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9249 commits

Author SHA1 Message Date
Maxim Gekk cec9604eae [SPARK-31237][SQL][TESTS] Replace 3-letter time zones by zone offsets
### What changes were proposed in this pull request?
In the PR, I propose to add a few `ZoneId` constant values to the `DateTimeTestUtils` object, and reuse the constants in tests. Proposed the following constants:
- PST = -08:00
- UTC = +00:00
- CEST = +02:00
- CET = +01:00
- JST = +09:00
- MIT = -09:30
- LA = America/Los_Angeles

### Why are the changes needed?
All proposed constant values (except `LA`) are initialized by zone offsets according to their definitions. This will allow to avoid:
- Using of 3-letter time zones that have been already deprecated in JDK, see _Three-letter time zone IDs_ in https://docs.oracle.com/javase/8/docs/api/java/util/TimeZone.html
- Incorrect mapping of 3-letter time zones to zone offsets, see SPARK-31237. For example, `PST` is mapped to `America/Los_Angeles` instead of the `-08:00` zone offset.

Also this should improve stability and maintainability of test suites.

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

### How was this patch tested?
By running affected test suites.

Closes #28001 from MaxGekk/replace-pst.

Authored-by: Maxim Gekk <max.gekk@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2020-03-26 13:36:00 +08:00
Wenchen Fan 4f274a4de9
[SPARK-31147][SQL] Forbid CHAR type in non-Hive-Serde tables
### What changes were proposed in this pull request?

Spark introduced CHAR type for hive compatibility but it only works for hive tables. CHAR type is never documented and is treated as STRING type for non-Hive tables.

However, this leads to confusing behaviors

**Apache Spark 3.0.0-preview2**
```
spark-sql> CREATE TABLE t(a CHAR(3));

spark-sql> INSERT INTO TABLE t SELECT 'a ';

spark-sql> SELECT a, length(a) FROM t;
a 	2
```

**Apache Spark 2.4.5**
```
spark-sql> CREATE TABLE t(a CHAR(3));

spark-sql> INSERT INTO TABLE t SELECT 'a ';

spark-sql> SELECT a, length(a) FROM t;
a  	3
```

According to the SQL standard, `CHAR(3)` should guarantee all the values are of length 3. Since `CHAR(3)` is treated as STRING so Spark doesn't guarantee it.

This PR forbids CHAR type in non-Hive tables as it's not supported correctly.

### Why are the changes needed?

avoid confusing/wrong behavior

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

yes, now users can't create/alter non-Hive tables with CHAR type.

### How was this patch tested?

new tests

Closes #27902 from cloud-fan/char.

Authored-by: Wenchen Fan <wenchen@databricks.com>
Signed-off-by: Dongjoon Hyun <dongjoon@apache.org>
2020-03-25 09:25:55 -07:00
Takeshi Yamamuro da49f50621
[SPARK-25121][SQL][FOLLOWUP] Add more unit tests for multi-part identifiers in join strategy hints
### What changes were proposed in this pull request?

This pr intends to add unit tests for the other join hints (`MERGEJOIN`, `SHUFFLE_HASH`, and `SHUFFLE_REPLICATE_NL`). This is a followup PR of #27935.

### Why are the changes needed?

For better test coverage.

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

No.

### How was this patch tested?

Added unit tests.

Closes #28013 from maropu/SPARK-25121-FOLLOWUP.

Authored-by: Takeshi Yamamuro <yamamuro@apache.org>
Signed-off-by: Dongjoon Hyun <dongjoon@apache.org>
2020-03-25 08:37:28 -07:00
Maxim Gekk 27d53de10f [SPARK-31232][SQL][DOCS] Specify formats of spark.sql.session.timeZone
### What changes were proposed in this pull request?
In the PR, I propose to update the doc for `spark.sql.session.timeZone`, and restrict format of config's values to 2 forms:
1. Geographical regions, such as `America/Los_Angeles`.
2. Fixed offsets - a fully resolved offset from UTC. For example, `-08:00`.

### Why are the changes needed?
Other formats such as three-letter time zone IDs are ambitious, and depend on the locale. For example, `CST` could be U.S. `Central Standard Time` and `China Standard Time`. Such formats have been already deprecated in JDK, see [Three-letter time zone IDs](https://docs.oracle.com/javase/8/docs/api/java/util/TimeZone.html).

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

### How was this patch tested?
By running `./dev/scalastyle`, and manual testing.

Closes #27999 from MaxGekk/doc-session-time-zone.

Authored-by: Maxim Gekk <max.gekk@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2020-03-25 16:32:28 +08:00
samsetegne 44431d4b1a [SPARK-30822][SQL] Remove semicolon at the end of a sql query
# What changes were proposed in this pull request?
This change proposes ignoring a terminating semicolon from queries submitted by the user (if included) instead of raising a parse exception.

# Why are the changes needed?
When a user submits a directly executable SQL statement terminated with a semicolon, they receive an `org.apache.spark.sql.catalyst.parser.ParseException` of `extraneous input ';' expecting <EOF>`. SQL-92 describes a direct SQL statement as having the format of `<directly executable statement> <semicolon>` and the majority of SQL implementations either require the semicolon as a statement terminator, or make it optional (meaning not raising an exception when it's included, seemingly in recognition that it's a common behavior).

