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10957 commits

Author SHA1 Message Date
angerszhu a98dc60408 [SPARK-33308][SQL] Refactor current grouping analytics
### What changes were proposed in this pull request?
As discussed in
https://github.com/apache/spark/pull/30145#discussion_r514728642
https://github.com/apache/spark/pull/30145#discussion_r514734648

We need to rewrite current Grouping Analytics grammar to support  as flexible as Postgres SQL to support subsequent development.
In  postgres sql, it support
```
select a, b, c, count(1) from t group by cube (a, b, c);
select a, b, c, count(1) from t group by cube(a, b, c);
select a, b, c, count(1) from t group by cube (a, b, c, (a, b), (a, b, c));
select a, b, c, count(1) from t group by rollup(a, b, c);
select a, b, c, count(1) from t group by rollup (a, b, c);
select a, b, c, count(1) from t group by rollup (a, b, c, (a, b), (a, b, c));
```
In this pr,  we have done three things as below, and we will split it to different pr:

 - Refactor CUBE/ROLLUP (regarding them as ANTLR tokens in a parser)
 - Refactor GROUPING SETS (the logical node -> a new expr)
 - Support new syntax for CUBE/ROLLUP (e.g., GROUP BY CUBE ((a, b), (a, c)))

### Why are the changes needed?
Rewrite current Grouping Analytics grammar to support  as flexible as Postgres SQL to support subsequent development.

### Does this PR introduce _any_ user-facing change?
User can  write Grouping Analytics grammar as flexible as Postgres SQL to support subsequent development.

### How was this patch tested?
Added UT

Closes #30212 from AngersZhuuuu/refact-grouping-analytics.

Lead-authored-by: angerszhu <angers.zhu@gmail.com>
Co-authored-by: Angerszhuuuu <angers.zhu@gmail.com>
Co-authored-by: AngersZhuuuu <angers.zhu@gmail.com>
Co-authored-by: Takeshi Yamamuro <yamamuro@apache.org>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2021-03-30 12:31:58 +00:00
Cheng Su 935aa8c8db [SPARK-32985][SQL][FOLLOWUP] Rename createNonBucketedReadRDD and minor change in FileSourceScanExec
### What changes were proposed in this pull request?

This PR is a followup change to address comments in https://github.com/apache/spark/pull/31413#discussion_r603280965 and https://github.com/apache/spark/pull/31413#discussion_r603296475 . Minor change in `FileSourceScanExec`. No actual logic change here.

### Why are the changes needed?

Better readability.

### Does this PR introduce _any_ user-facing change?

No.

### How was this patch tested?

Existing unit tests.

Closes #32000 from c21/bucket-scan.

Authored-by: Cheng Su <chengsu@fb.com>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
2021-03-30 19:57:32 +09:00
David Li 1237124062 [SPARK-34463][PYSPARK][DOCS] Document caveats of Arrow selfDestruct
### What changes were proposed in this pull request?

As a followup for #29818, document caveats of using the Arrow selfDestruct option in toPandas, which include:
- toPandas() may be slower;
- the resulting dataframe may not support some Pandas operations due to immutable backing arrays.

### Why are the changes needed?

This will hopefully reduce user confusion as with SPARK-34463.

### Does this PR introduce _any_ user-facing change?

Yes - documentation is updated and a config setting description is updated to clearly indicate the config is experimental.

### How was this patch tested?
This is a documentation-only change.

Closes #31738 from lidavidm/spark-34463.

Authored-by: David Li <li.davidm96@gmail.com>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
2021-03-30 13:30:27 +09:00
yangjie01 7158e7f986 [SPARK-34900][TEST] Make sure benchmarks can run using spark-submit cmd described in the guide
### What changes were proposed in this pull request?
Some `spark-submit`  commands used to run benchmarks in the user's guide is wrong, we can't use these commands to run benchmarks successful.

So the major changes of this pr is correct these wrong commands, for example, run a benchmark which inherits from `SqlBasedBenchmark`, we must specify `--jars <spark core test jar>,<spark catalyst test jar>` because `SqlBasedBenchmark` based benchmark extends `BenchmarkBase(defined in spark core test jar)` and `SQLHelper(defined in spark catalyst test jar)`.

Another change of this pr is removed the `scalatest Assertions` dependency of Benchmarks because `scalatest-*.jar` are not in the distribution package, it will be troublesome to use.

### Why are the changes needed?
Make sure benchmarks can run using spark-submit cmd described in the guide

### Does this PR introduce _any_ user-facing change?
No.

### How was this patch tested?
Use the corrected `spark-submit` commands to run benchmarks successfully.

Closes #31995 from LuciferYang/fix-benchmark-guide.

Authored-by: yangjie01 <yangjie01@baidu.com>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
2021-03-30 11:58:01 +09:00
Yuming Wang fcef2375a3 [SPARK-34622][SQL] Push down limit through Project with Join
### What changes were proposed in this pull request?

There is a `Project` between `LocalLimit` and `Join` if `Join`'s output do not match the `LocalLimit`'s output. This pr add support push down limit through this case. For example:
   ```scala
   spark.sql("create table t1(a int, b int, c int) using parquet")
   spark.sql("create table t2(x int, y int, z int) using parquet")
   spark.sql("select a from t1 left join t2 on a = x and b = y limit 5").explain("extended")
   ```

   ```
   == Optimized Logical Plan ==
   GlobalLimit 5
   +- LocalLimit 5
      +- Project [a#0]
         +- Join LeftOuter, ((a#0 = x#3) AND (b#1 = y#4))
            :- Project [a#0, b#1]
            :  +- Relation default.t1[a#0,b#1,c#2] parquet
            +- Project [x#3, y#4]
               +- Filter (isnotnull(x#3) AND isnotnull(y#4))
                  +- Relation default.t2[x#3,y#4,z#5] parquet
   ```

   After this pr:
   ```
   == Optimized Logical Plan ==
   GlobalLimit 5
   +- LocalLimit 5
      +- Project [a#0]
         +- Join LeftOuter, ((a#0 = x#3) AND (b#1 = y#4))
            :- LocalLimit 5
            :  +- Project [a#0, b#1]
            :     +- Relation default.t1[a#0,b#1,c#2] parquet
            +- Project [x#3, y#4]
               +- Filter (isnotnull(x#3) AND isnotnull(y#4))
                  +- Relation default.t2[x#3,y#4,z#5] parquet
   ```

### Why are the changes needed?

Improve limit push down to improve query performance.

### Does this PR introduce _any_ user-facing change?

No.

### How was this patch tested?

Unit test.

Closes #31739 from wangyum/SPARK-34622.

Authored-by: Yuming Wang <yumwang@ebay.com>
Signed-off-by: Takeshi Yamamuro <yamamuro@apache.org>
2021-03-30 10:45:30 +09:00
Jungtaek Lim 43e08b1f0f [SPARK-34255][SQL] Support partitioning with static number on required distribution and ordering on V2 write
### What changes were proposed in this pull request?

This PR proposes to extend the functionality of requirement for distribution and ordering on V2 write to specify the number of partitioning on repartition, so that data source is able to control the parallelism and determine the data distribution per partition in prior.

The partitioning with static number is optional, and by default disabled via default method, so only implementations required to restrict the number of partition statically need to override the method and provide the number.

Note that we don't support static number of partitions with unspecified distribution for this PR, as we haven't found the real use cases, and for hypothetical case the static number isn't good enough. Javadoc clearly describes the limitation.

### Why are the changes needed?

The use case comes from feature parity with DSv1.

I have state data source which enables the state in SS to be rewritten, which enables repartitioning, schema evolution, etc via batch query. The writer requires hash partitioning against group key, with the "desired number of partitions", which is same as what Spark does read and write against state.

This is now implemented as DSv1, and the requirement is simply done by calling repartition with the "desired number".

```
val fullPathsForKeyColumns = keySchema.map(key => new Column(s"key.${key.name}"))
data
  .repartition(newPartitions, fullPathsForKeyColumns: _*)
  .queryExecution
  .toRdd
  .foreachPartition(
    writeFn(resolvedCpLocation, version, operatorId, storeName, keySchema, valueSchema,
      storeConf, hadoopConfBroadcast, queryId))
```

Thanks to SPARK-34026, it's now possible to require the hash partitioning, but still not able to require the number of partitions. This PR will enable to let data source require the number of partitions.

### Does this PR introduce _any_ user-facing change?

Yes, but only for data source implementors. Even for them, this is no breaking change as default method is added.

### How was this patch tested?

Added UTs.

Closes #31355 from HeartSaVioR/SPARK-34255.

Lead-authored-by: Jungtaek Lim <kabhwan.opensource@gmail.com>
Co-authored-by: Jungtaek Lim (HeartSaVioR) <kabhwan.opensource@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2021-03-29 14:33:23 +00:00
Kousuke Saruta 14c7bb877d [SPARK-34872][SQL] quoteIfNeeded should quote a name which contains non-word characters
### What changes were proposed in this pull request?

This PR fixes an issue that `quoteIfNeeded` quotes a name only if it contains `.` or ``` ` ```.
This method should quote it if it contains non-word characters.

### Why are the changes needed?

It's a potential bug.

### Does this PR introduce _any_ user-facing change?

No.

### How was this patch tested?

New test.

Closes #31964 from sarutak/fix-quoteIfNeeded.

Authored-by: Kousuke Saruta <sarutak@oss.nttdata.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2021-03-29 09:31:24 +00:00
Angerszhuuuu 015c59843c [SPARK-34879][SQL] HiveInspector supports DayTimeIntervalType and YearMonthIntervalType
### What changes were proposed in this pull request?
Make HiveInspector support DayTimeIntervalType and YearMonthIntervalType.
Then we can use these two types in HiveUDF and HiveScriptTransformation

### Why are the changes needed?
Support more data type when use hive serde

### Does this PR introduce _any_ user-facing change?
User can use  `DayTimeIntervalType` and `YearMonthIntervalType` in HiveUDF and  HiveScriptTransformation

### How was this patch tested?
Added UT

Closes #31979 from AngersZhuuuu/SPARK-34879.

Authored-by: Angerszhuuuu <angers.zhu@gmail.com>
Signed-off-by: Max Gekk <max.gekk@gmail.com>
2021-03-29 08:38:20 +03:00
Angerszhuuuu 2356cdd420 [SPARK-34814][SQL] LikeSimplification should handle NULL
### What changes were proposed in this pull request?
LikeSimplification should handle NULL.

