Commit graph

611 commits

Author SHA1 Message Date
Michael Armbrust 768907eb7b [SPARK-8926][SQL] Good errors for ExpectsInputType expressions
For example: `cannot resolve 'testfunction(null)' due to data type mismatch: argument 1 is expected to be of type int, however, null is of type datetype.`

Author: Michael Armbrust <michael@databricks.com>

Closes #7303 from marmbrus/expectsTypeErrors and squashes the following commits:

c654a0e [Michael Armbrust] fix udts and make errors pretty
137160d [Michael Armbrust] style
5428fda [Michael Armbrust] style
10fac82 [Michael Armbrust] [SPARK-8926][SQL] Good errors for ExpectsInputType expressions
2015-07-08 22:05:58 -07:00
Andrew Or 47ef423f86 [SPARK-8910] Fix MiMa flaky due to port contention issue
Due to the way MiMa works, we currently start a `SQLContext` pretty early on. This causes us to start a `SparkUI` that attempts to bind to port 4040. Because many tests run in parallel on the Jenkins machines, this  causes port contention sometimes and fails the MiMa tests.

Note that we already disabled the SparkUI for scalatests. However, the MiMa test is run before we even have a chance to load the default scalatest settings, so we need to explicitly disable the UI ourselves.

Author: Andrew Or <andrew@databricks.com>

Closes #7300 from andrewor14/mima-flaky and squashes the following commits:

b55a547 [Andrew Or] Do not enable SparkUI during tests
2015-07-08 20:29:08 -07:00
Yijie Shen a290814877 [SPARK-8866][SQL] use 1us precision for timestamp type
JIRA: https://issues.apache.org/jira/browse/SPARK-8866

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

Closes #7283 from yijieshen/micro_timestamp and squashes the following commits:

dc735df [Yijie Shen] update CastSuite to avoid round error
714eaea [Yijie Shen] add timestamp_udf into blacklist due to precision lose
c3ca2f4 [Yijie Shen] fix unhandled case in CurrentTimestamp
8d4aa6b [Yijie Shen] use 1us precision for timestamp type
2015-07-08 20:20:17 -07:00
Cheng Lian 4ffc27caaf [SPARK-6123] [SPARK-6775] [SPARK-6776] [SQL] Refactors Parquet read path for interoperability and backwards-compatibility
This PR is a follow-up of #6617 and is part of [SPARK-6774] [2], which aims to ensure interoperability and backwards-compatibility for Spark SQL Parquet support.  And this one fixes the read path.  Now Spark SQL is expected to be able to read legacy Parquet data files generated by most (if not all) common libraries/tools like parquet-thrift, parquet-avro, and parquet-hive. However, we still need to refactor the write path to write standard Parquet LISTs and MAPs ([SPARK-8848] [4]).

### Major changes

1. `CatalystConverter` class hierarchy refactoring

   - Replaces `CatalystConverter` trait with a much simpler `ParentContainerUpdater`.

     Now instead of extending the original `CatalystConverter` trait, every converter class accepts an updater which is responsible for propagating the converted value to some parent container. For example, appending array elements to a parent array buffer, appending a key-value pairs to a parent mutable map, or setting a converted value to some specific field of a parent row. Root converter doesn't have a parent and thus uses a `NoopUpdater`.

     This simplifies the design since converters don't need to care about details of their parent converters anymore.

   - Unifies `CatalystRootConverter`, `CatalystGroupConverter` and `CatalystPrimitiveRowConverter` into `CatalystRowConverter`

     Specifically, now all row objects are represented by `SpecificMutableRow` during conversion.

   - Refactors `CatalystArrayConverter`, and removes `CatalystArrayContainsNullConverter` and `CatalystNativeArrayConverter`

     `CatalystNativeArrayConverter` was probably designed with the intention of avoiding boxing costs. However, the way it uses Scala generics actually doesn't achieve this goal.

     The new `CatalystArrayConverter` handles both nullable and non-nullable array elements in a consistent way.

   - Implements backwards-compatibility rules in `CatalystArrayConverter`

     When Parquet records are being converted, schema of Parquet files should have already been verified. So we only need to care about the structure rather than field names in the Parquet schema. Since all map objects represented in legacy systems have the same structure as the standard one (see [backwards-compatibility rules for MAP] [1]), we only need to deal with LIST (namely array) in `CatalystArrayConverter`.

2. Requested columns handling

   When specifying requested columns in `RowReadSupport`, we used to use a Parquet `MessageType` converted from a Catalyst `StructType` which contains all requested columns.  This is not preferable when taking compatibility and interoperability into consideration.  Because the actual Parquet file may have different physical structure from the converted schema.

   In this PR, the schema for requested columns is constructed using the following method:

   - For a column that exists in the target Parquet file, we extract the column type by name from the full file schema, and construct a single-field `MessageType` for that column.
   - For a column that doesn't exist in the target Parquet file, we create a single-field `StructType` and convert it to a `MessageType` using `CatalystSchemaConverter`.
   - Unions all single-field `MessageType`s into a full schema containing all requested fields

   With this change, we also fix [SPARK-6123] [3] by validating the global schema against each individual Parquet part-files.

### Testing

This PR also adds compatibility tests for parquet-avro, parquet-thrift, and parquet-hive. Please refer to `README.md` under `sql/core/src/test` for more information about these tests. To avoid build time code generation and adding extra complexity to the build system, Java code generated from testing Thrift schema and Avro IDL is also checked in.

[1]: https://github.com/apache/incubator-parquet-format/blob/master/LogicalTypes.md#backward-compatibility-rules-1
[2]: https://issues.apache.org/jira/browse/SPARK-6774
[3]: https://issues.apache.org/jira/browse/SPARK-6123
[4]: https://issues.apache.org/jira/browse/SPARK-8848

Author: Cheng Lian <lian@databricks.com>

Closes #7231 from liancheng/spark-6776 and squashes the following commits:

360fe18 [Cheng Lian] Adds ParquetHiveCompatibilitySuite
c6fbc06 [Cheng Lian] Removes WIP file committed by mistake
b8c1295 [Cheng Lian] Excludes the whole parquet package from MiMa
598c3e8 [Cheng Lian] Adds extra Maven repo for hadoop-lzo, which is a transitive dependency of parquet-thrift
926af87 [Cheng Lian] Simplifies Parquet compatibility test suites
7946ee1 [Cheng Lian] Fixes Scala styling issues
3d7ab36 [Cheng Lian] Fixes .rat-excludes
a8f13bb [Cheng Lian] Using Parquet writer API to do compatibility tests
f2208cd [Cheng Lian] Adds README.md for Thrift/Avro code generation
1d390aa [Cheng Lian] Adds parquet-thrift compatibility test
440f7b3 [Cheng Lian] Adds generated files to .rat-excludes
13b9121 [Cheng Lian] Adds ParquetAvroCompatibilitySuite
06cfe9d [Cheng Lian] Adds comments about TimestampType handling
a099d3e [Cheng Lian] More comments
0cc1b37 [Cheng Lian] Fixes MiMa checks
884d3e6 [Cheng Lian] Fixes styling issue and reverts unnecessary changes
802cbd7 [Cheng Lian] Fixes bugs related to schema merging and empty requested columns
38fe1e7 [Cheng Lian] Adds explicit return type
7fb21f1 [Cheng Lian] Reverts an unnecessary debugging change
1781dff [Cheng Lian] Adds test case for SPARK-8811
6437d4b [Cheng Lian] Assembles requested schema from Parquet file schema
bcac49f [Cheng Lian] Removes the 16-byte restriction of decimals
a74fb2c [Cheng Lian] More comments
0525346 [Cheng Lian] Removes old Parquet record converters
03c3bd9 [Cheng Lian] Refactors Parquet read path to implement backwards-compatibility rules
2015-07-08 15:51:01 -07:00
Keuntae Park f031543782 [SPARK-8783] [SQL] CTAS with WITH clause does not work
Currently, CTESubstitution only handles the case that WITH is on the top of the plan.
I think it SHOULD handle the case that WITH is child of CTAS.
This patch simply changes 'match' to 'transform' for recursive search of WITH in the plan.

