## What changes were proposed in this pull request?
I propose new levels of truncations for the `date_trunc()` and `trunc()` functions:
1. `MICROSECOND` and `MILLISECOND` truncate values of the `TIMESTAMP` type to microsecond and millisecond precision.
2. `DECADE`, `CENTURY` and `MILLENNIUM` truncate dates/timestamps to lowest date of current decade/century/millennium.
Also the `WEEK` and `QUARTER` levels have been supported by the `trunc()` function.
The function is implemented similarly to `date_trunc` in PostgreSQL: https://www.postgresql.org/docs/11/functions-datetime.html#FUNCTIONS-DATETIME-TRUNC to maintain feature parity with it.
Here are examples of `TRUNC`:
```sql
spark-sql> SELECT TRUNC('2015-10-27', 'DECADE');
2010-01-01
spark-sql> set spark.sql.datetime.java8API.enabled=true;
spark.sql.datetime.java8API.enabled true
spark-sql> SELECT TRUNC('1999-10-27', 'millennium');
1001-01-01
```
Examples of `DATE_TRUNC`:
```sql
spark-sql> SELECT DATE_TRUNC('CENTURY', '2015-03-05T09:32:05.123456');
2001-01-01T00:00:00Z
```
## How was this patch tested?
Added new tests to `DateTimeUtilsSuite`, `DateExpressionsSuite` and `DateFunctionsSuite`, and uncommented existing tests in `pgSQL/date.sql`.
Closes#25336 from MaxGekk/date_truct-ext.
Authored-by: Maxim Gekk <max.gekk@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
## What changes were proposed in this pull request?
Adds checks around:
- The existence of transforms in the table schema (even in nested fields)
- Duplications of transforms
- Case sensitivity checks around column names
in the V2 table creation code paths.
## How was this patch tested?
Unit tests.
Closes#25305 from brkyvz/v2CreateTable.
Authored-by: Burak Yavuz <brkyvz@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
## What changes were proposed in this pull request?
Plans after "Extract Python UDFs" are very flaky and error-prone to other rules.
For instance, if we add some rules, for instance, `PushDownPredicates` in `postHocOptimizationBatches`, the test in `BatchEvalPythonExecSuite` fails:
```scala
test("Python UDF refers to the attributes from more than one child") {
val df = Seq(("Hello", 4)).toDF("a", "b")
val df2 = Seq(("Hello", 4)).toDF("c", "d")
val joinDF = df.crossJoin(df2).where("dummyPythonUDF(a, c) == dummyPythonUDF(d, c)")
val qualifiedPlanNodes = joinDF.queryExecution.executedPlan.collect {
case b: BatchEvalPythonExec => b
}
assert(qualifiedPlanNodes.size == 1)
}
```
```
Invalid PythonUDF dummyUDF(a#63, c#74), requires attributes from more than one child.
```
This is because Python UDF extraction optimization is rolled back as below:
```
=== Applying Rule org.apache.spark.sql.catalyst.optimizer.PushDownPredicates ===
!Filter (dummyUDF(a#7, c#18) = dummyUDF(d#19, c#18)) Join Cross, (dummyUDF(a#7, c#18) = dummyUDF(d#19, c#18))
!+- Join Cross :- Project [_1#2 AS a#7, _2#3 AS b#8]
! :- Project [_1#2 AS a#7, _2#3 AS b#8] : +- LocalRelation [_1#2, _2#3]
! : +- LocalRelation [_1#2, _2#3] +- Project [_1#13 AS c#18, _2#14 AS d#19]
! +- Project [_1#13 AS c#18, _2#14 AS d#19] +- LocalRelation [_1#13, _2#14]
! +- LocalRelation [_1#13, _2#14]
```
Seems we should do Python UDFs cases at the last even after post hoc rules.
Note that this actually rather follows the way in previous versions when those were in physical plans (see SPARK-24721 and SPARK-12981). Those optimization rules were supposed to be placed at the end.
Note that I intentionally didn't move `ExperimentalMethods` (`spark.experimental.extraStrategies`). This is an explicit experimental API and I wanted to just-in-case workaround after this change for now.
## How was this patch tested?
Existing tests should cover.
Closes#25386 from HyukjinKwon/SPARK-28654.
Authored-by: HyukjinKwon <gurwls223@apache.org>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
## What changes were proposed in this pull request?
This PR port [HIVE-10646](https://issues.apache.org/jira/browse/HIVE-10646) to fix Hive 0.12's JDBC client can not handle `NULL_TYPE`:
```sql
Connected to: Hive (version 3.0.0-SNAPSHOT)
Driver: Hive (version 0.12.0)
Transaction isolation: TRANSACTION_REPEATABLE_READ
Beeline version 0.12.0 by Apache Hive
0: jdbc:hive2://localhost:10000> select null;
org.apache.thrift.transport.TTransportException
at org.apache.thrift.transport.TIOStreamTransport.read(TIOStreamTransport.java:132)
at org.apache.thrift.transport.TTransport.readAll(TTransport.java:84)
at org.apache.thrift.transport.TSaslTransport.readLength(TSaslTransport.java:346)
at org.apache.thrift.transport.TSaslTransport.readFrame(TSaslTransport.java:423)
at org.apache.thrift.transport.TSaslTransport.read(TSaslTransport.java:405)
```
Server log:
```
19/08/07 09:34:07 ERROR TThreadPoolServer: Error occurred during processing of message.
java.lang.NullPointerException
at org.apache.hive.service.cli.thrift.TRow$TRowStandardScheme.write(TRow.java:388)
at org.apache.hive.service.cli.thrift.TRow$TRowStandardScheme.write(TRow.java:338)
at org.apache.hive.service.cli.thrift.TRow.write(TRow.java:288)
at org.apache.hive.service.cli.thrift.TRowSet$TRowSetStandardScheme.write(TRowSet.java:605)
at org.apache.hive.service.cli.thrift.TRowSet$TRowSetStandardScheme.write(TRowSet.java:525)
at org.apache.hive.service.cli.thrift.TRowSet.write(TRowSet.java:455)
at org.apache.hive.service.cli.thrift.TFetchResultsResp$TFetchResultsRespStandardScheme.write(TFetchResultsResp.java:550)
at org.apache.hive.service.cli.thrift.TFetchResultsResp$TFetchResultsRespStandardScheme.write(TFetchResultsResp.java:486)
at org.apache.hive.service.cli.thrift.TFetchResultsResp.write(TFetchResultsResp.java:412)
at org.apache.hive.service.cli.thrift.TCLIService$FetchResults_result$FetchResults_resultStandardScheme.write(TCLIService.java:13192)
at org.apache.hive.service.cli.thrift.TCLIService$FetchResults_result$FetchResults_resultStandardScheme.write(TCLIService.java:13156)
at org.apache.hive.service.cli.thrift.TCLIService$FetchResults_result.write(TCLIService.java:13107)
at org.apache.thrift.ProcessFunction.process(ProcessFunction.java:58)
at org.apache.thrift.TBaseProcessor.process(TBaseProcessor.java:39)
at org.apache.hive.service.auth.TSetIpAddressProcessor.process(TSetIpAddressProcessor.java:53)
at org.apache.thrift.server.TThreadPoolServer$WorkerProcess.run(TThreadPoolServer.java:310)
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:819)
```
## How was this patch tested?
unit tests
Closes#25378 from wangyum/SPARK-28644.
Authored-by: Yuming Wang <yumwang@ebay.com>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