UT will failed  before this pr
```
  test("SPARK-34814: LikeSimplification should handle NULL") {
    withSQLConf(SQLConf.OPTIMIZER_EXCLUDED_RULES.key ->
      ConstantFolding.getClass.getName.stripSuffix("$")) {
      checkEvaluation(Literal.create("foo", StringType)
        .likeAll("%foo%", Literal.create(null, StringType)), null)
    }
  }

[info] - test *** FAILED *** (2 seconds, 443 milliseconds)
[info]   java.lang.NullPointerException:
[info]   at org.apache.spark.sql.catalyst.optimizer.LikeSimplification$.$anonfun$simplifyMultiLike$1(expressions.scala:697)
[info]   at scala.collection.TraversableLike.$anonfun$map$1(TraversableLike.scala:238)
[info]   at scala.collection.mutable.ResizableArray.foreach(ResizableArray.scala:62)
[info]   at scala.collection.mutable.ResizableArray.foreach$(ResizableArray.scala:55)
[info]   at scala.collection.mutable.ArrayBuffer.foreach(ArrayBuffer.scala:49)
[info]   at scala.collection.TraversableLike.map(TraversableLike.scala:238)
[info]   at scala.collection.TraversableLike.map$(TraversableLike.scala:231)
[info]   at scala.collection.AbstractTraversable.map(Traversable.scala:108)
[info]   at org.apache.spark.sql.catalyst.optimizer.LikeSimplification$.org$apache$spark$sql$catalyst$optimizer$LikeSimplification$$simplifyMultiLike(expressions.scala:697)
[info]   at org.apache.spark.sql.catalyst.optimizer.LikeSimplification$$anonfun$apply$9.applyOrElse(expressions.scala:722)
[info]   at org.apache.spark.sql.catalyst.optimizer.LikeSimplification$$anonfun$apply$9.applyOrElse(expressions.scala:714)
[info]   at org.apache.spark.sql.catalyst.trees.TreeNode.$anonfun$transformDown$1(TreeNode.scala:316)
[info]   at org.apache.spark.sql.catalyst.trees.CurrentOrigin$.withOrigin(TreeNode.scala:72)
[info]   at org.apache.spark.sql.catalyst.trees.TreeNode.transformDown(TreeNode.scala:316)
[info]   at org.apache.spark.sql.catalyst.trees.TreeNode.$anonfun$transformDown$3(TreeNode.scala:321)
[info]   at org.apache.spark.sql.catalyst.trees.TreeNode.$anonfun$mapChildren$1(TreeNode.scala:406)
[info]   at org.apache.spark.sql.catalyst.trees.TreeNode.mapProductIterator(TreeNode.scala:242)
[info]   at org.apache.spark.sql.catalyst.trees.TreeNode.mapChildren(TreeNode.scala:404)
[info]   at org.apache.spark.sql.catalyst.trees.TreeNode.mapChildren(TreeNode.scala:357)
[info]   at org.apache.spark.sql.catalyst.trees.TreeNode.transformDown(TreeNode.scala:321)
[info]   at org.apache.spark.sql.catalyst.plans.QueryPlan.$anonfun$transformExpressionsDown$1(QueryPlan.scala:94)
[info]   at org.apache.spark.sql.catalyst.plans.QueryPlan.$anonfun$mapExpressions$1(QueryPlan.scala:116)
[info]   at org.apache.spark.sql.catalyst.trees.CurrentOrigin$.withOrigin(TreeNode.scala:72)
```

### Why are the changes needed?
Fix bug

### Does this PR introduce _any_ user-facing change?
No

### How was this patch tested?
Added UT

Closes #31976 from AngersZhuuuu/SPARK-34814.

Authored-by: Angerszhuuuu <angers.zhu@gmail.com>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
2021-03-29 12:05:00 +09:00
Tanel Kiis 4b9e94c444 [SPARK-34876][SQL] Fill defaultResult of non-nullable aggregates
### What changes were proposed in this pull request?

Filled the `defaultResult` field on non-nullable aggregates

### Why are the changes needed?

The `defaultResult` defaults to `None` and in some situations (like correlated scalar subqueries) it is used for the value of the aggregation.

The UT result before the fix:
```
-- !query
SELECT t1a,
   (SELECT count(t2d) FROM t2 WHERE t2a = t1a) count_t2,
   (SELECT count_if(t2d > 0) FROM t2 WHERE t2a = t1a) count_if_t2,
   (SELECT approx_count_distinct(t2d) FROM t2 WHERE t2a = t1a) approx_count_distinct_t2,
   (SELECT collect_list(t2d) FROM t2 WHERE t2a = t1a) collect_list_t2,
   (SELECT collect_set(t2d) FROM t2 WHERE t2a = t1a) collect_set_t2,
    (SELECT hex(count_min_sketch(t2d, 0.5d, 0.5d, 1)) FROM t2 WHERE t2a = t1a) collect_set_t2
FROM t1
-- !query schema
struct<t1a:string,count_t2:bigint,count_if_t2:bigint,approx_count_distinct_t2:bigint,collect_list_t2:array<bigint>,collect_set_t2:array<bigint>,collect_set_t2:string>
-- !query output
val1a	0	0	NULL	NULL	NULL	NULL
val1a	0	0	NULL	NULL	NULL	NULL
val1a	0	0	NULL	NULL	NULL	NULL
val1a	0	0	NULL	NULL	NULL	NULL
val1b	6	6	3	[19,119,319,19,19,19]	[19,119,319]	0000000100000000000000060000000100000004000000005D8D6AB90000000000000000000000000000000400000000000000010000000000000001
val1c	2	2	2	[219,19]	[219,19]	0000000100000000000000020000000100000004000000005D8D6AB90000000000000000000000000000000100000000000000000000000000000001
val1d	0	0	NULL	NULL	NULL	NULL
val1d	0	0	NULL	NULL	NULL	NULL
val1d	0	0	NULL	NULL	NULL	NULL
val1e	1	1	1	[19]	[19]	0000000100000000000000010000000100000004000000005D8D6AB90000000000000000000000000000000100000000000000000000000000000000
val1e	1	1	1	[19]	[19]	0000000100000000000000010000000100000004000000005D8D6AB90000000000000000000000000000000100000000000000000000000000000000
val1e	1	1	1	[19]	[19]	0000000100000000000000010000000100000004000000005D8D6AB90000000000000000000000000000000100000000000000000000000000000000
```

### Does this PR introduce _any_ user-facing change?

Bugfix

### How was this patch tested?

UT

Closes #31973 from tanelk/SPARK-34876_non_nullable_agg_subquery.

Authored-by: Tanel Kiis <tanel.kiis@gmail.com>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
2021-03-29 11:47:08 +09:00
hanover-fiste 4fceef0159 [SPARK-34843][SQL] Calculate more precise partition stride in JDBCRelation
### What changes were proposed in this pull request?
The changes being proposed are to increase the accuracy of JDBCRelation's stride calculation, as outlined in: https://issues.apache.org/jira/browse/SPARK-34843

In summary:

Currently, in JDBCRelation (line 123), the stride size is calculated as follows:
val stride: Long = upperBound / numPartitions - lowerBound / numPartitions

Due to truncation happening on both divisions, the stride size can fall short of what it should be. This can lead to a big difference between the provided upper bound and the actual start of the last partition.

I'm proposing a different formula that doesn't truncate to early, and also maintains accuracy using fixed-point decimals. This helps tremendously with the size of the last partition, which can be even more amplified if there is data skew in that direction. In a real-life test, I've seen a 27% increase in performance with this more proper stride alignment. The reason for fixed-point decimals instead of floating-point decimals is because inaccuracy due to limitation of what the float can represent. This may seem small, but could shift the midpoint a bit, and depending on how granular the data is, that could translate to quite a difference. It's also just inaccurate, and I'm striving to make the partitioning as accurate as possible, within reason.

Lastly, since the last partition's predicate is determined by how the strides align starting from the lower bound (plus one stride), there can be skew introduced creating a larger last partition compared to the first partition. Therefore, after calculating a more precise stride size, I've also introduced logic to move the first partition's predicate (which is an offset from the lower bound) to a position that closely matches the offset of the last partition's predicate (in relation to the upper bound). This makes the first and last partition more evenly distributed compared to each other, and helps with the last task being the largest (reducing its size).

### Why are the changes needed?
The current implementation is inaccurate and can lead to the last task/partition running much longer than previous tasks. Therefore, you can end up with a single node/core running for an extended period while other nodes/cores are sitting idle.

### Does this PR introduce _any_ user-facing change?
No. I would suspect some users will just get a good performance increase. As stated above, if we were to run our code on Spark that has this change implemented, we would have all of the sudden got a 27% increase in performance.

### How was this patch tested?
I've added two new unit tests. I did need to update one unit test, but when you look at the comparison of the before and after, you'll see better alignment of the partitioning with the new implementation. Given that the lower partition's predicate is exclusive and the upper's is inclusive, the offset of the lower was 3 days, and the offset of the upper was 6 days... that's potentially twice the amount of data in that upper partition (could be much more depending on how the user's data is distributed).

Other unit tests that utilize timestamps and two partitions have maintained their midpoint.

### Examples

I've added results with and without the realignment logic to better highlight both improvements this PR brings.

**Example 1:**
Given the following partition config:
"lowerBound" -> "1930-01-01"
"upperBound" -> "2020-12-31"
"numPartitions" -> 1000

_Old method (exactly what it would be BEFORE this PR):_
First partition: "PartitionColumn" < '1930-02-02' or "PartitionColumn" is null
Last partition: "PartitionColumn" >= '2017-07-11'
_Old method, but with new realingment logic of first partition:_
First partition: "PartitionColumn" < '1931-10-14' or "PartitionColumn" is null
Last partition: "PartitionColumn" >= '2019-03-22'

_New method:_
First partition: "PartitionColumn" < '1930-02-03' or "PartitionColumn" is null
Last partition: "PartitionColumn" >= '2020-04-05'
_New with new realingment logic of first partition (exactly what it would be AFTER this PR):_
First partition: "PartitionColumn" < '1930-06-02' or "PartitionColumn" is null
Last partition: "PartitionColumn" >= '2020-08-02'

**Example 2:**
Given the following partition config:
"lowerBound" -> "1927-04-05",
"upperBound" -> "2020-10-16"
"numPartitions" -> 2000

_Old method (exactly what it would be BEFORE this PR):_
First partition: "PartitionColumn" < '1927-04-21' or "PartitionColumn" is null
Last partition: "PartitionColumn" >= '2014-10-29'
_Old method, but with new realingment logic of first partition::_
First partition: "PartitionColumn" < '1930-04-07' or "PartitionColumn" is null
Last partition: "PartitionColumn" >= '2017-10-15'

_New method:_
First partition: "PartitionColumn" < '1927-04-22' or "PartitionColumn" is null
Last partition: "PartitionColumn" >= '2020-04-19'
_New method with new realingment logic of first partition (exactly what it would be AFTER this PR):_
First partition: "PartitionColumn" < '1927-07-13' or "PartitionColumn" is null
Last partition: "PartitionColumn" >= '2020-07-10'

Closes #31965 from hanover-fiste/SPARK-34843.