Author: Keuntae Park <sirpkt@apache.org>

Closes #7180 from sirpkt/SPARK-8783 and squashes the following commits:

e4428f0 [Keuntae Park] Merge remote-tracking branch 'upstream/master' into CTASwithWITH
1671c77 [Keuntae Park] WITH clause can be inside CTAS
2015-07-08 14:29:52 -07:00
Takeshi YAMAMURO 3e831a2696 [SPARK-6912] [SQL] Throw an AnalysisException when unsupported Java Map<K,V> types used in Hive UDF
To make UDF developers understood, throw an exception when unsupported Map<K,V> types used in Hive UDF. This fix is the same with #7248.

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

Closes #7257 from maropu/ThrowExceptionWhenMapUsed and squashes the following commits:

916099a [Takeshi YAMAMURO] Fix style errors
7886dcc [Takeshi YAMAMURO] Throw an exception when Map<> used in Hive UDF
2015-07-08 10:33:27 -07:00
Cheng Hao 351a36d0c5 [SPARK-8883][SQL]Remove the OverrideFunctionRegistry
Remove the `OverrideFunctionRegistry` from the Spark SQL, as the subclasses of `FunctionRegistry` have their own way to the delegate to the right underlying `FunctionRegistry`.

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

Closes #7260 from chenghao-intel/override and squashes the following commits:

164d093 [Cheng Hao] enable the function registry
2ca8459 [Cheng Hao] remove the OverrideFunctionRegistry
2015-07-08 00:10:24 -07:00
Reynold Xin 770ff1025e [SPARK-8876][SQL] Remove InternalRow type alias in expressions package.
The type alias was there because initially when I moved Row around, I didn't want to do massive changes to the expression code. But now it should be pretty easy to just remove it. One less concept to worry about.

Author: Reynold Xin <rxin@databricks.com>

Closes #7270 from rxin/internalrow and squashes the following commits:

72fc842 [Reynold Xin] [SPARK-8876][SQL] Remove InternalRow type alias in expressions package.
2015-07-07 17:40:14 -07:00
Takeshi YAMAMURO 1821fc1658 [SPARK-6747] [SQL] Throw an AnalysisException when unsupported Java list types used in Hive UDF
The current implementation can't handle List<> as a return type in Hive UDF and
throws meaningless Match Error.
We assume an UDF below;
public class UDFToListString extends UDF {
public List<String> evaluate(Object o)
{ return Arrays.asList("xxx", "yyy", "zzz"); }
}
An exception of scala.MatchError is thrown as follows when the UDF used;
scala.MatchError: interface java.util.List (of class java.lang.Class)
at org.apache.spark.sql.hive.HiveInspectors$class.javaClassToDataType(HiveInspectors.scala:174)
at org.apache.spark.sql.hive.HiveSimpleUdf.javaClassToDataType(hiveUdfs.scala:76)
at org.apache.spark.sql.hive.HiveSimpleUdf.dataType$lzycompute(hiveUdfs.scala:106)
at org.apache.spark.sql.hive.HiveSimpleUdf.dataType(hiveUdfs.scala:106)
at org.apache.spark.sql.catalyst.expressions.Alias.toAttribute(namedExpressions.scala:131)
at org.apache.spark.sql.catalyst.planning.PhysicalOperation$$anonfun$collectAliases$1.applyOrElse(patterns.scala:95)
at org.apache.spark.sql.catalyst.planning.PhysicalOperation$$anonfun$collectAliases$1.applyOrElse(patterns.scala:94)
at scala.runtime.AbstractPartialFunction.apply(AbstractPartialFunction.scala:33)
at scala.collection.TraversableLike$$anonfun$collect$1.apply(TraversableLike.scala:278)
...
To make udf developers more understood, we need to throw a more suitable exception.

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

Closes #7248 from maropu/FixBugInHiveInspectors and squashes the following commits:

1c3df2a [Takeshi YAMAMURO] Fix comments
56305de [Takeshi YAMAMURO] Fix conflicts
92ed7a6 [Takeshi YAMAMURO] Throw an exception when java list type used
2844a8e [Takeshi YAMAMURO] Apply comments
7114a47 [Takeshi YAMAMURO] Add TODO comments in UDFToListString of HiveUdfSuite
fdb2ae4 [Takeshi YAMAMURO] Add StringToUtf8 to comvert String into UTF8String
af61f2e [Takeshi YAMAMURO] Remove a new type
7f812fd [Takeshi YAMAMURO] Fix code-style errors
6984bf4 [Takeshi YAMAMURO] Apply review comments
93e3d4e [Takeshi YAMAMURO] Add a blank line at the end of UDFToListString
ee232db [Takeshi YAMAMURO] Support List as a return type in Hive UDF
1e82316 [Takeshi YAMAMURO] Apply comments
21e8763 [Takeshi YAMAMURO] Add TODO comments in UDFToListString of HiveUdfSuite
a488712 [Takeshi YAMAMURO] Add StringToUtf8 to comvert String into UTF8String
1c7b9d1 [Takeshi YAMAMURO] Remove a new type
f965c34 [Takeshi YAMAMURO] Fix code-style errors
9406416 [Takeshi YAMAMURO] Apply review comments
e21ce7e [Takeshi YAMAMURO] Add a blank line at the end of UDFToListString
e553f10 [Takeshi YAMAMURO] Support List as a return type in Hive UDF
2015-07-06 19:44:31 -07:00
Yin Huai 7b467cc934 [SPARK-8588] [SQL] Regression test
This PR adds regression test for https://issues.apache.org/jira/browse/SPARK-8588 (fixed by 457d07eaa0).