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

# How was this patch tested?
Unit test added to `PlanParserSuite`
```
sbt> project catalyst
sbt> testOnly *PlanParserSuite
[info] - case insensitive (565 milliseconds)
[info] - explain (9 milliseconds)
[info] - set operations (41 milliseconds)
[info] - common table expressions (31 milliseconds)
[info] - simple select query (47 milliseconds)
[info] - hive-style single-FROM statement (11 milliseconds)
[info] - multi select query (32 milliseconds)
[info] - query organization (41 milliseconds)
[info] - insert into (12 milliseconds)
[info] - aggregation (24 milliseconds)
[info] - limit (11 milliseconds)
[info] - window spec (11 milliseconds)
[info] - lateral view (17 milliseconds)
[info] - joins (62 milliseconds)
[info] - sampled relations (11 milliseconds)
[info] - sub-query (11 milliseconds)
[info] - scalar sub-query (9 milliseconds)
[info] - table reference (2 milliseconds)
[info] - table valued function (8 milliseconds)
[info] - SPARK-20311 range(N) as alias (2 milliseconds)
[info] - SPARK-20841 Support table column aliases in FROM clause (3 milliseconds)
[info] - SPARK-20962 Support subquery column aliases in FROM clause (4 milliseconds)
[info] - SPARK-20963 Support aliases for join relations in FROM clause (3 milliseconds)
[info] - inline table (23 milliseconds)
[info] - simple select query with !> and !< (5 milliseconds)
[info] - select hint syntax (34 milliseconds)
[info] - SPARK-20854: select hint syntax with expressions (12 milliseconds)
[info] - SPARK-20854: multiple hints (4 milliseconds)
[info] - TRIM function (16 milliseconds)
[info] - OVERLAY function (16 milliseconds)
[info] - precedence of set operations (18 milliseconds)
[info] - create/alter view as insert into table (4 milliseconds)
[info] - Invalid insert constructs in the query (10 milliseconds)
[info] - relation in v2 catalog (3 milliseconds)
[info] - CTE with column alias (2 milliseconds)
[info] - statement containing terminal semicolons (3 milliseconds)
[info] ScalaTest
[info] Run completed in 3 seconds, 129 milliseconds.
[info] Total number of tests run: 36
[info] Suites: completed 1, aborted 0
[info] Tests: succeeded 36, failed 0, canceled 0, ignored 0, pending 0
[info] All tests passed.
[info] Passed: Total 36, Failed 0, Errors 0, Passed 36
```

### Current behavior:
#### scala
```scala
scala> val df = sql("select 1")
// df: org.apache.spark.sql.DataFrame = [1: int]
scala> df.show()
// +---+
// |  1|
// +---+
// |  1|
// +---+

scala> val df = sql("select 1;")
// org.apache.spark.sql.catalyst.parser.ParseException:
// extraneous input ';' expecting <EOF>(line 1, pos 8)

// == SQL ==
// select 1;
// --------^^^

//   at org.apache.spark.sql.catalyst.parser.ParseException.withCommand(ParseDriver.scala:263)
//   at org.apache.spark.sql.catalyst.parser.AbstractSqlParser.parse(ParseDriver.scala:130)
//   at org.apache.spark.sql.execution.SparkSqlParser.parse(SparkSqlParser.scala:52)
//   at org.apache.spark.sql.catalyst.parser.AbstractSqlParser.parsePlan(ParseDriver.scala:76)
//   at org.apache.spark.sql.SparkSession.$anonfun$sql$1(SparkSession.scala:605)
//   at org.apache.spark.sql.catalyst.QueryPlanningTracker.measurePhase(QueryPlanningTracker.scala:111)
//   at org.apache.spark.sql.SparkSession.sql(SparkSession.scala:605)
//   ... 47 elided
```
#### pyspark
```python
df = spark.sql('select 1')
df.show()
#+---+
#|  1|
#+---+
#|  1|
#+---+

df = spark.sql('select 1;')
# Traceback (most recent call last):
#   File "<stdin>", line 1, in <module>
#   File "/Users/ssetegne/spark/python/pyspark/sql/session.py", line 646, in sql
#     return DataFrame(self._jsparkSession.sql(sqlQuery), self._wrapped)
#   File "/Users/ssetegne/spark/python/lib/py4j-0.10.8.1-src.zip/py4j/java_gateway.py", line 1286, in # __call__
#   File "/Users/ssetegne/spark/python/pyspark/sql/utils.py", line 102, in deco
#     raise converted
# pyspark.sql.utils.ParseException:
# extraneous input ';' expecting <EOF>(line 1, pos 8)

# == SQL ==
# select 1;
# --------^^^
```

### Behavior after proposed fix:
#### scala
```scala
scala> val df = sql("select 1")
// df: org.apache.spark.sql.DataFrame = [1: int]
scala> df.show()
// +---+
// |  1|
// +---+
// |  1|
// +---+

scala> val df = sql("select 1;")
// df: org.apache.spark.sql.DataFrame = [1: int]
scala> df.show()
// +---+
// |  1|
// +---+
// |  1|
// +---+
```
#### pyspark
```python
df = spark.sql('select 1')
df.show()
#+---+
#|    1 |
#+---+
#|    1 |
#+---+

df = spark.sql('select 1;')
df.show()
#+---+
#|    1 |
#+---+
#|    1 |
#+---+
```

Closes #27567 from samsetegne/semicolon.

Authored-by: samsetegne <samuelsetegne@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2020-03-25 15:00:15 +08:00
Kousuke Saruta 999c9ed10c [SPARK-31081][UI][SQL] Make display of stageId/stageAttemptId/taskId of sql metrics toggleable
### What changes were proposed in this pull request?

This is another solution for `SPARK-31081` and #27849 .
I added a checkbox which can toggle display of stageId/taskid in the SQL's DAG page.
Mainly, I implemented the toggleable texts in boxes with HTML label feature provided by `dagre-d3`.
The additional metrics are enclosed by `<span>` and control the appearance of the text.
But the exception is additional metrics in clusters.
We can use HTML label for cluster but layout will be broken so I choosed normal text label for clusters.
Due to that, this solution contains a little bit tricky code in`spark-sql-viz.js` to manipulate the metric texts and generate DOMs.

### Why are the changes needed?

It makes metrics harder to read after #26843 and user may not interest in extra info(stageId/StageAttemptId/taskId ) when they do not need debug.
#27849 control the appearance by a new configuration property but providing a checkbox is more flexible.

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

Yes.
[Additional metrics shown]
![with-checked](https://user-images.githubusercontent.com/4736016/77244214-0f6cd780-6c56-11ea-9275-a30758dd5339.png)

[Additional metrics hidden]
![without-chedked](https://user-images.githubusercontent.com/4736016/77244219-14ca2200-6c56-11ea-9874-33a466085fce.png)

### How was this patch tested?

Tested manually with a simple DataFrame operation.
* The appearance of additional metrics in the boxes are controlled by the newly added checkbox.
* No error found with JS-debugger.
* Checked/not-checked state is preserved after reloading.

Closes #27927 from sarutak/SPARK-31081.

Authored-by: Kousuke Saruta <sarutak@oss.nttdata.com>
Signed-off-by: Gengliang Wang <gengliang.wang@databricks.com>
2020-03-24 13:37:13 -07:00
yi.wu f6ff7d0cf8 [SPARK-30127][SQL] Support case class parameter for typed Scala UDF
### What changes were proposed in this pull request?

