434713 && 'ss_sold_date_sk < 2434743)))

    val plan = testRelation.where(input).analyze
    val actual = Optimize.execute(plan)

With this patch:

    352 milliseconds
    346 milliseconds
    340 milliseconds

Without this patch:

    585 milliseconds
    880 milliseconds
    677 milliseconds

## How was this patch tested?

Existing tests should pass.

Author: Liang-Chi Hsieh <simonh@tw.ibm.com>
Author: Liang-Chi Hsieh <viirya@gmail.com>

Closes #11647 from viirya/improve-expr-canonicalize.
2016-03-14 11:23:29 -07:00
Andrew Or 9a1680c2c8 [SPARK-13139][SQL] Follow-ups to #11573
Addressing outstanding comments in #11573.

Jenkins, new test case in `DDLCommandSuite`

Author: Andrew Or <andrew@databricks.com>

Closes #11667 from andrewor14/ddl-parser-followups.
2016-03-14 09:59:22 -07:00
Yin Huai 250832c733 [SPARK-13207][SQL] Make partitioning discovery ignore _SUCCESS files.
If a _SUCCESS appears in the inner partitioning dir, partition discovery will treat that _SUCCESS file as a data file. Then, partition discovery will fail because it finds that the dir structure is not valid. We should ignore those `_SUCCESS` files.

In future, it is better to ignore all files/dirs starting with `_` or `.`. This PR does not make this change. I am thinking about making this change simple, so we can consider of getting it in branch 1.6.

To ignore all files/dirs starting with `_` or `, the main change is to let ParquetRelation have another way to get metadata files. Right now, it relies on FileStatusCache's cachedLeafStatuses, which returns file statuses of both metadata files (e.g. metadata files used by parquet) and data files, which requires more changes.

https://issues.apache.org/jira/browse/SPARK-13207

Author: Yin Huai <yhuai@databricks.com>

Closes #11088 from yhuai/SPARK-13207.
2016-03-14 09:03:13 -07:00
Dongjoon Hyun acdf219703 [MINOR][DOCS] Fix more typos in comments/strings.
## What changes were proposed in this pull request?

This PR fixes 135 typos over 107 files:
* 121 typos in comments
* 11 typos in testcase name
* 3 typos in log messages

## How was this patch tested?

Manual.

Author: Dongjoon Hyun <dongjoon@apache.org>

Closes #11689 from dongjoon-hyun/fix_more_typos.
2016-03-14 09:07:39 +00:00
Sean Owen 1840852841 [SPARK-13823][CORE][STREAMING][SQL] Always specify Charset in String <-> byte[] conversions (and remaining Coverity items)
## What changes were proposed in this pull request?

- Fixes calls to `new String(byte[])` or `String.getBytes()` that rely on platform default encoding, to use UTF-8
- Same for `InputStreamReader` and `OutputStreamWriter` constructors
- Standardizes on UTF-8 everywhere
- Standardizes specifying the encoding with `StandardCharsets.UTF-8`, not the Guava constant or "UTF-8" (which means handling `UnuspportedEncodingException`)
- (also addresses the other remaining Coverity scan issues, which are pretty trivial; these are separated into commit 1deecd8d9c )

## How was this patch tested?

Jenkins tests

Author: Sean Owen <sowen@cloudera.com>

Closes #11657 from srowen/SPARK-13823.
2016-03-13 21:03:49 -07:00
Jacky Li f3daa099bf [SQL] fix typo in DataSourceRegister
## What changes were proposed in this pull request?
fix typo in DataSourceRegister

## How was this patch tested?

found when going through latest code

Author: Jacky Li <jacky.likun@huawei.com>

Closes #11686 from jackylk/patch-12.
2016-03-13 18:44:02 -07:00
Cheng Lian c079420d7c [SPARK-13841][SQL] Removes Dataset.collectRows()/takeRows()
## What changes were proposed in this pull request?

This PR removes two methods, `collectRows()` and `takeRows()`, from `Dataset[T]`. These methods were added in PR #11443, and were later considered not useful.

## How was this patch tested?

Existing tests should do the work.

Author: Cheng Lian <lian@databricks.com>

Closes #11678 from liancheng/remove-collect-rows-and-take-rows.
2016-03-13 12:02:52 +08:00
Cheng Lian 4eace4d384 [SPARK-13828][SQL] Bring back stack trace of AnalysisException thrown from QueryExecution.assertAnalyzed
PR #11443 added an extra `plan: Option[LogicalPlan]` argument to `AnalysisException` and attached partially analyzed plan to thrown `AnalysisException` in `QueryExecution.assertAnalyzed()`.  However, the original stack trace wasn't properly inherited.  This PR fixes this issue by inheriting the stack trace.

A test case is added to verify that the first entry of `AnalysisException` stack trace isn't from `QueryExecution`.

Author: Cheng Lian <lian@databricks.com>

Closes #11677 from liancheng/analysis-exception-stacktrace.
2016-03-12 11:25:15 -08:00
Davies Liu ba8c86d06f [SPARK-13671] [SPARK-13311] [SQL] Use different physical plans for RDD and data sources
## What changes were proposed in this pull request?

This PR split the PhysicalRDD into two classes, PhysicalRDD and PhysicalScan. PhysicalRDD is used for DataFrames that is created from existing RDD. PhysicalScan is used for DataFrame that is created from data sources. This enable use to apply different optimization on both of them.

Also fix the problem for sameResult() on two DataSourceScan.

Also fix the equality check to toString for `In`. It's better to use Seq there, but we can't break this public API (sad).

## How was this patch tested?

Existing tests. Manually tested with TPCDS query Q59 and Q64, all those duplicated exchanges can be re-used now, also saw there are 40+% performance improvement (saving half of the scan).

Author: Davies Liu <davies@databricks.com>

Closes #11514 from davies/existing_rdd.
2016-03-12 00:48:36 -08:00
Andrew Or 66d9d0edfe [SPARK-13139][SQL] Parse Hive DDL commands ourselves
## What changes were proposed in this pull request?

This patch is ported over from viirya's changes in #11048. Currently for most DDLs we just pass the query text directly to Hive. Instead, we should parse these commands ourselves and in the future (not part of this patch) use the `HiveCatalog` to process these DDLs. This is a pretext to merging `SQLContext` and `HiveContext`.

Note: As of this patch we still pass the query text to Hive. The difference is that we now parse the commands ourselves so in the future we can just use our own catalog.

## How was this patch tested?

Jenkins, new `DDLCommandSuite`, which comprises of about 40% of the changes here.

Author: Andrew Or <andrew@databricks.com>

Closes #11573 from andrewor14/parser-plus-plus.
2016-03-11 15:13:48 -08:00
Marcelo Vanzin 99b7187c2d [SPARK-13780][SQL] Add missing dependency to build.
This is needed to avoid odd compiler errors when building just the
sql package with maven, because of odd interactions between scalac
and shaded classes.

Author: Marcelo Vanzin <vanzin@cloudera.com>

Closes #11640 from vanzin/SPARK-13780.
2016-03-11 10:27:38 -08:00
Cheng Lian 6d37e1eb90 [SPARK-13817][BUILD][SQL] Re-enable MiMA and removes object DataFrame
## What changes were proposed in this pull request?

PR #11443 temporarily disabled MiMA check, this PR re-enables it.

One extra change is that `object DataFrame` is also removed. The only purpose of introducing `object DataFrame` was to use it as an internal factory for creating `Dataset[Row]`. By replacing this internal factory with `Dataset.newDataFrame`, both `DataFrame` and `DataFrame$` are entirely removed from the API, so that we can simply put a `MissingClassProblem` filter in `MimaExcludes.scala` for most DataFrame API  changes.

## How was this patch tested?

Tested by MiMA check triggered by Jenkins.

Author: Cheng Lian <lian@databricks.com>

Closes #11656 from liancheng/re-enable-mima.
2016-03-11 22:17:50 +08:00
Wenchen Fan 74c4e2651f [HOT-FIX] fix compile
Fix the compilation failure introduced by https://github.com/apache/spark/pull/11555 because of a merge conflict.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #11648 from cloud-fan/hotbug.
2016-03-11 13:52:11 +08:00
Wenchen Fan 6871cc8f3e [SPARK-12718][SPARK-13720][SQL] SQL generation support for window functions
## What changes were proposed in this pull request?

Add SQL generation support for window functions. The idea is simple, just treat `Window` operator like `Project`, i.e. add subquery to its child when necessary, generate a `SELECT ... FROM ...` SQL string, implement `sql` method for window related expressions, e.g. `WindowSpecDefinition`, `WindowFrame`, etc.

This PR also fixed SPARK-13720 by improving the process of adding extra `SubqueryAlias`(the `RecoverScopingInfo` rule). Before this PR, we update the qualifiers in project list while adding the subquery. However, this is incomplete as we need to update qualifiers in all ancestors that refer attributes here. In this PR, we split `RecoverScopingInfo` into 2 rules: `AddSubQuery` and `UpdateQualifier`. `AddSubQuery` only add subquery if necessary, and `UpdateQualifier` will re-propagate and update qualifiers bottom up.

Ideally we should put the bug fix part in an individual PR, but this bug also blocks the window stuff, so I put them together here.

Many thanks to gatorsmile for the initial discussion and test cases!

## How was this patch tested?

new tests in `LogicalPlanToSQLSuite`

Author: Wenchen Fan <wenchen@databricks.com>

Closes #11555 from cloud-fan/window.
2016-03-11 13:22:34 +08:00
gatorsmile 560489f4e1 [SPARK-13732][SPARK-13797][SQL] Remove projectList from Window and Eliminate useless Window
#### What changes were proposed in this pull request?

`projectList` is useless. Its value is always the same as the child.output. Remove it from the class `Window`. Removal can simplify the codes in Analyzer and Optimizer.

This PR is based on the discussion started by cloud-fan in a separate PR:
https://github.com/apache/spark/pull/5604#discussion_r55140466

This PR also eliminates useless `Window`.

cloud-fan yhuai

#### How was this patch tested?

Existing test cases cover it.

Author: gatorsmile <gatorsmile@gmail.com>
Author: xiaoli <lixiao1983@gmail.com>
Author: Xiao Li <xiaoli@Xiaos-MacBook-Pro.local>

Closes #11565 from gatorsmile/removeProjListWindow.
2016-03-11 11:59:18 +08:00
Sameer Agarwal c3a6269ca9 [SPARK-13789] Infer additional constraints from attribute equality
## What changes were proposed in this pull request?

This PR adds support for inferring an additional set of data constraints based on attribute equality. For e.g., if an operator has constraints of the form (`a = 5`, `a = b`), we can now automatically infer an additional constraint of the form `b = 5`

## How was this patch tested?

Tested that new constraints are properly inferred for filters (by adding a new test) and equi-joins (by modifying an existing test)

Author: Sameer Agarwal <sameer@databricks.com>

Closes #11618 from sameeragarwal/infer-isequal-constraints.
2016-03-10 17:29:45 -08:00
Cheng Lian 1d542785b9 [SPARK-13244][SQL] Migrates DataFrame to Dataset
## What changes were proposed in this pull request?

This PR unifies DataFrame and Dataset by migrating existing DataFrame operations to Dataset and make `DataFrame` a type alias of `Dataset[Row]`.

Most Scala code changes are source compatible, but Java API is broken as Java knows nothing about Scala type alias (mostly replacing `DataFrame` with `Dataset<Row>`).

There are several noticeable API changes related to those returning arrays:

1.  `collect`/`take`

    -   Old APIs in class `DataFrame`:

        ```scala
        def collect(): Array[Row]
        def take(n: Int): Array[Row]
        ```

    -   New APIs in class `Dataset[T]`:

        ```scala
        def collect(): Array[T]
        def take(n: Int): Array[T]

        def collectRows(): Array[Row]
        def takeRows(n: Int): Array[Row]
        ```

    Two specialized methods `collectRows` and `takeRows` are added because Java doesn't support returning generic arrays. Thus, for example, `DataFrame.collect(): Array[T]` actually returns `Object` instead of `Array<T>` from Java side.

    Normally, Java users may fall back to `collectAsList` and `takeAsList`.  The two new specialized versions are added to avoid performance regression in ML related code (but maybe I'm wrong and they are not necessary here).

1.  `randomSplit`

    -   Old APIs in class `DataFrame`:

        ```scala
        def randomSplit(weights: Array[Double], seed: Long): Array[DataFrame]
        def randomSplit(weights: Array[Double]): Array[DataFrame]
        ```

    -   New APIs in class `Dataset[T]`:

        ```scala
        def randomSplit(weights: Array[Double], seed: Long): Array[Dataset[T]]
        def randomSplit(weights: Array[Double]): Array[Dataset[T]]
        ```

    Similar problem as above, but hasn't been addressed for Java API yet.  We can probably add `randomSplitAsList` to fix this one.

1.  `groupBy`

    Some original `DataFrame.groupBy` methods have conflicting signature with original `Dataset.groupBy` methods.  To distinguish these two, typed `Dataset.groupBy` methods are renamed to `groupByKey`.

Other noticeable changes:

1.  Dataset always do eager analysis now

    We used to support disabling DataFrame eager analysis to help reporting partially analyzed malformed logical plan on analysis failure.  However, Dataset encoders requires eager analysi during Dataset construction.  To preserve the error reporting feature, `AnalysisException` now takes an extra `Option[LogicalPlan]` argument to hold the partially analyzed plan, so that we can check the plan tree when reporting test failures.  This plan is passed by `QueryExecution.assertAnalyzed`.

## How was this patch tested?

Existing tests do the work.

## TODO

- [ ] Fix all tests
- [ ] Re-enable MiMA check
- [ ] Update ScalaDoc (`since`, `group`, and example code)

Author: Cheng Lian <lian@databricks.com>
Author: Yin Huai <yhuai@databricks.com>
Author: Wenchen Fan <wenchen@databricks.com>
Author: Cheng Lian <liancheng@users.noreply.github.com>

Closes #11443 from liancheng/ds-to-df.
2016-03-10 17:00:17 -08:00
Davies Liu 020ff8cd34 [SPARK-13751] [SQL] generate better code for Filter
## What changes were proposed in this pull request?

This PR improve the codegen of Filter by:

1. filter out the rows early if it have null value in it that will cause the condition result in null or false. After this, we could simplify the condition, because the input are not nullable anymore.

2. Split the condition as conjunctive predicates, then check them one by one.

Here is a piece of generated code for Filter in TPCDS Q55:
```java
/* 109 */       /*** CONSUME: Filter ((((isnotnull(d_moy#149) && isnotnull(d_year#147)) && (d_moy#149 = 11)) && (d_year#147 = 1999)) && isnotnull(d_date_sk#141)) */
/* 110 */       /* input[0, int] */
/* 111 */       boolean project_isNull2 = rdd_row.isNullAt(0);
/* 112 */       int project_value2 = project_isNull2 ? -1 : (rdd_row.getInt(0));
/* 113 */       /* input[1, int] */
/* 114 */       boolean project_isNull3 = rdd_row.isNullAt(1);
/* 115 */       int project_value3 = project_isNull3 ? -1 : (rdd_row.getInt(1));
/* 116 */       /* input[2, int] */
/* 117 */       boolean project_isNull4 = rdd_row.isNullAt(2);
/* 118 */       int project_value4 = project_isNull4 ? -1 : (rdd_row.getInt(2));
/* 119 */
/* 120 */       if (project_isNull3) continue;
/* 121 */       if (project_isNull4) continue;
/* 122 */       if (project_isNull2) continue;
/* 123 */
/* 124 */       /* (input[1, int] = 11) */
/* 125 */       boolean filter_value6 = false;
/* 126 */       filter_value6 = project_value3 == 11;
/* 127 */       if (!filter_value6) continue;
/* 128 */
/* 129 */       /* (input[2, int] = 1999) */
/* 130 */       boolean filter_value9 = false;
/* 131 */       filter_value9 = project_value4 == 1999;
/* 132 */       if (!filter_value9) continue;
/* 133 */
/* 134 */       filter_metricValue1.add(1);
/* 135 */
/* 136 */       /*** CONSUME: Project [d_date_sk#141] */
/* 137 */
/* 138 */       project_rowWriter1.write(0, project_value2);
/* 139 */       append(project_result1.copy());
```

## How was this patch tested?

Existing tests.

Author: Davies Liu <davies@databricks.com>

Closes #11585 from davies/gen_filter.
2016-03-10 16:40:16 -08:00
Dongjoon Hyun 91fed8e9c5 [SPARK-3854][BUILD] Scala style: require spaces before {.
## What changes were proposed in this pull request?

Since the opening curly brace, '{', has many usages as discussed in [SPARK-3854](https://issues.apache.org/jira/browse/SPARK-3854), this PR adds a ScalaStyle rule to prevent '){' pattern  for the following majority pattern and fixes the code accordingly. If we enforce this in ScalaStyle from now, it will improve the Scala code quality and reduce review time.
```
// Correct:
if (true) {
  println("Wow!")
}

// Incorrect:
if (true){
   println("Wow!")
}
```
IntelliJ also shows new warnings based on this.

## How was this patch tested?

Pass the Jenkins ScalaStyle test.

Author: Dongjoon Hyun <dongjoon@apache.org>

Closes #11637 from dongjoon-hyun/SPARK-3854.
2016-03-10 15:57:22 -08:00
Tathagata Das 3d2b6f56e3 [SQL][TEST] Increased timeouts to reduce flakiness in ContinuousQueryManagerSuite
## What changes were proposed in this pull request?

ContinuousQueryManager is sometimes flaky on Jenkins. I could not reproduce it on my machine, so I guess it about the waiting times which causes problems if Jenkins is loaded. I have increased the wait time in the hope that it will be less flaky.

## How was this patch tested?

I reran the unit test many times on a loop in my machine. I am going to run it a few time in Jenkins, that's the real test.

Author: Tathagata Das <tathagata.das1565@gmail.com>

Closes #11638 from tdas/cqm-flaky-test.
2016-03-10 14:38:19 -08:00
Nong Li 747d2f5381 [SPARK-13790] Speed up ColumnVector's getDecimal
## What changes were proposed in this pull request?

We should reuse an object similar to the other non-primitive type getters. For
a query that computes averages over decimal columns, this shows a 10% speedup
on overall query times.

## How was this patch tested?

Existing tests and this benchmark

```
TPCDS Snappy:                       Best/Avg Time(ms)    Rate(M/s)   Per Row(ns)
--------------------------------------------------------------------------------
q27-agg (master)                       10627 / 11057         10.8          92.3
q27-agg (this patch)                     9722 / 9832         11.8          84.4
```

Author: Nong Li <nong@databricks.com>

Closes #11624 from nongli/spark-13790.
2016-03-10 13:31:19 -08:00
Sameer Agarwal 19f4ac6dc7 [SPARK-13759][SQL] Add IsNotNull constraints for expressions with an inequality
## What changes were proposed in this pull request?

This PR adds support for inferring `IsNotNull` constraints from expressions with an `!==`. More specifically, if an operator has a condition on `a !== b`, we know that both `a` and `b` in the operator output can no longer be null.

## How was this patch tested?

1. Modified a test in `ConstraintPropagationSuite` to test for expressions with an inequality.
2. Added a test in `NullFilteringSuite` for making sure an Inner join with a "non-equal" condition appropriately filters out null from their input.

cc nongli

Author: Sameer Agarwal <sameer@databricks.com>

Closes #11594 from sameeragarwal/isnotequal-constraints.
2016-03-10 12:16:46 -08:00
Liang-Chi Hsieh d24801ad28 [SPARK-13636] [SQL] Directly consume UnsafeRow in wholestage codegen plans
JIRA: https://issues.apache.org/jira/browse/SPARK-13636

## What changes were proposed in this pull request?

As shown in the wholestage codegen verion of Sort operator, when Sort is top of Exchange (or other operator that produce UnsafeRow), we will create variables from UnsafeRow, than create another UnsafeRow using these variables. We should avoid the unnecessary unpack and pack variables from UnsafeRows.

## How was this patch tested?

All existing wholestage codegen tests should be passed.

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

Closes #11484 from viirya/direct-consume-unsaferow.
2016-03-10 10:04:56 -08:00
Dongjoon Hyun 9525c563de [MINOR][SQL] Replace DataFrameWriter.stream() with startStream() in comments.
## What changes were proposed in this pull request?

According to #11627 , this PR replace `DataFrameWriter.stream()` with `startStream()` in comments of `ContinuousQueryListener.java`.

## How was this patch tested?

Manual. (It changes on comments.)

Author: Dongjoon Hyun <dongjoon@apache.org>

Closes #11629 from dongjoon-hyun/minor_rename.
2016-03-09 23:54:00 -08:00
Reynold Xin 8a3acb792d [SPARK-13794][SQL] Rename DataFrameWriter.stream() DataFrameWriter.startStream()
## What changes were proposed in this pull request?
The new name makes it more obvious with the verb "start" that we are actually starting some execution.

## How was this patch tested?
This is just a rename. Existing unit tests should cover it.

Author: Reynold Xin <rxin@databricks.com>

Closes #11627 from rxin/SPARK-13794.
2016-03-09 21:04:56 -08:00
hyukjinkwon aa0eba2c35 [SPARK-13766][SQL] Consistent file extensions for files written by internal data sources
## What changes were proposed in this pull request?

https://issues.apache.org/jira/browse/SPARK-13766
This PR makes the file extensions (written by internal datasource) consistent.

**Before**

- TEXT, CSV and JSON
```
[.COMPRESSION_CODEC_NAME]
```

- Parquet
```
[.COMPRESSION_CODEC_NAME].parquet
```

- ORC
```
.orc
```

**After**

- TEXT, CSV and JSON
```
.txt[.COMPRESSION_CODEC_NAME]
.csv[.COMPRESSION_CODEC_NAME]
.json[.COMPRESSION_CODEC_NAME]
```

- Parquet
```
[.COMPRESSION_CODEC_NAME].parquet
```

- ORC
```
[.COMPRESSION_CODEC_NAME].orc
```

When the compression codec is set,
- For Parquet and ORC, each still stays in Parquet and ORC format but just have compressed data internally. So, I think it is okay to name `.parquet` and `.orc` at the end.

- For Text, CSV and JSON, each does not stays in each format but it has different data format according to compression codec. So, each has the names `.json`, `.csv` and `.txt` before the compression extension.

## How was this patch tested?

Unit tests are used and `./dev/run_tests` for coding style tests.

Author: hyukjinkwon <gurwls223@gmail.com>

Closes #11604 from HyukjinKwon/SPARK-13766.
2016-03-09 19:12:46 -08:00
Yin Huai 790646125e Revert "[SPARK-13760][SQL] Fix BigDecimal constructor for FloatType"
This reverts commit 926e9c45a2.
2016-03-09 18:41:38 -08:00
Sameer Agarwal 926e9c45a2 [SPARK-13760][SQL] Fix BigDecimal constructor for FloatType
## What changes were proposed in this pull request?

A very minor change for using `BigDecimal.decimal(f: Float)` instead of `BigDecimal(f: float)`. The latter is deprecated and can result in inconsistencies due to an implicit conversion to `Double`.

## How was this patch tested?

N/A

cc yhuai

Author: Sameer Agarwal <sameer@databricks.com>

Closes #11597 from sameeragarwal/bigdecimal.
2016-03-09 18:16:29 -08:00
Andrew Or 37fcda3e6c [SPARK-13747][SQL] Fix concurrent query with fork-join pool
## What changes were proposed in this pull request?

Fix this use case, which was already fixed in SPARK-10548 in 1.6 but was broken in master due to #9264:

```
(1 to 100).par.foreach { _ => sc.parallelize(1 to 5).map { i => (i, i) }.toDF("a", "b").count() }
```

This threw `IllegalArgumentException` consistently before this patch. For more detail, see the JIRA.

## How was this patch tested?

New test in `SQLExecutionSuite`.

Author: Andrew Or <andrew@databricks.com>

Closes #11586 from andrewor14/fix-concurrent-sql.
2016-03-09 17:34:28 -08:00
Sameer Agarwal dbf2a7cfad [SPARK-13781][SQL] Use ExpressionSets in ConstraintPropagationSuite
## What changes were proposed in this pull request?

This PR is a small follow up on https://github.com/apache/spark/pull/11338 (https://issues.apache.org/jira/browse/SPARK-13092) to use `ExpressionSet` as part of the verification logic in `ConstraintPropagationSuite`.
## How was this patch tested?

No new tests added. Just changes the verification logic in `ConstraintPropagationSuite`.

Author: Sameer Agarwal <sameer@databricks.com>

Closes #11611 from sameeragarwal/expression-set.
2016-03-09 15:27:18 -08:00
gatorsmile c6aa356cd8 [SPARK-13527][SQL] Prune Filters based on Constraints
#### What changes were proposed in this pull request?

Remove all the deterministic conditions in a [[Filter]] that are contained in the Child's Constraints.

For example, the first query can be simplified to the second one.

```scala
    val queryWithUselessFilter = tr1
      .where("tr1.a".attr > 10 || "tr1.c".attr < 10)
      .join(tr2.where('d.attr < 100), Inner, Some("tr1.a".attr === "tr2.a".attr))
      .where(
        ("tr1.a".attr > 10 || "tr1.c".attr < 10) &&
        'd.attr < 100 &&
        "tr2.a".attr === "tr1.a".attr)
```
```scala
    val query = tr1
      .where("tr1.a".attr > 10 || "tr1.c".attr < 10)
      .join(tr2.where('d.attr < 100), Inner, Some("tr1.a".attr === "tr2.a".attr))
```
#### How was this patch tested?

Six test cases are added.

Author: gatorsmile <gatorsmile@gmail.com>

Closes #11406 from gatorsmile/FilterRemoval.
2016-03-09 12:50:55 -08:00
Davies Liu 3dc9ae2e15 [SPARK-13523] [SQL] Reuse exchanges in a query
## What changes were proposed in this pull request?

It’s possible to have common parts in a query, for example, self join, it will be good to avoid the duplicated part to same CPUs and memory (Broadcast or cache).

Exchange will materialize the underlying RDD by shuffle or collect, it’s a great point to check duplicates and reuse them. Duplicated exchanges means they generate exactly the same result inside a query.

In order to find out the duplicated exchanges, we should be able to compare SparkPlan to check that they have same results or not. We already have that for LogicalPlan, so we should move that into QueryPlan to make it available for SparkPlan.

Once we can find the duplicated exchanges, we should replace all of them with same SparkPlan object (could be wrapped by ReusedExchage for explain), then the plan tree become a DAG. Since all the planner only work with tree, so this rule should be the last one for the entire planning.

After the rule, the plan will looks like:

```
WholeStageCodegen
:  +- Project [id#0L]
:     +- BroadcastHashJoin [id#0L], [id#2L], Inner, BuildRight, None
:        :- Project [id#0L]
:        :  +- BroadcastHashJoin [id#0L], [id#1L], Inner, BuildRight, None
:        :     :- Range 0, 1, 4, 1024, [id#0L]
:        :     +- INPUT
:        +- INPUT
:- BroadcastExchange HashedRelationBroadcastMode(true,List(id#1L),List(id#1L))
:  +- WholeStageCodegen
:     :  +- Range 0, 1, 4, 1024, [id#1L]
+- ReusedExchange [id#2L], BroadcastExchange HashedRelationBroadcastMode(true,List(id#1L),List(id#1L))
```

![bjoin](https://cloud.githubusercontent.com/assets/40902/13414787/209e8c5c-df0a-11e5-8a0f-edff69d89e83.png)

For three ways SortMergeJoin,
```
== Physical Plan ==
WholeStageCodegen
:  +- Project [id#0L]
:     +- SortMergeJoin [id#0L], [id#4L], None
:        :- INPUT
:        +- INPUT
:- WholeStageCodegen
:  :  +- Project [id#0L]
:  :     +- SortMergeJoin [id#0L], [id#3L], None
:  :        :- INPUT
:  :        +- INPUT
:  :- WholeStageCodegen
:  :  :  +- Sort [id#0L ASC], false, 0
:  :  :     +- INPUT
:  :  +- Exchange hashpartitioning(id#0L, 200), None
:  :     +- WholeStageCodegen
:  :        :  +- Range 0, 1, 4, 33554432, [id#0L]
:  +- WholeStageCodegen
:     :  +- Sort [id#3L ASC], false, 0
:     :     +- INPUT
:     +- ReusedExchange [id#3L], Exchange hashpartitioning(id#0L, 200), None
+- WholeStageCodegen
   :  +- Sort [id#4L ASC], false, 0
   :     +- INPUT
   +- ReusedExchange [id#4L], Exchange hashpartitioning(id#0L, 200), None
```
![sjoin](https://cloud.githubusercontent.com/assets/40902/13414790/27aea61c-df0a-11e5-8cbf-fbc985c31d95.png)

If the same ShuffleExchange or BroadcastExchange, execute()/executeBroadcast() will be called by different parents, they should cached the RDD/Broadcast, return the same one for all the parents.

## How was this patch tested?

Added some unit tests for this.  Had done some manual tests on TPCDS query Q59 and Q64, we can see some exchanges are re-used (this requires a change in PhysicalRDD to for sameResult, is be done in #11514 ).

Author: Davies Liu <davies@databricks.com>

Closes #11403 from davies/dedup.
2016-03-09 12:04:29 -08:00
hyukjinkwon cad29a40b2 [SPARK-13728][SQL] Fix ORC PPD test so that pushed filters can be checked.
## What changes were proposed in this pull request?
https://issues.apache.org/jira/browse/SPARK-13728

https://github.com/apache/spark/pull/11509 makes the output only single ORC file.
It was 10 files but this PR writes only single file. So, this could not skip stripes in ORC by the pushed down filters.
So, this PR simply repartitions data into 10 so that the test could pass.
## How was this patch tested?

unittest and `./dev/run_tests` for code style test.

