## What changes were proposed in this pull request?
`ColumnVector` is very flexible about how to implement array type. As a result `ColumnVector` has 3 abstract methods for array type: `arrayData`, `getArrayOffset`, `getArrayLength`. For example, in `WritableColumnVector` we use the first child vector as the array data vector, and store offsets and lengths in 2 arrays in the parent vector. `ArrowColumnVector` has a different implementation.
This PR simplifies `ColumnVector` by using only one abstract method for array type: `getArray`.
## How was this patch tested?
existing tests.
rerun `ColumnarBatchBenchmark`, there is no performance regression.
Author: Wenchen Fan <wenchen@databricks.com>
Closes#20395 from cloud-fan/vector.
## What changes were proposed in this pull request?
**Proposal**
Add a per-query ID to the codegen stages as represented by `WholeStageCodegenExec` operators. This ID will be used in
- the explain output of the physical plan, and in
- the generated class name.
Specifically, this ID will be stable within a query, counting up from 1 in depth-first post-order for all the `WholeStageCodegenExec` inserted into a plan.
The ID value 0 is reserved for "free-floating" `WholeStageCodegenExec` objects, which may have been created for one-off purposes, e.g. for fallback handling of codegen stages that failed to codegen the whole stage and wishes to codegen a subset of the children operators (as seen in `org.apache.spark.sql.execution.FileSourceScanExec#doExecute`).
Example: for the following query:
```scala
scala> spark.conf.set("spark.sql.autoBroadcastJoinThreshold", 1)
scala> val df1 = spark.range(10).select('id as 'x, 'id + 1 as 'y).orderBy('x).select('x + 1 as 'z, 'y)
df1: org.apache.spark.sql.DataFrame = [z: bigint, y: bigint]
scala> val df2 = spark.range(5)
df2: org.apache.spark.sql.Dataset[Long] = [id: bigint]
scala> val query = df1.join(df2, 'z === 'id)
query: org.apache.spark.sql.DataFrame = [z: bigint, y: bigint ... 1 more field]
```
The explain output before the change is:
```scala
scala> query.explain
== Physical Plan ==
*SortMergeJoin [z#9L], [id#13L], Inner
:- *Sort [z#9L ASC NULLS FIRST], false, 0
: +- Exchange hashpartitioning(z#9L, 200)
: +- *Project [(x#3L + 1) AS z#9L, y#4L]
: +- *Sort [x#3L ASC NULLS FIRST], true, 0
: +- Exchange rangepartitioning(x#3L ASC NULLS FIRST, 200)
: +- *Project [id#0L AS x#3L, (id#0L + 1) AS y#4L]
: +- *Range (0, 10, step=1, splits=8)
+- *Sort [id#13L ASC NULLS FIRST], false, 0
+- Exchange hashpartitioning(id#13L, 200)
+- *Range (0, 5, step=1, splits=8)
```
Note how codegen'd operators are annotated with a prefix `"*"`. See how the `SortMergeJoin` operator and its direct children `Sort` operators are adjacent and all annotated with the `"*"`, so it's hard to tell they're actually in separate codegen stages.
and after this change it'll be:
```scala
scala> query.explain
== Physical Plan ==
*(6) SortMergeJoin [z#9L], [id#13L], Inner
:- *(3) Sort [z#9L ASC NULLS FIRST], false, 0
: +- Exchange hashpartitioning(z#9L, 200)
: +- *(2) Project [(x#3L + 1) AS z#9L, y#4L]
: +- *(2) Sort [x#3L ASC NULLS FIRST], true, 0
: +- Exchange rangepartitioning(x#3L ASC NULLS FIRST, 200)
: +- *(1) Project [id#0L AS x#3L, (id#0L + 1) AS y#4L]
: +- *(1) Range (0, 10, step=1, splits=8)
+- *(5) Sort [id#13L ASC NULLS FIRST], false, 0
+- Exchange hashpartitioning(id#13L, 200)
+- *(4) Range (0, 5, step=1, splits=8)
```
Note that the annotated prefix becomes `"*(id) "`. See how the `SortMergeJoin` operator and its direct children `Sort` operators have different codegen stage IDs.
It'll also show up in the name of the generated class, as a suffix in the format of `GeneratedClass$GeneratedIterator$id`.
For example, note how `GeneratedClass$GeneratedIteratorForCodegenStage3` and `GeneratedClass$GeneratedIteratorForCodegenStage6` in the following stack trace corresponds to the IDs shown in the explain output above:
```
"Executor task launch worker for task 42412957" daemon prio=5 tid=0x58 nid=NA runnable
java.lang.Thread.State: RUNNABLE
at org.apache.spark.sql.execution.UnsafeExternalRowSorter.insertRow(UnsafeExternalRowSorter.java:109)
at org.apache.spark.sql.catalyst.expressions.GeneratedClass$GeneratedIteratorForCodegenStage3.sort_addToSorter$(generated.java:32)
at org.apache.spark.sql.catalyst.expressions.GeneratedClass$GeneratedIteratorForCodegenStage3.processNext(generated.java:41)
at org.apache.spark.sql.execution.BufferedRowIterator.hasNext(BufferedRowIterator.java:43)
at org.apache.spark.sql.execution.WholeStageCodegenExec$$anonfun$9$$anon$1.hasNext(WholeStageCodegenExec.scala:494)
at org.apache.spark.sql.catalyst.expressions.GeneratedClass$GeneratedIteratorForCodegenStage6.findNextInnerJoinRows$(generated.java:42)
at org.apache.spark.sql.catalyst.expressions.GeneratedClass$GeneratedIteratorForCodegenStage6.processNext(generated.java:101)
at org.apache.spark.sql.execution.BufferedRowIterator.hasNext(BufferedRowIterator.java:43)
at org.apache.spark.sql.execution.WholeStageCodegenExec$$anonfun$11$$anon$2.hasNext(WholeStageCodegenExec.scala:513)
at org.apache.spark.sql.execution.SparkPlan$$anonfun$2.apply(SparkPlan.scala:253)
at org.apache.spark.sql.execution.SparkPlan$$anonfun$2.apply(SparkPlan.scala:247)
at org.apache.spark.rdd.RDD$$anonfun$mapPartitionsInternal$1$$anonfun$apply$25.apply(RDD.scala:828)
at org.apache.spark.rdd.RDD$$anonfun$mapPartitionsInternal$1$$anonfun$apply$25.apply(RDD.scala:828)
at org.apache.spark.rdd.MapPartitionsRDD.compute(MapPartitionsRDD.scala:38)
at org.apache.spark.rdd.RDD.computeOrReadCheckpoint(RDD.scala:324)
at org.apache.spark.rdd.RDD.iterator(RDD.scala:288)
at org.apache.spark.scheduler.ResultTask.runTask(ResultTask.scala:87)
at org.apache.spark.scheduler.Task.run(Task.scala:109)
at org.apache.spark.executor.Executor$TaskRunner.run(Executor.scala:345)
at java.util.concurrent.ThreadPoolExecutor.runWorker(ThreadPoolExecutor.java:1142)
at java.util.concurrent.ThreadPoolExecutor$Worker.run(ThreadPoolExecutor.java:617)
at java.lang.Thread.run(Thread.java:748)
```
**Rationale**
Right now, the codegen from Spark SQL lacks the means to differentiate between a couple of things:
1. It's hard to tell which physical operators are in the same WholeStageCodegen stage. Note that this "stage" is a separate notion from Spark's RDD execution stages; this one is only to delineate codegen units.
There can be adjacent physical operators that are both codegen'd but are in separate codegen stages. Some of this is due to hacky implementation details, such as the case with `SortMergeJoin` and its `Sort` inputs -- they're hard coded to be split into separate stages although both are codegen'd.
When printing out the explain output of the physical plan, you'd only see the codegen'd physical operators annotated with a preceding star (`'*'`) but would have no way to figure out if they're in the same stage.
2. Performance/error diagnosis
The generated code has class/method names that are hard to differentiate between queries or even between codegen stages within the same query. If we use a Java-level profiler to collect profiles, or if we encounter a Java-level exception with a stack trace in it, it's really hard to tell which part of a query it's at.
By introducing a per-query codegen stage ID, we'd at least be able to know which codegen stage (and in turn, which group of physical operators) was a profile tick or an exception happened.
The reason why this proposal uses a per-query ID is because it's stable within a query, so that multiple runs of the same query will see the same resulting IDs. This both benefits understandability for users, and also it plays well with the codegen cache in Spark SQL which uses the generated source code as the key.
The downside to using per-query IDs as opposed to a per-session or globally incrementing ID is of course we can't tell apart different query runs with this ID alone. But for now I believe this is a good enough tradeoff.
## How was this patch tested?
Existing tests. This PR does not involve any runtime behavior changes other than some name changes.
The SQL query test suites that compares explain outputs have been updates to ignore the newly added `codegenStageId`.
Author: Kris Mok <kris.mok@databricks.com>
Closes#20224 from rednaxelafx/wsc-codegenstageid.
## What changes were proposed in this pull request?
Add colRegex API to PySpark
## How was this patch tested?
add a test in sql/tests.py
Author: Huaxin Gao <huaxing@us.ibm.com>
Closes#20390 from huaxingao/spark-23081.
## What changes were proposed in this pull request?
It has been observed in SPARK-21603 that whole-stage codegen suffers performance degradation, if the generated functions are too long to be optimized by JIT.
We basically produce a single function to incorporate generated codes from all physical operators in whole-stage. Thus, it is possibly to grow the size of generated function over a threshold that we can't have JIT optimization for it anymore.
This patch is trying to decouple the logic of consuming rows in physical operators to avoid a giant function processing rows.
## How was this patch tested?
Added tests.
Author: Liang-Chi Hsieh <viirya@gmail.com>
Closes#18931 from viirya/SPARK-21717.
…JSON / text
## What changes were proposed in this pull request?
Fix for JSON and CSV data sources when file names include characters
that would be changed by URL encoding.
## How was this patch tested?
New unit tests for JSON, CSV and text suites
Author: Henry Robinson <henry@cloudera.com>
Closes#20355 from henryr/spark-23148.
## What changes were proposed in this pull request?
We extract Python UDFs in logical aggregate which depends on aggregate expression or grouping key in ExtractPythonUDFFromAggregate rule. But Python UDFs which don't depend on above expressions should also be extracted to avoid the issue reported in the JIRA.
A small code snippet to reproduce that issue looks like:
```python
import pyspark.sql.functions as f
df = spark.createDataFrame([(1,2), (3,4)])
f_udf = f.udf(lambda: str("const_str"))
df2 = df.distinct().withColumn("a", f_udf())
df2.show()
```
Error exception is raised as:
```
: org.apache.spark.sql.catalyst.errors.package$TreeNodeException: Binding attribute, tree: pythonUDF0#50
at org.apache.spark.sql.catalyst.errors.package$.attachTree(package.scala:56)
at org.apache.spark.sql.catalyst.expressions.BindReferences$$anonfun$bindReference$1.applyOrElse(BoundAttribute.scala:91)
at org.apache.spark.sql.catalyst.expressions.BindReferences$$anonfun$bindReference$1.applyOrElse(BoundAttribute.scala:90)
at org.apache.spark.sql.catalyst.trees.TreeNode$$anonfun$2.apply(TreeNode.scala:267)
at org.apache.spark.sql.catalyst.trees.TreeNode$$anonfun$2.apply(TreeNode.scala:267)
at org.apache.spark.sql.catalyst.trees.CurrentOrigin$.withOrigin(TreeNode.scala:70)
at org.apache.spark.sql.catalyst.trees.TreeNode.transformDown(TreeNode.scala:266)
at org.apache.spark.sql.catalyst.trees.TreeNode$$anonfun$transformDown$1.apply(TreeNode.scala:272)
at org.apache.spark.sql.catalyst.trees.TreeNode$$anonfun$transformDown$1.apply(TreeNode.scala:272)
at org.apache.spark.sql.catalyst.trees.TreeNode$$anonfun$4.apply(TreeNode.scala:306)
at org.apache.spark.sql.catalyst.trees.TreeNode.mapProductIterator(TreeNode.scala:187)
at org.apache.spark.sql.catalyst.trees.TreeNode.mapChildren(TreeNode.scala:304)
at org.apache.spark.sql.catalyst.trees.TreeNode.transformDown(TreeNode.scala:272)
at org.apache.spark.sql.catalyst.trees.TreeNode.transform(TreeNode.scala:256)
at org.apache.spark.sql.catalyst.expressions.BindReferences$.bindReference(BoundAttribute.scala:90)
at org.apache.spark.sql.execution.aggregate.HashAggregateExec$$anonfun$38.apply(HashAggregateExec.scala:514)
at org.apache.spark.sql.execution.aggregate.HashAggregateExec$$anonfun$38.apply(HashAggregateExec.scala:513)
```
This exception raises because `HashAggregateExec` tries to bind the aliased Python UDF expression (e.g., `pythonUDF0#50 AS a#44`) to grouping key.
## How was this patch tested?
Added test.
Author: Liang-Chi Hsieh <viirya@gmail.com>
Closes#20360 from viirya/SPARK-23177.
## What changes were proposed in this pull request?
The broadcast hint of the cached plan is lost if we cache the plan. This PR is to correct it.
```Scala
val df1 = spark.createDataFrame(Seq((1, "4"), (2, "2"))).toDF("key", "value")
val df2 = spark.createDataFrame(Seq((1, "1"), (2, "2"))).toDF("key", "value")
broadcast(df2).cache()
df2.collect()
val df3 = df1.join(df2, Seq("key"), "inner")
```
## How was this patch tested?
Added a test.
Author: gatorsmile <gatorsmile@gmail.com>
Closes#20368 from gatorsmile/cachedBroadcastHint.
## What changes were proposed in this pull request?
The hint of the plan segment is lost, if the plan segment is replaced by the cached data.
```Scala
val df1 = spark.createDataFrame(Seq((1, "4"), (2, "2"))).toDF("key", "value")
val df2 = spark.createDataFrame(Seq((1, "1"), (2, "2"))).toDF("key", "value")
df2.cache()
val df3 = df1.join(broadcast(df2), Seq("key"), "inner")
```
This PR is to fix it.
## How was this patch tested?
Added a test
Author: gatorsmile <gatorsmile@gmail.com>
Closes#20365 from gatorsmile/fixBroadcastHintloss.
## What changes were proposed in this pull request?
We need to override the prettyName for bit_length and octet_length for getting the expected auto-generated alias name.
## How was this patch tested?
The existing tests
Author: gatorsmile <gatorsmile@gmail.com>
Closes#20358 from gatorsmile/test2.3More.
## What changes were proposed in this pull request?
Add support for using pandas UDFs with groupby().agg().
This PR introduces a new type of pandas UDF - group aggregate pandas UDF. This type of UDF defines a transformation of multiple pandas Series -> a scalar value. Group aggregate pandas UDFs can be used with groupby().agg(). Note group aggregate pandas UDF doesn't support partial aggregation, i.e., a full shuffle is required.
This PR doesn't support group aggregate pandas UDFs that return ArrayType, StructType or MapType. Support for these types is left for future PR.
## How was this patch tested?
GroupbyAggPandasUDFTests
Author: Li Jin <ice.xelloss@gmail.com>
Closes#19872 from icexelloss/SPARK-22274-groupby-agg.
## What changes were proposed in this pull request?
a new interface which allows data source to report partitioning and avoid shuffle at Spark side.
The design is pretty like the internal distribution/partitioing framework. Spark defines a `Distribution` interfaces and several concrete implementations, and ask the data source to report a `Partitioning`, the `Partitioning` should tell Spark if it can satisfy a `Distribution` or not.
## How was this patch tested?
new test
Author: Wenchen Fan <wenchen@databricks.com>
Closes#20201 from cloud-fan/partition-reporting.
## What changes were proposed in this pull request?
Typo fixes
## How was this patch tested?
Local build / Doc-only changes
Author: Jacek Laskowski <jacek@japila.pl>
Closes#20344 from jaceklaskowski/typo-fixes.
## What changes were proposed in this pull request?
Several improvements:
* provide a default implementation for the batch get methods
* rename `getChildColumn` to `getChild`, which is more concise
* remove `getStruct(int, int)`, it's only used to simplify the codegen, which is an internal thing, we should not add a public API for this purpose.
## How was this patch tested?
existing tests
Author: Wenchen Fan <wenchen@databricks.com>
Closes#20277 from cloud-fan/column-vector.
## What changes were proposed in this pull request?
Revert the unneeded test case changes we made in SPARK-23000
Also fixes the test suites that do not call `super.afterAll()` in the local `afterAll`. The `afterAll()` of `TestHiveSingleton` actually reset the environments.
## How was this patch tested?
N/A
Author: gatorsmile <gatorsmile@gmail.com>
Closes#20341 from gatorsmile/testRelated.
## What changes were proposed in this pull request?
This PR fixes the wrong comment on `org.apache.spark.sql.parquet.row.attributes`
which is useful for UDTs like Vector/Matrix. Please see [SPARK-22320](https://issues.apache.org/jira/browse/SPARK-22320) for the usage.
Originally, [SPARK-19411](bf493686eb (diff-ee26d4c4be21e92e92a02e9f16dbc285L314)) left this behind during removing optional column metadatas. In the same PR, the same comment was removed at line 310-311.
## How was this patch tested?
N/A (This is about comments).
Author: Dongjoon Hyun <dongjoon@apache.org>
Closes#20346 from dongjoon-hyun/minor_comment_parquet.
## What changes were proposed in this pull request?
CheckCartesianProduct raises an AnalysisException also when the join condition is always false/null. In this case, we shouldn't raise it, since the result will not be a cartesian product.
## How was this patch tested?
added UT
Author: Marco Gaido <marcogaido91@gmail.com>
Closes#20333 from mgaido91/SPARK-23087.
[SPARK-21786][SQL] The 'spark.sql.parquet.compression.codec' and 'spark.sql.orc.compression.codec' configuration doesn't take effect on hive table writing
What changes were proposed in this pull request?
Pass ‘spark.sql.parquet.compression.codec’ value to ‘parquet.compression’.
Pass ‘spark.sql.orc.compression.codec’ value to ‘orc.compress’.
How was this patch tested?
Add test.
Note:
This is the same issue mentioned in #19218 . That branch was deleted mistakenly, so make a new pr instead.
gatorsmile maropu dongjoon-hyun discipleforteen
Author: fjh100456 <fu.jinhua6@zte.com.cn>
Author: Takeshi Yamamuro <yamamuro@apache.org>
Author: Wenchen Fan <wenchen@databricks.com>
Author: gatorsmile <gatorsmile@gmail.com>
Author: Yinan Li <liyinan926@gmail.com>
Author: Marcelo Vanzin <vanzin@cloudera.com>
Author: Juliusz Sompolski <julek@databricks.com>
Author: Felix Cheung <felixcheung_m@hotmail.com>
Author: jerryshao <sshao@hortonworks.com>
Author: Li Jin <ice.xelloss@gmail.com>
Author: Gera Shegalov <gera@apache.org>
Author: chetkhatri <ckhatrimanjal@gmail.com>
Author: Joseph K. Bradley <joseph@databricks.com>
Author: Bago Amirbekian <bago@databricks.com>
Author: Xianjin YE <advancedxy@gmail.com>
Author: Bruce Robbins <bersprockets@gmail.com>
Author: zuotingbing <zuo.tingbing9@zte.com.cn>
Author: Kent Yao <yaooqinn@hotmail.com>
Author: hyukjinkwon <gurwls223@gmail.com>
Author: Adrian Ionescu <adrian@databricks.com>
Closes#20087 from fjh100456/HiveTableWriting.
## What changes were proposed in this pull request?
Narrow bound on approx quantile test to epsilon from 2*epsilon to match paper
## How was this patch tested?
Existing tests.
Author: Sean Owen <sowen@cloudera.com>
Closes#20324 from srowen/SPARK-23091.
## What changes were proposed in this pull request?
Several cleanups in `ColumnarBatch`
* remove `schema`. The `ColumnVector`s inside `ColumnarBatch` already have the data type information, we don't need this `schema`.
* remove `capacity`. `ColumnarBatch` is just a wrapper of `ColumnVector`s, not builders, it doesn't need a capacity property.
* remove `DEFAULT_BATCH_SIZE`. As a wrapper, `ColumnarBatch` can't decide the batch size, it should be decided by the reader, e.g. parquet reader, orc reader, cached table reader. The default batch size should also be defined by the reader.
## How was this patch tested?
existing tests.
Author: Wenchen Fan <wenchen@databricks.com>
Closes#20316 from cloud-fan/columnar-batch.
## What changes were proposed in this pull request?
After session cloning in `TestHive`, the conf of the singleton SparkContext for derby DB location is changed to a new directory. The new directory is created in `HiveUtils.newTemporaryConfiguration(useInMemoryDerby = false)`.
This PR is to keep the conf value of `ConfVars.METASTORECONNECTURLKEY.varname` unchanged during the session clone.
## How was this patch tested?
The issue can be reproduced by the command:
> build/sbt -Phive "hive/test-only org.apache.spark.sql.hive.HiveSessionStateSuite org.apache.spark.sql.hive.DataSourceWithHiveMetastoreCatalogSuite"
Also added a test case.
Author: gatorsmile <gatorsmile@gmail.com>
Closes#20328 from gatorsmile/fixTestFailure.
## What changes were proposed in this pull request?
This patch fixes a few recently introduced java style check errors in master and release branch.
As an aside, given that [java linting currently fails](https://github.com/apache/spark/pull/10763
) on machines with a clean maven cache, it'd be great to find another workaround to [re-enable the java style checks](3a07eff5af/dev/run-tests.py (L577)) as part of Spark PRB.
/cc zsxwing JoshRosen srowen for any suggestions
## How was this patch tested?
Manual Check
Author: Sameer Agarwal <sameerag@apache.org>
Closes#20323 from sameeragarwal/java.
## What changes were proposed in this pull request?
This is a follow-up of #20246.
If a UDT in Python doesn't have its corresponding Scala UDT, cast to string will be the raw string of the internal value, e.g. `"org.apache.spark.sql.catalyst.expressions.UnsafeArrayDataxxxxxxxx"` if the internal type is `ArrayType`.
This pr fixes it by using its `sqlType` casting.
## How was this patch tested?
Added a test and existing tests.
Author: Takuya UESHIN <ueshin@databricks.com>
Closes#20306 from ueshin/issues/SPARK-23054/fup1.
## What changes were proposed in this pull request?
Refactored ConsoleWriter into ConsoleMicrobatchWriter and ConsoleContinuousWriter.
## How was this patch tested?
new unit test
Author: Tathagata Das <tathagata.das1565@gmail.com>
Closes#20311 from tdas/SPARK-23144.
## What changes were proposed in this pull request?
When there is an operation between Decimals and the result is a number which is not representable exactly with the result's precision and scale, Spark is returning `NULL`. This was done to reflect Hive's behavior, but it is against SQL ANSI 2011, which states that "If the result cannot be represented exactly in the result type, then whether it is rounded or truncated is implementation-defined". Moreover, Hive now changed its behavior in order to respect the standard, thanks to HIVE-15331.
Therefore, the PR propose to:
- update the rules to determine the result precision and scale according to the new Hive's ones introduces in HIVE-15331;
- round the result of the operations, when it is not representable exactly with the result's precision and scale, instead of returning `NULL`
- introduce a new config `spark.sql.decimalOperations.allowPrecisionLoss` which default to `true` (ie. the new behavior) in order to allow users to switch back to the previous one.
Hive behavior reflects SQLServer's one. The only difference is that the precision and scale are adjusted for all the arithmetic operations in Hive, while SQL Server is said to do so only for multiplications and divisions in the documentation. This PR follows Hive's behavior.
A more detailed explanation is available here: https://mail-archives.apache.org/mod_mbox/spark-dev/201712.mbox/%3CCAEorWNAJ4TxJR9NBcgSFMD_VxTg8qVxusjP%2BAJP-x%2BJV9zH-yA%40mail.gmail.com%3E.
## How was this patch tested?
modified and added UTs. Comparisons with results of Hive and SQLServer.
Author: Marco Gaido <marcogaido91@gmail.com>
Closes#20023 from mgaido91/SPARK-22036.
## What changes were proposed in this pull request?
Migrate ConsoleSink to data source V2 api.
Note that this includes a missing piece in DataStreamWriter required to specify a data source V2 writer.
Note also that I've removed the "Rerun batch" part of the sink, because as far as I can tell this would never have actually happened. A MicroBatchExecution object will only commit each batch once for its lifetime, and a new MicroBatchExecution object would have a new ConsoleSink object which doesn't know it's retrying a batch. So I think this represents an anti-feature rather than a weakness in the V2 API.
## How was this patch tested?
new unit test
Author: Jose Torres <jose@databricks.com>
Closes#20243 from jose-torres/console-sink.
## What changes were proposed in this pull request?
Structured streaming is now able to read files with space in file name (previously it would skip the file and output a warning)
## How was this patch tested?
Added new unit test.
Author: Xiayun Sun <xiayunsun@gmail.com>
Closes#19247 from xysun/SPARK-21996.
## What changes were proposed in this pull request?
- Added `InterfaceStability.Evolving` annotations
- Improved docs.
## How was this patch tested?
Existing tests.
Author: Tathagata Das <tathagata.das1565@gmail.com>
Closes#20286 from tdas/SPARK-23119.
## What changes were proposed in this pull request?
This PR changes usage of `MapVector` in Spark codebase to use `NullableMapVector`.
`MapVector` is an internal Arrow class that is not supposed to be used directly. We should use `NullableMapVector` instead.
## How was this patch tested?
Existing test.