To support  case class parameter for typed Scala UDF, e.g.

```
case class TestData(key: Int, value: String)
val f = (d: TestData) => d.key * d.value.toInt
val myUdf = udf(f)
val df = Seq(("data", TestData(50, "2"))).toDF("col1", "col2")
checkAnswer(df.select(myUdf(Column("col2"))), Row(100) :: Nil)
```

### Why are the changes needed?

Currently, Spark UDF can only work on data types like java.lang.String, o.a.s.sql.Row, Seq[_], etc. This is inconvenient if user want to apply an operation on one column, and the column is struct type. You must access data from a Row object, instead of domain object like Dataset operations. It will be great if UDF can work on types that are supported by Dataset, e.g. case class.

And here's benchmark result of using case class comparing to row:

```scala

// case class:  58ms 65ms 59ms 64ms 61ms
// row:         59ms 64ms 73ms 84ms 69ms
val f1 = (d: TestData) => s"${d.key}, ${d.value}"
val f2 = (r: Row) => s"${r.getInt(0)}, ${r.getString(1)}"
val udf1 = udf(f1)
// set spark.sql.legacy.allowUntypedScalaUDF=true
val udf2 = udf(f2, StringType)

val df = spark.range(100000).selectExpr("cast (id as int) as id")
    .select(struct('id, lit("str")).as("col"))
df.cache().collect()

// warmup to exclude some extra influence
df.select(udf1('col)).write.mode(SaveMode.Overwrite).format("noop").save()
df.select(udf2('col)).write.mode(SaveMode.Overwrite).format("noop").save()

start = System.currentTimeMillis()
df.select(udf1('col)).write.mode(SaveMode.Overwrite).format("noop").save()
println(System.currentTimeMillis() - start)

start = System.currentTimeMillis()
df.select(udf2('col)).write.mode(SaveMode.Overwrite).format("noop").save()
println(System.currentTimeMillis() - start)

```

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

Yes. User now could be able to use typed Scala UDF with case class as input parameter.

### How was this patch tested?

Added unit tests.

Closes #27937 from Ngone51/udf_caseclass_support.

Authored-by: yi.wu <yi.wu@databricks.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2020-03-24 23:03:57 +08:00
Maxim Gekk 1fd4607d84 [SPARK-31221][SQL] Rebase any date-times in conversions to/from Java types
### What changes were proposed in this pull request?
In the PR, I propose to apply rebasing for all dates/timestamps in conversion functions `fromJavaDate()`, `toJavaDate()`, `toJavaTimestamp()` and `fromJavaTimestamp()`. The rebasing is performed via building a local date-time in an original calendar, extracting date-time fields from the result, and creating new local date-time in the target calendar.

### Why are the changes needed?
The changes are need to be compatible with previous Spark version (2.4.5 and earlier versions) not only before the Gregorian cutover date `1582-10-15` but also for dates after the date. For instance, Gregorian calendar implementation in Java 7 `java.util.GregorianCalendar` is not accurate in resolving time zone offsets as Gregorian calendar introduced since Java 8.

### Does this PR introduce any user-facing change?
Yes, this PR can introduce behavior changes for dates after `1582-10-15`, in particular conversions of zone ids to zone offsets will be much more accurate.

### How was this patch tested?
By existing test suites `DateTimeUtilsSuite`, `DateFunctionsSuite`, `DateExpressionsSuite`, `CollectionExpressionsSuite`, `HiveOrcHadoopFsRelationSuite`, `ParquetIOSuite`.

Closes #27980 from MaxGekk/reuse-rebase-funcs-in-java-funcs.

Authored-by: Maxim Gekk <max.gekk@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2020-03-24 21:14:25 +08:00
HyukjinKwon bd324007d5 [SPARK-31229][SQL][TESTS] Add unit tests TypeCoercion.findTypeForComplex and Cast.canCast in null <> complex types
### What changes were proposed in this pull request?

This PR (SPARK-31229) is rather a followup of https://github.com/apache/spark/pull/27926 (SPARK-31166). It adds unittests for `TypeCoercion.findTypeForComplex` and `Cast.canCast` about struct, map and array with the respect to null types.

### Why are the changes needed?

To detect which scope was broken in the future easily.

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

No, it's a test-only.

### How was this patch tested?

Unittests were added.

Closes #27990 from HyukjinKwon/SPARK-31166-followup.

Authored-by: HyukjinKwon <gurwls223@apache.org>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
2020-03-24 14:10:59 +09:00
Wenchen Fan 1d0f54951e [SPARK-31205][SQL] support string literal as the second argument of date_add/date_sub functions
### What changes were proposed in this pull request?

https://github.com/apache/spark/pull/26412 introduced a behavior change that `date_add`/`date_sub` functions can't accept string and double values in the second parameter. This is reasonable as it's error-prone to cast string/double to int at runtime.

However, using string literals as function arguments is very common in SQL databases. To avoid breaking valid use cases that the string literal is indeed an integer, this PR proposes to add ansi_cast for string literal in date_add/date_sub functions. If the string value is not a valid integer, we fail at query compiling time because of constant folding.

### Why are the changes needed?

avoid breaking changes

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

Yes, now 3.0 can run `date_add('2011-11-11', '1')` like 2.4

### How was this patch tested?

new tests.

Closes #27965 from cloud-fan/string.

Authored-by: Wenchen Fan <wenchen@databricks.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2020-03-24 12:07:22 +08:00
Maxim Gekk aa3a7429f4 [SPARK-31159][SQL][FOLLOWUP] Move checking of the rebaseDateTime flag out of the loop in VectorizedColumnReader
### What changes were proposed in this pull request?
In the PR, I propose to refactor reading of timestamps of the `TIMESTAMP_MILLIS` logical type from Parquet files in `VectorizedColumnReader`, and move checking of the `rebaseDateTime` flag out of the internal loop.

### Why are the changes needed?
To avoid any additional overhead of the checking the SQL config `spark.sql.legacy.parquet.rebaseDateTime.enabled` introduced by the PR https://github.com/apache/spark/pull/27915.

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

### How was this patch tested?
By running the test suite `ParquetIOSuite`.

Closes #27973 from MaxGekk/rebase-parquet-datetime-followup.

Authored-by: Maxim Gekk <max.gekk@gmail.com>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
2020-03-23 23:02:48 +09:00
yi.wu 5c4d44bb83 [SPARK-31190][SQL] ScalaReflection should not erasure user defined AnyVal type
### What changes were proposed in this pull request?