Author: hyukjinkwon <gurwls223@gmail.com>

Closes #11593 from HyukjinKwon/SPARK-13728.
2016-03-09 10:48:53 -08:00
gatorsmile 23369c3bd2 [SPARK-13763][SQL] Remove Project when its Child's Output is Nil
#### What changes were proposed in this pull request?

As shown in another PR: https://github.com/apache/spark/pull/11596, we are using `SELECT 1` as a dummy table, when the table is used for SQL statements in which a table reference is required, but the contents of the table are not important. For example,

```SQL
SELECT value FROM (select 1) dummyTable Lateral View explode(array(1,2,3)) adTable as value
```
Before the PR, the optimized plan contains a useless `Project` after Optimizer executing the `ColumnPruning` rule, as shown below:

```
== Analyzed Logical Plan ==
value: int
Project [value#22]
+- Generate explode(array(1, 2, 3)), true, false, Some(adtable), [value#22]
   +- SubqueryAlias dummyTable
      +- Project [1 AS 1#21]
         +- OneRowRelation$

== Optimized Logical Plan ==
Generate explode([1,2,3]), false, false, Some(adtable), [value#22]
+- Project
   +- OneRowRelation$
```

After the fix, the optimized plan removed the useless `Project`, as shown below:
```
== Optimized Logical Plan ==
Generate explode([1,2,3]), false, false, Some(adtable), [value#22]
+- OneRowRelation$
```

This PR is to remove `Project` when its Child's output is Nil

#### How was this patch tested?

Added a new unit test case into the suite `ColumnPruningSuite.scala`

Author: gatorsmile <gatorsmile@gmail.com>

Closes #11599 from gatorsmile/projectOneRowRelation.
2016-03-09 10:29:27 -08:00
Davies Liu 7791d0c3a9 Revert "[SPARK-13668][SQL] Reorder filter/join predicates to short-circuit isNotNull checks"
This reverts commit e430614eae.
2016-03-09 10:05:57 -08:00
Davies Liu 9634e17d01 [SPARK-13242] [SQL] codegen fallback in case-when if there many branches
## What changes were proposed in this pull request?

If there are many branches in a CaseWhen expression, the generated code could go above the 64K limit for single java method, will fail to compile. This PR change it to fallback to interpret mode if there are more than 20 branches.

This PR is based on #11243 and #11221, thanks to joehalliwell

Closes #11243
Closes #11221

## How was this patch tested?

Add a test with 50 branches.

Author: Davies Liu <davies@databricks.com>

Closes #11592 from davies/fix_when.
2016-03-09 09:27:28 -08:00
Dilip Biswal 53ba6d6e59 [SPARK-13698][SQL] Fix Analysis Exceptions when Using Backticks in Generate
## What changes were proposed in this pull request?
Analysis exception occurs while running the following query.
```
SELECT ints FROM nestedArray LATERAL VIEW explode(a.b) `a` AS `ints`
```
```
Failed to analyze query: org.apache.spark.sql.AnalysisException: cannot resolve '`ints`' given input columns: [a, `ints`]; line 1 pos 7
'Project ['ints]
+- Generate explode(a#0.b), true, false, Some(a), [`ints`#8]
   +- SubqueryAlias nestedarray
      +- LocalRelation [a#0], [[[[1,2,3]]]]
```

## How was this patch tested?

Added new unit tests in SQLQuerySuite and HiveQlSuite

Author: Dilip Biswal <dbiswal@us.ibm.com>

Closes #11538 from dilipbiswal/SPARK-13698.
2016-03-09 21:49:37 +08:00
Dongjoon Hyun c3689bc24e [SPARK-13702][CORE][SQL][MLLIB] Use diamond operator for generic instance creation in Java code.
## What changes were proposed in this pull request?

In order to make `docs/examples` (and other related code) more simple/readable/user-friendly, this PR replaces existing codes like the followings by using `diamond` operator.

```
-    final ArrayList<Product2<Object, Object>> dataToWrite =
-      new ArrayList<Product2<Object, Object>>();
+    final ArrayList<Product2<Object, Object>> dataToWrite = new ArrayList<>();
```

Java 7 or higher supports **diamond** operator which replaces the type arguments required to invoke the constructor of a generic class with an empty set of type parameters (<>). Currently, Spark Java code use mixed usage of this.

## How was this patch tested?

Manual.
Pass the existing tests.

Author: Dongjoon Hyun <dongjoon@apache.org>

Closes #11541 from dongjoon-hyun/SPARK-13702.
2016-03-09 10:31:26 +00:00
Takuya UESHIN 2c5af7d4d9 [SPARK-13640][SQL] Synchronize ScalaReflection.mirror method.
## What changes were proposed in this pull request?

`ScalaReflection.mirror` method should be synchronized when scala version is `2.10` because `universe.runtimeMirror` is not thread safe.

## How was this patch tested?

I added a test to check thread safety of `ScalaRefection.mirror` method in `ScalaReflectionSuite`, which will throw the following Exception in Scala `2.10` without this patch:

```
[info] - thread safety of mirror *** FAILED *** (49 milliseconds)
[info]   java.lang.UnsupportedOperationException: tail of empty list
[info]   at scala.collection.immutable.Nil$.tail(List.scala:339)
[info]   at scala.collection.immutable.Nil$.tail(List.scala:334)
[info]   at scala.reflect.internal.SymbolTable.popPhase(SymbolTable.scala:172)
[info]   at scala.reflect.internal.Symbols$Symbol.unsafeTypeParams(Symbols.scala:1477)
[info]   at scala.reflect.internal.Symbols$TypeSymbol.tpe(Symbols.scala:2777)
[info]   at scala.reflect.internal.Mirrors$RootsBase.init(Mirrors.scala:235)
[info]   at scala.reflect.runtime.JavaMirrors$class.createMirror(JavaMirrors.scala:34)
[info]   at scala.reflect.runtime.JavaMirrors$class.runtimeMirror(JavaMirrors.scala:61)
[info]   at scala.reflect.runtime.JavaUniverse.runtimeMirror(JavaUniverse.scala:12)
[info]   at scala.reflect.runtime.JavaUniverse.runtimeMirror(JavaUniverse.scala:12)
[info]   at org.apache.spark.sql.catalyst.ScalaReflection$.mirror(ScalaReflection.scala:36)
[info]   at org.apache.spark.sql.catalyst.ScalaReflectionSuite$$anonfun$12$$anonfun$apply$mcV$sp$1$$anonfun$apply$1$$anonfun$apply$2.apply(ScalaReflectionSuite.scala:256)
[info]   at org.apache.spark.sql.catalyst.ScalaReflectionSuite$$anonfun$12$$anonfun$apply$mcV$sp$1$$anonfun$apply$1$$anonfun$apply$2.apply(ScalaReflectionSuite.scala:252)
[info]   at scala.concurrent.impl.Future$PromiseCompletingRunnable.liftedTree1$1(Future.scala:24)
[info]   at scala.concurrent.impl.Future$PromiseCompletingRunnable.run(Future.scala:24)
[info]   at scala.concurrent.impl.ExecutionContextImpl$$anon$3.exec(ExecutionContextImpl.scala:107)
[info]   at scala.concurrent.forkjoin.ForkJoinTask.doExec(ForkJoinTask.java:260)
[info]   at scala.concurrent.forkjoin.ForkJoinPool$WorkQueue.runTask(ForkJoinPool.java:1339)
[info]   at scala.concurrent.forkjoin.ForkJoinPool.runWorker(ForkJoinPool.java:1979)
[info]   at scala.concurrent.forkjoin.ForkJoinWorkerThread.run(ForkJoinWorkerThread.java:107)
```

Notice that the test will pass when Scala version is `2.11`.

Author: Takuya UESHIN <ueshin@happy-camper.st>

Closes #11487 from ueshin/issues/SPARK-13640.
2016-03-09 10:23:27 +00:00
Dongjoon Hyun f3201aeeb0 [SPARK-13692][CORE][SQL] Fix trivial Coverity/Checkstyle defects
## What changes were proposed in this pull request?

This issue fixes the following potential bugs and Java coding style detected by Coverity and Checkstyle.

- Implement both null and type checking in equals functions.
- Fix wrong type casting logic in SimpleJavaBean2.equals.
- Add `implement Cloneable` to `UTF8String` and `SortedIterator`.
- Remove dereferencing before null check in `AbstractBytesToBytesMapSuite`.
- Fix coding style: Add '{}' to single `for` statement in mllib examples.
- Remove unused imports in `ColumnarBatch` and `JavaKinesisStreamSuite`.
- Remove unused fields in `ChunkFetchIntegrationSuite`.
- Add `stop()` to prevent resource leak.

Please note that the last two checkstyle errors exist on newly added commits after [SPARK-13583](https://issues.apache.org/jira/browse/SPARK-13583).

## How was this patch tested?

manual via `./dev/lint-java` and Coverity site.

Author: Dongjoon Hyun <dongjoon@apache.org>

Closes #11530 from dongjoon-hyun/SPARK-13692.
2016-03-09 10:12:23 +00:00
Jakob Odersky 035d3acdf3 [SPARK-7286][SQL] Deprecate !== in favour of =!=
This PR replaces #9925 which had issues with CI. **Please see the original PR for any previous discussions.**

## What changes were proposed in this pull request?
Deprecate the SparkSQL column operator !== and use =!= as an alternative.
Fixes subtle issues related to operator precedence (basically, !== does not have the same priority as its logical negation, ===).

## How was this patch tested?
All currently existing tests.

Author: Jakob Odersky <jodersky@gmail.com>

Closes #11588 from jodersky/SPARK-7286.
2016-03-08 18:11:09 -08:00
Hossein cc4ab37ee7 [SPARK-13754] Keep old data source name for backwards compatibility
## Motivation
CSV data source was contributed by Databricks. It is the inlined version of https://github.com/databricks/spark-csv. The data source name was `com.databricks.spark.csv`. As a result there are many tables created on older versions of spark with that name as the source. For backwards compatibility we should keep the old name.

## Proposed changes
`com.databricks.spark.csv` was added to list of `backwardCompatibilityMap` in `ResolvedDataSource.scala`

## Tests
A unit test was added to `CSVSuite` to parse a csv file using the old name.

Author: Hossein <hossein@databricks.com>

Closes #11589 from falaki/SPARK-13754.
2016-03-08 17:45:15 -08:00
Davies Liu 982ef2b87e [SPARK-13750][SQL] fix sizeInBytes of HadoopFsRelation
## What changes were proposed in this pull request?

This PR fix the sizeInBytes of HadoopFsRelation.

## How was this patch tested?

Added regression test for that.

Author: Davies Liu <davies@databricks.com>

Closes #11590 from davies/fix_sizeInBytes.
2016-03-08 17:42:52 -08:00
Josh Rosen 81f54acc9c [SPARK-13755] Escape quotes in SQL plan visualization node labels
When generating Graphviz DOT files in the SQL query visualization we need to escape double-quotes inside node labels. This is a followup to #11309, which fixed a similar graph in Spark Core's DAG visualization.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #11587 from JoshRosen/graphviz-escaping.
2016-03-08 16:28:22 -08:00
Sameer Agarwal e430614eae [SPARK-13668][SQL] Reorder filter/join predicates to short-circuit isNotNull checks
## What changes were proposed in this pull request?

If a filter predicate or a join condition consists of `IsNotNull` checks, we should reorder these checks such that these non-nullability checks are evaluated before the rest of the predicates.

For e.g., if a filter predicate is of the form `a > 5 && isNotNull(b)`, we should rewrite this as `isNotNull(b) && a > 5` during physical plan generation.

## How was this patch tested?

new unit tests that verify the physical plan for both filters and joins in `ReorderedPredicateSuite`

Author: Sameer Agarwal <sameer@databricks.com>

Closes #11511 from sameeragarwal/reorder-isnotnull.
2016-03-08 15:40:45 -08:00
Michael Armbrust 1e28840594 [SPARK-13738][SQL] Cleanup Data Source resolution
Follow-up to #11509, that simply refactors the interface that we use when resolving a pluggable `DataSource`.
 - Multiple functions share the same set of arguments so we make this a case class, called `DataSource`.  Actual resolution is now done by calling a function on this class.
 - Instead of having multiple methods named `apply` (some of which do writing some of which do reading) we now explicitly have `resolveRelation()` and `write(mode, df)`.
 - Get rid of `Array[String]` since this is an internal API and was forcing us to awkwardly call `toArray` in a bunch of places.

Author: Michael Armbrust <michael@databricks.com>

Closes #11572 from marmbrus/dataSourceResolution.
2016-03-08 15:19:26 -08:00
Dongjoon Hyun 076009b949 [SPARK-13400] Stop using deprecated Octal escape literals
## What changes were proposed in this pull request?

This removes the remaining deprecated Octal escape literals. The followings are the warnings on those two lines.
```
LiteralExpressionSuite.scala:99: Octal escape literals are deprecated, use \u0000 instead.
HiveQlSuite.scala:74: Octal escape literals are deprecated, use \u002c instead.
```

## How was this patch tested?

Manual.
During building, there should be no warning on `Octal escape literals`.
```
mvn -DskipTests clean install
```

Author: Dongjoon Hyun <dongjoon@apache.org>

Closes #11584 from dongjoon-hyun/SPARK-13400.
2016-03-08 15:00:26 -08:00
Wenchen Fan 46881b4ea2 [SPARK-12727][SQL] support SQL generation for aggregate with multi-distinct
## What changes were proposed in this pull request?

This PR add SQL generation support for aggregate with multi-distinct, by simply moving the `DistinctAggregationRewriter` rule to optimizer.

More discussions are needed as this breaks an import contract: analyzed plan should be able to run without optimization.  However, the `ComputeCurrentTime` rule has kind of broken it already, and I think maybe we should add a new phase for this kind of rules, because strictly speaking they don't belong to analysis and is coupled with the physical plan implementation.

## How was this patch tested?

existing tests

Author: Wenchen Fan <wenchen@databricks.com>

Closes #11579 from cloud-fan/distinct.
2016-03-08 11:45:08 -08:00
Davies Liu 78d3b6051e [SPARK-13657] [SQL] Support parsing very long AND/OR expressions
## What changes were proposed in this pull request?

In order to avoid StackOverflow when parse a expression with hundreds of ORs, we should use loop instead of recursive functions to flatten the tree as list. This PR also build a balanced tree to reduce the depth of generated And/Or expression, to avoid StackOverflow in analyzer/optimizer.

## How was this patch tested?

Add new unit tests. Manually tested with TPCDS Q3 with hundreds predicates in it [1]. These predicates help to reduce the number of partitions, then the query time went from 60 seconds to 8 seconds.

[1] https://github.com/cloudera/impala-tpcds-kit/blob/master/queries/q3.sql

Author: Davies Liu <davies@databricks.com>

Closes #11501 from davies/long_or.
2016-03-08 10:23:19 -08:00
Wenchen Fan 7d05d02bff [SPARK-13637][SQL] use more information to simplify the code in Expand builder
## What changes were proposed in this pull request?

The code in `Expand.apply` can be simplified by existing information:

* the `groupByExprs` parameter are all `Attribute`s
* the `child` parameter is a `Project` that append aliased group by expressions to its child's output

## How was this patch tested?

by existing tests.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #11485 from cloud-fan/expand.
2016-03-08 23:34:42 +08:00
Davies Liu 25bba58d16 [SPARK-13404] [SQL] Create variables for input row when it's actually used
## What changes were proposed in this pull request?

This PR change the way how we generate the code for the output variables passing from a plan to it's parent.

Right now, they are generated before call consume() of it's parent. It's not efficient, if the parent is a Filter or Join, which could filter out most the rows, the time to access some of the columns that are not used by the Filter or Join are wasted.

This PR try to improve this by defering the access of columns until they are actually used by a plan. After this PR, a plan does not need to generate code to evaluate the variables for output, just passing the ExprCode to its parent by `consume()`. In `parent.consumeChild()`, it will check the output from child and `usedInputs`, generate the code for those columns that is part of `usedInputs` before calling `doConsume()`.

This PR also change the `if` from
```
if (cond) {
  xxx
}
```
to
```
if (!cond) continue;
xxx
```
The new one could help to reduce the nested indents for multiple levels of Filter and BroadcastHashJoin.

It also added some comments for operators.

## How was the this patch tested?

Unit tests. Manually ran TPCDS Q55, this PR improve the performance about 30% (scale=10, from 2.56s to 1.96s)

Author: Davies Liu <davies@databricks.com>

Closes #11274 from davies/gen_defer.
2016-03-07 20:09:08 -08:00
Andrew Or da7bfac488 [SPARK-13689][SQL] Move helper things in CatalystQl to new utils object
## What changes were proposed in this pull request?

When we add more DDL parsing logic in the future, SparkQl will become very big. To keep it smaller, we'll introduce helper "parser objects", e.g. one to parse alter table commands. However, these parser objects will need to access some helper methods that exist in CatalystQl. The proposal is to move those methods to an isolated ParserUtils object.

This is based on viirya's changes in #11048. It prefaces the bigger fix for SPARK-13139 to make the diff of that patch smaller.

## How was this patch tested?

No change in functionality, so just Jenkins.

Author: Andrew Or <andrew@databricks.com>

Closes #11529 from andrewor14/parser-utils.
2016-03-07 18:01:27 -08:00
Tim Preece 46f25c2413 [SPARK-13648] Add Hive Cli to classes for isolated classloader
## What changes were proposed in this pull request?

Adding the hive-cli classes to the classloader

## How was this patch tested?

The hive Versionssuite tests were run

This is my original work and I license the work to the project under the project's open source license.

Author: Tim Preece <tim.preece.in.oz@gmail.com>

Closes #11495 from preecet/master.
2016-03-07 15:23:07 -08:00
Michael Armbrust e720dda42e [SPARK-13665][SQL] Separate the concerns of HadoopFsRelation
`HadoopFsRelation` is used for reading most files into Spark SQL.  However today this class mixes the concerns of file management, schema reconciliation, scan building, bucketing, partitioning, and writing data.  As a result, many data sources are forced to reimplement the same functionality and the various layers have accumulated a fair bit of inefficiency.  This PR is a first cut at separating this into several components / interfaces that are each described below.  Additionally, all implementations inside of Spark (parquet, csv, json, text, orc, svmlib) have been ported to the new API `FileFormat`.  External libraries, such as spark-avro will also need to be ported to work with Spark 2.0.

### HadoopFsRelation
A simple `case class` that acts as a container for all of the metadata required to read from a datasource.  All discovery, resolution and merging logic for schemas and partitions has been removed.  This an internal representation that no longer needs to be exposed to developers.

```scala
case class HadoopFsRelation(
    sqlContext: SQLContext,
    location: FileCatalog,
    partitionSchema: StructType,
    dataSchema: StructType,
    bucketSpec: Option[BucketSpec],
    fileFormat: FileFormat,
    options: Map[String, String]) extends BaseRelation
```

### FileFormat
The primary interface that will be implemented by each different format including external libraries.  Implementors are responsible for reading a given format and converting it into `InternalRow` as well as writing out an `InternalRow`.  A format can optionally return a schema that is inferred from a set of files.

```scala
trait FileFormat {
  def inferSchema(
      sqlContext: SQLContext,
      options: Map[String, String],
      files: Seq[FileStatus]): Option[StructType]

  def prepareWrite(
      sqlContext: SQLContext,
      job: Job,
      options: Map[String, String],
      dataSchema: StructType): OutputWriterFactory

  def buildInternalScan(
      sqlContext: SQLContext,
      dataSchema: StructType,
      requiredColumns: Array[String],
      filters: Array[Filter],
      bucketSet: Option[BitSet],
      inputFiles: Array[FileStatus],
      broadcastedConf: Broadcast[SerializableConfiguration],
      options: Map[String, String]): RDD[InternalRow]
}
```

The current interface is based on what was required to get all the tests passing again, but still mixes a couple of concerns (i.e. `bucketSet` is passed down to the scan instead of being resolved by the planner).  Additionally, scans are still returning `RDD`s instead of iterators for single files.  In a future PR, bucketing should be removed from this interface and the scan should be isolated to a single file.

### FileCatalog
This interface is used to list the files that make up a given relation, as well as handle directory based partitioning.

```scala
trait FileCatalog {
  def paths: Seq[Path]
  def partitionSpec(schema: Option[StructType]): PartitionSpec
  def allFiles(): Seq[FileStatus]
  def getStatus(path: Path): Array[FileStatus]
  def refresh(): Unit
}
```

Currently there are two implementations:
 - `HDFSFileCatalog` - based on code from the old `HadoopFsRelation`.  Infers partitioning by recursive listing and caches this data for performance
 - `HiveFileCatalog` - based on the above, but it uses the partition spec from the Hive Metastore.

### ResolvedDataSource
Produces a logical plan given the following description of a Data Source (which can come from DataFrameReader or a metastore):
 - `paths: Seq[String] = Nil`
 - `userSpecifiedSchema: Option[StructType] = None`
 - `partitionColumns: Array[String] = Array.empty`
 - `bucketSpec: Option[BucketSpec] = None`
 - `provider: String`
 - `options: Map[String, String]`

This class is responsible for deciding which of the Data Source APIs a given provider is using (including the non-file based ones).  All reconciliation of partitions, buckets, schema from metastores or inference is done here.

### DataSourceAnalysis / DataSourceStrategy
Responsible for analyzing and planning reading/writing of data using any of the Data Source APIs, including:
 - pruning the files from partitions that will be read based on filters.
 - appending partition columns*
 - applying additional filters when a data source can not evaluate them internally.
 - constructing an RDD that is bucketed correctly when required*
 - sanity checking schema match-up and other analysis when writing.

*In the future we should do that following:
 - Break out file handling into its own Strategy as its sufficiently complex / isolated.
 - Push the appending of partition columns down in to `FileFormat` to avoid an extra copy / unvectorization.
 - Use a custom RDD for scans instead of `SQLNewNewHadoopRDD2`

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

Closes #11509 from marmbrus/fileDataSource.
2016-03-07 15:15:10 -08:00
hyukjinkwon 8577260abd [SPARK-13442][SQL] Make type inference recognize boolean types
## What changes were proposed in this pull request?

https://issues.apache.org/jira/browse/SPARK-13442

This PR adds the support for inferring `BooleanType` for schema.
It supports to infer case-insensitive `true` / `false` as `BooleanType`.

Unittests were added for `CSVInferSchemaSuite` and `CSVSuite` for end-to-end test.

## How was the this patch tested?

This was tested with unittests and with `dev/run_tests` for coding style

Author: hyukjinkwon <gurwls223@gmail.com>

Closes #11315 from HyukjinKwon/SPARK-13442.
2016-03-07 14:32:01 -08:00
gatorsmile b6071a7001 [SPARK-13722][SQL] No Push Down for Non-deterministics Predicates through Generate
#### What changes were proposed in this pull request?

Non-deterministic predicates should not be pushed through Generate.

#### How was this patch tested?

Added a test case in `FilterPushdownSuite.scala`

Author: gatorsmile <gatorsmile@gmail.com>

Closes #11562 from gatorsmile/pushPredicateDownWindow.
2016-03-07 12:09:27 -08:00
Sameer Agarwal ef77003178 [SPARK-13495][SQL] Add Null Filters in the query plan for Filters/Joins based on their data constraints
## What changes were proposed in this pull request?

This PR adds an optimizer rule to eliminate reading (unnecessary) NULL values if they are not required for correctness by inserting `isNotNull` filters is the query plan. These filters are currently inserted beneath existing `Filter` and `Join` operators and are inferred based on their data constraints.

Note: While this optimization is applicable to all types of join, it primarily benefits `Inner` and `LeftSemi` joins.

## How was this patch tested?

1. Added a new `NullFilteringSuite` that tests for `IsNotNull` filters in the query plan for joins and filters. Also, tests interaction with the `CombineFilters` optimizer rules.
2. Test generated ExpressionTrees via `OrcFilterSuite`
3. Test filter source pushdown logic via `SimpleTextHadoopFsRelationSuite`

cc yhuai nongli

Author: Sameer Agarwal <sameer@databricks.com>

Closes #11372 from sameeragarwal/gen-isnotnull.
2016-03-07 12:04:59 -08:00
Wenchen Fan 4896411176 [SPARK-13694][SQL] QueryPlan.expressions should always include all expressions
## What changes were proposed in this pull request?

It's weird that expressions don't always have all the expressions in it. This PR marks `QueryPlan.expressions` final to forbid sub classes overriding it to exclude some expressions. Currently only `Generate` override it, we can use `producedAttributes` to fix the unresolved attribute problem for it.

Note that this PR doesn't fix the problem in #11497

## How was this patch tested?

existing tests.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #11532 from cloud-fan/generate.
2016-03-07 10:32:34 -08:00
Dilip Biswal d7eac9d795 [SPARK-13651] Generator outputs are not resolved correctly resulting in run time error
## What changes were proposed in this pull request?

```
Seq(("id1", "value1")).toDF("key", "value").registerTempTable("src")
sqlContext.sql("SELECT t1.* FROM src LATERAL VIEW explode(map('key1', 100, 'key2', 200)) t1 AS key, value")
```
Results in following logical plan

```
Project [key#2,value#3]
+- Generate explode(HiveGenericUDF#org.apache.hadoop.hive.ql.udf.generic.GenericUDFMap(key1,100,key2,200)), true, false, Some(genoutput), [key#2,value#3]
   +- SubqueryAlias src
      +- Project [_1#0 AS key#2,_2#1 AS value#3]
         +- LocalRelation [_1#0,_2#1], [[id1,value1]]
```

The above query fails with following runtime error.
```
java.lang.ClassCastException: java.lang.Integer cannot be cast to org.apache.spark.unsafe.types.UTF8String
	at org.apache.spark.sql.catalyst.expressions.BaseGenericInternalRow$class.getUTF8String(rows.scala:46)
	at org.apache.spark.sql.catalyst.expressions.GenericInternalRow.getUTF8String(rows.scala:221)
	at org.apache.spark.sql.catalyst.expressions.GeneratedClass$SpecificUnsafeProjection.apply(generated.java:42)
	at org.apache.spark.sql.execution.Generate$$anonfun$doExecute$1$$anonfun$apply$9.apply(Generate.scala:98)
	at org.apache.spark.sql.execution.Generate$$anonfun$doExecute$1$$anonfun$apply$9.apply(Generate.scala:96)
	at scala.collection.Iterator$$anon$11.next(Iterator.scala:370)
	at scala.collection.Iterator$$anon$11.next(Iterator.scala:370)
	at scala.collection.Iterator$class.foreach(Iterator.scala:742)
	at scala.collection.AbstractIterator.foreach(Iterator.scala:1194)
        <stack-trace omitted.....>
```
In this case the generated outputs are wrongly resolved from its child (LocalRelation) due to
https://github.com/apache/spark/blob/master/sql/catalyst/src/main/scala/org/apache/spark/sql/catalyst/analysis/Analyzer.scala#L537-L548
## How was this patch tested?

(Please explain how this patch was tested. E.g. unit tests, integration tests, manual tests)

Added unit tests in hive/SQLQuerySuite and AnalysisSuite

Author: Dilip Biswal <dbiswal@us.ibm.com>

Closes #11497 from dilipbiswal/spark-13651.
2016-03-07 09:46:28 -08:00
Andrew Or bc7a3ec290 [SPARK-13685][SQL] Rename catalog.Catalog to ExternalCatalog
## What changes were proposed in this pull request?

Today we have `analysis.Catalog` and `catalog.Catalog`. In the future the former will call the latter. When that happens, if both of them are still called `Catalog` it will be very confusing. This patch renames the latter `ExternalCatalog` because it is expected to talk to external systems.

## How was this patch tested?

Jenkins.

Author: Andrew Or <andrew@databricks.com>

Closes #11526 from andrewor14/rename-catalog.
2016-03-07 00:14:40 -08:00
Cheng Lian 8ff88094da Revert "[SPARK-13616][SQL] Let SQLBuilder convert logical plan without a project on top of it"
This reverts commit f87ce0504e.

According to discussion in #11466, let's revert PR #11466 for safe.

Author: Cheng Lian <lian@databricks.com>

Closes #11539 from liancheng/revert-pr-11466.
2016-03-06 12:54:04 +08:00
gatorsmile adce5ee721 [SPARK-12720][SQL] SQL Generation Support for Cube, Rollup, and Grouping Sets
#### What changes were proposed in this pull request?

This PR is for supporting SQL generation for cube, rollup and grouping sets.

For example, a query using rollup:
```SQL
SELECT count(*) as cnt, key % 5, grouping_id() FROM t1 GROUP BY key % 5 WITH ROLLUP
```
Original logical plan:
```
  Aggregate [(key#17L % cast(5 as bigint))#47L,grouping__id#46],
            [(count(1),mode=Complete,isDistinct=false) AS cnt#43L,
             (key#17L % cast(5 as bigint))#47L AS _c1#45L,
             grouping__id#46 AS _c2#44]
  +- Expand [List(key#17L, value#18, (key#17L % cast(5 as bigint))#47L, 0),
             List(key#17L, value#18, null, 1)],
            [key#17L,value#18,(key#17L % cast(5 as bigint))#47L,grouping__id#46]
     +- Project [key#17L,
                 value#18,
                 (key#17L % cast(5 as bigint)) AS (key#17L % cast(5 as bigint))#47L]
        +- Subquery t1
           +- Relation[key#17L,value#18] ParquetRelation
```
Converted SQL:
```SQL
  SELECT count( 1) AS `cnt`,
         (`t1`.`key` % CAST(5 AS BIGINT)),
         grouping_id() AS `_c2`
  FROM `default`.`t1`
  GROUP BY (`t1`.`key` % CAST(5 AS BIGINT))
  GROUPING SETS (((`t1`.`key` % CAST(5 AS BIGINT))), ())
```

#### How was the this patch tested?

Added eight test cases in `LogicalPlanToSQLSuite`.