Author: Yin Huai <yhuai@databricks.com>

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

Closes #7103 from yhuai/SPARK-8588-test and squashes the following commits:

eb5f418 [Yin Huai] Add a query test.
c61a173 [Yin Huai] Regression test for SPARK-8588.
2015-07-06 16:28:47 -07:00
Cheng Lian 20a4d7dbd1 [SPARK-8501] [SQL] Avoids reading schema from empty ORC files
ORC writes empty schema (`struct<>`) to ORC files containing zero rows.  This is OK for Hive since the table schema is managed by the metastore. But it causes trouble when reading raw ORC files via Spark SQL since we have to discover the schema from the files.

Notice that the ORC data source always avoids writing empty ORC files, but it's still problematic when reading Hive tables which contain empty part-files.

Author: Cheng Lian <lian@databricks.com>

Closes #7199 from liancheng/spark-8501 and squashes the following commits:

bb8cd95 [Cheng Lian] Addresses comments
a290221 [Cheng Lian] Avoids reading schema from empty ORC files
2015-07-02 21:30:57 -07:00
Yijie Shen 52302a8039 [SPARK-8407] [SQL] complex type constructors: struct and named_struct
This is a follow up of [SPARK-8283](https://issues.apache.org/jira/browse/SPARK-8283) ([PR-6828](https://github.com/apache/spark/pull/6828)), to support both `struct` and `named_struct` in Spark SQL.

After [#6725](https://github.com/apache/spark/pull/6828), the semantic of [`CreateStruct`](https://github.com/apache/spark/blob/master/sql/catalyst/src/main/scala/org/apache/spark/sql/catalyst/expressions/complexTypes.scala#L56) methods have changed a little and do not limited to cols of `NamedExpressions`, it will name non-NamedExpression fields following the hive convention, col1, col2 ...

This PR would both loosen [`struct`](https://github.com/apache/spark/blob/master/sql/core/src/main/scala/org/apache/spark/sql/functions.scala#L723) to take children of `Expression` type and add `named_struct` support.

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

Closes #6874 from yijieshen/SPARK-8283 and squashes the following commits:

4cd3375ac [Yijie Shen] change struct documentation
d599d0b [Yijie Shen] rebase code
9a7039e [Yijie Shen] fix reviews and regenerate golden answers
b487354 [Yijie Shen] replace assert using checkAnswer
f07e114 [Yijie Shen] tiny fix
9613be9 [Yijie Shen] review fix
7fef712 [Yijie Shen] Fix checkInputTypes' implementation using foldable and nullable
60812a7 [Yijie Shen] Fix type check
828d694 [Yijie Shen] remove unnecessary resolved assertion inside dataType method
fd3cd8e [Yijie Shen] remove type check from eval
7a71255 [Yijie Shen] tiny fix
ccbbd86 [Yijie Shen] Fix reviews
47da332 [Yijie Shen] remove nameStruct API from DataFrame
917e680 [Yijie Shen] Fix reviews
4bd75ad [Yijie Shen] loosen struct method in functions.scala to take Expression children
0acb7be [Yijie Shen] Add CreateNamedStruct in both DataFrame function API and FunctionRegistery
2015-07-02 10:12:25 -07:00
zhichao.li b285ac5ba8 [SPARK-8227] [SQL] Add function unhex
cc chenghao-intel  adrian-wang

Author: zhichao.li <zhichao.li@intel.com>

Closes #7113 from zhichao-li/unhex and squashes the following commits:

379356e [zhichao.li] remove exception checking
a4ae6dc [zhichao.li] add udf_unhex to whitelist
fe5c14a [zhichao.li] add todigit
607d7a3 [zhichao.li] use checkInputTypes
bffd37f [zhichao.li] change to use Hex in apache common package
cde73f5 [zhichao.li] update to use AutoCastInputTypes
11945c7 [zhichao.li] style
c852d46 [zhichao.li] Add function unhex
2015-07-01 22:19:51 -07:00
Christian Kadner 1e1f339976 [SPARK-6785] [SQL] fix DateTimeUtils for dates before 1970
Hi Michael,
this Pull-Request is a follow-up to [PR-6242](https://github.com/apache/spark/pull/6242). I removed the two obsolete test cases from the HiveQuerySuite and deleted the corresponding golden answer files.
Thanks for your review!

Author: Christian Kadner <ckadner@us.ibm.com>

Closes #6983 from ckadner/SPARK-6785 and squashes the following commits:

ab1e79b [Christian Kadner] Merge remote-tracking branch 'origin/SPARK-6785' into SPARK-6785
1fed877 [Christian Kadner] [SPARK-6785][SQL] failed Scala style test, remove spaces on empty line DateTimeUtils.scala:61
9d8021d [Christian Kadner] [SPARK-6785][SQL] merge recent changes in DateTimeUtils & MiscFunctionsSuite
b97c3fb [Christian Kadner] [SPARK-6785][SQL] move test case for DateTimeUtils to DateTimeUtilsSuite
a451184 [Christian Kadner] [SPARK-6785][SQL] fix DateTimeUtils.fromJavaDate(java.util.Date) for Dates before 1970
2015-06-30 12:22:34 -07:00
Davies Liu fbb267ed6f [SPARK-8713] Make codegen thread safe
Codegen takes three steps:

1. Take a list of expressions, convert them into Java source code and a list of expressions that don't not support codegen (fallback to interpret mode).
2. Compile the Java source into Java class (bytecode)
3. Using the Java class and the list of expression to build a Projection.

Currently, we cache the whole three steps, the key is a list of expression, result is projection. Because some of expressions (which may not thread-safe, for example, Random) will be hold by the Projection, the projection maybe not thread safe.

This PR change to only cache the second step, then we can build projection using codegen even some expressions are not thread-safe, because the cache will not hold any expression anymore.

cc marmbrus rxin JoshRosen

Author: Davies Liu <davies@databricks.com>

Closes #7101 from davies/codegen_safe and squashes the following commits:

7dd41f1 [Davies Liu] Merge branch 'master' of github.com:apache/spark into codegen_safe
847bd08 [Davies Liu] don't use scala.refect
4ddaaed [Davies Liu] Merge branch 'master' of github.com:apache/spark into codegen_safe
1793cf1 [Davies Liu] make codegen thread safe
2015-06-30 10:48:49 -07:00
Yin Huai fbf75738fe [SPARK-7287] [SPARK-8567] [TEST] Add sc.stop to applications in SparkSubmitSuite
Hopefully, this suite will not be flaky anymore.