Authored-by: hanover-fiste <jyarbrough.git@gmail.com>
Signed-off-by: Sean Owen <srowen@gmail.com>
2021-03-28 12:59:20 -05:00
Peter Toth 3382190349 [SPARK-34829][SQL] Fix higher order function results
### What changes were proposed in this pull request?
This PR fixes a correctness issue with higher order functions. The results of function expressions needs to be copied in some higher order functions as such an expression can return with internal buffers and higher order functions can call multiple times the expression.
The issue was discovered with typed `ScalaUDF`s after https://github.com/apache/spark/pull/28979.

### Why are the changes needed?
To fix a bug.

### Does this PR introduce _any_ user-facing change?
Yes, some queries return the right results again.

### How was this patch tested?
Added new UT.

Closes #31955 from peter-toth/SPARK-34829-fix-scalaudf-resultconversion.

Authored-by: Peter Toth <peter.toth@gmail.com>
Signed-off-by: Dongjoon Hyun <dhyun@apple.com>
2021-03-28 10:01:09 -07:00
Yuming Wang 540f1fb1d9 [SPARK-32855][SQL][FOLLOWUP] Fix code format in SQLConf and comment in PartitionPruning
### What changes were proposed in this pull request?

Fix code format in `SQLConf` and comment in `PartitionPruning`.

### Why are the changes needed?

Make code more readable.

### Does this PR introduce _any_ user-facing change?

No.

### How was this patch tested?

N/A

Closes #31969 from wangyum/SPARK-32855-2.

Authored-by: Yuming Wang <yumwang@ebay.com>
Signed-off-by: Dongjoon Hyun <dhyun@apple.com>
2021-03-28 09:48:54 -07:00
Dongjoon Hyun e7af44861e [SPARK-34880][SQL][TESTS] Add Parquet ZSTD compression test coverage
### What changes were proposed in this pull request?

Apache Parquet 1.12.0 switches its ZSTD compression from Hadoop codec to its own codec.

### Why are the changes needed?

**Apache Spark 3.1 (It requires libhadoop built with zstd)**
```scala
scala> spark.range(10).write.option("compression", "zstd").parquet("/tmp/a")
21/03/27 08:49:38 ERROR Executor: Exception in task 11.0 in stage 0.0 (TID 11)2]
java.lang.RuntimeException: native zStandard library not available:
this version of libhadoop was built without zstd support.
```

**Apache Spark 3.2 (No libhadoop requirement)**
```scala
scala> spark.range(10).write.option("compression", "zstd").parquet("/tmp/a")
```

### Does this PR introduce _any_ user-facing change?

Yes, this is an improvement.

### How was this patch tested?

Pass the CI with the newly added test coverage.

Closes #31981 from dongjoon-hyun/SPARK-34880.

Authored-by: Dongjoon Hyun <dhyun@apple.com>
Signed-off-by: Dongjoon Hyun <dhyun@apple.com>
2021-03-27 12:48:12 -07:00
Yuming Wang cbffc12f90 [SPARK-34542][BUILD] Upgrade Parquet to 1.12.0
### What changes were proposed in this pull request?

Parquet 1.12.0 New Feature
- PARQUET-41 - Add bloom filters to parquet statistics
- PARQUET-1373 - Encryption key management tools
- PARQUET-1396 - Example of using EncryptionPropertiesFactory and DecryptionPropertiesFactory
- PARQUET-1622 - Add BYTE_STREAM_SPLIT encoding
- PARQUET-1784 - Column-wise configuration
- PARQUET-1817 - Crypto Properties Factory
- PARQUET-1854 - Properties-Driven Interface to Parquet Encryption

Parquet 1.12.0 release notes:
https://github.com/apache/parquet-mr/blob/apache-parquet-1.12.0/CHANGES.md

### Why are the changes needed?

- Bloom filters to improve filter performance
- ZSTD enhancement

### Does this PR introduce _any_ user-facing change?

No.

### How was this patch tested?

Existing unit test.

Closes #31649 from wangyum/SPARK-34542.

Lead-authored-by: Yuming Wang <yumwang@ebay.com>
Co-authored-by: Yuming Wang <yumwang@apache.org>
Signed-off-by: Dongjoon Hyun <dhyun@apple.com>
2021-03-27 07:56:29 -07:00
Angerszhuuuu 468b944b00 [SPARK-34841][SQL] Push ANSI interval binary expressions into into (if/else) branches
### What changes were proposed in this pull request?
Push ANSI interval binary expressions into into (if / case) branches

### Why are the changes needed?
Support more binary expression to push into if/else and casewhen

### Does this PR introduce _any_ user-facing change?
No

### How was this patch tested?
Added UT

Closes #31978 from AngersZhuuuu/SPARK-34841.

Authored-by: Angerszhuuuu <angers.zhu@gmail.com>
Signed-off-by: Max Gekk <max.gekk@gmail.com>
2021-03-27 14:50:28 +03:00
Angerszhuuuu 769cf7b966 [SPARK-34744][SQL] Improve error message for casting cause overflow error
### What changes were proposed in this pull request?
Improve error message for casting cause overflow error. We should use DataType's catalogString.

### Why are the changes needed?
Improve error message

### Does this PR introduce _any_ user-facing change?
For example:
```
set spark.sql.ansi.enabled=true;
select tinyint(128) * tinyint(2);
```
Error message before this pr:
```
Casting 128 to scala.Byte$ causes overflow
```
After this pr:
```
Casting 128 to tinyint causes overflow
```

### How was this patch tested?
Added UT

Closes #31971 from AngersZhuuuu/SPARK-34744.

Authored-by: Angerszhuuuu <angers.zhu@gmail.com>
Signed-off-by: Kent Yao <yao@apache.org>
2021-03-27 11:15:55 +08:00
Max Gekk 9ba889b6ea [SPARK-34875][SQL] Support divide a day-time interval by a numeric
### What changes were proposed in this pull request?
1. Add new expression `DivideDTInterval` which multiplies a `DayTimeIntervalType` expression by a `NumericType` expression including ByteType, ShortType, IntegerType, LongType, FloatType, DoubleType, DecimalType.
2. Extend binary arithmetic rules to support `day-time interval / numeric`.

### Why are the changes needed?
To conform the ANSI SQL standard which requires such operation over day-time intervals:
<img width="656" alt="Screenshot 2021-03-25 at 18 44 58" src="https://user-images.githubusercontent.com/1580697/112501559-68f07080-8d9a-11eb-8781-66e6631bb7ef.png">

### Does this PR introduce _any_ user-facing change?
No

### How was this patch tested?
By running new tests:
```
$ build/sbt "test:testOnly *IntervalExpressionsSuite"
$ build/sbt "test:testOnly *ColumnExpressionSuite"
```

Closes #31972 from MaxGekk/div-dt-interval-by-num.

Authored-by: Max Gekk <max.gekk@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2021-03-26 15:36:08 +00:00
Wenchen Fan 61d038f26e Revert "[SPARK-34701][SQL] Remove analyzing temp view again in CreateViewCommand"
This reverts commit da04f1f4f8.
2021-03-26 15:26:48 +08:00
Max Gekk f212c61c43 [SPARK-34868][SQL] Support divide an year-month interval by a numeric
### What changes were proposed in this pull request?
1. Add new expression `DivideYMInterval` which multiplies a `YearMonthIntervalType` expression by a `NumericType` expression including ByteType, ShortType, IntegerType, LongType, FloatType, DoubleType, DecimalType.
2. Extend binary arithmetic rules to support `year-month interval / numeric`.

### Why are the changes needed?
To conform the ANSI SQL standard which requires such operation over year-month intervals:
<img width="656" alt="Screenshot 2021-03-25 at 18 44 58" src="https://user-images.githubusercontent.com/1580697/112501559-68f07080-8d9a-11eb-8781-66e6631bb7ef.png">

### Does this PR introduce _any_ user-facing change?
No

### How was this patch tested?
By running new tests:
```
$ build/sbt "test:testOnly *IntervalExpressionsSuite"
$ build/sbt "test:testOnly *ColumnExpressionSuite"
```

Closes #31961 from MaxGekk/div-ym-interval-by-num.

Authored-by: Max Gekk <max.gekk@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2021-03-26 05:56:56 +00:00
Yuming Wang aaa0d2a66b [SPARK-32855][SQL] Improve the cost model in pruningHasBenefit for filtering side can not build broadcast by join type
### What changes were proposed in this pull request?

This pr improve the cost model in `pruningHasBenefit` for filtering side can not build broadcast by join type:
1. The filtering side must be small enough to build broadcast by size.
2. The estimated size of the pruning side must be big enough: `estimatePruningSideSize * spark.sql.optimizer.dynamicPartitionPruning.pruningSideExtraFilterRatio > overhead`.

### Why are the changes needed?

Improve query performance for these cases.

This a real case from cluster. Left join and left size very small and right side can build DPP:
![image](https://user-images.githubusercontent.com/5399861/92882197-445a2a00-f442-11ea-955d-16a7724e535b.png)

### Does this PR introduce _any_ user-facing change?

No.

### How was this patch tested?

Unit test.

Closes #29726 from wangyum/SPARK-32855.

Authored-by: Yuming Wang <yumwang@ebay.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2021-03-26 04:48:13 +00:00
Kent Yao 820b465886 [SPARK-34786][SQL] Read Parquet unsigned int64 logical type that stored as signed int64 physical type to decimal(20, 0)
### What changes were proposed in this pull request?

A companion PR for SPARK-34817, when we handle the unsigned int(<=32) logical types. In this PR, we map the unsigned int64 to decimal(20, 0) for better compatibility.

### Why are the changes needed?

Spark won't have unsigned types, but spark should be able to read existing parquet files written by other systems that support unsigned types for better compatibility.

### Does this PR introduce _any_ user-facing change?

yes, we can read parquet uint64 now

### How was this patch tested?

new unit tests

Closes #31960 from yaooqinn/SPARK-34786-2.