Author: gatorsmile <gatorsmile@gmail.com>
Author: xiaoli <lixiao1983@gmail.com>
Author: Xiao Li <xiaoli@Xiaos-MacBook-Pro.local>

Closes #11283 from gatorsmile/groupingSetsToSQL.
2016-03-05 19:25:03 +08:00
Nong Li a6e2bd31f5 [SPARK-13255] [SQL] Update vectorized reader to directly return ColumnarBatch instead of InternalRows.
## What changes were proposed in this pull request?

(Please fill in changes proposed in this fix)

Currently, the parquet reader returns rows one by one which is bad for performance. This patch
updates the reader to directly return ColumnarBatches. This is only enabled with whole stage
codegen, which is the only operator currently that is able to consume ColumnarBatches (instead
of rows). The current implementation is a bit of a hack to get this to work and we should do
more refactoring of these low level interfaces to make this work better.

## How was this patch tested?

```
Results:
TPCDS:                             Best/Avg Time(ms)    Rate(M/s)   Per Row(ns)
---------------------------------------------------------------------------------
q55 (before)                             8897 / 9265         12.9          77.2
q55                                      5486 / 5753         21.0          47.6
```

Author: Nong Li <nong@databricks.com>

Closes #11435 from nongli/spark-13255.
2016-03-04 15:15:48 -08:00
Andrew Or b7d4147421 [SPARK-13633][SQL] Move things into catalyst.parser package
## What changes were proposed in this pull request?

This patch simply moves things to existing package `o.a.s.sql.catalyst.parser` in an effort to reduce the size of the diff in #11048. This is conceptually the same as a recently merged patch #11482.

## How was this patch tested?

Jenkins.

Author: Andrew Or <andrew@databricks.com>

Closes #11506 from andrewor14/parser-package.
2016-03-04 10:32:00 -08:00
Rajesh Balamohan 204b02b56a [SPARK-12925] Improve HiveInspectors.unwrap for StringObjectInspector.…
Earlier fix did not copy the bytes and it is possible for higher level to reuse Text object. This was causing issues. Proposed fix now copies the bytes from Text. This still avoids the expensive encoding/decoding

Author: Rajesh Balamohan <rbalamohan@apache.org>

Closes #11477 from rajeshbalamohan/SPARK-12925.2.
2016-03-04 10:59:40 +00:00
Davies Liu dd83c209f1 [SPARK-13603][SQL] support SQL generation for subquery
## What changes were proposed in this pull request?

This is support SQL generation for subquery expressions, which will be replaced to a SubqueryHolder inside SQLBuilder recursively.

## How was this patch tested?

Added unit tests.

Author: Davies Liu <davies@databricks.com>

Closes #11453 from davies/sql_subquery.
2016-03-04 16:18:15 +08:00
thomastechs f6ac7c30d4 [SPARK-12941][SQL][MASTER] Spark-SQL JDBC Oracle dialect fails to map string datatypes to Oracle VARCHAR datatype mapping
## What changes were proposed in this pull request?
A test suite added for the bug fix -SPARK 12941; for the mapping of the StringType to corresponding in Oracle

## How was this patch tested?
manual tests done
(Please explain how this patch was tested. E.g. unit tests, integration tests, manual tests)

(If this patch involves UI changes, please attach a screenshot; otherwise, remove this)

Author: thomastechs <thomas.sebastian@tcs.com>
Author: THOMAS SEBASTIAN <thomas.sebastian@tcs.com>

Closes #11489 from thomastechs/thomastechs-12941-master-new.
2016-03-03 20:35:40 -08:00
Davies Liu d062587dd2 [SPARK-13601] [TESTS] use 1 partition in tests to avoid race conditions
## What changes were proposed in this pull request?

Fix race conditions when cleanup files.

## How was this patch tested?

Existing tests.

Author: Davies Liu <davies@databricks.com>

Closes #11507 from davies/flaky.
2016-03-03 17:46:28 -08:00
Davies Liu b373a88862 [SPARK-13415][SQL] Visualize subquery in SQL web UI
## What changes were proposed in this pull request?

This PR support visualization for subquery in SQL web UI, also improve the explain of subquery, especially when it's used together with whole stage codegen.

For example:
```python
>>> sqlContext.range(100).registerTempTable("range")
>>> sqlContext.sql("select id / (select sum(id) from range) from range where id > (select id from range limit 1)").explain(True)
== Parsed Logical Plan ==
'Project [unresolvedalias(('id / subquery#9), None)]
:  +- 'SubqueryAlias subquery#9
:     +- 'Project [unresolvedalias('sum('id), None)]
:        +- 'UnresolvedRelation `range`, None
+- 'Filter ('id > subquery#8)
   :  +- 'SubqueryAlias subquery#8
   :     +- 'GlobalLimit 1
   :        +- 'LocalLimit 1
   :           +- 'Project [unresolvedalias('id, None)]
   :              +- 'UnresolvedRelation `range`, None
   +- 'UnresolvedRelation `range`, None

== Analyzed Logical Plan ==
(id / scalarsubquery()): double
Project [(cast(id#0L as double) / cast(subquery#9 as double)) AS (id / scalarsubquery())#11]
:  +- SubqueryAlias subquery#9
:     +- Aggregate [(sum(id#0L),mode=Complete,isDistinct=false) AS sum(id)#10L]
:        +- SubqueryAlias range
:           +- Range 0, 100, 1, 4, [id#0L]
+- Filter (id#0L > subquery#8)
   :  +- SubqueryAlias subquery#8
   :     +- GlobalLimit 1
   :        +- LocalLimit 1
   :           +- Project [id#0L]
   :              +- SubqueryAlias range
   :                 +- Range 0, 100, 1, 4, [id#0L]
   +- SubqueryAlias range
      +- Range 0, 100, 1, 4, [id#0L]

== Optimized Logical Plan ==
Project [(cast(id#0L as double) / cast(subquery#9 as double)) AS (id / scalarsubquery())#11]
:  +- SubqueryAlias subquery#9
:     +- Aggregate [(sum(id#0L),mode=Complete,isDistinct=false) AS sum(id)#10L]
:        +- Range 0, 100, 1, 4, [id#0L]
+- Filter (id#0L > subquery#8)
   :  +- SubqueryAlias subquery#8
   :     +- GlobalLimit 1
   :        +- LocalLimit 1
   :           +- Project [id#0L]
   :              +- Range 0, 100, 1, 4, [id#0L]
   +- Range 0, 100, 1, 4, [id#0L]

== Physical Plan ==
WholeStageCodegen
:  +- Project [(cast(id#0L as double) / cast(subquery#9 as double)) AS (id / scalarsubquery())#11]
:     :  +- Subquery subquery#9
:     :     +- WholeStageCodegen
:     :        :  +- TungstenAggregate(key=[], functions=[(sum(id#0L),mode=Final,isDistinct=false)], output=[sum(id)#10L])
:     :        :     +- INPUT
:     :        +- Exchange SinglePartition, None
:     :           +- WholeStageCodegen
:     :              :  +- TungstenAggregate(key=[], functions=[(sum(id#0L),mode=Partial,isDistinct=false)], output=[sum#14L])
:     :              :     +- Range 0, 1, 4, 100, [id#0L]
:     +- Filter (id#0L > subquery#8)
:        :  +- Subquery subquery#8
:        :     +- CollectLimit 1
:        :        +- WholeStageCodegen
:        :           :  +- Project [id#0L]
:        :           :     +- Range 0, 1, 4, 100, [id#0L]
:        +- Range 0, 1, 4, 100, [id#0L]
```

The web UI looks like:

![subquery](https://cloud.githubusercontent.com/assets/40902/13377963/932bcbae-dda7-11e5-82f7-03c9be85d77c.png)

This PR also change the tree structure of WholeStageCodegen to make it consistent than others. Before this change, Both WholeStageCodegen and InputAdapter hold a references to the same plans, those could be updated without notify another, causing problems, this is discovered by #11403 .

## How was this patch tested?

Existing tests, also manual tests with the example query, check the explain and web UI.

Author: Davies Liu <davies@databricks.com>

Closes #11417 from davies/viz_subquery.
2016-03-03 17:36:48 -08:00
Shixiong Zhu ad0de99f3d [SPARK-13584][SQL][TESTS] Make ContinuousQueryManagerSuite not output logs to the console
## What changes were proposed in this pull request?

Make ContinuousQueryManagerSuite not output logs to the console. The logs will still output to `unit-tests.log`.

I also updated `SQLListenerMemoryLeakSuite` to use `quietly` to avoid changing the log level which won't output logs to `unit-tests.log`.

## How was this patch tested?

Just check Jenkins output.

Author: Shixiong Zhu <shixiong@databricks.com>

Closes #11439 from zsxwing/quietly-ContinuousQueryManagerSuite.
2016-03-03 15:41:56 -08:00
Andrew Or 3edcc40223 [SPARK-13632][SQL] Move commands.scala to command package
## What changes were proposed in this pull request?

This patch simply moves things to a new package in an effort to reduce the size of the diff in #11048. Currently the new package only has one file, but in the future we'll add many new commands in SPARK-13139.

## How was this patch tested?

Jenkins.

Author: Andrew Or <andrew@databricks.com>

Closes #11482 from andrewor14/commands-package.
2016-03-03 15:24:38 -08:00
Dongjoon Hyun 941b270b70 [MINOR] Fix typos in comments and testcase name of code
## What changes were proposed in this pull request?

This PR fixes typos in comments and testcase name of code.

## How was this patch tested?

manual.

Author: Dongjoon Hyun <dongjoon@apache.org>

Closes #11481 from dongjoon-hyun/minor_fix_typos_in_code.
2016-03-03 22:42:12 +00:00
hyukjinkwon cf95d728c6 [SPARK-13543][SQL] Support for specifying compression codec for Parquet/ORC via option()
## What changes were proposed in this pull request?

This PR adds the support to specify compression codecs for both ORC and Parquet.

## How was this patch tested?

unittests within IDE and code style tests with `dev/run_tests`.

Author: hyukjinkwon <gurwls223@gmail.com>

Closes #11464 from HyukjinKwon/SPARK-13543.
2016-03-03 10:30:55 -08:00
Sean Owen 645c3a85e2 [SPARK-13423][HOTFIX] Static analysis fixes for 2.x / fixed for Scala 2.10
## What changes were proposed in this pull request?

Fixes compile problem due to inadvertent use of `Option.contains`, only in Scala 2.11. The change should have been to replace `Option.exists(_ == x)` with `== Some(x)`. Replacing exists with contains only makes sense for collections. Replacing use of `Option.exists` still makes sense though as it's misleading.

## How was this patch tested?

Jenkins tests / compilation

(If this patch involves UI changes, please attach a screenshot; otherwise, remove this)

Author: Sean Owen <sowen@cloudera.com>

Closes #11493 from srowen/SPARK-13423.2.
2016-03-03 15:11:02 +00:00
Dongjoon Hyun b5f02d6743 [SPARK-13583][CORE][STREAMING] Remove unused imports and add checkstyle rule
## What changes were proposed in this pull request?

After SPARK-6990, `dev/lint-java` keeps Java code healthy and helps PR review by saving much time.
This issue aims remove unused imports from Java/Scala code and add `UnusedImports` checkstyle rule to help developers.

## How was this patch tested?
```
./dev/lint-java
./build/sbt compile
```

Author: Dongjoon Hyun <dongjoon@apache.org>

Closes #11438 from dongjoon-hyun/SPARK-13583.
2016-03-03 10:12:32 +00:00
Sean Owen e97fc7f176 [SPARK-13423][WIP][CORE][SQL][STREAMING] Static analysis fixes for 2.x
## What changes were proposed in this pull request?

Make some cross-cutting code improvements according to static analysis. These are individually up for discussion since they exist in separate commits that can be reverted. The changes are broadly:

- Inner class should be static
- Mismatched hashCode/equals
- Overflow in compareTo
- Unchecked warnings
- Misuse of assert, vs junit.assert
- get(a) + getOrElse(b) -> getOrElse(a,b)
- Array/String .size -> .length (occasionally, -> .isEmpty / .nonEmpty) to avoid implicit conversions
- Dead code
- tailrec
- exists(_ == ) -> contains find + nonEmpty -> exists filter + size -> count
- reduce(_+_) -> sum map + flatten -> map

The most controversial may be .size -> .length simply because of its size. It is intended to avoid implicits that might be expensive in some places.

## How was the this patch tested?

Existing Jenkins unit tests.

Author: Sean Owen <sowen@cloudera.com>

Closes #11292 from srowen/SPARK-13423.
2016-03-03 09:54:09 +00:00
Dongjoon Hyun 02b7677e95 [HOT-FIX] Recover some deprecations for 2.10 compatibility.
## What changes were proposed in this pull request?

#11479 [SPARK-13627] broke 2.10 compatibility: [2.10-Build](https://amplab.cs.berkeley.edu/jenkins/view/Spark%20QA%20Compile/job/spark-master-compile-maven-scala-2.10/292/console)
At this moment, we need to support both 2.10 and 2.11.
This PR recovers some deprecated methods which were replace by [SPARK-13627].

## How was this patch tested?

Jenkins build: Both 2.10, 2.11.

Author: Dongjoon Hyun <dongjoon@apache.org>

Closes #11488 from dongjoon-hyun/hotfix_compatibility_with_2.10.
2016-03-03 09:53:02 +00:00
Liang-Chi Hsieh 7b25dc7b7e [SPARK-13466] [SQL] Remove projects that become redundant after column pruning rule
JIRA: https://issues.apache.org/jira/browse/SPARK-13466

## What changes were proposed in this pull request?

With column pruning rule in optimizer, some Project operators will become redundant. We should remove these redundant Projects.

For an example query:

    val input = LocalRelation('key.int, 'value.string)

    val query =
      Project(Seq($"x.key", $"y.key"),
        Join(
          SubqueryAlias("x", input),
          BroadcastHint(SubqueryAlias("y", input)), Inner, None))

After the first run of column pruning, it would like:

    Project(Seq($"x.key", $"y.key"),
      Join(
        Project(Seq($"x.key"), SubqueryAlias("x", input)),
        Project(Seq($"y.key"),      <-- inserted by the rule
        BroadcastHint(SubqueryAlias("y", input))),
        Inner, None))

Actually we don't need the outside Project now. This patch will remove it:

    Join(
      Project(Seq($"x.key"), SubqueryAlias("x", input)),
      Project(Seq($"y.key"),
      BroadcastHint(SubqueryAlias("y", input))),
      Inner, None)

## How was the this patch tested?

Unit test is added into ColumnPruningSuite.

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

Closes #11341 from viirya/remove-redundant-project.
2016-03-03 00:06:46 -08:00
Liang-Chi Hsieh 1085bd862a [SPARK-13635] [SQL] Enable LimitPushdown optimizer rule because we have whole-stage codegen for Limit
JIRA: https://issues.apache.org/jira/browse/SPARK-13635

## What changes were proposed in this pull request?

LimitPushdown optimizer rule has been disabled due to no whole-stage codegen for Limit. As we have whole-stage codegen for Limit now, we should enable it.

## How was this patch tested?

As we only re-enable LimitPushdown optimizer rule, no need to add new tests for it.

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

Closes #11483 from viirya/enable-limitpushdown.
2016-03-02 23:46:23 -08:00
Liang-Chi Hsieh f87ce0504e [SPARK-13616][SQL] Let SQLBuilder convert logical plan without a project on top of it
JIRA: https://issues.apache.org/jira/browse/SPARK-13616

## What changes were proposed in this pull request?

It is possibly that a logical plan has been removed `Project` from the top of it. Or the plan doesn't has a top `Project` from the beginning because it is not necessary. Currently the `SQLBuilder` can't convert such plans back to SQL. This change is to add this feature.

## How was this patch tested?

A test is added to `LogicalPlanToSQLSuite`.

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

Closes #11466 from viirya/sqlbuilder-notopselect.
2016-03-02 22:21:49 -08:00
Dongjoon Hyun 9c274ac4a6 [SPARK-13627][SQL][YARN] Fix simple deprecation warnings.
## What changes were proposed in this pull request?

This PR aims to fix the following deprecation warnings.
  * MethodSymbolApi.paramss--> paramLists
  * AnnotationApi.tpe -> tree.tpe
  * BufferLike.readOnly -> toList.
  * StandardNames.nme -> termNames
  * scala.tools.nsc.interpreter.AbstractFileClassLoader -> scala.reflect.internal.util.AbstractFileClassLoader
  * TypeApi.declarations-> decls

## How was this patch tested?

Check the compile build log and pass the tests.
```
./build/sbt
```

Author: Dongjoon Hyun <dongjoon@apache.org>

Closes #11479 from dongjoon-hyun/SPARK-13627.
2016-03-02 20:34:22 -08:00
Wenchen Fan b60b813799 [SPARK-13617][SQL] remove unnecessary GroupingAnalytics trait
## What changes were proposed in this pull request?

The `trait GroupingAnalytics` only has one implementation, it's an unnecessary abstraction. This PR removes it, and does some code simplification when resolving `GroupingSet`.

## How was this patch tested?

existing tests

Author: Wenchen Fan <wenchen@databricks.com>

Closes #11469 from cloud-fan/groupingset.
2016-03-02 20:18:57 -08:00
Takeshi YAMAMURO 6250cf1e00 [SPARK-13528][SQL] Make the short names of compression codecs consistent in ParquetRelation
## What changes were proposed in this pull request?
This pr to make the short names of compression codecs in `ParquetRelation` consistent against other ones. This pr comes from #11324.

## How was this patch tested?
Add more tests in `TextSuite`.

Author: Takeshi YAMAMURO <linguin.m.s@gmail.com>

Closes #11408 from maropu/SPARK-13528.
2016-03-02 15:30:41 -08:00
Nong Li e2780ce825 [SPARK-13574] [SQL] Add benchmark to measure string dictionary decode.
## What changes were proposed in this pull request?

Also updated the other benchmarks when the default to use vectorized decode was flipped.

Author: Nong Li <nong@databricks.com>

Closes #11454 from nongli/benchmark.
2016-03-02 15:03:19 -08:00
Davies Liu b5a59a0fe2 [SPARK-13601] call failure callbacks before writer.close()
## What changes were proposed in this pull request?

In order to tell OutputStream that the task has failed or not, we should call the failure callbacks BEFORE calling writer.close().

## How was this patch tested?

Added new unit tests.

Author: Davies Liu <davies@databricks.com>

Closes #11450 from davies/callback.
2016-03-02 14:35:44 -08:00
gatorsmile 9e01fe2ed1 [SPARK-13535][SQL] Fix Analysis Exceptions when Using Backticks in Transform Clause
#### What changes were proposed in this pull request?
```SQL
FROM
(FROM test SELECT TRANSFORM(key, value) USING 'cat' AS (`thing1` int, thing2 string)) t
SELECT thing1 + 1
```
This query returns an analysis error, like:
```
Failed to analyze query: org.apache.spark.sql.AnalysisException: cannot resolve '`thing1`' given input columns: [`thing1`, thing2]; line 3 pos 7
'Project [unresolvedalias(('thing1 + 1), None)]
+- SubqueryAlias t
   +- ScriptTransformation [key#2,value#3], cat, [`thing1`#6,thing2#7], HiveScriptIOSchema(List(),List(),Some(org.apache.hadoop.hive.serde2.lazy.LazySimpleSerDe),Some(org.apache.hadoop.hive.serde2.lazy.LazySimpleSerDe),List((field.delim,	)),List((field.delim,	)),Some(org.apache.hadoop.hive.ql.exec.TextRecordReader),Some(org.apache.hadoop.hive.ql.exec.TextRecordWriter),false)
      +- SubqueryAlias test
         +- Project [_1#0 AS key#2,_2#1 AS value#3]
            +- LocalRelation [_1#0,_2#1], [[1,1],[2,2],[3,3],[4,4],[5,5]]
```

The backpacks of \`thing1\` should be cleaned before entering Parser/Analyzer. This PR fixes this issue.

#### How was this patch tested?

Added a test case and modified an existing test case

Author: gatorsmile <gatorsmile@gmail.com>

Closes #11415 from gatorsmile/scriptTransform.
2016-03-02 23:07:48 +01:00
gatorsmile 8f8d8a2315 [SPARK-13609] [SQL] Support Column Pruning for MapPartitions
#### What changes were proposed in this pull request?

This PR is to prune unnecessary columns when the operator is  `MapPartitions`. The solution is to add an extra `Project` in the child node.

For the other two operators `AppendColumns` and `MapGroups`, it sounds doable. More discussions are required. The major reason is the current implementation of the `inputPlan` of `groupBy` is based on the child of `AppendColumns`. It might be a bug? Thus, will submit a separate PR.

#### How was this patch tested?

Added a test case in ColumnPruningSuite to verify the rule. Added another test case in DatasetSuite.scala to verify the data.

Author: gatorsmile <gatorsmile@gmail.com>

Closes #11460 from gatorsmile/datasetPruningNew.
2016-03-02 09:59:22 -08:00
lgieron d8afd45f89 [SPARK-13515] Make FormatNumber work irrespective of locale.
## What changes were proposed in this pull request?

Change in class FormatNumber to make it work irrespective of locale.

## How was this patch tested?

Unit tests.

Author: lgieron <lgieron@gmail.com>

Closes #11396 from lgieron/SPARK-13515_Fix_Format_Number.
2016-03-02 15:57:27 +00:00
sureshthalamati e42724b12b [SPARK-13167][SQL] Include rows with null values for partition column when reading from JDBC datasources.
Rows with null values in partition column are not included in the results because none of the partition
where clause specify is null predicate on the partition column. This fix adds is null predicate on the partition column  to the first JDBC partition where clause.

Example:
JDBCPartition(THEID < 1 or THEID is null, 0),JDBCPartition(THEID >= 1 AND THEID < 2,1),
JDBCPartition(THEID >= 2, 2)

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

Closes #11063 from sureshthalamati/nullable_jdbc_part_col_spark-13167.
2016-03-01 17:34:21 -08:00
Davies Liu a640c5b4fb [SPARK-13598] [SQL] remove LeftSemiJoinBNL
## What changes were proposed in this pull request?

Broadcast left semi join without joining keys is already supported in BroadcastNestedLoopJoin, it has the same implementation as LeftSemiJoinBNL, we should remove that.

## How was this patch tested?

Updated unit tests.

Author: Davies Liu <davies@databricks.com>

Closes #11448 from davies/remove_bnl.
2016-03-01 17:27:57 -08:00
Davies Liu c27ba0d547 [SPARK-13582] [SQL] defer dictionary decoding in parquet reader
## What changes were proposed in this pull request?

This PR defer the resolution from a id of dictionary to value until the column is actually accessed (inside getInt/getLong), this is very useful for those columns and rows that are filtered out. It's also useful for binary type, we will not need to copy all the byte arrays.

This PR also change the underlying type for small decimal that could be fit within a Int, in order to use getInt() to lookup the value from IntDictionary.

## How was this patch tested?

Manually test TPCDS Q7 with scale factor 10, saw about 30% improvements (after PR #11274).

Author: Davies Liu <davies@databricks.com>

Closes #11437 from davies/decode_dict.
2016-03-01 13:07:04 -08:00
Liang-Chi Hsieh c43899a04e [SPARK-13511] [SQL] Add wholestage codegen for limit
JIRA: https://issues.apache.org/jira/browse/SPARK-13511

## What changes were proposed in this pull request?

Current limit operator doesn't support wholestage codegen. This is open to add support for it.

In the `doConsume` of `GlobalLimit` and `LocalLimit`, we use a count term to count the processed rows. Once the row numbers catches the limit number, we set the variable `stopEarly` of `BufferedRowIterator` newly added in this pr to `true` that indicates we want to stop processing remaining rows. Then when the wholestage codegen framework checks `shouldStop()`, it will stop the processing of the row iterator.

Before this, the executed plan for a query `sqlContext.range(N).limit(100).groupBy().sum()` is:

    TungstenAggregate(key=[], functions=[(sum(id#5L),mode=Final,isDistinct=false)], output=[sum(id)#6L])
    +- TungstenAggregate(key=[], functions=[(sum(id#5L),mode=Partial,isDistinct=false)], output=[sum#9L])
       +- GlobalLimit 100
          +- Exchange SinglePartition, None
             +- LocalLimit 100
                +- Range 0, 1, 1, 524288000, [id#5L]

After add wholestage codegen support:

    WholeStageCodegen
    :  +- TungstenAggregate(key=[], functions=[(sum(id#40L),mode=Final,isDistinct=false)], output=[sum(id)#41L])
    :     +- TungstenAggregate(key=[], functions=[(sum(id#40L),mode=Partial,isDistinct=false)], output=[sum#44L])
    :        +- GlobalLimit 100
    :           +- INPUT
    +- Exchange SinglePartition, None
       +- WholeStageCodegen
          :  +- LocalLimit 100
          :     +- Range 0, 1, 1, 524288000, [id#40L]

## How was this patch tested?

A test is added into BenchmarkWholeStageCodegen.

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

Closes #11391 from viirya/wholestage-limit.
2016-03-01 08:43:02 -08:00
Sameer Agarwal 4bd697da03 [SPARK-13123][SQL] Implement whole state codegen for sort
## What changes were proposed in this pull request?
This PR adds support for implementing whole state codegen for sort. Builds heaving on nongli 's PR: https://github.com/apache/spark/pull/11008 (which actually implements the feature), and adds the following changes on top:

- [x]  Generated code updates peak execution memory metrics
- [x]  Unit tests in `WholeStageCodegenSuite` and `SQLMetricsSuite`

## How was this patch tested?

New unit tests in `WholeStageCodegenSuite` and `SQLMetricsSuite`. Further, all existing sort tests should pass.

Author: Sameer Agarwal <sameer@databricks.com>
Author: Nong Li <nong@databricks.com>

Closes #11359 from sameeragarwal/sort-codegen.
2016-02-29 12:59:46 -08:00
gatorsmile bc65f60ef7 [SPARK-13544][SQL] Rewrite/Propagate Constraints for Aliases in Aggregate
#### What changes were proposed in this pull request?

After analysis by Analyzer, two operators could have alias. They are `Project` and `Aggregate`. So far, we only rewrite and propagate constraints if `Alias` is defined in `Project`. This PR is to resolve this issue in `Aggregate`.

#### How was this patch tested?

Added a test case for `Aggregate` in `ConstraintPropagationSuite`.

marmbrus sameeragarwal

Author: gatorsmile <gatorsmile@gmail.com>

Closes #11422 from gatorsmile/validConstraintsInUnaryNodes.
2016-02-29 10:10:04 -08:00
hyukjinkwon 02aa499dfb [SPARK-13509][SPARK-13507][SQL] Support for writing CSV with a single function call
https://issues.apache.org/jira/browse/SPARK-13507
https://issues.apache.org/jira/browse/SPARK-13509

## What changes were proposed in this pull request?
This PR adds the support to write CSV data directly by a single call to the given path.

Several unitests were added for each functionality.
## How was this patch tested?

This was tested with unittests and with `dev/run_tests` for coding style

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

Closes #11389 from HyukjinKwon/SPARK-13507-13509.
2016-02-29 09:44:29 -08:00
Cheng Lian 916fc34f98 [SPARK-13540][SQL] Supports using nested classes within Scala objects as Dataset element type
## What changes were proposed in this pull request?

Nested classes defined within Scala objects are translated into Java static nested classes. Unlike inner classes, they don't need outer scopes. But the analyzer still thinks that an outer scope is required.

This PR fixes this issue simply by checking whether a nested class is static before looking up its outer scope.

## How was this patch tested?

A test case is added to `DatasetSuite`. It checks contents of a Dataset whose element type is a nested class declared in a Scala object.

Author: Cheng Lian <lian@databricks.com>

Closes #11421 from liancheng/spark-13540-object-as-outer-scope.
2016-03-01 01:07:45 +08:00
Rahul Tanwani dd3b5455c6 [SPARK-13309][SQL] Fix type inference issue with CSV data
Fix type inference issue for sparse CSV data - https://issues.apache.org/jira/browse/SPARK-13309

Author: Rahul Tanwani <rahul@Rahuls-MacBook-Pro.local>

Closes #11194 from tanwanirahul/master.
2016-02-28 23:16:34 -08:00
Liang-Chi Hsieh 6dfc4a764c [SPARK-13537][SQL] Fix readBytes in VectorizedPlainValuesReader
JIRA: https://issues.apache.org/jira/browse/SPARK-13537

## What changes were proposed in this pull request?

In readBytes of VectorizedPlainValuesReader, we use buffer[offset] to access bytes in buffer. It is incorrect because offset is added with Platform.BYTE_ARRAY_OFFSET when initialization. We should fix it.

## How was this patch tested?

`ParquetHadoopFsRelationSuite` sometimes (depending on the randomly generated data) will be [failed](https://amplab.cs.berkeley.edu/jenkins/job/SparkPullRequestBuilder/52136/consoleFull) by this bug. After applying this, the test can be passed.

I added a test to `ParquetHadoopFsRelationSuite` with the data which will fail without this patch.

The error exception:

    [info] ParquetHadoopFsRelationSuite:
    [info] - test all data types - StringType (440 milliseconds)
    [info] - test all data types - BinaryType (434 milliseconds)
    [info] - test all data types - BooleanType (406 milliseconds)
    20:59:38.618 ERROR org.apache.spark.executor.Executor: Exception in task 0.0 in stage 2597.0 (TID 67966)
    java.lang.ArrayIndexOutOfBoundsException: 46
	at org.apache.spark.sql.execution.datasources.parquet.VectorizedPlainValuesReader.readBytes(VectorizedPlainValuesReader.java:88)

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

Closes #11418 from viirya/fix-readbytes.
2016-02-28 21:16:06 -08:00
Andrew Or cca79fad66 [SPARK-13526][SQL] Move SQLContext per-session states to new class
## What changes were proposed in this pull request?