Author: Yin Huai <yhuai@databricks.com>

Closes #7027 from yhuai/SPARK-8567 and squashes the following commits:

c0167e2 [Yin Huai] Add sc.stop().
2015-06-29 17:20:05 -07:00
Wenchen Fan 881662e9c9 [SPARK-8589] [SQL] cleanup DateTimeUtils
move date time related operations into `DateTimeUtils` and rename some methods to make it more clear.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #6980 from cloud-fan/datetime and squashes the following commits:

9373a9d [Wenchen Fan] cleanup DateTimeUtil
2015-06-29 16:34:50 -07:00
BenFradet 931da5c8ab [SPARK-8478] [SQL] Harmonize UDF-related code to use uniformly UDF instead of Udf
Follow-up of #6902 for being coherent between ```Udf``` and ```UDF```

Author: BenFradet <benjamin.fradet@gmail.com>

Closes #6920 from BenFradet/SPARK-8478 and squashes the following commits:

c500f29 [BenFradet] renamed a few variables in functions to use UDF
8ab0f2d [BenFradet] renamed idUdf to idUDF in SQLQuerySuite
98696c2 [BenFradet] renamed originalUdfs in TestHive to originalUDFs
7738f74 [BenFradet] modified HiveUDFSuite to use only UDF
c52608d [BenFradet] renamed HiveUdfSuite to HiveUDFSuite
e51b9ac [BenFradet] renamed ExtractPythonUdfs to ExtractPythonUDFs
8c756f1 [BenFradet] renamed Hive UDF related code
2a1ca76 [BenFradet] renamed pythonUdfs to pythonUDFs
261e6fb [BenFradet] renamed ScalaUdf to ScalaUDF
2015-06-29 15:27:13 -07:00
Cheng Hao c6ba2ea341 [SPARK-7862] [SQL] Disable the error message redirect to stderr
This is a follow up of #6404, the ScriptTransformation prints the error msg into stderr directly, probably be a disaster for application log.

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

Closes #6882 from chenghao-intel/verbose and squashes the following commits:

bfedd77 [Cheng Hao] revert the write
76ff46b [Cheng Hao] update the CircularBuffer
692b19e [Cheng Hao] check the process exitValue for ScriptTransform
47e0970 [Cheng Hao] Use the RedirectThread instead
1de771d [Cheng Hao] naming the threads in ScriptTransformation
8536e81 [Cheng Hao] disable the error message redirection for stderr
2015-06-29 12:46:33 -07:00
Marcelo Vanzin 3664ee25f0 [SPARK-8066, SPARK-8067] [hive] Add support for Hive 1.0, 1.1 and 1.2.
Allow HiveContext to connect to metastores of those versions; some new shims
had to be added to account for changing internal APIs.

A new test was added to exercise the "reset()" path which now also requires
a shim; and the test code was changed to use a directory under the build's
target to store ivy dependencies. Without that, at least I consistently run
into issues with Ivy messing up (or being confused) by my existing caches.

Author: Marcelo Vanzin <vanzin@cloudera.com>

Closes #7026 from vanzin/SPARK-8067 and squashes the following commits:

3e2e67b [Marcelo Vanzin] [SPARK-8066, SPARK-8067] [hive] Add support for Hive 1.0, 1.1 and 1.2.
2015-06-29 11:53:17 -07:00
Davies Liu 77da5be6f1 [SPARK-8610] [SQL] Separate Row and InternalRow (part 2)
Currently, we use GenericRow both for Row and InternalRow, which is confusing because it could contain Scala type also Catalyst types.

This PR changes to use GenericInternalRow for InternalRow (contains catalyst types), GenericRow for Row (contains Scala types).

Also fixes some incorrect use of InternalRow or Row.

Author: Davies Liu <davies@databricks.com>

Closes #7003 from davies/internalrow and squashes the following commits:

d05866c [Davies Liu] fix test: rollback changes for pyspark
72878dd [Davies Liu] Merge branch 'master' of github.com:apache/spark into internalrow
efd0b25 [Davies Liu] fix copy of MutableRow
87b13cf [Davies Liu] fix test
d2ebd72 [Davies Liu] fix style
eb4b473 [Davies Liu] mark expensive API as final
bd4e99c [Davies Liu] Merge branch 'master' of github.com:apache/spark into internalrow
bdfb78f [Davies Liu] remove BaseMutableRow
6f99a97 [Davies Liu] fix catalyst test
defe931 [Davies Liu] remove BaseRow
288b31f [Davies Liu] Merge branch 'master' of github.com:apache/spark into internalrow
9d24350 [Davies Liu] separate Row and InternalRow (part 2)
2015-06-28 08:03:58 -07:00
Yin Huai f9b397f54d [SPARK-8567] [SQL] Add logs to record the progress of HiveSparkSubmitSuite.
Author: Yin Huai <yhuai@databricks.com>

Closes #7009 from yhuai/SPARK-8567 and squashes the following commits:

62fb1f9 [Yin Huai] Add sc.stop().
b22cf7d [Yin Huai] Add logs.
2015-06-25 06:52:03 -07:00
Cheng Lian c337844ed7 [SPARK-8604] [SQL] HadoopFsRelation subclasses should set their output format class
`HadoopFsRelation` subclasses, especially `ParquetRelation2` should set its own output format class, so that the default output committer can be setup correctly when doing appending (where we ignore user defined output committers).

Author: Cheng Lian <lian@databricks.com>

Closes #6998 from liancheng/spark-8604 and squashes the following commits:

9be51d1 [Cheng Lian] Adds more comments
6db1368 [Cheng Lian] HadoopFsRelation subclasses should set their output format class
2015-06-25 00:06:23 -07:00
Wenchen Fan b71d3254e5 [SPARK-8075] [SQL] apply type check interface to more expressions
a follow up of https://github.com/apache/spark/pull/6405.
Note: It's not a big change, a lot of changing is due to I swap some code in `aggregates.scala` to make aggregate functions right below its corresponding aggregate expressions.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #6723 from cloud-fan/type-check and squashes the following commits:

2124301 [Wenchen Fan] fix tests
5a658bb [Wenchen Fan] add tests
287d3bb [Wenchen Fan] apply type check interface to more expressions
2015-06-24 16:26:00 -07:00
Yin Huai 7daa70292e [SPARK-8567] [SQL] Increase the timeout of HiveSparkSubmitSuite
https://issues.apache.org/jira/browse/SPARK-8567

Author: Yin Huai <yhuai@databricks.com>

Closes #6957 from yhuai/SPARK-8567 and squashes the following commits:

62dff5b [Yin Huai] Increase the timeout.
2015-06-24 15:52:58 -07:00
Cheng Lian 8ab50765cd [SPARK-6777] [SQL] Implements backwards compatibility rules in CatalystSchemaConverter
This PR introduces `CatalystSchemaConverter` for converting Parquet schema to Spark SQL schema and vice versa.  Original conversion code in `ParquetTypesConverter` is removed. Benefits of the new version are:

1. When converting Spark SQL schemas, it generates standard Parquet schemas conforming to [the most updated Parquet format spec] [1]. Converting to old style Parquet schemas is also supported via feature flag `spark.sql.parquet.followParquetFormatSpec` (which is set to `false` for now, and should be set to `true` after both read and write paths are fixed).

   Note that although this version of Parquet format spec hasn't been officially release yet, Parquet MR 1.7.0 already sticks to it. So it should be safe to follow.

1. It implements backwards-compatibility rules described in the most updated Parquet format spec. Thus can recognize more schema patterns generated by other/legacy systems/tools.
1. Code organization follows convention used in [parquet-mr] [2], which is easier to follow. (Structure of `CatalystSchemaConverter` is similar to `AvroSchemaConverter`).

To fully implement backwards-compatibility rules in both read and write path, we also need to update `CatalystRowConverter` (which is responsible for converting Parquet records to `Row`s), `RowReadSupport`, and `RowWriteSupport`. These would be done in follow-up PRs.