Authored-by: Kent Yao <yao@apache.org>
Signed-off-by: Kent Yao <yao@apache.org>
2021-03-26 09:54:19 +08:00
Yuanjian Li 5ffc3897e0 [SPARK-34871][SS] Move the checkpoint location resolving into the rule ResolveWriteToStream
### What changes were proposed in this pull request?
Move the checkpoint location resolving into the rule ResolveWriteToStream, which is added in SPARK-34748.

### Why are the changes needed?
After SPARK-34748, we have a rule ResolveWriteToStream for the analysis logic for the resolving logic of stream write plans. Based on it, we can further move the checkpoint location resolving work in the rule. Then, all the checkpoint resolving logic was done in the analyzer.

### Does this PR introduce _any_ user-facing change?
No.

### How was this patch tested?
Existing UT.

Closes #31963 from xuanyuanking/SPARK-34871.

Authored-by: Yuanjian Li <yuanjian.li@databricks.com>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
2021-03-26 10:29:50 +09:00
Wenchen Fan 658e95c345 [SPARK-34833][SQL][FOLLOWUP] Handle outer references in all the places
### What changes were proposed in this pull request?

This is a follow-up of https://github.com/apache/spark/pull/31940 . This PR generalizes the matching of attributes and outer references, so that outer references are handled everywhere.

Note that, currently correlated subquery has a lot of limitations in Spark, and the newly covered cases are not possible to happen. So this PR is a code refactor.

### Why are the changes needed?

code cleanup

### Does this PR introduce _any_ user-facing change?

no

### How was this patch tested?

existing tests

Closes #31959 from cloud-fan/follow.

Authored-by: Wenchen Fan <wenchen@databricks.com>
Signed-off-by: Takeshi Yamamuro <yamamuro@apache.org>
2021-03-26 09:10:03 +09:00
Gengliang Wang 0515f49018 [SPARK-34856][SQL] ANSI mode: Allow casting complex types as string type
### What changes were proposed in this pull request?

Allow casting complex types as string type in ANSI mode.

### Why are the changes needed?

Currently, complex types are not allowed to cast as string type. This breaks the DataFrame.show() API. E.g
```
scala> sql(“select array(1, 2, 2)“).show(false)
org.apache.spark.sql.AnalysisException: cannot resolve ‘CAST(`array(1, 2, 2)` AS STRING)’ due to data type mismatch:
 cannot cast array<int> to string with ANSI mode on.
```
We should allow the conversion as the extension of the ANSI SQL standard, so that the DataFrame.show() still work in ANSI mode.
### Does this PR introduce _any_ user-facing change?

Yes, casting complex types as string type is now allowed in ANSI mode.

### How was this patch tested?

Unit tests.

Closes #31954 from gengliangwang/fixExplicitCast.

Authored-by: Gengliang Wang <ltnwgl@gmail.com>
Signed-off-by: Gengliang Wang <ltnwgl@gmail.com>
2021-03-26 00:17:43 +08:00
Karen Feng 0d91f9c3f3 [SPARK-33600][SQL] Group exception messages in execution/datasources/v2
### What changes were proposed in this pull request?

This PR groups exception messages in `execution/datasources/v2`.

### Why are the changes needed?

It will largely help with standardization of error messages and its maintenance.

### Does this PR introduce _any_ user-facing change?

No. Error messages remain unchanged.

### How was this patch tested?

No new tests - pass all original tests to make sure it doesn't break any existing behavior.

Closes #31619 from karenfeng/spark-33600.

Authored-by: Karen Feng <karen.feng@databricks.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2021-03-25 16:15:30 +00:00
Tanel Kiis 6ba8445ea3 [SPARK-34822][SQL] Update the plan stability golden files even if only the explain.txt changes
### What changes were proposed in this pull request?

Update the plan stability golden files even if only the `explain.txt` changes.

This is resubmition of #31927. The schema for one of the TPCDS tables was updated and that changed the `explain.txt` for the q17.

### Why are the changes needed?

Currently only `simplified.txt` change is checked. There are some PRs, that update the `explain.txt`, that do not change the `simplified.txt`.

### Does this PR introduce _any_ user-facing change?

No

### How was this patch tested?

The updated golden files.

Closes #31957 from tanelk/SPARK-34822_update_plan_stability.

Lead-authored-by: Tanel Kiis <tanel.kiis@gmail.com>
Co-authored-by: tanel.kiis@gmail.com <tanel.kiis@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2021-03-25 10:22:49 +00:00
Tim Armstrong 1d6acd584a [SPARK-34857][SQL] Correct AtLeastNNonNulls's explain output
### What changes were proposed in this pull request?
Removed the custom toString implementation of AtLeastNNoneNulls.

### Why are the changes needed?
It shows up wrong in the explain plan. The name of the function is wrong and the actual value of the first argument is not shown. Both of these would make it easier to understand the plan.

```
(12) Filter
Input [3]: [c1#2410L, c2#2419, c3#2422]
Condition : AtLeastNNulls(n, c1#2410L)
```

### Does this PR introduce _any_ user-facing change?
Only the explain plan changes if this function is used.

### How was this patch tested?
Added a simple unit test to make sure that the toString output is correct.

Closes #31956 from timarmstrong/atleastnnonnulls.

Authored-by: Tim Armstrong <tim.armstrong@databricks.com>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
2021-03-25 17:20:01 +09:00
Max Gekk a68d7ca8c5 [SPARK-34850][SQL] Support multiply a day-time interval by a numeric
### What changes were proposed in this pull request?
1. Add new expression `MultiplyDTInterval` which multiplies a `DayTimeIntervalType` expression by a `NumericType` expression including ByteType, ShortType, IntegerType, LongType, FloatType, DoubleType, DecimalType.
2. Extend binary arithmetic rules to support `numeric * day-time interval` and `day-time interval * numeric`.
3. Invoke `DoubleMath.roundToInt` in `double/float * year-month interval`.

### Why are the changes needed?
To conform the ANSI SQL standard which requires such operation over day-time intervals:
<img width="667" alt="Screenshot 2021-03-22 at 16 33 16" src="https://user-images.githubusercontent.com/1580697/111997810-77d1eb80-8b2c-11eb-951d-e43911d9c5db.png">

### Does this PR introduce _any_ user-facing change?
No

### How was this patch tested?
By running new tests:
```
$ build/sbt "test:testOnly *IntervalExpressionsSuite"
$ build/sbt "test:testOnly *ColumnExpressionSuite"
```

Closes #31951 from MaxGekk/mul-day-time-interval.

Authored-by: Max Gekk <max.gekk@gmail.com>
Signed-off-by: Max Gekk <max.gekk@gmail.com>
2021-03-25 10:46:50 +03:00
Kent Yao 8c6748f691 [SPARK-34817][SQL] Read parquet unsigned types that stored as int32 physical type in parquet
### What changes were proposed in this pull request?

Unsigned types may be used to produce smaller in-memory representations of the data. These types used by frameworks(e.g. hive, pig) using parquet. And parquet will map them to its base types.

see more https://github.com/apache/parquet-format/blob/master/LogicalTypes.md
https://github.com/apache/parquet-format/blob/master/src/main/thrift/parquet.thrift

```thrift
  /**
   * An unsigned integer value.
   *
   * The number describes the maximum number of meaningful data bits in
   * the stored value. 8, 16 and 32 bit values are stored using the
   * INT32 physical type.  64 bit values are stored using the INT64
   * physical type.
   *
   */
  UINT_8 = 11;
  UINT_16 = 12;
  UINT_32 = 13;
  UINT_64 = 14;
```

```
UInt8-[0:255]
UInt16-[0:65535]
UInt32-[0:4294967295]
UInt64-[0:18446744073709551615]
```

In this PR, we support read UINT_8 as ShortType, UINT_16 as IntegerType, UINT_32 as LongType to fit their range. Support for UINT_64 will be in another PR.

### Why are the changes needed?

better parquet support

### Does this PR introduce _any_ user-facing change?

yes, we can read unit[8/16/32] from parquet files

### How was this patch tested?

new tests

Closes #31921 from yaooqinn/SPARK-34817.

Authored-by: Kent Yao <yao@apache.org>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2021-03-25 06:58:06 +00:00
Terry Kim da04f1f4f8 [SPARK-34701][SQL] Remove analyzing temp view again in CreateViewCommand
### What changes were proposed in this pull request?

This PR proposes to remove re-analyzing the already analyzed plan for `CreateViewCommand` as discussed https://github.com/apache/spark/pull/31273/files#r581592786.

### Why are the changes needed?

No need to analyze the plan if it's already analyzed.

### Does this PR introduce _any_ user-facing change?

No.

### How was this patch tested?

Existing tests should cover this.

Closes #31933 from imback82/remove_analyzed_from_create_temp_view.

Authored-by: Terry Kim <yuminkim@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2021-03-25 06:53:59 +00:00
HyukjinKwon 7838f55ca7 Revert "[SPARK-34822][SQL] Update the plan stability golden files even if only the explain.txt changes"
This reverts commit 84df54b495.
2021-03-25 12:31:08 +09:00
ulysses-you 9d561e6b5e [SPARK-34852][SQL] Close Hive session state should use withHiveState
### What changes were proposed in this pull request?

Wrap Hive sessionStae `close` with `withHiveState`

### Why are the changes needed?

Some reason:

1. Shutdown hook is invoked using different thread
2. Hive may use metasotre client again during closing

Otherwise, we may get such expcetion with custom hive metastore version
```
21/03/24 13:26:18 INFO session.SessionState: Failed to remove classloaders from DataNucleus
java.lang.RuntimeException: Unable to instantiate org.apache.hadoop.hive.ql.metadata.SessionHiveMetaStoreClient
	at org.apache.hadoop.hive.metastore.MetaStoreUtils.newInstance(MetaStoreUtils.java:1654)
	at org.apache.hadoop.hive.metastore.RetryingMetaStoreClient.<init>(RetryingMetaStoreClient.java:80)
	at org.apache.hadoop.hive.metastore.RetryingMetaStoreClient.getProxy(RetryingMetaStoreClient.java:130)
	at org.apache.hadoop.hive.metastore.RetryingMetaStoreClient.getProxy(RetryingMetaStoreClient.java:101)
	at org.apache.hadoop.hive.ql.metadata.Hive.createMetaStoreClient(Hive.java:3367)
	at org.apache.hadoop.hive.ql.metadata.Hive.getMSC(Hive.java:3406)
	at org.apache.hadoop.hive.ql.metadata.Hive.getMSC(Hive.java:3386)
	at org.apache.hadoop.hive.ql.session.SessionState.unCacheDataNucleusClassLoaders(SessionState.java:1546)
	at org.apache.hadoop.hive.ql.session.SessionState.close(SessionState.java:1536)
	at org.apache.spark.sql.hive.client.HiveClientImpl.closeState(HiveClientImpl.scala:172)
	at org.apache.spark.sql.hive.client.HiveClientImpl.$anonfun$new$1(HiveClientImpl.scala:175)
	at org.apache.spark.util.SparkShutdownHook.run(ShutdownHookManager.scala:214)
	at org.apache.spark.util.SparkShutdownHookManager.$anonfun$runAll$2(ShutdownHookManager.scala:188)
```

### Does this PR introduce _any_ user-facing change?

No, since this not released.