This creates a `SessionState`, which groups a few fields that existed in `SQLContext`. Because `HiveContext` extends `SQLContext` we also need to make changes there. This is mainly a cleanup task that will soon pave the way for merging the two contexts.

## How was this patch tested?

Existing unit tests; this patch introduces no change in behavior.

Author: Andrew Or <andrew@databricks.com>

Closes #11405 from andrewor14/refactor-session.
2016-02-27 19:51:28 -08:00
Nong Li d780ed8b5c [SPARK-13533][SQL] Fix readBytes in VectorizedPlainValuesReader
## What changes were proposed in this pull request?

Fix readBytes in VectorizedPlainValuesReader. This fixes a copy and paste issue.

## How was this patch tested?

Ran ParquetHadoopFsRelationSuite which failed before this.

Author: Nong Li <nong@databricks.com>

Closes #11414 from nongli/spark-13533.
2016-02-27 19:45:57 -08:00
Liang-Chi Hsieh 3814d0bcf6 [SPARK-13530][SQL] Add ShortType support to UnsafeRowParquetRecordReader
JIRA: https://issues.apache.org/jira/browse/SPARK-13530

## What changes were proposed in this pull request?

By enabling vectorized parquet scanner by default, the unit test `ParquetHadoopFsRelationSuite` based on `HadoopFsRelationTest` will be failed due to the lack of short type support in `UnsafeRowParquetRecordReader`. We should fix it.

The error exception:

    [info] ParquetHadoopFsRelationSuite:
    [info] - test all data types - StringType (499 milliseconds)
    [info] - test all data types - BinaryType (447 milliseconds)
    [info] - test all data types - BooleanType (520 milliseconds)
    [info] - test all data types - ByteType (418 milliseconds)
    00:22:58.920 ERROR org.apache.spark.executor.Executor: Exception in task 0.0 in stage 124.0 (TID 1949)
    org.apache.commons.lang.NotImplementedException: Unimplemented type: ShortType
	at org.apache.spark.sql.execution.datasources.parquet.UnsafeRowParquetRecordReader$ColumnReader.readIntBatch(UnsafeRowParquetRecordReader.java:769)
	at org.apache.spark.sql.execution.datasources.parquet.UnsafeRowParquetRecordReader$ColumnReader.readBatch(UnsafeRowParquetRecordReader.java:640)
	at org.apache.spark.sql.execution.datasources.parquet.UnsafeRowParquetRecordReader$ColumnReader.access$000(UnsafeRowParquetRecordReader.java:461)
	at org.apache.spark.sql.execution.datasources.parquet.UnsafeRowParquetRecordReader.nextBatch(UnsafeRowParquetRecordReader.java:224)
## How was this patch tested?

The unit test `ParquetHadoopFsRelationSuite` based on `HadoopFsRelationTest` will be [failed](https://amplab.cs.berkeley.edu/jenkins/job/SparkPullRequestBuilder/52110/consoleFull) due to the lack of short type support in UnsafeRowParquetRecordReader. By adding this support, the test can be passed.

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

Closes #11412 from viirya/add-shorttype-support.
2016-02-27 11:41:35 -08:00
Nong Li 7a0cb4e587 [SPARK-13518][SQL] Enable vectorized parquet scanner by default
## What changes were proposed in this pull request?

Change the default of the flag to enable this feature now that the implementation is complete.

## How was this patch tested?

The new parquet reader should be a drop in, so will be exercised by the existing tests.

Author: Nong Li <nong@databricks.com>

Closes #11397 from nongli/spark-13518.
2016-02-26 22:36:32 -08:00
Nong Li 0598a2b81d [SPARK-13499] [SQL] Performance improvements for parquet reader.
## What changes were proposed in this pull request?

This patch includes these performance fixes:
  - Remove unnecessary setNotNull() calls. The NULL bits are cleared already.
  - Speed up RLE group decoding
  - Speed up dictionary decoding by decoding NULLs directly into the result.

## How was this patch tested?

(Please explain how this patch was tested. E.g. unit tests, integration tests, manual tests)

In addition to the updated benchmarks, on TPCDS, the result of these changes
running Q55 (sf40) is:

```
TPCDS:                             Best/Avg Time(ms)    Rate(M/s)   Per Row(ns)
---------------------------------------------------------------------------------
q55 (Before)                             6398 / 6616         18.0          55.5
q55 (After)                              4983 / 5189         23.1          43.3
```

Author: Nong Li <nong@databricks.com>

Closes #11375 from nongli/spark-13499.
2016-02-26 12:43:50 -08:00
Davies Liu 6df1e55a65 [SPARK-12313] [SQL] improve performance of BroadcastNestedLoopJoin
## What changes were proposed in this pull request?

Currently, BroadcastNestedLoopJoin is implemented for worst case, it's too slow, very easy to hang forever. This PR will create fast path for some joinType and buildSide, also improve the worst case (will use much less memory than before).

Before this PR, one task requires O(N*K) + O(K) in worst cases, N is number of rows from one partition of streamed table, it could hang the job (because of GC).

In order to workaround this for InnerJoin, we have to disable auto-broadcast, switch to CartesianProduct: This could be workaround for InnerJoin, see https://forums.databricks.com/questions/6747/how-do-i-get-a-cartesian-product-of-a-huge-dataset.html

In this PR, we will have fast path for these joins :

 InnerJoin with BuildLeft or BuildRight
 LeftOuterJoin with BuildRight
 RightOuterJoin with BuildLeft
 LeftSemi with BuildRight

These fast paths are all stream based (take one pass on streamed table), required O(1) memory.

All other join types and build types will take two pass on streamed table, one pass to find the matched rows that includes streamed part, which require O(1) memory, another pass to find the rows from build table that does not have a matched row from streamed table, which required O(K) memory, K is the number rows from build side, one bit per row, should be much smaller than the memory for broadcast. The following join types work in this way:

LeftOuterJoin with BuildLeft
RightOuterJoin with BuildRight
FullOuterJoin with BuildLeft or BuildRight
LeftSemi with BuildLeft

This PR also added tests for all the join types for BroadcastNestedLoopJoin.

After this PR, for InnerJoin with one small table, BroadcastNestedLoopJoin should be faster than CartesianProduct, we don't need that workaround anymore.

## How was the this patch tested?

Added unit tests.

Author: Davies Liu <davies@databricks.com>

Closes #11328 from davies/nested_loop.
2016-02-26 09:58:05 -08:00
Cheng Lian 99dfcedbfd [SPARK-13457][SQL] Removes DataFrame RDD operations
## What changes were proposed in this pull request?

This is another try of PR #11323.

This PR removes DataFrame RDD operations except for `foreach` and `foreachPartitions` (they are actions rather than transformations). Original calls are now replaced by calls to methods of `DataFrame.rdd`.

PR #11323 was reverted because it introduced a regression: both `DataFrame.foreach` and `DataFrame.foreachPartitions` wrap underlying RDD operations with `withNewExecutionId` to track Spark jobs. But they are removed in #11323.

## How was the this patch tested?

No extra tests are added. Existing tests should do the work.

Author: Cheng Lian <lian@databricks.com>

Closes #11388 from liancheng/remove-df-rdd-ops.
2016-02-27 00:28:30 +08:00
hyukjinkwon 9812a24aa8 [SPARK-13503][SQL] Support to specify the (writing) option for compression codec for TEXT
## What changes were proposed in this pull request?

https://issues.apache.org/jira/browse/SPARK-13503
This PR makes the TEXT datasource can compress output by option instead of manually setting Hadoop configurations.
For reflecting codec by names, it is similar with https://github.com/apache/spark/pull/10805 and https://github.com/apache/spark/pull/10858.

## How was this patch tested?

This was tested with unittests and with `dev/run_tests` for coding style

Author: hyukjinkwon <gurwls223@gmail.com>

Closes #11384 from HyukjinKwon/SPARK-13503.
2016-02-25 23:57:29 -08:00
Reynold Xin 26ac60806c [SPARK-13487][SQL] User-facing RuntimeConfig interface
## What changes were proposed in this pull request?
This patch creates the public API for runtime configuration and an implementation for it. The public runtime configuration includes configs for existing SQL, as well as Hadoop Configuration.

This new interface is currently dead code. It will be added to SQLContext and a session entry point to Spark when we add that.

## How was this patch tested?
a new unit test suite

Author: Reynold Xin <rxin@databricks.com>

Closes #11378 from rxin/SPARK-13487.
2016-02-25 23:10:40 -08:00
thomastechs 8afe49141d [SPARK-12941][SQL][MASTER] Spark-SQL JDBC Oracle dialect fails to map string datatypes to Oracle VARCHAR datatype
## What changes were proposed in this pull request?

This Pull request is used for the fix SPARK-12941, creating a data type mapping to Oracle for the corresponding data type"Stringtype" from dataframe. This PR is for the master branch fix, where as another PR is already tested with the branch 1.4

## How was the this patch tested?

(Please explain how this patch was tested. E.g. unit tests, integration tests, manual tests)
This patch was tested using the Oracle docker .Created a new integration suite for the same.The oracle.jdbc jar was to be downloaded from the maven repository.Since there was no jdbc jar available in the maven repository, the jar was downloaded from oracle site manually and installed in the local; thus tested. So, for SparkQA test case run, the ojdbc jar might be manually placed in the local maven repository(com/oracle/ojdbc6/11.2.0.2.0) while Spark QA test run.

Author: thomastechs <thomas.sebastian@tcs.com>

Closes #11306 from thomastechs/master.
2016-02-25 22:52:25 -08:00
Takeshi YAMAMURO 1b39fafa75 [SPARK-13361][SQL] Add benchmark codes for Encoder#compress() in CompressionSchemeBenchmark
This pr added benchmark codes for Encoder#compress().
Also, it replaced the benchmark results with new ones because the output format of `Benchmark` changed.

Author: Takeshi YAMAMURO <linguin.m.s@gmail.com>

Closes #11236 from maropu/CompressionSpike.
2016-02-25 20:17:48 -08:00
Josh Rosen 633d63a48a [SPARK-12757] Add block-level read/write locks to BlockManager
## Motivation

As a pre-requisite to off-heap caching of blocks, we need a mechanism to prevent pages / blocks from being evicted while they are being read. With on-heap objects, evicting a block while it is being read merely leads to memory-accounting problems (because we assume that an evicted block is a candidate for garbage-collection, which will not be true during a read), but with off-heap memory this will lead to either data corruption or segmentation faults.

## Changes

### BlockInfoManager and reader/writer locks

This patch adds block-level read/write locks to the BlockManager. It introduces a new `BlockInfoManager` component, which is contained within the `BlockManager`, holds the `BlockInfo` objects that the `BlockManager` uses for tracking block metadata, and exposes APIs for locking blocks in either shared read or exclusive write modes.

`BlockManager`'s `get*()` and `put*()` methods now implicitly acquire the necessary locks. After a `get()` call successfully retrieves a block, that block is locked in a shared read mode. A `put()` call will block until it acquires an exclusive write lock. If the write succeeds, the write lock will be downgraded to a shared read lock before returning to the caller. This `put()` locking behavior allows us store a block and then immediately turn around and read it without having to worry about it having been evicted between the write and the read, which will allow us to significantly simplify `CacheManager` in the future (see #10748).

See `BlockInfoManagerSuite`'s test cases for a more detailed specification of the locking semantics.

### Auto-release of locks at the end of tasks

Our locking APIs support explicit release of locks (by calling `unlock()`), but it's not always possible to guarantee that locks will be released prior to the end of the task. One reason for this is our iterator interface: since our iterators don't support an explicit `close()` operator to signal that no more records will be consumed, operations like `take()` or `limit()` don't have a good means to release locks on their input iterators' blocks. Another example is broadcast variables, whose block locks can only be released at the end of the task.

To address this, `BlockInfoManager` uses a pair of maps to track the set of locks acquired by each task. Lock acquisitions automatically record the current task attempt id by obtaining it from `TaskContext`. When a task finishes, code in `Executor` calls `BlockInfoManager.unlockAllLocksForTask(taskAttemptId)` to free locks.

### Locking and the MemoryStore

In order to prevent in-memory blocks from being evicted while they are being read, the `MemoryStore`'s `evictBlocksToFreeSpace()` method acquires write locks on blocks which it is considering as candidates for eviction. These lock acquisitions are non-blocking, so a block which is being read will not be evicted. By holding write locks until the eviction is performed or skipped (in case evicting the blocks would not free enough memory), we avoid a race where a new reader starts to read a block after the block has been marked as an eviction candidate but before it has been removed.

### Locking and remote block transfer

This patch makes small changes to to block transfer and network layer code so that locks acquired by the BlockTransferService are released as soon as block transfer messages are consumed and released by Netty. This builds on top of #11193, a bug fix related to freeing of network layer ManagedBuffers.

## FAQ

- **Why not use Java's built-in [`ReadWriteLock`](https://docs.oracle.com/javase/7/docs/api/java/util/concurrent/locks/ReadWriteLock.html)?**

  Our locks operate on a per-task rather than per-thread level. Under certain circumstances a task may consist of multiple threads, so using `ReadWriteLock` would mean that we might call `unlock()` from a thread which didn't hold the lock in question, an operation which has undefined semantics. If we could rely on Java 8 classes, we might be able to use [`StampedLock`](https://docs.oracle.com/javase/8/docs/api/java/util/concurrent/locks/StampedLock.html) to work around this issue.

- **Why not detect "leaked" locks in tests?**:

  See above notes about `take()` and `limit`.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #10705 from JoshRosen/pin-pages.
2016-02-25 17:17:56 -08:00
Davies Liu 751724b132 Revert "[SPARK-13457][SQL] Removes DataFrame RDD operations"
This reverts commit 157fe64f3e.
2016-02-25 11:53:48 -08:00
Cheng Lian 157fe64f3e [SPARK-13457][SQL] Removes DataFrame RDD operations
## What changes were proposed in this pull request?

This PR removes DataFrame RDD operations. Original calls are now replaced by calls to methods of `DataFrame.rdd`.

## How was the this patch tested?

No extra tests are added. Existing tests should do the work.

Author: Cheng Lian <lian@databricks.com>

Closes #11323 from liancheng/remove-df-rdd-ops.
2016-02-25 23:07:59 +08:00
Cheng Lian 3fa6491be6 [SPARK-13473][SQL] Don't push predicate through project with nondeterministic field(s)
## What changes were proposed in this pull request?

Predicates shouldn't be pushed through project with nondeterministic field(s).

See https://github.com/graphframes/graphframes/pull/23 and SPARK-13473 for more details.

This PR targets master, branch-1.6, and branch-1.5.

## How was this patch tested?

A test case is added in `FilterPushdownSuite`. It constructs a query plan where a filter is over a project with a nondeterministic field. Optimized query plan shouldn't change in this case.

Author: Cheng Lian <lian@databricks.com>

Closes #11348 from liancheng/spark-13473-no-ppd-through-nondeterministic-project-field.
2016-02-25 20:43:03 +08:00
Reynold Xin 2b2c8c3323 [SPARK-13486][SQL] Move SQLConf into an internal package
## What changes were proposed in this pull request?
This patch moves SQLConf into org.apache.spark.sql.internal package to make it very explicit that it is internal. Soon I will also submit more API work that creates implementations of interfaces in this internal package.

## How was this patch tested?
If it compiles, then the refactoring should work.

Author: Reynold Xin <rxin@databricks.com>

Closes #11363 from rxin/SPARK-13486.
2016-02-25 17:49:50 +08:00
Davies Liu 07f92ef1fa [SPARK-13376] [SPARK-13476] [SQL] improve column pruning
## What changes were proposed in this pull request?

This PR mostly rewrite the ColumnPruning rule to support most of the SQL logical plans (except those for Dataset).

This PR also fix a bug in Generate, it should always output UnsafeRow, added an regression test for that.

## How was this patch tested?

This is test by unit tests, also manually test with TPCDS Q78, which could prune all unused columns successfully, improved the performance by 78% (from 22s to 12s).

Author: Davies Liu <davies@databricks.com>

Closes #11354 from davies/fix_column_pruning.
2016-02-25 00:13:07 -08:00
Joseph K. Bradley 13ce10e954 [SPARK-13479][SQL][PYTHON] Added Python API for approxQuantile
## What changes were proposed in this pull request?

* Scala DataFrameStatFunctions: Added version of approxQuantile taking a List instead of an Array, for Python compatbility
* Python DataFrame and DataFrameStatFunctions: Added approxQuantile

## How was this patch tested?

* unit test in sql/tests.py

Documentation was copied from the existing approxQuantile exactly.

Author: Joseph K. Bradley <joseph@databricks.com>

Closes #11356 from jkbradley/approx-quantile-python.
2016-02-24 23:15:36 -08:00
Michael Armbrust 2b042577fb [SPARK-13092][SQL] Add ExpressionSet for constraint tracking
This PR adds a new abstraction called an `ExpressionSet` which attempts to canonicalize expressions to remove cosmetic differences.  Deterministic expressions that are in the set after canonicalization will always return the same answer given the same input (i.e. false positives should not be possible). However, it is possible that two canonical expressions that are not equal will in fact return the same answer given any input (i.e. false negatives are possible).

```scala
val set = AttributeSet('a + 1 :: 1 + 'a :: Nil)

set.iterator => Iterator('a + 1)
set.contains('a + 1) => true
set.contains(1 + 'a) => true
set.contains('a + 2) => false
```

Other relevant changes include:
 - Since this concept overlaps with the existing `semanticEquals` and `semanticHash`, those functions are also ported to this new infrastructure.
 - A memoized `canonicalized` version of the expression is added as a `lazy val` to `Expression` and is used by both `semanticEquals` and `ExpressionSet`.
 - A set of unit tests for `ExpressionSet` are added
 - Tests which expect `semanticEquals` to be less intelligent than it now is are updated.

As a followup, we should consider auditing the places where we do `O(n)` `semanticEquals` operations and replace them with `ExpressionSet`.  We should also consider consolidating `AttributeSet` as a specialized factory for an `ExpressionSet.`

Author: Michael Armbrust <michael@databricks.com>

Closes #11338 from marmbrus/expressionSet.
2016-02-24 19:43:00 -08:00
Nong Li 5a7af9e7ac [SPARK-13250] [SQL] Update PhysicallRDD to convert to UnsafeRow if using the vectorized scanner.
Some parts of the engine rely on UnsafeRow which the vectorized parquet scanner does not want
to produce. This add a conversion in Physical RDD. In the case where codegen is used (and the
scan is the start of the pipeline), there is no requirement to use UnsafeRow. This patch adds
update PhysicallRDD to support codegen, which eliminates the need for the UnsafeRow conversion
in all cases.

The result of these changes for TPCDS-Q19 at the 10gb sf reduces the query time from 9.5 seconds
to 6.5 seconds.

Author: Nong Li <nong@databricks.com>

Closes #11141 from nongli/spark-13250.
2016-02-24 17:16:45 -08:00
Yin Huai cbb0b65ad5 [SPARK-13383][SQL] Fix test
## What changes were proposed in this pull request?

Reverting SPARK-13376 (d563c8fa01) affects the test added by SPARK-13383. So, I am fixing the test.

Author: Yin Huai <yhuai@databricks.com>

Closes #11355 from yhuai/SPARK-13383-fix-test.
2016-02-24 16:13:55 -08:00
Yin Huai bc353805bd [SPARK-13475][TESTS][SQL] HiveCompatibilitySuite should still run in PR builder even if a PR only changes sql/core
## What changes were proposed in this pull request?

`HiveCompatibilitySuite` should still run in PR build even if a PR only changes sql/core. So, I am going to remove `ExtendedHiveTest` annotation from `HiveCompatibilitySuite`.

https://issues.apache.org/jira/browse/SPARK-13475

Author: Yin Huai <yhuai@databricks.com>

Closes #11351 from yhuai/SPARK-13475.
2016-02-24 13:34:53 -08:00
gatorsmile 5289837a72 [HOT][TEST] Disable a Test that Requires Nested Union Support.
## What changes were proposed in this pull request?
Since "[SPARK-13321][SQL] Support nested UNION in parser" is reverted, we need to disable the test case that requires this PR. Thanks!

rxin yhuai marmbrus

## How was this patch tested?

N/A

Author: gatorsmile <gatorsmile@gmail.com>

Closes #11352 from gatorsmile/disableTestCase.
2016-02-24 13:30:23 -08:00
Wenchen Fan a60f91284c [SPARK-13467] [PYSPARK] abstract python function to simplify pyspark code
## What changes were proposed in this pull request?

When we pass a Python function to JVM side, we also need to send its context, e.g. `envVars`, `pythonIncludes`, `pythonExec`, etc. However, it's annoying to pass around so many parameters at many places. This PR abstract python function along with its context, to simplify some pyspark code and make the logic more clear.

## How was the this patch tested?

by existing unit tests.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #11342 from cloud-fan/python-clean.
2016-02-24 12:44:54 -08:00
Reynold Xin f92f53faee Revert "[SPARK-13321][SQL] Support nested UNION in parser"
This reverts commit 55d6fdf22d.
2016-02-24 12:25:02 -08:00
Reynold Xin 65805ab6ea Revert "Revert "[SPARK-13383][SQL] Keep broadcast hint after column pruning""
This reverts commit 382b27babf.
2016-02-24 12:03:45 -08:00
Reynold Xin d563c8fa01 Revert "[SPARK-13376] [SQL] improve column pruning"
This reverts commit e9533b419e.
2016-02-24 11:58:32 -08:00
Reynold Xin 382b27babf Revert "[SPARK-13383][SQL] Keep broadcast hint after column pruning"
This reverts commit f373986997.
2016-02-24 11:58:12 -08:00
Liang-Chi Hsieh f373986997 [SPARK-13383][SQL] Keep broadcast hint after column pruning
JIRA: https://issues.apache.org/jira/browse/SPARK-13383

## What changes were proposed in this pull request?

When we do column pruning in Optimizer, we put additional Project on top of a logical plan. However, when we already wrap a BroadcastHint on a logical plan, the added Project will hide BroadcastHint after later execution.

We should take care of BroadcastHint when we do column pruning.

## How was the this patch tested?

Unit test is added.

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

Closes #11260 from viirya/keep-broadcasthint.
2016-02-24 10:22:40 -08:00
Davies Liu 86c852cf2e [SPARK-13431] [SQL] [test-maven] split keywords from ExpressionParser.g
## What changes were proposed in this pull request?

This PR pull all the keywords (and some others) from ExpressionParser.g as KeywordParser.g, because ExpressionParser is too large to compile.

## How was the this patch tested?

unit test, maven build

Closes #11329

Author: Davies Liu <davies@databricks.com>

Closes #11331 from davies/split_expr.
2016-02-23 21:22:00 -08:00
Davies Liu e9533b419e [SPARK-13376] [SQL] improve column pruning
## What changes were proposed in this pull request?

This PR mostly rewrite the ColumnPruning rule to support most of the SQL logical plans (except those for Dataset).

## How was the this patch tested?

This is test by unit tests, also manually test with TPCDS Q78, which could prune all unused columns successfully, improved the performance by 78% (from 22s to 12s).

Author: Davies Liu <davies@databricks.com>

Closes #11256 from davies/fix_column_pruning.
2016-02-23 18:19:22 -08:00
Timothy Hunter 15e3015563 [SPARK-6761][SQL][ML] Fixes to API and documentation of approximate quantiles
## What changes were proposed in this pull request?

This continues  thunterdb 's work on `approxQuantile` API. It changes the signature of `approxQuantile` from `(col: String, quantile: Double, epsilon: Double): Double`  to `(col: String, probabilities: Array[Double], relativeError: Double): Array[Double]` and update API doc. It also improves the error message in tests and simplifies the merge algorithm for summaries.

## How was the this patch tested?

Use the same unit tests as before.

Closes #11325

Author: Timothy Hunter <timhunter@databricks.com>
Author: Xiangrui Meng <meng@databricks.com>

Closes #11332 from mengxr/SPARK-6761.
2016-02-23 15:31:17 -08:00
Davies Liu 9cdd867da9 [SPARK-13373] [SQL] generate sort merge join
## What changes were proposed in this pull request?

Generates code for SortMergeJoin.

## How was the this patch tested?

Unit tests and manually tested with TPCDS Q72, which showed 70% performance improvements (from 42s to 25s), but micro benchmark only show minor improvements, it may depends the distribution of data and number of columns.

Author: Davies Liu <davies@databricks.com>

Closes #11248 from davies/gen_smj.
2016-02-23 15:00:10 -08:00
Davies Liu c481bdf512 [SPARK-13329] [SQL] considering output for statistics of logical plan
The current implementation of statistics of UnaryNode does not considering output (for example, Project may product much less columns than it's child), we should considering it to have a better guess.

We usually only join with few columns from a parquet table, the size of projected plan could be much smaller than the original parquet files. Having a better guess of size help we choose between broadcast join or sort merge join.

After this PR, I saw a few queries choose broadcast join other than sort merge join without turning spark.sql.autoBroadcastJoinThreshold for every query, ended up with about 6-8X improvements on end-to-end time.

We use `defaultSize` of DataType to estimate the size of a column, currently For DecimalType/StringType/BinaryType and UDT, we are over-estimate too much (4096 Bytes), so this PR change them to some more reasonable values. Here are the new defaultSize for them:

DecimalType:  8 or 16 bytes, based on the precision
StringType:  20 bytes
BinaryType: 100 bytes
UDF: default size of SQL type

These numbers are not perfect (hard to have a perfect number for them), but should be better than 4096.

Author: Davies Liu <davies@databricks.com>

Closes #11210 from davies/statics.
2016-02-23 12:55:44 -08:00
Michael Armbrust c5bfe5d2a2 [SPARK-13440][SQL] ObjectType should accept any ObjectType, If should not care about nullability
The type checking functions of `If` and `UnwrapOption` are fixed to eliminate spurious failures.  `UnwrapOption` was checking for an input of `ObjectType` but `ObjectType`'s accept function was hard coded to return `false`.  `If`'s type check was returning a false negative in the case that the two options differed only by nullability.

Tests added:
 -  an end-to-end regression test is added to `DatasetSuite` for the reported failure.
 - all the unit tests in `ExpressionEncoderSuite` are augmented to also confirm successful analysis.  These tests are actually what pointed out the additional issues with `If` resolution.

Author: Michael Armbrust <michael@databricks.com>

Closes #11316 from marmbrus/datasetOptions.
2016-02-23 11:20:27 -08:00
gatorsmile 87250580f2 [SPARK-13263][SQL] SQL Generation Support for Tablesample
In the parser, tableSample clause is part of tableSource.
```
tableSource
init { gParent.pushMsg("table source", state); }
after { gParent.popMsg(state); }
    : tabname=tableName
    ((tableProperties) => props=tableProperties)?
    ((tableSample) => ts=tableSample)?
    ((KW_AS) => (KW_AS alias=Identifier)
    |
    (Identifier) => (alias=Identifier))?
    -> ^(TOK_TABREF $tabname $props? $ts? $alias?)
    ;
```

Two typical query samples using TABLESAMPLE are:
```
    "SELECT s.id FROM t0 TABLESAMPLE(10 PERCENT) s"
    "SELECT * FROM t0 TABLESAMPLE(0.1 PERCENT)"
```

FYI, the logical plan of a TABLESAMPLE query:
```
sql("SELECT * FROM t0 TABLESAMPLE(0.1 PERCENT)").explain(true)

== Analyzed Logical Plan ==
id: bigint
Project [id#16L]
+- Sample 0.0, 0.001, false, 381
   +- Subquery t0
      +- Relation[id#16L] ParquetRelation
```

Thanks! cc liancheng

Author: gatorsmile <gatorsmile@gmail.com>
Author: xiaoli <lixiao1983@gmail.com>
Author: Xiao Li <xiaoli@Xiaos-MacBook-Pro.local>

This patch had conflicts when merged, resolved by
Committer: Cheng Lian <lian@databricks.com>

Closes #11148 from gatorsmile/tablesplitsample.
2016-02-23 16:13:09 +08:00
Timothy Hunter 4fd1993692 [SPARK-6761][SQL] Approximate quantile for DataFrame
JIRA: https://issues.apache.org/jira/browse/SPARK-6761

Compute approximate quantile based on the paper Greenwald, Michael and Khanna, Sanjeev, "Space-efficient Online Computation of Quantile Summaries," SIGMOD '01.

Author: Timothy Hunter <timhunter@databricks.com>
Author: Liang-Chi Hsieh <viirya@gmail.com>

Closes #6042 from viirya/approximate_quantile.
2016-02-22 23:31:00 -08:00
gatorsmile 01e10c9fef [SPARK-13236] SQL Generation for Set Operations
This PR is to implement SQL generation for the following three set operations:
- Union Distinct
- Intersect
- Except

liancheng Thanks!

Author: gatorsmile <gatorsmile@gmail.com>
Author: xiaoli <lixiao1983@gmail.com>
Author: Xiao Li <xiaoli@Xiaos-MacBook-Pro.local>

Closes #11195 from gatorsmile/setOpSQLGen.
2016-02-23 15:16:59 +08:00
gatorsmile 9dd5399d78 [SPARK-12723][SQL] Comprehensive Verification and Fixing of SQL Generation Support for Expressions
#### What changes were proposed in this pull request?