TODO

- [x] More schema conversion test cases for legacy schema patterns.

[1]: ea09522659/LogicalTypes.md
[2]: https://github.com/apache/parquet-mr/

Author: Cheng Lian <lian@databricks.com>

Closes #6617 from liancheng/spark-6777 and squashes the following commits:

2a2062d [Cheng Lian] Don't convert decimals without precision information
b60979b [Cheng Lian] Adds a constructor which accepts a Configuration, and fixes default value of assumeBinaryIsString
743730f [Cheng Lian] Decimal scale shouldn't be larger than precision
a104a9e [Cheng Lian] Fixes Scala style issue
1f71d8d [Cheng Lian] Adds feature flag to allow falling back to old style Parquet schema conversion
ba84f4b [Cheng Lian] Fixes MapType schema conversion bug
13cb8d5 [Cheng Lian] Fixes MiMa failure
81de5b0 [Cheng Lian] Fixes UDT, workaround read path, and add tests
28ef95b [Cheng Lian] More AnalysisExceptions
b10c322 [Cheng Lian] Replaces require() with analysisRequire() which throws AnalysisException
cceaf3f [Cheng Lian] Implements backwards compatibility rules in CatalystSchemaConverter
2015-06-24 15:03:43 -07:00
Wenchen Fan f04b5672c5 [SPARK-7289] handle project -> limit -> sort efficiently
make the `TakeOrdered` strategy and operator more general, such that it can optionally handle a projection when necessary

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #6780 from cloud-fan/limit and squashes the following commits:

34aa07b [Wenchen Fan] revert
07d5456 [Wenchen Fan] clean closure
20821ec [Wenchen Fan] fix
3676a82 [Wenchen Fan] address comments
b558549 [Wenchen Fan] address comments
214842b [Wenchen Fan] fix style
2d8be83 [Wenchen Fan] add LimitPushDown
948f740 [Wenchen Fan] fix existing
2015-06-24 13:28:50 -07:00
Yin Huai bba6699d0e [SPARK-8578] [SQL] Should ignore user defined output committer when appending data
https://issues.apache.org/jira/browse/SPARK-8578

It is not very safe to use a custom output committer when append data to an existing dir. This changes adds the logic to check if we are appending data, and if so, we use the output committer associated with the file output format.

Author: Yin Huai <yhuai@databricks.com>

Closes #6964 from yhuai/SPARK-8578 and squashes the following commits:

43544c4 [Yin Huai] Do not use a custom output commiter when appendiing data.
2015-06-24 09:50:03 -07:00
Cheng Lian 9d36ec2431 [SPARK-8567] [SQL] Debugging flaky HiveSparkSubmitSuite
Using similar approach used in `HiveThriftServer2Suite` to print stdout/stderr of the spawned process instead of logging them to see what happens on Jenkins. (This test suite only fails on Jenkins and doesn't spill out any log...)

cc yhuai

Author: Cheng Lian <lian@databricks.com>

Closes #6978 from liancheng/debug-hive-spark-submit-suite and squashes the following commits:

b031647 [Cheng Lian] Prints process stdout/stderr instead of logging them
2015-06-24 09:49:20 -07:00
Eric Liang 50c3a86f42 [SPARK-6749] [SQL] Make metastore client robust to underlying socket connection loss
This works around a bug in the underlying RetryingMetaStoreClient (HIVE-10384) by refreshing the metastore client on thrift exceptions. We attempt to emulate the proper hive behavior by retrying only as configured by hiveconf.

Author: Eric Liang <ekl@databricks.com>

Closes #6912 from ericl/spark-6749 and squashes the following commits:

2d54b55 [Eric Liang] use conf from state
0e3a74e [Eric Liang] use shim properly
980b3e5 [Eric Liang] Fix conf parsing hive 0.14 conf.
92459b6 [Eric Liang] Work around RetryingMetaStoreClient bug
2015-06-23 22:27:17 -07:00
Cheng Hao 13321e6555 [SPARK-7859] [SQL] Collect_set() behavior differences which fails the unit test under jdk8
To reproduce that:
```
JAVA_HOME=/home/hcheng/Java/jdk1.8.0_45 | build/sbt -Phadoop-2.3 -Phive  'test-only org.apache.spark.sql.hive.execution.HiveWindowFunctionQueryWithoutCodeGenSuite'
```

A simple workaround to fix that is update the original query, for getting the output size instead of the exact elements of the array (output by collect_set())

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

Closes #6402 from chenghao-intel/windowing and squashes the following commits:

99312ad [Cheng Hao] add order by for the select clause
edf8ce3 [Cheng Hao] update the code as suggested
7062da7 [Cheng Hao] fix the collect_set() behaviour differences under different versions of JDK
2015-06-22 20:04:49 -07:00
Davies Liu 6b7f2ceafd [SPARK-8307] [SQL] improve timestamp from parquet
This PR change to convert julian day to unix timestamp directly (without Calendar and Timestamp).

cc adrian-wang rxin

Author: Davies Liu <davies@databricks.com>

Closes #6759 from davies/improve_ts and squashes the following commits:

849e301 [Davies Liu] Merge branch 'master' of github.com:apache/spark into improve_ts
b0e4cad [Davies Liu] Merge branch 'master' of github.com:apache/spark into improve_ts
8e2d56f [Davies Liu] address comments
634b9f5 [Davies Liu] fix mima
4891efb [Davies Liu] address comment
bfc437c [Davies Liu] fix build
ae5979c [Davies Liu] Merge branch 'master' of github.com:apache/spark into improve_ts
602b969 [Davies Liu] remove jodd
2f2e48c [Davies Liu] fix test
8ace611 [Davies Liu] fix mima
212143b [Davies Liu] fix mina
c834108 [Davies Liu] Merge branch 'master' of github.com:apache/spark into improve_ts
a3171b8 [Davies Liu] Merge branch 'master' of github.com:apache/spark into improve_ts
5233974 [Davies Liu] fix scala style
361fd62 [Davies Liu] address comments
ea196d4 [Davies Liu] improve timestamp from parquet
2015-06-22 18:03:59 -07:00
Wenchen Fan da7bbb9435 [SPARK-8104] [SQL] auto alias expressions in analyzer
Currently we auto alias expression in parser. However, during parser phase we don't have enough information to do the right alias. For example, Generator that has more than 1 kind of element need MultiAlias, ExtractValue don't need Alias if it's in middle of a ExtractValue chain.