## What changes were proposed in this pull request?
This PR fix Hive 0.12 JDBC client can not handle binary type:
```sql
Connected to: Hive (version 3.0.0-SNAPSHOT)
Driver: Hive (version 0.12.0)
Transaction isolation: TRANSACTION_REPEATABLE_READ
Beeline version 0.12.0 by Apache Hive
0: jdbc:hive2://localhost:10000> SELECT cast('ABC' as binary);
Error: java.lang.ClassCastException: [B incompatible with java.lang.String (state=,code=0)
```
Server log:
```
19/08/07 10:10:04 WARN ThriftCLIService: Error fetching results:
java.lang.RuntimeException: java.lang.ClassCastException: [B incompatible with java.lang.String
at org.apache.hive.service.cli.session.HiveSessionProxy.invoke(HiveSessionProxy.java:83)
at org.apache.hive.service.cli.session.HiveSessionProxy.access$000(HiveSessionProxy.java:36)
at org.apache.hive.service.cli.session.HiveSessionProxy$1.run(HiveSessionProxy.java:63)
at java.security.AccessController.doPrivileged(AccessController.java:770)
at javax.security.auth.Subject.doAs(Subject.java:422)
at org.apache.hadoop.security.UserGroupInformation.doAs(UserGroupInformation.java:1746)
at org.apache.hive.service.cli.session.HiveSessionProxy.invoke(HiveSessionProxy.java:59)
at com.sun.proxy.$Proxy26.fetchResults(Unknown Source)
at org.apache.hive.service.cli.CLIService.fetchResults(CLIService.java:455)
at org.apache.hive.service.cli.thrift.ThriftCLIService.FetchResults(ThriftCLIService.java:621)
at org.apache.hive.service.cli.thrift.TCLIService$Processor$FetchResults.getResult(TCLIService.java:1553)
at org.apache.hive.service.cli.thrift.TCLIService$Processor$FetchResults.getResult(TCLIService.java:1538)
at org.apache.thrift.ProcessFunction.process(ProcessFunction.java:38)
at org.apache.thrift.TBaseProcessor.process(TBaseProcessor.java:39)
at org.apache.hive.service.auth.TSetIpAddressProcessor.process(TSetIpAddressProcessor.java:53)
at org.apache.thrift.server.TThreadPoolServer$WorkerProcess.run(TThreadPoolServer.java:310)
at java.util.concurrent.ThreadPoolExecutor.runWorker(ThreadPoolExecutor.java:1149)
at java.util.concurrent.ThreadPoolExecutor$Worker.run(ThreadPoolExecutor.java:624)
at java.lang.Thread.run(Thread.java:819)
Caused by: java.lang.ClassCastException: [B incompatible with java.lang.String
at org.apache.hive.service.cli.ColumnValue.toTColumnValue(ColumnValue.java:198)
at org.apache.hive.service.cli.RowBasedSet.addRow(RowBasedSet.java:60)
at org.apache.hive.service.cli.RowBasedSet.addRow(RowBasedSet.java:32)
at org.apache.spark.sql.hive.thriftserver.SparkExecuteStatementOperation.$anonfun$getNextRowSet$1(SparkExecuteStatementOperation.scala:151)
at org.apache.spark.sql.hive.thriftserver.SparkExecuteStatementOperation$$Lambda$1923.000000009113BFE0.apply(Unknown Source)
at org.apache.spark.sql.hive.thriftserver.SparkExecuteStatementOperation.withSchedulerPool(SparkExecuteStatementOperation.scala:299)
at org.apache.spark.sql.hive.thriftserver.SparkExecuteStatementOperation.getNextRowSet(SparkExecuteStatementOperation.scala:113)
at org.apache.hive.service.cli.operation.OperationManager.getOperationNextRowSet(OperationManager.java:220)
at org.apache.hive.service.cli.session.HiveSessionImpl.fetchResults(HiveSessionImpl.java:785)
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.hive.service.cli.session.HiveSessionProxy.invoke(HiveSessionProxy.java:78)
... 18 more
```
## How was this patch tested?
unit tests
Closes#25379 from wangyum/SPARK-28474.
Authored-by: Yuming Wang <yumwang@ebay.com>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
## What changes were proposed in this pull request?
Fix the typo in java doc.
## How was this patch tested?
N/A
Signed-off-by: Yishuang Lu <luystugmail.com>
Closes#25377 from lys0716/dev.
Authored-by: Yishuang Lu <luystu@gmail.com>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
## What changes were proposed in this pull request?
This PR makes `spark.sql.function.preferIntegralDivision` to internal configuration because it is only used for PostgreSQL test cases.
More details:
https://github.com/apache/spark/pull/25158#discussion_r309764541
## How was this patch tested?
N/A
Closes#25376 from wangyum/SPARK-28395-2.
Authored-by: Yuming Wang <yumwang@ebay.com>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
## What changes were proposed in this pull request?
If you build Spark distributions you potentially end up with a `python/.eggs` directory in your working copy which is not currently ignored by Spark's `.gitignore` file. Since these are transient build artifacts there is no reason to ever commit these to Git so this should be placed in the `.gitignore` list
## How was this patch tested?
Verified the offending artifacts were no longer reported as untracked content by Git
Closes#25380 from rvesse/patch-1.
Authored-by: Rob Vesse <rvesse@dotnetrdf.org>
Signed-off-by: Dongjoon Hyun <dhyun@apple.com>
## What changes were proposed in this pull request?
In `Catalogs.load`, the `pluginClassName` in the following code
```
String pluginClassName = conf.getConfString("spark.sql.catalog." + name, null);
```
is always null for built-in catalogs, e.g there is a SQLConf entry `spark.sql.catalog.session`.
This is because of https://github.com/apache/spark/pull/18852: SQLConf.conf.getConfString(key, null) always returns null.
## How was this patch tested?
Apply code changes of https://github.com/apache/spark/pull/24768 and tried loading session catalog.
Closes#25094 from gengliangwang/fixCatalogLoad.
Authored-by: Gengliang Wang <gengliang.wang@databricks.com>
Signed-off-by: Burak Yavuz <brkyvz@gmail.com>
## What changes were proposed in this pull request?
The flag `spark.sql.decimalOperations.nullOnOverflow` is not honored by the `Cast` operator. This means that a casting which causes an overflow currently returns `null`.
The PR makes `Cast` respecting that flag, ie. when it is turned to false and a decimal overflow occurs, an exception id thrown.
## How was this patch tested?
Added UT
Closes#25253 from mgaido91/SPARK-28470.
Authored-by: Marco Gaido <marcogaido91@gmail.com>
Signed-off-by: Takeshi Yamamuro <yamamuro@apache.org>
## What changes were proposed in this pull request?
Subqueries do not have their own execution id, thus when calling `AdaptiveSparkPlanExec.onUpdatePlan`, it will actually get the `QueryExecution` instance of the main query, which is wasteful and problematic. It could cause issues like stack overflow or dead locks in some circumstances.
This PR fixes this issue by making `AdaptiveSparkPlanExec` compare the `QueryExecution` object retrieved by current execution ID against the `QueryExecution` object from which this plan is created, and only update the UI when the two instances are the same.
## How was this patch tested?
Manual tests on TPC-DS queries.
Closes#25316 from maryannxue/aqe-updateplan-fix.
Authored-by: maryannxue <maryannxue@apache.org>
Signed-off-by: herman <herman@databricks.com>
## What changes were proposed in this pull request?
Sometimes when you explain a query, you will get stuck for a while. What's worse, you will get stuck again if you explain again.
This is caused by `FileSourceScanExec`:
1. In its `toString`, it needs to report the number of partitions it reads. This needs to query the hive metastore.
2. In its `outputOrdering`, it needs to get all the files. This needs to query the hive metastore.
This PR fixes by:
1. `toString` do not need to report the number of partitions it reads. We should report it via SQL metrics.
2. The `outputOrdering` is not very useful. We can only apply it if a) all the bucket columns are read. b) there is only one file in each bucket. This condition is really hard to meet, and even if we meet, sorting an already sorted file is pretty fast and avoiding the sort is not that useful. I think it's worth to give up this optimization so that explain don't need to get stuck.
## How was this patch tested?
existing tests
Closes#25328 from cloud-fan/ui.
Authored-by: Wenchen Fan <wenchen@databricks.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
## What changes were proposed in this pull request?
This PR is a follow-up to https://github.com/apache/spark/pull/25074
## How was this patch tested?
Pass the Jenkins with the newly update test files.
Closes#25366 from beliefer/uncomment-boolean-test.
Authored-by: gengjiaan <gengjiaan@360.cn>
Signed-off-by: Dongjoon Hyun <dhyun@apple.com>
## What changes were proposed in this pull request?
Implements the `DESCRIBE TABLE` logical and physical plans for data source v2 tables.
## How was this patch tested?
Added unit tests to `DataSourceV2SQLSuite`.
Closes#25040 from mccheah/describe-table-v2.
Authored-by: mcheah <mcheah@palantir.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
## What changes were proposed in this pull request?
Add a guide line for dataframe functions, say:
```
This function APIs usually have methods with Column signature only because it can support not only Column but also other types such as a native string. The other variants currently exist for historical reasons.
```
## How was this patch tested?
N/A
Closes#25355 from WeichenXu123/update_functions_guide2.
Authored-by: WeichenXu <weichen.xu@databricks.com>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
## What changes were proposed in this pull request?
Add's the higher order function `forall`, which tests an array to see if a predicate holds for every element.
The function is implemented in `org.apache.spark.sql.catalyst.expressions.ArrayForAll`.
The function is added to the function registry under the pretty name `forall`.
## How was this patch tested?
I've added appropriate unit tests for the new ArrayForAll expression in
`sql/catalyst/src/test/scala/org/apache/spark/sql/catalyst/expressions/HigherOrderFunctionsSuite.scala`.
Also added tests for the function in `sql/core/src/test/scala/org/apache/spark/sql/DataFrameFunctionsSuite.scala`.
Not sure who is best to ask about this PR so:
HyukjinKwon rxin gatorsmile ueshin srowen hvanhovell gatorsmile
Closes#24761 from nvander1/feature/for_all.