Ensure that all built-in expressions can be mapped to its SQL representation if there is one (e.g. ScalaUDF doesn't have a SQL representation). The function lists are from the expression list in `FunctionRegistry`.

window functions, grouping sets functions (`cube`, `rollup`, `grouping`, `grouping_id`), generator functions (`explode` and `json_tuple`) are covered by separate JIRA and PRs. Thus, this PR does not cover them. Except these functions, all the built-in expressions are covered. For details, see the list in `ExpressionToSQLSuite`.

Fixed a few issues. For example, the `prettyName` of `approx_count_distinct` is not right. The `sql` of `hash` function is not right, since the `hash` function does not accept `seed`.

Additionally, also correct the order of expressions in `FunctionRegistry` so that people are easier to find which functions are missing.

cc liancheng

#### How was the this patch tested?
Added two test cases in LogicalPlanToSQLSuite for covering `not like` and `not in`.

Added a new test suite `ExpressionToSQLSuite` to cover the functions:

1. misc non-aggregate functions + complex type creators + null expressions
2. math functions
3. aggregate functions
4. string functions
5. date time functions + calendar interval
6. collection functions
7. misc functions

Author: gatorsmile <gatorsmile@gmail.com>

Closes #11314 from gatorsmile/expressionToSQL.
2016-02-22 22:17:56 -08:00
Daoyuan Wang 5d80fac58f [SPARK-11624][SPARK-11972][SQL] fix commands that need hive to exec
In SparkSQLCLI, we have created a `CliSessionState`, but then we call `SparkSQLEnv.init()`, which will start another `SessionState`. This would lead to exception because `processCmd` need to get the `CliSessionState` instance by calling `SessionState.get()`, but the return value would be a instance of `SessionState`. See the exception below.

spark-sql> !echo "test";
Exception in thread "main" java.lang.ClassCastException: org.apache.hadoop.hive.ql.session.SessionState cannot be cast to org.apache.hadoop.hive.cli.CliSessionState
	at org.apache.hadoop.hive.cli.CliDriver.processCmd(CliDriver.java:112)
	at org.apache.spark.sql.hive.thriftserver.SparkSQLCLIDriver.processCmd(SparkSQLCLIDriver.scala:301)
	at org.apache.hadoop.hive.cli.CliDriver.processLine(CliDriver.java:376)
	at org.apache.spark.sql.hive.thriftserver.SparkSQLCLIDriver$.main(SparkSQLCLIDriver.scala:242)
	at org.apache.spark.sql.hive.thriftserver.SparkSQLCLIDriver.main(SparkSQLCLIDriver.scala)
	at sun.reflect.NativeMethodAccessorImpl.invoke0(Native Method)
	at sun.reflect.NativeMethodAccessorImpl.invoke(NativeMethodAccessorImpl.java:57)
	at sun.reflect.DelegatingMethodAccessorImpl.invoke(DelegatingMethodAccessorImpl.java:43)
	at java.lang.reflect.Method.invoke(Method.java:606)
	at org.apache.spark.deploy.SparkSubmit$.org$apache$spark$deploy$SparkSubmit$$runMain(SparkSubmit.scala:691)
	at org.apache.spark.deploy.SparkSubmit$.doRunMain$1(SparkSubmit.scala:180)
	at org.apache.spark.deploy.SparkSubmit$.submit(SparkSubmit.scala:205)
	at org.apache.spark.deploy.SparkSubmit$.main(SparkSubmit.scala:120)
	at org.apache.spark.deploy.SparkSubmit.main(SparkSubmit.scala)

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

Closes #9589 from adrian-wang/clicommand.
2016-02-22 18:13:32 -08:00
Xiu Guo 2063781840 [SPARK-13422][SQL] Use HashedRelation instead of HashSet in Left Semi Joins
Use the HashedRelation which is a more optimized datastructure and reduce code complexity

Author: Xiu Guo <xguo27@gmail.com>

Closes #11291 from xguo27/SPARK-13422.
2016-02-22 16:34:02 -08:00
Michael Armbrust 173aa949c3 [SPARK-12546][SQL] Change default number of open parquet files
A common problem that users encounter with Spark 1.6.0 is that writing to a partitioned parquet table OOMs.  The root cause is that parquet allocates a significant amount of memory that is not accounted for by our own mechanisms.  As a workaround, we can ensure that only a single file is open per task unless the user explicitly asks for more.

Author: Michael Armbrust <michael@databricks.com>

Closes #11308 from marmbrus/parquetWriteOOM.
2016-02-22 15:27:29 -08:00
Dongjoon Hyun 024482bf51 [MINOR][DOCS] Fix all typos in markdown files of doc and similar patterns in other comments
## What changes were proposed in this pull request?

This PR tries to fix all typos in all markdown files under `docs` module,
and fixes similar typos in other comments, too.

## How was the this patch tested?

manual tests.

Author: Dongjoon Hyun <dongjoon@apache.org>

Closes #11300 from dongjoon-hyun/minor_fix_typos.
2016-02-22 09:52:07 +00:00
Reynold Xin 9bf6a926a1 [HOTFIX] Fix compilation break 2016-02-21 19:37:35 -08:00
hyukjinkwon 819b0ea029 [SPARK-13381][SQL] Support for loading CSV with a single function call
https://issues.apache.org/jira/browse/SPARK-13381

This PR adds the support to load CSV data directly by a single call with given paths.

Also, I corrected this to refer all paths rather than the first path in schema inference, which JSON datasource dose.

Several unitests were added for each functionality.

Author: hyukjinkwon <gurwls223@gmail.com>

Closes #11262 from HyukjinKwon/SPARK-13381.
2016-02-21 19:11:03 -08:00
Liang-Chi Hsieh 55d6fdf22d [SPARK-13321][SQL] Support nested UNION in parser
JIRA: https://issues.apache.org/jira/browse/SPARK-13321

The following SQL can not be parsed with current parser:

    SELECT  `u_1`.`id` FROM (((SELECT  `t0`.`id` FROM `default`.`t0`) UNION ALL (SELECT  `t0`.`id` FROM `default`.`t0`)) UNION ALL (SELECT  `t0`.`id` FROM `default`.`t0`)) AS u_1

We should fix it.

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

Closes #11204 from viirya/nested-union.
2016-02-21 19:10:17 -08:00
Franklyn D'souza 0f90f4e6ac [SPARK-13410][SQL] Support unionAll for DataFrames with UDT columns.
## What changes were proposed in this pull request?

This PR adds equality operators to UDT classes so that they can be correctly tested for dataType equality during union operations.

This was previously causing `"AnalysisException: u"unresolved operator 'Union;""` when trying to unionAll two dataframes with UDT columns as below.

```
from pyspark.sql.tests import PythonOnlyPoint, PythonOnlyUDT
from pyspark.sql import types

schema = types.StructType([types.StructField("point", PythonOnlyUDT(), True)])

a = sqlCtx.createDataFrame([[PythonOnlyPoint(1.0, 2.0)]], schema)
b = sqlCtx.createDataFrame([[PythonOnlyPoint(3.0, 4.0)]], schema)

c = a.unionAll(b)
```

## How was the this patch tested?

Tested using two unit tests in sql/test.py and the DataFrameSuite.

Additional information here : https://issues.apache.org/jira/browse/SPARK-13410

Author: Franklyn D'souza <franklynd@gmail.com>

Closes #11279 from damnMeddlingKid/udt-union-all.
2016-02-21 16:58:17 -08:00
Shixiong Zhu 0cbadf28c9 [SPARK-13271][SQL] Better error message if 'path' is not specified
Improved the error message as per discussion in https://github.com/apache/spark/pull/11034#discussion_r52111238. Also made `path` and `metadataPath` in FileStreamSource case insensitive.

Author: Shixiong Zhu <shixiong@databricks.com>

Closes #11154 from zsxwing/path.
2016-02-21 15:34:39 -08:00
Shixiong Zhu 76bd98d914 [SPARK-13405][STREAMING][TESTS] Make sure no messages leak to the next test
## What changes were proposed in this pull request?

Fixed the test failure `org.apache.spark.sql.util.ContinuousQueryListenerSuite.event ordering`: https://amplab.cs.berkeley.edu/jenkins/job/spark-master-test-maven-hadoop-2.6/202/testReport/junit/org.apache.spark.sql.util/ContinuousQueryListenerSuite/event_ordering/

```
      org.scalatest.exceptions.TestFailedException:
Assert failed: : null equaled null onQueryTerminated called before onQueryStarted
org.scalatest.Assertions$class.newAssertionFailedException(Assertions.scala:500)
	org.scalatest.FunSuite.newAssertionFailedException(FunSuite.scala:1555)
	org.scalatest.Assertions$AssertionsHelper.macroAssert(Assertions.scala:466)
	org.apache.spark.sql.util.ContinuousQueryListenerSuite$QueryStatusCollector$$anonfun$onQueryTerminated$1.apply$mcV$sp(ContinuousQueryListenerSuite.scala:204)
	org.scalatest.concurrent.AsyncAssertions$Waiter.apply(AsyncAssertions.scala:349)
	org.apache.spark.sql.util.ContinuousQueryListenerSuite$QueryStatusCollector.onQueryTerminated(ContinuousQueryListenerSuite.scala:203)
	org.apache.spark.sql.execution.streaming.ContinuousQueryListenerBus.doPostEvent(ContinuousQueryListenerBus.scala:67)
	org.apache.spark.sql.execution.streaming.ContinuousQueryListenerBus.doPostEvent(ContinuousQueryListenerBus.scala:32)
	org.apache.spark.util.ListenerBus$class.postToAll(ListenerBus.scala:63)
	org.apache.spark.sql.execution.streaming.ContinuousQueryListenerBus.postToAll(ContinuousQueryListenerBus.scala:32)
```

In the previous codes, when the test `adding and removing listener` finishes, there may be still some QueryTerminated events in the listener bus queue. Then when `event ordering` starts to run, it may see these events and throw the above exception.

This PR just added `waitUntilEmpty` in `after` to make sure all events be consumed after each test.

## How was the this patch tested?

Jenkins tests.

Author: Shixiong Zhu <shixiong@databricks.com>

Closes #11275 from zsxwing/SPARK-13405.
2016-02-21 15:32:49 -08:00
Andrew Or 6c3832b26e [SPARK-13080][SQL] Implement new Catalog API using Hive
## What changes were proposed in this pull request?

This is a step towards merging `SQLContext` and `HiveContext`. A new internal Catalog API was introduced in #10982 and extended in #11069. This patch introduces an implementation of this API using `HiveClient`, an existing interface to Hive. It also extends `HiveClient` with additional calls to Hive that are needed to complete the catalog implementation.

*Where should I start reviewing?* The new catalog introduced is `HiveCatalog`. This class is relatively simple because it just calls `HiveClientImpl`, where most of the new logic is. I would not start with `HiveClient`, `HiveQl`, or `HiveMetastoreCatalog`, which are modified mainly because of a refactor.

*Why is this patch so big?* I had to refactor HiveClient to remove an intermediate representation of databases, tables, partitions etc. After this refactor `CatalogTable` convert directly to and from `HiveTable` (etc.). Otherwise we would have to first convert `CatalogTable` to the intermediate representation and then convert that to HiveTable, which is messy.

The new class hierarchy is as follows:
```
org.apache.spark.sql.catalyst.catalog.Catalog
  - org.apache.spark.sql.catalyst.catalog.InMemoryCatalog
  - org.apache.spark.sql.hive.HiveCatalog
```

Note that, as of this patch, none of these classes are currently used anywhere yet. This will come in the future before the Spark 2.0 release.

## How was the this patch tested?
All existing unit tests, and HiveCatalogSuite that extends CatalogTestCases.

Author: Andrew Or <andrew@databricks.com>
Author: Reynold Xin <rxin@databricks.com>

Closes #11293 from rxin/hive-catalog.
2016-02-21 15:00:24 -08:00
hyukjinkwon 7eb83fefd1 [SPARK-13137][SQL] NullPoingException in schema inference for CSV when the first line is empty
https://issues.apache.org/jira/browse/SPARK-13137

This PR adds a filter in schema inference so that it does not emit NullPointException.

Also, I removed `MAX_COMMENT_LINES_IN_HEADER `but instead used a monad chaining with `filter()` and `first()`.

Lastly, I simply added a newline rather than adding a new file for this so that this is covered with the original tests.

Author: hyukjinkwon <gurwls223@gmail.com>

Closes #11023 from HyukjinKwon/SPARK-13137.
2016-02-21 13:21:59 -08:00
Herman van Hovell b6a873d6d4 [SPARK-13136][SQL] Create a dedicated Broadcast exchange operator
Quite a few Spark SQL join operators broadcast one side of the join to all nodes. The are a few problems with this:

- This conflates broadcasting (a data exchange) with joining. Data exchanges should be managed by a different operator.
- All these nodes implement their own (duplicate) broadcasting logic.
- Re-use of indices is quite hard.

This PR defines both a ```BroadcastDistribution``` and ```BroadcastPartitioning```, these contain a `BroadcastMode`. The `BroadcastMode` defines the way in which we transform the Array of `InternalRow`'s into an index. We currently support the following `BroadcastMode`'s:

- IdentityBroadcastMode: This broadcasts the rows in their original form.
- HashSetBroadcastMode: This applies a projection to the input rows, deduplicates these rows and broadcasts the resulting `Set`.
- HashedRelationBroadcastMode: This transforms the input rows into a `HashedRelation`, and broadcasts this index.

To match this distribution we implement a ```BroadcastExchange``` operator which will perform the broadcast for us, and have ```EnsureRequirements``` plan this operator. The old Exchange operator has been renamed into ShuffleExchange in order to clearly separate between Shuffled and Broadcasted exchanges. Finally the classes in Exchange.scala have been moved to a dedicated package.

cc rxin davies

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

Closes #11083 from hvanhovell/SPARK-13136.
2016-02-21 12:32:31 -08:00
Reynold Xin af441ddbd1 [SPARK-13306][SQL] Addendum to uncorrelated scalar subquery
## What changes were proposed in this pull request?
This pull request fixes some minor issues (documentation, test flakiness, test organization) with #11190, which was merged earlier tonight.

## How was the this patch tested?
unit tests.

Author: Reynold Xin <rxin@databricks.com>

Closes #11285 from rxin/subquery.
2016-02-21 12:27:02 -08:00
Reynold Xin 0947f0989b [SPARK-13420][SQL] Rename Subquery logical plan to SubqueryAlias
## What changes were proposed in this pull request?
This patch renames logical.Subquery to logical.SubqueryAlias, which is a more appropriate name for this operator (versus subqueries as expressions).

## How was the this patch tested?
Unit tests.

Author: Reynold Xin <rxin@databricks.com>

Closes #11288 from rxin/SPARK-13420.
2016-02-21 11:31:46 -08:00
Cheng Lian d9efe63ecd [SPARK-12799] Simplify various string output for expressions
This PR introduces several major changes:

1. Replacing `Expression.prettyString` with `Expression.sql`

   The `prettyString` method is mostly an internal, developer faced facility for debugging purposes, and shouldn't be exposed to users.

1. Using SQL-like representation as column names for selected fields that are not named expression (back-ticks and double quotes should be removed)

   Before, we were using `prettyString` as column names when possible, and sometimes the result column names can be weird.  Here are several examples:

   Expression         | `prettyString` | `sql`      | Note
   ------------------ | -------------- | ---------- | ---------------
   `a && b`           | `a && b`       | `a AND b`  |
   `a.getField("f")`  | `a[f]`         | `a.f`      | `a` is a struct

1. Adding trait `NonSQLExpression` extending from `Expression` for expressions that don't have a SQL representation (e.g. Scala UDF/UDAF and Java/Scala object expressions used for encoders)

   `NonSQLExpression.sql` may return an arbitrary user facing string representation of the expression.

Author: Cheng Lian <lian@databricks.com>

Closes #10757 from liancheng/spark-12799.simplify-expression-string-methods.
2016-02-21 22:53:15 +08:00
Davies Liu 7925071280 [SPARK-13306] [SQL] uncorrelated scalar subquery
A scalar subquery is a subquery that only generate single row and single column, could be used as part of expression. Uncorrelated scalar subquery means it does not has a reference to external table.

All the uncorrelated scalar subqueries will be executed during prepare() of SparkPlan.

The plans for query
```sql
select 1 + (select 2 + (select 3))
```
looks like this
```
== Parsed Logical Plan ==
'Project [unresolvedalias((1 + subquery#1),None)]
:- OneRowRelation$
+- 'Subquery subquery#1
   +- 'Project [unresolvedalias((2 + subquery#0),None)]
      :- OneRowRelation$
      +- 'Subquery subquery#0
         +- 'Project [unresolvedalias(3,None)]
            +- OneRowRelation$

== Analyzed Logical Plan ==
_c0: int
Project [(1 + subquery#1) AS _c0#4]
:- OneRowRelation$
+- Subquery subquery#1
   +- Project [(2 + subquery#0) AS _c0#3]
      :- OneRowRelation$
      +- Subquery subquery#0
         +- Project [3 AS _c0#2]
            +- OneRowRelation$

== Optimized Logical Plan ==
Project [(1 + subquery#1) AS _c0#4]
:- OneRowRelation$
+- Subquery subquery#1
   +- Project [(2 + subquery#0) AS _c0#3]
      :- OneRowRelation$
      +- Subquery subquery#0
         +- Project [3 AS _c0#2]
            +- OneRowRelation$

== Physical Plan ==
WholeStageCodegen
:  +- Project [(1 + subquery#1) AS _c0#4]
:     :- INPUT
:     +- Subquery subquery#1
:        +- WholeStageCodegen
:           :  +- Project [(2 + subquery#0) AS _c0#3]
:           :     :- INPUT
:           :     +- Subquery subquery#0
:           :        +- WholeStageCodegen
:           :           :  +- Project [3 AS _c0#2]
:           :           :     +- INPUT
:           :           +- Scan OneRowRelation[]
:           +- Scan OneRowRelation[]
+- Scan OneRowRelation[]
```

Author: Davies Liu <davies@databricks.com>

Closes #11190 from davies/scalar_subquery.
2016-02-20 21:01:51 -08:00
gatorsmile f88c641bc8 [SPARK-13310] [SQL] Resolve Missing Sorting Columns in Generate
```scala
// case 1: missing sort columns are resolvable if join is true
sql("SELECT explode(a) AS val, b FROM data WHERE b < 2 order by val, c")
// case 2: missing sort columns are not resolvable if join is false. Thus, issue an error message in this case
sql("SELECT explode(a) AS val FROM data order by val, c")
```

When sort columns are not in `Generate`, we can resolve them when `join` is equal to `true`. Still trying to add more test cases for the other `UnaryNode` types.

Could you review the changes? davies cloud-fan Thanks!

Author: gatorsmile <gatorsmile@gmail.com>

Closes #11198 from gatorsmile/missingInSort.
2016-02-20 13:53:23 -08:00
Reynold Xin 6624a588c1 Revert "[SPARK-12567] [SQL] Add aes_{encrypt,decrypt} UDFs"
This reverts commit 4f9a664818.
2016-02-19 22:44:20 -08:00
Kai Jiang 4f9a664818 [SPARK-12567] [SQL] Add aes_{encrypt,decrypt} UDFs
Author: Kai Jiang <jiangkai@gmail.com>

Closes #10527 from vectorijk/spark-12567.
2016-02-19 22:28:47 -08:00
gatorsmile ec7a1d6e42 [SPARK-12594] [SQL] Outer Join Elimination by Filter Conditions
Conversion of outer joins, if the predicates in filter conditions can restrict the result sets so that all null-supplying rows are eliminated.

- `full outer` -> `inner` if both sides have such predicates
- `left outer` -> `inner` if the right side has such predicates
- `right outer` -> `inner` if the left side has such predicates
- `full outer` -> `left outer` if only the left side has such predicates
- `full outer` -> `right outer` if only the right side has such predicates

If applicable, this can greatly improve the performance, since outer join is much slower than inner join, full outer join is much slower than left/right outer join.

The original PR is https://github.com/apache/spark/pull/10542

Author: gatorsmile <gatorsmile@gmail.com>
Author: xiaoli <lixiao1983@gmail.com>
Author: Xiao Li <xiaoli@Xiaos-MacBook-Pro.local>

Closes #10567 from gatorsmile/outerJoinEliminationByFilterCond.
2016-02-19 22:27:10 -08:00
Sameer Agarwal 091f6a7830 [SPARK-13091][SQL] Rewrite/Propagate constraints for Aliases
This PR adds support for rewriting constraints if there are aliases in the query plan. For e.g., if there is a query of form `SELECT a, a AS b`, any constraints on `a` now also apply to `b`.

JIRA: https://issues.apache.org/jira/browse/SPARK-13091

cc marmbrus

Author: Sameer Agarwal <sameer@databricks.com>

Closes #11144 from sameeragarwal/alias.
2016-02-19 14:48:34 -08:00
Hossein 14844118b5 [SPARK-13261][SQL] Expose maxCharactersPerColumn as a user configurable option
This patch expose `maxCharactersPerColumn` and `maxColumns` to user in CSV data source.

Author: Hossein <hossein@databricks.com>

Closes #11147 from falaki/SPARK-13261.
2016-02-19 14:46:56 -08:00
Brandon Bradley dbb08cdd5a [SPARK-12966][SQL] ArrayType(DecimalType) support in Postgres JDBC
Fixes error `org.postgresql.util.PSQLException: Unable to find server array type for provided name decimal(38,18)`.

* Passes scale metadata to JDBC dialect for usage in type conversions.
* Removes unused length/scale/precision parameters from `createArrayOf` parameter `typeName` (for writing).
* Adds configurable precision and scale to Postgres `DecimalType` (for reading).
* Adds a new kind of test that verifies the schema written by `DataFrame.write.jdbc`.

Author: Brandon Bradley <bradleytastic@gmail.com>

Closes #10928 from blbradley/spark-12966.
2016-02-19 14:43:21 -08:00
Liang-Chi Hsieh c7c55637bf [SPARK-13384][SQL] Keep attribute qualifiers after dedup in Analyzer
JIRA: https://issues.apache.org/jira/browse/SPARK-13384

## What changes were proposed in this pull request?

When we de-duplicate attributes in Analyzer, we create new attributes. However, we don't keep original qualifiers. Some plans will be failed to analysed. We should keep original qualifiers in new attributes.

## How was the this patch tested?

Unit test is added.

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

Closes #11261 from viirya/keep-attr-qualifiers.
2016-02-19 12:22:22 -08:00
gatorsmile c776fce99b [SPARK-13380][SQL][DOCUMENT] Document Rand(seed) and Randn(seed) Return Indeterministic Results When Data Partitions are not fixed.
`rand` and `randn` functions with a `seed` argument are commonly used. Based on the common sense, the results of `rand` and `randn` should be deterministic if the `seed` parameter value is provided. For example, in MS SQL Server, it also has a function `rand`. Regarding the parameter `seed`, the description is like: ```Seed is an integer expression (tinyint, smallint, or int) that gives the seed value. If seed is not specified, the SQL Server Database Engine assigns a seed value at random. For a specified seed value, the result returned is always the same.```

Update: the current implementation is unable to generate deterministic results when the partitions are not fixed. This PR documents this issue in the function descriptions.

jkbradley hit an issue and provided an example in the following JIRA: https://issues.apache.org/jira/browse/SPARK-13333

Author: gatorsmile <gatorsmile@gmail.com>

Closes #11232 from gatorsmile/randSeed.
2016-02-18 21:19:36 -08:00
Davies Liu 95e1ab223e [SPARK-13237] [SQL] generated broadcast outer join
This PR support codegen for broadcast outer join.

In order to reduce the duplicated codes, this PR merge HashJoin and HashOuterJoin together (also BroadcastHashJoin and BroadcastHashOuterJoin).

Author: Davies Liu <davies@databricks.com>

Closes #11130 from davies/gen_out.
2016-02-18 15:15:06 -08:00
Davies Liu 26f38bb83c [SPARK-13351][SQL] fix column pruning on Expand
Currently, the columns in projects of Expand that are not used by Aggregate are not pruned, this PR fix that.

Author: Davies Liu <davies@databricks.com>

Closes #11225 from davies/fix_pruning_expand.
2016-02-18 13:07:41 -08:00
jerryshao 1eac380008 [SPARK-13109][BUILD] Fix SBT publishLocal issue
Add local ivy repo to the SBT build file to fix this.

Scaladoc compile error is fixed.

Author: jerryshao <sshao@hortonworks.com>

Closes #11001 from jerryshao/SPARK-13109.
2016-02-17 15:05:40 -08:00
Takuya UESHIN 04e8afe362 [SPARK-13357][SQL] Use generated projection and ordering for TakeOrderedAndProjectNode
`TakeOrderedAndProjectNode` should use generated projection and ordering like other `LocalNode`s.

Author: Takuya UESHIN <ueshin@happy-camper.st>

Closes #11230 from ueshin/issues/SPARK-13357.
2016-02-17 00:21:15 -08:00
Takuya UESHIN 19dc69de79 [SPARK-12976][SQL] Add LazilyGenerateOrdering and use it for RangePartitioner of Exchange.
Add `LazilyGenerateOrdering` to support generated ordering for `RangePartitioner` of `Exchange` instead of `InterpretedOrdering`.

Author: Takuya UESHIN <ueshin@happy-camper.st>

Closes #10894 from ueshin/issues/SPARK-12976.
2016-02-16 10:54:44 -08:00
gatorsmile fee739f07b [SPARK-13221] [SQL] Fixing GroupingSets when Aggregate Functions Containing GroupBy Columns
Using GroupingSets will generate a wrong result when Aggregate Functions containing GroupBy columns.

This PR is to fix it. Since the code changes are very small. Maybe we also can merge it to 1.6

For example, the following query returns a wrong result:
```scala
sql("select course, sum(earnings) as sum from courseSales group by course, earnings" +
     " grouping sets((), (course), (course, earnings))" +
     " order by course, sum").show()
```
Before the fix, the results are like
```
[null,null]
[Java,null]
[Java,20000.0]
[Java,30000.0]
[dotNET,null]
[dotNET,5000.0]
[dotNET,10000.0]
[dotNET,48000.0]
```
After the fix, the results become correct:
```
[null,113000.0]
[Java,20000.0]
[Java,30000.0]
[Java,50000.0]
[dotNET,5000.0]
[dotNET,10000.0]
[dotNET,48000.0]
[dotNET,63000.0]
```

UPDATE:  This PR also deprecated the external column: GROUPING__ID.

Author: gatorsmile <gatorsmile@gmail.com>

Closes #11100 from gatorsmile/groupingSets.
2016-02-15 23:16:58 -08:00
Josh Rosen a8bbc4f50e [SPARK-12503][SPARK-12505] Limit pushdown in UNION ALL and OUTER JOIN
This patch adds a new optimizer rule for performing limit pushdown. Limits will now be pushed down in two cases:

- If a limit is on top of a `UNION ALL` operator, then a partition-local limit operator will be pushed to each of the union operator's children.
- If a limit is on top of an `OUTER JOIN` then a partition-local limit will be pushed to one side of the join. For `LEFT OUTER` and `RIGHT OUTER` joins, the limit will be pushed to the left and right side, respectively. For `FULL OUTER` join, we will only push limits when at most one of the inputs is already limited: if one input is limited we will push a smaller limit on top of it and if neither input is limited then we will limit the input which is estimated to be larger.

These optimizations were proposed previously by gatorsmile in #10451 and #10454, but those earlier PRs were closed and deferred for later because at that time Spark's physical `Limit` operator would trigger a full shuffle to perform global limits so there was a chance that pushdowns could actually harm performance by causing additional shuffles/stages. In #7334, we split the `Limit` operator into separate `LocalLimit` and `GlobalLimit` operators, so we can now push down only local limits (which don't require extra shuffles). This patch is based on both of gatorsmile's patches, with changes and simplifications due to partition-local-limiting.

When we push down the limit, we still keep the original limit in place, so we need a mechanism to ensure that the optimizer rule doesn't keep pattern-matching once the limit has been pushed down. In order to handle this, this patch adds a `maxRows` method to `SparkPlan` which returns the maximum number of rows that the plan can compute, then defines the pushdown rules to only push limits to children if the children's maxRows are greater than the limit's maxRows. This idea is carried over from #10451; see that patch for additional discussion.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #11121 from JoshRosen/limit-pushdown-2.
2016-02-14 17:32:21 -08:00
Carson Wang 7cb4d74c98 [SPARK-13185][SQL] Reuse Calendar object in DateTimeUtils.StringToDate method to improve performance
The java `Calendar` object is expensive to create. I have a sub query like this `SELECT a, b, c FROM table UV WHERE (datediff(UV.visitDate, '1997-01-01')>=0 AND datediff(UV.visitDate, '2015-01-01')<=0))`

The table stores `visitDate` as String type and has 3 billion records. A `Calendar` object is created every time `DateTimeUtils.stringToDate` is called. By reusing the `Calendar` object, I saw about 20 seconds performance improvement for this stage.

Author: Carson Wang <carson.wang@intel.com>

Closes #11090 from carsonwang/SPARK-13185.
2016-02-14 16:00:20 -08:00
Reynold Xin 354d4c24be [SPARK-13296][SQL] Move UserDefinedFunction into sql.expressions.
This pull request has the following changes:

1. Moved UserDefinedFunction into expressions package. This is more consistent with how we structure the packages for window functions and UDAFs.

2. Moved UserDefinedPythonFunction into execution.python package, so we don't have a random private class in the top level sql package.

3. Move everything in execution/python.scala into the newly created execution.python package.

Most of the diffs are just straight copy-paste.