Author: Wenchen Fan <cloud0fan@outlook.com>

Closes #6647 from cloud-fan/alias and squashes the following commits:

552eba4 [Wenchen Fan] fix python
5b5786d [Wenchen Fan] fix agg
73a90cb [Wenchen Fan] fix case-preserve of ExtractValue
4cfd23c [Wenchen Fan] fix order by
d18f401 [Wenchen Fan] refine
9f07359 [Wenchen Fan] address comments
39c1aef [Wenchen Fan] small fix
33640ec [Wenchen Fan] auto alias expressions in analyzer
2015-06-22 12:13:00 -07:00
Cheng Lian 0818fdec37 [SPARK-8406] [SQL] Adding UUID to output file name to avoid accidental overwriting
This PR fixes a Parquet output file name collision bug which may cause data loss.  Changes made:

1.  Identify each write job issued by `InsertIntoHadoopFsRelation` with a UUID

    All concrete data sources which extend `HadoopFsRelation` (Parquet and ORC for now) must use this UUID to generate task output file path to avoid name collision.

2.  Make `TestHive` use a local mode `SparkContext` with 32 threads to increase parallelism

    The major reason for this is that, the original parallelism of 2 is too low to reproduce the data loss issue.  Also, higher concurrency may potentially caught more concurrency bugs during testing phase. (It did help us spotted SPARK-8501.)

3. `OrcSourceSuite` was updated to workaround SPARK-8501, which we detected along the way.

NOTE: This PR is made a little bit more complicated than expected because we hit two other bugs on the way and have to work them around. See [SPARK-8501] [1] and [SPARK-8513] [2].

[1]: https://github.com/liancheng/spark/tree/spark-8501
[2]: https://github.com/liancheng/spark/tree/spark-8513

----

Some background and a summary of offline discussion with yhuai about this issue for better understanding:

In 1.4.0, we added `HadoopFsRelation` to abstract partition support of all data sources that are based on Hadoop `FileSystem` interface.  Specifically, this makes partition discovery, partition pruning, and writing dynamic partitions for data sources much easier.

To support appending, the Parquet data source tries to find out the max part number of part-files in the destination directory (i.e., `<id>` in output file name `part-r-<id>.gz.parquet`) at the beginning of the write job.  In 1.3.0, this step happens on driver side before any files are written.  However, in 1.4.0, this is moved to task side.  Unfortunately, for tasks scheduled later, they may see wrong max part number generated of files newly written by other finished tasks within the same job.  This actually causes a race condition.  In most cases, this only causes nonconsecutive part numbers in output file names.  But when the DataFrame contains thousands of RDD partitions, it's likely that two tasks may choose the same part number, then one of them gets overwritten by the other.

Before `HadoopFsRelation`, Spark SQL already supports appending data to Hive tables.  From a user's perspective, these two look similar.  However, they differ a lot internally.  When data are inserted into Hive tables via Spark SQL, `InsertIntoHiveTable` simulates Hive's behaviors:

1.  Write data to a temporary location

2.  Move data in the temporary location to the final destination location using

    -   `Hive.loadTable()` for non-partitioned table
    -   `Hive.loadPartition()` for static partitions
    -   `Hive.loadDynamicPartitions()` for dynamic partitions

The important part is that, `Hive.copyFiles()` is invoked in step 2 to move the data to the destination directory (I found the name is kinda confusing since no "copying" occurs here, we are just moving and renaming stuff).  If a file in the source directory and another file in the destination directory happen to have the same name, say `part-r-00001.parquet`, the former is moved to the destination directory and renamed with a `_copy_N` postfix (`part-r-00001_copy_1.parquet`).  That's how Hive handles appending and avoids name collision between different write jobs.

Some alternatives fixes considered for this issue:

1.  Use a similar approach as Hive

    This approach is not preferred in Spark 1.4.0 mainly because file metadata operations in S3 tend to be slow, especially for tables with lots of file and/or partitions.  That's why `InsertIntoHadoopFsRelation` just inserts to destination directory directly, and is often used together with `DirectParquetOutputCommitter` to reduce latency when working with S3.  This means, we don't have the chance to do renaming, and must avoid name collision from the very beginning.

2.  Same as 1.3, just move max part number detection back to driver side

    This isn't doable because unlike 1.3, 1.4 also takes dynamic partitioning into account.  When inserting into dynamic partitions, we don't know which partition directories will be touched on driver side before issuing the write job.  Checking all partition directories is simply too expensive for tables with thousands of partitions.

3.  Add extra component to output file names to avoid name collision

    This seems to be the only reasonable solution for now.  To be more specific, we need a JOB level unique identifier to identify all write jobs issued by `InsertIntoHadoopFile`.  Notice that TASK level unique identifiers can NOT be used.  Because in this way a speculative task will write to a different output file from the original task.  If both tasks succeed, duplicate output will be left behind.  Currently, the ORC data source adds `System.currentTimeMillis` to the output file name for uniqueness.  This doesn't work because of exactly the same reason.

    That's why this PR adds a job level random UUID in `BaseWriterContainer` (which is used by `InsertIntoHadoopFsRelation` to issue write jobs).  The drawback is that record order is not preserved any more (output files of a later job may be listed before those of a earlier job).  However, we never promise to preserve record order when writing data, and Hive doesn't promise this either because the `_copy_N` trick breaks the order.

Author: Cheng Lian <lian@databricks.com>

Closes #6864 from liancheng/spark-8406 and squashes the following commits:

db7a46a [Cheng Lian] More comments
f5c1133 [Cheng Lian] Addresses comments
85c478e [Cheng Lian] Workarounds SPARK-8513
088c76c [Cheng Lian] Adds comment about SPARK-8501
99a5e7e [Cheng Lian] Uses job level UUID in SimpleTextRelation and avoids double task abortion
4088226 [Cheng Lian] Works around SPARK-8501
1d7d206 [Cheng Lian] Adds more logs
8966bbb [Cheng Lian] Fixes Scala style issue
18b7003 [Cheng Lian] Uses job level UUID to take speculative tasks into account
3806190 [Cheng Lian] Lets TestHive use all cores by default
748dbd7 [Cheng Lian] Adding UUID to output file name to avoid accidental overwriting
2015-06-22 10:03:57 -07:00
Cheng Lian 83cdfd84f8 [SPARK-8508] [SQL] Ignores a test case to cleanup unnecessary testing output until #6882 is merged
Currently [the test case for SPARK-7862] [1] writes 100,000 lines of integer triples to stderr and makes Jenkins build output unnecessarily large and it's hard to debug other build errors. A proper fix is on the way in #6882. This PR ignores this test case temporarily until #6882 is merged.