Lead-authored-by: Nik Vanderhoof <nikolasrvanderhoof@gmail.com>
Co-authored-by: Nik <nikolasrvanderhoof@gmail.com>
Signed-off-by: Takuya UESHIN <ueshin@databricks.com>
## What changes were proposed in this pull request?
In the PR, I propose to use existing expressions `DayOfYear`, `WeekDay` and `DayOfWeek`, and support additional parameters of `extract()` for feature parity with PostgreSQL (https://www.postgresql.org/docs/11/functions-datetime.html#FUNCTIONS-DATETIME-EXTRACT):
1. `dow` - the day of the week as Sunday (0) to Saturday (6)
2. `isodow` - the day of the week as Monday (1) to Sunday (7)
3. `doy` - the day of the year (1 - 365/366)
Here are examples:
```sql
spark-sql> SELECT EXTRACT(DOW FROM TIMESTAMP '2001-02-16 20:38:40');
5
spark-sql> SELECT EXTRACT(ISODOW FROM TIMESTAMP '2001-02-18 20:38:40');
7
spark-sql> SELECT EXTRACT(DOY FROM TIMESTAMP '2001-02-16 20:38:40');
47
```
## How was this patch tested?
Updated `extract.sql`.
Closes#25367 from MaxGekk/extract-ext.
Authored-by: Maxim Gekk <max.gekk@gmail.com>
Signed-off-by: Dongjoon Hyun <dhyun@apple.com>
## What changes were proposed in this pull request?
Remove the redundant and confusing transformImpl method in RF & GBT;
1, In `GBTClassifier` & `RandomForestClassifier`, the real `transform` methods inherit from `ProbabilisticClassificationModel` which can deal with multi output columns.
The `transformImpl` method, which deals with only one column - `predictionCol`, completely does nothing. This is quite confusing.
2, In `GBTRegressor` & `RandomForestRegressor`, the `transformImpl` do exactly what the superclass `PredictionModel` does (except model broadcasting), so can be removed.
## How was this patch tested?
existing suites
Closes#25256 from zhengruifeng/del_ensamble_transformImpl.
Authored-by: zhengruifeng <ruifengz@foxmail.com>
Signed-off-by: Sean Owen <sean.owen@databricks.com>
## What changes were proposed in this pull request?
This PR targets to rename `PullOutPythonUDFInJoinCondition` to `ExtractPythonUDFFromJoinCondition` and move to 'Extract Python UDFs' together with other Python UDF related rules.
Currently `PullOutPythonUDFInJoinCondition` rule is alone outside of other 'Extract Python UDFs' rules together.
and the name `ExtractPythonUDFFromJoinCondition` is matched to existing Python UDF extraction rules.
## How was this patch tested?
Existing tests should cover.
Closes#25358 from HyukjinKwon/move-python-join-rule.
Authored-by: HyukjinKwon <gurwls223@apache.org>
Signed-off-by: gatorsmile <gatorsmile@gmail.com>
## What changes were proposed in this pull request?
This PR adds UDF cases into group by clause in 'pgSQL/select_implicit.sql'
<details><summary>Diff comparing to 'pgSQL/select_implicit.sql'</summary>
<p>
```diff
diff --git a/home/root1/src/spark/sql/core/src/test/resources/sql-tests/results/udf/pgSQL/udf-select_implicit.sql.out b/home/root1/src/spark/sql/core/src/test/resources/sql-tests/results/pgSQL/select_implicit.sql.out
index 17303b2..0675820 100755
--- a/home/root1/src/spark/sql/core/src/test/resources/sql-tests/results/udf/pgSQL/udf-select_implicit.sql.out
+++ b/home/root1/src/spark/sql/core/src/test/resources/sql-tests/results/pgSQL/select_implicit.sql.out
-91,11 +91,9 struct<>
-- !query 11
-SELECT udf(c), udf(count(*)) FROM test_missing_target GROUP BY
-udf(test_missing_target.c)
-ORDER BY udf(c)
+SELECT c, count(*) FROM test_missing_target GROUP BY test_missing_target.c ORDER BY c
-- !query 11 schema
-struct<CAST(udf(cast(c as string)) AS STRING):string,CAST(udf(cast(count(1) as string)) AS BIGINT):bigint>
+struct<c:string,count(1):bigint>
-- !query 11 output
ABAB 2
BBBB 2
-106,10 +104,9 cccc 2
-- !query 12
-SELECT udf(count(*)) FROM test_missing_target GROUP BY udf(test_missing_target.c)
-ORDER BY udf(c)
+SELECT count(*) FROM test_missing_target GROUP BY test_missing_target.c ORDER BY c
-- !query 12 schema
-struct<CAST(udf(cast(count(1) as string)) AS BIGINT):bigint>
+struct<count(1):bigint>
-- !query 12 output
2
2
-120,18 +117,18 struct<CAST(udf(cast(count(1) as string)) AS BIGINT):bigint>
-- !query 13
-SELECT udf(count(*)) FROM test_missing_target GROUP BY udf(a) ORDER BY udf(b)
+SELECT count(*) FROM test_missing_target GROUP BY a ORDER BY b
-- !query 13 schema
struct<>
-- !query 13 output
org.apache.spark.sql.AnalysisException
-cannot resolve '`b`' given input columns: [CAST(udf(cast(count(1) as string)) AS BIGINT)]; line 1 pos 75
+cannot resolve '`b`' given input columns: [count(1)]; line 1 pos 61
-- !query 14
-SELECT udf(count(*)) FROM test_missing_target GROUP BY udf(b) ORDER BY udf(b)
+SELECT count(*) FROM test_missing_target GROUP BY b ORDER BY b
-- !query 14 schema
-struct<CAST(udf(cast(count(1) as string)) AS BIGINT):bigint>
+struct<count(1):bigint>
-- !query 14 output
1
2
-140,10 +137,10 struct<CAST(udf(cast(count(1) as string)) AS BIGINT):bigint>
-- !query 15
-SELECT udf(test_missing_target.b), udf(count(*))
- FROM test_missing_target GROUP BY udf(b) ORDER BY udf(b)
+SELECT test_missing_target.b, count(*)
+ FROM test_missing_target GROUP BY b ORDER BY b
-- !query 15 schema
-struct<CAST(udf(cast(b as string)) AS INT):int,CAST(udf(cast(count(1) as string)) AS BIGINT):bigint>
+struct<b:int,count(1):bigint>
-- !query 15 output
1 1
2 2
-152,9 +149,9 struct<CAST(udf(cast(b as string)) AS INT):int,CAST(udf(cast(count(1) as string)
-- !query 16
-SELECT udf(c) FROM test_missing_target ORDER BY udf(a)
+SELECT c FROM test_missing_target ORDER BY a
-- !query 16 schema
-struct<CAST(udf(cast(c as string)) AS STRING):string>
+struct<c:string>
-- !query 16 output
XXXX
ABAB
-169,10 +166,9 CCCC
-- !query 17
-SELECT udf(count(*)) FROM test_missing_target GROUP BY udf(b) ORDER BY udf(b)
-desc
+SELECT count(*) FROM test_missing_target GROUP BY b ORDER BY b desc
-- !query 17 schema
-struct<CAST(udf(cast(count(1) as string)) AS BIGINT):bigint>
+struct<count(1):bigint>
-- !query 17 output
4
3
-181,17 +177,17 struct<CAST(udf(cast(count(1) as string)) AS BIGINT):bigint>
-- !query 18
-SELECT udf(count(*)) FROM test_missing_target ORDER BY udf(1) desc
+SELECT count(*) FROM test_missing_target ORDER BY 1 desc
-- !query 18 schema
-struct<CAST(udf(cast(count(1) as string)) AS BIGINT):bigint>
+struct<count(1):bigint>
-- !query 18 output
10
-- !query 19
-SELECT udf(c), udf(count(*)) FROM test_missing_target GROUP BY 1 ORDER BY 1
+SELECT c, count(*) FROM test_missing_target GROUP BY 1 ORDER BY 1
-- !query 19 schema
-struct<CAST(udf(cast(c as string)) AS STRING):string,CAST(udf(cast(count(1) as string)) AS BIGINT):bigint>
+struct<c:string,count(1):bigint>
-- !query 19 output
ABAB 2
BBBB 2
-202,30 +198,30 cccc 2
-- !query 20
-SELECT udf(c), udf(count(*)) FROM test_missing_target GROUP BY 3
+SELECT c, count(*) FROM test_missing_target GROUP BY 3
-- !query 20 schema
struct<>
-- !query 20 output
org.apache.spark.sql.AnalysisException
-GROUP BY position 3 is not in select list (valid range is [1, 2]); line 1 pos 63
+GROUP BY position 3 is not in select list (valid range is [1, 2]); line 1 pos 53
-- !query 21
-SELECT udf(count(*)) FROM test_missing_target x, test_missing_target y
- WHERE udf(x.a) = udf(y.a)
- GROUP BY udf(b) ORDER BY udf(b)
+SELECT count(*) FROM test_missing_target x, test_missing_target y
+ WHERE x.a = y.a
+ GROUP BY b ORDER BY b
-- !query 21 schema