### How was this patch tested?

manual test.

Closes #31949 from ulysses-you/SPARK-34852.

Authored-by: ulysses-you <ulyssesyou18@gmail.com>
Signed-off-by: Kent Yao <yao@apache.org>
2021-03-25 10:21:44 +08:00
Takeshi Yamamuro 150769bced [SPARK-34833][SQL] Apply right-padding correctly for correlated subqueries
### What changes were proposed in this pull request?

This PR intends to fix the bug that does not apply right-padding for char types inside correlated subquries.
For example,  a query below returns nothing in master, but a correct result is `c`.
```
scala> sql(s"CREATE TABLE t1(v VARCHAR(3), c CHAR(5)) USING parquet")
scala> sql(s"CREATE TABLE t2(v VARCHAR(5), c CHAR(7)) USING parquet")
scala> sql("INSERT INTO t1 VALUES ('c', 'b')")
scala> sql("INSERT INTO t2 VALUES ('a', 'b')")
scala> val df = sql("""
  |SELECT v FROM t1
  |WHERE 'a' IN (SELECT v FROM t2 WHERE t2.c = t1.c )""".stripMargin)

scala> df.show()
+---+
|  v|
+---+
+---+

```

This is because `ApplyCharTypePadding`  does not handle the case above to apply right-padding into `'abc'`. This PR modifies the code in `ApplyCharTypePadding` for handling it correctly.

```
// Before this PR:
scala> df.explain(true)
== Analyzed Logical Plan ==
v: string
Project [v#13]
+- Filter a IN (list#12 [c#14])
   :  +- Project [v#15]
   :     +- Filter (c#16 = outer(c#14))
   :        +- SubqueryAlias spark_catalog.default.t2
   :           +- Relation default.t2[v#15,c#16] parquet
   +- SubqueryAlias spark_catalog.default.t1
      +- Relation default.t1[v#13,c#14] parquet

scala> df.show()
+---+
|  v|
+---+
+---+

// After this PR:
scala> df.explain(true)
== Analyzed Logical Plan ==
v: string
Project [v#43]
+- Filter a IN (list#42 [c#44])
   :  +- Project [v#45]
   :     +- Filter (c#46 = rpad(outer(c#44), 7,  ))
   :        +- SubqueryAlias spark_catalog.default.t2
   :           +- Relation default.t2[v#45,c#46] parquet
   +- SubqueryAlias spark_catalog.default.t1
      +- Relation default.t1[v#43,c#44] parquet

scala> df.show()
+---+
|  v|
+---+
|  c|
+---+
```

This fix is lated to TPCDS q17; the query returns nothing because of this bug: https://github.com/apache/spark/pull/31886/files#r599333799

### Why are the changes needed?

Bugfix.

### Does this PR introduce _any_ user-facing change?

No.

### How was this patch tested?

Unit tests added.

Closes #31940 from maropu/FixCharPadding.

Authored-by: Takeshi Yamamuro <yamamuro@apache.org>
Signed-off-by: Takeshi Yamamuro <yamamuro@apache.org>
2021-03-25 08:31:57 +09:00
Gengliang Wang abfd9b23cd [SPARK-34769][SQL] AnsiTypeCoercion: return closest convertible type among TypeCollection
### What changes were proposed in this pull request?

Currently, when implicit casting a data type to a `TypeCollection`, Spark returns the first convertible data type among `TypeCollection`.
In ANSI mode, we can make the behavior more reasonable by returning the closet convertible data type in `TypeCollection`.

In details, we first try to find the all the expected types we can implicitly cast:
1. if there is no convertible data types, return None;
2. if there is only one convertible data type, cast input as it;
3. otherwise if there are multiple convertible data types, find the closet data
type among them. If there is no such closet data type, return None.

Note that if the closet type is Float type and the convertible types contains Double type, simply return Double type as the closet type to avoid potential
precision loss on converting the Integral type as Float type.

### Why are the changes needed?

Make the type coercion rule for TypeCollection more reasonable and ANSI compatible.
E.g. returning Long instead of Double for`implicast(int, TypeCollect(Double, Long))`.

From ANSI SQL Spec section 4.33 "SQL-invoked routines"
![Screen Shot 2021-03-17 at 4 05 06 PM](https://user-images.githubusercontent.com/1097932/111434916-5e104e80-86bd-11eb-8b3b-33090a68067d.png)

Section 9.6 "Subject routine determination"
![Screen Shot 2021-03-17 at 1 36 55 PM](https://user-images.githubusercontent.com/1097932/111420336-48445e80-86a8-11eb-9d50-34b325043bdb.png)

Section 10.4 "routine invocation"
![Screen Shot 2021-03-17 at 4 08 41 PM](https://user-images.githubusercontent.com/1097932/111434926-610b3f00-86bd-11eb-8c32-8c7935e055da.png)

### Does this PR introduce _any_ user-facing change?

Yes, in ANSI mode, implicit casting to a `TypeCollection` returns the narrowest convertible data type instead of the first convertible one.

### How was this patch tested?

Unit tests.

Closes #31859 from gengliangwang/implicitCastTypeCollection.

Lead-authored-by: Gengliang Wang <gengliang.wang@databricks.com>
Co-authored-by: Gengliang Wang <ltnwgl@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2021-03-24 15:04:03 +00:00
Tanel Kiis 84df54b495 [SPARK-34822][SQL] Update the plan stability golden files even if only the explain.txt changes
### What changes were proposed in this pull request?

Update the plan stability golden files even if only the `explain.txt` changes.

### Why are the changes needed?

Currently only `simplified.txt` change is checked. There are some PRs, that update the `explain.txt`, that do not change the `simplified.txt`.

### Does this PR introduce _any_ user-facing change?

No

### How was this patch tested?

The updated golden files.

Closes #31927 from tanelk/SPARK-34822_update_plan_stability.

Lead-authored-by: Tanel Kiis <tanel.kiis@gmail.com>
Co-authored-by: tanel.kiis@gmail.com <tanel.kiis@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2021-03-24 14:36:51 +00:00
Cheng Su 35c70e417d [SPARK-34853][SQL] Remove duplicated definition of output partitioning/ordering for limit operator
### What changes were proposed in this pull request?

Both local limit and global limit define the output partitioning and output ordering in the same way and this is duplicated (https://github.com/apache/spark/blob/master/sql/core/src/main/scala/org/apache/spark/sql/execution/limit.scala#L159-L175 ). We can move the output partitioning and ordering into their parent trait - `BaseLimitExec`. This is doable as `BaseLimitExec` has no more other child class. This is a minor code refactoring.

### Why are the changes needed?

Clean up the code a little bit. Better readability.

### Does this PR introduce _any_ user-facing change?

No.

### How was this patch tested?

Pure refactoring. Rely on existing unit tests.

Closes #31950 from c21/limit-cleanup.

Authored-by: Cheng Su <chengsu@fb.com>
Signed-off-by: Takeshi Yamamuro <yamamuro@apache.org>
2021-03-24 23:06:35 +09:00
yangjie01 712a62ca82 [SPARK-34832][SQL][TEST] Set EXECUTOR_ALLOW_SPARK_CONTEXT to true to ensure ExternalAppendOnlyUnsafeRowArrayBenchmark run successfully
### What changes were proposed in this pull request?
SPARK-32160 add a config(`EXECUTOR_ALLOW_SPARK_CONTEXT`) to switch allow/disallow to create `SparkContext` in executors and the default value of the config is `false`

`ExternalAppendOnlyUnsafeRowArrayBenchmark` will run fail when `EXECUTOR_ALLOW_SPARK_CONTEXT` use the default value because the `ExternalAppendOnlyUnsafeRowArrayBenchmark#withFakeTaskContext` method try to create a `SparkContext` manually in Executor Side.

So the main change of this pr is  set `EXECUTOR_ALLOW_SPARK_CONTEXT` to `true` to ensure `ExternalAppendOnlyUnsafeRowArrayBenchmark` run successfully.

### Why are the changes needed?
Bug fix.

### Does this PR introduce _any_ user-facing change?
No.

### How was this patch tested?
Manual test:
```
bin/spark-submit --class org.apache.spark.sql.execution.ExternalAppendOnlyUnsafeRowArrayBenchmark --jars spark-core_2.12-3.2.0-SNAPSHOT-tests.jar spark-sql_2.12-3.2.0-SNAPSHOT-tests.jar
```

**Before**
```
Exception in thread "main" java.lang.IllegalStateException: SparkContext should only be created and accessed on the driver.
	at org.apache.spark.SparkContext$.org$apache$spark$SparkContext$$assertOnDriver(SparkContext.scala:2679)
	at org.apache.spark.SparkContext.<init>(SparkContext.scala:89)
	at org.apache.spark.SparkContext.<init>(SparkContext.scala:137)
	at org.apache.spark.sql.execution.ExternalAppendOnlyUnsafeRowArrayBenchmark$.withFakeTaskContext(ExternalAppendOnlyUnsafeRowArrayBenchmark.scala:52)
	at org.apache.spark.sql.execution.ExternalAppendOnlyUnsafeRowArrayBenchmark$.testAgainstRawArrayBuffer(ExternalAppendOnlyUnsafeRowArrayBenchmark.scala:119)
	at org.apache.spark.sql.execution.ExternalAppendOnlyUnsafeRowArrayBenchmark$.$anonfun$runBenchmarkSuite$1(ExternalAppendOnlyUnsafeRowArrayBenchmark.scala:189)
	at scala.runtime.java8.JFunction0$mcV$sp.apply(JFunction0$mcV$sp.java:23)
	at org.apache.spark.benchmark.BenchmarkBase.runBenchmark(BenchmarkBase.scala:40)
	at org.apache.spark.sql.execution.ExternalAppendOnlyUnsafeRowArrayBenchmark$.runBenchmarkSuite(ExternalAppendOnlyUnsafeRowArrayBenchmark.scala:186)
	at org.apache.spark.benchmark.BenchmarkBase.main(BenchmarkBase.scala:58)
	at org.apache.spark.sql.execution.ExternalAppendOnlyUnsafeRowArrayBenchmark.main(ExternalAppendOnlyUnsafeRowArrayBenchmark.scala)
	at sun.reflect.NativeMethodAccessorImpl.invoke0(Native Method)
	at sun.reflect.NativeMethodAccessorImpl.invoke(NativeMethodAccessorImpl.java:62)
	at sun.reflect.DelegatingMethodAccessorImpl.invoke(DelegatingMethodAccessorImpl.java:43)
	at java.lang.reflect.Method.invoke(Method.java:498)
	at org.apache.spark.deploy.JavaMainApplication.start(SparkApplication.scala:52)
	at org.apache.spark.deploy.SparkSubmit.org$apache$spark$deploy$SparkSubmit$$runMain(SparkSubmit.scala:951)
	at org.apache.spark.deploy.SparkSubmit.doRunMain$1(SparkSubmit.scala:180)
	at org.apache.spark.deploy.SparkSubmit.submit(SparkSubmit.scala:203)
	at org.apache.spark.deploy.SparkSubmit.doSubmit(SparkSubmit.scala:90)
	at org.apache.spark.deploy.SparkSubmit$$anon$2.doSubmit(SparkSubmit.scala:1030)
	at org.apache.spark.deploy.SparkSubmit$.main(SparkSubmit.scala:1039)
	at org.apache.spark.deploy.SparkSubmit.main(SparkSubmit.scala)
```

**After**

`ExternalAppendOnlyUnsafeRowArrayBenchmark` run successfully.