Author: Reynold Xin <rxin@databricks.com>

Closes #11181 from rxin/SPARK-13296.
2016-02-13 21:06:31 -08:00
Sean Owen 388cd9ea8d [SPARK-13172][CORE][SQL] Stop using RichException.getStackTrace it is deprecated
Replace `getStackTraceString` with `Utils.exceptionString`

Author: Sean Owen <sowen@cloudera.com>

Closes #11182 from srowen/SPARK-13172.
2016-02-13 21:05:48 -08:00
Davies Liu 2228f074e1 [SPARK-13293][SQL] generate Expand
Expand suffer from create the UnsafeRow from same input multiple times, with codegen, it only need to copy some of the columns.

After this, we can see 3X improvements (from 43 seconds to 13 seconds) on a TPCDS query (Q67) that have eight columns in Rollup.

Ideally, we could mask some of the columns based on bitmask, I'd leave that in the future, because currently Aggregation (50 ns) is much slower than that just copy the variables (1-2 ns).

Author: Davies Liu <davies@databricks.com>

Closes #11177 from davies/gen_expand.
2016-02-12 17:32:15 -08:00
hyukjinkwon ac7d6af1ca [SPARK-13260][SQL] count(*) does not work with CSV data source
https://issues.apache.org/jira/browse/SPARK-13260
This is a quicky fix for `count(*)`.

When the `requiredColumns` is empty, currently it returns `sqlContext.sparkContext.emptyRDD[Row]` which does not have the count.

Just like JSON datasource, this PR lets the CSV datasource count the rows but do not parse each set of tokens.

Author: hyukjinkwon <gurwls223@gmail.com>

Closes #11169 from HyukjinKwon/SPARK-13260.
2016-02-12 11:54:58 -08:00
Reynold Xin c4d5ad80c8 [SPARK-13282][SQL] LogicalPlan toSql should just return a String
Previously we were using Option[String] and None to indicate the case when Spark fails to generate SQL. It is easier to just use exceptions to propagate error cases, rather than having for comprehension everywhere. I also introduced a "build" function that simplifies string concatenation (i.e. no need to reason about whether we have an extra space or not).

Author: Reynold Xin <rxin@databricks.com>

Closes #11171 from rxin/SPARK-13282.
2016-02-12 10:08:19 -08:00
Davies Liu 5b805df279 [SPARK-12705] [SQL] push missing attributes for Sort
The current implementation of ResolveSortReferences can only push one missing attributes into it's child, it failed to analyze TPCDS Q98, because of there are two missing attributes in that (one from Window, another from Aggregate).

Author: Davies Liu <davies@databricks.com>

Closes #11153 from davies/resolve_sort.
2016-02-12 09:34:18 -08:00
Davies Liu b10af5e238 [SPARK-12915][SQL] add SQL metrics of numOutputRows for whole stage codegen
This PR add SQL metrics (numOutputRows) for generated operators (same as non-generated), the cost is about 0.2 nano seconds per row.

<img width="806" alt="gen metrics" src="https://cloud.githubusercontent.com/assets/40902/12994694/47f5881e-d0d7-11e5-9d47-78229f559ab0.png">

Author: Davies Liu <davies@databricks.com>

Closes #11170 from davies/gen_metric.
2016-02-11 18:00:03 -08:00
jayadevanmurali 0d50a22084 [SPARK-12982][SQL] Add table name validation in temp table registration
Add the table name validation at the temp table creation

Author: jayadevanmurali <jayadevan.m@tcs.com>

Closes #11051 from jayadevanmurali/branch-0.2-SPARK-12982.
2016-02-11 21:21:03 +01:00
Liang-Chi Hsieh e31c80737b [SPARK-13277][SQL] ANTLR ignores other rule using the USING keyword
JIRA: https://issues.apache.org/jira/browse/SPARK-13277

There is an ANTLR warning during compilation:

    warning(200): org/apache/spark/sql/catalyst/parser/SparkSqlParser.g:938:7:
    Decision can match input such as "KW_USING Identifier" using multiple alternatives: 2, 3

    As a result, alternative(s) 3 were disabled for that input

This patch is to fix it.

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

Closes #11168 from viirya/fix-parser-using.
2016-02-11 21:09:44 +01:00
Sasaki Toru c2f21d8898 [SPARK-13264][DOC] Removed multi-byte characters in spark-env.sh.template
In spark-env.sh.template, there are multi-byte characters, this PR will remove it.

Author: Sasaki Toru <sasakitoa@nttdata.co.jp>

Closes #11149 from sasakitoa/remove_multibyte_in_sparkenv.
2016-02-11 09:30:36 +00:00
Nong Li 18bcbbdd84 [SPARK-13270][SQL] Remove extra new lines in whole stage codegen and include pipeline plan in comments.
Author: Nong Li <nong@databricks.com>

Closes #11155 from nongli/spark-13270.
2016-02-10 23:52:19 -08:00
gatorsmile e88bff1279 [SPARK-13235][SQL] Removed an Extra Distinct from the Plan when Using Union in SQL
Currently, the parser added two `Distinct` operators in the plan if we are using `Union` or `Union Distinct` in the SQL. This PR is to remove the extra `Distinct` from the plan.

For example, before the fix, the following query has a plan with two `Distinct`
```scala
sql("select * from t0 union select * from t0").explain(true)
```
```
== Parsed Logical Plan ==
'Project [unresolvedalias(*,None)]
+- 'Subquery u_2
   +- 'Distinct
      +- 'Project [unresolvedalias(*,None)]
         +- 'Subquery u_1
            +- 'Distinct
               +- 'Union
                  :- 'Project [unresolvedalias(*,None)]
                  :  +- 'UnresolvedRelation `t0`, None
                  +- 'Project [unresolvedalias(*,None)]
                     +- 'UnresolvedRelation `t0`, None

== Analyzed Logical Plan ==
id: bigint
Project [id#16L]
+- Subquery u_2
   +- Distinct
      +- Project [id#16L]
         +- Subquery u_1
            +- Distinct
               +- Union
                  :- Project [id#16L]
                  :  +- Subquery t0
                  :     +- Relation[id#16L] ParquetRelation
                  +- Project [id#16L]
                     +- Subquery t0
                        +- Relation[id#16L] ParquetRelation

== Optimized Logical Plan ==
Aggregate [id#16L], [id#16L]
+- Aggregate [id#16L], [id#16L]
   +- Union
      :- Project [id#16L]
      :  +- Relation[id#16L] ParquetRelation
      +- Project [id#16L]
         +- Relation[id#16L] ParquetRelation
```
After the fix, the plan is changed without the extra `Distinct` as follows:
```
== Parsed Logical Plan ==
'Project [unresolvedalias(*,None)]
+- 'Subquery u_1
   +- 'Distinct
      +- 'Union
         :- 'Project [unresolvedalias(*,None)]
         :  +- 'UnresolvedRelation `t0`, None
         +- 'Project [unresolvedalias(*,None)]
           +- 'UnresolvedRelation `t0`, None

== Analyzed Logical Plan ==
id: bigint
Project [id#17L]
+- Subquery u_1
   +- Distinct
      +- Union
        :- Project [id#16L]
        :  +- Subquery t0
        :     +- Relation[id#16L] ParquetRelation
        +- Project [id#16L]
          +- Subquery t0
          +- Relation[id#16L] ParquetRelation

== Optimized Logical Plan ==
Aggregate [id#17L], [id#17L]
+- Union
  :- Project [id#16L]
  :  +- Relation[id#16L] ParquetRelation
  +- Project [id#16L]
    +- Relation[id#16L] ParquetRelation
```

Author: gatorsmile <gatorsmile@gmail.com>

Closes #11120 from gatorsmile/unionDistinct.
2016-02-11 08:40:27 +01:00
Herman van Hovell 1842c55d89 [SPARK-13276] Catch bad characters at the end of a Table Identifier/Expression string
The parser currently parses the following strings without a hitch:
* Table Identifier:
  * `a.b.c` should fail, but results in the following table identifier `a.b`
  * `table!#` should fail, but results in the following table identifier `table`
* Expression
  * `1+2 r+e` should fail, but results in the following expression `1 + 2`

This PR fixes this by adding terminated rules for both expression parsing and table identifier parsing.

cc cloud-fan (we discussed this in https://github.com/apache/spark/pull/10649) jayadevanmurali (this causes your PR https://github.com/apache/spark/pull/11051 to fail)

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

Closes #11159 from hvanhovell/SPARK-13276.
2016-02-11 08:30:58 +01:00
Davies Liu 8f744fe3d9 [SPARK-13234] [SQL] remove duplicated SQL metrics
For lots of SQL operators, we have metrics for both of input and output, the number of input rows should be exactly the number of output rows of child, we could only have metrics for output rows.

After we improved the performance using whole stage codegen, the overhead of SQL metrics are not trivial anymore, we should avoid that if it's not necessary.

This PR remove all the SQL metrics for number of input rows, add SQL metric of number of output rows for all LeafNode. All remove the SQL metrics from those operators that have the same number of rows from input and output (for example, Projection, we may don't need that).

The new SQL UI will looks like:

![metrics](https://cloud.githubusercontent.com/assets/40902/12965227/63614e5e-d009-11e5-88b3-84fea04f9c20.png)

Author: Davies Liu <davies@databricks.com>

Closes #11163 from davies/remove_metrics.
2016-02-10 23:23:01 -08:00
Davies Liu b5761d150b [SPARK-12706] [SQL] grouping() and grouping_id()
Grouping() returns a column is aggregated or not, grouping_id() returns the aggregation levels.

grouping()/grouping_id() could be used with window function, but does not work in having/sort clause, will be fixed by another PR.

The GROUPING__ID/grouping_id() in Hive is wrong (according to docs), we also did it wrongly, this PR change that to match the behavior in most databases (also the docs of Hive).

Author: Davies Liu <davies@databricks.com>

Closes #10677 from davies/grouping.
2016-02-10 20:13:38 -08:00
gatorsmile 0f09f02269 [SPARK-13205][SQL] SQL Generation Support for Self Join
This PR addresses two issues:
  - Self join does not work in SQL Generation
  - When creating new instances for `LogicalRelation`, `metastoreTableIdentifier` is lost.

liancheng Could you please review the code changes? Thank you!

Author: gatorsmile <gatorsmile@gmail.com>

Closes #11084 from gatorsmile/selfJoinInSQLGen.
2016-02-11 11:08:21 +08:00
gatorsmile 663cc400f3 [SPARK-12725][SQL] Resolving Name Conflicts in SQL Generation and Name Ambiguity Caused by Internally Generated Expressions
Some analysis rules generate aliases or auxiliary attribute references with the same name but different expression IDs. For example, `ResolveAggregateFunctions` introduces `havingCondition` and `aggOrder`, and `DistinctAggregationRewriter` introduces `gid`.

This is OK for normal query execution since these attribute references get expression IDs. However, it's troublesome when converting resolved query plans back to SQL query strings since expression IDs are erased.

Here's an example Spark 1.6.0 snippet for illustration:
```scala
sqlContext.range(10).select('id as 'a, 'id as 'b).registerTempTable("t")
sqlContext.sql("SELECT SUM(a) FROM t GROUP BY a, b ORDER BY COUNT(a), COUNT(b)").explain(true)
```
The above code produces the following resolved plan:
```
== Analyzed Logical Plan ==
_c0: bigint
Project [_c0#101L]
+- Sort [aggOrder#102L ASC,aggOrder#103L ASC], true
   +- Aggregate [a#47L,b#48L], [(sum(a#47L),mode=Complete,isDistinct=false) AS _c0#101L,(count(a#47L),mode=Complete,isDistinct=false) AS aggOrder#102L,(count(b#48L),mode=Complete,isDistinct=false) AS aggOrder#103L]
      +- Subquery t
         +- Project [id#46L AS a#47L,id#46L AS b#48L]
            +- LogicalRDD [id#46L], MapPartitionsRDD[44] at range at <console>:26
```
Here we can see that both aggregate expressions in `ORDER BY` are extracted into an `Aggregate` operator, and both of them are named `aggOrder` with different expression IDs.

The solution is to automatically add the expression IDs into the attribute name for the Alias and AttributeReferences that are generated by Analyzer in SQL Generation.

In this PR, it also resolves another issue. Users could use the same name as the internally generated names. The duplicate names should not cause name ambiguity. When resolving the column, Catalyst should not pick the column that is internally generated.

Could you review the solution? marmbrus liancheng

I did not set the newly added flag for all the alias and attribute reference generated by Analyzers. Please let me know if I should do it? Thank you!

Author: gatorsmile <gatorsmile@gmail.com>

Closes #11050 from gatorsmile/namingConflicts.
2016-02-11 10:44:39 +08:00
raela 719973b05e [SPARK-13274] Fix Aggregator Links on GroupedDataset Scala API
Update Aggregator links to point to #org.apache.spark.sql.expressions.Aggregator

Author: raela <raela@databricks.com>

Closes #11158 from raelawang/master.
2016-02-10 17:00:54 -08:00
Tathagata Das 0902e20288 [SPARK-13146][SQL] Management API for continuous queries
### Management API for Continuous Queries

**API for getting status of each query**
- Whether active or not
- Unique name of each query
- Status of the sources and sinks
- Exceptions

**API for managing each query**
- Immediately stop an active query
- Waiting for a query to be terminated, correctly or with error

**API for managing multiple queries**
- Listing all active queries
- Getting an active query by name
- Waiting for any one of the active queries to be terminated

**API for listening to query life cycle events**
- ContinuousQueryListener API for query start, progress and termination events.

Author: Tathagata Das <tathagata.das1565@gmail.com>

Closes #11030 from tdas/streaming-df-management-api.
2016-02-10 16:45:06 -08:00
Takeshi YAMAMURO 5947fa8fa1 [SPARK-13057][SQL] Add benchmark codes and the performance results for implemented compression schemes for InMemoryRelation
This pr adds benchmark codes for in-memory cache compression to make future developments and discussions more smooth.

Author: Takeshi YAMAMURO <linguin.m.s@gmail.com>

Closes #10965 from maropu/ImproveColumnarCache.
2016-02-10 13:34:02 -08:00
Josh Rosen ce3bdaeeff [HOTFIX] Fix Scala 2.10 build break in TakeOrderedAndProjectSuite. 2016-02-10 12:44:40 -08:00
Josh Rosen 5cf20598ce [SPARK-13254][SQL] Fix planning of TakeOrderedAndProject operator
The patch for SPARK-8964 ("use Exchange to perform shuffle in Limit" / #7334) inadvertently broke the planning of the TakeOrderedAndProject operator: because ReturnAnswer was the new root of the query plan, the TakeOrderedAndProject rule was unable to match before BasicOperators.

This patch fixes this by moving the `TakeOrderedAndCollect` and `CollectLimit` rules into the same strategy.

In addition, I made changes to the TakeOrderedAndProject operator in order to make its `doExecute()` method lazy and added a new TakeOrderedAndProjectSuite which tests the new code path.

/cc davies and marmbrus for review.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #11145 from JoshRosen/take-ordered-and-project-fix.
2016-02-10 11:00:38 -08:00
Gábor Lipták 9269036d8c [SPARK-11565] Replace deprecated DigestUtils.shaHex call
Author: Gábor Lipták <gliptak@gmail.com>

Closes #9532 from gliptak/SPARK-11565.
2016-02-10 09:52:35 +00:00
Shixiong Zhu b385ce3882 [SPARK-13149][SQL] Add FileStreamSource
`FileStreamSource` is an implementation of `org.apache.spark.sql.execution.streaming.Source`. It takes advantage of the existing `HadoopFsRelationProvider` to support various file formats. It remembers files in each batch and stores it into the metadata files so as to recover them when restarting. The metadata files are stored in the file system. There will be a further PR to clean up the metadata files periodically.

This is based on the initial work from marmbrus.

Author: Shixiong Zhu <shixiong@databricks.com>

Closes #11034 from zsxwing/stream-df-file-source.
2016-02-09 18:50:06 -08:00
Takeshi YAMAMURO 6f710f9fd4 [SPARK-12476][SQL] Implement JdbcRelation#unhandledFilters for removing unnecessary Spark Filter
Input: SELECT * FROM jdbcTable WHERE col0 = 'xxx'

Current plan:
```
== Optimized Logical Plan ==
Project [col0#0,col1#1]
+- Filter (col0#0 = xxx)
   +- Relation[col0#0,col1#1] JDBCRelation(jdbc:postgresql:postgres,testRel,[Lorg.apache.spark.Partition;2ac7c683,{user=maropu, password=, driver=org.postgresql.Driver})

== Physical Plan ==
+- Filter (col0#0 = xxx)
   +- Scan JDBCRelation(jdbc:postgresql:postgres,testRel,[Lorg.apache.spark.Partition;2ac7c683,{user=maropu, password=, driver=org.postgresql.Driver})[col0#0,col1#1] PushedFilters: [EqualTo(col0,xxx)]
```

This patch enables a plan below;
```
== Optimized Logical Plan ==
Project [col0#0,col1#1]
+- Filter (col0#0 = xxx)
   +- Relation[col0#0,col1#1] JDBCRelation(jdbc:postgresql:postgres,testRel,[Lorg.apache.spark.Partition;2ac7c683,{user=maropu, password=, driver=org.postgresql.Driver})

== Physical Plan ==
Scan JDBCRelation(jdbc:postgresql:postgres,testRel,[Lorg.apache.spark.Partition;2ac7c683,{user=maropu, password=, driver=org.postgresql.Driver})[col0#0,col1#1] PushedFilters: [EqualTo(col0,xxx)]
```

Author: Takeshi YAMAMURO <linguin.m.s@gmail.com>

Closes #10427 from maropu/RemoveFilterInJdbcScan.
2016-02-10 09:45:13 +08:00
Davies Liu 0e5ebac3c1 [SPARK-12950] [SQL] Improve lookup of BytesToBytesMap in aggregate
This PR improve the lookup of BytesToBytesMap by:

1. Generate code for calculate the hash code of grouping keys.

2. Do not use MemoryLocation, fetch the baseObject and offset for key and value directly (remove the indirection).

Author: Davies Liu <davies@databricks.com>

Closes #11010 from davies/gen_map.
2016-02-09 16:41:21 -08:00
Wenchen Fan 7fe4fe630a [SPARK-12888] [SQL] [FOLLOW-UP] benchmark the new hash expression
Adds the benchmark results as comments.

The codegen version is slower than the interpreted version for `simple` case becasue of 3 reasons:

1. codegen version use a more complex hash algorithm than interpreted version, i.e. `Murmur3_x86_32.hashInt` vs [simple multiplication and addition](https://github.com/apache/spark/blob/master/sql/catalyst/src/main/scala/org/apache/spark/sql/catalyst/expressions/rows.scala#L153).
2. codegen version will write the hash value to a row first and then read it out. I tried to create a `GenerateHasher` that can generate code to return hash value directly and got about 60% speed up for the `simple` case, does it worth?
3. the row in `simple` case only has one int field, so the runtime reflection may be removed because of branch prediction, which makes the interpreted version faster.

The `array` case is also slow for similar reasons, e.g. array elements are of same type, so interpreted version can probably get rid of runtime reflection by branch prediction.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #10917 from cloud-fan/hash-benchmark.
2016-02-09 13:06:36 -08:00
Nong Li 3708d13f1a [SPARK-12992] [SQL] Support vectorized decoding in UnsafeRowParquetRecordReader.
WIP: running tests. Code needs a bit of clean up.

This patch completes the vectorized decoding with the goal of passing the existing
tests. There is still more patches to support the rest of the format spec, even
just for flat schemas.

This patch adds a new flag to enable the vectorized decoding. Tests were updated
to try with both modes where applicable.

Once this is working well, we can remove the previous code path.

Author: Nong Li <nong@databricks.com>

Closes #11055 from nongli/spark-12992-2.
2016-02-08 22:21:26 -08:00
Davies Liu ff0af0ddfa [SPARK-13095] [SQL] improve performance for broadcast join with dimension table
This PR improve the performance for Broadcast join with dimension tables, which is common in data warehouse.

If the join key can fit in a long, we will use a special api `get(Long)` to get the rows from HashedRelation.

If the HashedRelation only have unique keys, we will use a special api `getValue(Long)` or `getValue(InternalRow)`.

If the keys can fit within a long, also the keys are dense, we will use a array of UnsafeRow, instead a hash map.

TODO: will do cleanup

Author: Davies Liu <davies@databricks.com>

Closes #11065 from davies/gen_dim.
2016-02-08 14:09:14 -08:00
Wenchen Fan 8e4d15f707 [SPARK-13101][SQL] nullability of array type element should not fail analysis of encoder
nullability should only be considered as an optimization rather than part of the type system, so instead of failing analysis for mismatch nullability, we should pass analysis and add runtime null check.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #11035 from cloud-fan/ignore-nullability.
2016-02-08 12:06:00 -08:00
Josh Rosen 06f0df6df2 [SPARK-8964] [SQL] Use Exchange to perform shuffle in Limit
This patch changes the implementation of the physical `Limit` operator so that it relies on the `Exchange` operator to perform data movement rather than directly using `ShuffledRDD`. In addition to improving efficiency, this lays the necessary groundwork for further optimization of limit, such as limit pushdown or whole-stage codegen.

At a high-level, this replaces the old physical `Limit` operator with two new operators, `LocalLimit` and `GlobalLimit`. `LocalLimit` performs per-partition limits, while `GlobalLimit` applies the final limit to a single partition; `GlobalLimit`'s declares that its `requiredInputDistribution` is `SinglePartition`, which will cause the planner to use an `Exchange` to perform the appropriate shuffles. Thus, a logical `Limit` appearing in the middle of a query plan will be expanded into `LocalLimit -> Exchange to one partition -> GlobalLimit`.

In the old code, calling `someDataFrame.limit(100).collect()` or `someDataFrame.take(100)` would actually skip the shuffle and use a fast-path which used `executeTake()` in order to avoid computing all partitions in case only a small number of rows were requested. This patch preserves this optimization by treating logical `Limit` operators specially when they appear as the terminal operator in a query plan: if a `Limit` is the final operator, then we will plan a special `CollectLimit` physical operator which implements the old `take()`-based logic.

In order to be able to match on operators only at the root of the query plan, this patch introduces a special `ReturnAnswer` logical operator which functions similar to `BroadcastHint`: this dummy operator is inserted at the root of the optimized logical plan before invoking the physical planner, allowing the planner to pattern-match on it.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #7334 from JoshRosen/remove-copy-in-limit.
2016-02-08 11:38:21 -08:00
Tommy YU 81da3bee66 [SPARK-5865][API DOC] Add doc warnings for methods that return local data structures
rxin srowen
I work out note message for rdd.take function, please help to review.

If it's fine, I can apply to all other function later.

Author: Tommy YU <tummyyu@163.com>

Closes #10874 from Wenpei/spark-5865-add-warning-for-localdatastructure.
2016-02-06 17:29:09 +00:00
Jakob Odersky 6883a5120c [SPARK-13171][CORE] Replace future calls with Future
Trivial search-and-replace to eliminate deprecation warnings in Scala 2.11.
Also works with 2.10

Author: Jakob Odersky <jakob@odersky.com>

Closes #11085 from jodersky/SPARK-13171.
2016-02-05 19:00:12 -08:00
Davies Liu 875f507929 [SPARK-13215] [SQL] remove fallback in codegen
Since we remove the configuration for codegen, we are heavily reply on codegen (also TungstenAggregate require the generated MutableProjection to update UnsafeRow), should remove the fallback, which could make user confusing, see the discussion in SPARK-13116.

Author: Davies Liu <davies@databricks.com>

Closes #11097 from davies/remove_fallback.
2016-02-05 15:07:43 -08:00
Wenchen Fan 1ed354a536 [SPARK-12939][SQL] migrate encoder resolution logic to Analyzer
https://issues.apache.org/jira/browse/SPARK-12939

Now we will catch `ObjectOperator` in `Analyzer` and resolve the `fromRowExpression/deserializer` inside it.  Also update the `MapGroups` and `CoGroup` to pass in `dataAttributes`, so that we can correctly resolve value deserializer(the `child.output` contains both groupking key and values, which may mess things up if they have same-name attribtues). End-to-end tests are added.

follow-ups:

* remove encoders from typed aggregate expression.
* completely remove resolve/bind in `ExpressionEncoder`

Author: Wenchen Fan <wenchen@databricks.com>

Closes #10852 from cloud-fan/bug.
2016-02-05 14:34:12 -08:00
Shixiong Zhu 7b73f1719c [SPARK-13166][SQL] Rename DataStreamReaderWriterSuite to DataFrameReaderWriterSuite
A follow up PR for #11062 because it didn't rename the test suite.

Author: Shixiong Zhu <shixiong@databricks.com>

Closes #11096 from zsxwing/rename.
2016-02-05 13:44:34 -08:00
Reynold Xin 82d84ff2dd [SPARK-13187][SQL] Add boolean/long/double options in DataFrameReader/Writer
This patch adds option function for boolean, long, and double types. This makes it slightly easier for Spark users to specify options without turning them into strings. Using the JSON data source as an example.

Before this patch:
```scala
sqlContext.read.option("primitivesAsString", "true").json("/path/to/json")
```

After this patch:
Before this patch:
```scala
sqlContext.read.option("primitivesAsString", true).json("/path/to/json")
```

Author: Reynold Xin <rxin@databricks.com>

Closes #11072 from rxin/SPARK-13187.
2016-02-04 22:43:44 -08:00
Jakob Odersky 352102ed0b [SPARK-13208][CORE] Replace use of Pairs with Tuple2s
Another trivial deprecation fix for Scala 2.11

Author: Jakob Odersky <jakob@odersky.com>

Closes #11089 from jodersky/SPARK-13208.
2016-02-04 22:22:41 -08:00
gatorsmile e3c75c6398 [SPARK-12850][SQL] Support Bucket Pruning (Predicate Pushdown for Bucketed Tables)
JIRA: https://issues.apache.org/jira/browse/SPARK-12850

This PR is to support bucket pruning when the predicates are `EqualTo`, `EqualNullSafe`, `IsNull`, `In`, and `InSet`.

Like HIVE, in this PR, the bucket pruning works when the bucketing key has one and only one column.

So far, I do not find a way to verify how many buckets are actually scanned. However, I did verify it when doing the debug. Could you provide a suggestion how to do it properly? Thank you! cloud-fan yhuai rxin marmbrus

BTW, we can add more cases to support complex predicate including `Or` and `And`. Please let me know if I should do it in this PR.

Maybe we also need to add test cases to verify if bucket pruning works well for each data type.

Author: gatorsmile <gatorsmile@gmail.com>

Closes #10942 from gatorsmile/pruningBuckets.
2016-02-04 18:37:58 -08:00
Andrew Or bd38dd6f75 [SPARK-13079][SQL] InMemoryCatalog follow-ups
This patch incorporates review feedback from #11069, which is already merged.

Author: Andrew Or <andrew@databricks.com>

Closes #11080 from andrewor14/catalog-follow-ups.
2016-02-04 12:20:18 -08:00
Josh Rosen 33212cb9a1 [SPARK-13168][SQL] Collapse adjacent repartition operators
Spark SQL should collapse adjacent `Repartition` operators and only keep the last one.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #11064 from JoshRosen/collapse-repartition.
2016-02-04 11:08:50 -08:00
Reynold Xin dee801adb7 [SPARK-12828][SQL] Natural join follow-up
This is a small addendum to #10762 to make the code more robust again future changes.

Author: Reynold Xin <rxin@databricks.com>

Closes #11070 from rxin/SPARK-12828-natural-join.
2016-02-03 23:43:48 -08:00
Daoyuan Wang 0f81318ae2 [SPARK-12828][SQL] add natural join support
Jira:
https://issues.apache.org/jira/browse/SPARK-12828

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

Closes #10762 from adrian-wang/naturaljoin.
2016-02-03 21:05:53 -08:00
Andrew Or a64831124c [SPARK-13079][SQL] Extend and implement InMemoryCatalog
This is a step towards consolidating `SQLContext` and `HiveContext`.

This patch extends the existing Catalog API added in #10982 to include methods for handling table partitions. In particular, a partition is identified by `PartitionSpec`, which is just a `Map[String, String]`. The Catalog is still not used by anything yet, but its API is now more or less complete and an implementation is fully tested.

About 200 lines are test code.

Author: Andrew Or <andrew@databricks.com>

Closes #11069 from andrewor14/catalog.
2016-02-03 19:32:41 -08:00
Holden Karau a8e2ba776b [SPARK-13152][CORE] Fix task metrics deprecation warning
Make an internal non-deprecated version of incBytesRead and incRecordsRead so we don't have unecessary deprecation warnings in our build.

Right now incBytesRead and incRecordsRead are marked as deprecated and for internal use only. We should make private[spark] versions which are not deprecated and switch to those internally so as to not clutter up the warning messages when building.

cc andrewor14 who did the initial deprecation

Author: Holden Karau <holden@us.ibm.com>

Closes #11056 from holdenk/SPARK-13152-fix-task-metrics-deprecation-warnings.
2016-02-03 17:43:14 -08:00
Davies Liu de0914522f [SPARK-13131] [SQL] Use best and average time in benchmark
Best time is stabler than average time, also added a column for nano seconds per row (which could be used to estimate contributions of each components in a query).

Having best time and average time together for more information (we can see kind of variance).

rate, time per row and relative are all calculated using best time.