Author: Li Jin <ice.xelloss@gmail.com>
Closes#20239 from icexelloss/arrow-map-vector.
## What changes were proposed in this pull request?
Keep the run ID static, using a different ID for the epoch coordinator to avoid cross-execution message contamination.
## How was this patch tested?
new and existing unit tests
Author: Jose Torres <jose@databricks.com>
Closes#20282 from jose-torres/fix-runid.
## What changes were proposed in this pull request?
Continuous processing tasks will fail on any attempt number greater than 0. ContinuousExecution will catch these failures and restart globally from the last recorded checkpoints.
## How was this patch tested?
unit test
Author: Jose Torres <jose@databricks.com>
Closes#20225 from jose-torres/no-retry.
## What changes were proposed in this pull request?
Previously, PR #19201 fix the problem of non-converging constraints.
After that PR #19149 improve the loop and constraints is inferred only once.
So the problem of non-converging constraints is gone.
However, the case below will fail.
```
spark.range(5).write.saveAsTable("t")
val t = spark.read.table("t")
val left = t.withColumn("xid", $"id" + lit(1)).as("x")
val right = t.withColumnRenamed("id", "xid").as("y")
val df = left.join(right, "xid").filter("id = 3").toDF()
checkAnswer(df, Row(4, 3))
```
Because `aliasMap` replace all the aliased child. See the test case in PR for details.
This PR is to fix this bug by removing useless code for preventing non-converging constraints.
It can be also fixed with #20270, but this is much simpler and clean up the code.
## How was this patch tested?
Unit test
Author: Wang Gengliang <ltnwgl@gmail.com>
Closes#20278 from gengliangwang/FixConstraintSimple.
## What changes were proposed in this pull request?
ORC filter push-down is disabled by default from the beginning, [SPARK-2883](aa31e431fc (diff-41ef65b9ef5b518f77e2a03559893f4dR149)
).
Now, Apache Spark starts to depend on Apache ORC 1.4.1. For Apache Spark 2.3, this PR turns on ORC filter push-down by default like Parquet ([SPARK-9207](https://issues.apache.org/jira/browse/SPARK-21783)) as a part of [SPARK-20901](https://issues.apache.org/jira/browse/SPARK-20901), "Feature parity for ORC with Parquet".
## How was this patch tested?
Pass the existing tests.
Author: Dongjoon Hyun <dongjoon@apache.org>
Closes#20265 from dongjoon-hyun/SPARK-21783.
## What changes were proposed in this pull request?
Make the default behavior of EXCEPT (i.e. EXCEPT DISTINCT) more
explicit in the documentation, and call out the change in behavior
from 1.x.
Author: Henry Robinson <henry@cloudera.com>
Closes#20254 from henryr/spark-23062.
## What changes were proposed in this pull request?
The Kafka reader is now interruptible and can close itself.
## How was this patch tested?
I locally ran one of the ContinuousKafkaSourceSuite tests in a tight loop. Before the fix, my machine ran out of open file descriptors a few iterations in; now it works fine.
Author: Jose Torres <jose@databricks.com>
Closes#20253 from jose-torres/fix-data-reader.
## What changes were proposed in this pull request?
There are already quite a few integration tests using window frames, but the unit tests coverage is not ideal.
In this PR the already existing tests are reorganized, extended and where gaps found additional cases added.
## How was this patch tested?
Automated: Pass the Jenkins.
Author: Gabor Somogyi <gabor.g.somogyi@gmail.com>
Closes#20019 from gaborgsomogyi/SPARK-22361.
## What changes were proposed in this pull request?
The following SQL involving scalar correlated query returns a map exception.
``` SQL
SELECT t1a
FROM t1
WHERE t1a = (SELECT count(*)
FROM t2
WHERE t2c = t1c
HAVING count(*) >= 1)
```
``` SQL
key not found: ExprId(278,786682bb-41f9-4bd5-a397-928272cc8e4e)
java.util.NoSuchElementException: key not found: ExprId(278,786682bb-41f9-4bd5-a397-928272cc8e4e)
at scala.collection.MapLike$class.default(MapLike.scala:228)
at scala.collection.AbstractMap.default(Map.scala:59)
at scala.collection.MapLike$class.apply(MapLike.scala:141)
at scala.collection.AbstractMap.apply(Map.scala:59)
at org.apache.spark.sql.catalyst.optimizer.RewriteCorrelatedScalarSubquery$.org$apache$spark$sql$catalyst$optimizer$RewriteCorrelatedScalarSubquery$$evalSubqueryOnZeroTups(subquery.scala:378)
at org.apache.spark.sql.catalyst.optimizer.RewriteCorrelatedScalarSubquery$$anonfun$org$apache$spark$sql$catalyst$optimizer$RewriteCorrelatedScalarSubquery$$constructLeftJoins$1.apply(subquery.scala:430)
at org.apache.spark.sql.catalyst.optimizer.RewriteCorrelatedScalarSubquery$$anonfun$org$apache$spark$sql$catalyst$optimizer$RewriteCorrelatedScalarSubquery$$constructLeftJoins$1.apply(subquery.scala:426)
```
In this case, after evaluating the HAVING clause "count(*) > 1" statically
against the binding of aggregtation result on empty input, we determine
that this query will not have a the count bug. We should simply return
the evalSubqueryOnZeroTups with empty value.
(Please fill in changes proposed in this fix)
## How was this patch tested?
A new test was added in the Subquery bucket.
Author: Dilip Biswal <dbiswal@us.ibm.com>
Closes#20283 from dilipbiswal/scalar-count-defect.
## What changes were proposed in this pull request?
Lots of our tests don't properly shutdown everything they create, and end up leaking lots of threads. For example, `TaskSetManagerSuite` doesn't stop the extra `TaskScheduler` and `DAGScheduler` it creates. There are a couple more instances, eg. in `DAGSchedulerSuite`.
This PR adds the possibility to print out the not properly stopped thread list after a test suite executed. The format is the following:
```
===== FINISHED o.a.s.scheduler.DAGSchedulerSuite: 'task end event should have updated accumulators (SPARK-20342)' =====
...
===== Global thread whitelist loaded with name /thread_whitelist from classpath: rpc-client.*, rpc-server.*, shuffle-client.*, shuffle-server.*' =====
ScalaTest-run:
===== THREADS NOT STOPPED PROPERLY =====
ScalaTest-run: dag-scheduler-event-loop
ScalaTest-run: globalEventExecutor-2-5
ScalaTest-run:
===== END OF THREAD DUMP =====
ScalaTest-run:
===== EITHER PUT THREAD NAME INTO THE WHITELIST FILE OR SHUT IT DOWN PROPERLY =====
```
With the help of this leaking threads has been identified in TaskSetManagerSuite. My intention is to hunt down and fix such bugs in later PRs.
## How was this patch tested?
Manual: TaskSetManagerSuite test executed and found out where are the leaking threads.
Automated: Pass the Jenkins.
Author: Gabor Somogyi <gabor.g.somogyi@gmail.com>
Closes#19893 from gaborgsomogyi/SPARK-16139.
## What changes were proposed in this pull request?
a new Data Source V2 interface to allow the data source to return `ColumnarBatch` during the scan.
## How was this patch tested?
new tests
Author: Wenchen Fan <wenchen@databricks.com>
Closes#20153 from cloud-fan/columnar-reader.
## What changes were proposed in this pull request?
This problem reported by yanlin-Lynn ivoson and LiangchangZ. Thanks!
When we union 2 streams from kafka or other sources, while one of them have no continues data coming and in the same time task restart, this will cause an `IllegalStateException`. This mainly cause because the code in [MicroBatchExecution](https://github.com/apache/spark/blob/master/sql/core/src/main/scala/org/apache/spark/sql/execution/streaming/MicroBatchExecution.scala#L190) , while one stream has no continues data, its comittedOffset same with availableOffset during `populateStartOffsets`, and `currentPartitionOffsets` not properly handled in KafkaSource. Also, maybe we should also consider this scenario in other Source.
## How was this patch tested?
Add a UT in KafkaSourceSuite.scala
Author: Yuanjian Li <xyliyuanjian@gmail.com>
Closes#20150 from xuanyuanking/SPARK-22956.
## What changes were proposed in this pull request?
When a user puts the wrong number of parameters in a function, an AnalysisException is thrown. If the function is a UDF, he user is told how many parameters the function expected and how many he/she put. If the function, instead, is a built-in one, no information about the number of parameters expected and the actual one is provided. This can help in some cases, to debug the errors (eg. bad quotes escaping may lead to a different number of parameters than expected, etc. etc.)
The PR adds the information about the number of parameters passed and the expected one, analogously to what happens for UDF.
## How was this patch tested?
modified existing UT + manual test
Author: Marco Gaido <marcogaido91@gmail.com>
Closes#20271 from mgaido91/SPARK-23080.
## What changes were proposed in this pull request?
Problem: it throw TempTableAlreadyExistsException and output "Temporary table '$table' already exists" when we create temp view by using org.apache.spark.sql.catalyst.catalog.GlobalTempViewManager#create, it's improper.
So fix improper information about TempTableAlreadyExistsException when create temp view:
change "Temporary table" to "Temporary view"
## How was this patch tested?
test("rename temporary view - destination table already exists, with: CREATE TEMPORARY view")
test("rename temporary view - destination table with database name,with:CREATE TEMPORARY view")
Author: xubo245 <601450868@qq.com>
Closes#20227 from xubo245/fixDeprecated.
## What changes were proposed in this pull request?
The current `Datset.showString` prints rows thru `RowEncoder` deserializers like;
```
scala> Seq(Seq(Seq(1, 2), Seq(3), Seq(4, 5, 6))).toDF("a").show(false)
+------------------------------------------------------------+
|a |
+------------------------------------------------------------+
|[WrappedArray(1, 2), WrappedArray(3), WrappedArray(4, 5, 6)]|
+------------------------------------------------------------+
```
This result is incorrect because the correct one is;
```
scala> Seq(Seq(Seq(1, 2), Seq(3), Seq(4, 5, 6))).toDF("a").show(false)
+------------------------+
|a |
+------------------------+
|[[1, 2], [3], [4, 5, 6]]|
+------------------------+
```
So, this pr fixed code in `showString` to cast field data to strings before printing.
## How was this patch tested?
Added tests in `DataFrameSuite`.
Author: Takeshi Yamamuro <yamamuro@apache.org>
Closes#20214 from maropu/SPARK-23023.
## What changes were proposed in this pull request?
When `spark.sql.files.ignoreCorruptFiles=true`, we should ignore corrupted ORC files.
## How was this patch tested?
Pass the Jenkins with a newly added test case.
Author: Dongjoon Hyun <dongjoon@apache.org>
Closes#20240 from dongjoon-hyun/SPARK-23049.
## What changes were proposed in this pull request?
This pr fixed the issue when casting `UserDefinedType`s into strings;
```
>>> from pyspark.ml.classification import MultilayerPerceptronClassifier
>>> from pyspark.ml.linalg import Vectors
>>> df = spark.createDataFrame([(0.0, Vectors.dense([0.0, 0.0])), (1.0, Vectors.dense([0.0, 1.0]))], ["label", "features"])
>>> df.selectExpr("CAST(features AS STRING)").show(truncate = False)
+-------------------------------------------+
|features |
+-------------------------------------------+
|[6,1,0,0,2800000020,2,0,0,0] |
|[6,1,0,0,2800000020,2,0,0,3ff0000000000000]|
+-------------------------------------------+
```
The root cause is that `Cast` handles input data as `UserDefinedType.sqlType`(this is underlying storage type), so we should pass data into `UserDefinedType.deserialize` then `toString`.
This pr modified the result into;
```
+---------+
|features |
+---------+
|[0.0,0.0]|
|[0.0,1.0]|
+---------+
```
## How was this patch tested?
Added tests in `UserDefinedTypeSuite `.
Author: Takeshi Yamamuro <yamamuro@apache.org>
Closes#20246 from maropu/SPARK-23054.
## What changes were proposed in this pull request?
SHOW DATABASES (LIKE pattern = STRING)? Can be like the back increase?
When using this command, LIKE keyword can be removed.
You can refer to the SHOW TABLES command, SHOW TABLES 'test *' and SHOW TABELS like 'test *' can be used.
Similarly SHOW DATABASES 'test *' and SHOW DATABASES like 'test *' can be used.
## How was this patch tested?
unit tests manual tests
Please review http://spark.apache.org/contributing.html before opening a pull request.
Author: guoxiaolong <guo.xiaolong1@zte.com.cn>
Closes#20194 from guoxiaolongzte/SPARK-22999.
## What changes were proposed in this pull request?
This pr fixed code to compare values in `compareAndGetNewStats`.
The test below fails in the current master;
```
val oldStats2 = CatalogStatistics(sizeInBytes = BigInt(Long.MaxValue) * 2)
val newStats5 = CommandUtils.compareAndGetNewStats(
Some(oldStats2), newTotalSize = BigInt(Long.MaxValue) * 2, None)
assert(newStats5.isEmpty)
```
## How was this patch tested?
Added some tests in `CommandUtilsSuite`.
Author: Takeshi Yamamuro <yamamuro@apache.org>
Closes#20245 from maropu/SPARK-21213-FOLLOWUP.
## What changes were proposed in this pull request?
as per discussion in https://github.com/apache/spark/pull/19864#discussion_r156847927
the current HadoopFsRelation is purely based on the underlying file size which is not accurate and makes the execution vulnerable to errors like OOM
Users can enable CBO with the functionalities in https://github.com/apache/spark/pull/19864 to avoid this issue
This JIRA proposes to add a configurable factor to sizeInBytes method in HadoopFsRelation class so that users can mitigate this problem without CBO
## How was this patch tested?
Existing tests
Author: CodingCat <zhunansjtu@gmail.com>
Author: Nan Zhu <nanzhu@uber.com>
Closes#20072 from CodingCat/SPARK-22790.
## What changes were proposed in this pull request?
Add withGlobalTempView when create global temp view, like withTempView and withView.
And correct some improper usage.
Please see jira.
There are other similar place like that. I will fix it if community need. Please confirm it.
## How was this patch tested?
no new test.
Author: xubo245 <601450868@qq.com>
Closes#20228 from xubo245/DropTempView.
## What changes were proposed in this pull request?
`MetricsReporter ` assumes that there has been some progress for the query, ie. `lastProgress` is not null. If this is not true, as it might happen in particular conditions, a `NullPointerException` can be thrown.
The PR checks whether there is a `lastProgress` and if this is not true, it returns a default value for the metrics.
## How was this patch tested?
added UT
Author: Marco Gaido <marcogaido91@gmail.com>
Closes#20189 from mgaido91/SPARK-22975.
## What changes were proposed in this pull request?
This PR cleans up the java-lint errors (for v2.3.0-rc1 tag). Hopefully, this will be the final one.
```
$ dev/lint-java
Using `mvn` from path: /usr/local/bin/mvn
Checkstyle checks failed at following occurrences:
[ERROR] src/main/java/org/apache/spark/unsafe/memory/HeapMemoryAllocator.java:[85] (sizes) LineLength: Line is longer than 100 characters (found 101).
[ERROR] src/main/java/org/apache/spark/launcher/InProcessAppHandle.java:[20,8] (imports) UnusedImports: Unused import - java.io.IOException.
[ERROR] src/main/java/org/apache/spark/sql/execution/datasources/orc/OrcColumnVector.java:[41,9] (modifier) ModifierOrder: 'private' modifier out of order with the JLS suggestions.
[ERROR] src/test/java/test/org/apache/spark/sql/JavaDataFrameSuite.java:[464] (sizes) LineLength: Line is longer than 100 characters (found 102).
```
## How was this patch tested?
Manual.
```
$ dev/lint-java
Using `mvn` from path: /usr/local/bin/mvn
Checkstyle checks passed.
```
Author: Dongjoon Hyun <dongjoon@apache.org>
Closes#20242 from dongjoon-hyun/fix_lint_java_2.3_rc1.
## What changes were proposed in this pull request?
Add support for `Null` type in the `schemaFor` method for Scala reflection.
## How was this patch tested?
Added UT
Author: Marco Gaido <marcogaido91@gmail.com>
Closes#20219 from mgaido91/SPARK-23025.
## What changes were proposed in this pull request?
Add kafka source and sink for continuous processing. This involves two small changes to the execution engine:
* Bring data reader close() into the normal data reader thread to avoid thread safety issues.
* Fix up the semantics of the RECONFIGURING StreamExecution state. State updates are now atomic, and we don't have to deal with swallowing an exception.
## How was this patch tested?
new unit tests
Author: Jose Torres <jose@databricks.com>
Closes#20096 from jose-torres/continuous-kafka.
## What changes were proposed in this pull request?
(courtesy of liancheng)
Spark SQL supports both global aggregation and grouping aggregation. Global aggregation always return a single row with the initial aggregation state as the output, even there are zero input rows. Spark implements this by simply checking the number of grouping keys and treats an aggregation as a global aggregation if it has zero grouping keys.
However, this simple principle drops the ball in the following case:
```scala
spark.emptyDataFrame.dropDuplicates().agg(count($"*") as "c").show()
// +---+
// | c |
// +---+
// | 1 |
// +---+
```
The reason is that:
1. `df.dropDuplicates()` is roughly translated into something equivalent to:
```scala
val allColumns = df.columns.map { col }
df.groupBy(allColumns: _*).agg(allColumns.head, allColumns.tail: _*)
```
This translation is implemented in the rule `ReplaceDeduplicateWithAggregate`.
2. `spark.emptyDataFrame` contains zero columns and zero rows.
Therefore, rule `ReplaceDeduplicateWithAggregate` makes a confusing transformation roughly equivalent to the following one:
```scala
spark.emptyDataFrame.dropDuplicates()
=> spark.emptyDataFrame.groupBy().agg(Map.empty[String, String])
```
The above transformation is confusing because the resulting aggregate operator contains no grouping keys (because `emptyDataFrame` contains no columns), and gets recognized as a global aggregation. As a result, Spark SQL allocates a single row filled by the initial aggregation state and uses it as the output, and returns a wrong result.
To fix this issue, this PR tweaks `ReplaceDeduplicateWithAggregate` by appending a literal `1` to the grouping key list of the resulting `Aggregate` operator when the input plan contains zero output columns. In this way, `spark.emptyDataFrame.dropDuplicates()` is now translated into a grouping aggregation, roughly depicted as:
```scala
spark.emptyDataFrame.dropDuplicates()
=> spark.emptyDataFrame.groupBy(lit(1)).agg(Map.empty[String, String])
```
Which is now properly treated as a grouping aggregation and returns the correct answer.
## How was this patch tested?
New unit tests added
Author: Feng Liu <fengliu@databricks.com>
Closes#20174 from liufengdb/fix-duplicate.
## What changes were proposed in this pull request?
This is mostly from https://github.com/apache/spark/pull/13775
The wrapper solution is pretty good for string/binary type, as the ORC column vector doesn't keep bytes in a continuous memory region, and has a significant overhead when copying the data to Spark columnar batch. For other cases, the wrapper solution is almost same with the current solution.
I think we can treat the wrapper solution as a baseline and keep improving the writing to Spark solution.
## How was this patch tested?
existing tests.
Author: Wenchen Fan <wenchen@databricks.com>
Closes#20205 from cloud-fan/orc.
## What changes were proposed in this pull request?
`BroadcastNestedLoopJoinExec` should be `BroadcastHashJoinExec`
## How was this patch tested?
N/A
Author: Wenchen Fan <wenchen@databricks.com>
Closes#20202 from cloud-fan/typo.
## What changes were proposed in this pull request?
In current implementation of RDD.take, we overestimate the number of partitions we need to try by 50%:
`(1.5 * num * partsScanned / buf.size).toInt`
However, when the number is small, the result of `.toInt` is not what we want.
E.g, 2.9 will become 2, which should be 3.
Use Math.ceil to fix the problem.
Also clean up the code in RDD.scala.
## How was this patch tested?
Unit test
Author: Wang Gengliang <ltnwgl@gmail.com>
Closes#20200 from gengliangwang/Take.
## What changes were proposed in this pull request?
This PR adds an ORC columnar-batch reader to native `OrcFileFormat`. Since both Spark `ColumnarBatch` and ORC `RowBatch` are used together, it is faster than the current Spark implementation. This replaces the prior PR, #17924.
Also, this PR adds `OrcReadBenchmark` to show the performance improvement.
## How was this patch tested?
Pass the existing test cases.
Author: Dongjoon Hyun <dongjoon@apache.org>
Closes#19943 from dongjoon-hyun/SPARK-16060.
## What changes were proposed in this pull request?
Fix the warning: Couldn't find corresponding Hive SerDe for data source provider org.apache.spark.sql.hive.orc.
## How was this patch tested?
test("SPARK-22972: hive orc source")
assert(HiveSerDe.sourceToSerDe("org.apache.spark.sql.hive.orc")
.equals(HiveSerDe.sourceToSerDe("orc")))
Author: xubo245 <601450868@qq.com>
Closes#20165 from xubo245/HiveSerDe.
## What changes were proposed in this pull request?
Support for v2 data sources in microbatch streaming.
## How was this patch tested?
A very basic new unit test on the toy v2 implementation of rate source. Once we have a v1 source fully migrated to v2, we'll need to do more detailed compatibility testing.
Author: Jose Torres <jose@databricks.com>
Closes#20097 from jose-torres/v2-impl.
## What changes were proposed in this pull request?
1. Deprecate attemptId in StageInfo and add `def attemptNumber() = attemptId`
2. Replace usage of stageAttemptId with stageAttemptNumber
## How was this patch tested?
I manually checked the compiler warning info
Author: Xianjin YE <advancedxy@gmail.com>
Closes#20178 from advancedxy/SPARK-22952.
## What changes were proposed in this pull request?
**The current shuffle planning logic**
1. Each operator specifies the distribution requirements for its children, via the `Distribution` interface.
2. Each operator specifies its output partitioning, via the `Partitioning` interface.
3. `Partitioning.satisfy` determines whether a `Partitioning` can satisfy a `Distribution`.
4. For each operator, check each child of it, add a shuffle node above the child if the child partitioning can not satisfy the required distribution.
5. For each operator, check if its children's output partitionings are compatible with each other, via the `Partitioning.compatibleWith`.
6. If the check in 5 failed, add a shuffle above each child.
7. try to eliminate the shuffles added in 6, via `Partitioning.guarantees`.
This design has a major problem with the definition of "compatible".
`Partitioning.compatibleWith` is not well defined, ideally a `Partitioning` can't know if it's compatible with other `Partitioning`, without more information from the operator. For example, `t1 join t2 on t1.a = t2.b`, `HashPartitioning(a, 10)` should be compatible with `HashPartitioning(b, 10)` under this case, but the partitioning itself doesn't know it.
As a result, currently `Partitioning.compatibleWith` always return false except for literals, which make it almost useless. This also means, if an operator has distribution requirements for multiple children, Spark always add shuffle nodes to all the children(although some of them can be eliminated). However, there is no guarantee that the children's output partitionings are compatible with each other after adding these shuffles, we just assume that the operator will only specify `ClusteredDistribution` for multiple children.
I think it's very hard to guarantee children co-partition for all kinds of operators, and we can not even give a clear definition about co-partition between distributions like `ClusteredDistribution(a,b)` and `ClusteredDistribution(c)`.
I think we should drop the "compatible" concept in the distribution model, and let the operator achieve the co-partition requirement by special distribution requirements.
**Proposed shuffle planning logic after this PR**
(The first 4 are same as before)
1. Each operator specifies the distribution requirements for its children, via the `Distribution` interface.
2. Each operator specifies its output partitioning, via the `Partitioning` interface.
3. `Partitioning.satisfy` determines whether a `Partitioning` can satisfy a `Distribution`.
4. For each operator, check each child of it, add a shuffle node above the child if the child partitioning can not satisfy the required distribution.
5. For each operator, check if its children's output partitionings have the same number of partitions.
6. If the check in 5 failed, pick the max number of partitions from children's output partitionings, and add shuffle to child whose number of partitions doesn't equal to the max one.
The new distribution model is very simple, we only have one kind of relationship, which is `Partitioning.satisfy`. For multiple children, Spark only guarantees they have the same number of partitions, and it's the operator's responsibility to leverage this guarantee to achieve more complicated requirements. For example, non-broadcast joins can use the newly added `HashPartitionedDistribution` to achieve co-partition.
## How was this patch tested?
existing tests.
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19080 from cloud-fan/exchange.
## What changes were proposed in this pull request?
The following SQL query should return zero rows, but in Spark it actually returns one row:
```
SELECT 1 from (
SELECT 1 AS z,
MIN(a.x)
FROM (select 1 as x) a
WHERE false
) b
where b.z != b.z
```
The problem stems from the `PushDownPredicate` rule: when this rule encounters a filter on top of an Aggregate operator, e.g. `Filter(Agg(...))`, it removes the original filter and adds a new filter onto Aggregate's child, e.g. `Agg(Filter(...))`. This is sometimes okay, but the case above is a counterexample: because there is no explicit `GROUP BY`, we are implicitly computing a global aggregate over the entire table so the original filter was not acting like a `HAVING` clause filtering the number of groups: if we push this filter then it fails to actually reduce the cardinality of the Aggregate output, leading to the wrong answer.
In 2016 I fixed a similar problem involving invalid pushdowns of data-independent filters (filters which reference no columns of the filtered relation). There was additional discussion after my fix was merged which pointed out that my patch was an incomplete fix (see #15289), but it looks I must have either misunderstood the comment or forgot to follow up on the additional points raised there.