Closes #31939 from LuciferYang/SPARK-34832.

Authored-by: yangjie01 <yangjie01@baidu.com>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
2021-03-24 14:59:31 +09:00
Kousuke Saruta f7e9b6efc7 [SPARK-34763][SQL] col(), $"<name>" and df("name") should handle quoted column names properly
### What changes were proposed in this pull request?

This PR fixes an issue that `col()`, `$"<name>"` and `df("name")` don't handle quoted column names  like ``` `a``b.c` ```properly.

For example, if we have a following DataFrame.
```
val df1 = spark.sql("SELECT 'col1' AS `a``b.c`")
```

For the DataFrame, this query is successfully executed.
```
scala> df1.selectExpr("`a``b.c`").show
+-----+
|a`b.c|
+-----+
| col1|
+-----+
```

But the following query will fail because ``` df1("`a``b.c`") ``` throws an exception.
```
scala> df1.select(df1("`a``b.c`")).show
org.apache.spark.sql.AnalysisException: syntax error in attribute name: `a``b.c`;
  at org.apache.spark.sql.catalyst.analysis.UnresolvedAttribute$.e$1(unresolved.scala:152)
  at org.apache.spark.sql.catalyst.analysis.UnresolvedAttribute$.parseAttributeName(unresolved.scala:162)
  at org.apache.spark.sql.catalyst.plans.logical.LogicalPlan.resolveQuoted(LogicalPlan.scala:121)
  at org.apache.spark.sql.Dataset.resolve(Dataset.scala:221)
  at org.apache.spark.sql.Dataset.col(Dataset.scala:1274)
  at org.apache.spark.sql.Dataset.apply(Dataset.scala:1241)
  ... 49 elided
```
### Why are the changes needed?

It's a bug.

### Does this PR introduce _any_ user-facing change?

No.

### How was this patch tested?

New tests.

Closes #31854 from sarutak/fix-parseAttributeName.

Authored-by: Kousuke Saruta <sarutak@oss.nttdata.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2021-03-24 13:34:10 +08:00
Takeshi Yamamuro 0494dc90af [SPARK-34842][SQL][TESTS] Corrects the type of date_dim.d_quarter_name in the TPCDS schema
### What changes were proposed in this pull request?

SPARK-34842 (#31012) has a typo in the type of `date_dim.d_quarter_name` in the TPCDS schema (`TPCDSBase`). This PR replace `CHAR(1)` with `CHAR(6)`. This fix comes from p28 in [the TPCDS official doc](http://www.tpc.org/tpc_documents_current_versions/pdf/tpc-ds_v2.9.0.pdf).

### Why are the changes needed?

Bugfix.

### Does this PR introduce _any_ user-facing change?

No.

### How was this patch tested?

N/A

Closes #31943 from maropu/SPARK-34083-FOLLOWUP.

Authored-by: Takeshi Yamamuro <yamamuro@apache.org>
Signed-off-by: Dongjoon Hyun <dhyun@apple.com>
2021-03-23 10:22:13 -07:00
Max Gekk 760556a42f [SPARK-34824][SQL] Support multiply an year-month interval by a numeric
### What changes were proposed in this pull request?
1. Add new expression `MultiplyYMInterval` which multiplies a `YearMonthIntervalType` expression by a `NumericType` expression including ByteType, ShortType, IntegerType, LongType, FloatType, DoubleType, DecimalType.
2. Extend binary arithmetic rules to support `numeric * year-month interval` and `year-month interval * numeric`.

### Why are the changes needed?
To conform the ANSI SQL standard which requires such operation over year-month intervals:
<img width="667" alt="Screenshot 2021-03-22 at 16 33 16" src="https://user-images.githubusercontent.com/1580697/111997810-77d1eb80-8b2c-11eb-951d-e43911d9c5db.png">

### Does this PR introduce _any_ user-facing change?
No

### How was this patch tested?
By running new tests:
```
$ build/sbt "test:testOnly *IntervalExpressionsSuite"
$ build/sbt "test:testOnly *ColumnExpressionSuite"
```

Closes #31929 from MaxGekk/interval-mul-div.

Authored-by: Max Gekk <max.gekk@gmail.com>
Signed-off-by: Max Gekk <max.gekk@gmail.com>
2021-03-23 19:40:15 +03:00
Wenchen Fan 3b70829b5b [SPARK-34719][SQL] Correctly resolve the view query with duplicated column names
forward-port https://github.com/apache/spark/pull/31811 to master

### What changes were proposed in this pull request?

For permanent views (and the new SQL temp view in Spark 3.1), we store the view SQL text and re-parse/analyze the view SQL text when reading the view. In the case of `SELECT * FROM ...`, we want to avoid view schema change (e.g. the referenced table changes its schema) and will record the view query output column names when creating the view, so that when reading the view we can add a `SELECT recorded_column_names FROM ...` to retain the original view query schema.

In Spark 3.1 and before, the final SELECT is added after the analysis phase: https://github.com/apache/spark/blob/branch-3.1/sql/catalyst/src/main/scala/org/apache/spark/sql/catalyst/analysis/view.scala#L67

If the view query has duplicated output column names, we always pick the first column when reading a view. A simple repro:
```
scala> sql("create view c(x, y) as select 1 a, 2 a")
res0: org.apache.spark.sql.DataFrame = []

scala> sql("select * from c").show
+---+---+
|  x|  y|
+---+---+
|  1|  1|
+---+---+
```

In the master branch, we will fail at the view reading time due to b891862fb6 , which adds the final SELECT during analysis, so that the query fails with `Reference 'a' is ambiguous`

This PR proposes to resolve the view query output column names from the matching attributes by ordinal.

For example,  `create view c(x, y) as select 1 a, 2 a`, the view query output column names are `[a, a]`. When we reading the view, there are 2 matching attributes (e.g.`[a#1, a#2]`) and we can simply match them by ordinal.

A negative example is
```
create table t(a int)
create view v as select *, 1 as col from t
replace table t(a int, col int)
```
When reading the view, the view query output column names are `[a, col]`, and there are two matching attributes of `col`, and we should fail the query. See the tests for details.

### Why are the changes needed?

bug fix

### Does this PR introduce _any_ user-facing change?

yes

### How was this patch tested?

new test

Closes #31930 from cloud-fan/view2.

Authored-by: Wenchen Fan <wenchen@databricks.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2021-03-23 14:34:51 +00:00
Liang-Chi Hsieh 115ed89a3c [SPARK-34366][SQL] Add interface for DS v2 metrics
### What changes were proposed in this pull request?

This patch proposes to add a few public API change to DS v2, to make DS v2 scan can report metrics to Spark.

Two public interfaces are added.

* `CustomMetric`: metric interface at the driver side. It basically defines how Spark aggregates task metrics with the same metric name.
* `CustomTaskMetric`: task metric reported at executors. It includes a name and long value. Spark will collect these metric values and update internal metrics.

There are two public methods added to existing public interfaces. They are optional to DS v2 implementations.

* `PartitionReader.currentMetricsValues()`: returns an array of CustomTaskMetric. Here is where the actual metrics values are collected. Empty array by default.
* `Scan.supportedCustomMetrics()`: returns an array of supported custom metrics `CustomMetric`. Empty array by default.

### Why are the changes needed?

In order to report custom metrics, we need some public API change in DS v2 to make it possible.

### Does this PR introduce _any_ user-facing change?

No

### How was this patch tested?

This only adds interfaces. In follow-up PRs where adding implementation there will be tests added. See #31451 and #31398 for some details and manual test there.

Closes #31476 from viirya/SPARK-34366.

Authored-by: Liang-Chi Hsieh <viirya@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2021-03-23 13:22:37 +00:00
Peter Toth 93a5d34f84 [SPARK-33482][SPARK-34756][SQL] Fix FileScan equality check
### What changes were proposed in this pull request?

This bug was introduced by SPARK-30428 at Apache Spark 3.0.0.
This PR fixes `FileScan.equals()`.

### Why are the changes needed?
- Without this fix `FileScan.equals` doesn't take `fileIndex` and `readSchema` into account.
- Partition filters and data filters added to `FileScan` (in #27112 and #27157) caused that canonicalized form of some `BatchScanExec` nodes don't match and this prevents some reuse possibilities.

### Does this PR introduce _any_ user-facing change?
Yes, before this fix incorrect reuse of `FileScan` and so `BatchScanExec` could have happed causing correctness issues.

### How was this patch tested?
Added new UTs.

Closes #31848 from peter-toth/SPARK-34756-fix-filescan-equality-check.

Authored-by: Peter Toth <peter.toth@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2021-03-23 17:01:16 +08:00
yi.wu e00afd31a7 [SPARK-34087][FOLLOW-UP][SQL] Manage ExecutionListenerBus register inside itself
### What changes were proposed in this pull request?

Move `ExecutionListenerBus` register (both `ListenerBus` and `ContextCleaner` register) into  itself.

Also with a minor change that put `registerSparkListenerForCleanup` to a better place.

### Why are the changes needed?

improve code

### Does this PR introduce _any_ user-facing change?

No.

### How was this patch tested?

Pass existing tests.

Closes #31919 from Ngone51/SPARK-34087-followup.