The result looks like this:
```
Intel(R) Core(TM) i7-4558U CPU  2.80GHz
rang/filter/sum:                    Best/Avg Time(ms)    Rate(M/s)   Per Row(ns)   Relative
-------------------------------------------------------------------------------------------
rang/filter/sum codegen=false          14332 / 16646         36.0          27.8       1.0X
rang/filter/sum codegen=true              845 /  940        620.0           1.6      17.0X
```

Author: Davies Liu <davies@databricks.com>

Closes #11018 from davies/gen_bench.
2016-02-03 17:07:27 -08:00
Reynold Xin 915a75398e [SPARK-13166][SQL] Remove DataStreamReader/Writer
They seem redundant and we can simply use DataFrameReader/Writer. The new usage looks like:

```scala
val df = sqlContext.read.stream("...")
val handle = df.write.stream("...")
handle.stop()
```

Author: Reynold Xin <rxin@databricks.com>

Closes #11062 from rxin/SPARK-13166.
2016-02-03 16:10:11 -08:00
Herman van Hovell 9dd2741ebe [SPARK-13157] [SQL] Support any kind of input for SQL commands.
The ```SparkSqlLexer``` currently swallows characters which have not been defined in the grammar. This causes problems with SQL commands, such as: ```add jar file:///tmp/ab/TestUDTF.jar```. In this example the `````` is swallowed.

This PR adds an extra Lexer rule to handle such input, and makes a tiny modification to the ```ASTNode```.

cc davies liancheng

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

Closes #11052 from hvanhovell/SPARK-13157.
2016-02-03 12:31:30 -08:00
Davies Liu c4feec26eb [SPARK-12798] [SQL] generated BroadcastHashJoin
A row from stream side could match multiple rows on build side, the loop for these matched rows should not be interrupted when emitting a row, so we buffer the output rows in a linked list, check the termination condition on producer loop (for example, Range or Aggregate).

Author: Davies Liu <davies@databricks.com>

Closes #10989 from davies/gen_join.
2016-02-03 10:38:53 -08:00
Sameer Agarwal 138c300f97 [SPARK-12957][SQL] Initial support for constraint propagation in SparkSQL
Based on the semantics of a query, we can derive a number of data constraints on output of each (logical or physical) operator. For instance, if a filter defines `‘a > 10`, we know that the output data of this filter satisfies 2 constraints:

1. `‘a > 10`
2. `isNotNull(‘a)`

This PR proposes a possible way of keeping track of these constraints and propagating them in the logical plan, which can then help us build more advanced optimizations (such as pruning redundant filters, optimizing joins, among others). We define constraints as a set of (implicitly conjunctive) expressions. For e.g., if a filter operator has constraints = `Set(‘a > 10, ‘b < 100)`, it’s implied that the outputs satisfy both individual constraints (i.e., `‘a > 10` AND `‘b < 100`).

Design Document: https://docs.google.com/a/databricks.com/document/d/1WQRgDurUBV9Y6CWOBS75PQIqJwT-6WftVa18xzm7nCo/edit?usp=sharing

Author: Sameer Agarwal <sameer@databricks.com>

Closes #10844 from sameeragarwal/constraints.
2016-02-02 22:22:50 -08:00
Davies Liu e86f8f63bf [SPARK-13147] [SQL] improve readability of generated code
1. try to avoid the suffix (unique id)
2. remove the comment if there is no code generated.
3. re-arrange the order of functions
4. trop the new line for inlined blocks.

Author: Davies Liu <davies@databricks.com>

Closes #11032 from davies/better_suffix.
2016-02-02 22:13:10 -08:00
Davies Liu 99a6e3c1e8 [SPARK-12951] [SQL] support spilling in generated aggregate
This PR add spilling support for generated TungstenAggregate.

If spilling happened, it's not that bad to do the iterator based sort-merge-aggregate (not generated).

The changes will be covered by TungstenAggregationQueryWithControlledFallbackSuite

Author: Davies Liu <davies@databricks.com>

Closes #10998 from davies/gen_spilling.
2016-02-02 19:47:44 -08:00
Nong Li 21112e8a14 [SPARK-12992] [SQL] Update parquet reader to support more types when decoding to ColumnarBatch.
This patch implements support for more types when doing the vectorized decode. There are
a few more types remaining but they should be very straightforward after this. This code
has a few copy and paste pieces but they are difficult to eliminate due to performance
considerations.

Specifically, this patch adds support for:
  - String, Long, Byte types
  - Dictionary encoding for those types.

Author: Nong Li <nong@databricks.com>

Closes #10908 from nongli/spark-12992.
2016-02-02 16:33:21 -08:00
Wenchen Fan 672032d0ab [SPARK-13020][SQL][TEST] fix random generator for map type
when we generate map, we first randomly pick a length, then create a seq of key value pair with the expected length, and finally call `toMap`. However, `toMap` will remove all duplicated keys, which makes the actual map size much less than we expected.

This PR fixes this problem by put keys in a set first, to guarantee we have enough keys to build a map with expected length.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #10930 from cloud-fan/random-generator.
2016-02-03 08:26:35 +08:00
Davies Liu 6de6a97728 [SPARK-13150] [SQL] disable two flaky tests
Author: Davies Liu <davies@databricks.com>

Closes #11037 from davies/disable_flaky.
2016-02-02 16:24:31 -08:00
Kevin (Sangwoo) Kim b377b03531 [DOCS] Update StructType.scala
The example will throw error like
<console>:20: error: not found: value StructType

Need to add this line:
import org.apache.spark.sql.types._

Author: Kevin (Sangwoo) Kim <sangwookim.me@gmail.com>

Closes #10141 from swkimme/patch-1.
2016-02-02 13:24:21 -08:00
Davies Liu be5dd881f1 [SPARK-12913] [SQL] Improve performance of stat functions
As benchmarked and discussed here: https://github.com/apache/spark/pull/10786/files#r50038294, benefits from codegen, the declarative aggregate function could be much faster than imperative one.

Author: Davies Liu <davies@databricks.com>

Closes #10960 from davies/stddev.
2016-02-02 11:50:14 -08:00
Reynold Xin 7f6e3ec79b [SPARK-13138][SQL] Add "logical" package prefix for ddl.scala
ddl.scala is defined in the execution package, and yet its reference of "UnaryNode" and "Command" are logical. This was fairly confusing when I was trying to understand the ddl code.

Author: Reynold Xin <rxin@databricks.com>

Closes #11021 from rxin/SPARK-13138.
2016-02-02 11:29:20 -08:00
Daoyuan Wang 358300c795 [SPARK-13056][SQL] map column would throw NPE if value is null
Jira:
https://issues.apache.org/jira/browse/SPARK-13056

Create a map like
{ "a": "somestring", "b": null}
Query like
SELECT col["b"] FROM t1;
NPE would be thrown.

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

Closes #10964 from adrian-wang/npewriter.
2016-02-02 11:09:40 -08:00
hyukjinkwon b93830126c [SPARK-13114][SQL] Add a test for tokens more than the fields in schema
https://issues.apache.org/jira/browse/SPARK-13114

This PR adds a test for tokens more than the fields in schema.

Author: hyukjinkwon <gurwls223@gmail.com>

Closes #11020 from HyukjinKwon/SPARK-13114.
2016-02-02 10:41:06 -08:00
Michael Armbrust 29d92181d0 [SPARK-13094][SQL] Add encoders for seq/array of primitives
Author: Michael Armbrust <michael@databricks.com>

Closes #11014 from marmbrus/seqEncoders.
2016-02-02 10:15:40 -08:00
Michael Armbrust 12a20c144f [SPARK-10820][SQL] Support for the continuous execution of structured queries
This is a follow up to 9aadcffabd that extends Spark SQL to allow users to _repeatedly_ optimize and execute structured queries.  A `ContinuousQuery` can be expressed using SQL, DataFrames or Datasets.  The purpose of this PR is only to add some initial infrastructure which will be extended in subsequent PRs.

## User-facing API

- `sqlContext.streamFrom` and `df.streamTo` return builder objects that are analogous to the `read/write` interfaces already available to executing queries in a batch-oriented fashion.
- `ContinuousQuery` provides an interface for interacting with a query that is currently executing in the background.

## Internal Interfaces
 - `StreamExecution` - executes streaming queries in micro-batches

The following are currently internal, but public APIs will be provided in a future release.
 - `Source` - an interface for providers of continually arriving data.  A source must have a notion of an `Offset` that monotonically tracks what data has arrived.  For fault tolerance, a source must be able to replay data given a start offset.
 - `Sink` - an interface that accepts the results of a continuously executing query.  Also responsible for tracking the offset that should be resumed from in the case of a failure.

## Testing
 - `MemoryStream` and `MemorySink` - simple implementations of source and sink that keep all data in memory and have methods for simulating durability failures
 - `StreamTest` - a framework for performing actions and checking invariants on a continuous query

Author: Michael Armbrust <michael@databricks.com>
Author: Tathagata Das <tathagata.das1565@gmail.com>
Author: Josh Rosen <rosenville@gmail.com>

Closes #11006 from marmbrus/structured-streaming.
2016-02-02 10:13:54 -08:00
Michael Armbrust 22ba21348b [SPARK-13087][SQL] Fix group by function for sort based aggregation
It is not valid to call `toAttribute` on a `NamedExpression` unless we know for sure that the child produced that `NamedExpression`.  The current code worked fine when the grouping expressions were simple, but when they were a derived value this blew up at execution time.

Author: Michael Armbrust <michael@databricks.com>

Closes #11013 from marmbrus/groupByFunction-master.
2016-02-02 16:48:59 +08:00
Reynold Xin 0fff5c6e63 [SPARK-13130][SQL] Make codegen variable names easier to read
1. Use lower case
2. Change long prefixes to something shorter (in this case I am changing only one: TungstenAggregate -> agg).

Author: Reynold Xin <rxin@databricks.com>

Closes #11017 from rxin/SPARK-13130.
2016-02-01 23:08:11 -08:00
Reynold Xin be7a2fc071 [SPARK-13078][SQL] API and test cases for internal catalog
This pull request creates an internal catalog API. The creation of this API is the first step towards consolidating SQLContext and HiveContext. I envision we will have two different implementations in Spark 2.0: (1) a simple in-memory implementation, and (2) an implementation based on the current HiveClient (ClientWrapper).

I took a look at what Hive's internal metastore interface/implementation, and then created this API based on it. I believe this is the minimal set needed in order to achieve all the needed functionality.

Author: Reynold Xin <rxin@databricks.com>

Closes #10982 from rxin/SPARK-13078.
2016-02-01 14:11:52 -08:00
Jacek Laskowski a2973fed30 Fix for [SPARK-12854][SQL] Implement complex types support in Columna…
…rBatch

Fixes build for Scala 2.11.

Author: Jacek Laskowski <jacek@japila.pl>

Closes #10946 from jaceklaskowski/SPARK-12854-fix.
2016-02-01 13:57:48 -08:00
Nong Li 064b029c6a [SPARK-13043][SQL] Implement remaining catalyst types in ColumnarBatch.
This includes: float, boolean, short, decimal and calendar interval.

Decimal is mapped to long or byte array depending on the size and calendar
interval is mapped to a struct of int and long.

The only remaining type is map. The schema mapping is straightforward but
we might want to revisit how we deal with this in the rest of the execution
engine.

Author: Nong Li <nong@databricks.com>

Closes #10961 from nongli/spark-13043.
2016-02-01 13:56:14 -08:00
gatorsmile 8f26eb5ef6 [SPARK-12705][SPARK-10777][SQL] Analyzer Rule ResolveSortReferences
JIRA: https://issues.apache.org/jira/browse/SPARK-12705

**Scope:**
This PR is a general fix for sorting reference resolution when the child's `outputSet` does not have the order-by attributes (called, *missing attributes*):
  - UnaryNode support is limited to `Project`, `Window`, `Aggregate`, `Distinct`, `Filter`, `RepartitionByExpression`.
  - We will not try to resolve the missing references inside a subquery, unless the outputSet of this subquery contains it.

**General Reference Resolution Rules:**
  - Jump over the nodes with the following types: `Distinct`, `Filter`, `RepartitionByExpression`. Do not need to add missing attributes. The reason is their `outputSet` is decided by their `inputSet`, which is the `outputSet` of their children.
  - Group-by expressions in `Aggregate`: missing order-by attributes are not allowed to be added into group-by expressions since it will change the query result. Thus, in RDBMS, it is not allowed.
  - Aggregate expressions in `Aggregate`: if the group-by expressions in `Aggregate` contains the missing attributes but aggregate expressions do not have it, just add them into the aggregate expressions. This can resolve the analysisExceptions thrown by the three TCPDS queries.
  - `Project` and `Window` are special. We just need to add the missing attributes to their `projectList`.

**Implementation:**
  1. Traverse the whole tree in a pre-order manner to find all the resolvable missing order-by attributes.
  2. Traverse the whole tree in a post-order manner to add the found missing order-by attributes to the node if their `inputSet` contains the attributes.
  3. If the origins of the missing order-by attributes are different nodes, each pass only resolves the missing attributes that are from the same node.

**Risk:**
Low. This rule will be trigger iff ```!s.resolved && child.resolved``` is true. Thus, very few cases are affected.

Author: gatorsmile <gatorsmile@gmail.com>

Closes #10678 from gatorsmile/sortWindows.
2016-02-01 11:57:13 -08:00
gatorsmile 33c8a490f7 [SPARK-12989][SQL] Delaying Alias Cleanup after ExtractWindowExpressions
JIRA: https://issues.apache.org/jira/browse/SPARK-12989

In the rule `ExtractWindowExpressions`, we simply replace alias by the corresponding attribute. However, this will cause an issue exposed by the following case:

```scala
val data = Seq(("a", "b", "c", 3), ("c", "b", "a", 3)).toDF("A", "B", "C", "num")
  .withColumn("Data", struct("A", "B", "C"))
  .drop("A")
  .drop("B")
  .drop("C")

val winSpec = Window.partitionBy("Data.A", "Data.B").orderBy($"num".desc)
data.select($"*", max("num").over(winSpec) as "max").explain(true)
```
In this case, both `Data.A` and `Data.B` are `alias` in `WindowSpecDefinition`. If we replace these alias expression by their alias names, we are unable to know what they are since they will not be put in `missingExpr` too.

Author: gatorsmile <gatorsmile@gmail.com>
Author: xiaoli <lixiao1983@gmail.com>
Author: Xiao Li <xiaoli@Xiaos-MacBook-Pro.local>

Closes #10963 from gatorsmile/seletStarAfterColDrop.
2016-02-01 11:22:02 -08:00
Wenchen Fan c1da4d421a [SPARK-13093] [SQL] improve null check in nullSafeCodeGen for unary, binary and ternary expression
The current implementation is sub-optimal:

* If an expression is always nullable, e.g. `Unhex`, we can still remove null check for children if they are not nullable.
* If an expression has some non-nullable children, we can still remove null check for these children and keep null check for others.

This PR improves this by making the null check elimination more fine-grained.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #10987 from cloud-fan/null-check.
2016-01-31 22:43:03 -08:00
Herman van Hovell 5a8b978fab [SPARK-13049] Add First/last with ignore nulls to functions.scala
This PR adds the ability to specify the ```ignoreNulls``` option to the functions dsl, e.g:
```df.select($"id", last($"value", ignoreNulls = true).over(Window.partitionBy($"id").orderBy($"other"))```

This PR is some where between a bug fix (see the JIRA) and a new feature. I am not sure if we should backport to 1.6.

cc yhuai

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

Closes #10957 from hvanhovell/SPARK-13049.
2016-01-31 13:56:13 -08:00
Liang-Chi Hsieh 0e6d92d042 [SPARK-12689][SQL] Migrate DDL parsing to the newly absorbed parser
JIRA: https://issues.apache.org/jira/browse/SPARK-12689

DDLParser processes three commands: createTable, describeTable and refreshTable.
This patch migrates the three commands to newly absorbed parser.

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

Closes #10723 from viirya/migrate-ddl-describe.
2016-01-30 23:05:29 -08:00
Cheng Lian a1303de0a0 [SPARK-13070][SQL] Better error message when Parquet schema merging fails
Make sure we throw better error messages when Parquet schema merging fails.

Author: Cheng Lian <lian@databricks.com>
Author: Liang-Chi Hsieh <viirya@gmail.com>

Closes #10979 from viirya/schema-merging-failure-message.
2016-01-30 23:02:49 -08:00
wangyang de28371998 [SPARK-13100][SQL] improving the performance of stringToDate method in DateTimeUtils.scala
In jdk1.7 TimeZone.getTimeZone() is synchronized, so use an instance variable to hold an GMT TimeZone object instead of instantiate it every time.

Author: wangyang <wangyang@haizhi.com>

Closes #10994 from wangyang1992/datetimeUtil.
2016-01-30 15:20:57 -08:00
Josh Rosen 289373b28c [SPARK-6363][BUILD] Make Scala 2.11 the default Scala version
This patch changes Spark's build to make Scala 2.11 the default Scala version. To be clear, this does not mean that Spark will stop supporting Scala 2.10: users will still be able to compile Spark for Scala 2.10 by following the instructions on the "Building Spark" page; however, it does mean that Scala 2.11 will be the default Scala version used by our CI builds (including pull request builds).

The Scala 2.11 compiler is faster than 2.10, so I think we'll be able to look forward to a slight speedup in our CI builds (it looks like it's about 2X faster for the Maven compile-only builds, for instance).

After this patch is merged, I'll update Jenkins to add new compile-only jobs to ensure that Scala 2.10 compilation doesn't break.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #10608 from JoshRosen/SPARK-6363.
2016-01-30 00:20:28 -08:00
Wenchen Fan dab246f7e4 [SPARK-13098] [SQL] remove GenericInternalRowWithSchema
This class is only used for serialization of Python DataFrame. However, we don't require internal row there, so `GenericRowWithSchema` can also do the job.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #10992 from cloud-fan/python.
2016-01-29 23:37:51 -08:00
Davies Liu e6a02c66d5 [SPARK-12914] [SQL] generate aggregation with grouping keys
This PR add support for grouping keys for generated TungstenAggregate.

Spilling and performance improvements for BytesToBytesMap will be done by followup PR.

Author: Davies Liu <davies@databricks.com>

Closes #10855 from davies/gen_keys.
2016-01-29 20:16:11 -08:00
Andrew Or 12252d1da9 [SPARK-13071] Coalescing HadoopRDD overwrites existing input metrics
This issue is causing tests to fail consistently in master with Hadoop 2.6 / 2.7. This is because for Hadoop 2.5+ we overwrite existing values of `InputMetrics#bytesRead` in each call to `HadoopRDD#compute`. In the case of coalesce, e.g.
```
sc.textFile(..., 4).coalesce(2).count()
```
we will call `compute` multiple times in the same task, overwriting `bytesRead` values from previous calls to `compute`.

For a regression test, see `InputOutputMetricsSuite.input metrics for old hadoop with coalesce`. I did not add a new regression test because it's impossible without significant refactoring; there's a lot of existing duplicate code in this corner of Spark.

This was caused by #10835.

Author: Andrew Or <andrew@databricks.com>

Closes #10973 from andrewor14/fix-input-metrics-coalesce.
2016-01-29 18:03:08 -08:00
Reynold Xin 2cbc412821 [SPARK-13076][SQL] Rename ClientInterface -> HiveClient
And ClientWrapper -> HiveClientImpl.

I have some followup pull requests to introduce a new internal catalog, and I think this new naming reflects better the functionality of the two classes.

Author: Reynold Xin <rxin@databricks.com>

Closes #10981 from rxin/SPARK-13076.
2016-01-29 16:57:34 -08:00
Andrew Or e38b0baa38 [SPARK-13055] SQLHistoryListener throws ClassCastException
This is an existing issue uncovered recently by #10835. The reason for the exception was because the `SQLHistoryListener` gets all sorts of accumulators, not just the ones that represent SQL metrics. For example, the listener gets the `internal.metrics.shuffleRead.remoteBlocksFetched`, which is an Int, then it proceeds to cast the Int to a Long, which fails.

The fix is to mark accumulators representing SQL metrics using some internal metadata. Then we can identify which ones are SQL metrics and only process those in the `SQLHistoryListener`.

Author: Andrew Or <andrew@databricks.com>

Closes #10971 from andrewor14/fix-sql-history.
2016-01-29 13:45:03 -08:00
gatorsmile 5f686cc8b7 [SPARK-12656] [SQL] Implement Intersect with Left-semi Join
Our current Intersect physical operator simply delegates to RDD.intersect. We should remove the Intersect physical operator and simply transform a logical intersect into a semi-join with distinct. This way, we can take advantage of all the benefits of join implementations (e.g. managed memory, code generation, broadcast joins).

After a search, I found one of the mainstream RDBMS did the same. In their query explain, Intersect is replaced by Left-semi Join. Left-semi Join could help outer-join elimination in Optimizer, as shown in the PR: https://github.com/apache/spark/pull/10566

Author: gatorsmile <gatorsmile@gmail.com>
Author: xiaoli <lixiao1983@gmail.com>
Author: Xiao Li <xiaoli@Xiaos-MacBook-Pro.local>

Closes #10630 from gatorsmile/IntersectBySemiJoin.
2016-01-29 11:22:12 -08:00
Wenchen Fan c5f745ede0 [SPARK-13072] [SQL] simplify and improve murmur3 hash expression codegen
simplify(remove several unnecessary local variables) the generated code of hash expression, and avoid null check if possible.

generated code comparison for `hash(int, double, string, array<string>)`:
**before:**
```
  public UnsafeRow apply(InternalRow i) {
    /* hash(input[0, int],input[1, double],input[2, string],input[3, array<int>],42) */
    int value1 = 42;
    /* input[0, int] */
    int value3 = i.getInt(0);
    if (!false) {
      value1 = org.apache.spark.unsafe.hash.Murmur3_x86_32.hashInt(value3, value1);
    }
    /* input[1, double] */
    double value5 = i.getDouble(1);
    if (!false) {
      value1 = org.apache.spark.unsafe.hash.Murmur3_x86_32.hashLong(Double.doubleToLongBits(value5), value1);
    }
    /* input[2, string] */
    boolean isNull6 = i.isNullAt(2);
    UTF8String value7 = isNull6 ? null : (i.getUTF8String(2));
    if (!isNull6) {
      value1 = org.apache.spark.unsafe.hash.Murmur3_x86_32.hashUnsafeBytes(value7.getBaseObject(), value7.getBaseOffset(), value7.numBytes(), value1);
    }
    /* input[3, array<int>] */
    boolean isNull8 = i.isNullAt(3);
    ArrayData value9 = isNull8 ? null : (i.getArray(3));
    if (!isNull8) {
      int result10 = value1;
      for (int index11 = 0; index11 < value9.numElements(); index11++) {
        if (!value9.isNullAt(index11)) {
          final int element12 = value9.getInt(index11);
          result10 = org.apache.spark.unsafe.hash.Murmur3_x86_32.hashInt(element12, result10);
        }
      }
      value1 = result10;
    }
  }
```
**after:**
```
  public UnsafeRow apply(InternalRow i) {
    /* hash(input[0, int],input[1, double],input[2, string],input[3, array<int>],42) */
    int value1 = 42;
    /* input[0, int] */
    int value3 = i.getInt(0);
    value1 = org.apache.spark.unsafe.hash.Murmur3_x86_32.hashInt(value3, value1);
    /* input[1, double] */
    double value5 = i.getDouble(1);
    value1 = org.apache.spark.unsafe.hash.Murmur3_x86_32.hashLong(Double.doubleToLongBits(value5), value1);
    /* input[2, string] */
    boolean isNull6 = i.isNullAt(2);
    UTF8String value7 = isNull6 ? null : (i.getUTF8String(2));

    if (!isNull6) {
      value1 = org.apache.spark.unsafe.hash.Murmur3_x86_32.hashUnsafeBytes(value7.getBaseObject(), value7.getBaseOffset(), value7.numBytes(), value1);
    }

    /* input[3, array<int>] */
    boolean isNull8 = i.isNullAt(3);
    ArrayData value9 = isNull8 ? null : (i.getArray(3));
    if (!isNull8) {
      for (int index10 = 0; index10 < value9.numElements(); index10++) {
        final int element11 = value9.getInt(index10);
        value1 = org.apache.spark.unsafe.hash.Murmur3_x86_32.hashInt(element11, value1);
      }
    }

    rowWriter14.write(0, value1);
    return result12;
  }
```

Author: Wenchen Fan <wenchen@databricks.com>

Closes #10974 from cloud-fan/codegen.
2016-01-29 10:24:23 -08:00
Davies Liu 55561e7693 [SPARK-13031][SQL] cleanup codegen and improve test coverage
1. enable whole stage codegen during tests even there is only one operator supports that.
2. split doProduce() into two APIs: upstream() and doProduce()
3. generate prefix for fresh names of each operator
4. pass UnsafeRow to parent directly (avoid getters and create UnsafeRow again)
5. fix bugs and tests.

This PR re-open #10944 and fix the bug.

Author: Davies Liu <davies@databricks.com>

Closes #10977 from davies/gen_refactor.
2016-01-29 01:59:59 -08:00
Wenchen Fan 721ced28b5 [SPARK-13067] [SQL] workaround for a weird scala reflection problem
A simple workaround to avoid getting parameter types when convert a
logical plan to json.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #10970 from cloud-fan/reflection.
2016-01-28 22:43:03 -08:00
Liang-Chi Hsieh 66449b8dcd [SPARK-12968][SQL] Implement command to set current database
JIRA: https://issues.apache.org/jira/browse/SPARK-12968

Implement command to set current database.

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

Closes #10916 from viirya/ddl-use-database.
2016-01-28 22:20:52 -08:00
Davies Liu b9dfdcc63b Revert "[SPARK-13031] [SQL] cleanup codegen and improve test coverage"
This reverts commit cc18a71992.
2016-01-28 17:01:12 -08:00
Liang-Chi Hsieh 4637fc08a3 [SPARK-11955][SQL] Mark optional fields in merging schema for safely pushdowning filters in Parquet
JIRA: https://issues.apache.org/jira/browse/SPARK-11955

Currently we simply skip pushdowning filters in parquet if we enable schema merging.

However, we can actually mark particular fields in merging schema for safely pushdowning filters in parquet.

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

Closes #9940 from viirya/safe-pushdown-parquet-filters.
2016-01-28 16:25:21 -08:00
Brandon Bradley 3a40c0e575 [SPARK-12749][SQL] add json option to parse floating-point types as DecimalType
I tried to add this via `USE_BIG_DECIMAL_FOR_FLOATS` option from Jackson with no success.

Added test for non-complex types. Should I add a test for complex types?

Author: Brandon Bradley <bradleytastic@gmail.com>

Closes #10936 from blbradley/spark-12749.
2016-01-28 15:25:57 -08:00
Davies Liu cc18a71992 [SPARK-13031] [SQL] cleanup codegen and improve test coverage
1. enable whole stage codegen during tests even there is only one operator supports that.
2. split doProduce() into two APIs: upstream() and doProduce()
3. generate prefix for fresh names of each operator
4. pass UnsafeRow to parent directly (avoid getters and create UnsafeRow again)
5. fix bugs and tests.

Author: Davies Liu <davies@databricks.com>

Closes #10944 from davies/gen_refactor.
2016-01-28 13:51:55 -08:00
Tejas Patil 676803963f [SPARK-12926][SQL] SQLContext to display warning message when non-sql configs are being set
Users unknowingly try to set core Spark configs in SQLContext but later realise that it didn't work. eg. sqlContext.sql("SET spark.shuffle.memoryFraction=0.4"). This PR adds a warning message when such operations are done.

Author: Tejas Patil <tejasp@fb.com>

Closes #10849 from tejasapatil/SPARK-12926.
2016-01-28 13:45:28 -08:00
Cheng Lian 415d0a859b [SPARK-12818][SQL] Specialized integral and string types for Count-min Sketch
This PR is a follow-up of #10911. It adds specialized update methods for `CountMinSketch` so that we can avoid doing internal/external row format conversion in `DataFrame.countMinSketch()`.

Author: Cheng Lian <lian@databricks.com>

Closes #10968 from liancheng/cms-specialized.
2016-01-28 12:26:03 -08:00
Nong Li 4a09123212 [SPARK-13045] [SQL] Remove ColumnVector.Struct in favor of ColumnarBatch.Row
These two classes became identical as the implementation progressed.

Author: Nong Li <nong@databricks.com>

Closes #10952 from nongli/spark-13045.
2016-01-27 15:35:31 -08:00
Herman van Hovell ef96cd3c52 [SPARK-12865][SPARK-12866][SQL] Migrate SparkSQLParser/ExtendedHiveQlParser commands to new Parser
This PR moves all the functionality provided by the SparkSQLParser/ExtendedHiveQlParser to the new Parser hierarchy (SparkQl/HiveQl). This also improves the current SET command parsing: the current implementation swallows ```set role ...``` and ```set autocommit ...``` commands, this PR respects these commands (and passes them on to Hive).

This PR and https://github.com/apache/spark/pull/10723 end the use of Parser-Combinator parsers for SQL parsing. As a result we can also remove the ```AbstractSQLParser``` in Catalyst.

The PR is marked WIP as long as it doesn't pass all tests.

cc rxin viirya winningsix (this touches https://github.com/apache/spark/pull/10144)

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

Closes #10905 from hvanhovell/SPARK-12866.
2016-01-27 13:45:00 -08:00
Wenchen Fan 680afabe78 [SPARK-12938][SQL] DataFrame API for Bloom filter
This PR integrates Bloom filter from spark-sketch into DataFrame. This version resorts to RDD.aggregate for building the filter. A more performant UDAF version can be built in future follow-up PRs.

This PR also add 2 specify `put` version(`putBinary` and `putLong`) into `BloomFilter`, which makes it easier to build a Bloom filter over a `DataFrame`.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #10937 from cloud-fan/bloom-filter.
2016-01-27 13:29:09 -08:00
Andrew Or 87abcf7df9 [SPARK-12895][SPARK-12896] Migrate TaskMetrics to accumulators
The high level idea is that instead of having the executors send both accumulator updates and TaskMetrics, we should have them send only accumulator updates. This eliminates the need to maintain both code paths since one can be implemented in terms of the other. This effort is split into two parts:

**SPARK-12895: Implement TaskMetrics using accumulators.** TaskMetrics is basically just a bunch of accumulable fields. This patch makes TaskMetrics a syntactic wrapper around a collection of accumulators so we don't need to send TaskMetrics from the executors to the driver.

**SPARK-12896: Send only accumulator updates to the driver.** Now that TaskMetrics are expressed in terms of accumulators, we can capture all TaskMetrics values if we just send accumulator updates from the executors to the driver. This completes the parent issue SPARK-10620.

While an effort has been made to preserve as much of the public API as possible, there were a few known breaking DeveloperApi changes that would be very awkward to maintain. I will gather the full list shortly and post it here.

Note: This was once part of #10717. This patch is split out into its own patch from there to make it easier for others to review. Other smaller pieces of already been merged into master.

Author: Andrew Or <andrew@databricks.com>

Closes #10835 from andrewor14/task-metrics-use-accums.
2016-01-27 11:15:48 -08:00
Jason Lee edd473751b [SPARK-10847][SQL][PYSPARK] Pyspark - DataFrame - Optional Metadata with None triggers cryptic failure
The error message is now changed from "Do not support type class scala.Tuple2." to "Do not support type class org.json4s.JsonAST$JNull$" to be more informative about what is not supported. Also, StructType metadata now handles JNull correctly, i.e., {'a': None}. test_metadata_null is added to tests.py to show the fix works.

Author: Jason Lee <cjlee@us.ibm.com>

Closes #8969 from jasoncl/SPARK-10847.
2016-01-27 09:55:10 -08:00
Cheng Lian 58f5d8c1da [SPARK-12728][SQL] Integrates SQL generation with native view
This PR is a follow-up of PR #10541. It integrates the newly introduced SQL generation feature with native view to make native view canonical.

In this PR, a new SQL option `spark.sql.nativeView.canonical` is added.  When this option and `spark.sql.nativeView` are both `true`, Spark SQL tries to handle `CREATE VIEW` DDL statements using SQL query strings generated from view definition logical plans. If we failed to map the plan to SQL, we fallback to the original native view approach.

One important issue this PR fixes is that, now we can use CTE when defining a view.  Originally, when native view is turned on, we wrap the view definition text with an extra `SELECT`.  However, HiveQL parser doesn't allow CTE appearing as a subquery.  Namely, something like this is disallowed:

```sql
SELECT n
FROM (
  WITH w AS (SELECT 1 AS n)
  SELECT * FROM w
) v
```

This PR fixes this issue because the extra `SELECT` is no longer needed (also, CTE expressions are inlined as subqueries during analysis phase, thus there won't be CTE expressions in the generated SQL query string).

Author: Cheng Lian <lian@databricks.com>
Author: Yin Huai <yhuai@databricks.com>

Closes #10733 from liancheng/spark-12728.integrate-sql-gen-with-native-view.
2016-01-26 20:30:13 -08:00
Cheng Lian ce38a35b76 [SPARK-12935][SQL] DataFrame API for Count-Min Sketch
This PR integrates Count-Min Sketch from spark-sketch into DataFrame. This version resorts to `RDD.aggregate` for building the sketch. A more performant UDAF version can be built in future follow-up PRs.

Author: Cheng Lian <lian@databricks.com>

Closes #10911 from liancheng/cms-df-api.
2016-01-26 20:12:34 -08:00
Nong Li 555127387a [SPARK-12854][SQL] Implement complex types support in ColumnarBatch
This patch adds support for complex types for ColumnarBatch. ColumnarBatch supports structs
and arrays. There is a simple mapping between the richer catalyst types to these two. Strings
are treated as an array of bytes.

ColumnarBatch will contain a column for each node of the schema. Non-complex schemas consists
of just leaf nodes. Structs represent an internal node with one child for each field. Arrays
are internal nodes with one child. Structs just contain nullability. Arrays contain offsets
and lengths into the child array. This structure is able to handle arbitrary nesting. It has
the key property that we maintain columnar throughout and that primitive types are only stored
in the leaf nodes and contiguous across rows. For example, if the schema is
```
array<array<int>>
```
There are three columns in the schema. The internal nodes each have one children. The leaf node contains all the int data stored consecutively.

As part of this, this patch adds append APIs in addition to the Put APIs (e.g. putLong(rowid, v)
vs appendLong(v)). These APIs are necessary when the batch contains variable length elements.
The vectors are not fixed length and will grow as necessary. This should make the usage a lot
simpler for the writer.

Author: Nong Li <nong@databricks.com>

Closes #10820 from nongli/spark-12854.
2016-01-26 17:34:01 -08:00
Cheng Lian 83507fea9f [SQL] Minor Scaladoc format fix
Otherwise the `^` character is always marked as error in IntelliJ since it represents an unclosed superscript markup tag.

Author: Cheng Lian <lian@databricks.com>

Closes #10926 from liancheng/agg-doc-fix.
2016-01-26 14:29:29 -08:00
Sameer Agarwal 08c781ca67 [SPARK-12682][SQL] Add support for (optionally) not storing tables in hive metadata format
This PR adds a new table option (`skip_hive_metadata`) that'd allow the user to skip storing the table metadata in hive metadata format. While this could be useful in general, the specific use-case for this change is that Hive doesn't handle wide schemas well (see https://issues.apache.org/jira/browse/SPARK-12682 and https://issues.apache.org/jira/browse/SPARK-6024) which in turn prevents such tables from being queried in SparkSQL.

Author: Sameer Agarwal <sameer@databricks.com>

Closes #10826 from sameeragarwal/skip-hive-metadata.
2016-01-26 07:50:37 -08:00
Sean Owen 649e9d0f5b [SPARK-3369][CORE][STREAMING] Java mapPartitions Iterator->Iterable is inconsistent with Scala's Iterator->Iterator
Fix Java function API methods for flatMap and mapPartitions to require producing only an Iterator, not Iterable. Also fix DStream.flatMap to require a function producing TraversableOnce only, not Traversable.

CC rxin pwendell for API change; tdas since it also touches streaming.

Author: Sean Owen <sowen@cloudera.com>

Closes #10413 from srowen/SPARK-3369.
2016-01-26 11:55:28 +00:00
Reynold Xin d54cfed5a6 [SQL][MINOR] A few minor tweaks to CSV reader.
This pull request simply fixes a few minor coding style issues in csv, as I was reviewing the change post-hoc.

Author: Reynold Xin <rxin@databricks.com>

Closes #10919 from rxin/csv-minor.
2016-01-26 00:51:08 -08:00
Wenchen Fan be375fcbd2 [SPARK-12879] [SQL] improve the unsafe row writing framework
As we begin to use unsafe row writing framework(`BufferHolder` and `UnsafeRowWriter`) in more and more places(`UnsafeProjection`, `UnsafeRowParquetRecordReader`, `GenerateColumnAccessor`, etc.), we should add more doc to it and make it easier to use.

This PR abstract the technique used in `UnsafeRowParquetRecordReader`: avoid unnecessary operatition as more as possible. For example, do not always point the row to the buffer at the end, we only need to update the size of row. If all fields are of primitive type, we can even save the row size updating. Then we can apply this technique to more places easily.

a local benchmark shows `UnsafeProjection` is up to 1.7x faster after this PR:
**old version**
```
Intel(R) Core(TM) i7-4960HQ CPU  2.60GHz
unsafe projection:                 Avg Time(ms)    Avg Rate(M/s)  Relative Rate
-------------------------------------------------------------------------------
single long                             2616.04           102.61         1.00 X
single nullable long                    3032.54            88.52         0.86 X
primitive types                         9121.05            29.43         0.29 X
nullable primitive types               12410.60            21.63         0.21 X
```

**new version**
```
Intel(R) Core(TM) i7-4960HQ CPU  2.60GHz
unsafe projection:                 Avg Time(ms)    Avg Rate(M/s)  Relative Rate
-------------------------------------------------------------------------------
single long                             1533.34           175.07         1.00 X
single nullable long                    2306.73           116.37         0.66 X
primitive types                         8403.93            31.94         0.18 X
nullable primitive types               12448.39            21.56         0.12 X
```

For single non-nullable long(the best case), we can have about 1.7x speed up. Even it's nullable, we can still have 1.3x speed up. For other cases, it's not such a boost as the saved operations only take a little proportion of the whole process.  The benchmark code is included in this PR.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #10809 from cloud-fan/unsafe-projection.
2016-01-25 16:23:59 -08:00
gatorsmile 9348431da2 [SPARK-12975][SQL] Throwing Exception when Bucketing Columns are part of Partitioning Columns
When users are using `partitionBy` and `bucketBy` at the same time, some bucketing columns might be part of partitioning columns. For example,
```
        df.write
          .format(source)
          .partitionBy("i")
          .bucketBy(8, "i", "k")
          .saveAsTable("bucketed_table")
```
However, in the above case, adding column `i` into `bucketBy` is useless. It is just wasting extra CPU when reading or writing bucket tables. Thus, like Hive, we can issue an exception and let users do the change.

Also added a test case for checking if the information of `sortBy` and `bucketBy` columns are correctly saved in the metastore table.

Could you check if my understanding is correct? cloud-fan rxin marmbrus Thanks!

Author: gatorsmile <gatorsmile@gmail.com>

Closes #10891 from gatorsmile/commonKeysInPartitionByBucketBy.
2016-01-25 13:38:09 -08:00
Yin Huai 00026fa991 [SPARK-12901][SQL][HOT-FIX] Fix scala 2.11 compilation. 2016-01-25 12:59:11 -08:00
Davies Liu 7d877c3439 [SPARK-12902] [SQL] visualization for generated operators
This PR brings back visualization for generated operators, they looks like:

![sql](https://cloud.githubusercontent.com/assets/40902/12460920/0dc7956a-bf6b-11e5-9c3f-8389f452526e.png)

![stage](https://cloud.githubusercontent.com/assets/40902/12460923/11806ac4-bf6b-11e5-9c72-e84a62c5ea93.png)

Note: SQL metrics are not supported right now, because they are very slow, will be supported once we have batch mode.

Author: Davies Liu <davies@databricks.com>

Closes #10828 from davies/viz_codegen.
2016-01-25 12:44:20 -08:00
Andy Grove d8e480521e [SPARK-12932][JAVA API] improved error message for java type inference failure
Author: Andy Grove <andygrove73@gmail.com>

Closes #10865 from andygrove/SPARK-12932.
2016-01-25 09:22:10 +00:00
hyukjinkwon 3adebfc9a3 [SPARK-12901][SQL] Refactor options for JSON and CSV datasource (not case class and same format).
https://issues.apache.org/jira/browse/SPARK-12901
This PR refactors the options in JSON and CSV datasources.

In more details,

1. `JSONOptions` uses the same format as `CSVOptions`.
2. Not case classes.
3. `CSVRelation` that does not have to be serializable (it was `with Serializable` but I removed)

Author: hyukjinkwon <gurwls223@gmail.com>

Closes #10895 from HyukjinKwon/SPARK-12901.
2016-01-25 00:57:56 -08:00
Cheng Lian 3327fd2817 [SPARK-12624][PYSPARK] Checks row length when converting Java arrays to Python rows
When actual row length doesn't conform to specified schema field length, we should give a better error message instead of throwing an unintuitive `ArrayOutOfBoundsException`.

Author: Cheng Lian <lian@databricks.com>

Closes #10886 from liancheng/spark-12624.
2016-01-24 19:40:34 -08:00
Josh Rosen f4004601b0 [SPARK-12971] Fix Hive tests which fail in Hadoop-2.3 SBT build
ErrorPositionSuite and one of the HiveComparisonTest tests have been consistently failing on the Hadoop 2.3 SBT build (but on no other builds). I believe that this is due to test isolation issues (e.g. tests sharing state via the sets of temporary tables that are registered to TestHive).

This patch attempts to improve the isolation of these tests in order to address this issue.

Author: Josh Rosen <joshrosen@databricks.com>

Closes #10884 from JoshRosen/fix-failing-hadoop-2.3-hive-tests.
2016-01-24 11:29:27 -08:00
Reynold Xin 423783a08b [SPARK-12904][SQL] Strength reduction for integral and decimal literal comparisons
This pull request implements strength reduction for comparing integral expressions and decimal literals, which is more common now because we switch to parsing fractional literals as decimal types (rather than doubles). I added the rules to the existing DecimalPrecision rule with some refactoring to simplify the control flow. I also moved DecimalPrecision rule into its own file due to the growing size.

Author: Reynold Xin <rxin@databricks.com>

Closes #10882 from rxin/SPARK-12904-1.
2016-01-23 12:13:05 -08:00
hyukjinkwon 5af5a02160 [SPARK-12872][SQL] Support to specify the option for compression codec for JSON datasource
https://issues.apache.org/jira/browse/SPARK-12872

This PR makes the JSON datasource can compress output by option instead of manually setting Hadoop configurations.
For reflecting codec by names, it is similar with https://github.com/apache/spark/pull/10805.

As `CSVCompressionCodecs` can be shared with other datasources, it became a separate class to share as `CompressionCodecs`.

Author: hyukjinkwon <gurwls223@gmail.com>

Closes #10858 from HyukjinKwon/SPARK-12872.
2016-01-22 23:53:12 -08:00
gatorsmile e13c147e74 [SPARK-12959][SQL] Writing Bucketed Data with Disabled Bucketing in SQLConf
When users turn off bucketing in SQLConf, we should issue some messages to tell users these operations will be converted to normal way.

Also added a test case for this scenario and fixed the helper function.

Do you think this PR is helpful when using bucket tables? cloud-fan Thank you!

Author: gatorsmile <gatorsmile@gmail.com>

Closes #10870 from gatorsmile/bucketTableWritingTestcases.
2016-01-22 01:03:41 -08:00
Liang-Chi Hsieh 55c7dd031b [SPARK-12747][SQL] Use correct type name for Postgres JDBC's real array
https://issues.apache.org/jira/browse/SPARK-12747

Postgres JDBC driver uses "FLOAT4" or "FLOAT8" not "real".

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

Closes #10695 from viirya/fix-postgres-jdbc.
2016-01-21 18:55:28 -08:00
Yin Huai d60f8d74ac [SPARK-8968] [SQL] [HOT-FIX] Fix scala 2.11 build. 2016-01-20 17:48:18 -08:00
wangfei 015c8efb37 [SPARK-8968][SQL] external sort by the partition clomns when dynamic partitioning to optimize the memory overhead
Now the hash based writer dynamic partitioning show the bad performance for big data and cause many small files and high GC. This patch we do external sort first so that each time we only need open one writer.

before this patch:
![gc](https://cloud.githubusercontent.com/assets/7018048/9149788/edc48c6e-3dec-11e5-828c-9995b56e4d65.PNG)

after this patch:
![gc-optimize-externalsort](https://cloud.githubusercontent.com/assets/7018048/9149794/60f80c9c-3ded-11e5-8a56-7ae18ddc7a2f.png)

Author: wangfei <wangfei_hello@126.com>
Author: scwf <wangfei1@huawei.com>

Closes #7336 from scwf/dynamic-optimize-basedon-apachespark.
2016-01-20 17:11:52 -08:00
Davies Liu b362239df5 [SPARK-12797] [SQL] Generated TungstenAggregate (without grouping keys)
As discussed in #10786, the generated TungstenAggregate does not support imperative functions.

For a query
```
sqlContext.range(10).filter("id > 1").groupBy().count()
```

The generated code will looks like:
```
/* 032 */     if (!initAgg0) {
/* 033 */       initAgg0 = true;
/* 034 */
/* 035 */       // initialize aggregation buffer
/* 037 */       long bufValue2 = 0L;
/* 038 */
/* 039 */
/* 040 */       // initialize Range
/* 041 */       if (!range_initRange5) {
/* 042 */         range_initRange5 = true;
       ...
/* 071 */       }
/* 072 */
/* 073 */       while (!range_overflow8 && range_number7 < range_partitionEnd6) {
/* 074 */         long range_value9 = range_number7;
/* 075 */         range_number7 += 1L;
/* 076 */         if (range_number7 < range_value9 ^ 1L < 0) {
/* 077 */           range_overflow8 = true;
/* 078 */         }
/* 079 */
/* 085 */         boolean primitive11 = false;
/* 086 */         primitive11 = range_value9 > 1L;
/* 087 */         if (!false && primitive11) {
/* 092 */           // do aggregate and update aggregation buffer
/* 099 */           long primitive17 = -1L;
/* 100 */           primitive17 = bufValue2 + 1L;
/* 101 */           bufValue2 = primitive17;
/* 105 */         }
/* 107 */       }
/* 109 */
/* 110 */       // output the result
/* 112 */       bufferHolder25.reset();
/* 114 */       rowWriter26.initialize(bufferHolder25, 1);
/* 118 */       rowWriter26.write(0, bufValue2);
/* 120 */       result24.pointTo(bufferHolder25.buffer, bufferHolder25.totalSize());
/* 121 */       currentRow = result24;
/* 122 */       return;
/* 124 */     }
/* 125 */
```

cc nongli

Author: Davies Liu <davies@databricks.com>

Closes #10840 from davies/gen_agg.
2016-01-20 15:24:01 -08:00
Herman van Hovell 1017327930 [SPARK-12848][SQL] Change parsed decimal literal datatype from Double to Decimal
The current parser turns a decimal literal, for example ```12.1```, into a Double. The problem with this approach is that we convert an exact literal into a non-exact ```Double```. The PR changes this behavior, a Decimal literal is now converted into an extact ```BigDecimal```.

The behavior for scientific decimals, for example ```12.1e01```, is unchanged. This will be converted into a Double.

This PR replaces the ```BigDecimal``` literal by a ```Double``` literal, because the ```BigDecimal``` is the default now. You can use the double literal by appending a 'D' to the value, for instance: ```3.141527D```

cc davies rxin

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

Closes #10796 from hvanhovell/SPARK-12848.
2016-01-20 15:13:01 -08:00
Wenchen Fan f3934a8d65 [SPARK-12888][SQL] benchmark the new hash expression
Benchmark it on 4 different schemas, the result:
```
Intel(R) Core(TM) i7-4960HQ CPU  2.60GHz
Hash For simple:                   Avg Time(ms)    Avg Rate(M/s)  Relative Rate
-------------------------------------------------------------------------------
interpreted version                       31.47           266.54         1.00 X
codegen version                           64.52           130.01         0.49 X
```

```
Intel(R) Core(TM) i7-4960HQ CPU  2.60GHz
Hash For normal:                   Avg Time(ms)    Avg Rate(M/s)  Relative Rate
-------------------------------------------------------------------------------
interpreted version                     4068.11             0.26         1.00 X
codegen version                         1175.92             0.89         3.46 X
```

```
Intel(R) Core(TM) i7-4960HQ CPU  2.60GHz
Hash For array:                    Avg Time(ms)    Avg Rate(M/s)  Relative Rate
-------------------------------------------------------------------------------
interpreted version                     9276.70             0.06         1.00 X
codegen version                        14762.23             0.04         0.63 X
```

```
Intel(R) Core(TM) i7-4960HQ CPU  2.60GHz
Hash For map:                      Avg Time(ms)    Avg Rate(M/s)  Relative Rate
-------------------------------------------------------------------------------
interpreted version                    58869.79             0.01         1.00 X
codegen version                         9285.36             0.06         6.34 X
```

Author: Wenchen Fan <wenchen@databricks.com>

Closes #10816 from cloud-fan/hash-benchmark.
2016-01-20 15:08:27 -08:00
gatorsmile 8f90c15187 [SPARK-12616][SQL] Making Logical Operator Union Support Arbitrary Number of Children
The existing `Union` logical operator only supports two children. Thus, adding a new logical operator `Unions` which can have arbitrary number of children to replace the existing one.

`Union` logical plan is a binary node. However, a typical use case for union is to union a very large number of input sources (DataFrames, RDDs, or files). It is not uncommon to union hundreds of thousands of files. In this case, our optimizer can become very slow due to the large number of logical unions. We should change the Union logical plan to support an arbitrary number of children, and add a single rule in the optimizer to collapse all adjacent `Unions` into a single `Unions`. Note that this problem doesn't exist in physical plan, because the physical `Unions` already supports arbitrary number of children.

Author: gatorsmile <gatorsmile@gmail.com>
Author: xiaoli <lixiao1983@gmail.com>
Author: Xiao Li <xiaoli@Xiaos-MacBook-Pro.local>

Closes #10577 from gatorsmile/unionAllMultiChildren.
2016-01-20 14:59:30 -08:00
Rajesh Balamohan ab4a6bfd11 [SPARK-12898] Consider having dummyCallSite for HiveTableScan
Currently, HiveTableScan runs with getCallSite which is really expensive and shows up when scanning through large table with partitions (e.g TPC-DS) which slows down the overall runtime of the job. It would be good to consider having dummyCallSite in HiveTableScan.

Author: Rajesh Balamohan <rbalamohan@apache.org>

Closes #10825 from rajeshbalamohan/SPARK-12898.
2016-01-20 11:30:03 -08:00
Rajesh Balamohan e75e340a40 [SPARK-12925][SQL] Improve HiveInspectors.unwrap for StringObjectIns…
Text is in UTF-8 and converting it via "UTF8String.fromString" incurs decoding and encoding, which turns out to be expensive and redundant.  Profiler snapshot details is attached in the JIRA (ref:https://issues.apache.org/jira/secure/attachment/12783331/SPARK-12925_profiler_cpu_samples.png)

Author: Rajesh Balamohan <rbalamohan@apache.org>

Closes #10848 from rajeshbalamohan/SPARK-12925.
2016-01-20 11:20:26 -08:00
Davies Liu 8e4f894e98 [SPARK-12881] [SQL] subexpress elimination in mutable projection
Author: Davies Liu <davies@databricks.com>

Closes #10814 from davies/mutable_subexpr.
2016-01-20 10:02:40 -08:00
Reynold Xin 753b194511 [SPARK-12912][SQL] Add a test suite for EliminateSubQueries
Also updated documentation to explain why ComputeCurrentTime and EliminateSubQueries are in the optimizer rather than analyzer.

Author: Reynold Xin <rxin@databricks.com>

Closes #10837 from rxin/optimizer-analyzer-comment.
2016-01-20 00:00:28 -08:00
hyukjinkwon 6844d36aea [SPARK-12871][SQL] Support to specify the option for compression codec.
https://issues.apache.org/jira/browse/SPARK-12871
This PR added an option to support to specify compression codec.
This adds the option `codec` as an alias `compression` as filed in [SPARK-12668 ](https://issues.apache.org/jira/browse/SPARK-12668).

Note that I did not add configurations for Hadoop 1.x as this `CsvRelation` is using Hadoop 2.x API and I guess it is going to drop Hadoop 1.x support.

Author: hyukjinkwon <gurwls223@gmail.com>

Closes #10805 from HyukjinKwon/SPARK-12420.
2016-01-19 20:45:52 -08:00
Reynold Xin 3e84ef0a54 [SPARK-12770][SQL] Implement rules for branch elimination for CaseWhen
The three optimization cases are:

1. If the first branch's condition is a true literal, remove the CaseWhen and use the value from that branch.
2. If a branch's condition is a false or null literal, remove that branch.
3. If only the else branch is left, remove the CaseWhen and use the value from the else branch.

Author: Reynold Xin <rxin@databricks.com>

Closes #10827 from rxin/SPARK-12770.
2016-01-19 16:14:41 -08:00
Jakob Odersky c78e2080e0 [SPARK-12816][SQL] De-alias type when generating schemas
Call `dealias` on local types to fix schema generation for abstract type members, such as

```scala
type KeyValue = (Int, String)
```

Add simple test

Author: Jakob Odersky <jodersky@gmail.com>

Closes #10749 from jodersky/aliased-schema.
2016-01-19 12:31:03 -08:00
Imran Rashid 4dbd316122 [SPARK-12560][SQL] SqlTestUtils.stripSparkFilter needs to copy utf8strings
See https://issues.apache.org/jira/browse/SPARK-12560

This isn't causing any problems currently because the tests for string predicate pushdown are currently disabled.  I ran into this while trying to turn them back on with a different version of parquet.  Figure it was good to fix now in any case.

Author: Imran Rashid <irashid@cloudera.com>

Closes #10510 from squito/SPARK-12560.
2016-01-19 12:24:21 -08:00
gatorsmile b72e01e821 [SPARK-12867][SQL] Nullability of Intersect can be stricter
JIRA: https://issues.apache.org/jira/browse/SPARK-12867

When intersecting one nullable column with one non-nullable column, the result will not contain any null. Thus, we can make nullability of `intersect` stricter.

liancheng Could you please check if the code changes are appropriate? Also added test cases to verify the results. Thanks!

Author: gatorsmile <gatorsmile@gmail.com>

Closes #10812 from gatorsmile/nullabilityIntersect.
2016-01-19 11:35:58 -08:00
Andrew Or b122c861cd [SPARK-12887] Do not expose var's in TaskMetrics
This is a step in implementing SPARK-10620, which migrates TaskMetrics to accumulators.

TaskMetrics has a bunch of var's, some are fully public, some are `private[spark]`. This is bad coding style that makes it easy to accidentally overwrite previously set metrics. This has happened a few times in the past and caused bugs that were difficult to debug.

Instead, we should have get-or-create semantics, which are more readily understandable. This makes sense in the case of TaskMetrics because these are just aggregated metrics that we want to collect throughout the task, so it doesn't matter who's incrementing them.

Parent PR: #10717

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

Closes #10815 from andrewor14/get-or-create-metrics.
2016-01-19 10:58:51 -08:00
Wenchen Fan e14817b528 [SPARK-12870][SQL] better format bucket id in file name
for normal parquet file without bucket, it's file name ends with a jobUUID which maybe all numbers and mistakeny regarded as bucket id. This PR improves the format of bucket id in file name by using a different seperator, `_`, so that the regex is more robust.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #10799 from cloud-fan/fix-bucket.
2016-01-19 10:44:51 -08:00
proflin c00744e60f [SQL][MINOR] Fix one little mismatched comment according to the codes in interface.scala
Author: proflin <proflin.me@gmail.com>

Closes #10824 from proflin/master.
2016-01-19 00:15:43 -08:00
hyukjinkwon 453dae5671 [SPARK-12668][SQL] Providing aliases for CSV options to be similar to Pandas and R
https://issues.apache.org/jira/browse/SPARK-12668

Spark CSV datasource has been being merged (filed in [SPARK-12420](https://issues.apache.org/jira/browse/SPARK-12420)). This is a quicky PR that simply renames several CSV options to  similar Pandas and R.

- Alias for delimiter ­-> sep
- charset -­> encoding

Author: hyukjinkwon <gurwls223@gmail.com>

Closes #10800 from HyukjinKwon/SPARK-12668.
2016-01-18 21:42:07 -08:00
gatorsmile 74ba84b64c [HOT][BUILD] Changed the import order
This PR is to fix the master's build break.

The following tests failed due to the import order issues in the master.
https://amplab.cs.berkeley.edu/jenkins/job/SparkPullRequestBuilder/49651/consoleFull
https://amplab.cs.berkeley.edu/jenkins/job/SparkPullRequestBuilder/49652/consoleFull
https://amplab.cs.berkeley.edu/jenkins/job/SparkPullRequestBuilder/49653/consoleFull

Author: gatorsmile <gatorsmile@gmail.com>

Closes #10823 from gatorsmile/importOrder.
2016-01-18 19:40:10 -08:00
Davies Liu 323d51f1da [SPARK-12700] [SQL] embed condition into SMJ and BroadcastHashJoin
Currently SortMergeJoin and BroadcastHashJoin do not support condition, the need a followed Filter for that, the result projection to generate UnsafeRow could be very expensive if they generate lots of rows and could be filtered mostly by condition.

This PR brings the support of condition for SortMergeJoin and BroadcastHashJoin, just like other outer joins do.

This could improve the performance of Q72 by 7x (from 120s to 16.5s).

Author: Davies Liu <davies@databricks.com>

Closes #10653 from davies/filter_join.
2016-01-18 17:29:54 -08:00
Reynold Xin 39ac56fc60 [SPARK-12889][SQL] Rename ParserDialect -> ParserInterface.
Based on discussions in #10801, I'm submitting a pull request to rename ParserDialect to ParserInterface.

Author: Reynold Xin <rxin@databricks.com>

Closes #10817 from rxin/SPARK-12889.
2016-01-18 17:10:32 -08:00
Wenchen Fan 404190221a [SPARK-12882][SQL] simplify bucket tests and add more comments
Right now, the bucket tests are kind of hard to understand, this PR simplifies them and add more commetns.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #10813 from cloud-fan/bucket-comment.
2016-01-18 15:10:04 -08:00
Wenchen Fan 4f11e3f2aa [SPARK-12841][SQL] fix cast in filter
In SPARK-10743 we wrap cast with `UnresolvedAlias` to give `Cast` a better alias if possible. However, for cases like `filter`, the `UnresolvedAlias` can't be resolved and actually we don't need a better alias for this case.  This PR move the cast wrapping logic to `Column.named` so that we will only do it when we need a alias name.

Author: Wenchen Fan <wenchen@databricks.com>

Closes #10781 from cloud-fan/bug.
2016-01-18 14:15:27 -08:00
Reynold Xin 38c3c0e31a [SPARK-12855][SQL] Remove parser dialect developer API
This pull request removes the public developer parser API for external parsers. Given everything a parser depends on (e.g. logical plans and expressions) are internal and not stable, external parsers will break with every release of Spark. It is a bad idea to create the illusion that Spark actually supports pluggable parsers. In addition, this also reduces incentives for 3rd party projects to contribute parse improvements back to Spark.

Author: Reynold Xin <rxin@databricks.com>

Closes #10801 from rxin/SPARK-12855.
2016-01-18 13:55:42 -08:00