struct<>
-- !query 21 output
org.apache.spark.sql.AnalysisException
-Reference 'b' is ambiguous, could be: x.b, y.b.; line 3 pos 14
+Reference 'b' is ambiguous, could be: x.b, y.b.; line 3 pos 10
-- !query 22
-SELECT udf(a), udf(a) FROM test_missing_target
- ORDER BY udf(a)
+SELECT a, a FROM test_missing_target
+ ORDER BY a
-- !query 22 schema
-struct<CAST(udf(cast(a as string)) AS INT):int,CAST(udf(cast(a as string)) AS INT):int>
+struct<a:int,a:int>
-- !query 22 output
0 0
1 1
-240,10 +236,10 struct<CAST(udf(cast(a as string)) AS INT):int,CAST(udf(cast(a as string)) AS IN
-- !query 23
-SELECT udf(udf(a)/2), udf(udf(a)/2) FROM test_missing_target
- ORDER BY udf(udf(a)/2)
+SELECT a/2, a/2 FROM test_missing_target
+ ORDER BY a/2
-- !query 23 schema
-struct<CAST(udf(cast((cast(udf(cast(a as string)) as int) div 2) as string)) AS INT):int,CAST(udf(cast((cast(udf(cast(a as string)) as int) div 2) as string)) AS INT):int>
+struct<(a div 2):int,(a div 2):int>
-- !query 23 output
0 0
0 0
-258,10 +254,10 struct<CAST(udf(cast((cast(udf(cast(a as string)) as int) div 2) as string)) AS
-- !query 24
-SELECT udf(a/2), udf(a/2) FROM test_missing_target
- GROUP BY udf(a/2) ORDER BY udf(a/2)
+SELECT a/2, a/2 FROM test_missing_target
+ GROUP BY a/2 ORDER BY a/2
-- !query 24 schema
-struct<CAST(udf(cast((a div 2) as string)) AS INT):int,CAST(udf(cast((a div 2) as string)) AS INT):int>
+struct<(a div 2):int,(a div 2):int>
-- !query 24 output
0 0
1 1
-271,11 +267,11 struct<CAST(udf(cast((a div 2) as string)) AS INT):int,CAST(udf(cast((a div 2) a
-- !query 25
-SELECT udf(x.b), udf(count(*)) FROM test_missing_target x, test_missing_target y
- WHERE udf(x.a) = udf(y.a)
- GROUP BY udf(x.b) ORDER BY udf(x.b)
+SELECT x.b, count(*) FROM test_missing_target x, test_missing_target y
+ WHERE x.a = y.a
+ GROUP BY x.b ORDER BY x.b
-- !query 25 schema
-struct<CAST(udf(cast(b as string)) AS INT):int,CAST(udf(cast(count(1) as string)) AS BIGINT):bigint>
+struct<b:int,count(1):bigint>
-- !query 25 output
1 1
2 2
-284,11 +280,11 struct<CAST(udf(cast(b as string)) AS INT):int,CAST(udf(cast(count(1) as string)
-- !query 26
-SELECT udf(count(*)) FROM test_missing_target x, test_missing_target y
- WHERE udf(x.a) = udf(y.a)
- GROUP BY udf(x.b) ORDER BY udf(x.b)
+SELECT count(*) FROM test_missing_target x, test_missing_target y
+ WHERE x.a = y.a
+ GROUP BY x.b ORDER BY x.b
-- !query 26 schema
-struct<CAST(udf(cast(count(1) as string)) AS BIGINT):bigint>
+struct<count(1):bigint>
-- !query 26 output
1
2
-297,22 +293,22 struct<CAST(udf(cast(count(1) as string)) AS BIGINT):bigint>
-- !query 27
-SELECT udf(a%2), udf(count(udf(b))) FROM test_missing_target
-GROUP BY udf(test_missing_target.a%2)
-ORDER BY udf(test_missing_target.a%2)
+SELECT a%2, count(b) FROM test_missing_target
+GROUP BY test_missing_target.a%2
+ORDER BY test_missing_target.a%2
-- !query 27 schema
-struct<CAST(udf(cast((a % 2) as string)) AS INT):int,CAST(udf(cast(count(cast(udf(cast(b as string)) as int)) as string)) AS BIGINT):bigint>
+struct<(a % 2):int,count(b):bigint>
-- !query 27 output
0 5
1 5
-- !query 28
-SELECT udf(count(c)) FROM test_missing_target
-GROUP BY udf(lower(test_missing_target.c))
-ORDER BY udf(lower(test_missing_target.c))
+SELECT count(c) FROM test_missing_target
+GROUP BY lower(test_missing_target.c)
+ORDER BY lower(test_missing_target.c)
-- !query 28 schema
-struct<CAST(udf(cast(count(c) as string)) AS BIGINT):bigint>
+struct<count(c):bigint>
-- !query 28 output
2
3
-321,18 +317,18 struct<CAST(udf(cast(count(c) as string)) AS BIGINT):bigint>
-- !query 29
-SELECT udf(count(udf(a))) FROM test_missing_target GROUP BY udf(a) ORDER BY udf(b)
+SELECT count(a) FROM test_missing_target GROUP BY a ORDER BY b
-- !query 29 schema
struct<>
-- !query 29 output
org.apache.spark.sql.AnalysisException
-cannot resolve '`b`' given input columns: [CAST(udf(cast(count(cast(udf(cast(a as string)) as int)) as string)) AS BIGINT)]; line 1 pos 80
+cannot resolve '`b`' given input columns: [count(a)]; line 1 pos 61
-- !query 30
-SELECT udf(count(b)) FROM test_missing_target GROUP BY udf(b/2) ORDER BY udf(b/2)
+SELECT count(b) FROM test_missing_target GROUP BY b/2 ORDER BY b/2
-- !query 30 schema
-struct<CAST(udf(cast(count(b) as string)) AS BIGINT):bigint>
+struct<count(b):bigint>
-- !query 30 output
1
5
-340,10 +336,10 struct<CAST(udf(cast(count(b) as string)) AS BIGINT):bigint>
-- !query 31
-SELECT udf(lower(test_missing_target.c)), udf(count(udf(c)))
- FROM test_missing_target GROUP BY udf(lower(c)) ORDER BY udf(lower(c))
+SELECT lower(test_missing_target.c), count(c)
+ FROM test_missing_target GROUP BY lower(c) ORDER BY lower(c)
-- !query 31 schema
-struct<CAST(udf(cast(lower(c) as string)) AS STRING):string,CAST(udf(cast(count(cast(udf(cast(c as string)) as string)) as string)) AS BIGINT):bigint>
+struct<lower(c):string,count(c):bigint>
-- !query 31 output
abab 2
bbbb 3
-352,9 +348,9 xxxx 1
-- !query 32
-SELECT udf(a) FROM test_missing_target ORDER BY udf(upper(udf(d)))
+SELECT a FROM test_missing_target ORDER BY upper(d)
-- !query 32 schema
-struct<CAST(udf(cast(a as string)) AS INT):int>
+struct<a:int>
-- !query 32 output
0
1
-369,33 +365,32 struct<CAST(udf(cast(a as string)) AS INT):int>
-- !query 33
-SELECT udf(count(b)) FROM test_missing_target
- GROUP BY udf((b + 1) / 2) ORDER BY udf((b + 1) / 2) desc
+SELECT count(b) FROM test_missing_target
+ GROUP BY (b + 1) / 2 ORDER BY (b + 1) / 2 desc
-- !query 33 schema
-struct<CAST(udf(cast(count(b) as string)) AS BIGINT):bigint>
+struct<count(b):bigint>
-- !query 33 output
7
3
-- !query 34
-SELECT udf(count(udf(x.a))) FROM test_missing_target x, test_missing_target y
- WHERE udf(x.a) = udf(y.a)
- GROUP BY udf(b/2) ORDER BY udf(b/2)
+SELECT count(x.a) FROM test_missing_target x, test_missing_target y
+ WHERE x.a = y.a
+ GROUP BY b/2 ORDER BY b/2
-- !query 34 schema
struct<>
-- !query 34 output
org.apache.spark.sql.AnalysisException
-Reference 'b' is ambiguous, could be: x.b, y.b.; line 3 pos 14
+Reference 'b' is ambiguous, could be: x.b, y.b.; line 3 pos 10
-- !query 35
-SELECT udf(x.b/2), udf(count(udf(x.b))) FROM test_missing_target x,
-test_missing_target y
- WHERE udf(x.a) = udf(y.a)
- GROUP BY udf(x.b/2) ORDER BY udf(x.b/2)
+SELECT x.b/2, count(x.b) FROM test_missing_target x, test_missing_target y
+ WHERE x.a = y.a
+ GROUP BY x.b/2 ORDER BY x.b/2
-- !query 35 schema
-struct<CAST(udf(cast((b div 2) as string)) AS INT):int,CAST(udf(cast(count(cast(udf(cast(b as string)) as int)) as string)) AS BIGINT):bigint>
+struct<(b div 2):int,count(b):bigint>
-- !query 35 output
0 1
1 5
-403,14 +398,14 struct<CAST(udf(cast((b div 2) as string)) AS INT):int,CAST(udf(cast(count(cast(
-- !query 36
-SELECT udf(count(udf(b))) FROM test_missing_target x, test_missing_target y
- WHERE udf(x.a) = udf(y.a)
- GROUP BY udf(x.b/2)
+SELECT count(b) FROM test_missing_target x, test_missing_target y
+ WHERE x.a = y.a
+ GROUP BY x.b/2
-- !query 36 schema
struct<>
-- !query 36 output
org.apache.spark.sql.AnalysisException
-Reference 'b' is ambiguous, could be: x.b, y.b.; line 1 pos 21
+Reference 'b' is ambiguous, could be: x.b, y.b.; line 1 pos 13
-- !query 37
```
</p>
</details>
## How was this patch tested?
Tested as Guided in SPARK-27921
Closes#25350 from Udbhav30/master.