Improve `ScalaReflection` to only don't erasure non user defined `AnyVal` type, but still erasure other types, e.g. `Any`. And this brings two benefits:

1. Give better encode error message for some unsupported types, e.g. `Any`

2. Won't miss the walk path for the `AnyVal` type

### Why are the changes needed?

Firstly, PR #15284 added encode(serializeFor/deserializeFor) support for value class, which extends `AnyVal`, by not erasure types. But, this also introduce a problem that when user try to encoder unsupported types, e.g. `Any`, it will fail on `java.lang.ClassNotFoundException: scala.Any` due to the reason that `scala.Any` doesn't erasure to `java.lang.Object`.

Also, in current `getClassNameFromType()`, it always erasure types which could missing walked path for user defined `AnyVal` types.

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

Yes. For the test below:

```
case class Bar(i: Any)
case class Foo(i: Bar) extends AnyVal

test() {
  implicitly[ExpressionEncoder[Foo]]
}
```

Before:

```
java.lang.ClassNotFoundException: scala.Any
 at java.net.URLClassLoader.findClass(URLClassLoader.java:382)
 at java.lang.ClassLoader.loadClass(ClassLoader.java:418)
 at sun.misc.Launcher$AppClassLoader.loadClass(Launcher.java:355)
 ...
````

After:
```
java.lang.UnsupportedOperationException: No Encoder found for Any
 - field (class: "java.lang.Object", name: "i")
 - field (class: "org.apache.spark.sql.catalyst.encoders.Bar", name: "i")
 - root class: "org.apache.spark.sql.catalyst.encoders.Foo"
 at org.apache.spark.sql.catalyst.ScalaReflection$.$anonfun$serializerFor$1(ScalaReflection.scala:561)
```

### How was this patch tested?

Added unit test and test manually.

Closes #27959 from Ngone51/impr_anyval.

Authored-by: yi.wu <yi.wu@databricks.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2020-03-23 16:28:34 +08:00
Maxim Gekk db6247faa8 [SPARK-31211][SQL] Fix rebasing of 29 February of Julian leap years
### What changes were proposed in this pull request?
In the PR, I propose to fix the issue of rebasing leap years in Julian calendar to Proleptic Gregorian calendar in which the years are not leap years. In the Julian calendar, every four years is a leap year, with a leap day added to the month of February. In Proleptic Gregorian calendar, every year that is exactly divisible by four is a leap year, except for years that are exactly divisible by 100, but these centurial years are leap years, if they are exactly divisible by 400. In this ways, the date **1000-02-29** exists in the Julian calendar but not in Proleptic Gregorian calendar.

I modified the `rebaseJulianToGregorianMicros()` and `rebaseJulianToGregorianDays()` in `DateTimeUtils` by passing 1 as a day number of month while forming `LocalDate` or `LocalDateTime`, and adding the number of days using the `plusDays()` method. For example, **1000-02-29** doesn't exist in Proleptic Gregorian calendar, and `LocalDate.of(1000, 2, 29)` throws an exception. To avoid the issue, I build the `LocalDate.of(1000, 2, 1)` date and add 28 days. The `plusDays(28)` method produces the next valid date after `1000-02-28` which is **1000-03-01**.

### Why are the changes needed?
Before the changes, the `java.time.DateTimeException` exception is raised while loading the date `1000-02-29` from parquet files saved by Spark 2.4.5:
```scala
scala> spark.conf.set("spark.sql.legacy.parquet.rebaseDateTime.enabled", true)
scala> spark.read.parquet("/Users/maxim/tmp/before_1582/2_4_5_date_leap").show
20/03/21 03:03:59 ERROR Executor: Exception in task 0.0 in stage 3.0 (TID 3)
java.time.DateTimeException: Invalid date 'February 29' as '1000' is not a leap year
```
The parquet files were saved via the commands:
```shell
$ export TZ="America/Los_Angeles"
```
```scala
scala> scala> spark.conf.set("spark.sql.session.timeZone", "America/Los_Angeles")
scala> val df = Seq(java.sql.Date.valueOf("1000-02-29")).toDF("dateS").select($"dateS".as("date"))
df: org.apache.spark.sql.DataFrame = [date: date]
scala> df.write.mode("overwrite").parquet("/Users/maxim/tmp/before_1582/2_4_5_date_leap")
scala> spark.read.parquet("/Users/maxim/tmp/before_1582/2_4_5_date_leap").show
+----------+
|      date|
+----------+
|1000-02-29|
+----------+
```

### Does this PR introduce any user-facing change?
Yes, after the fix:
```scala
scala> spark.conf.set("spark.sql.session.timeZone", "America/Los_Angeles")
scala> spark.conf.set("spark.sql.legacy.parquet.rebaseDateTime.enabled", true)
scala> spark.read.parquet("/Users/maxim/tmp/before_1582/2_4_5_date_leap").show
+----------+
|      date|
+----------+
|1000-03-01|
+----------+
```

### How was this patch tested?
Added tests to `DateTimeUtilsSuite`.

Closes #27974 from MaxGekk/julian-date-29-feb.

Authored-by: Maxim Gekk <max.gekk@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2020-03-23 14:21:24 +08:00
LantaoJin 929b794e25
[SPARK-30494][SQL] Fix cached data leakage during replacing an existing view
### What changes were proposed in this pull request?

The cached RDD for plan "select 1" stays in memory forever until the session close. This cached data cannot be used since the view temp1 has been replaced by another plan. It's a memory leak.

We can reproduce by below commands:
```
Welcome to
      ____              __
     / __/__  ___ _____/ /__
    _\ \/ _ \/ _ `/ __/  '_/
   /___/ .__/\_,_/_/ /_/\_\   version 3.0.0-SNAPSHOT
      /_/

Using Scala version 2.12.10 (Java HotSpot(TM) 64-Bit Server VM, Java 1.8.0_201)
Type in expressions to have them evaluated.
Type :help for more information.

scala> spark.sql("create or replace temporary view temp1 as select 1")
scala> spark.sql("cache table temp1")
scala> spark.sql("create or replace temporary view temp1 as select 1, 2")
scala> spark.sql("cache table temp1")
scala> assert(spark.sharedState.cacheManager.lookupCachedData(sql("select 1, 2")).isDefined)
scala> assert(spark.sharedState.cacheManager.lookupCachedData(sql("select 1")).isDefined)
```

### Why are the changes needed?
Fix the memory leak, specially for long running mode.

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

### How was this patch tested?
Add an unit test.

Closes #27185 from LantaoJin/SPARK-30494.