This patch fixes the problem by choosing to never push down filters in cases where there are no grouping expressions. Since there are no grouping keys, the only columns are aggregate columns and we can't push filters defined over aggregate results, so this change won't cause us to miss out on any legitimate pushdown opportunities.
## How was this patch tested?
New regression tests in `SQLQueryTestSuite` and `FilterPushdownSuite`.
Author: Josh Rosen <joshrosen@databricks.com>
Closes#20180 from JoshRosen/SPARK-22983-dont-push-filters-beneath-aggs-with-empty-grouping-expressions.
## What changes were proposed in this pull request?
Seems we can avoid type dispatch for each value when Java objection (from Pyrolite) -> Spark's internal data format because we know the schema ahead.
I manually performed the benchmark as below:
```scala
test("EvaluatePython.fromJava / EvaluatePython.makeFromJava") {
val numRows = 1000 * 1000
val numFields = 30
val random = new Random(System.nanoTime())
val types = Array(
BooleanType, ByteType, FloatType, DoubleType, IntegerType, LongType, ShortType,
DecimalType.ShortDecimal, DecimalType.IntDecimal, DecimalType.ByteDecimal,
DecimalType.FloatDecimal, DecimalType.LongDecimal, new DecimalType(5, 2),
new DecimalType(12, 2), new DecimalType(30, 10), CalendarIntervalType)
val schema = RandomDataGenerator.randomSchema(random, numFields, types)
val rows = mutable.ArrayBuffer.empty[Array[Any]]
var i = 0
while (i < numRows) {
val row = RandomDataGenerator.randomRow(random, schema)
rows += row.toSeq.toArray
i += 1
}
val benchmark = new Benchmark("EvaluatePython.fromJava / EvaluatePython.makeFromJava", numRows)
benchmark.addCase("Before - EvaluatePython.fromJava", 3) { _ =>
var i = 0
while (i < numRows) {
EvaluatePython.fromJava(rows(i), schema)
i += 1
}
}
benchmark.addCase("After - EvaluatePython.makeFromJava", 3) { _ =>
val fromJava = EvaluatePython.makeFromJava(schema)
var i = 0
while (i < numRows) {
fromJava(rows(i))
i += 1
}
}
benchmark.run()
}
```
```
EvaluatePython.fromJava / EvaluatePython.makeFromJava: Best/Avg Time(ms) Rate(M/s) Per Row(ns) Relative
------------------------------------------------------------------------------------------------
Before - EvaluatePython.fromJava 1265 / 1346 0.8 1264.8 1.0X
After - EvaluatePython.makeFromJava 571 / 649 1.8 570.8 2.2X
```
If the structure is nested, I think the advantage should be larger than this.
## How was this patch tested?
Existing tests should cover this. Also, I manually checked if the values from before / after are actually same via `assert` when performing the benchmarks.
Author: hyukjinkwon <gurwls223@gmail.com>
Closes#20172 from HyukjinKwon/type-dispatch-python-eval.
[SPARK-21786][SQL] When acquiring 'compressionCodecClassName' in 'ParquetOptions', `parquet.compression` needs to be considered.
## What changes were proposed in this pull request?
Since Hive 1.1, Hive allows users to set parquet compression codec via table-level properties parquet.compression. See the JIRA: https://issues.apache.org/jira/browse/HIVE-7858 . We do support orc.compression for ORC. Thus, for external users, it is more straightforward to support both. See the stackflow question: https://stackoverflow.com/questions/36941122/spark-sql-ignores-parquet-compression-propertie-specified-in-tblproperties
In Spark side, our table-level compression conf compression was added by #11464 since Spark 2.0.
We need to support both table-level conf. Users might also use session-level conf spark.sql.parquet.compression.codec. The priority rule will be like
If other compression codec configuration was found through hive or parquet, the precedence would be compression, parquet.compression, spark.sql.parquet.compression.codec. Acceptable values include: none, uncompressed, snappy, gzip, lzo.
The rule for Parquet is consistent with the ORC after the change.
Changes:
1.Increased acquiring 'compressionCodecClassName' from `parquet.compression`,and the precedence order is `compression`,`parquet.compression`,`spark.sql.parquet.compression.codec`, just like what we do in `OrcOptions`.
2.Change `spark.sql.parquet.compression.codec` to support "none".Actually in `ParquetOptions`,we do support "none" as equivalent to "uncompressed", but it does not allowed to configured to "none".
3.Change `compressionCode` to `compressionCodecClassName`.
## How was this patch tested?
Add test.
Author: fjh100456 <fu.jinhua6@zte.com.cn>
Closes#20076 from fjh100456/ParquetOptionIssue.
## What changes were proposed in this pull request?
This pr modified `elt` to output binary for binary inputs.
`elt` in the current master always output data as a string. But, in some databases (e.g., MySQL), if all inputs are binary, `elt` also outputs binary (Also, this might be a small surprise).
This pr is related to #19977.
## How was this patch tested?
Added tests in `SQLQueryTestSuite` and `TypeCoercionSuite`.
Author: Takeshi Yamamuro <yamamuro@apache.org>
Closes#20135 from maropu/SPARK-22937.
## What changes were proposed in this pull request?
This pr fixed the issue when casting arrays into strings;
```
scala> val df = spark.range(10).select('id.cast("integer")).agg(collect_list('id).as('ids))
scala> df.write.saveAsTable("t")
scala> sql("SELECT cast(ids as String) FROM t").show(false)
+------------------------------------------------------------------+
|ids |
+------------------------------------------------------------------+
|org.apache.spark.sql.catalyst.expressions.UnsafeArrayData8bc285df|
+------------------------------------------------------------------+
```
This pr modified the result into;
```
+------------------------------+
|ids |
+------------------------------+
|[0, 1, 2, 3, 4, 5, 6, 7, 8, 9]|
+------------------------------+
```
## How was this patch tested?
Added tests in `CastSuite` and `SQLQuerySuite`.
Author: Takeshi Yamamuro <yamamuro@apache.org>
Closes#20024 from maropu/SPARK-22825.
## What changes were proposed in this pull request?
32bit Int was used for row rank.
That overflowed in a dataframe with more than 2B rows.
## How was this patch tested?
Added test, but ignored, as it takes 4 minutes.
Author: Juliusz Sompolski <julek@databricks.com>
Closes#20152 from juliuszsompolski/SPARK-22957.
## What changes were proposed in this pull request?
Currently Scala users can use UDF like
```
val foo = udf((i: Int) => Math.random() + i).asNondeterministic
df.select(foo('a))
```
Python users can also do it with similar APIs. However Java users can't do it, we should add Java UDF APIs in the functions object.
## How was this patch tested?
new tests
Author: Wenchen Fan <wenchen@databricks.com>
Closes#20141 from cloud-fan/udf.
## What changes were proposed in this pull request?
R Structured Streaming API for withWatermark, trigger, partitionBy
## How was this patch tested?
manual, unit tests
Author: Felix Cheung <felixcheung_m@hotmail.com>
Closes#20129 from felixcheung/rwater.
## What changes were proposed in this pull request?
move `ColumnVector` and related classes to `org.apache.spark.sql.vectorized`, and improve the document.
## How was this patch tested?
existing tests.
Author: Wenchen Fan <wenchen@databricks.com>
Closes#20116 from cloud-fan/column-vector.
## What changes were proposed in this pull request?
When overwriting a partitioned table with dynamic partition columns, the behavior is different between data source and hive tables.
data source table: delete all partition directories that match the static partition values provided in the insert statement.
hive table: only delete partition directories which have data written into it
This PR adds a new config to make users be able to choose hive's behavior.
## How was this patch tested?
new tests
Author: Wenchen Fan <wenchen@databricks.com>
Closes#18714 from cloud-fan/overwrite-partition.
## What changes were proposed in this pull request?
Currently, our CREATE TABLE syntax require the EXACT order of clauses. It is pretty hard to remember the exact order. Thus, this PR is to make optional clauses order insensitive for `CREATE TABLE` SQL statement.
```
CREATE [TEMPORARY] TABLE [IF NOT EXISTS] [db_name.]table_name
[(col_name1 col_type1 [COMMENT col_comment1], ...)]
USING datasource
[OPTIONS (key1=val1, key2=val2, ...)]
[PARTITIONED BY (col_name1, col_name2, ...)]
[CLUSTERED BY (col_name3, col_name4, ...) INTO num_buckets BUCKETS]
[LOCATION path]
[COMMENT table_comment]
[TBLPROPERTIES (key1=val1, key2=val2, ...)]
[AS select_statement]
```
The proposal is to make the following clauses order insensitive.
```
[OPTIONS (key1=val1, key2=val2, ...)]
[PARTITIONED BY (col_name1, col_name2, ...)]
[CLUSTERED BY (col_name3, col_name4, ...) INTO num_buckets BUCKETS]
[LOCATION path]
[COMMENT table_comment]
[TBLPROPERTIES (key1=val1, key2=val2, ...)]
```
The same idea is also applicable to Create Hive Table.
```
CREATE [EXTERNAL] TABLE [IF NOT EXISTS] [db_name.]table_name
[(col_name1[:] col_type1 [COMMENT col_comment1], ...)]
[COMMENT table_comment]
[PARTITIONED BY (col_name2[:] col_type2 [COMMENT col_comment2], ...)]
[ROW FORMAT row_format]
[STORED AS file_format]
[LOCATION path]
[TBLPROPERTIES (key1=val1, key2=val2, ...)]
[AS select_statement]
```
The proposal is to make the following clauses order insensitive.
```
[COMMENT table_comment]
[PARTITIONED BY (col_name2[:] col_type2 [COMMENT col_comment2], ...)]
[ROW FORMAT row_format]
[STORED AS file_format]
[LOCATION path]
[TBLPROPERTIES (key1=val1, key2=val2, ...)]
```
## How was this patch tested?
Added test cases
Author: gatorsmile <gatorsmile@gmail.com>
Closes#20133 from gatorsmile/createDataSourceTableDDL.
## What changes were proposed in this pull request?
stageAttemptId added in TaskContext and corresponding construction modification
## How was this patch tested?
Added a new test in TaskContextSuite, two cases are tested:
1. Normal case without failure
2. Exception case with resubmitted stages
Link to [SPARK-22897](https://issues.apache.org/jira/browse/SPARK-22897)
Author: Xianjin YE <advancedxy@gmail.com>
Closes#20082 from advancedxy/SPARK-22897.
## What changes were proposed in this pull request?
This change adds `ArrayType` support for working with Arrow in pyspark when creating a DataFrame, calling `toPandas()`, and using vectorized `pandas_udf`.
## How was this patch tested?
Added new Python unit tests using Array data.
Author: Bryan Cutler <cutlerb@gmail.com>
Closes#20114 from BryanCutler/arrow-ArrayType-support-SPARK-22530.
## What changes were proposed in this pull request?
Currently, we do not guarantee an order evaluation of conjuncts in either Filter or Join operator. This is also true to the mainstream RDBMS vendors like DB2 and MS SQL Server. Thus, we should also push down the deterministic predicates that are after the first non-deterministic, if possible.
## How was this patch tested?
Updated the existing test cases.
Author: gatorsmile <gatorsmile@gmail.com>
Closes#20069 from gatorsmile/morePushDown.
## What changes were proposed in this pull request?
There is already test using window spilling, but the test coverage is not ideal.
In this PR the already existing test was fixed and additional cases added.
## How was this patch tested?
Automated: Pass the Jenkins.
Author: Gabor Somogyi <gabor.g.somogyi@gmail.com>
Closes#20022 from gaborgsomogyi/SPARK-22363.
## What changes were proposed in this pull request?
This pr modified `concat` to concat binary inputs into a single binary output.
`concat` in the current master always output data as a string. But, in some databases (e.g., PostgreSQL), if all inputs are binary, `concat` also outputs binary.
## How was this patch tested?
Added tests in `SQLQueryTestSuite` and `TypeCoercionSuite`.
Author: Takeshi Yamamuro <yamamuro@apache.org>
Closes#19977 from maropu/SPARK-22771.
## What changes were proposed in this pull request?
ML regression package testsuite add StructuredStreaming test
In order to make testsuite easier to modify, new helper function added in `MLTest`:
```
def testTransformerByGlobalCheckFunc[A : Encoder](
dataframe: DataFrame,
transformer: Transformer,
firstResultCol: String,
otherResultCols: String*)
(globalCheckFunction: Seq[Row] => Unit): Unit
```
## How was this patch tested?
N/A
Author: WeichenXu <weichen.xu@databricks.com>
Author: Bago Amirbekian <bago@databricks.com>
Closes#19979 from WeichenXu123/ml_stream_test.
## What changes were proposed in this pull request?
The issue has been raised in two Jira tickets: [SPARK-21657](https://issues.apache.org/jira/browse/SPARK-21657), [SPARK-16998](https://issues.apache.org/jira/browse/SPARK-16998). Basically, what happens is that in collection generators like explode/inline we create many rows from each row. Currently each exploded row contains also the column on which it was created. This causes, for example, if we have a 10k array in one row that this array will get copy 10k times - to each of the row. this results a qudratic memory consumption. However, it is a common case that the original column gets projected out after the explode, so we can avoid duplicating it.
In this solution we propose to identify this situation in the optimizer and turn on a flag for omitting the original column in the generation process.
## How was this patch tested?
1. We added a benchmark test to MiscBenchmark that shows x16 improvement in runtimes.
2. We ran some of the other tests in MiscBenchmark and they show 15% improvements.
3. We ran this code on a specific case from our production data with rows containing arrays of size ~200k and it reduced the runtime from 6 hours to 3 mins.
Author: oraviv <oraviv@paypal.com>
Author: uzadude <ohad.raviv@gmail.com>
Author: uzadude <15645757+uzadude@users.noreply.github.com>
Closes#19683 from uzadude/optimize_explode.
## What changes were proposed in this pull request?
When there are no broadcast hints, the current spark strategies will prefer to building the right side, without considering the sizes of the two tables. This patch added the logic to consider the sizes of the two tables for the build side. To make the logic clear, the build side is determined by two steps:
1. If there are broadcast hints, the build side is determined by `broadcastSideByHints`;
2. If there are no broadcast hints, the build side is determined by `broadcastSideBySizes`;
3. If the broadcast is disabled by the config, it falls back to the next cases.
## How was this patch tested?
(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)
Please review http://spark.apache.org/contributing.html before opening a pull request.
Author: Feng Liu <fengliu@databricks.com>
Closes#20099 from liufengdb/fix-spark-strategies.
## What changes were proposed in this pull request?
With #19474, children of insertion commands are missing in UI.
To fix it:
1. Create a new physical plan `DataWritingCommandExec` to exec `DataWritingCommand` with children. So that the other commands won't be affected.
2. On creation of `DataWritingCommand`, a new field `allColumns` must be specified, which is the output of analyzed plan.
3. In `FileFormatWriter`, the output schema will use `allColumns` instead of the output of optimized plan.
Before code changes:
![2017-12-19 10 27 10](https://user-images.githubusercontent.com/1097932/34161850-d2fd0acc-e50c-11e7-898a-177154fe7d8e.png)
After code changes:
![2017-12-19 10 27 04](https://user-images.githubusercontent.com/1097932/34161865-de23de26-e50c-11e7-9131-0c32f7b7b749.png)
## How was this patch tested?
Unit test
Author: Wang Gengliang <ltnwgl@gmail.com>
Closes#20020 from gengliangwang/insert.
## What changes were proposed in this pull request?
Escape of escape should be considered when using the UniVocity csv encoding/decoding library.
Ref: https://github.com/uniVocity/univocity-parsers#escaping-quote-escape-characters
One option is added for reading and writing CSV: `escapeQuoteEscaping`
## How was this patch tested?
Unit test added.
Author: soonmok-kwon <soonmok.kwon@navercorp.com>
Closes#20004 from ep1804/SPARK-22818.
## What changes were proposed in this pull request?
Test Coverage for `DateTimeOperations`, this is a Sub-tasks for [SPARK-22722](https://issues.apache.org/jira/browse/SPARK-22722).
## How was this patch tested?
N/A
Author: Yuming Wang <wgyumg@gmail.com>
Closes#20061 from wangyum/SPARK-22890.
## What changes were proposed in this pull request?
This PR cleans up a few Java linter errors for Apache Spark 2.3 release.
## How was this patch tested?
```bash
$ dev/lint-java
Using `mvn` from path: /usr/local/bin/mvn
Checkstyle checks passed.
```
We can see the result from [Travis CI](https://travis-ci.org/dongjoon-hyun/spark/builds/322470787), too.
Author: Dongjoon Hyun <dongjoon@apache.org>
Closes#20101 from dongjoon-hyun/fix-java-lint.
## What changes were proposed in this pull request?
For empty/null column, the result of `ApproximatePercentile` is null. Then in `ApproxCountDistinctForIntervals`, a `MatchError` (for `endpoints`) will be thrown if we try to generate histogram for that column. Besides, there is no need to generate histogram for such column. In this patch, we exclude such column when generating histogram.
## How was this patch tested?
Enhanced test cases for empty/null columns.
Author: Zhenhua Wang <wangzhenhua@huawei.com>
Closes#20102 from wzhfy/no_record_hgm_bug.
## What changes were proposed in this pull request?
This PR addresses additional review comments in #19811
## How was this patch tested?
Existing test suites
Author: Kazuaki Ishizaki <ishizaki@jp.ibm.com>
Closes#20036 from kiszk/SPARK-18066-followup.
## What changes were proposed in this pull request?
Test coverage for arithmetic operations leading to:
1. Precision loss
2. Overflow
Moreover, tests for casting bad string to other input types and for using bad string as operators of some functions.
## How was this patch tested?
added tests
Author: Marco Gaido <marcogaido91@gmail.com>
Closes#20084 from mgaido91/SPARK-22904.
## What changes were proposed in this pull request?
`DateTimeOperations` accept [`StringType`](ae998ec2b5/sql/catalyst/src/main/scala/org/apache/spark/sql/catalyst/analysis/TypeCoercion.scala (L669)), but:
```
spark-sql> SELECT '2017-12-24' + interval 2 months 2 seconds;
Error in query: cannot resolve '(CAST('2017-12-24' AS DOUBLE) + interval 2 months 2 seconds)' due to data type mismatch: differing types in '(CAST('2017-12-24' AS DOUBLE) + interval 2 months 2 seconds)' (double and calendarinterval).; line 1 pos 7;
'Project [unresolvedalias((cast(2017-12-24 as double) + interval 2 months 2 seconds), None)]
+- OneRowRelation
spark-sql>
```
After this PR:
```
spark-sql> SELECT '2017-12-24' + interval 2 months 2 seconds;
2018-02-24 00:00:02
Time taken: 0.2 seconds, Fetched 1 row(s)
```
## How was this patch tested?
unit tests
Author: Yuming Wang <wgyumg@gmail.com>
Closes#20067 from wangyum/SPARK-22894.
## What changes were proposed in this pull request?
In SPARK-20586 the flag `deterministic` was added to Scala UDF, but it is not available for python UDF. This flag is useful for cases when the UDF's code can return different result with the same input. Due to optimization, duplicate invocations may be eliminated or the function may even be invoked more times than it is present in the query. This can lead to unexpected behavior.
This PR adds the deterministic flag, via the `asNondeterministic` method, to let the user mark the function as non-deterministic and therefore avoid the optimizations which might lead to strange behaviors.
## How was this patch tested?
Manual tests:
```
>>> from pyspark.sql.functions import *
>>> from pyspark.sql.types import *
>>> df_br = spark.createDataFrame([{'name': 'hello'}])
>>> import random
>>> udf_random_col = udf(lambda: int(100*random.random()), IntegerType()).asNondeterministic()
>>> df_br = df_br.withColumn('RAND', udf_random_col())
>>> random.seed(1234)
>>> udf_add_ten = udf(lambda rand: rand + 10, IntegerType())
>>> df_br.withColumn('RAND_PLUS_TEN', udf_add_ten('RAND')).show()
+-----+----+-------------+
| name|RAND|RAND_PLUS_TEN|
+-----+----+-------------+
|hello| 3| 13|
+-----+----+-------------+
```
Author: Marco Gaido <marcogaido91@gmail.com>
Author: Marco Gaido <mgaido@hortonworks.com>
Closes#19929 from mgaido91/SPARK-22629.
## What changes were proposed in this pull request?
Decimal type is not yet supported in `ArrowWriter`.
This is adding the decimal type support.
## How was this patch tested?
Added a test to `ArrowConvertersSuite`.
Author: Takuya UESHIN <ueshin@databricks.com>
Closes#18754 from ueshin/issues/SPARK-21552.
## What changes were proposed in this pull request?
We should use `dataType.simpleString` to unified the data type mismatch message:
Before:
```
spark-sql> select cast(1 as binary);
Error in query: cannot resolve 'CAST(1 AS BINARY)' due to data type mismatch: cannot cast IntegerType to BinaryType; line 1 pos 7;
```
After:
```
park-sql> select cast(1 as binary);
Error in query: cannot resolve 'CAST(1 AS BINARY)' due to data type mismatch: cannot cast int to binary; line 1 pos 7;
```
## How was this patch tested?
Exist test.
Author: Yuming Wang <wgyumg@gmail.com>
Closes#20064 from wangyum/SPARK-22893.
## What changes were proposed in this pull request?
Basic continuous execution, supporting map/flatMap/filter, with commits and advancement through RPC.
## How was this patch tested?
new unit-ish tests (exercising execution end to end)
Author: Jose Torres <jose@databricks.com>
Closes#19984 from jose-torres/continuous-impl.
When one execution has multiple jobs, we need to append to the set of
stages, not replace them on every job.
Added unit test and ran existing tests on jenkins
Author: Imran Rashid <irashid@cloudera.com>
Closes#20047 from squito/SPARK-22861.
## What changes were proposed in this pull request?
This is a followup PR of https://github.com/apache/spark/pull/19257 where gatorsmile had left couple comments wrt code style.
## How was this patch tested?
Doesn't change any functionality. Will depend on build to see if no checkstyle rules are violated.
Author: Tejas Patil <tejasp@fb.com>
Closes#20041 from tejasapatil/followup_19257.
## What changes were proposed in this pull request?
Test Coverage for `WindowFrameCoercion` and `DecimalPrecision`, this is a Sub-tasks for [SPARK-22722](https://issues.apache.org/jira/browse/SPARK-22722).
## How was this patch tested?
N/A
Author: Yuming Wang <wgyumg@gmail.com>
Closes#20008 from wangyum/SPARK-22822.
## What changes were proposed in this pull request?
In https://github.com/apache/spark/pull/19681 we introduced a new interface called `AppStatusPlugin`, to register listeners and set up the UI for both live and history UI.
However I think it's an overkill for live UI. For example, we should not register `SQLListener` if users are not using SQL functions. Previously we register the `SQLListener` and set up SQL tab when `SparkSession` is firstly created, which indicates users are going to use SQL functions. But in #19681 , we register the SQL functions during `SparkContext` creation. The same thing should apply to streaming too.
I think we should keep the previous behavior, and only use this new interface for history server.
To reflect this change, I also rename the new interface to `SparkHistoryUIPlugin`
This PR also refines the tests for sql listener.
## How was this patch tested?
existing tests
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19981 from cloud-fan/listener.
## What changes were proposed in this pull request?
Upgrade Spark to Arrow 0.8.0 for Java and Python. Also includes an upgrade of Netty to 4.1.17 to resolve dependency requirements.
The highlights that pertain to Spark for the update from Arrow versoin 0.4.1 to 0.8.0 include:
* Java refactoring for more simple API
* Java reduced heap usage and streamlined hot code paths
* Type support for DecimalType, ArrayType
* Improved type casting support in Python
* Simplified type checking in Python
## How was this patch tested?
Existing tests
Author: Bryan Cutler <cutlerb@gmail.com>
Author: Shixiong Zhu <zsxwing@gmail.com>
Closes#19884 from BryanCutler/arrow-upgrade-080-SPARK-22324.
## What changes were proposed in this pull request?
Introduce a new interface `SessionConfigSupport` for `DataSourceV2`, it can help to propagate session configs with the specified key-prefix to all data source operations in this session.
## How was this patch tested?
Add new test suite `DataSourceV2UtilsSuite`.
Author: Xingbo Jiang <xingbo.jiang@databricks.com>
Closes#19861 from jiangxb1987/datasource-configs.
## What changes were proposed in this pull request?
Some users depend on source compatibility with the org.apache.spark.sql.execution.streaming.Offset class. Although this is not a stable interface, we can keep it in place for now to simplify upgrades to 2.3.
Author: Jose Torres <jose@databricks.com>
Closes#20012 from joseph-torres/binary-compat.
## What changes were proposed in this pull request?
Like `Parquet`, users can use `ORC` with Apache Spark structured streaming. This PR adds `orc()` to `DataStreamReader`(Scala/Python) in order to support creating streaming dataset with ORC file format more easily like the other file formats. Also, this adds a test coverage for ORC data source and updates the document.
**BEFORE**
```scala
scala> spark.readStream.schema("a int").orc("/tmp/orc_ss").writeStream.format("console").start()
<console>:24: error: value orc is not a member of org.apache.spark.sql.streaming.DataStreamReader
spark.readStream.schema("a int").orc("/tmp/orc_ss").writeStream.format("console").start()
```
**AFTER**
```scala
scala> spark.readStream.schema("a int").orc("/tmp/orc_ss").writeStream.format("console").start()
res0: org.apache.spark.sql.streaming.StreamingQuery = org.apache.spark.sql.execution.streaming.StreamingQueryWrapper678b3746
scala>
-------------------------------------------
Batch: 0
-------------------------------------------
+---+
| a|
+---+
| 1|
+---+
```
## How was this patch tested?
Pass the newly added test cases.