[1]: https://github.com/apache/spark/pull/6404/files#diff-1ea02a6fab84e938582f7f87cc4d9ea1R641

Author: Cheng Lian <lian@databricks.com>

Closes #6925 from liancheng/spark-8508 and squashes the following commits:

41e5b47 [Cheng Lian] Ignores the test case until #6882 is merged
2015-06-21 13:20:28 -07:00
jeanlyn a1e3649c87 [SPARK-8379] [SQL] avoid speculative tasks write to the same file
The issue link [SPARK-8379](https://issues.apache.org/jira/browse/SPARK-8379)
Currently,when we insert data to the dynamic partition with speculative tasks we will get the Exception
```
org.apache.hadoop.ipc.RemoteException(org.apache.hadoop.hdfs.server.namenode.LeaseExpiredException):
Lease mismatch on /tmp/hive-jeanlyn/hive_2015-06-15_15-20-44_734_8801220787219172413-1/-ext-10000/ds=2015-06-15/type=2/part-00301.lzo
owned by DFSClient_attempt_201506031520_0011_m_000189_0_-1513487243_53
but is accessed by DFSClient_attempt_201506031520_0011_m_000042_0_-1275047721_57
```
This pr try to write the data to temporary dir when using dynamic parition  avoid the speculative tasks writing the same file

Author: jeanlyn <jeanlyn92@gmail.com>

Closes #6833 from jeanlyn/speculation and squashes the following commits:

64bbfab [jeanlyn] use FileOutputFormat.getTaskOutputPath to get the path
8860af0 [jeanlyn] remove the never using code
e19a3bd [jeanlyn] avoid speculative tasks write same file
2015-06-21 00:13:40 -07:00
Andrew Or bec40e52be [HOTFIX] [SPARK-8489] Correct JIRA number in previous commit
It should be SPARK-8489, not SPARK-8498.
2015-06-19 17:39:26 -07:00
Andrew Or 093c34838d [SPARK-8498] [SQL] Add regression test for SPARK-8470
**Summary of the problem in SPARK-8470.** When using `HiveContext` to create a data frame of a user case class, Spark throws `scala.reflect.internal.MissingRequirementError` when it tries to infer the schema using reflection. This is caused by `HiveContext` silently overwriting the context class loader containing the user classes.

**What this issue is about.** This issue adds regression tests for SPARK-8470, which is already fixed in #6891. We closed SPARK-8470 as a duplicate because it is a different manifestation of the same problem in SPARK-8368. Due to the complexity of the reproduction, this requires us to pre-package a special test jar and include it in the Spark project itself.

I tested this with and without the fix in #6891 and verified that it passes only if the fix is present.

Author: Andrew Or <andrew@databricks.com>

Closes #6909 from andrewor14/SPARK-8498 and squashes the following commits:

5e9d688 [Andrew Or] Add regression test for SPARK-8470
2015-06-19 17:34:09 -07:00
Yin Huai c5876e529b [SPARK-8368] [SPARK-8058] [SQL] HiveContext may override the context class loader of the current thread
https://issues.apache.org/jira/browse/SPARK-8368

Also, I add tests according https://issues.apache.org/jira/browse/SPARK-8058.

Author: Yin Huai <yhuai@databricks.com>

Closes #6891 from yhuai/SPARK-8368 and squashes the following commits:

37bb3db [Yin Huai] Update test timeout and comment.
8762eec [Yin Huai] Style.
695cd2d [Yin Huai] Correctly set the class loader in the conf of the state in client wrapper.
b3378fe [Yin Huai] Failed tests.
2015-06-19 11:11:58 -07:00
Cheng Lian a71cbbdea5 [SPARK-8458] [SQL] Don't strip scheme part of output path when writing ORC files
`Path.toUri.getPath` strips scheme part of output path (from `file:///foo` to `/foo`), which causes ORC data source only writes to the file system configured in Hadoop configuration. Should use `Path.toString` instead.

Author: Cheng Lian <lian@databricks.com>

Closes #6892 from liancheng/spark-8458 and squashes the following commits:

87f8199 [Cheng Lian] Don't strip scheme of output path when writing ORC files
2015-06-18 22:01:52 -07:00
Sandy Ryza 43f50decdd [SPARK-8135] Don't load defaults when reconstituting Hadoop Configurations
Author: Sandy Ryza <sandy@cloudera.com>

Closes #6679 from sryza/sandy-spark-8135 and squashes the following commits:

c5554ff [Sandy Ryza] SPARK-8135. In SerializableWritable, don't load defaults when instantiating Configuration
2015-06-18 19:36:05 -07:00
Yijie Shen e86fbdb1e6 [SPARK-8283][SQL] Resolve udf_struct test failure in HiveCompatibilitySuite
This PR aimed to resolve udf_struct test failure in HiveCompatibilitySuite.

Currently, this is done by loosening CreateStruct's children type from NamedExpression to Expression and automatically generating StructField name for non-NamedExpression children.

The naming convention for unnamed children follows the udf's counterpart in Hive:
`col1, col2, col3, ...`

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

Closes #6828 from yijieshen/SPARK-8283 and squashes the following commits:

6052b73 [Yijie Shen] Doc fix
677e0b7 [Yijie Shen] Resolve udf_struct test failure by automatically generate structField name for non-NamedExpression children
2015-06-17 23:46:57 -07:00
zsxwing 78a430ea4d [SPARK-7961][SQL]Refactor SQLConf to display better error message
1. Add `SQLConfEntry` to store the information about a configuration. For those configurations that cannot be found in `sql-programming-guide.md`, I left the doc as `<TODO>`.
2. Verify the value when setting a configuration if this is in SQLConf.
3. Use `SET -v` to display all public configurations.

Author: zsxwing <zsxwing@gmail.com>

Closes #6747 from zsxwing/sqlconf and squashes the following commits:

7d09bad [zsxwing] Use SQLConfEntry in HiveContext
49f6213 [zsxwing] Add getConf, setConf to SQLContext and HiveContext
e014f53 [zsxwing] Merge branch 'master' into sqlconf
93dad8e [zsxwing] Fix the unit tests
cf950c1 [zsxwing] Fix the code style and tests
3c5f03e [zsxwing] Add unsetConf(SQLConfEntry) and fix the code style
a2f4add [zsxwing] getConf will return the default value if a config is not set
037b1db [zsxwing] Add schema to SetCommand
0520c3c [zsxwing] Merge branch 'master' into sqlconf
7afb0ec [zsxwing] Fix the configurations about HiveThriftServer
7e728e3 [zsxwing] Add doc for SQLConfEntry and fix 'toString'
5e95b10 [zsxwing] Add enumConf
c6ba76d [zsxwing] setRawString => setConfString, getRawString => getConfString
4abd807 [zsxwing] Fix the test for 'set -v'
6e47e56 [zsxwing] Fix the compilation error
8973ced [zsxwing] Remove floatConf
1fc3a8b [zsxwing] Remove the 'conf' command and use 'set -v' instead
99c9c16 [zsxwing] Fix tests that use SQLConfEntry as a string
88a03cc [zsxwing] Add new lines between confs and return types
ce7c6c8 [zsxwing] Remove seqConf
f3c1b33 [zsxwing] Refactor SQLConf to display better error message
2015-06-17 23:22:54 -07:00
Punya Biswal d1069cba4a [SPARK-8397] [SQL] Allow custom configuration for TestHive
We encourage people to use TestHive in unit tests, because it's
impossible to create more than one HiveContext within one process. The
current implementation locks people into using a local[2] SparkContext
underlying their HiveContext.  We should make it possible to override
this using a system property so that people can test against
local-cluster or remote spark clusters to make their tests more
realistic.