Authored-by: yi.wu <yi.wu@databricks.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2021-03-23 07:38:43 +00:00
linzebing e768eaa908 [SPARK-34707][SQL] Code-gen broadcast nested loop join (left outer/right outer)
### What changes were proposed in this pull request?

This PR is to add code-gen support for left outer (build right) and right outer (build left). Reference: `BroadcastNestedLoopJoinExec.codegenInner()` and `BroadcastNestedLoopJoinExec.outerJoin()`

### Why are the changes needed?

Improve query CPU performance.
Tested with a simple query:
```scala
val N = 20 << 20
val M = 1 << 4

val dim = broadcast(spark.range(M).selectExpr("id as k2"))
codegenBenchmark("left outer broadcast nested loop join", N) {
   val df = spark.range(N).selectExpr(s"id as k1").join(
     dim, col("k1") + 1 <= col("k2"), "left_outer")
   assert(df.queryExecution.sparkPlan.find(
     _.isInstanceOf[BroadcastNestedLoopJoinExec]).isDefined)
   df.noop()
}
```
Seeing 2x run time improvement:
```
Java HotSpot(TM) 64-Bit Server VM 1.8.0_181-b13 on Mac OS X 10.15.7
Intel(R) Core(TM) i9-9980HK CPU  2.40GHz
left outer broadcast nested loop join:                Best Time(ms)   Avg Time(ms)   Stdev(ms)    Rate(M/s)   Per Row(ns)   Relative
------------------------------------------------------------------------------------------------------------------------------------
left outer broadcast nested loop join wholestage off           3024           3698         953          6.9         144.2       1.0X
left outer broadcast nested loop join wholestage on            1512           1659         172         13.9          72.1       2.0X
```

### Does this PR introduce _any_ user-facing change?

No

### How was this patch tested?

Changed existing unit tests in `OuterJoinSuite` to cover codegen use cases.
Added unit test in WholeStageCodegenSuite.scala to make sure code-gen for broadcast nested loop join is taking effect, and test for multiple join case as well.

Example query:
```scala
val df1 = spark.range(4).select($"id".as("k1"))
val df2 = spark.range(3).select($"id".as("k2"))
df1.join(df2, $"k1" + 1 <= $"k2", "left_outer").explain("codegen")
```
Example generated code (`bnlj_doConsume_0` method):
```java
== Subtree 2 / 2 (maxMethodCodeSize:282; maxConstantPoolSize:210(0.32% used); numInnerClasses:0) ==
*(2) BroadcastNestedLoopJoin BuildRight, LeftOuter, ((k1#2L + 1) <= k2#6L)
:- *(2) Project [id#0L AS k1#2L]
:  +- *(2) Range (0, 4, step=1, splits=16)
+- BroadcastExchange IdentityBroadcastMode, [id=#22]
   +- *(1) Project [id#4L AS k2#6L]
      +- *(1) Range (0, 3, step=1, splits=16)

Generated code:
/* 001 */ public Object generate(Object[] references) {
/* 002 */   return new GeneratedIteratorForCodegenStage2(references);
/* 003 */ }
/* 004 */
/* 005 */ // codegenStageId=2
/* 006 */ final class GeneratedIteratorForCodegenStage2 extends org.apache.spark.sql.execution.BufferedRowIterator {
/* 007 */   private Object[] references;
/* 008 */   private scala.collection.Iterator[] inputs;
/* 009 */   private boolean range_initRange_0;
/* 010 */   private long range_nextIndex_0;
/* 011 */   private TaskContext range_taskContext_0;
/* 012 */   private InputMetrics range_inputMetrics_0;
/* 013 */   private long range_batchEnd_0;
/* 014 */   private long range_numElementsTodo_0;
/* 015 */   private InternalRow[] bnlj_buildRowArray_0;
/* 016 */   private org.apache.spark.sql.catalyst.expressions.codegen.UnsafeRowWriter[] range_mutableStateArray_0 = new org.apache.spark.sql.catalyst.expressions.codegen.UnsafeRowWriter[4];
/* 017 */
/* 018 */   public GeneratedIteratorForCodegenStage2(Object[] references) {
/* 019 */     this.references = references;
/* 020 */   }
/* 021 */
/* 022 */   public void init(int index, scala.collection.Iterator[] inputs) {
/* 023 */     partitionIndex = index;
/* 024 */     this.inputs = inputs;
/* 025 */
/* 026 */     range_taskContext_0 = TaskContext.get();
/* 027 */     range_inputMetrics_0 = range_taskContext_0.taskMetrics().inputMetrics();
/* 028 */     range_mutableStateArray_0[0] = new org.apache.spark.sql.catalyst.expressions.codegen.UnsafeRowWriter(1, 0);
/* 029 */     range_mutableStateArray_0[1] = new org.apache.spark.sql.catalyst.expressions.codegen.UnsafeRowWriter(1, 0);
/* 030 */     range_mutableStateArray_0[2] = new org.apache.spark.sql.catalyst.expressions.codegen.UnsafeRowWriter(1, 0);
/* 031 */     bnlj_buildRowArray_0 = (InternalRow[]) ((org.apache.spark.broadcast.TorrentBroadcast) references[1] /* broadcastTerm */).value();
/* 032 */     range_mutableStateArray_0[3] = new org.apache.spark.sql.catalyst.expressions.codegen.UnsafeRowWriter(2, 0);
/* 033 */
/* 034 */   }
/* 035 */
/* 036 */   private void bnlj_doConsume_0(long bnlj_expr_0_0) throws java.io.IOException {
/* 037 */     boolean bnlj_foundMatch_0 = false;
/* 038 */     for (int bnlj_arrayIndex_0 = 0; bnlj_arrayIndex_0 < bnlj_buildRowArray_0.length; bnlj_arrayIndex_0++) {
/* 039 */       UnsafeRow bnlj_buildRow_0 = (UnsafeRow) bnlj_buildRowArray_0[bnlj_arrayIndex_0];
/* 040 */       boolean bnlj_shouldOutputRow_0 = false;
/* 041 */
/* 042 */       boolean bnlj_isNull_2 = true;
/* 043 */       long bnlj_value_2 = -1L;
/* 044 */       if (bnlj_buildRow_0 != null) {
/* 045 */         long bnlj_value_1 = bnlj_buildRow_0.getLong(0);
/* 046 */         bnlj_isNull_2 = false;
/* 047 */         bnlj_value_2 = bnlj_value_1;
/* 048 */       }
/* 049 */
/* 050 */       long bnlj_value_4 = -1L;
/* 051 */
/* 052 */       bnlj_value_4 = bnlj_expr_0_0 + 1L;
/* 053 */
/* 054 */       boolean bnlj_value_3 = false;
/* 055 */       bnlj_value_3 = bnlj_value_4 <= bnlj_value_2;
/* 056 */       if (!(false || !bnlj_value_3))
/* 057 */       {
/* 058 */         bnlj_shouldOutputRow_0 = true;
/* 059 */         bnlj_foundMatch_0 = true;
/* 060 */       }
/* 061 */       if (bnlj_arrayIndex_0 == bnlj_buildRowArray_0.length - 1 && !bnlj_foundMatch_0) {
/* 062 */         bnlj_buildRow_0 = null;
/* 063 */         bnlj_shouldOutputRow_0 = true;
/* 064 */       }
/* 065 */       if (bnlj_shouldOutputRow_0) {
/* 066 */         ((org.apache.spark.sql.execution.metric.SQLMetric) references[2] /* numOutputRows */).add(1);
/* 067 */
/* 068 */         boolean bnlj_isNull_9 = true;
/* 069 */         long bnlj_value_9 = -1L;
/* 070 */         if (bnlj_buildRow_0 != null) {
/* 071 */           long bnlj_value_8 = bnlj_buildRow_0.getLong(0);
/* 072 */           bnlj_isNull_9 = false;
/* 073 */           bnlj_value_9 = bnlj_value_8;
/* 074 */         }
/* 075 */         range_mutableStateArray_0[3].reset();
/* 076 */
/* 077 */         range_mutableStateArray_0[3].zeroOutNullBytes();
/* 078 */
/* 079 */         range_mutableStateArray_0[3].write(0, bnlj_expr_0_0);
/* 080 */
/* 081 */         if (bnlj_isNull_9) {
/* 082 */           range_mutableStateArray_0[3].setNullAt(1);
/* 083 */         } else {
/* 084 */           range_mutableStateArray_0[3].write(1, bnlj_value_9);
/* 085 */         }
/* 086 */         append((range_mutableStateArray_0[3].getRow()).copy());
/* 087 */
/* 088 */       }
/* 089 */     }
/* 090 */
/* 091 */   }
/* 092 */
/* 093 */   private void initRange(int idx) {
/* 094 */     java.math.BigInteger index = java.math.BigInteger.valueOf(idx);
/* 095 */     java.math.BigInteger numSlice = java.math.BigInteger.valueOf(16L);
/* 096 */     java.math.BigInteger numElement = java.math.BigInteger.valueOf(4L);
/* 097 */     java.math.BigInteger step = java.math.BigInteger.valueOf(1L);
/* 098 */     java.math.BigInteger start = java.math.BigInteger.valueOf(0L);
/* 099 */     long partitionEnd;
/* 100 */
/* 101 */     java.math.BigInteger st = index.multiply(numElement).divide(numSlice).multiply(step).add(start);
/* 102 */     if (st.compareTo(java.math.BigInteger.valueOf(Long.MAX_VALUE)) > 0) {
/* 103 */       range_nextIndex_0 = Long.MAX_VALUE;
/* 104 */     } else if (st.compareTo(java.math.BigInteger.valueOf(Long.MIN_VALUE)) < 0) {
/* 105 */       range_nextIndex_0 = Long.MIN_VALUE;
/* 106 */     } else {
/* 107 */       range_nextIndex_0 = st.longValue();
/* 108 */     }
/* 109 */     range_batchEnd_0 = range_nextIndex_0;
/* 110 */
/* 111 */     java.math.BigInteger end = index.add(java.math.BigInteger.ONE).multiply(numElement).divide(numSlice)
/* 112 */     .multiply(step).add(start);
/* 113 */     if (end.compareTo(java.math.BigInteger.valueOf(Long.MAX_VALUE)) > 0) {
/* 114 */       partitionEnd = Long.MAX_VALUE;
/* 115 */     } else if (end.compareTo(java.math.BigInteger.valueOf(Long.MIN_VALUE)) < 0) {
/* 116 */       partitionEnd = Long.MIN_VALUE;
/* 117 */     } else {
/* 118 */       partitionEnd = end.longValue();
/* 119 */     }
/* 120 */
/* 121 */     java.math.BigInteger startToEnd = java.math.BigInteger.valueOf(partitionEnd).subtract(
/* 122 */       java.math.BigInteger.valueOf(range_nextIndex_0));
/* 123 */     range_numElementsTodo_0  = startToEnd.divide(step).longValue();
/* 124 */     if (range_numElementsTodo_0 < 0) {
/* 125 */       range_numElementsTodo_0 = 0;
/* 126 */     } else if (startToEnd.remainder(step).compareTo(java.math.BigInteger.valueOf(0L)) != 0) {
/* 127 */       range_numElementsTodo_0++;
/* 128 */     }
/* 129 */   }
/* 130 */
/* 131 */   protected void processNext() throws java.io.IOException {
/* 132 */     // initialize Range
/* 133 */     if (!range_initRange_0) {
/* 134 */       range_initRange_0 = true;
/* 135 */       initRange(partitionIndex);
/* 136 */     }
/* 137 */
/* 138 */     while (true) {
/* 139 */       if (range_nextIndex_0 == range_batchEnd_0) {
/* 140 */         long range_nextBatchTodo_0;
/* 141 */         if (range_numElementsTodo_0 > 1000L) {
/* 142 */           range_nextBatchTodo_0 = 1000L;
/* 143 */           range_numElementsTodo_0 -= 1000L;
/* 144 */         } else {
/* 145 */           range_nextBatchTodo_0 = range_numElementsTodo_0;
/* 146 */           range_numElementsTodo_0 = 0;
/* 147 */           if (range_nextBatchTodo_0 == 0) break;
/* 148 */         }
/* 149 */         range_batchEnd_0 += range_nextBatchTodo_0 * 1L;
/* 150 */       }
/* 151 */
/* 152 */       int range_localEnd_0 = (int)((range_batchEnd_0 - range_nextIndex_0) / 1L);
/* 153 */       for (int range_localIdx_0 = 0; range_localIdx_0 < range_localEnd_0; range_localIdx_0++) {
/* 154 */         long range_value_0 = ((long)range_localIdx_0 * 1L) + range_nextIndex_0;
/* 155 */
/* 156 */         // common sub-expressions
/* 157 */
/* 158 */         bnlj_doConsume_0(range_value_0);
/* 159 */
/* 160 */         if (shouldStop()) {
/* 161 */           range_nextIndex_0 = range_value_0 + 1L;
/* 162 */           ((org.apache.spark.sql.execution.metric.SQLMetric) references[0] /* numOutputRows */).add(range_localIdx_0 + 1);
/* 163 */           range_inputMetrics_0.incRecordsRead(range_localIdx_0 + 1);
/* 164 */           return;
/* 165 */         }
/* 166 */
/* 167 */       }
/* 168 */       range_nextIndex_0 = range_batchEnd_0;
/* 169 */       ((org.apache.spark.sql.execution.metric.SQLMetric) references[0] /* numOutputRows */).add(range_localEnd_0);
/* 170 */       range_inputMetrics_0.incRecordsRead(range_localEnd_0);
/* 171 */       range_taskContext_0.killTaskIfInterrupted();
/* 172 */     }
/* 173 */   }
/* 174 */
/* 175 */ }
```