Authored-by: LantaoJin <jinlantao@gmail.com>
Signed-off-by: Dongjoon Hyun <dongjoon@apache.org>
2020-03-22 22:22:13 -07:00
Eric Wu 3a48ea1fe0
[SPARK-31184][SQL] Support getTablesByType API of Hive Client
### What changes were proposed in this pull request?
Hive 2.3+ supports `getTablesByType` API, which will provide an efficient way to get HiveTable with specific type. Now, we have following mappings when using `HiveExternalCatalog`.
```
CatalogTableType.EXTERNAL  =>  HiveTableType.EXTERNAL_TABLE
CatalogTableType.MANAGED => HiveTableType.MANAGED_TABLE
CatalogTableType.VIEW => HiveTableType.VIRTUAL_VIEW
```
Without this API, we need to achieve the goal by `getTables` + `getTablesByName` + `filter with type`.

This PR add `getTablesByType` in `HiveShim`. For those hive versions don't support this API, `UnsupportedOperationException` will be thrown. And the upper logic should catch the exception and fallback to the filter solution mentioned above.

Since the JDK11 related fix in `Hive` is not released yet, manual tests against hive 2.3.7-SNAPSHOT is done by following the instructions of SPARK-29245.

### Why are the changes needed?
This API will provide better usability and performance if we want to get a list of hiveTables with specific type. For example `HiveTableType.VIRTUAL_VIEW` corresponding to `CatalogTableType.VIEW`.

### Does this PR introduce any user-facing change?
No, this is a support function.

### How was this patch tested?
Add tests in VersionsSuite and manually run JDK11 test with following settings:

- Hive 2.3.6 Metastore on JDK8
- Hive 2.3.7-SNAPSHOT library build from source of Hive 2.3 branch
- Spark build with Hive 2.3.7-SNAPSHOT on jdk-11.0.6

Closes #27952 from Eric5553/GetTableByType.

Authored-by: Eric Wu <492960551@qq.com>
Signed-off-by: Dongjoon Hyun <dongjoon@apache.org>
2020-03-21 17:41:23 -07:00
Kent Yao 88ae6c4481 [SPARK-31189][SQL][DOCS] Fix errors and missing parts for datetime pattern document
### What changes were proposed in this pull request?

Fix errors and missing parts for datetime pattern document
1. The pattern we use is similar to DateTimeFormatter and SimpleDateFormat but not identical. So we shouldn't use any of them in the API docs but use a link to the doc of our own.
2. Some pattern letters are missing
3. Some pattern letters are explicitly banned - Set('A', 'c', 'e', 'n', 'N')
4. the second fraction pattern different logic for parsing and formatting

### Why are the changes needed?

fix and improve doc
### Does this PR introduce any user-facing change?

yes, new and updated doc
### How was this patch tested?

pass Jenkins
viewed locally with `jekyll serve`
![image](https://user-images.githubusercontent.com/8326978/77044447-6bd3bb00-69fa-11ea-8d6f-7084166c5dea.png)

Closes #27956 from yaooqinn/SPARK-31189.

Authored-by: Kent Yao <yaooqinn@hotmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2020-03-20 21:59:26 +08:00
Maxim Gekk 6a668763b8 [SPARK-31195][SQL] Correct and reuse days rebase functions of DateTimeUtils in DaysWritable
### What changes were proposed in this pull request?
In the PR, I propose to correct and re-use functions from `DateTimeUtils` for rebasing days before the cutover day `1582-10-15` in `org.apache.spark.sql.hive.DaysWritable`.

### Why are the changes needed?
0. Existing rebasing of days in `DaysWritable` is not correct.
1. To deduplicate code in `DaysWritable`
2. To use functions that are better tested and cross checked by loading dates/timestamps from Parquet/Avro files written by Spark 2.4.5

### Does this PR introduce any user-facing change?
This PR can introduce behavior change because the replaced code is different from the re-used code from `DateTimeUtils`.

### How was this patch tested?
By existing test suite, for instance `HiveOrcHadoopFsRelationSuite`.

Closes #27962 from MaxGekk/reuse-rebase-funcs.

Authored-by: Maxim Gekk <max.gekk@gmail.com>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
2020-03-20 15:57:21 +09:00
Maxim Gekk 4766a36647 [SPARK-31183][SQL] Rebase date/timestamp from/to Julian calendar in Avro
### What changes were proposed in this pull request?
The PR addresses the issue of compatibility with Spark 2.4 and earlier version in reading/writing dates and timestamp via **Avro** datasource. Previous releases are based on a hybrid calendar - Julian + Gregorian. Since Spark 3.0, Proleptic Gregorian calendar is used by default, see SPARK-26651. In particular, the issue pops up for dates/timestamps before 1582-10-15 when the hybrid calendar switches from/to Gregorian to/from Julian calendar. The same local date in different calendar is converted to different number of days since the epoch 1970-01-01. For example, the 1001-01-01 date is converted to:
- -719164 in Julian calendar. Spark 2.4 saves the number as a value of DATE type into **Avro** files.
- -719162 in Proleptic Gregorian calendar. Spark 3.0 saves the number as a date value.

The PR proposes rebasing from/to Proleptic Gregorian calendar to the hybrid one under the SQL config:
```
spark.sql.legacy.avro.rebaseDateTime.enabled
```
which is set to `false` by default which means the rebasing is not performed by default.

The details of the implementation:
1. Re-use 2 methods of `DateTimeUtils` added by the PR https://github.com/apache/spark/pull/27915 for rebasing microseconds.
2. Re-use 2 methods of `DateTimeUtils` added by the PR https://github.com/apache/spark/pull/27915 for rebasing days.
3. Use `rebaseGregorianToJulianMicros()` and `rebaseGregorianToJulianDays()` while saving timestamps/dates to **Avro** files if the SQL config is on.
4. Use `rebaseJulianToGregorianMicros()` and `rebaseJulianToGregorianDays()` while loading timestamps/dates from **Avro** files if the SQL config is on.
5. The SQL config `spark.sql.legacy.avro.rebaseDateTime.enabled` controls conversions from/to dates, and timestamps of the `timestamp-millis`, `timestamp-micros` logical types.

### Why are the changes needed?
For the backward compatibility with Spark 2.4 and earlier versions. The changes allow users to read dates/timestamps saved by previous version, and get the same result. Also after the changes, users can enable the rebasing in write, and save dates/timestamps that can be loaded correctly by Spark 2.4 and earlier versions.