Author: Dongjoon Hyun <dongjoon@apache.org>
Closes#19975 from dongjoon-hyun/SPARK-22781.
## What changes were proposed in this pull request?
This change adds local checkpoint support to datasets and respective bind from Python Dataframe API.
If reliability requirements can be lowered to favor performance, as in cases of further quick transformations followed by a reliable save, localCheckpoints() fit very well.
Furthermore, at the moment Reliable checkpoints still incur double computation (see #9428)
In general it makes the API more complete as well.
## How was this patch tested?
Python land quick use case:
```python
>>> from time import sleep
>>> from pyspark.sql import types as T
>>> from pyspark.sql import functions as F
>>> def f(x):
sleep(1)
return x*2
...:
>>> df1 = spark.range(30, numPartitions=6)
>>> df2 = df1.select(F.udf(f, T.LongType())("id"))
>>> %time _ = df2.collect()
CPU times: user 7.79 ms, sys: 5.84 ms, total: 13.6 ms
Wall time: 12.2 s
>>> %time df3 = df2.localCheckpoint()
CPU times: user 2.38 ms, sys: 2.3 ms, total: 4.68 ms
Wall time: 10.3 s
>>> %time _ = df3.collect()
CPU times: user 5.09 ms, sys: 410 µs, total: 5.5 ms
Wall time: 148 ms
>>> sc.setCheckpointDir(".")
>>> %time df3 = df2.checkpoint()
CPU times: user 4.04 ms, sys: 1.63 ms, total: 5.67 ms
Wall time: 20.3 s
```
Author: Fernando Pereira <fernando.pereira@epfl.ch>
Closes#19805 from ferdonline/feature_dataset_localCheckpoint.
## What changes were proposed in this pull request?
Currently, the task memory manager throws an OutofMemory error when there is an IO exception happens in spill() - https://github.com/apache/spark/blob/master/core/src/main/java/org/apache/spark/memory/TaskMemoryManager.java#L194. Similarly there any many other places in code when if a task is not able to acquire memory due to an exception we throw an OutofMemory error which kills the entire executor and hence failing all the tasks that are running on that executor instead of just failing one single task.
## How was this patch tested?
Unit tests
Author: Sital Kedia <skedia@fb.com>
Closes#20014 from sitalkedia/skedia/upstream_SPARK-22827.
## What changes were proposed in this pull request?
Test Coverage for `WidenSetOperationTypes`, `BooleanEquality`, `StackCoercion` and `Division`, this is a Sub-tasks for [SPARK-22722](https://issues.apache.org/jira/browse/SPARK-22722).
## How was this patch tested?
N/A
Author: Yuming Wang <wgyumg@gmail.com>
Closes#20006 from wangyum/SPARK-22821.
## What changes were proposed in this pull request?
This PR is follow-on of #19518. This PR tries to reduce the number of constant pool entries used for accessing mutable state.
There are two directions:
1. Primitive type variables should be allocated at the outer class due to better performance. Otherwise, this PR allocates an array.
2. The length of allocated array is up to 32768 due to avoiding usage of constant pool entry at access (e.g. `mutableStateArray[32767]`).
Here are some discussions to determine these directions.
1. [[1]](https://github.com/apache/spark/pull/19518#issuecomment-346690464), [[2]](https://github.com/apache/spark/pull/19518#issuecomment-346690642), [[3]](https://github.com/apache/spark/pull/19518#issuecomment-346828180), [[4]](https://github.com/apache/spark/pull/19518#issuecomment-346831544), [[5]](https://github.com/apache/spark/pull/19518#issuecomment-346857340)
2. [[6]](https://github.com/apache/spark/pull/19518#issuecomment-346729172), [[7]](https://github.com/apache/spark/pull/19518#issuecomment-346798358), [[8]](https://github.com/apache/spark/pull/19518#issuecomment-346870408)
This PR modifies `addMutableState` function in the `CodeGenerator` to check if the declared state can be easily initialized compacted into an array. We identify three types of states that cannot compacted:
- Primitive type state (ints, booleans, etc) if the number of them does not exceed threshold
- Multiple-dimensional array type
- `inline = true`
When `useFreshName = false`, the given name is used.
Many codes were ported from #19518. Many efforts were put here. I think this PR should credit to bdrillard
With this PR, the following code is generated:
```
/* 005 */ class SpecificMutableProjection extends org.apache.spark.sql.catalyst.expressions.codegen.BaseMutableProjection {
/* 006 */
/* 007 */ private Object[] references;
/* 008 */ private InternalRow mutableRow;
/* 009 */ private boolean isNull_0;
/* 010 */ private boolean isNull_1;
/* 011 */ private boolean isNull_2;
/* 012 */ private int value_2;
/* 013 */ private boolean isNull_3;
...
/* 10006 */ private int value_4999;
/* 10007 */ private boolean isNull_5000;
/* 10008 */ private int value_5000;
/* 10009 */ private InternalRow[] mutableStateArray = new InternalRow[2];
/* 10010 */ private boolean[] mutableStateArray1 = new boolean[7001];
/* 10011 */ private int[] mutableStateArray2 = new int[1001];
/* 10012 */ private UTF8String[] mutableStateArray3 = new UTF8String[6000];
/* 10013 */
...
/* 107956 */ private void init_176() {
/* 107957 */ isNull_4986 = true;
/* 107958 */ value_4986 = -1;
...
/* 108004 */ }
...
```
## How was this patch tested?
Added a new test case to `GeneratedProjectionSuite`
Author: Kazuaki Ishizaki <ishizaki@jp.ibm.com>
Closes#19811 from kiszk/SPARK-18016.
## What changes were proposed in this pull request?
When calling explain on a query, the output can contain sensitive information. We should provide an admin/user to redact such information.
Before this PR, the plan of SS is like this
```
== Physical Plan ==
*HashAggregate(keys=[value#6], functions=[count(1)], output=[value#6, count(1)#12L])
+- StateStoreSave [value#6], state info [ checkpoint = file:/private/var/folders/vx/j0ydl5rn0gd9mgrh1pljnw900000gn/T/temporary-91c6fac0-609f-4bc8-ad57-52c189f06797/state, runId = 05a4b3af-f02c-40f8-9ff9-a3e18bae496f, opId = 0, ver = 0, numPartitions = 5], Complete, 0
+- *HashAggregate(keys=[value#6], functions=[merge_count(1)], output=[value#6, count#18L])
+- StateStoreRestore [value#6], state info [ checkpoint = file:/private/var/folders/vx/j0ydl5rn0gd9mgrh1pljnw900000gn/T/temporary-91c6fac0-609f-4bc8-ad57-52c189f06797/state, runId = 05a4b3af-f02c-40f8-9ff9-a3e18bae496f, opId = 0, ver = 0, numPartitions = 5]
+- *HashAggregate(keys=[value#6], functions=[merge_count(1)], output=[value#6, count#18L])
+- Exchange hashpartitioning(value#6, 5)
+- *HashAggregate(keys=[value#6], functions=[partial_count(1)], output=[value#6, count#18L])
+- *SerializeFromObject [staticinvoke(class org.apache.spark.unsafe.types.UTF8String, StringType, fromString, input[0, java.lang.String, true], true, false) AS value#6]
+- *MapElements <function1>, obj#5: java.lang.String
+- *DeserializeToObject value#30.toString, obj#4: java.lang.String
+- LocalTableScan [value#30]
```
After this PR, we can get the following output if users set `spark.redaction.string.regex` to `file:/[\\w_]+`
```
== Physical Plan ==
*HashAggregate(keys=[value#6], functions=[count(1)], output=[value#6, count(1)#12L])
+- StateStoreSave [value#6], state info [ checkpoint = *********(redacted)/var/folders/vx/j0ydl5rn0gd9mgrh1pljnw900000gn/T/temporary-e7da9b7d-3ec0-474d-8b8c-927f7d12ed72/state, runId = 8a9c3761-93d5-4896-ab82-14c06240dcea, opId = 0, ver = 0, numPartitions = 5], Complete, 0
+- *HashAggregate(keys=[value#6], functions=[merge_count(1)], output=[value#6, count#32L])
+- StateStoreRestore [value#6], state info [ checkpoint = *********(redacted)/var/folders/vx/j0ydl5rn0gd9mgrh1pljnw900000gn/T/temporary-e7da9b7d-3ec0-474d-8b8c-927f7d12ed72/state, runId = 8a9c3761-93d5-4896-ab82-14c06240dcea, opId = 0, ver = 0, numPartitions = 5]
+- *HashAggregate(keys=[value#6], functions=[merge_count(1)], output=[value#6, count#32L])
+- Exchange hashpartitioning(value#6, 5)
+- *HashAggregate(keys=[value#6], functions=[partial_count(1)], output=[value#6, count#32L])
+- *SerializeFromObject [staticinvoke(class org.apache.spark.unsafe.types.UTF8String, StringType, fromString, input[0, java.lang.String, true], true, false) AS value#6]
+- *MapElements <function1>, obj#5: java.lang.String
+- *DeserializeToObject value#27.toString, obj#4: java.lang.String
+- LocalTableScan [value#27]
```
## How was this patch tested?
Added a test case
Author: gatorsmile <gatorsmile@gmail.com>
Closes#19985 from gatorsmile/redactPlan.
## What changes were proposed in this pull request?
The current implementation of InMemoryRelation always uses the most expensive execution plan when writing cache
With CBO enabled, we can actually have a more exact estimation of the underlying table size...
## How was this patch tested?
existing test
Author: CodingCat <zhunansjtu@gmail.com>
Author: Nan Zhu <CodingCat@users.noreply.github.com>
Author: Nan Zhu <nanzhu@uber.com>
Closes#19864 from CodingCat/SPARK-22673.
This change restores the functionality that keeps a limited number of
different types (jobs, stages, etc) depending on configuration, to avoid
the store growing indefinitely over time.
The feature is implemented by creating a new type (ElementTrackingStore)
that wraps a KVStore and allows triggers to be set up for when elements
of a certain type meet a certain threshold. Triggers don't need to
necessarily only delete elements, but the current API is set up in a way
that makes that use case easier.
The new store also has a trigger for the "close" call, which makes it
easier for listeners to register code for cleaning things up and flushing
partial state to the store.
The old configurations for cleaning up the stored elements from the core
and SQL UIs are now active again, and the old unit tests are re-enabled.
Author: Marcelo Vanzin <vanzin@cloudera.com>
Closes#19751 from vanzin/SPARK-20653.
## What changes were proposed in this pull request?
Test Coverage for `PromoteStrings` and `InConversion`, this is a Sub-tasks for [SPARK-22722](https://issues.apache.org/jira/browse/SPARK-22722).
## How was this patch tested?
N/A
Author: Yuming Wang <wgyumg@gmail.com>
Closes#20001 from wangyum/SPARK-22816.
## What changes were proposed in this pull request?
Basic tests for IfCoercion and CaseWhenCoercion
## How was this patch tested?
N/A
Author: Yuming Wang <wgyumg@gmail.com>
Closes#19949 from wangyum/SPARK-22762.
## What changes were proposed in this pull request?
Add a test suite to ensure all the [SSB (Star Schema Benchmark)](https://www.cs.umb.edu/~poneil/StarSchemaB.PDF) queries can be successfully analyzed, optimized and compiled without hitting the max iteration threshold.
## How was this patch tested?
Added `SSBQuerySuite`.
Author: Takeshi Yamamuro <yamamuro@apache.org>
Closes#19990 from maropu/SPARK-22800.
## What changes were proposed in this pull request?
As the discussion in https://github.com/apache/spark/pull/16481 and https://github.com/apache/spark/pull/18975#discussion_r155454606
Currently the BaseRelation returned by `dataSource.writeAndRead` only used in `CreateDataSourceTableAsSelect`, planForWriting and writeAndRead has some common code paths.
In this patch I removed the writeAndRead function and added the getRelation function which only use in `CreateDataSourceTableAsSelectCommand` while saving data to non-existing table.
## How was this patch tested?
Existing UT
Author: Yuanjian Li <xyliyuanjian@gmail.com>
Closes#19941 from xuanyuanking/SPARK-22753.
## What changes were proposed in this pull request?
Add a test suite to ensure all the TPC-H queries can be successfully analyzed, optimized and compiled without hitting the max iteration threshold.
## How was this patch tested?
N/A
Author: gatorsmile <gatorsmile@gmail.com>
Closes#19982 from gatorsmile/testTPCH.
## What changes were proposed in this pull request?
StreamExecution is now an abstract base class, which MicroBatchExecution (the current StreamExecution) inherits. When continuous processing is implemented, we'll have a new ContinuousExecution implementation of StreamExecution.
A few fields are also renamed to make them less microbatch-specific.
## How was this patch tested?
refactoring only
Author: Jose Torres <jose@databricks.com>
Closes#19926 from joseph-torres/continuous-refactor.
## What changes were proposed in this pull request?
In multiple text analysis problems, it is not often desirable for the rows to be split by "\n". There exists a wholeText reader for RDD API, and this JIRA just adds the same support for Dataset API.
## How was this patch tested?
Added relevant new tests for both scala and Java APIs
Author: Prashant Sharma <prashsh1@in.ibm.com>
Author: Prashant Sharma <prashant@apache.org>
Closes#14151 from ScrapCodes/SPARK-16496/wholetext.
## What changes were proposed in this pull request?
This PR adds check whether Java code generated by Catalyst can be compiled by `janino` correctly or not into `TPCDSQuerySuite`. Before this PR, this suite only checks whether analysis can be performed correctly or not.
This check will be able to avoid unexpected performance degrade by interpreter execution due to a Java compilation error.
## How was this patch tested?
Existing a test case, but updated it.
Author: Kazuaki Ishizaki <ishizaki@jp.ibm.com>
Closes#19971 from kiszk/SPARK-22774.
## What changes were proposed in this pull request?
`ColumnVector.anyNullsSet` is not called anywhere except tests, and we can easily replace it with `ColumnVector.numNulls > 0`
## How was this patch tested?
existing tests
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19980 from cloud-fan/minor.
## What changes were proposed in this pull request?
These dictionary related APIs are special to `WritableColumnVector` and should not be in `ColumnVector`, which will be public soon.
## How was this patch tested?
existing tests
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19970 from cloud-fan/final.
SQLConf allows some callers to define a custom default value for
configs, and that complicates a little bit the handling of fallback
config entries, since most of the default value resolution is
hidden by the config code.
This change peaks into the internals of these fallback configs
to figure out the correct default value, and also returns the
current human-readable default when showing the default value
(e.g. through "set -v").
Author: Marcelo Vanzin <vanzin@cloudera.com>
Closes#19974 from vanzin/SPARK-22779.
## What changes were proposed in this pull request?
This PR provides DataSourceV2 API support for structured streaming, including new pieces needed to support continuous processing [SPARK-20928]. High level summary:
- DataSourceV2 includes new mixins to support micro-batch and continuous reads and writes. For reads, we accept an optional user specified schema rather than using the ReadSupportWithSchema model, because doing so would severely complicate the interface.
- DataSourceV2Reader includes new interfaces to read a specific microbatch or read continuously from a given offset. These follow the same setter pattern as the existing Supports* mixins so that they can work with SupportsScanUnsafeRow.
- DataReader (the per-partition reader) has a new subinterface ContinuousDataReader only for continuous processing. This reader has a special method to check progress, and next() blocks for new input rather than returning false.
- Offset, an abstract representation of position in a streaming query, is ported to the public API. (Each type of reader will define its own Offset implementation.)
- DataSourceV2Writer has a new subinterface ContinuousWriter only for continuous processing. Commits to this interface come tagged with an epoch number, as the execution engine will continue to produce new epoch commits as the task continues indefinitely.
Note that this PR does not propose to change the existing DataSourceV2 batch API, or deprecate the existing streaming source/sink internal APIs in spark.sql.execution.streaming.
## How was this patch tested?
Toy implementations of the new interfaces with unit tests.
Author: Jose Torres <jose@databricks.com>
Closes#19925 from joseph-torres/continuous-api.
## What changes were proposed in this pull request?
This pr fixed a compilation error of TPCDS `q75`/`q77` caused by #19813;
```
java.util.concurrent.ExecutionException: org.codehaus.commons.compiler.CompileException: File 'generated.java', Line 371, Column 16: failed to compile: org.codehaus.commons.compiler.CompileException: File 'generated.java', Line 371, Column 16: Expression "bhj_matched" is not an rvalue
at com.google.common.util.concurrent.AbstractFuture$Sync.getValue(AbstractFuture.java:306)
at com.google.common.util.concurrent.AbstractFuture$Sync.get(AbstractFuture.java:293)
at com.google.common.util.concurrent.AbstractFuture.get(AbstractFuture.java:116)
at com.google.common.util.concurrent.Uninterruptibles.getUninterruptibly(Uninterruptibles.java:135)
```
## How was this patch tested?
Manually checked `q75`/`q77` can be properly compiled
Author: Takeshi Yamamuro <yamamuro@apache.org>
Closes#19969 from maropu/SPARK-22600-FOLLOWUP.
## What changes were proposed in this pull request?
See jira description for the bug : https://issues.apache.org/jira/browse/SPARK-22042
Fix done in this PR is: In `EnsureRequirements`, apply `ReorderJoinPredicates` over the input tree before doing its core logic. Since the tree is transformed bottom-up, we can assure that the children are resolved before doing `ReorderJoinPredicates`.
Theoretically this will guarantee to cover all such cases while keeping the code simple. My small grudge is for cosmetic reasons. This PR will look weird given that we don't call rules from other rules (not to my knowledge). I could have moved all the logic for `ReorderJoinPredicates` into `EnsureRequirements` but that will make it a but crowded. I am happy to discuss if there are better options.
## How was this patch tested?
Added a new test case
Author: Tejas Patil <tejasp@fb.com>
Closes#19257 from tejasapatil/SPARK-22042_ReorderJoinPredicates.
## What changes were proposed in this pull request?
We need to add some helper code to make testing ML transformers & models easier with streaming data. These tests might help us catch any remaining issues and we could encourage future PRs to use these tests to prevent new Models & Transformers from having issues.
I add a `MLTest` trait which extends `StreamTest` trait, and override `createSparkSession`. So ML testsuite can only extend `MLTest`, to use both ML & Stream test util functions.
I only modify one testcase in `LinearRegressionSuite`, for first pass review.
Link to #19746
## How was this patch tested?
`MLTestSuite` added.
Author: WeichenXu <weichen.xu@databricks.com>
Closes#19843 from WeichenXu123/ml_stream_test_helper.
## What changes were proposed in this pull request?
SPARK-22543 fixes the 64kb compile error for deeply nested expression for non-wholestage codegen. This PR extends it to support wholestage codegen.
This patch brings some util methods in to extract necessary parameters for an expression if it is split to a function.
The util methods are put in object `ExpressionCodegen` under `codegen`. The main entry is `getExpressionInputParams` which returns all necessary parameters to evaluate the given expression in a split function.
This util methods can be used to split expressions too. This is a TODO item later.
## How was this patch tested?
Added test.
Author: Liang-Chi Hsieh <viirya@gmail.com>
Closes#19813 from viirya/reduce-expr-code-for-wholestage.
## What changes were proposed in this pull request?
We have two methods to reference an object `addReferenceMinorObj` and `addReferenceObj `. The latter creates a new global variable, which means new entries in the constant pool.
The PR unifies the two method in a single `addReferenceObj` which returns the code to access the object in the `references` array and doesn't add new mutable states.
## How was this patch tested?
added UTs.
Author: Marco Gaido <mgaido@hortonworks.com>
Closes#19916 from mgaido91/SPARK-22716.
In order to enable truncate for PostgreSQL databases in Spark JDBC, a change is needed to the query used for truncating a PostgreSQL table. By default, PostgreSQL will automatically truncate any descendant tables if a TRUNCATE query is executed. As this may result in (unwanted) side-effects, the query used for the truncate should be specified separately for PostgreSQL, specifying only to TRUNCATE a single table.
## What changes were proposed in this pull request?
Add `getTruncateQuery` function to `JdbcDialect.scala`, with default query. Overridden this function for PostgreSQL to only truncate a single table. Also sets `isCascadingTruncateTable` to false, as this will allow truncates for PostgreSQL.
## How was this patch tested?
Existing tests all pass. Added test for `getTruncateQuery`
Author: Daniel van der Ende <daniel.vanderende@gmail.com>
Closes#19911 from danielvdende/SPARK-22717.
## What changes were proposed in this pull request?
In the previous PRs, https://github.com/apache/spark/pull/17832 and https://github.com/apache/spark/pull/17835 , we convert `TIMESTAMP WITH TIME ZONE` and `TIME WITH TIME ZONE` to `TIMESTAMP` for all the JDBC sources. However, this conversion could be risky since it does not respect our SQL configuration `spark.sql.session.timeZone`.
In addition, each vendor might have different semantics for these two types. For example, Postgres simply returns `TIMESTAMP` types for `TIMESTAMP WITH TIME ZONE`. For such supports, we should do it case by case. This PR reverts the general support of `TIMESTAMP WITH TIME ZONE` and `TIME WITH TIME ZONE` for JDBC sources, except ORACLE Dialect.
When supporting the ORACLE's `TIMESTAMP WITH TIME ZONE`, we only support it when the JVM default timezone is the same as the user-specified configuration `spark.sql.session.timeZone` (whose default is the JVM default timezone). Now, we still treat `TIMESTAMP WITH TIME ZONE` as `TIMESTAMP` when fetching the values via the Oracle JDBC connector, whose client converts the timestamp values with time zone to the timestamp values using the local JVM default timezone (a test case is added to `OracleIntegrationSuite.scala` in this PR for showing the behavior). Thus, to avoid any future behavior change, we will not support it if JVM default timezone is different from `spark.sql.session.timeZone`
No regression because the previous two PRs were just merged to be unreleased master branch.
## How was this patch tested?
Added the test cases
Author: gatorsmile <gatorsmile@gmail.com>
Closes#19939 from gatorsmile/timezoneUpdate.
## What changes were proposed in this pull request?
Before we deliver the Hive compatibility mode, we plan to write a set of test cases that can be easily run in both Spark and Hive sides. We can easily compare whether they are the same or not. When new typeCoercion rules are added, we also can easily track the changes. These test cases can also be backported to the previous Spark versions for determining the changes we made.
This PR is the first attempt for improving the test coverage for type coercion compatibility. We generate these test cases for our binary comparison and ImplicitTypeCasts based on the Apache Derby test cases in https://github.com/apache/derby/blob/10.14/java/testing/org/apache/derbyTesting/functionTests/tests/lang/implicitConversions.sql
## How was this patch tested?
N/A
Author: gatorsmile <gatorsmile@gmail.com>
Closes#19918 from gatorsmile/typeCoercionTests.
## What changes were proposed in this pull request?
During https://github.com/apache/spark/pull/19882, `conf` is mistakenly used to switch ORC implementation between `native` and `hive`. To affect `OrcTest` correctly, `spark.conf` should be used.
## How was this patch tested?
Pass the tests.
Author: Dongjoon Hyun <dongjoon@apache.org>
Closes#19931 from dongjoon-hyun/SPARK-22672-2.
## What changes were proposed in this pull request?
Int96 data written by impala vs data written by hive & spark is stored slightly differently -- they use a different offset for the timezone. This adds an option "spark.sql.parquet.int96TimestampConversion" (false by default) to adjust timestamps if and only if the writer is impala (or more precisely, if the parquet file's "createdBy" metadata does not start with "parquet-mr"). This matches the existing behavior in hive from HIVE-9482.
## How was this patch tested?
Unit test added, existing tests run via jenkins.
Author: Imran Rashid <irashid@cloudera.com>
Author: Henry Robinson <henry@apache.org>
Closes#19769 from squito/SPARK-12297_skip_conversion.
## What changes were proposed in this pull request?
#19416 changed the format in which rows were encoded in the state store. However, this can break existing streaming queries with the old format in unpredictable ways (potentially crashing the JVM). Hence I am reverting this for now. This will be re-applied in the future after we start saving more metadata in checkpoints to signify which version of state row format the existing streaming query is running. Then we can decode old and new formats accordingly.
## How was this patch tested?
Existing tests.
Author: Tathagata Das <tathagata.das1565@gmail.com>
Closes#19924 from tdas/SPARK-22187-1.
## What changes were proposed in this pull request?
This PR support for pushing down filters for DateType in ORC
## How was this patch tested?
Pass the Jenkins with newly add and updated test cases.
Author: Dongjoon Hyun <dongjoon@apache.org>
Closes#18995 from dongjoon-hyun/SPARK-21787.
…a-2.12 and JDK9
## What changes were proposed in this pull request?
Some compile error after upgrading to scala-2.12
```javascript
spark_source/core/src/main/scala/org/apache/spark/executor/Executor.scala:455: ambiguous reference to overloaded definition, method limit in class ByteBuffer of type (x$1: Int)java.nio.ByteBuffer
method limit in class Buffer of type ()Int
match expected type ?
val resultSize = serializedDirectResult.limit
error
```
The limit method was moved from ByteBuffer to the superclass Buffer and it can no longer be called without (). The same reason for position method.
```javascript
/home/zly/prj/oss/jdk9_HOS_SOURCE/spark_source/sql/hive/src/main/scala/org/apache/spark/sql/hive/execution/ScriptTransformationExec.scala:427: ambiguous reference to overloaded definition, [error] both method putAll in class Properties of type (x$1: java.util.Map[_, _])Unit [error] and method putAll in class Hashtable of type (x$1: java.util.Map[_ <: Object, _ <: Object])Unit [error] match argument types (java.util.Map[String,String])
[error] props.putAll(outputSerdeProps.toMap.asJava)
[error] ^
```
This is because the key type is Object instead of String which is unsafe.