Closes #31931 from linzebing/code-left-right-outer.

Authored-by: linzebing <linzebing1995@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2021-03-23 07:11:57 +00:00
hezuojiao 39542bb81f [SPARK-34790][CORE] Disable fetching shuffle blocks in batch when io encryption is enabled
### What changes were proposed in this pull request?

This patch proposes to disable fetching shuffle blocks in batch when io encryption is enabled. Adaptive Query Execution fetch contiguous shuffle blocks for the same map task in batch to reduce IO and improve performance. However, we found that batch fetching is incompatible with io encryption.

### Why are the changes needed?
Before this patch, we set `spark.io.encryption.enabled` to true, then run some queries which coalesced partitions by AEQ, may got following error message:
```14:05:52.638 WARN org.apache.spark.scheduler.TaskSetManager: Lost task 1.0 in stage 2.0 (TID 3) (11.240.37.88 executor driver): FetchFailed(BlockManagerId(driver, 11.240.37.88, 63574, None), shuffleId=0, mapIndex=0, mapId=0, reduceId=2, message=
org.apache.spark.shuffle.FetchFailedException: Stream is corrupted
	at org.apache.spark.storage.ShuffleBlockFetcherIterator.throwFetchFailedException(ShuffleBlockFetcherIterator.scala:772)
	at org.apache.spark.storage.BufferReleasingInputStream.read(ShuffleBlockFetcherIterator.scala:845)
	at java.io.BufferedInputStream.fill(BufferedInputStream.java:246)
	at java.io.BufferedInputStream.read(BufferedInputStream.java:265)
	at java.io.DataInputStream.readInt(DataInputStream.java:387)
	at org.apache.spark.sql.execution.UnsafeRowSerializerInstance$$anon$2$$anon$3.readSize(UnsafeRowSerializer.scala:113)
	at org.apache.spark.sql.execution.UnsafeRowSerializerInstance$$anon$2$$anon$3.next(UnsafeRowSerializer.scala:129)
	at org.apache.spark.sql.execution.UnsafeRowSerializerInstance$$anon$2$$anon$3.next(UnsafeRowSerializer.scala:110)
	at scala.collection.Iterator$$anon$11.next(Iterator.scala:494)
	at scala.collection.Iterator$$anon$10.next(Iterator.scala:459)
	at org.apache.spark.util.CompletionIterator.next(CompletionIterator.scala:29)
	at org.apache.spark.InterruptibleIterator.next(InterruptibleIterator.scala:40)
	at scala.collection.Iterator$$anon$10.next(Iterator.scala:459)
	at org.apache.spark.sql.execution.SparkPlan.$anonfun$getByteArrayRdd$1(SparkPlan.scala:345)
	at org.apache.spark.rdd.RDD.$anonfun$mapPartitionsInternal$2(RDD.scala:898)
	at org.apache.spark.rdd.RDD.$anonfun$mapPartitionsInternal$2$adapted(RDD.scala:898)
	at org.apache.spark.rdd.MapPartitionsRDD.compute(MapPartitionsRDD.scala:52)
	at org.apache.spark.rdd.RDD.computeOrReadCheckpoint(RDD.scala:373)
	at org.apache.spark.rdd.RDD.iterator(RDD.scala:337)
	at org.apache.spark.scheduler.ResultTask.runTask(ResultTask.scala:90)
	at org.apache.spark.scheduler.Task.run(Task.scala:131)
	at org.apache.spark.executor.Executor$TaskRunner.$anonfun$run$3(Executor.scala:498)
	at org.apache.spark.util.Utils$.tryWithSafeFinally(Utils.scala:1437)
	at org.apache.spark.executor.Executor$TaskRunner.run(Executor.scala:501)
	at java.util.concurrent.ThreadPoolExecutor.runWorker(ThreadPoolExecutor.java:1149)
	at java.util.concurrent.ThreadPoolExecutor$Worker.run(ThreadPoolExecutor.java:624)
	at java.lang.Thread.run(Thread.java:748)
Caused by: java.io.IOException: Stream is corrupted
	at net.jpountz.lz4.LZ4BlockInputStream.refill(LZ4BlockInputStream.java:200)
	at net.jpountz.lz4.LZ4BlockInputStream.refill(LZ4BlockInputStream.java:226)
	at net.jpountz.lz4.LZ4BlockInputStream.read(LZ4BlockInputStream.java:157)
	at org.apache.spark.storage.BufferReleasingInputStream.read(ShuffleBlockFetcherIterator.scala:841)
	... 25 more

)
```

### Does this PR introduce any user-facing change?

No

### How was this patch tested?

New tests.

Closes #31898 from hezuojiao/fetch_shuffle_in_batch.

Authored-by: hezuojiao <hezuojiao@gmail.com>
Signed-off-by: Dongjoon Hyun <dhyun@apple.com>
2021-03-22 13:06:12 -07:00
tanel.kiis@gmail.com 51cf0cadea [SPARK-34812][SQL] RowNumberLike and RankLike should not be nullable
### What changes were proposed in this pull request?

Marked `RowNumberLike` and `RankLike` as not-nullable.

### Why are the changes needed?

`RowNumberLike` and `RankLike` SQL expressions never return null value. Marking them as non-nullable can have some performance benefits, because some optimizer rules apply only to non-nullable expressions

### Does this PR introduce _any_ user-facing change?

No

### How was this patch tested?

Did not find any existing tests on the nullability of aggregate functions.
Plan stability suite partially covers this.

Closes #31924 from tanelk/SPARK-34812_nullability.

Authored-by: tanel.kiis@gmail.com <tanel.kiis@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2021-03-22 14:55:43 +00:00
woyumen4597 f44608a8c0 [SPARK-34800][SQL] Use fine-grained lock in SessionCatalog.tableExists
### What changes were proposed in this pull request?
Use fine-grained lock in SessionCatalog.tableExists, in order to lock currentDB variable rather than lock `tableExists` method which will block inner external catalog's behaviour.

### Why are the changes needed?
We have modified the underlying hive meta store which a different hive  database is placed in its own shard for performance. However, we found that the synchronized lock  limits the concurrency.

### How was this patch tested?
Existing tests.

Closes #31891 from woyumen4597/SPARK-34800.

Authored-by: woyumen4597 <woyumen4597@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2021-03-22 09:03:46 +00:00
Terry Kim 7953fcdb56 [SPARK-34700][SQL] SessionCatalog's temporary view related APIs should take/return more concrete types
### What changes were proposed in this pull request?

Now that all the temporary views are wrapped with `TemporaryViewRelation`(#31273, #31652, and #31825), this PR proposes to update `SessionCatalog`'s APIs for temporary views to take or return more concrete types.

APIs that will take `TemporaryViewRelation` instead of `LogicalPlan`:
```
createTempView, createGlobalTempView, alterTempViewDefinition
```

APIs that will return `TemporaryViewRelation` instead of `LogicalPlan`:
```
getRawTempView, getRawGlobalTempView
```

APIs that will return `View` instead of `LogicalPlan`:
```
getTempView, getGlobalTempView, lookupTempView
```

### Why are the changes needed?

Internal refactoring to work with more concrete types.

### Does this PR introduce _any_ user-facing change?

No, this is internal refactoring.

### How was this patch tested?

Updated existing tests affected by the refactoring.

Closes #31906 from imback82/use_temporary_view_relation.

Authored-by: Terry Kim <yuminkim@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2021-03-22 08:17:54 +00:00