Authored-by: Udbhav30 <u.agrawal30@gmail.com>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
## What changes were proposed in this pull request?
This PR add supportColumnar in DebugExec. Seems there was a conflict between https://github.com/apache/spark/pull/25274 and https://github.com/apache/spark/pull/25264
Currently tests are broken in Jenkins:
https://amplab.cs.berkeley.edu/jenkins/job/SparkPullRequestBuilder/108687/https://amplab.cs.berkeley.edu/jenkins/job/SparkPullRequestBuilder/108688/https://amplab.cs.berkeley.edu/jenkins/job/SparkPullRequestBuilder/108693/
```
org.apache.spark.sql.catalyst.errors.package$TreeNodeException: makeCopy, tree: ColumnarToRow +- InMemoryTableScan [id#356956L] +- InMemoryRelation [id#356956L], StorageLevel(disk, memory, deserialized, 1 replicas) +- *(1) Range (0, 5, step=1, splits=2)
Stacktrace
sbt.ForkMain$ForkError: org.apache.spark.sql.catalyst.errors.package$TreeNodeException: makeCopy, tree:
ColumnarToRow
+- InMemoryTableScan [id#356956L]
+- InMemoryRelation [id#356956L], StorageLevel(disk, memory, deserialized, 1 replicas)
+- *(1) Range (0, 5, step=1, splits=2)
at org.apache.spark.sql.catalyst.errors.package$.attachTree(package.scala:56)
at org.apache.spark.sql.catalyst.trees.TreeNode.makeCopy(TreeNode.scala:431)
at org.apache.spark.sql.catalyst.trees.TreeNode.mapChildren(TreeNode.scala:404)
at org.apache.spark.sql.catalyst.trees.TreeNode.mapChildren(TreeNode.scala:323)
at org.apache.spark.sql.catalyst.trees.TreeNode.transformDown(TreeNode.scala:287)
```
## How was this patch tested?
Manually tested the failed test.
Closes#25365 from HyukjinKwon/SPARK-28537.
Authored-by: HyukjinKwon <gurwls223@apache.org>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
## What changes were proposed in this pull request?
This PR is a followup of a fix as described in here: #25215 (comment)
<details><summary>Diff comparing to 'group-analytics.sql'</summary>
<p>
```diff
diff --git a/sql/core/src/test/resources/sql-tests/results/udf/udf-group-analytics.sql.out b/sql/core/src/test/resources/sql-tests/results/udf/udf-group-analytics.sql.out
index 3439a05727..de297ab166 100644
--- a/sql/core/src/test/resources/sql-tests/results/udf/udf-group-analytics.sql.out
+++ b/sql/core/src/test/resources/sql-tests/results/udf/udf-group-analytics.sql.out
-13,9 +13,9 struct<>
-- !query 1
-SELECT a + b, b, SUM(a - b) FROM testData GROUP BY a + b, b WITH CUBE
+SELECT udf(a + b), b, udf(SUM(a - b)) FROM testData GROUP BY udf(a + b), b WITH CUBE
-- !query 1 schema
-struct<(a + b):int,b:int,sum((a - b)):bigint>
+struct<CAST(udf(cast((a + b) as string)) AS INT):int,b:int,CAST(udf(cast(sum(cast((a - b) as bigint)) as string)) AS BIGINT):bigint>
-- !query 1 output
2 1 0
2 NULL 0
-33,9 +33,9 NULL NULL 3
-- !query 2
-SELECT a, b, SUM(b) FROM testData GROUP BY a, b WITH CUBE
+SELECT udf(a), udf(b), SUM(b) FROM testData GROUP BY udf(a), b WITH CUBE
-- !query 2 schema
-struct<a:int,b:int,sum(b):bigint>
+struct<CAST(udf(cast(a as string)) AS INT):int,CAST(udf(cast(b as string)) AS INT):int,sum(b):bigint>
-- !query 2 output
1 1 1
1 2 2
-52,9 +52,9 NULL NULL 9
-- !query 3
-SELECT a + b, b, SUM(a - b) FROM testData GROUP BY a + b, b WITH ROLLUP
+SELECT udf(a + b), b, SUM(a - b) FROM testData GROUP BY a + b, b WITH ROLLUP
-- !query 3 schema
-struct<(a + b):int,b:int,sum((a - b)):bigint>
+struct<CAST(udf(cast((a + b) as string)) AS INT):int,b:int,sum((a - b)):bigint>
-- !query 3 output
2 1 0
2 NULL 0
-70,9 +70,9 NULL NULL 3
-- !query 4
-SELECT a, b, SUM(b) FROM testData GROUP BY a, b WITH ROLLUP
+SELECT udf(a), b, udf(SUM(b)) FROM testData GROUP BY udf(a), b WITH ROLLUP
-- !query 4 schema
-struct<a:int,b:int,sum(b):bigint>
+struct<CAST(udf(cast(a as string)) AS INT):int,b:int,CAST(udf(cast(sum(cast(b as bigint)) as string)) AS BIGINT):bigint>
-- !query 4 output
1 1 1
1 2 2
-97,7 +97,7 struct<>
-- !query 6
-SELECT course, year, SUM(earnings) FROM courseSales GROUP BY ROLLUP(course, year) ORDER BY course, year
+SELECT course, year, SUM(earnings) FROM courseSales GROUP BY ROLLUP(course, year) ORDER BY udf(course), year
-- !query 6 schema
struct<course:string,year:int,sum(earnings):bigint>
-- !query 6 output
-111,7 +111,7 dotNET 2013 48000
-- !query 7
-SELECT course, year, SUM(earnings) FROM courseSales GROUP BY CUBE(course, year) ORDER BY course, year
+SELECT course, year, SUM(earnings) FROM courseSales GROUP BY CUBE(course, year) ORDER BY course, udf(year)
-- !query 7 schema
struct<course:string,year:int,sum(earnings):bigint>
-- !query 7 output
-127,9 +127,9 dotNET 2013 48000
-- !query 8
-SELECT course, year, SUM(earnings) FROM courseSales GROUP BY course, year GROUPING SETS(course, year)
+SELECT course, udf(year), SUM(earnings) FROM courseSales GROUP BY course, year GROUPING SETS(course, year)
-- !query 8 schema
-struct<course:string,year:int,sum(earnings):bigint>
+struct<course:string,CAST(udf(cast(year as string)) AS INT):int,sum(earnings):bigint>
-- !query 8 output
Java NULL 50000
NULL 2012 35000
-138,26 +138,26 dotNET NULL 63000
-- !query 9
-SELECT course, year, SUM(earnings) FROM courseSales GROUP BY course, year GROUPING SETS(course)
+SELECT course, year, udf(SUM(earnings)) FROM courseSales GROUP BY course, year GROUPING SETS(course)
-- !query 9 schema
-struct<course:string,year:int,sum(earnings):bigint>
+struct<course:string,year:int,CAST(udf(cast(sum(cast(earnings as bigint)) as string)) AS BIGINT):bigint>
-- !query 9 output
Java NULL 50000
dotNET NULL 63000
-- !query 10
-SELECT course, year, SUM(earnings) FROM courseSales GROUP BY course, year GROUPING SETS(year)
+SELECT udf(course), year, SUM(earnings) FROM courseSales GROUP BY course, year GROUPING SETS(year)
-- !query 10 schema
-struct<course:string,year:int,sum(earnings):bigint>
+struct<CAST(udf(cast(course as string)) AS STRING):string,year:int,sum(earnings):bigint>
-- !query 10 output
NULL 2012 35000
NULL 2013 78000
-- !query 11
-SELECT course, SUM(earnings) AS sum FROM courseSales
-GROUP BY course, earnings GROUPING SETS((), (course), (course, earnings)) ORDER BY course, sum
+SELECT course, udf(SUM(earnings)) AS sum FROM courseSales
+GROUP BY course, earnings GROUPING SETS((), (course), (course, earnings)) ORDER BY course, udf(sum)
-- !query 11 schema
struct<course:string,sum:bigint>
-- !query 11 output
-173,7 +173,7 dotNET 63000
-- !query 12
SELECT course, SUM(earnings) AS sum, GROUPING_ID(course, earnings) FROM courseSales
-GROUP BY course, earnings GROUPING SETS((), (course), (course, earnings)) ORDER BY course, sum
+GROUP BY course, earnings GROUPING SETS((), (course), (course, earnings)) ORDER BY udf(course), sum
-- !query 12 schema