## How was this patch tested?
running tests
Please review http://spark.apache.org/contributing.html before opening a pull request.
Author: kellyzly <kellyzly@126.com>
Closes#19854 from kellyzly/SPARK-22660.
## What changes were proposed in this pull request?
To support vectorization in native OrcFileFormat later, we need to use `buildReaderWithPartitionValues` instead of `buildReader` like ParquetFileFormat. This PR replaces `buildReader` with `buildReaderWithPartitionValues`.
## How was this patch tested?
Pass the Jenkins with the existing test cases.
Author: Dongjoon Hyun <dongjoon@apache.org>
Closes#19907 from dongjoon-hyun/SPARK-ORC-BUILD-READER.
- Implemented methods getInt, getLong, getBoolean for DataSourceV2Options
- Added new unit tests to exercise these methods
Author: Sunitha Kambhampati <skambha@us.ibm.com>
Closes#19902 from skambha/spark22452.
## What changes were proposed in this pull request?
Similar to https://github.com/apache/spark/pull/19842 , we should also make `ColumnarRow` an immutable view, and move forward to make `ColumnVector` public.
## How was this patch tested?
Existing tests.
The performance concern should be same as https://github.com/apache/spark/pull/19842 .
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19898 from cloud-fan/row-id.
## What changes were proposed in this pull request?
Since SPARK-20682, we have two `OrcFileFormat`s. This PR refactors ORC tests with three principles (with a few exceptions)
1. Move test suite into `sql/core`.
2. Create `HiveXXX` test suite in `sql/hive` by reusing `sql/core` test suite.
3. `OrcTest` will provide common helper functions and `val orcImp: String`.
**Test Suites**
*Native OrcFileFormat*
- org.apache.spark.sql.hive.orc
- OrcFilterSuite
- OrcPartitionDiscoverySuite
- OrcQuerySuite
- OrcSourceSuite
- o.a.s.sql.hive.orc
- OrcHadoopFsRelationSuite
*Hive built-in OrcFileFormat*
- o.a.s.sql.hive.orc
- HiveOrcFilterSuite
- HiveOrcPartitionDiscoverySuite
- HiveOrcQuerySuite
- HiveOrcSourceSuite
- HiveOrcHadoopFsRelationSuite
**Hierarchy**
```
OrcTest
-> OrcSuite
-> OrcSourceSuite
-> OrcQueryTest
-> OrcQuerySuite
-> OrcPartitionDiscoveryTest
-> OrcPartitionDiscoverySuite
-> OrcFilterSuite
HadoopFsRelationTest
-> OrcHadoopFsRelationSuite
-> HiveOrcHadoopFsRelationSuite
```
Please note the followings.
- Unlike the other test suites, `OrcHadoopFsRelationSuite` doesn't inherit `OrcTest`. It is inside `sql/hive` like `ParquetHadoopFsRelationSuite` due to the dependencies and follows the existing convention to use `val dataSourceName: String`
- `OrcFilterSuite`s cannot reuse test cases due to the different function signatures using Hive 1.2.1 ORC classes and Apache ORC 1.4.1 classes.
## How was this patch tested?
Pass the Jenkins tests with reorganized test suites.
Author: Dongjoon Hyun <dongjoon@apache.org>
Closes#19882 from dongjoon-hyun/SPARK-22672.
## What changes were proposed in this pull request?
There was a bug in Univocity Parser that causes the issue in SPARK-22516. This was fixed by upgrading from 2.5.4 to 2.5.9 version of the library :
**Executing**
```
spark.read.option("header","true").option("inferSchema", "true").option("multiLine", "true").option("comment", "g").csv("test_file_without_eof_char.csv").show()
```
**Before**
```
ERROR Executor: Exception in task 0.0 in stage 6.0 (TID 6)
com.univocity.parsers.common.TextParsingException: java.lang.IllegalArgumentException - Unable to skip 1 lines from line 2. End of input reached
...
Internal state when error was thrown: line=3, column=0, record=2, charIndex=31
at com.univocity.parsers.common.AbstractParser.handleException(AbstractParser.java:339)
at com.univocity.parsers.common.AbstractParser.parseNext(AbstractParser.java:475)
at org.apache.spark.sql.execution.datasources.csv.UnivocityParser$$anon$1.next(UnivocityParser.scala:281)
at scala.collection.Iterator$$anon$11.next(Iterator.scala:409)
```
**After**
```
+-------+-------+
|column1|column2|
+-------+-------+
| abc| def|
+-------+-------+
```
## How was this patch tested?
The already existing `CSVSuite.commented lines in CSV data` test was extended to parse the file also in multiline mode. The test input file was modified to also include a comment in the last line.
Author: smurakozi <smurakozi@gmail.com>
Closes#19906 from smurakozi/SPARK-22516.
## What changes were proposed in this pull request?
This is a follow-up of https://github.com/apache/spark/pull/19871 to improve an exception message.
## How was this patch tested?
Pass the Jenkins.
Author: Dongjoon Hyun <dongjoon@apache.org>
Closes#19903 from dongjoon-hyun/orc_exception.
## What changes were proposed in this pull request?
The SQL `Analyzer` goes through a whole query plan even most part of it is analyzed. This increases the time spent on query analysis for long pipelines in ML, especially.
This patch adds a logical node called `AnalysisBarrier` that wraps an analyzed logical plan to prevent it from analysis again. The barrier is applied to the analyzed logical plan in `Dataset`. It won't change the output of wrapped logical plan and just acts as a wrapper to hide it from analyzer. New operations on the dataset will be put on the barrier, so only the new nodes created will be analyzed.
This analysis barrier will be removed at the end of analysis stage.
## How was this patch tested?
Added tests.
Author: Liang-Chi Hsieh <viirya@gmail.com>
Closes#19873 from viirya/SPARK-20392-reopen.
## What changes were proposed in this pull request?
During [SPARK-22488](https://github.com/apache/spark/pull/19713) to fix view resolution issue, there occurs a regression at `2.2.1` and `master` branch like the following. This PR fixes that.
```scala
scala> spark.version
res2: String = 2.2.1
scala> sql("DROP TABLE IF EXISTS t").show
17/12/04 21:01:06 WARN DropTableCommand: org.apache.spark.sql.AnalysisException:
Table or view not found: t;
org.apache.spark.sql.AnalysisException: Table or view not found: t;
```
## How was this patch tested?
Manual.
Author: Dongjoon Hyun <dongjoon@apache.org>
Closes#19888 from dongjoon-hyun/SPARK-22686.
## What changes were proposed in this pull request?
This PR aims to provide a configuration to choose the default `OrcFileFormat` from legacy `sql/hive` module or new `sql/core` module.
For example, this configuration will affects the following operations.
```scala
spark.read.orc(...)
```
```sql
CREATE TABLE t
USING ORC
...
```
## How was this patch tested?
Pass the Jenkins with new test suites.
Author: Dongjoon Hyun <dongjoon@apache.org>
Closes#19871 from dongjoon-hyun/spark-sql-orc-enabled.
## What changes were proposed in this pull request?
PropagateTypes are called twice in TypeCoercion. We do not need to call it twice. Instead, we should call it after each change on the types.
## How was this patch tested?
The existing tests
Author: gatorsmile <gatorsmile@gmail.com>
Closes#19874 from gatorsmile/deduplicatePropagateTypes.
## What changes were proposed in this pull request?
The `HashAggregateExec` whole stage codegen path is a little messy and hard to understand, this code cleans it up a little bit, especially for the fast hash map part.
## How was this patch tested?
existing tests
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19869 from cloud-fan/hash-agg.
## What changes were proposed in this pull request?
Since [SPARK-2883](https://issues.apache.org/jira/browse/SPARK-2883), Apache Spark supports Apache ORC inside `sql/hive` module with Hive dependency. This PR aims to add a new ORC data source inside `sql/core` and to replace the old ORC data source eventually. This PR resolves the following three issues.
- [SPARK-20682](https://issues.apache.org/jira/browse/SPARK-20682): Add new ORCFileFormat based on Apache ORC 1.4.1
- [SPARK-15474](https://issues.apache.org/jira/browse/SPARK-15474): ORC data source fails to write and read back empty dataframe
- [SPARK-21791](https://issues.apache.org/jira/browse/SPARK-21791): ORC should support column names with dot
## How was this patch tested?
Pass the Jenkins with the existing all tests and new tests for SPARK-15474 and SPARK-21791.
Author: Dongjoon Hyun <dongjoon@apache.org>
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19651 from dongjoon-hyun/SPARK-20682.
## What changes were proposed in this pull request?
Use a separate Spark event queue for StreamingQueryListenerBus so that if there are many non-streaming events, streaming query listeners don't need to wait for other Spark listeners and can catch up.
## How was this patch tested?
Jenkins
Author: Shixiong Zhu <zsxwing@gmail.com>
Closes#19838 from zsxwing/SPARK-22638.
## What changes were proposed in this pull request?
When user tries to load data with a non existing hdfs file path system is not validating it and the load command operation is getting successful.
This is misleading to the user. already there is a validation in the scenario of none existing local file path. This PR has added validation in the scenario of nonexisting hdfs file path
## How was this patch tested?
UT has been added for verifying the issue, also snapshots has been added after the verification in a spark yarn cluster
Author: sujith71955 <sujithchacko.2010@gmail.com>
Closes#19823 from sujith71955/master_LoadComand_Issue.
## What changes were proposed in this pull request?
This PR introduces a way to explicitly range-partition a Dataset. So far, only round-robin and hash partitioning were possible via `df.repartition(...)`, but sometimes range partitioning might be desirable: e.g. when writing to disk, for better compression without the cost of global sort.
The current implementation piggybacks on the existing `RepartitionByExpression` `LogicalPlan` and simply adds the following logic: If its expressions are of type `SortOrder`, then it will do `RangePartitioning`; otherwise `HashPartitioning`. This was by far the least intrusive solution I could come up with.
## How was this patch tested?
Unit test for `RepartitionByExpression` changes, a test to ensure we're not changing the behavior of existing `.repartition()` and a few end-to-end tests in `DataFrameSuite`.
Author: Adrian Ionescu <adrian@databricks.com>
Closes#19828 from adrian-ionescu/repartitionByRange.
## What changes were proposed in this pull request?
How to reproduce:
```scala
import org.apache.spark.sql.execution.joins.BroadcastHashJoinExec
spark.createDataFrame(Seq((1, "4"), (2, "2"))).toDF("key", "value").createTempView("table1")
spark.createDataFrame(Seq((1, "1"), (2, "2"))).toDF("key", "value").createTempView("table2")
val bl = sql("SELECT /*+ MAPJOIN(t1) */ * FROM table1 t1 JOIN table2 t2 ON t1.key = t2.key").queryExecution.executedPlan
println(bl.children.head.asInstanceOf[BroadcastHashJoinExec].buildSide)
```
The result is `BuildRight`, but should be `BuildLeft`. This PR fix this issue.
## How was this patch tested?
unit tests
Author: Yuming Wang <wgyumg@gmail.com>
Closes#19714 from wangyum/SPARK-22489.
## What changes were proposed in this pull request?
To make `ColumnVector` public, `ColumnarArray` need to be public too, and we should not have mutable public fields in a public class. This PR proposes to make `ColumnarArray` an immutable view of the data, and always create a new instance of `ColumnarArray` in `ColumnVector#getArray`
## How was this patch tested?
new benchmark in `ColumnarBatchBenchmark`
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19842 from cloud-fan/column-vector.
## What changes were proposed in this pull request?
As a step to make `ColumnVector` public, the `ColumnarRow` returned by `ColumnVector#getStruct` should be immutable.
However we do need the mutability of `ColumnaRow` for the fast vectorized hashmap in hash aggregate. To solve this, this PR introduces a `MutableColumnarRow` for this use case.
## How was this patch tested?
existing test.
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19847 from cloud-fan/mutable-row.
## What changes were proposed in this pull request?
Currently, in the optimize rule `PropagateEmptyRelation`, the following cases is not handled:
1. empty relation as right child in left outer join
2. empty relation as left child in right outer join
3. empty relation as right child in left semi join
4. empty relation as right child in left anti join
5. only one empty relation in full outer join
case 1 / 2 / 5 can be treated as **Cartesian product** and cause exception. See the new test cases.
## How was this patch tested?
Unit test
Author: Wang Gengliang <ltnwgl@gmail.com>
Closes#19825 from gengliangwang/SPARK-22615.
## What changes were proposed in this pull request?
For SQL write jobs, we only set metrics for the SQL listener and display them in the SQL plan UI. We should also set metrics for Spark task output metrics, which will be shown in spark job UI.
## How was this patch tested?
test it manually. For a simple write job
```
spark.range(1000).write.parquet("/tmp/p1")
```
now the spark job UI looks like
![ui](https://user-images.githubusercontent.com/3182036/33326478-05a25b7c-d490-11e7-96ef-806117774356.jpg)
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19833 from cloud-fan/ui.
## What changes were proposed in this pull request?
`CatalogImpl.refreshTable` uses `foreach(..)` to refresh all tables in a view. This traverses all nodes in the subtree and calls `LogicalPlan.refresh()` on these nodes. However `LogicalPlan.refresh()` is also refreshing its children, as a result refreshing a large view can be quite expensive.
This PR just calls `LogicalPlan.refresh()` on the top node.
## How was this patch tested?
Existing tests.
Author: Herman van Hovell <hvanhovell@databricks.com>
Closes#19837 from hvanhovell/SPARK-22637.
## What changes were proposed in this pull request?
* JIRA: [SPARK-22431](https://issues.apache.org/jira/browse/SPARK-22431) : Creating Permanent view with illegal type
**Description:**
- It is possible in Spark SQL to create a permanent view that uses an nested field with an illegal name.
- For example if we create the following view:
```create view x as select struct('a' as `$q`, 1 as b) q```
- A simple select fails with the following exception:
```
select * from x;
org.apache.spark.SparkException: Cannot recognize hive type string: struct<$q:string,b:int>
at org.apache.spark.sql.hive.client.HiveClientImpl$.fromHiveColumn(HiveClientImpl.scala:812)
at org.apache.spark.sql.hive.client.HiveClientImpl$$anonfun$getTableOption$1$$anonfun$apply$11$$anonfun$7.apply(HiveClientImpl.scala:378)
at org.apache.spark.sql.hive.client.HiveClientImpl$$anonfun$getTableOption$1$$anonfun$apply$11$$anonfun$7.apply(HiveClientImpl.scala:378)
...
```
**Issue/Analysis**: Right now, we can create a view with a schema that cannot be read back by Spark from the Hive metastore. For more details, please see the discussion about the analysis and proposed fix options in comment 1 and comment 2 in the [SPARK-22431](https://issues.apache.org/jira/browse/SPARK-22431)
**Proposed changes**:
- Fix the hive table/view codepath to check whether the schema datatype is parseable by Spark before persisting it in the metastore. This change is localized to HiveClientImpl to do the check similar to the check in FromHiveColumn. This is fail-fast and we will avoid the scenario where we write something to the metastore that we are unable to read it back.
- Added new unit tests
- Ran the sql related unit test suites ( hive/test, sql/test, catalyst/test) OK
With the fix:
```
create view x as select struct('a' as `$q`, 1 as b) q;
17/11/28 10:44:55 ERROR SparkSQLDriver: Failed in [create view x as select struct('a' as `$q`, 1 as b) q]
org.apache.spark.SparkException: Cannot recognize hive type string: struct<$q:string,b:int>
at org.apache.spark.sql.hive.client.HiveClientImpl$.org$apache$spark$sql$hive$client$HiveClientImpl$$getSparkSQLDataType(HiveClientImpl.scala:884)
at org.apache.spark.sql.hive.client.HiveClientImpl$$anonfun$org$apache$spark$sql$hive$client$HiveClientImpl$$verifyColumnDataType$1.apply(HiveClientImpl.scala:906)
at org.apache.spark.sql.hive.client.HiveClientImpl$$anonfun$org$apache$spark$sql$hive$client$HiveClientImpl$$verifyColumnDataType$1.apply(HiveClientImpl.scala:906)
at scala.collection.Iterator$class.foreach(Iterator.scala:893)
...
```
## How was this patch tested?
- New unit tests have been added.
hvanhovell, Please review and share your thoughts/comments. Thank you so much.
Author: Sunitha Kambhampati <skambha@us.ibm.com>
Closes#19747 from skambha/spark22431.
## What changes were proposed in this pull request?
Currently, relation size is computed as the sum of file size, which is error-prone because storage format like parquet may have a much smaller file size compared to in-memory size. When we choose broadcast join based on file size, there's a risk of OOM. But if the number of rows is available in statistics, we can get a better estimation by `numRows * rowSize`, which helps to alleviate this problem.
## How was this patch tested?
Added a new test case for data source table and hive table.
Author: Zhenhua Wang <wzh_zju@163.com>
Author: Zhenhua Wang <wangzhenhua@huawei.com>
Closes#19743 from wzhfy/better_leaf_size.
## What changes were proposed in this pull request?
When converting Pandas DataFrame/Series from/to Spark DataFrame using `toPandas()` or pandas udfs, timestamp values behave to respect Python system timezone instead of session timezone.
For example, let's say we use `"America/Los_Angeles"` as session timezone and have a timestamp value `"1970-01-01 00:00:01"` in the timezone. Btw, I'm in Japan so Python timezone would be `"Asia/Tokyo"`.
The timestamp value from current `toPandas()` will be the following:
```
>>> spark.conf.set("spark.sql.session.timeZone", "America/Los_Angeles")
>>> df = spark.createDataFrame([28801], "long").selectExpr("timestamp(value) as ts")
>>> df.show()
+-------------------+
| ts|
+-------------------+
|1970-01-01 00:00:01|
+-------------------+
>>> df.toPandas()
ts
0 1970-01-01 17:00:01
```
As you can see, the value becomes `"1970-01-01 17:00:01"` because it respects Python timezone.
As we discussed in #18664, we consider this behavior is a bug and the value should be `"1970-01-01 00:00:01"`.
## How was this patch tested?
Added tests and existing tests.
Author: Takuya UESHIN <ueshin@databricks.com>
Closes#19607 from ueshin/issues/SPARK-22395.
## What changes were proposed in this pull request?
In PySpark API Document, DataFrame.write.csv() says that setting the quote parameter to an empty string should turn off quoting. Instead, it uses the [null character](https://en.wikipedia.org/wiki/Null_character) as the quote.
This PR fixes the doc.
## How was this patch tested?
Manual.
```
cd python/docs
make html
open _build/html/pyspark.sql.html
```
Author: gaborgsomogyi <gabor.g.somogyi@gmail.com>
Closes#19814 from gaborgsomogyi/SPARK-22484.
## What changes were proposed in this pull request?
Code generation is disabled for CaseWhen when the number of branches is higher than `spark.sql.codegen.maxCaseBranches` (which defaults to 20). This was done to prevent the well known 64KB method limit exception.
This PR proposes to support code generation also in those cases (without causing exceptions of course). As a side effect, we could get rid of the `spark.sql.codegen.maxCaseBranches` configuration.
## How was this patch tested?
existing UTs
Author: Marco Gaido <mgaido@hortonworks.com>
Author: Marco Gaido <marcogaido91@gmail.com>
Closes#19752 from mgaido91/SPARK-22520.
## What changes were proposed in this pull request?
Currently, relation stats is the same whether cbo is enabled or not. While relation (`LogicalRelation` or `HiveTableRelation`) is a `LogicalPlan`, its behavior is inconsistent with other plans. This can cause confusion when user runs EXPLAIN COST commands. Besides, when CBO is disabled, we apply the size-only estimation strategy, so there's no need to propagate other catalog statistics to relation.
## How was this patch tested?
Enhanced existing tests case and added a test case.
Author: Zhenhua Wang <wangzhenhua@huawei.com>
Closes#19757 from wzhfy/catalog_stats_conversion.
## What changes were proposed in this pull request?
`ColumnVector#loadBytes` is only used as an optimization for reading UTF8String in `WritableColumnVector`, this PR moves this optimization to `WritableColumnVector` and simplified it.
## How was this patch tested?
existing test
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19815 from cloud-fan/load-bytes.
## What changes were proposed in this pull request?
`nullsNativeAddress` and `valuesNativeAddress` are only used in tests and benchmark, no need to be top class API.
## How was this patch tested?
existing tests
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19818 from cloud-fan/minor.
## What changes were proposed in this pull request?
`ctx.currentVars` means the input variables for the current operator, which is already decided in `CodegenSupport`, we can set it there instead of `doConsume`.
also add more comments to help people understand the codegen framework.
After this PR, we now have a principle about setting `ctx.currentVars` and `ctx.INPUT_ROW`:
1. for non-whole-stage-codegen path, never set them. (permit some special cases like generating ordering)
2. for whole-stage-codegen `produce` path, mostly we don't need to set them, but blocking operators may need to set them for expressions that produce data from data source, sort buffer, aggregate buffer, etc.
3. for whole-stage-codegen `consume` path, mostly we don't need to set them because `currentVars` is automatically set to child input variables and `INPUT_ROW` is mostly not used. A few plans need to tweak them as they may have different inputs, or they use the input row.
## How was this patch tested?
existing tests.
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19803 from cloud-fan/codegen.
## What changes were proposed in this pull request?
A frequently reported issue of Spark is the Java 64kb compile error. This is because Spark generates a very big method and it's usually caused by 3 reasons:
1. a deep expression tree, e.g. a very complex filter condition
2. many individual expressions, e.g. expressions can have many children, operators can have many expressions.
3. a deep query plan tree (with whole stage codegen)
This PR focuses on 1. There are already several patches(#15620#18972#18641) trying to fix this issue and some of them are already merged. However this is an endless job as every non-leaf expression has this issue.
This PR proposes to fix this issue in `Expression.genCode`, to make sure the code for a single expression won't grow too big.
According to maropu 's benchmark, no regression is found with TPCDS (thanks maropu !): https://docs.google.com/spreadsheets/d/1K3_7lX05-ZgxDXi9X_GleNnDjcnJIfoSlSCDZcL4gdg/edit?usp=sharing
## How was this patch tested?
existing test
Author: Wenchen Fan <wenchen@databricks.com>
Author: Wenchen Fan <cloud0fan@gmail.com>
Closes#19767 from cloud-fan/codegen.
## What changes were proposed in this pull request?
Let’s say I have a nested AND expression shown below and p2 can not be pushed down,
(p1 AND p2) OR p3
In current Spark code, during data source filter translation, (p1 AND p2) is returned as p1 only and p2 is simply lost. This issue occurs with JDBC data source and is similar to [SPARK-12218](https://github.com/apache/spark/pull/10362) for Parquet. When we have AND nested below another expression, we should either push both legs or nothing.
Note that:
- The current Spark code will always split conjunctive predicate before it determines if a predicate can be pushed down or not
- If I have (p1 AND p2) AND p3, it will be split into p1, p2, p3. There won't be nested AND expression.
- The current Spark code logic for OR is OK. It either pushes both legs or nothing.
The same translation method is also called by Data Source V2.
## How was this patch tested?
Added new unit test cases to JDBCSuite
gatorsmile
Author: Jia Li <jiali@us.ibm.com>
Closes#19776 from jliwork/spark-22548.
## What changes were proposed in this pull request?
Added the histogram representation to the output of the `DESCRIBE EXTENDED table_name column_name` command.
## How was this patch tested?
Modified SQL UT and checked output
Please review http://spark.apache.org/contributing.html before opening a pull request.
Author: Marco Gaido <mgaido@hortonworks.com>
Closes#19774 from mgaido91/SPARK-22475.
## What changes were proposed in this pull request?
This PR is to clean the usage of addMutableState and splitExpressions
1. replace hardcoded type string to ctx.JAVA_BOOLEAN etc.
2. create a default value of the initCode for ctx.addMutableStats
3. Use named arguments when calling `splitExpressions `
## How was this patch tested?
The existing test cases
Author: gatorsmile <gatorsmile@gmail.com>
Closes#19790 from gatorsmile/codeClean.
This PR enables to use ``OffHeapColumnVector`` when ``spark.sql.columnVector.offheap.enable`` is set to ``true``. While ``ColumnVector`` has two implementations ``OnHeapColumnVector`` and ``OffHeapColumnVector``, only ``OnHeapColumnVector`` is always used.
This PR implements the followings
- Pass ``OffHeapColumnVector`` to ``ColumnarBatch.allocate()`` when ``spark.sql.columnVector.offheap.enable`` is set to ``true``
- Free all of off-heap memory regions by ``OffHeapColumnVector.close()``
- Ensure to call ``OffHeapColumnVector.close()``
Use existing tests
Author: Kazuaki Ishizaki <ishizaki@jp.ibm.com>
Closes#17436 from kiszk/SPARK-20101.
## What changes were proposed in this pull request?
ScalaTest 3.0 uses an implicit `Signaler`. This PR makes it sure all Spark tests uses `ThreadSignaler` explicitly which has the same default behavior of interrupting a thread on the JVM like ScalaTest 2.2.x. This will reduce potential flakiness.
## How was this patch tested?
This is testsuite-only update. This should passes the Jenkins tests.
Author: Dongjoon Hyun <dongjoon@apache.org>
Closes#19784 from dongjoon-hyun/use_thread_signaler.
## What changes were proposed in this pull request?
Pass the FileSystem created using the correct Hadoop conf into `globPathIfNecessary` so that it can pick up user's hadoop configurations, such as credentials.
## How was this patch tested?
Jenkins
Author: Shixiong Zhu <zsxwing@gmail.com>
Closes#19771 from zsxwing/fix-file-stream-conf.