### Does this PR introduce any user-facing change?
Yes, the timestamp `1001-01-01 01:02:03.123456` saved by Spark 2.4.5 as `timestamp-micros` is interpreted by Spark 3.0.0-preview2 differently:
```scala
scala> spark.conf.set("spark.sql.session.timeZone", "America/Los_Angeles")
scala> spark.read.format("avro").load("/Users/maxim/tmp/before_1582/2_4_5_date_avro").show(false)
+----------+
|date      |
+----------+
|1001-01-07|
+----------+
```
After the changes:
```scala
scala> spark.conf.set("spark.sql.legacy.avro.rebaseDateTime.enabled", true)
scala> spark.conf.set("spark.sql.session.timeZone", "America/Los_Angeles")

scala> spark.read.format("avro").load("/Users/maxim/tmp/before_1582/2_4_5_date_avro").show(false)
+----------+
|date      |
+----------+
|1001-01-01|
+----------+
```

### How was this patch tested?
1. Added tests to `AvroLogicalTypeSuite` to check rebasing in read. The test reads back avro files saved by Spark 2.4.5 via:
```shell
$ export TZ="America/Los_Angeles"
```
```scala
scala> spark.conf.set("spark.sql.session.timeZone", "America/Los_Angeles")
scala> val df = Seq("1001-01-01").toDF("dateS").select($"dateS".cast("date").as("date"))
df: org.apache.spark.sql.DataFrame = [date: date]
scala> df.write.format("avro").save("/Users/maxim/tmp/before_1582/2_4_5_date_avro")

scala> val df2 = Seq("1001-01-01 01:02:03.123456").toDF("tsS").select($"tsS".cast("timestamp").as("ts"))
df2: org.apache.spark.sql.DataFrame = [ts: timestamp]
scala> df2.write.format("avro").save("/Users/maxim/tmp/before_1582/2_4_5_ts_avro")

scala> :paste
// Entering paste mode (ctrl-D to finish)

  val timestampSchema = s"""
    |  {
    |    "namespace": "logical",
    |    "type": "record",
    |    "name": "test",
    |    "fields": [
    |      {"name": "ts", "type": ["null", {"type": "long","logicalType": "timestamp-millis"}], "default": null}
    |    ]
    |  }
    |""".stripMargin

// Exiting paste mode, now interpreting.
scala> df3.write.format("avro").option("avroSchema", timestampSchema).save("/Users/maxim/tmp/before_1582/2_4_5_ts_millis_avro")

```

2. Added the following tests to `AvroLogicalTypeSuite` to check rebasing of dates/timestamps (in microsecond and millisecond precision). The tests write rebased a date/timestamps and read them back w/ enabled/disabled rebasing, and compare results. :
  - `rebasing microseconds timestamps in write`
  - `rebasing milliseconds timestamps in write`
  - `rebasing dates in write`

Closes #27953 from MaxGekk/rebase-avro-datetime.

Authored-by: Maxim Gekk <max.gekk@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2020-03-20 13:57:49 +08:00
Dongjoon Hyun f1cc86792f [SPARK-31181][SQL][TESTS] Remove the default value assumption on CREATE TABLE test cases
### What changes were proposed in this pull request?

A few `CREATE TABLE` test cases have some assumption on the default value of `LEGACY_CREATE_HIVE_TABLE_BY_DEFAULT_ENABLED`. This PR (SPARK-31181) makes the test cases more explicit from test-case side.

The configuration change was tested via https://github.com/apache/spark/pull/27894 during discussing SPARK-31136. This PR has only the test case part from that PR.

### Why are the changes needed?

This makes our test case more robust in terms of the default value of `LEGACY_CREATE_HIVE_TABLE_BY_DEFAULT_ENABLED`. Even in the case where we switch the conf value, that will be one-liner with no test case changes.

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

No.

### How was this patch tested?

Pass the Jenkins with the existing tests.

Closes #27946 from dongjoon-hyun/SPARK-EXPLICIT-TEST.

Authored-by: Dongjoon Hyun <dongjoon@apache.org>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2020-03-20 12:28:57 +08:00
Takeshi Yamamuro ca499e9409
[SPARK-25121][SQL] Supports multi-part table names for broadcast hint resolution
### What changes were proposed in this pull request?

This pr fixed code to respect a database name for broadcast table hint resolution.
Currently, spark ignores a database name in multi-part names;
```
scala> sql("CREATE DATABASE testDb")
scala> spark.range(10).write.saveAsTable("testDb.t")

// without this patch
scala> spark.range(10).join(spark.table("testDb.t"), "id").hint("broadcast", "testDb.t").explain
== Physical Plan ==
*(2) Project [id#24L]
+- *(2) BroadcastHashJoin [id#24L], [id#26L], Inner, BuildLeft
   :- BroadcastExchange HashedRelationBroadcastMode(List(input[0, bigint, false]))
   :  +- *(1) Range (0, 10, step=1, splits=4)
   +- *(2) Project [id#26L]
      +- *(2) Filter isnotnull(id#26L)
         +- *(2) FileScan parquet testdb.t[id#26L] Batched: true, Format: Parquet, Location: InMemoryFileIndex[file:/Users/maropu/Repositories/spark/spark-2.3.1-bin-hadoop2.7/spark-warehouse..., PartitionFilters: [], PushedFilters: [IsNotNull(id)], ReadSchema: struct<id:bigint>

// with this patch
scala> spark.range(10).join(spark.table("testDb.t"), "id").hint("broadcast", "testDb.t").explain
== Physical Plan ==
*(2) Project [id#3L]
+- *(2) BroadcastHashJoin [id#3L], [id#5L], Inner, BuildRight
   :- *(2) Range (0, 10, step=1, splits=4)
   +- BroadcastExchange HashedRelationBroadcastMode(List(input[0, bigint, true]))
      +- *(1) Project [id#5L]
         +- *(1) Filter isnotnull(id#5L)
            +- *(1) FileScan parquet testdb.t[id#5L] Batched: true, Format: Parquet, Location: InMemoryFileIndex[file:/Users/maropu/Repositories/spark/spark-master/spark-warehouse/testdb.db/t], PartitionFilters: [], PushedFilters: [IsNotNull(id)], ReadSchema: struct<id:bigint>
```

This PR comes from https://github.com/apache/spark/pull/22198

### Why are the changes needed?

For better usability.

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

No.

### How was this patch tested?

Added unit tests.

Closes #27935 from maropu/SPARK-25121-2.