struct<course:string,sum:bigint,grouping_id(course, earnings):int>
-- !query 12 output
-188,10 +188,10 dotNET 63000 1
-- !query 13
-SELECT course, year, GROUPING(course), GROUPING(year), GROUPING_ID(course, year) FROM courseSales
+SELECT udf(course), udf(year), GROUPING(course), GROUPING(year), GROUPING_ID(course, year) FROM courseSales
GROUP BY CUBE(course, year)
-- !query 13 schema
-struct<course:string,year:int,grouping(course):tinyint,grouping(year):tinyint,grouping_id(course, year):int>
+struct<CAST(udf(cast(course as string)) AS STRING):string,CAST(udf(cast(year as string)) AS INT):int,grouping(course):tinyint,grouping(year):tinyint,grouping_id(course, year):int>
-- !query 13 output
Java 2012 0 0 0
Java 2013 0 0 0
-205,7 +205,7 dotNET NULL 0 1 1
-- !query 14
-SELECT course, year, GROUPING(course) FROM courseSales GROUP BY course, year
+SELECT course, udf(year), GROUPING(course) FROM courseSales GROUP BY course, udf(year)
-- !query 14 schema
struct<>
-- !query 14 output
-214,7 +214,7 grouping() can only be used with GroupingSets/Cube/Rollup;
-- !query 15
-SELECT course, year, GROUPING_ID(course, year) FROM courseSales GROUP BY course, year
+SELECT course, udf(year), GROUPING_ID(course, year) FROM courseSales GROUP BY udf(course), year
-- !query 15 schema
struct<>
-- !query 15 output
-223,7 +223,7 grouping_id() can only be used with GroupingSets/Cube/Rollup;
-- !query 16
-SELECT course, year, grouping__id FROM courseSales GROUP BY CUBE(course, year) ORDER BY grouping__id, course, year
+SELECT course, year, grouping__id FROM courseSales GROUP BY CUBE(course, year) ORDER BY grouping__id, course, udf(year)
-- !query 16 schema
struct<course:string,year:int,grouping__id:int>
-- !query 16 output
-240,7 +240,7 NULL NULL 3
-- !query 17
SELECT course, year FROM courseSales GROUP BY CUBE(course, year)
-HAVING GROUPING(year) = 1 AND GROUPING_ID(course, year) > 0 ORDER BY course, year
+HAVING GROUPING(year) = 1 AND GROUPING_ID(course, year) > 0 ORDER BY course, udf(year)
-- !query 17 schema
struct<course:string,year:int>
-- !query 17 output
-250,7 +250,7 dotNET NULL
-- !query 18
-SELECT course, year FROM courseSales GROUP BY course, year HAVING GROUPING(course) > 0
+SELECT course, udf(year) FROM courseSales GROUP BY udf(course), year HAVING GROUPING(course) > 0
-- !query 18 schema
struct<>
-- !query 18 output
-259,7 +259,7 grouping()/grouping_id() can only be used with GroupingSets/Cube/Rollup;
-- !query 19
-SELECT course, year FROM courseSales GROUP BY course, year HAVING GROUPING_ID(course) > 0
+SELECT course, udf(udf(year)) FROM courseSales GROUP BY course, year HAVING GROUPING_ID(course) > 0
-- !query 19 schema
struct<>
-- !query 19 output
-268,9 +268,9 grouping()/grouping_id() can only be used with GroupingSets/Cube/Rollup;
-- !query 20
-SELECT course, year FROM courseSales GROUP BY CUBE(course, year) HAVING grouping__id > 0
+SELECT udf(course), year FROM courseSales GROUP BY CUBE(course, year) HAVING grouping__id > 0
-- !query 20 schema
-struct<course:string,year:int>
+struct<CAST(udf(cast(course as string)) AS STRING):string,year:int>
-- !query 20 output
Java NULL
NULL 2012
-281,7 +281,7 dotNET NULL
-- !query 21
SELECT course, year, GROUPING(course), GROUPING(year) FROM courseSales GROUP BY CUBE(course, year)
-ORDER BY GROUPING(course), GROUPING(year), course, year
+ORDER BY GROUPING(course), GROUPING(year), course, udf(year)
-- !query 21 schema
struct<course:string,year:int,grouping(course):tinyint,grouping(year):tinyint>
-- !query 21 output
-298,7 +298,7 NULL NULL 1 1
-- !query 22
SELECT course, year, GROUPING_ID(course, year) FROM courseSales GROUP BY CUBE(course, year)
-ORDER BY GROUPING(course), GROUPING(year), course, year
+ORDER BY GROUPING(course), GROUPING(year), course, udf(year)
-- !query 22 schema
struct<course:string,year:int,grouping_id(course, year):int>
-- !query 22 output
-314,7 +314,7 NULL NULL 3
-- !query 23
-SELECT course, year FROM courseSales GROUP BY course, year ORDER BY GROUPING(course)
+SELECT course, udf(year) FROM courseSales GROUP BY course, udf(year) ORDER BY GROUPING(course)
-- !query 23 schema
struct<>
-- !query 23 output
-323,7 +323,7 grouping()/grouping_id() can only be used with GroupingSets/Cube/Rollup;
-- !query 24
-SELECT course, year FROM courseSales GROUP BY course, year ORDER BY GROUPING_ID(course)
+SELECT course, udf(year) FROM courseSales GROUP BY course, udf(year) ORDER BY GROUPING_ID(course)
-- !query 24 schema
struct<>
-- !query 24 output
-332,7 +332,7 grouping()/grouping_id() can only be used with GroupingSets/Cube/Rollup;
-- !query 25
-SELECT course, year FROM courseSales GROUP BY CUBE(course, year) ORDER BY grouping__id, course, year
+SELECT course, year FROM courseSales GROUP BY CUBE(course, year) ORDER BY grouping__id, udf(course), year
-- !query 25 schema
struct<course:string,year:int>
-- !query 25 output
-348,7 +348,7 NULL NULL
-- !query 26
-SELECT a + b AS k1, b AS k2, SUM(a - b) FROM testData GROUP BY CUBE(k1, k2)
+SELECT udf(a + b) AS k1, udf(b) AS k2, SUM(a - b) FROM testData GROUP BY CUBE(k1, k2)
-- !query 26 schema
struct<k1:int,k2:int,sum((a - b)):bigint>
-- !query 26 output
-368,7 +368,7 NULL NULL 3
-- !query 27
-SELECT a + b AS k, b, SUM(a - b) FROM testData GROUP BY ROLLUP(k, b)
+SELECT udf(udf(a + b)) AS k, b, SUM(a - b) FROM testData GROUP BY ROLLUP(k, b)
-- !query 27 schema
struct<k:int,b:int,sum((a - b)):bigint>
-- !query 27 output
-386,9 +386,9 NULL NULL 3
-- !query 28
-SELECT a + b, b AS k, SUM(a - b) FROM testData GROUP BY a + b, k GROUPING SETS(k)
+SELECT udf(a + b), udf(udf(b)) AS k, SUM(a - b) FROM testData GROUP BY a + b, k GROUPING SETS(k)
-- !query 28 schema
-struct<(a + b):int,k:int,sum((a - b)):bigint>
+struct<CAST(udf(cast((a + b) as string)) AS INT):int,k:int,sum((a - b)):bigint>
-- !query 28 output
NULL 1 3
NULL 2 0
```
</p>
</details>
## How was this patch tested?
Tested as instructed in SPARK-27921.
Closes#25362 from skonto/group-analytics-followup.
Authored-by: Stavros Kontopoulos <st.kontopoulos@gmail.com>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
## What changes were proposed in this pull request?
This patch tries to keep consistency whenever UTF-8 charset is needed, as using `StandardCharsets.UTF_8` instead of using "UTF-8". If the String type is needed, `StandardCharsets.UTF_8.name()` is used.
This change also brings the benefit of getting rid of `UnsupportedEncodingException`, as we're providing `Charset` instead of `String` whenever possible.
This also changes some private Catalyst helper methods to operate on encodings as `Charset` objects rather than strings.
## How was this patch tested?
Existing unit tests.
Closes#25335 from HeartSaVioR/SPARK-28601.