## What changes were proposed in this pull request?
* Add a "function type" argument to pandas_udf.
* Add a new public enum class `PandasUdfType` in pyspark.sql.functions
* Refactor udf related code from pyspark.sql.functions to pyspark.sql.udf
* Merge "PythonUdfType" and "PythonEvalType" into a single enum class "PythonEvalType"
Example:
```
from pyspark.sql.functions import pandas_udf, PandasUDFType
pandas_udf('double', PandasUDFType.SCALAR):
def plus_one(v):
return v + 1
```
## Design doc
https://docs.google.com/document/d/1KlLaa-xJ3oz28xlEJqXyCAHU3dwFYkFs_ixcUXrJNTc/edit
## How was this patch tested?
Added PandasUDFTests
## TODO:
* [x] Implement proper enum type for `PandasUDFType`
* [x] Update documentation
* [x] Add more tests in PandasUDFTests
Author: Li Jin <ice.xelloss@gmail.com>
Closes#19630 from icexelloss/spark-22409-pandas-udf-type.
## What changes were proposed in this pull request?
`ColumnarBatch` provides features to do fast filter and project in a columnar fashion, however this feature is never used by Spark, as Spark uses whole stage codegen and processes the data in a row fashion. This PR proposes to remove these unused features as we won't switch to columnar execution in the near future. Even we do, I think this part needs a proper redesign.
This is also a step to make `ColumnVector` public, as we don't wanna expose these features to users.
## How was this patch tested?
existing tests
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19766 from cloud-fan/vector.
## What changes were proposed in this pull request?
Do not include jdbc properties which may contain credentials in logging a logical plan with `SaveIntoDataSourceCommand` in it.
## How was this patch tested?
building locally and trying to reproduce (per the steps in https://issues.apache.org/jira/browse/SPARK-22479):
```
== Parsed Logical Plan ==
SaveIntoDataSourceCommand org.apache.spark.sql.execution.datasources.jdbc.JdbcRelationProvider570127fa, Map(dbtable -> test20, driver -> org.postgresql.Driver, url -> *********(redacted), password -> *********(redacted)), ErrorIfExists
+- Range (0, 100, step=1, splits=Some(8))
== Analyzed Logical Plan ==
SaveIntoDataSourceCommand org.apache.spark.sql.execution.datasources.jdbc.JdbcRelationProvider570127fa, Map(dbtable -> test20, driver -> org.postgresql.Driver, url -> *********(redacted), password -> *********(redacted)), ErrorIfExists
+- Range (0, 100, step=1, splits=Some(8))
== Optimized Logical Plan ==
SaveIntoDataSourceCommand org.apache.spark.sql.execution.datasources.jdbc.JdbcRelationProvider570127fa, Map(dbtable -> test20, driver -> org.postgresql.Driver, url -> *********(redacted), password -> *********(redacted)), ErrorIfExists
+- Range (0, 100, step=1, splits=Some(8))
== Physical Plan ==
Execute SaveIntoDataSourceCommand
+- SaveIntoDataSourceCommand org.apache.spark.sql.execution.datasources.jdbc.JdbcRelationProvider570127fa, Map(dbtable -> test20, driver -> org.postgresql.Driver, url -> *********(redacted), password -> *********(redacted)), ErrorIfExists
+- Range (0, 100, step=1, splits=Some(8))
```
Author: osatici <osatici@palantir.com>
Closes#19708 from onursatici/os/redact-jdbc-creds.
## What changes were proposed in this pull request?
This fixes a problem caused by #15880
`select '1.5' > 0.5; // Result is NULL in Spark but is true in Hive.
`
When compare string and numeric, cast them as double like Hive.
Author: liutang123 <liutang123@yeah.net>
Closes#19692 from liutang123/SPARK-22469.
## What changes were proposed in this pull request?
Logically the `Array` doesn't belong to `ColumnVector`, and `Row` doesn't belong to `ColumnarBatch`. e.g. `ColumnVector` needs to return `Array` for `getArray`, and `Row` for `getStruct`. `Array` and `Row` can return each other with the `getArray`/`getStruct` methods.
This is also a step to make `ColumnVector` public, it's cleaner to have `Array` and `Row` as top-level classes.
This PR is just code moving around, with 2 renaming: `Array` -> `VectorBasedArray`, `Row` -> `VectorBasedRow`.
## How was this patch tested?
existing tests.
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19740 from cloud-fan/vector.
This change replaces the SQLListener with a new implementation that
saves the data to the same store used by the SparkContext's status
store. For that, the types used by the old SQLListener had to be
updated a bit so that they're more serialization-friendly.
The interface for getting data from the store was abstracted into
a new class, SQLAppStatusStore (following the convention used in
core).
Another change is the way that the SQL UI hooks up into the core
UI or the SHS. The old "SparkHistoryListenerFactory" was replaced
with a new "AppStatePlugin" that more explicitly differentiates
between the two use cases: processing events, and showing the UI.
Both live apps and the SHS use this new API (previously, it was
restricted to the SHS).
Note on the above: this causes a slight change of behavior for
live apps; the SQL tab will only show up after the first execution
is started.
The metrics gathering code was re-worked a bit so that the types
used are less memory hungry and more serialization-friendly. This
reduces memory usage when using in-memory stores, and reduces load
times when using disk stores.
Tested with existing and added unit tests. Note one unit test was
disabled because it depends on SPARK-20653, which isn't in yet.
Author: Marcelo Vanzin <vanzin@cloudera.com>
Closes#19681 from vanzin/SPARK-20652.
## What changes were proposed in this pull request?
Equi-height histogram is effective in cardinality estimation, and more accurate than basic column stats (min, max, ndv, etc) especially in skew distribution. So we need to support it.
For equi-height histogram, all buckets (intervals) have the same height (frequency).
In this PR, we use a two-step method to generate an equi-height histogram:
1. use `ApproximatePercentile` to get percentiles `p(0), p(1/n), p(2/n) ... p((n-1)/n), p(1)`;
2. construct range values of buckets, e.g. `[p(0), p(1/n)], [p(1/n), p(2/n)] ... [p((n-1)/n), p(1)]`, and use `ApproxCountDistinctForIntervals` to count ndv in each bucket. Each bucket is of the form: `(lowerBound, higherBound, ndv)`.
## How was this patch tested?
Added new test cases and modified some existing test cases.
Author: Zhenhua Wang <wangzhenhua@huawei.com>
Author: Zhenhua Wang <wzh_zju@163.com>
Closes#19479 from wzhfy/generate_histogram.
## What changes were proposed in this pull request?
There is a concern that Spark-side codegen row-by-row filtering might be faster than Parquet's one in general due to type-boxing and additional fuction calls which Spark's one tries to avoid.
So, this PR adds an option to disable/enable record-by-record filtering in Parquet side.
It sets the default to `false` to take the advantage of the improvement.
This was also discussed in https://github.com/apache/spark/pull/14671.
## How was this patch tested?
Manually benchmarks were performed. I generated a billion (1,000,000,000) records and tested equality comparison concatenated with `OR`. This filter combinations were made from 5 to 30.
It seem indeed Spark-filtering is faster in the test case and the gap increased as the filter tree becomes larger.
The details are as below:
**Code**
``` scala
test("Parquet-side filter vs Spark-side filter - record by record") {
withTempPath { path =>
val N = 1000 * 1000 * 1000
val df = spark.range(N).toDF("a")
df.write.parquet(path.getAbsolutePath)
val benchmark = new Benchmark("Parquet-side vs Spark-side", N)
Seq(5, 10, 20, 30).foreach { num =>
val filterExpr = (0 to num).map(i => s"a = $i").mkString(" OR ")
benchmark.addCase(s"Parquet-side filter - number of filters [$num]", 3) { _ =>
withSQLConf(SQLConf.PARQUET_VECTORIZED_READER_ENABLED.key -> false.toString,
SQLConf.PARQUET_RECORD_FILTER_ENABLED.key -> true.toString) {
// We should strip Spark-side filter to compare correctly.
stripSparkFilter(
spark.read.parquet(path.getAbsolutePath).filter(filterExpr)).count()
}
}
benchmark.addCase(s"Spark-side filter - number of filters [$num]", 3) { _ =>
withSQLConf(SQLConf.PARQUET_VECTORIZED_READER_ENABLED.key -> false.toString,
SQLConf.PARQUET_RECORD_FILTER_ENABLED.key -> false.toString) {
spark.read.parquet(path.getAbsolutePath).filter(filterExpr).count()
}
}
}
benchmark.run()
}
}
```
**Result**
```
Parquet-side vs Spark-side: Best/Avg Time(ms) Rate(M/s) Per Row(ns) Relative
------------------------------------------------------------------------------------------------
Parquet-side filter - number of filters [5] 4268 / 4367 234.3 4.3 0.8X
Spark-side filter - number of filters [5] 3709 / 3741 269.6 3.7 0.9X
Parquet-side filter - number of filters [10] 5673 / 5727 176.3 5.7 0.6X
Spark-side filter - number of filters [10] 3588 / 3632 278.7 3.6 0.9X
Parquet-side filter - number of filters [20] 8024 / 8440 124.6 8.0 0.4X
Spark-side filter - number of filters [20] 3912 / 3946 255.6 3.9 0.8X
Parquet-side filter - number of filters [30] 11936 / 12041 83.8 11.9 0.3X
Spark-side filter - number of filters [30] 3929 / 3978 254.5 3.9 0.8X
```
Author: hyukjinkwon <gurwls223@gmail.com>
Closes#15049 from HyukjinKwon/SPARK-17310.
## What changes were proposed in this pull request?
This change uses Arrow to optimize the creation of a Spark DataFrame from a Pandas DataFrame. The input df is sliced according to the default parallelism. The optimization is enabled with the existing conf "spark.sql.execution.arrow.enabled" and is disabled by default.
## How was this patch tested?
Added new unit test to create DataFrame with and without the optimization enabled, then compare results.
Author: Bryan Cutler <cutlerb@gmail.com>
Author: Takuya UESHIN <ueshin@databricks.com>
Closes#19459 from BryanCutler/arrow-createDataFrame-from_pandas-SPARK-20791.
## What changes were proposed in this pull request?
This PR changes `AND` or `OR` code generation to place condition and then expressions' generated code into separated methods if these size could be large. When the method is newly generated, variables for `isNull` and `value` are declared as an instance variable to pass these values (e.g. `isNull1409` and `value1409`) to the callers of the generated method.
This PR resolved two cases:
* large code size of left expression
* large code size of right expression
## How was this patch tested?
Added a new test case into `CodeGenerationSuite`
Author: Kazuaki Ishizaki <ishizaki@jp.ibm.com>
Closes#18972 from kiszk/SPARK-21720.
## What changes were proposed in this pull request?
This PR makes Spark to be able to read Parquet TIMESTAMP_MICROS values, and add a new config to allow Spark to write timestamp values to parquet as TIMESTAMP_MICROS type.
## How was this patch tested?
new test
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19702 from cloud-fan/parquet.
## What changes were proposed in this pull request?
The current internal `table()` API of `SparkSession` bypasses the Analyzer and directly calls `sessionState.catalog.lookupRelation` API. This skips the view resolution logics in our Analyzer rule `ResolveRelations`. This internal API is widely used by various DDL commands, public and internal APIs.
Users might get the strange error caused by view resolution when the default database is different.
```
Table or view not found: t1; line 1 pos 14
org.apache.spark.sql.AnalysisException: Table or view not found: t1; line 1 pos 14
at org.apache.spark.sql.catalyst.analysis.package$AnalysisErrorAt.failAnalysis(package.scala:42)
```
This PR is to fix it by enforcing it to use `ResolveRelations` to resolve the table.
## How was this patch tested?
Added a test case and modified the existing test cases
Author: gatorsmile <gatorsmile@gmail.com>
Closes#19713 from gatorsmile/viewResolution.
## What changes were proposed in this pull request?
For the few Dataset actions such as `foreach`, currently no SQL metrics are visible in the SQL tab of SparkUI. It is because it binds wrongly to Dataset's `QueryExecution`. As the actions directly evaluate on the RDD which has individual `QueryExecution`, to show correct SQL metrics on UI, we should bind to RDD's `QueryExecution`.
## How was this patch tested?
Manually test. Screenshot is attached in the PR.
Author: Liang-Chi Hsieh <viirya@gmail.com>
Closes#19689 from viirya/SPARK-22462.
## What changes were proposed in this pull request?
Fix to allow recovery on console , avoid checkpoint exception
## How was this patch tested?
existing tests
manual tests [ Replicating error and seeing no checkpoint error after fix]
Author: Rekha Joshi <rekhajoshm@gmail.com>
Author: rjoshi2 <rekhajoshm@gmail.com>
Closes#19407 from rekhajoshm/SPARK-21667.
## What changes were proposed in this pull request?
In `spark-sql` module tests there are deprecations warnings caused by the usage of deprecated methods of `java.sql.Date` and the usage of the deprecated `AsyncAssertions.Waiter` class.
This PR replace the deprecated methods of `java.sql.Date` with non-deprecated ones (using `Calendar` where needed). It replaces also the deprecated `org.scalatest.concurrent.AsyncAssertions.Waiter` with `org.scalatest.concurrent.Waiters._`.
## How was this patch tested?
existing UTs
Author: Marco Gaido <mgaido@hortonworks.com>
Closes#19696 from mgaido91/SPARK-22473.
## What changes were proposed in this pull request?
One powerful feature of `Dataset` is, we can easily map SQL rows to Scala/Java objects and do runtime null check automatically.
For example, let's say we have a parquet file with schema `<a: int, b: string>`, and we have a `case class Data(a: Int, b: String)`. Users can easily read this parquet file into `Data` objects, and Spark will throw NPE if column `a` has null values.
However the null checking is left behind for top-level primitive values. For example, let's say we have a parquet file with schema `<a: Int>`, and we read it into Scala `Int`. If column `a` has null values, we will get some weird results.
```
scala> val ds = spark.read.parquet(...).as[Int]
scala> ds.show()
+----+
|v |
+----+
|null|
|1 |
+----+
scala> ds.collect
res0: Array[Long] = Array(0, 1)
scala> ds.map(_ * 2).show
+-----+
|value|
+-----+
|-2 |
|2 |
+-----+
```
This is because internally Spark use some special default values for primitive types, but never expect users to see/operate these default value directly.
This PR adds null check for top-level primitive values
## How was this patch tested?
new test
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19707 from cloud-fan/bug.
Continuation of PR#19528 (https://github.com/apache/spark/pull/19529#issuecomment-340252119)
The problem with the maven build in the previous PR was the new tests.... the creation of a spark session outside the tests meant there was more than one spark session around at a time.
I was using the spark session outside the tests so that the tests could share data; I've changed it so that each test creates the data anew.
Author: Nathan Kronenfeld <nicole.oresme@gmail.com>
Author: Nathan Kronenfeld <nkronenfeld@uncharted.software>
Closes#19705 from nkronenfeld/alternative-style-tests-2.
## What changes were proposed in this pull request?
Current ML's Bucketizer can only bin a column of continuous features. If a dataset has thousands of of continuous columns needed to bin, we will result in thousands of ML stages. It is inefficient regarding query planning and execution.
We should have a type of bucketizer that can bin a lot of columns all at once. It would need to accept an list of arrays of split points to correspond to the columns to bin, but it might make things more efficient by replacing thousands of stages with just one.
This current approach in this patch is to add a new `MultipleBucketizerInterface` for this purpose. `Bucketizer` now extends this new interface.
### Performance
Benchmarking using the test dataset provided in JIRA SPARK-20392 (blockbuster.csv).
The ML pipeline includes 2 `StringIndexer`s and 1 `MultipleBucketizer` or 137 `Bucketizer`s to bin 137 input columns with the same splits. Then count the time to transform the dataset.
MultipleBucketizer: 3352 ms
Bucketizer: 51512 ms
## How was this patch tested?
Jenkins tests.
Please review http://spark.apache.org/contributing.html before opening a pull request.
Author: Liang-Chi Hsieh <viirya@gmail.com>
Closes#17819 from viirya/SPARK-20542.
## What changes were proposed in this pull request?
For a class with field name of special characters, e.g.:
```scala
case class MyType(`field.1`: String, `field 2`: String)
```
Although we can manipulate DataFrame/Dataset, the field names are encoded:
```scala
scala> val df = Seq(MyType("a", "b"), MyType("c", "d")).toDF
df: org.apache.spark.sql.DataFrame = [field$u002E1: string, field$u00202: string]
scala> df.as[MyType].collect
res7: Array[MyType] = Array(MyType(a,b), MyType(c,d))
```
It causes resolving problem when we try to convert the data with non-encoded field names:
```scala
spark.read.json(path).as[MyType]
...
[info] org.apache.spark.sql.AnalysisException: cannot resolve '`field$u002E1`' given input columns: [field 2, fie
ld.1];
[info] at org.apache.spark.sql.catalyst.analysis.package$AnalysisErrorAt.failAnalysis(package.scala:42)
...
```
We should use decoded field name in Dataset schema.
## How was this patch tested?
Added tests.
Author: Liang-Chi Hsieh <viirya@gmail.com>
Closes#19664 from viirya/SPARK-22442.
## What changes were proposed in this pull request?
This PR proposes to add `errorifexists` to SparkR API and fix the rest of them describing the mode, mainly, in API documentations as well.
This PR also replaces `convertToJSaveMode` to `setWriteMode` so that string as is is passed to JVM and executes:
b034f2565f/sql/core/src/main/scala/org/apache/spark/sql/DataFrameWriter.scala (L72-L82)
and remove the duplication here:
3f958a9992/sql/core/src/main/scala/org/apache/spark/sql/api/r/SQLUtils.scala (L187-L194)
## How was this patch tested?
Manually checked the built documentation. These were mainly found by `` grep -r `error` `` and `grep -r 'error'`.
Also, unit tests added in `test_sparkSQL.R`.
Author: hyukjinkwon <gurwls223@gmail.com>
Closes#19673 from HyukjinKwon/SPARK-21640-followup.
## What changes were proposed in this pull request?
This PR adds support for a new function called `dayofweek` that returns the day of the week of the given argument as an integer value in the range 1-7, where 1 represents Sunday.
## How was this patch tested?
Unit tests and manual tests.
Author: ptkool <michael.styles@shopify.com>
Closes#19672 from ptkool/day_of_week_function.
## What changes were proposed in this pull request?
`spark.sql.statistics.autoUpdate.size` should be `spark.sql.statistics.size.autoUpdate.enabled`. The previous name is confusing as users may treat it as a size config.
This config is in master branch only, no backward compatibility issue.
## How was this patch tested?
N/A
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19667 from cloud-fan/minor.
## What changes were proposed in this pull request?
clarify exception behaviors for all data source v2 interfaces.
## How was this patch tested?
document change only
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19623 from cloud-fan/data-source-exception.
## What changes were proposed in this pull request?
`CodegenContext.copyResult` is kind of a global status for whole stage codegen. But the tricky part is, it is only used to transfer an information from child to parent when calling the `consume` chain. We have to be super careful in `produce`/`consume`, to set it to true when producing multiple result rows, and set it to false in operators that start new pipeline(like sort).
This PR moves the `copyResult` to `CodegenSupport`, and call it at `WholeStageCodegenExec`. This is much easier to reason about.
## How was this patch tested?
existing tests
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19656 from cloud-fan/whole-sage.
…
## What changes were proposed in this pull request?
override JDBCDialects methods quoteIdentifier, getTableExistsQuery and getSchemaQuery in AggregatedDialect
## How was this patch tested?
Test the new implementation in JDBCSuite test("Aggregated dialects")
Author: Huaxin Gao <huaxing@us.ibm.com>
Closes#19658 from huaxingao/spark-22443.
## What changes were proposed in this pull request?
Next fit decreasing bin packing algorithm is used to combine splits in DataSourceScanExec but the comment incorrectly states that first fit decreasing algorithm is used. The current implementation doesn't go back to a previously used bin other than the bin that the last element was put into.
Author: Vinitha Gankidi <vgankidi@netflix.com>
Closes#19634 from vgankidi/SPARK-22412.
## What changes were proposed in this pull request?
When we insert `BatchEvalPython` for Python UDFs into a query plan, if its child has some outputs that are not used by the original parent node, `BatchEvalPython` will still take those outputs and save into the queue. When the data for those outputs are big, it is easily to generate big spill on disk.
For example, the following reproducible code is from the JIRA ticket.
```python
from pyspark.sql.functions import *
from pyspark.sql.types import *
lines_of_file = [ "this is a line" for x in xrange(10000) ]
file_obj = [ "this_is_a_foldername/this_is_a_filename", lines_of_file ]
data = [ file_obj for x in xrange(5) ]
small_df = spark.sparkContext.parallelize(data).map(lambda x : (x[0], x[1])).toDF(["file", "lines"])
exploded = small_df.select("file", explode("lines"))
def split_key(s):
return s.split("/")[1]
split_key_udf = udf(split_key, StringType())
with_filename = exploded.withColumn("filename", split_key_udf("file"))
with_filename.explain(True)
```
The physical plan before/after this change:
Before:
```
*Project [file#0, col#5, pythonUDF0#14 AS filename#9]
+- BatchEvalPython [split_key(file#0)], [file#0, lines#1, col#5, pythonUDF0#14]
+- Generate explode(lines#1), true, false, [col#5]
+- Scan ExistingRDD[file#0,lines#1]
```
After:
```
*Project [file#0, col#5, pythonUDF0#14 AS filename#9]
+- BatchEvalPython [split_key(file#0)], [col#5, file#0, pythonUDF0#14]
+- *Project [col#5, file#0]
+- Generate explode(lines#1), true, false, [col#5]
+- Scan ExistingRDD[file#0,lines#1]
```
Before this change, `lines#1` is a redundant input to `BatchEvalPython`. This patch removes it by adding a Project.
## How was this patch tested?
Manually test.
Author: Liang-Chi Hsieh <viirya@gmail.com>
Closes#19642 from viirya/SPARK-22410.
## What changes were proposed in this pull request?
Added a test class to check NULL handling behavior.
The expected behavior is defined as the one of the most well-known databases as specified here: https://sqlite.org/nulls.html.
SparkSQL behaves like other DBs:
- Adding anything to null gives null -> YES
- Multiplying null by zero gives null -> YES
- nulls are distinct in SELECT DISTINCT -> NO
- nulls are distinct in a UNION -> NO
- "CASE WHEN null THEN 1 ELSE 0 END" is 0? -> YES
- "null OR true" is true -> YES
- "not (null AND false)" is true -> YES
- null in aggregation are skipped -> YES
## How was this patch tested?
Added test class
Author: Marco Gaido <mgaido@hortonworks.com>
Closes#19653 from mgaido91/SPARK-22418.
forward-port https://github.com/apache/spark/pull/19622 to master branch.
This bug doesn't exist in master because we've added hive bucketing support and the hive bucketing metadata can be recognized by Spark, but we should still port it to master: 1) there may be other unsupported hive metadata removed by Spark. 2) reduce code difference between master and 2.2 to ease the backport in the feature.
***
When we alter table schema, we set the new schema to spark `CatalogTable`, convert it to hive table, and finally call `hive.alterTable`. This causes a problem in Spark 2.2, because hive bucketing metedata is not recognized by Spark, which means a Spark `CatalogTable` representing a hive table is always non-bucketed, and when we convert it to hive table and call `hive.alterTable`, the original hive bucketing metadata will be removed.
To fix this bug, we should read out the raw hive table metadata, update its schema, and call `hive.alterTable`. By doing this we can guarantee only the schema is changed, and nothing else.
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19644 from cloud-fan/infer.
## What changes were proposed in this pull request?
According to the [discussion](https://github.com/apache/spark/pull/19571#issuecomment-339472976) on SPARK-15474, we will add new OrcFileFormat in `sql/core` module and allow users to use both old and new OrcFileFormat.
To do that, `OrcOptions` should be visible in `sql/core` module, too. Previously, it was `private[orc]` in `sql/hive`. This PR removes `private[orc]` because we don't use `private[sql]` in `sql/execution` package after [SPARK-16964](https://github.com/apache/spark/pull/14554).
## How was this patch tested?
Pass the Jenkins with the existing tests.
Author: Dongjoon Hyun <dongjoon@apache.org>
Closes#19636 from dongjoon-hyun/SPARK-22416.
## What changes were proposed in this pull request?
Adding a global limit on top of the distinct values before sorting and collecting will reduce the overall work in the case where we have more distinct values. We will also eagerly perform a collect rather than a take because we know we only have at most (maxValues + 1) rows.
## How was this patch tested?
Existing tests cover sorted order
Author: Patrick Woody <pwoody@palantir.com>
Closes#19629 from pwoody/SPARK-22408.
## What changes were proposed in this pull request?
This patch includes some doc updates for data source API v2. I was reading the code and noticed some minor issues.
## How was this patch tested?
This is a doc only change.
Author: Reynold Xin <rxin@databricks.com>
Closes#19626 from rxin/dsv2-update.
## What changes were proposed in this pull request?
Write HDFSBackedStateStoreProvider.loadMap non-recursively. This prevents stack overflow if too many deltas stack up in a low memory environment.
## How was this patch tested?
existing unit tests for functional equivalence, new unit test to check for stack overflow
Author: Jose Torres <jose@databricks.com>
Closes#19611 from joseph-torres/SPARK-22305.
## What changes were proposed in this pull request?
Both `ReadSupport` and `ReadTask` have a method called `createReader`, but they create different things. This could cause some confusion for data source developers. The same issue exists between `WriteSupport` and `DataWriterFactory`, both of which have a method called `createWriter`. This PR renames the method of `ReadTask`/`DataWriterFactory` to `createDataReader`/`createDataWriter`.