Authored-by: Takeshi Yamamuro <yamamuro@apache.org>
Signed-off-by: Dongjoon Hyun <dongjoon@apache.org>
2020-03-19 20:11:04 -07:00
Dongjoon Hyun c6a6d5e006
Revert "[SPARK-31170][SQL] Spark SQL Cli should respect hive-site.xml and spark.sql.warehouse.dir"
This reverts commit 5bc0d76591.

Signed-off-by: Dongjoon Hyun <dongjoon@apache.org>
2020-03-19 16:08:51 -07:00
Wenchen Fan ac262cb272 [SPARK-30292][SQL][FOLLOWUP] ansi cast from strings to integral numbers (byte/short/int/long) should fail with fraction
### What changes were proposed in this pull request?

This is a followup of https://github.com/apache/spark/pull/26933

Fraction string like "1.23" is definitely not a valid integral format and we should fail to do the cast under the ANSI mode.

### Why are the changes needed?

correct the ANSI cast behavior from string to integral

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

Yes under ANSI mode, but ANSI mode is off by default.

### How was this patch tested?

new test

Closes #27957 from cloud-fan/ansi.

Authored-by: Wenchen Fan <wenchen@databricks.com>
Signed-off-by: Takeshi Yamamuro <yamamuro@apache.org>
2020-03-20 00:52:09 +09:00
Kris Mok a1776288f4 [SPARK-31187][SQL] Sort the whole-stage codegen debug output by codegenStageId
### What changes were proposed in this pull request?

Spark SQL's whole-stage codegen (WSCG) supports dumping the generated code to help with debugging. One way to get the generated code is through `df.queryExecution.debug.codegen`, or SQL `EXPLAIN CODEGEN` statement.

The generated code is currently printed without specific ordering, which can make debugging a bit annoying. This PR makes a minor improvement to sort the codegen dump by the `codegenStageId`, ascending.

After this change, the following query:
```scala
spark.range(10).agg(sum('id)).queryExecution.debug.codegen
```
will always dump the generated code in a natural, stable order. A version of this example with shorter output is:
```
spark.range(10).agg(sum('id)).queryExecution.debug.codegenToSeq.map(_._1).foreach(println)
*(1) HashAggregate(keys=[], functions=[partial_sum(id#8L)], output=[sum#15L])
+- *(1) Range (0, 10, step=1, splits=16)

*(2) HashAggregate(keys=[], functions=[sum(id#8L)], output=[sum(id)#12L])
+- Exchange SinglePartition, true, [id=#30]
   +- *(1) HashAggregate(keys=[], functions=[partial_sum(id#8L)], output=[sum#15L])
      +- *(1) Range (0, 10, step=1, splits=16)
```

The number of codegen stages within a single SQL query tends to be very small, most likely < 50, so the overhead of adding the sorting shouldn't be significant.

### Why are the changes needed?

Minor improvement to aid WSCG debugging.

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

No user-facing change for end-users; minor change for developers who debug WSCG generated code.

### How was this patch tested?

Manually tested the output; all other tests still pass.

Closes #27955 from rednaxelafx/codegen.

Authored-by: Kris Mok <kris.mok@databricks.com>
Signed-off-by: Takeshi Yamamuro <yamamuro@apache.org>
2020-03-19 20:53:01 +09:00
Maxim Gekk bb295d80e3 [SPARK-31159][SQL] Rebase date/timestamp from/to Julian calendar in parquet
### What changes were proposed in this pull request?
The PR addresses the issue of compatibility with Spark 2.4 and earlier version in reading/writing dates and timestamp via Parquet datasource. Previous releases are based on a hybrid calendar - Julian + Gregorian. Since Spark 3.0, Proleptic Gregorian calendar is used by default, see SPARK-26651. In particular, the issue pops up for dates/timestamps before 1582-10-15 when the hybrid calendar switches from/to Gregorian to/from Julian calendar. The same local date in different calendar is converted to different number of days since the epoch 1970-01-01. For example, the 1001-01-01 date is converted to:
- -719164 in Julian calendar. Spark 2.4 saves the number as a value of DATE type into parquet.
- -719162 in Proleptic Gregorian calendar. Spark 3.0 saves the number as a date value.

According to the parquet spec, parquet timestamps of the `TIMESTAMP_MILLIS`, `TIMESTAMP_MICROS` output type and parquet dates should be based on Proleptic Gregorian calendar but the `INT96` timestamps should be stored as Julian days. Since the version 3.0, Spark conforms the spec but for the backward compatibility with previous version, the PR proposes rebasing from/to Proleptic Gregorian calendar to the hybrid one under the SQL config:
```
spark.sql.legacy.parquet.rebaseDateTime.enabled
```
which is set to `false` by default which means the rebasing is not performed by default.

The details of the implementation:
1. Added 2 methods to `DateTimeUtils` for rebasing microseconds. `rebaseGregorianToJulianMicros()` builds a local timestamp in Proleptic Gregorian calendar, extracts date-time fields `year`, `month`, ..., `second fraction` from the local timestamp and uses them to build another local timestamp based on the hybrid calendar (using `java.util.Calendar` API). After that it calculates the number of microseconds since the epoch using the resulted local timestamp. The function performs the conversion via the system JVM time zone for compatibility with Spark 2.4 and earlier versions. The `rebaseJulianToGregorianMicros()` function does reverse conversion.
2. Added 2 methods to `DateTimeUtils` for rebasing days. `rebaseGregorianToJulianDays()` builds a local date from the passed number of days since the epoch in Proleptic Gregorian calendar, interprets the resulted date as a local date in the hybrid calendar and gets the number of days since the epoch from the resulted local date. The conversion is performed via the `UTC` time zone because the conversion is independent from time zones, and `UTC` is selected to void round issues of casting days to milliseconds and back. The `rebaseJulianToGregorianDays()` functions does revers conversion.
3. Use `rebaseGregorianToJulianMicros()` and `rebaseGregorianToJulianDays()` while saving timestamps/dates to parquet files if the SQL config is on.
4. Use `rebaseJulianToGregorianMicros()` and `rebaseJulianToGregorianDays()` while loading timestamps/dates from parquet files if the SQL config is on.
5. The SQL config `spark.sql.legacy.parquet.rebaseDateTime.enabled` controls conversions from/to dates, timestamps of `TIMESTAMP_MILLIS`, `TIMESTAMP_MICROS`, see the SQL config `spark.sql.parquet.outputTimestampType`.
6. The rebasing is always performed for `INT96` timestamps, independently from `spark.sql.legacy.parquet.rebaseDateTime.enabled`.
7. Supported the vectorized parquet reader, see the SQL config `spark.sql.parquet.enableVectorizedReader`.