Authored-by: Jungtaek Lim (HeartSaVioR) <kabhwan@gmail.com>
Signed-off-by: Dongjoon Hyun <dhyun@apple.com>
## What changes were proposed in this pull request?
I did a post-hoc review of https://github.com/apache/spark/pull/25008 , and would like to propose some cleanups/fixes/improvements:
1. Do not track the scanTime metrics in `ColumnarToRowExec`. This metrics is specific to file scan, and doesn't make sense for a general batch-to-row operator.
2. Because of 2, we need to track scanTime when building RDDs in the file scan node.
3. use `RDD#mapPartitionsInternal` instead of `flatMap` in several places, as `mapPartitionsInternal` is created for Spark SQL and we use it in almost all the SQL operators.
4. Add `limitNotReachedCond` in `ColumnarToRowExec`. This was in the `ColumnarBatchScan` before and is critical for performance.
5. Clear the relationship between codegen stage and columnar stage. The whole-stage-codegen framework is completely row-based, so these 2 kinds of stages can NEVER overlap. When they are adjacent, it's either a `RowToColumnarExec` above `WholeStageExec`, or a `ColumnarToRowExec` above the `InputAdapter`.
6. Reuse the `ColumnarBatch` in `RowToColumnarExec`. We don't need to create a new one every time, just need to reset it.
7. Do not skip testing full scan node in `LogicalPlanTagInSparkPlanSuite`
8. Add back the removed tests in `WholeStageCodegenSuite`.
## How was this patch tested?
existing tests
Closes#25264 from cloud-fan/minor.
Authored-by: Wenchen Fan <wenchen@databricks.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
## What changes were proposed in this pull request?
This is an alternative solution of https://github.com/apache/spark/pull/24442 . It fails the query if ambiguous self join is detected, instead of trying to disambiguate it. The problem is that, it's hard to come up with a reasonable rule to disambiguate, the rule proposed by #24442 is mostly a heuristic.
### background of the self-join problem:
This is a long-standing bug and I've seen many people complaining about it in JIRA/dev list.
A typical example:
```
val df1 = …
val df2 = df1.filter(...)
df1.join(df2, df1("a") > df2("a")) // returns empty result
```
The root cause is, `Dataset.apply` is so powerful that users think it returns a column reference which can point to the column of the Dataset at anywhere. This is not true in many cases. `Dataset.apply` returns an `AttributeReference` . Different Datasets may share the same `AttributeReference`. In the example above, `df2` adds a Filter operator above the logical plan of `df1`, and the Filter operator reserves the output `AttributeReference` of its child. This means, `df1("a")` is exactly the same as `df2("a")`, and `df1("a") > df2("a")` always evaluates to false.
### The rule to detect ambiguous column reference caused by self join:
We can reuse the infra in #24442 :
1. each Dataset has a globally unique id.
2. the `AttributeReference` returned by `Dataset.apply` carries the ID and column position(e.g. 3rd column of the Dataset) via metadata.
3. the logical plan of a `Dataset` carries the ID via `TreeNodeTag`
When self-join happens, the analyzer asks the right side plan of join to re-generate output attributes with new exprIds. Based on it, a simple rule to detect ambiguous self join is:
1. find all column references (i.e. `AttributeReference`s with Dataset ID and col position) in the root node of a query plan.
2. for each column reference, traverse the query plan tree, find a sub-plan that carries Dataset ID and the ID is the same as the one in the column reference.
3. get the corresponding output attribute of the sub-plan by the col position in the column reference.
4. if the corresponding output attribute has a different exprID than the column reference, then it means this sub-plan is on the right side of a self-join and has regenerated its output attributes. This is an ambiguous self join because the column reference points to a table being self-joined.
## How was this patch tested?
existing tests and new test cases
Closes#25107 from cloud-fan/new-self-join.
Authored-by: Wenchen Fan <wenchen@databricks.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
DebugExec does not implement doExecuteBroadcast and doExecuteColumnar so we can't debug broadcast or columnar related query.
One example for broadcast is here.
```
val df1 = Seq(1, 2, 3).toDF
val df2 = Seq(1, 2, 3).toDF
val joined = df1.join(df2, df1("value") === df2("value"))
joined.debug()
java.lang.UnsupportedOperationException: Debug does not implement doExecuteBroadcast
...
```
Another for columnar is here.
```
val df = Seq(1, 2, 3).toDF
df.persist
df.debug()
java.lang.IllegalStateException: Internal Error class org.apache.spark.sql.execution.debug.package$DebugExec has column support mismatch:
...
```
## How was this patch tested?
Additional test cases in DebuggingSuite.
Closes#25274 from sarutak/fix-debugexec.
Authored-by: Kousuke Saruta <sarutak@oss.nttdata.com>
Signed-off-by: Takeshi Yamamuro <yamamuro@apache.org>
## What changes were proposed in this pull request?
Currently, PythonBroadcast may delete its data file while a python worker still needs it. This happens because PythonBroadcast overrides the `finalize()` method to delete its data file. So, when GC happens and no references on broadcast variable, it may trigger `finalize()` to delete
data file. That's also means, data under python Broadcast variable couldn't be deleted when `unpersist()`/`destroy()` called but relys on GC.
In this PR, we removed the `finalize()` method, and map the PythonBroadcast data file to a BroadcastBlock(which has the same broadcast id with the broadcast variable who wrapped this PythonBroadcast) when PythonBroadcast is deserializing. As a result, the data file could be deleted just like other pieces of the Broadcast variable when `unpersist()`/`destroy()` called and do not rely on GC any more.
## How was this patch tested?
Added a Python test, and tested manually(verified create/delete the broadcast block).
Closes#25262 from Ngone51/SPARK-28486.
Authored-by: wuyi <ngone_5451@163.com>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
## What changes were proposed in this pull request?
- DataFrameWriter.insertInto should match column names by position.
- Clean up test cases.
## How was this patch tested?
New tests:
- insertInto: append by position
- insertInto: overwrite partitioned table in static mode by position
- insertInto: overwrite partitioned table in dynamic mode by position
Closes#25353 from jzhuge/SPARK-28178-bypos.
Authored-by: John Zhuge <jzhuge@apache.org>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
## What changes were proposed in this pull request?
After SPARK-27677, the shuffle client not only handles the shuffle block but also responsible for local persist RDD blocks. For better code scalability and precise semantics(as the [discussion](https://github.com/apache/spark/pull/24892#discussion_r300173331)), here we did several changes:
- Rename ShuffleClient to BlockStoreClient.
- Correspondingly rename the ExternalShuffleClient to ExternalBlockStoreClient, also change the server-side class from ExternalShuffleBlockHandler to ExternalBlockHandler.
- Move MesosExternalBlockStoreClient to Mesos package.
Note, we still keep the name of BlockTransferService, because the `Service` contains both client and server, also the name of BlockTransferService is not referencing shuffle client only.
## How was this patch tested?
Existing UT.
Closes#25327 from xuanyuanking/SPARK-28593.
Lead-authored-by: Yuanjian Li <xyliyuanjian@gmail.com>
Co-authored-by: Yuanjian Li <yuanjian.li@databricks.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
## What changes were proposed in this pull request?
This adds an interface for catalog plugins that exposes namespace operations:
* `listNamespaces`
* `namespaceExists`
* `loadNamespaceMetadata`
* `createNamespace`
* `alterNamespace`
* `dropNamespace`
## How was this patch tested?
API only. Existing tests for regressions.
Closes#24560 from rdblue/SPARK-27661-add-catalog-namespace-api.
Authored-by: Ryan Blue <blue@apache.org>
Signed-off-by: Burak Yavuz <brkyvz@gmail.com>
## What changes were proposed in this pull request?
This PR aims to improve the `merge-spark-pr` script in the following two ways.
1. `[WIP]` is useful when we show that a PR is not ready for merge. Apache Spark allows merging `WIP` PRs. However, sometime, we accidentally forgot to clean up the title for the completed PRs. We had better warn once more during merging stage and get a confirmation from the committers.
2. We have two kinds of PR titles in terms of the ending period. This PR aims to remove the trailing `dot` since the shorter is the better in the commit title. Also, the PR titles without the trailing `dot` is dominant in the Apache Spark commit logs.
```
$ git log --oneline | grep '[.]$' | wc -l
4090
$ git log --oneline | grep '[^.]$' | wc -l
20747
```
## How was this patch tested?
Manual.
```
$ dev/merge_spark_pr.py
git rev-parse --abbrev-ref HEAD
Which pull request would you like to merge? (e.g. 34): 25157
The PR title has `[WIP]`:
[WIP][SPARK-28396][SQL] Add PathCatalog for data source V2
Continue? (y/n):
```
```
$ dev/merge_spark_pr.py
git rev-parse --abbrev-ref HEAD
Which pull request would you like to merge? (e.g. 34): 25304
I've re-written the title as follows to match the standard format:
Original: [SPARK-28570][CORE][SHUFFLE] Make UnsafeShuffleWriter use the new API.