Besides, the name of `RowToInternalRowDataWriterFactory` is not correct, because it actually converts `InternalRow`s to `Row`s. It should be renamed `InternalRowDataWriterFactory`.
## How was this patch tested?
Only renaming, should be covered by existing tests.
Author: Zhenhua Wang <wzh_zju@163.com>
Closes#19610 from wzhfy/rename.
## What changes were proposed in this pull request?
When Hive support is not on, users can hit unresolved plan node when trying to call `INSERT OVERWRITE DIRECTORY` using Hive format.
```
"unresolved operator 'InsertIntoDir true, Storage(Location: /private/var/folders/vx/j0ydl5rn0gd9mgrh1pljnw900000gn/T/spark-b4227606-9311-46a8-8c02-56355bf0e2bc, Serde Library: org.apache.hadoop.hive.ql.io.orc.OrcSerde, InputFormat: org.apache.hadoop.hive.ql.io.orc.OrcInputFormat, OutputFormat: org.apache.hadoop.hive.ql.io.orc.OrcOutputFormat), hive, true;;
```
This PR is to issue a better error message.
## How was this patch tested?
Added a test case.
Author: gatorsmile <gatorsmile@gmail.com>
Closes#19608 from gatorsmile/hivesupportInsertOverwrite.
## What changes were proposed in this pull request?
In `UnsafeInMemorySorter`, one record may take 32 bytes: 1 `long` for pointer, 1 `long` for key-prefix, and another 2 `long`s as the temporary buffer for radix sort.
In `UnsafeExternalSorter`, we set the `DEFAULT_NUM_ELEMENTS_FOR_SPILL_THRESHOLD` to be `1024 * 1024 * 1024 / 2`, and hoping the max size of point array to be 8 GB. However this is wrong, `1024 * 1024 * 1024 / 2 * 32` is actually 16 GB, and if we grow the point array before reach this limitation, we may hit the max-page-size error.
Users may see exception like this on large dataset:
```
Caused by: java.lang.IllegalArgumentException: Cannot allocate a page with more than 17179869176 bytes
at org.apache.spark.memory.TaskMemoryManager.allocatePage(TaskMemoryManager.java:241)
at org.apache.spark.memory.MemoryConsumer.allocatePage(MemoryConsumer.java:121)
at org.apache.spark.util.collection.unsafe.sort.UnsafeExternalSorter.acquireNewPageIfNecessary(UnsafeExternalSorter.java:374)
at org.apache.spark.util.collection.unsafe.sort.UnsafeExternalSorter.insertRecord(UnsafeExternalSorter.java:396)
at org.apache.spark.sql.execution.UnsafeExternalRowSorter.insertRow(UnsafeExternalRowSorter.java:94)
...
```
Setting `DEFAULT_NUM_ELEMENTS_FOR_SPILL_THRESHOLD` to a smaller number is not enough, users can still set the config to a big number and trigger the too large page size issue. This PR fixes it by explicitly handling the too large page size exception in the sorter and spill.
This PR also change the type of `spark.shuffle.spill.numElementsForceSpillThreshold` to int, because it's only compared with `numRecords`, which is an int. This is an internal conf so we don't have a serious compatibility issue.
## How was this patch tested?
TODO
Author: Wenchen Fan <wenchen@databricks.com>
Closes#18251 from cloud-fan/sort.
## What changes were proposed in this pull request?
This PR fixes the conversion error when reads data from a PostgreSQL table that contains columns of `uuid[]`, `inet[]` and `cidr[]` data types.
For example, create a table with the uuid[] data type, and insert the test data.
```SQL
CREATE TABLE users
(
id smallint NOT NULL,
name character varying(50),
user_ids uuid[],
PRIMARY KEY (id)
)
INSERT INTO users ("id", "name","user_ids")
VALUES (1, 'foo', ARRAY
['7be8aaf8-650e-4dbb-8186-0a749840ecf2'
,'205f9bfc-018c-4452-a605-609c0cfad228']::UUID[]
)
```
Then it will throw the following exceptions when trying to load the data.
```
java.lang.ClassCastException: [Ljava.util.UUID; cannot be cast to [Ljava.lang.String;
at org.apache.spark.sql.execution.datasources.jdbc.JdbcUtils$$anonfun$14.apply(JdbcUtils.scala:459)
at org.apache.spark.sql.execution.datasources.jdbc.JdbcUtils$$anonfun$14.apply(JdbcUtils.scala:458)
...
```
## How was this patch tested?
Added test in `PostgresIntegrationSuite`.
Author: Jen-Ming Chung <jenmingisme@gmail.com>
Closes#19567 from jmchung/SPARK-22291.
## What changes were proposed in this pull request?
This is a followup of https://github.com/apache/spark/pull/17075 , to fix the bug in codegen path.
## How was this patch tested?
new regression test
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19576 from cloud-fan/bug.
## What changes were proposed in this pull request?
AggUtils.planStreamingAggregation has some comments about DISTINCT aggregates,
while streaming aggregation does not support DISTINCT.
This seems to have been wrongly copy-pasted over.
## How was this patch tested?
Only a comment change.
Author: Juliusz Sompolski <julek@databricks.com>
Closes#18937 from juliuszsompolski/streaming-agg-doc.
## What changes were proposed in this pull request?
`ArrowEvalPythonExec` and `FlatMapGroupsInPandasExec` are refering config values of `SQLConf` in function for `mapPartitions`/`mapPartitionsInternal`, but we should capture them in Driver.
## How was this patch tested?
Added a test and existing tests.
Author: Takuya UESHIN <ueshin@databricks.com>
Closes#19587 from ueshin/issues/SPARK-22370.
## What changes were proposed in this pull request?
Seems that end users can be confused by the union's behavior on Dataset of typed objects. We can clarity it more in the document of `union` function.
## How was this patch tested?
Only document change.
Author: Liang-Chi Hsieh <viirya@gmail.com>
Closes#19570 from viirya/SPARK-22335.
## What changes were proposed in this pull request?
Canonicalized plans are not supposed to be executed. I ran into a case in which there's some code that accidentally calls execute on a canonicalized plan. This patch throws a more explicit exception when that happens.
## How was this patch tested?
Added a test case in SparkPlanSuite.
Author: Reynold Xin <rxin@databricks.com>
Closes#18828 from rxin/SPARK-21619.
## What changes were proposed in this pull request?
https://issues.apache.org/jira/browse/SPARK-22333
In current version, users can use CURRENT_DATE() and CURRENT_TIMESTAMP() without specifying braces.
However, when a table has columns named as "current_date" or "current_timestamp", it will still be parsed as function call.
There are many such cases in our production cluster. We get the wrong answer due to this inappropriate behevior. In general, ColumnReference should get higher priority than timeFunctionCall.
## How was this patch tested?
unit test
manul test
Author: donnyzone <wellfengzhu@gmail.com>
Closes#19559 from DonnyZone/master.
## What changes were proposed in this pull request?
Adds a new optimisation rule 'ReplaceExceptWithNotFilter' that replaces Except logical with Filter operator and schedule it before applying 'ReplaceExceptWithAntiJoin' rule. This way we can avoid expensive join operation if one or both of the datasets of the Except operation are fully derived out of Filters from a same parent.
## How was this patch tested?
The patch is tested locally using spark-shell + unit test.
Author: Sathiya <sathiya.kumar@polytechnique.edu>
Closes#19451 from sathiyapk/SPARK-22181-optimize-exceptWithFilter.
## What changes were proposed in this pull request?
SPARK-18016 introduced `NestedClass` to avoid that the many methods generated by `splitExpressions` contribute to the outer class' constant pool, making it growing too much. Unfortunately, despite their definition is stored in the `NestedClass`, they all are invoked in the outer class and for each method invocation, there are two entries added to the constant pool: a `Methodref` and a `Utf8` entry (you can easily check this compiling a simple sample class with `janinoc` and looking at its Constant Pool). This limits the scalability of the solution with very large methods which are split in a lot of small ones. This means that currently we are generating classes like this one:
```
class SpecificUnsafeProjection extends org.apache.spark.sql.catalyst.expressions.UnsafeProjection {
...
public UnsafeRow apply(InternalRow i) {
rowWriter.zeroOutNullBytes();
apply_0(i);
apply_1(i);
...
nestedClassInstance.apply_862(i);
nestedClassInstance.apply_863(i);
...
nestedClassInstance1.apply_1612(i);
nestedClassInstance1.apply_1613(i);
...
}
...
private class NestedClass {
private void apply_862(InternalRow i) { ... }
private void apply_863(InternalRow i) { ... }
...
}
private class NestedClass1 {
private void apply_1612(InternalRow i) { ... }
private void apply_1613(InternalRow i) { ... }
...
}
}
```
This PR reduce the Constant Pool size of the outer class by adding a new method to each nested class: in this method we invoke all the small methods generated by `splitExpression` in that nested class. In this way, in the outer class there is only one method invocation per nested class, reducing by orders of magnitude the entries in its constant pool because of method invocations. This means that after the patch the generated code becomes:
```
class SpecificUnsafeProjection extends org.apache.spark.sql.catalyst.expressions.UnsafeProjection {
...
public UnsafeRow apply(InternalRow i) {
rowWriter.zeroOutNullBytes();
apply_0(i);
apply_1(i);
...
nestedClassInstance.apply(i);
nestedClassInstance1.apply(i);
...
}
...
private class NestedClass {
private void apply_862(InternalRow i) { ... }
private void apply_863(InternalRow i) { ... }
...
private void apply(InternalRow i) {
apply_862(i);
apply_863(i);
...
}
}
private class NestedClass1 {
private void apply_1612(InternalRow i) { ... }
private void apply_1613(InternalRow i) { ... }
...
private void apply(InternalRow i) {
apply_1612(i);
apply_1613(i);
...
}
}
}
```
## How was this patch tested?
Added UT and existing UTs
Author: Marco Gaido <mgaido@hortonworks.com>
Author: Marco Gaido <marcogaido91@gmail.com>
Closes#19480 from mgaido91/SPARK-22226.
## What changes were proposed in this pull request?
This PR is to clean the related codes majorly based on the today's code review on https://github.com/apache/spark/pull/19559
## How was this patch tested?
N/A
Author: gatorsmile <gatorsmile@gmail.com>
Closes#19585 from gatorsmile/trivialFixes.
## What changes were proposed in this pull request?
Adding date and timestamp support with Arrow for `toPandas()` and `pandas_udf`s. Timestamps are stored in Arrow as UTC and manifested to the user as timezone-naive localized to the Python system timezone.
## How was this patch tested?
Added Scala tests for date and timestamp types under ArrowConverters, ArrowUtils, and ArrowWriter suites. Added Python tests for `toPandas()` and `pandas_udf`s with date and timestamp types.
Author: Bryan Cutler <cutlerb@gmail.com>
Author: Takuya UESHIN <ueshin@databricks.com>
Closes#18664 from BryanCutler/arrow-date-timestamp-SPARK-21375.
## What changes were proposed in this pull request?
It's possible that users create a `Dataset`, and call `collect` of this `Dataset` in many threads at the same time. Currently `Dataset#collect` just call `encoder.fromRow` to convert spark rows to objects of type T, and this encoder is per-dataset. This means `Dataset#collect` is not thread-safe, because the encoder uses a projection to output the object to a re-usable row.
This PR fixes this problem, by creating a new projection when calling `Dataset#collect`, so that we have the re-usable row for each method call, instead of each Dataset.
## How was this patch tested?
N/A
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19577 from cloud-fan/encoder.
## What changes were proposed in this pull request?
This is a regression introduced by #14207. After Spark 2.1, we store the inferred schema when creating the table, to avoid inferring schema again at read path. However, there is one special case: overlapped columns between data and partition. For this case, it breaks the assumption of table schema that there is on ovelap between data and partition schema, and partition columns should be at the end. The result is, for Spark 2.1, the table scan has incorrect schema that puts partition columns at the end. For Spark 2.2, we add a check in CatalogTable to validate table schema, which fails at this case.
To fix this issue, a simple and safe approach is to fallback to old behavior when overlapeed columns detected, i.e. store empty schema in metastore.
## How was this patch tested?
new regression test
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19579 from cloud-fan/bug2.
## What changes were proposed in this pull request?
Add a flag "spark.sql.files.ignoreMissingFiles" to parallel the existing flag "spark.sql.files.ignoreCorruptFiles".
## How was this patch tested?
new unit test
Author: Jose Torres <jose@databricks.com>
Closes#19581 from joseph-torres/SPARK-22366.
## What changes were proposed in this pull request?
Support unit tests of external code (i.e., applications that use spark) using scalatest that don't want to use FunSuite. SharedSparkContext already supports this, but SharedSQLContext does not.
I've introduced SharedSparkSession as a parent to SharedSQLContext, written in a way that it does support all scalatest styles.
## How was this patch tested?
There are three new unit test suites added that just test using FunSpec, FlatSpec, and WordSpec.
Author: Nathan Kronenfeld <nicole.oresme@gmail.com>
Closes#19529 from nkronenfeld/alternative-style-tests-2.
## What changes were proposed in this pull request?
Removed one unused method.
## How was this patch tested?
Existing tests.
Author: Liang-Chi Hsieh <viirya@gmail.com>
Closes#19508 from viirya/SPARK-20783-followup.
## What changes were proposed in this pull request?
Scala 2.12's `Future` defines two new methods to implement, `transform` and `transformWith`. These can be implemented naturally in Spark's `FutureAction` extension and subclasses, but, only in terms of the new methods that don't exist in Scala 2.11. To support both at the same time, reflection is used to implement these.
## How was this patch tested?
Existing tests.
Author: Sean Owen <sowen@cloudera.com>
Closes#19561 from srowen/SPARK-22322.
## What changes were proposed in this pull request?
Rewritten error message for clarity. Added extra information in case of attribute name collision, hinting the user to double-check referencing two different tables
## How was this patch tested?
No functional changes, only final message has changed. It has been tested manually against the situation proposed in the JIRA ticket. Automated tests in repository pass.
This PR is original work from me and I license this work to the Spark project
Author: Ruben Berenguel Montoro <ruben@mostlymaths.net>
Author: Ruben Berenguel Montoro <ruben@dreamattic.com>
Author: Ruben Berenguel <ruben@mostlymaths.net>
Closes#17100 from rberenguel/SPARK-13947-error-message.
## What changes were proposed in this pull request?
We enable table cache `InMemoryTableScanExec` to provide `ColumnarBatch` now. But the cached batches are retrieved without pruning. In this case, we still need to do partition batch pruning.
## How was this patch tested?
Existing tests.
Author: Liang-Chi Hsieh <viirya@gmail.com>
Closes#19569 from viirya/SPARK-22348.
## What changes were proposed in this pull request?
The current implementation of `ApproxCountDistinctForIntervals` is `ImperativeAggregate`. The number of `aggBufferAttributes` is the number of total words in the hllppHelper array. Each hllppHelper has 52 words by default relativeSD.
Since this aggregate function is used in equi-height histogram generation, and the number of buckets in histogram is usually hundreds, the number of `aggBufferAttributes` can easily reach tens of thousands or even more.
This leads to a huge method in codegen and causes error:
```
org.codehaus.janino.JaninoRuntimeException: Code of method "apply(Lorg/apache/spark/sql/catalyst/InternalRow;)Lorg/apache/spark/sql/catalyst/expressions/UnsafeRow;" of class "org.apache.spark.sql.catalyst.expressions.GeneratedClass$SpecificUnsafeProjection" grows beyond 64 KB.
```
Besides, huge generated methods also result in performance regression.
In this PR, we change its implementation to `TypedImperativeAggregate`. After the fix, `ApproxCountDistinctForIntervals` can deal with more than thousands endpoints without throwing codegen error, and improve performance from `20 sec` to `2 sec` in a test case of 500 endpoints.
## How was this patch tested?
Test by an added test case and existing tests.
Author: Zhenhua Wang <wangzhenhua@huawei.com>
Closes#19506 from wzhfy/change_forIntervals_typedAgg.
TIMESTAMP (-101), BINARY_DOUBLE (101) and BINARY_FLOAT (100) are handled in OracleDialect
## What changes were proposed in this pull request?
When a oracle table contains columns whose type is BINARY_FLOAT or BINARY_DOUBLE, spark sql fails to load a table with SQLException
```
java.sql.SQLException: Unsupported type 101
at org.apache.spark.sql.execution.datasources.jdbc.JdbcUtils$.org$apache$spark$sql$execution$datasources$jdbc$JdbcUtils$$getCatalystType(JdbcUtils.scala:235)
at org.apache.spark.sql.execution.datasources.jdbc.JdbcUtils$$anonfun$8.apply(JdbcUtils.scala:292)
at org.apache.spark.sql.execution.datasources.jdbc.JdbcUtils$$anonfun$8.apply(JdbcUtils.scala:292)
at scala.Option.getOrElse(Option.scala:121)
at org.apache.spark.sql.execution.datasources.jdbc.JdbcUtils$.getSchema(JdbcUtils.scala:291)
at org.apache.spark.sql.execution.datasources.jdbc.JDBCRDD$.resolveTable(JDBCRDD.scala:64)
at org.apache.spark.sql.execution.datasources.jdbc.JDBCRelation.<init>(JDBCRelation.scala:113)
at org.apache.spark.sql.execution.datasources.jdbc.JdbcRelationProvider.createRelation(JdbcRelationProvider.scala:47)
at org.apache.spark.sql.execution.datasources.DataSource.resolveRelation(DataSource.scala:306)
at org.apache.spark.sql.DataFrameReader.load(DataFrameReader.scala:178)
at org.apache.spark.sql.DataFrameReader.load(DataFrameReader.scala:146)
```
## How was this patch tested?
I updated a UT which covers type conversion test for types (-101, 100, 101), on top of that I tested this change against actual table with those columns and it was able to read and write to the table.
Author: Kohki Nishio <taroplus@me.com>
Closes#19548 from taroplus/oracle_sql_types_101.
## What changes were proposed in this pull request?
When [SPARK-19261](https://issues.apache.org/jira/browse/SPARK-19261) implements `ALTER TABLE ADD COLUMNS`, ORC data source is omitted due to SPARK-14387, SPARK-16628, and SPARK-18355. Now, those issues are fixed and Spark 2.3 is [using Spark schema to read ORC table instead of ORC file schema](e6e36004af). This PR enables `ALTER TABLE ADD COLUMNS` for ORC data source.
## How was this patch tested?
Pass the updated and added test cases.
Author: Dongjoon Hyun <dongjoon@apache.org>
Closes#19545 from dongjoon-hyun/SPARK-21929.
## What changes were proposed in this pull request?
Plan equality should be computed by `canonicalized`, so we can remove unnecessary `hashCode` and `equals` methods.
## How was this patch tested?
Existing tests.
Author: Zhenhua Wang <wangzhenhua@huawei.com>
Closes#19539 from wzhfy/remove_equals.
## What changes were proposed in this pull request?
This is a follow-up of #18732.
This pr modifies `GroupedData.apply()` method to convert pandas udf to grouped udf implicitly.
## How was this patch tested?
Exisiting tests.
Author: Takuya UESHIN <ueshin@databricks.com>
Closes#19517 from ueshin/issues/SPARK-20396/fup2.
## What changes were proposed in this pull request?
spark does not support grouping__id, it has grouping_id() instead.
But it is not convenient for hive user to change to spark-sql
so this pr is to replace grouping__id with grouping_id()
hive user need not to alter their scripts
## How was this patch tested?
test with SQLQuerySuite.scala
Author: CenYuhai <yuhai.cen@ele.me>
Closes#18270 from cenyuhai/SPARK-21055.
## What changes were proposed in this pull request?
This is a very trivial PR, simply marking `strategies` in `SparkPlanner` with the `override` keyword for clarity since it is overriding `strategies` in `QueryPlanner` two levels up in the class hierarchy. I was reading through the code to learn a bit and got stuck on this fact for a little while, so I figured this may be helpful so that another developer new to the project doesn't get stuck where I was.
I did not make a JIRA ticket for this because it is so trivial, but I'm happy to do so to adhere to the contribution guidelines if required.
## How was this patch tested?
(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)
Please review http://spark.apache.org/contributing.html before opening a pull request.
Author: Eric Perry <eric@ericjperry.com>
Closes#19537 from ericjperry/override-strategies.
## What changes were proposed in this pull request?
A working prototype for data source v2 write path.
The writing framework is similar to the reading framework. i.e. `WriteSupport` -> `DataSourceV2Writer` -> `DataWriterFactory` -> `DataWriter`.
Similar to the `FileCommitPotocol`, the writing API has job and task level commit/abort to support the transaction.
## How was this patch tested?
new tests
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19269 from cloud-fan/data-source-v2-write.
## What changes were proposed in this pull request?
Fix java style issues
## How was this patch tested?
Run `./dev/lint-java` locally since it's not run on Jenkins
Author: Andrew Ash <andrew@andrewash.com>
Closes#19486 from ash211/aash/fix-lint-java.
## What changes were proposed in this pull request?
This PR addresses the comments by gatorsmile on [the previous PR](https://github.com/apache/spark/pull/19494).
## How was this patch tested?
Previous UT and added UT.
Author: Marco Gaido <marcogaido91@gmail.com>
Closes#19522 from mgaido91/SPARK-22249_FOLLOWUP.
## What changes were proposed in this pull request?
To let the same aggregate function that appear multiple times in an Aggregate be evaluated only once, we need to deduplicate the aggregate expressions. The original code was trying to use a "distinct" call to get a set of aggregate expressions, but did not work, since the "distinct" did not compare semantic equality. And even if it did, further work should be done in result expression rewriting.
In this PR, I changed the "set" to a map mapping the semantic identity of a aggregate expression to itself. Thus, later on, when rewriting result expressions (i.e., output expressions), the aggregate expression reference can be fixed.
## How was this patch tested?
Added a new test in SQLQuerySuite
Author: maryannxue <maryann.xue@gmail.com>
Closes#19488 from maryannxue/spark-22266.
## What changes were proposed in this pull request?
Complex state-updating and/or timeout-handling logic in mapGroupsWithState functions may require taking decisions based on the current event-time watermark and/or processing time. Currently, you can use the SQL function `current_timestamp` to get the current processing time, but it needs to be passed inserted in every row with a select, and then passed through the encoder, which isn't efficient. Furthermore, there is no way to get the current watermark.
This PR exposes both of them through the GroupState API.
Additionally, it also cleans up some of the GroupState docs.
## How was this patch tested?
New unit tests
Author: Tathagata Das <tathagata.das1565@gmail.com>
Closes#19495 from tdas/SPARK-22278.
## What changes were proposed in this pull request?
In Average.scala, it has
```
override lazy val evaluateExpression = child.dataType match {
case DecimalType.Fixed(p, s) =>
// increase the precision and scale to prevent precision loss
val dt = DecimalType.bounded(p + 14, s + 4)
Cast(Cast(sum, dt) / Cast(count, dt), resultType)
case _ =>
Cast(sum, resultType) / Cast(count, resultType)
}
def setChild (newchild: Expression) = {
child = newchild
}
```
It is possible that Cast(count, dt), resultType) will make the precision of the decimal number bigger than 38, and this causes over flow. Since count is an integer and doesn't need a scale, I will cast it using DecimalType.bounded(38,0)
## How was this patch tested?
In DataFrameSuite, I will add a test case.
Please review http://spark.apache.org/contributing.html before opening a pull request.
Author: Huaxin Gao <huaxing@us.ibm.com>
Closes#19496 from huaxingao/spark-22271.
## What changes were proposed in this pull request?
Evaluate one-sided conditions early in stream-stream joins.
This is in addition to normal filter pushdown, because integrating it with the join logic allows it to take place in outer join scenarios. This means that rows which can never satisfy the join condition won't clog up the state.
## How was this patch tested?
new unit tests
Author: Jose Torres <jose@databricks.com>
Closes#19452 from joseph-torres/SPARK-22136.
## What changes were proposed in this pull request?
#### before
```scala
scala> val words = spark.read.textFile("README.md").flatMap(_.split(" "))
words: org.apache.spark.sql.Dataset[String] = [value: string]
scala> val grouped = words.groupByKey(identity)
grouped: org.apache.spark.sql.KeyValueGroupedDataset[String,String] = org.apache.spark.sql.KeyValueGroupedDataset65214862
```
#### after
```scala
scala> val words = spark.read.textFile("README.md").flatMap(_.split(" "))
words: org.apache.spark.sql.Dataset[String] = [value: string]
scala> val grouped = words.groupByKey(identity)
grouped: org.apache.spark.sql.KeyValueGroupedDataset[String,String] = [key: [value: string], value: [value: string]]
```
## How was this patch tested?
existing ut
cc gatorsmile cloud-fan
Author: Kent Yao <yaooqinn@hotmail.com>
Closes#19363 from yaooqinn/minor-dataset-tostring.
## What changes were proposed in this pull request?
As pointed out in the JIRA, there is a bug which causes an exception to be thrown if `isin` is called with an empty list on a cached DataFrame. The PR fixes it.
## How was this patch tested?
Added UT.
Author: Marco Gaido <marcogaido91@gmail.com>
Closes#19494 from mgaido91/SPARK-22249.
## What changes were proposed in this pull request?
This PR aims to
- Rename `OrcRelation` to `OrcFileFormat` object.
- Replace `OrcRelation.ORC_COMPRESSION` with `org.apache.orc.OrcConf.COMPRESS`. Since [SPARK-21422](https://issues.apache.org/jira/browse/SPARK-21422), we can use `OrcConf.COMPRESS` instead of Hive's.