Author: Punya Biswal <pbiswal@palantir.com>

Closes #6844 from punya/feature/SPARK-8397 and squashes the following commits:

97ef394 [Punya Biswal] [SPARK-8397][SQL] Allow custom configuration for TestHive
2015-06-17 15:29:39 -07:00
Yin Huai 302556ff99 [SPARK-8306] [SQL] AddJar command needs to set the new class loader to the HiveConf inside executionHive.state.
https://issues.apache.org/jira/browse/SPARK-8306

I will try to add a test later.

marmbrus aarondav

Author: Yin Huai <yhuai@databricks.com>

Closes #6758 from yhuai/SPARK-8306 and squashes the following commits:

1292346 [Yin Huai] [SPARK-8306] AddJar command needs to set the new class loader to the HiveConf inside executionHive.state.
2015-06-17 14:52:43 -07:00
baishuo 0b8c8fdc12 [SPARK-8156] [SQL] create table to specific database by 'use dbname'
when i test the following code:
hiveContext.sql("""use testdb""")
val df = (1 to 3).map(i => (i, s"val_$i", i * 2)).toDF("a", "b", "c")
df.write
.format("parquet")
.mode(SaveMode.Overwrite)
.saveAsTable("ttt3")
hiveContext.sql("show TABLES in default")

found that the table ttt3 will be created under the database "default"

Author: baishuo <vc_java@hotmail.com>

Closes #6695 from baishuo/SPARK-8516-use-database and squashes the following commits:

9e155f9 [baishuo] remove no use comment
cb9f027 [baishuo] modify testcase
00a7a2d [baishuo] modify testcase
4df48c7 [baishuo] modify testcase
b742e69 [baishuo] modify testcase
3d19ad9 [baishuo] create table to specific database
2015-06-16 16:40:02 -07:00
Davies Liu bc76a0f750 [SPARK-7184] [SQL] enable codegen by default
In order to have better performance out of box, this PR turn on codegen by default, then codegen can be tested by sql/test and hive/test.

This PR also fix some corner cases for codegen.

Before 1.5 release, we should re-visit this, turn it off if it's not stable or causing regressions.

cc rxin JoshRosen

Author: Davies Liu <davies@databricks.com>

Closes #6726 from davies/enable_codegen and squashes the following commits:

f3b25a5 [Davies Liu] fix warning
73750ea [Davies Liu] fix long overflow when compare
3017a47 [Davies Liu] Merge branch 'master' of github.com:apache/spark into enable_codegen
a7d75da [Davies Liu] Merge branch 'master' of github.com:apache/spark into enable_codegen
ff5b75a [Davies Liu] Merge branch 'master' of github.com:apache/spark into enable_codegen
f4cf2c2 [Davies Liu] fix style
99fc139 [Davies Liu] Merge branch 'enable_codegen' of github.com:davies/spark into enable_codegen
91fc7a2 [Davies Liu] disable codegen for ScalaUDF
207e339 [Davies Liu] Update CodeGenerator.scala
44573a3 [Davies Liu] check thread safety of expression
f3886fa [Davies Liu] don't inline primitiveTerm for null literal
c8e7cd2 [Davies Liu] address comment
a8618c9 [Davies Liu] enable codegen by default
2015-06-15 23:03:14 -07:00
Marcelo Vanzin 4eb48ed1da [SPARK-8065] [SQL] Add support for Hive 0.14 metastores
This change has two parts.

The first one gets rid of "ReflectionMagic". That worked well for the differences between 0.12 and
0.13, but breaks in 0.14, since some of the APIs that need to be used have primitive types. I could
not figure out a way to make that class work with primitive types. So instead I wrote some shims
 (I can already hear the collective sigh) that find the appropriate methods via reflection. This should
be faster since the method instances are cached, and the code is not much uglier than before,
with the advantage that all the ugliness is local to one file (instead of multiple switch statements on
the version being used scattered in ClientWrapper).

The second part is simple: add code to handle Hive 0.14. A few new methods had to be added
to the new shims.

Author: Marcelo Vanzin <vanzin@cloudera.com>

Closes #6627 from vanzin/SPARK-8065 and squashes the following commits:

3fa4270 [Marcelo Vanzin] Indentation style.
4b8a3d4 [Marcelo Vanzin] Fix dep exclusion.
be3d0cc [Marcelo Vanzin] Merge branch 'master' into SPARK-8065
ca3fb1e [Marcelo Vanzin] Merge branch 'master' into SPARK-8065
b43f13e [Marcelo Vanzin] Since exclusions seem to work, clean up some of the code.
73bd161 [Marcelo Vanzin] Botched merge.
d2ddf01 [Marcelo Vanzin] Comment about excluded dep.
0c929d1 [Marcelo Vanzin] Merge branch 'master' into SPARK-8065
2c3c02e [Marcelo Vanzin] Try to fix tests by adding support for exclusions.
0a03470 [Marcelo Vanzin] Try to fix tests by upgrading calcite dependency.
13b2dfa [Marcelo Vanzin] Fix NPE.
6439d88 [Marcelo Vanzin] Minor style thing.
69b017b [Marcelo Vanzin] Style.
a21cad8 [Marcelo Vanzin] Part II: Add shims / version for Hive 0.14.
ae98c87 [Marcelo Vanzin] PART I: Get rid of reflection magic.
2015-06-14 11:49:22 -07:00
Liang-Chi Hsieh ddec45279e [SPARK-8052] [SQL] Use java.math.BigDecimal for casting String to Decimal instead of using toDouble
JIRA: https://issues.apache.org/jira/browse/SPARK-8052

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

Closes #6645 from viirya/cast_string_integraltype and squashes the following commits:

e19c6a3 [Liang-Chi Hsieh] For comment.
c3e472a [Liang-Chi Hsieh] Add test.
7ced9b0 [Liang-Chi Hsieh] Use java.math.BigDecimal for casting String to Decimal instead of using toDouble.
2015-06-13 16:39:52 -07:00
Davies Liu d46f8e5d4b [SPARK-7186] [SQL] Decouple internal Row from external Row
Currently, we use o.a.s.sql.Row both internally and externally. The external interface is wider than what the internal needs because it is designed to facilitate end-user programming. This design has proven to be very error prone and cumbersome for internal Row implementations.

As a first step, we create an InternalRow interface in the catalyst module, which is identical to the current Row interface. And we switch all internal operators/expressions to use this InternalRow instead. When we need to expose Row, we convert the InternalRow implementation into Row for users.

For all public API, we use Row (for example, data source APIs), which will be converted into/from InternalRow by CatalystTypeConverters.

For all internal data sources (Json, Parquet, JDBC, Hive), we use InternalRow for better performance, casted into Row in buildScan() (without change the public API). When create a PhysicalRDD, we cast them back to InternalRow.

cc rxin marmbrus JoshRosen

Author: Davies Liu <davies@databricks.com>

Closes #6792 from davies/internal_row and squashes the following commits:

f2abd13 [Davies Liu] fix scalastyle
a7e025c [Davies Liu] move InternalRow into catalyst
30db8ba [Davies Liu] Merge branch 'master' of github.com:apache/spark into internal_row
7cbced8 [Davies Liu] separate Row and InternalRow
2015-06-12 23:06:31 -07:00