Modified: [SPARK-28570][CORE][SHUFFLE] Make UnsafeShuffleWriter use the new API
Would you like to use the modified title? (y/n):
```
Closes#25356 from dongjoon-hyun/SPARK-28616.
Authored-by: Dongjoon Hyun <dhyun@apple.com>
Signed-off-by: Dongjoon Hyun <dhyun@apple.com>
## What changes were proposed in this pull request?
It's hard to know if the query needs to be sorted like [`SQLQueryTestSuite.isSorted`](2ecc39c8d3/sql/core/src/test/scala/org/apache/spark/sql/SQLQueryTestSuite.scala (L375-L380)) when building a test framework for Thriftserver. So we can sort both the `outputs` and the `expectedOutputs. However, we removed leading write space in the golden result file. This can lead to inconsistent results.
This PR makes it does not remove leading write space in the golden result file. Trailing write space still needs to be removed.
## How was this patch tested?
N/A
Closes#25351 from wangyum/SPARK-28614.
Authored-by: Yuming Wang <yumwang@ebay.com>
Signed-off-by: Dongjoon Hyun <dhyun@apple.com>
## What changes were proposed in this pull request?
Use `log1p(x)` over `log(1+x)` and `expm1(x)` over `exp(x)-1` for accuracy, where possible. This should improve accuracy a tiny bit in ML-related calculations, and shouldn't hurt in any event.
## How was this patch tested?
Existing tests.
Closes#25337 from srowen/SPARK-28604.
Authored-by: Sean Owen <sean.owen@databricks.com>
Signed-off-by: Sean Owen <sean.owen@databricks.com>
## What changes were proposed in this pull request?
This PR picks up https://github.com/apache/spark/pull/25315 back after removing `Popen.wait` usage which exists in Python 3 only. I saw the last test results wrongly and thought it was passed.
Fix flaky test DaemonTests.do_termination_test which fail on Python 3.7. I add a sleep after the test connection to daemon.
## How was this patch tested?
Run test
```
python/run-tests --python-executables=python3.7 --testname "pyspark.tests.test_daemon DaemonTests"
```
**Before**
Fail on test "test_termination_sigterm". And we can see daemon process do not exit.
**After**
Test passed
Closes#25343 from HyukjinKwon/SPARK-28582.
Authored-by: WeichenXu <weichen.xu@databricks.com>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
## What changes were proposed in this pull request?
CRAN repo changed the key and it causes our release script failure. This is a release blocker for Apache Spark 2.4.4 and 3.0.0.
- https://cran.r-project.org/bin/linux/ubuntu/README.html
```
Err:1 https://cloud.r-project.org/bin/linux/ubuntu bionic-cran35/ InRelease
The following signatures couldn't be verified because the public key is not available: NO_PUBKEY 51716619E084DAB9
...
W: GPG error: https://cloud.r-project.org/bin/linux/ubuntu bionic-cran35/ InRelease: The following signatures couldn't be verified because the public key is not available: NO_PUBKEY 51716619E084DAB9
E: The repository 'https://cloud.r-project.org/bin/linux/ubuntu bionic-cran35/ InRelease' is not signed.
```
Note that they are reusing `cran35` for R 3.6 although they changed the key.
```
Even though R has moved to version 3.6, for compatibility the sources.list entry still uses the cran3.5 designation.
```
This PR aims to recover the docker image generation first. We will verify the R doc generation in a separate JIRA and PR.
## How was this patch tested?
Manual. After `docker-build.log`, it should continue to the next stage, `Building v3.0.0-rc1`.
```
$ dev/create-release/do-release-docker.sh -d /tmp/spark-3.0.0 -n -s docs
...
Log file: docker-build.log
Building v3.0.0-rc1; output will be at /tmp/spark-3.0.0/output
```
Closes#25339 from dongjoon-hyun/SPARK-28606.
Authored-by: Dongjoon Hyun <dhyun@apple.com>
Signed-off-by: DB Tsai <d_tsai@apple.com>
## What changes were proposed in this pull request?
Add configuration spark.scheduler.listenerbus.eventqueue.${name}.capacity to allow configuration of different event queue size.
## How was this patch tested?
Unit test in core/src/test/scala/org/apache/spark/scheduler/SparkListenerSuite.scala
Closes#25307 from yunzoud/SPARK-28574.
Authored-by: yunzoud <yun.zou@databricks.com>
Signed-off-by: Shixiong Zhu <zsxwing@gmail.com>
## What changes were proposed in this pull request?
Explained why "Subquery" and "Join Reorder" optimization batches should be `FixedPoint(1)`, which was introduced in SPARK-28532 and SPARK-28530.
## How was this patch tested?
Existing UTs.
Closes#25320 from yeshengm/SPARK-28530-followup.
Lead-authored-by: Xiao Li <gatorsmile@gmail.com>
Co-authored-by: Yesheng Ma <kimi.ysma@gmail.com>
Signed-off-by: gatorsmile <gatorsmile@gmail.com>
## What changes were proposed in this pull request?
`minPartitions` has been used as a hint and relevant method (KafkaOffsetRangeCalculator.getRanges) doesn't guarantee the behavior that partitions will be equal or more than given value.
d67b98ea01/external/kafka-0-10-sql/src/main/scala/org/apache/spark/sql/kafka010/KafkaOffsetRangeCalculator.scala (L32-L46)
This patch makes clear the configuration is a hint, and actual partitions could be less or more.
## How was this patch tested?
Just a documentation change.
Closes#25332 from HeartSaVioR/MINOR-correct-kafka-structured-streaming-doc-minpartition.
Authored-by: Jungtaek Lim (HeartSaVioR) <kabhwan@gmail.com>
Signed-off-by: Dongjoon Hyun <dhyun@apple.com>
## What changes were proposed in this pull request?
See discussion on the JIRA (and dev). At heart, we find that math.log and math.pow can actually return slightly different results across platforms because of hardware optimizations. For the actual SQL log and pow functions, I propose that we should use StrictMath instead to ensure the answers are already the same. (This should have the benefit of helping tests pass on aarch64.)
Further, the atanh function (which is not part of java.lang.Math) can be implemented in a slightly different and more accurate way.
## How was this patch tested?
Existing tests (which will need to be changed).
Some manual testing locally to understand the numeric issues.
Closes#25279 from srowen/SPARK-28519.
Authored-by: Sean Owen <sean.owen@databricks.com>
Signed-off-by: Sean Owen <sean.owen@databricks.com>
## What changes were proposed in this pull request?
Imputer currently requires input column to be Double or Float, but the logic should work on any numeric data types. Many practical problems have integer data types, and it could get very tedious to manually cast them into Double before calling imputer. This transformer could be extended to handle all numeric types.
## How was this patch tested?
new test
Closes#17864 from actuaryzhang/imputer.
Lead-authored-by: actuaryzhang <actuaryzhang10@gmail.com>
Co-authored-by: Wayne Zhang <actuaryzhang@uber.com>
Signed-off-by: Sean Owen <sean.owen@databricks.com>
## What changes were proposed in this pull request?
Update HashingTF to use new implementation of MurmurHash3
Make HashingTF use the old MurmurHash3 when a model from pre 3.0 is loaded
## How was this patch tested?
Change existing unit tests. Also add one unit test to make sure HashingTF use the old MurmurHash3 when a model from pre 3.0 is loaded
Closes#25303 from huaxingao/spark-23469.
Authored-by: Huaxin Gao <huaxing@us.ibm.com>
Signed-off-by: Sean Owen <sean.owen@databricks.com>
## What changes were proposed in this pull request?
This PR implements Spark's own GetFunctionsOperation which mitigates the differences between Spark SQL and Hive UDFs. But our implementation is different from Hive's implementation:
- Our implementation always returns results. Hive only returns results when [(null == catalogName || "".equals(catalogName)) && (null == schemaName || "".equals(schemaName))](https://github.com/apache/hive/blob/rel/release-3.1.1/service/src/java/org/apache/hive/service/cli/operation/GetFunctionsOperation.java#L101-L119).
- Our implementation pads the `REMARKS` field with the function usage - Hive returns an empty string.
- Our implementation does not support `FUNCTION_TYPE`, but Hive does.
## How was this patch tested?
unit tests
Closes#25252 from wangyum/SPARK-28510.
Authored-by: Yuming Wang <yumwang@ebay.com>
Signed-off-by: gatorsmile <gatorsmile@gmail.com>
## What changes were proposed in this pull request?
avoid `.ml.vector => .breeze.vector` conversion in `MaxAbsScaler`,
and reuse the transformation method in `StandardScalerModel`, which can deal with dense & sparse vector separately.
## How was this patch tested?
existing suites
Closes#25311 from zhengruifeng/maxabs_opt.
Authored-by: zhengruifeng <ruifengz@foxmail.com>
Signed-off-by: Sean Owen <sean.owen@databricks.com>