```scala
// The references of Hive's classes will be minimized.
val ORC_COMPRESSION = "orc.compress"
```
## How was this patch tested?
Pass the Jenkins with the existing and updated test cases.
Author: Dongjoon Hyun <dongjoon@apache.org>
Closes#19502 from dongjoon-hyun/SPARK-22282.
## What changes were proposed in this pull request?
`ObjectHashAggregateExec` should override `outputPartitioning` in order to avoid unnecessary shuffle.
## How was this patch tested?
Added Jenkins test.
Author: Liang-Chi Hsieh <viirya@gmail.com>
Closes#19501 from viirya/SPARK-22223.
## What changes were proposed in this pull request?
In EnsureStatefulOpPartitioning, we check that the inputRDD to a SparkPlan has the expected partitioning for Streaming Stateful Operators. The problem is that we are not allowed to access this information during planning.
The reason we added that check was because CoalesceExec could actually create RDDs with 0 partitions. We should fix it such that when CoalesceExec says that there is a SinglePartition, there is in fact an inputRDD of 1 partition instead of 0 partitions.
## How was this patch tested?
Regression test in StreamingQuerySuite
Author: Burak Yavuz <brkyvz@gmail.com>
Closes#19467 from brkyvz/stateful-op.
## What changes were proposed in this pull request?
When fixing schema field names using escape characters with `addReferenceMinorObj()` at [SPARK-18952](https://issues.apache.org/jira/browse/SPARK-18952) (#16361), double-quotes around the names were remained and the names become something like `"((java.lang.String) references[1])"`.
```java
/* 055 */ private int maxSteps = 2;
/* 056 */ private int numRows = 0;
/* 057 */ private org.apache.spark.sql.types.StructType keySchema = new org.apache.spark.sql.types.StructType().add("((java.lang.String) references[1])", org.apache.spark.sql.types.DataTypes.StringType);
/* 058 */ private org.apache.spark.sql.types.StructType valueSchema = new org.apache.spark.sql.types.StructType().add("((java.lang.String) references[2])", org.apache.spark.sql.types.DataTypes.LongType);
/* 059 */ private Object emptyVBase;
```
We should remove the double-quotes to refer the values in `references` properly:
```java
/* 055 */ private int maxSteps = 2;
/* 056 */ private int numRows = 0;
/* 057 */ private org.apache.spark.sql.types.StructType keySchema = new org.apache.spark.sql.types.StructType().add(((java.lang.String) references[1]), org.apache.spark.sql.types.DataTypes.StringType);
/* 058 */ private org.apache.spark.sql.types.StructType valueSchema = new org.apache.spark.sql.types.StructType().add(((java.lang.String) references[2]), org.apache.spark.sql.types.DataTypes.LongType);
/* 059 */ private Object emptyVBase;
```
## How was this patch tested?
Existing tests.
Author: Takuya UESHIN <ueshin@databricks.com>
Closes#19491 from ueshin/issues/SPARK-22273.
## What changes were proposed in this pull request?
`BasicWriteTaskStatsTracker.getFileSize()` to catch `FileNotFoundException`, log info and then return 0 as a file size.
This ensures that if a newly created file isn't visible due to the store not always having create consistency, the metric collection doesn't cause the failure.
## How was this patch tested?
New test suite included, `BasicWriteTaskStatsTrackerSuite`. This not only checks the resilience to missing files, but verifies the existing logic as to how file statistics are gathered.
Note that in the current implementation
1. if you call `Tracker..getFinalStats()` more than once, the file size count will increase by size of the last file. This could be fixed by clearing the filename field inside `getFinalStats()` itself.
2. If you pass in an empty or null string to `Tracker.newFile(path)` then IllegalArgumentException is raised, but only in `getFinalStats()`, rather than in `newFile`. There's a test for this behaviour in the new suite, as it verifies that only FNFEs get swallowed.
Author: Steve Loughran <stevel@hortonworks.com>
Closes#18979 from steveloughran/cloud/SPARK-21762-missing-files-in-metrics.
## What changes were proposed in this pull request?
This PR changes `keyWithIndexToNumValues` to `keyWithIndexToValue`.
There will be directories on HDFS named with this `keyWithIndexToNumValues`. So if we ever want to fix this, let's fix it now.
## How was this patch tested?
existing unit test cases.
Author: Liwei Lin <lwlin7@gmail.com>
Closes#19435 from lw-lin/keyWithIndex.
## What changes were proposed in this pull request?
This is an effort to reduce the difference between Hive and Spark. Spark supports case-sensitivity in columns. Especially, for Struct types, with `spark.sql.caseSensitive=true`, the following is supported.
```scala
scala> sql("select named_struct('a', 1, 'A', 2).a").show
+--------------------------+
|named_struct(a, 1, A, 2).a|
+--------------------------+
| 1|
+--------------------------+
scala> sql("select named_struct('a', 1, 'A', 2).A").show
+--------------------------+
|named_struct(a, 1, A, 2).A|
+--------------------------+
| 2|
+--------------------------+
```
And vice versa, with `spark.sql.caseSensitive=false`, the following is supported.
```scala
scala> sql("select named_struct('a', 1).A, named_struct('A', 1).a").show
+--------------------+--------------------+
|named_struct(a, 1).A|named_struct(A, 1).a|
+--------------------+--------------------+
| 1| 1|
+--------------------+--------------------+
```
However, types are considered different. For example, SET operations fail.
```scala
scala> sql("SELECT named_struct('a',1) union all (select named_struct('A',2))").show
org.apache.spark.sql.AnalysisException: Union can only be performed on tables with the compatible column types. struct<A:int> <> struct<a:int> at the first column of the second table;;
'Union
:- Project [named_struct(a, 1) AS named_struct(a, 1)#57]
: +- OneRowRelation$
+- Project [named_struct(A, 2) AS named_struct(A, 2)#58]
+- OneRowRelation$
```
This PR aims to support case-insensitive type equality. For example, in Set operation, the above operation succeed when `spark.sql.caseSensitive=false`.
```scala
scala> sql("SELECT named_struct('a',1) union all (select named_struct('A',2))").show
+------------------+
|named_struct(a, 1)|
+------------------+
| [1]|
| [2]|
+------------------+
```
## How was this patch tested?
Pass the Jenkins with a newly add test case.
Author: Dongjoon Hyun <dongjoon@apache.org>
Closes#18460 from dongjoon-hyun/SPARK-21247.
## What changes were proposed in this pull request?
Due to optimizer removing some unnecessary aliases, the logical and physical plan may have different output attribute ids. FileFormatWriter should handle this when creating the physical sort node.
## How was this patch tested?
new regression test.
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19483 from cloud-fan/bug2.
## What changes were proposed in this pull request?
The method `deterministic` is frequently called in optimizer.
Refactor `deterministic` as lazy value, in order to avoid redundant computations.
## How was this patch tested?
Simple benchmark test over TPC-DS queries, run time from query string to optimized plan(continuous 20 runs, and get the average of last 5 results):
Before changes: 12601 ms
After changes: 11993ms
This is 4.8% performance improvement.
Also run test with Unit test.
Author: Wang Gengliang <ltnwgl@gmail.com>
Closes#19478 from gengliangwang/deterministicAsLazyVal.
## What changes were proposed in this pull request?
`ParquetFileFormat` to relax its requirement of output committer class from `org.apache.parquet.hadoop.ParquetOutputCommitter` or subclass thereof (and so implicitly Hadoop `FileOutputCommitter`) to any committer implementing `org.apache.hadoop.mapreduce.OutputCommitter`
This enables output committers which don't write to the filesystem the way `FileOutputCommitter` does to save parquet data from a dataframe: at present you cannot do this.
Before a committer which isn't a subclass of `ParquetOutputCommitter`, it checks to see if the context has requested summary metadata by setting `parquet.enable.summary-metadata`. If true, and the committer class isn't a parquet committer, it raises a RuntimeException with an error message.
(It could downgrade, of course, but raising an exception makes it clear there won't be an summary. It also makes the behaviour testable.)
Note that `SQLConf` already states that any `OutputCommitter` can be used, but that typically it's a subclass of ParquetOutputCommitter. That's not currently true. This patch will make the code consistent with the docs, adding tests to verify,
## How was this patch tested?
The patch includes a test suite, `ParquetCommitterSuite`, with a new committer, `MarkingFileOutputCommitter` which extends `FileOutputCommitter` and writes a marker file in the destination directory. The presence of the marker file can be used to verify the new committer was used. The tests then try the combinations of Parquet committer summary/no-summary and marking committer summary/no-summary.
| committer | summary | outcome |
|-----------|---------|---------|
| parquet | true | success |
| parquet | false | success |
| marking | false | success with marker |
| marking | true | exception |
All tests are happy.
Author: Steve Loughran <stevel@hortonworks.com>
Closes#19448 from steveloughran/cloud/SPARK-22217-committer.
## What changes were proposed in this pull request?
Adding the code for setting 'aggregate time' metric to non-codegen path in HashAggregateExec and to ObjectHashAggregateExces.
## How was this patch tested?
Tested manually.
Author: Ala Luszczak <ala@databricks.com>
Closes#19473 from ala/fix-agg-time.
## What changes were proposed in this pull request?
As we discussed in https://github.com/apache/spark/pull/19136#discussion_r137023744 , we should push down operators to data source before planning, so that data source can report statistics more accurate.
This PR also includes some cleanup for the read path.
## How was this patch tested?
existing tests.
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19424 from cloud-fan/follow.
## What changes were proposed in this pull request?
In https://github.com/apache/spark/pull/18064, we allowed `RunnableCommand` to have children in order to fix some UI issues. Then we made `InsertIntoXXX` commands take the input `query` as a child, when we do the actual writing, we just pass the physical plan to the writer(`FileFormatWriter.write`).
However this is problematic. In Spark SQL, optimizer and planner are allowed to change the schema names a little bit. e.g. `ColumnPruning` rule will remove no-op `Project`s, like `Project("A", Scan("a"))`, and thus change the output schema from "<A: int>" to `<a: int>`. When it comes to writing, especially for self-description data format like parquet, we may write the wrong schema to the file and cause null values at the read path.
Fortunately, in https://github.com/apache/spark/pull/18450 , we decided to allow nested execution and one query can map to multiple executions in the UI. This releases the major restriction in #18604 , and now we don't have to take the input `query` as child of `InsertIntoXXX` commands.
So the fix is simple, this PR partially revert #18064 and make `InsertIntoXXX` commands leaf nodes again.
## How was this patch tested?
new regression test
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19474 from cloud-fan/bug.
## What changes were proposed in this pull request?
Implement StreamingRelation.computeStats to fix explain
## How was this patch tested?
- unit tests: `StreamingRelation.computeStats` and `StreamingExecutionRelation.computeStats`.
- regression tests: `explain join with a normal source` and `explain join with MemoryStream`.
Author: Shixiong Zhu <zsxwing@gmail.com>
Closes#19465 from zsxwing/SPARK-21988.
## What changes were proposed in this pull request?
Currently percentile_approx never returns the first element when percentile is in (relativeError, 1/N], where relativeError default 1/10000, and N is the total number of elements. But ideally, percentiles in [0, 1/N] should all return the first element as the answer.
For example, given input data 1 to 10, if a user queries 10% (or even less) percentile, it should return 1, because the first value 1 already reaches 10%. Currently it returns 2.
Based on the paper, targetError is not rounded up, and searching index should start from 0 instead of 1. By following the paper, we should be able to fix the cases mentioned above.
## How was this patch tested?
Added a new test case and fix existing test cases.
Author: Zhenhua Wang <wzh_zju@163.com>
Closes#19438 from wzhfy/improve_percentile_approx.
This change adds a new SQL config key that is equivalent to SparkContext's
"spark.extraListeners", allowing users to register QueryExecutionListener
instances through the Spark configuration system instead of having to
explicitly do it in code.
The code used by SparkContext to implement the feature was refactored into
a helper method in the Utils class, and SQL's ExecutionListenerManager was
modified to use it to initialize listener declared in the configuration.
Unit tests were added to verify all the new functionality.
Author: Marcelo Vanzin <vanzin@cloudera.com>
Closes#19309 from vanzin/SPARK-19558.
## What changes were proposed in this pull request?
This PR adds an apply() function on df.groupby(). apply() takes a pandas udf that is a transformation on `pandas.DataFrame` -> `pandas.DataFrame`.
Static schema
-------------------
```
schema = df.schema
pandas_udf(schema)
def normalize(df):
df = df.assign(v1 = (df.v1 - df.v1.mean()) / df.v1.std()
return df
df.groupBy('id').apply(normalize)
```
Dynamic schema
-----------------------
**This use case is removed from the PR and we will discuss this as a follow up. See discussion https://github.com/apache/spark/pull/18732#pullrequestreview-66583248**
Another example to use pd.DataFrame dtypes as output schema of the udf:
```
sample_df = df.filter(df.id == 1).toPandas()
def foo(df):
ret = # Some transformation on the input pd.DataFrame
return ret
foo_udf = pandas_udf(foo, foo(sample_df).dtypes)
df.groupBy('id').apply(foo_udf)
```
In interactive use case, user usually have a sample pd.DataFrame to test function `foo` in their notebook. Having been able to use `foo(sample_df).dtypes` frees user from specifying the output schema of `foo`.
Design doc: https://github.com/icexelloss/spark/blob/pandas-udf-doc/docs/pyspark-pandas-udf.md
## How was this patch tested?
* Added GroupbyApplyTest
Author: Li Jin <ice.xelloss@gmail.com>
Author: Takuya UESHIN <ueshin@databricks.com>
Author: Bryan Cutler <cutlerb@gmail.com>
Closes#18732 from icexelloss/groupby-apply-SPARK-20396.
## What changes were proposed in this pull request?
This is a follow-up of #19384.
In the previous pr, only definitions of the config names were modified, but we also need to modify the names in runtime or tests specified as string literal.
## How was this patch tested?
Existing tests but modified the config names.
Author: Takuya UESHIN <ueshin@databricks.com>
Closes#19462 from ueshin/issues/SPARK-22159/fup1.
## What changes were proposed in this pull request?
We should not break the assumption that the length of the allocated byte array is word rounded:
https://github.com/apache/spark/blob/master/sql/catalyst/src/main/java/org/apache/spark/sql/catalyst/expressions/UnsafeRow.java#L170
So we want to use `Integer.MAX_VALUE - 15` instead of `Integer.MAX_VALUE - 8` as the upper bound of an allocated byte array.
cc: srowen gatorsmile
## How was this patch tested?
Since the Spark unit test JVM has less than 1GB heap, here we run the test code as a submit job, so it can run on a JVM has 4GB memory.
Please review http://spark.apache.org/contributing.html before opening a pull request.
Author: Feng Liu <fengliu@databricks.com>
Closes#19460 from liufengdb/fix_array_max.
## What changes were proposed in this pull request?
In state store restore, for each row, put the saved state before the row in the iterator instead of after.
This fixes an issue where agg(last('attr)) will forever return the last value of 'attr from the first microbatch.
## How was this patch tested?
new unit test
Author: Jose Torres <jose@databricks.com>
Closes#19461 from joseph-torres/SPARK-22230.
## What changes were proposed in this pull request?
This updates the broadcast join code path to lazily decompress pages and
iterate through UnsafeRows to prevent all rows from being held in memory
while the broadcast table is being built.
## How was this patch tested?
Existing tests.
Author: Ryan Blue <blue@apache.org>
Closes#19394 from rdblue/broadcast-driver-memory.
## What changes were proposed in this pull request?
When exceeding `spark.sql.codegen.hugeMethodLimit`, the runtime fallbacks to the Volcano iterator solution. This could cause an infinite loop when `FileSourceScanExec` can use the columnar batch to read the data. This PR is to fix the issue.
## How was this patch tested?
Added a test
Author: gatorsmile <gatorsmile@gmail.com>
Closes#19440 from gatorsmile/testt.
## What changes were proposed in this pull request?
Looks like `FlatMapGroupsInRExec.requiredChildDistribution` didn't consider empty grouping attributes. It should be a problem when running `EnsureRequirements` and `gapply` in R can't work on empty grouping columns.
## How was this patch tested?
Added test.
Author: Liang-Chi Hsieh <viirya@gmail.com>
Closes#19436 from viirya/fix-flatmapinr-distribution.
## What changes were proposed in this pull request?
Currently, the group state of user-defined-type is encoded as top-level columns in the UnsafeRows stores in the state store. The timeout timestamp is also saved as (when needed) as the last top-level column. Since the group state is serialized to top-level columns, you cannot save "null" as a value of state (setting null in all the top-level columns is not equivalent). So we don't let the user set the timeout without initializing the state for a key. Based on user experience, this leads to confusion.
This PR is to change the row format such that the state is saved as nested columns. This would allow the state to be set to null, and avoid these confusing corner cases.
## How was this patch tested?
Refactored tests.
Author: Tathagata Das <tathagata.das1565@gmail.com>
Closes#19416 from tdas/SPARK-22187.
## What changes were proposed in this pull request?
By definition the table name in Spark can be something like `123x`, `25a`, etc., with exceptions for literals like `12L`, `23BD`, etc. However, Spark SQL has a special byte length literal, which stops users to use digits followed by `b`, `k`, `m`, `g` as identifiers.
byte length literal is not a standard sql literal and is only used in the `tableSample` parser rule. This PR move the parsing of byte length literal from lexer to parser, so that users can use it as identifiers.
## How was this patch tested?
regression test
Author: Wenchen Fan <wenchen@databricks.com>
Closes#19392 from cloud-fan/parser-bug.
## What changes were proposed in this pull request?
This pr added code to check actual bytecode size when compiling generated code. In #18810, we added code to give up code compilation and use interpreter execution in `SparkPlan` if the line number of generated functions goes over `maxLinesPerFunction`. But, we already have code to collect metrics for compiled bytecode size in `CodeGenerator` object. So,we could easily reuse the code for this purpose.
## How was this patch tested?
Added tests in `WholeStageCodegenSuite`.
Author: Takeshi Yamamuro <yamamuro@apache.org>
Closes#19083 from maropu/SPARK-21871.
## What changes were proposed in this pull request?
This PR abstracts data compressed by `CompressibleColumnAccessor` using `ColumnVector` in batch method. When `ColumnAccessor.decompress` is called, `ColumnVector` will have uncompressed data. This batch decompress does not use `InternalRow` to reduce the number of memory accesses.
As first step of this implementation, this JIRA supports primitive data types. Another PR will support array and other data types.
This implementation decompress data in batch into uncompressed column batch, as rxin suggested at [here](https://github.com/apache/spark/pull/18468#issuecomment-316914076). Another implementation uses adapter approach [as cloud-fan suggested](https://github.com/apache/spark/pull/18468).
## How was this patch tested?
Added test suites
Author: Kazuaki Ishizaki <ishizaki@jp.ibm.com>
Closes#18704 from kiszk/SPARK-20783a.
## What changes were proposed in this pull request?
[SPARK-22193][SQL] Minor typo fix in SortMergeJoinExec. Nothing major, but it bothered me going into.Hence fixing
## How was this patch tested?
existing tests
Author: Rekha Joshi <rekhajoshm@gmail.com>
Author: rjoshi2 <rekhajoshm@gmail.com>
Closes#19422 from rekhajoshm/SPARK-22193.
## What changes were proposed in this pull request?
Allow one-sided outer joins between two streams when a watermark is defined.
## How was this patch tested?
new unit tests
Author: Jose Torres <jose@databricks.com>
Closes#19327 from joseph-torres/outerjoin.
## What changes were proposed in this pull request?
The underlying tables of persistent views are not refreshed when users issue the REFRESH TABLE command against the persistent views.
## How was this patch tested?
Added a test case
Author: gatorsmile <gatorsmile@gmail.com>
Closes#19405 from gatorsmile/refreshView.
## What changes were proposed in this pull request?
The definition of `maxRows` in `LocalLimit` operator was simply wrong. This patch introduces a new `maxRowsPerPartition` method and uses that in pruning. The patch also adds more documentation on why we need local limit vs global limit.
Note that this previously has never been a bug because the way the code is structured, but future use of the maxRows could lead to bugs.
## How was this patch tested?
Should be covered by existing test cases.
Closes#18851
Author: gatorsmile <gatorsmile@gmail.com>
Author: Reynold Xin <rxin@databricks.com>
Closes#19393 from gatorsmile/pr-18851.
## What changes were proposed in this pull request?
This pr fixed an overflow issue below in `Dataset.show`:
```
scala> Seq((1, 2), (3, 4)).toDF("a", "b").show(Int.MaxValue)
org.apache.spark.sql.AnalysisException: The limit expression must be equal to or greater than 0, but got -2147483648;;
GlobalLimit -2147483648
+- LocalLimit -2147483648
+- Project [_1#27218 AS a#27221, _2#27219 AS b#27222]
+- LocalRelation [_1#27218, _2#27219]
at org.apache.spark.sql.catalyst.analysis.CheckAnalysis$class.failAnalysis(CheckAnalysis.scala:41)
at org.apache.spark.sql.catalyst.analysis.Analyzer.failAnalysis(Analyzer.scala:89)
at org.apache.spark.sql.catalyst.analysis.CheckAnalysis$class.org$apache$spark$sql$catalyst$analysis$CheckAnalysis$$checkLimitClause(CheckAnalysis.scala:70)
at org.apache.spark.sql.catalyst.analysis.CheckAnalysis$$anonfun$checkAnalysis$1.apply(CheckAnalysis.scala:234)
at org.apache.spark.sql.catalyst.analysis.CheckAnalysis$$anonfun$checkAnalysis$1.apply(CheckAnalysis.scala:80)
at org.apache.spark.sql.catalyst.trees.TreeNode.foreachUp(TreeNode.scala:127)
```
## How was this patch tested?
Added tests in `DataFrameSuite`.
Author: Takeshi Yamamuro <yamamuro@apache.org>
Closes#19401 from maropu/MaxValueInShowString.
## What changes were proposed in this pull request?
SPARK-21690 makes one-pass `Imputer` by parallelizing the computation of all input columns. When we transform dataset with `ImputerModel`, we do `withColumn` on all input columns sequentially. We can also do this on all input columns at once by adding a `withColumns` API to `Dataset`.
The new `withColumns` API is for internal use only now.
## How was this patch tested?
Existing tests for `ImputerModel`'s change. Added tests for `withColumns` API.
Author: Liang-Chi Hsieh <viirya@gmail.com>
Closes#19229 from viirya/SPARK-22001.
## What changes were proposed in this pull request?
Since the current code ignores WITH clauses to check input relations in TPCDS queries, this leads to inaccurate per-row processing time for benchmark results. For example, in `q2`, this fix could catch all the input relations: `web_sales`, `date_dim`, and `catalog_sales` (the current code catches `date_dim` only). The one-third of the TPCDS queries uses WITH clauses, so I think it is worth fixing this.
## How was this patch tested?
Manually checked.
Author: Takeshi Yamamuro <yamamuro@apache.org>
Closes#19344 from maropu/RespectWithInTPCDSBench.
### What changes were proposed in this pull request?
`tempTables` is not right. To be consistent, we need to rename the internal variable names/comments to tempViews in SessionCatalog too.
### How was this patch tested?
N/A
Author: gatorsmile <gatorsmile@gmail.com>
Closes#19117 from gatorsmile/renameTempTablesToTempViews.
## What changes were proposed in this pull request?
Added IMPALA-modified TPCDS queries to TPC-DS query suites.
- Ref: https://github.com/cloudera/impala-tpcds-kit/tree/master/queries
## How was this patch tested?
N/A
Author: gatorsmile <gatorsmile@gmail.com>
Closes#19386 from gatorsmile/addImpalaQueries.
## What changes were proposed in this pull request?
Spark's RangePartitioner hard codes the number of sampling points per partition to be 20. This is sometimes too low. This ticket makes it configurable, via spark.sql.execution.rangeExchange.sampleSizePerPartition, and raises the default in Spark SQL to be 100.
## How was this patch tested?
Added a pretty sophisticated test based on chi square test ...
Author: Reynold Xin <rxin@databricks.com>
Closes#19387 from rxin/SPARK-22160.
## What changes were proposed in this pull request?
For some reason when we added the Exec suffix to all physical operators, we missed this one. I was looking for this physical operator today and couldn't find it, because I was looking for ExchangeExec.
## How was this patch tested?
This is a simple rename and should be covered by existing tests.
Author: Reynold Xin <rxin@databricks.com>
Closes#19376 from rxin/SPARK-22153.
## What changes were proposed in this pull request?
Now, we are not running TPC-DS queries as regular test cases. Thus, we need to add a test suite using empty tables for ensuring the new code changes will not break them. For example, optimizer/analyzer batches should not exceed the max iteration.
## How was this patch tested?
N/A
Author: gatorsmile <gatorsmile@gmail.com>
Closes#19361 from gatorsmile/tpcdsQuerySuite.
## What changes were proposed in this pull request?
`WriteableColumnVector` does not close its child column vectors. This can create memory leaks for `OffHeapColumnVector` where we do not clean up the memory allocated by a vectors children. This can be especially bad for string columns (which uses a child byte column vector).
## How was this patch tested?
I have updated the existing tests to always use both on-heap and off-heap vectors. Testing and diagnoses was done locally.
Author: Herman van Hovell <hvanhovell@databricks.com>
Closes#19367 from hvanhovell/SPARK-22143.
## What changes were proposed in this pull request?
Currently we use Arrow File format to communicate with Python worker when invoking vectorized UDF but we can use Arrow Stream format.
This pr replaces the Arrow File format with the Arrow Stream format.
## How was this patch tested?
Existing tests.
Author: Takuya UESHIN <ueshin@databricks.com>
Closes#19349 from ueshin/issues/SPARK-22125.