### Why are the changes needed?
- For the backward compatibility with Spark 2.4 and earlier versions. The changes allow users to read dates/timestamps saved by previous version, and get the same result. Also after the changes, users can enable the rebasing in write, and save dates/timestamps that can be loaded correctly by Spark 2.4 and earlier versions.
- It fixes the bug of incorrect saving/loading timestamps of the `INT96` type

### Does this PR introduce any user-facing change?
Yes, the timestamp `1001-01-01 01:02:03.123456` saved by Spark 2.4.5 as `TIMESTAMP_MICROS` is interpreted by Spark 3.0.0-preview2 differently:
```scala
scala> spark.read.parquet("/Users/maxim/tmp/before_1582/2_4_5_ts_micros").show(false)
+--------------------------+
|ts                        |
+--------------------------+
|1001-01-07 11:32:20.123456|
+--------------------------+
```
After the changes:
```scala
scala> spark.conf.set("spark.sql.legacy.parquet.rebaseDateTime.enabled", true)

scala> spark.read.parquet("/Users/maxim/tmp/before_1582/2_4_5_ts_micros").show(false)
+--------------------------+
|ts                        |
+--------------------------+
|1001-01-01 01:02:03.123456|
+--------------------------+
```

### How was this patch tested?
1. Added tests to `ParquetIOSuite` to check rebasing in read for regular reader and vectorized parquet reader. The test reads back parquet files saved by Spark 2.4.5 via:
```shell
$ export TZ="America/Los_Angeles"
```
```scala
scala> spark.conf.set("spark.sql.session.timeZone", "America/Los_Angeles")
scala> val df = Seq("1001-01-01").toDF("dateS").select($"dateS".cast("date").as("date"))
df: org.apache.spark.sql.DataFrame = [date: date]
scala> df.write.parquet("/Users/maxim/tmp/before_1582/2_4_5_date")

scala> val df = Seq("1001-01-01 01:02:03.123456").toDF("tsS").select($"tsS".cast("timestamp").as("ts"))
df: org.apache.spark.sql.DataFrame = [ts: timestamp]

scala> spark.conf.set("spark.sql.parquet.outputTimestampType", "TIMESTAMP_MICROS")
scala> df.write.parquet("/Users/maxim/tmp/before_1582/2_4_5_ts_micros")

scala> spark.conf.set("spark.sql.parquet.outputTimestampType", "TIMESTAMP_MILLIS")
scala> df.write.parquet("/Users/maxim/tmp/before_1582/2_4_5_ts_millis")

scala> spark.conf.set("spark.sql.parquet.outputTimestampType", "INT96")
scala> df.write.parquet("/Users/maxim/tmp/before_1582/2_4_5_ts_int96")
```
2. Manually check the write code path. Save date/timestamps (TIMESTAMP_MICROS, TIMESTAMP_MILLIS, INT96) by Spark 3.1.0-SNAPSHOT (after the changes):
```bash
$ export TZ="America/Los_Angeles"
```
```scala
scala> spark.conf.set("spark.sql.session.timeZone", "America/Los_Angeles")
scala> spark.conf.set("spark.sql.legacy.parquet.rebaseDateTime.enabled", true)
scala> spark.conf.set("spark.sql.parquet.outputTimestampType", "TIMESTAMP_MICROS")
scala> val df = Seq(("1001-01-01", "1001-01-01 01:02:03.123456")).toDF("dateS", "tsS").select($"dateS".cast("date").as("d"), $"tsS".cast("timestamp").as("ts"))
df: org.apache.spark.sql.DataFrame = [d: date, ts: timestamp]
scala> df.write.parquet("/Users/maxim/tmp/before_1582/3_0_0_micros")
scala> spark.read.parquet("/Users/maxim/tmp/before_1582/3_0_0_micros").show(false)
+----------+--------------------------+
|d         |ts                        |
+----------+--------------------------+
|1001-01-01|1001-01-01 01:02:03.123456|
+----------+--------------------------+
```
Read the saved date/timestamp by Spark 2.4.5:
```scala
scala> spark.conf.set("spark.sql.session.timeZone", "America/Los_Angeles")
scala> spark.read.parquet("/Users/maxim/tmp/before_1582/3_0_0_micros").show(false)
+----------+--------------------------+
|d         |ts                        |
+----------+--------------------------+
|1001-01-01|1001-01-01 01:02:03.123456|
+----------+--------------------------+
```

Closes #27915 from MaxGekk/rebase-parquet-datetime.

Authored-by: Maxim Gekk <max.gekk@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2020-03-19 12:49:51 +08:00
Burak Yavuz 4237251861 [SPARK-31178][SQL] Prevent V2 exec nodes from executing multiple times
### What changes were proposed in this pull request?

This PR prevents the execution of V2 DataSource exec nodes multiple times when `collect()` is called on them. For V1 DataSources, commands would be executed as a RunnableCommand, which would cache the result as part of the `ExecutedCommandExec` node. We extend `V2CommandExec` for all the data writing commands so that they only get executed once as well.

### Why are the changes needed?

Calling `collect()` on a SQL command that inserts data or creates a table gets executed multiple times otherwise.

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

Fixes a bug

### How was this patch tested?

Unit tests

Closes #27941 from brkyvz/doubleInsert.

Authored-by: Burak Yavuz <brkyvz@gmail.com>
Signed-off-by: Burak Yavuz <brkyvz@gmail.com>
2020-03-18 18:07:24 -07:00
Wenchen Fan 8643e5d9c5 [SPARK-31171][SQL][FOLLOWUP] update document
### What changes were proposed in this pull request?

A followup of https://github.com/apache/spark/pull/27936 to update document.

### Why are the changes needed?

correct document

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

no

### How was this patch tested?

N/A

Closes #27950 from cloud-fan/null.

Authored-by: Wenchen Fan <wenchen@databricks.com>
Signed-off-by: Takeshi Yamamuro <yamamuro@apache.org>
2020-03-19 07:29:31 +09:00
Kent Yao 3d695954e5 [SPARK-31150][SQL][FOLLOWUP] handle ' as escape for text
### What changes were proposed in this pull request?

pattern `''` means literal `'`

```sql
select date_format(to_timestamp("11111904-01-23 15:02:01", 'y-MM-dd HH:mm:ss'), "y-MM-dd HH:mm:ss''SSSSSSSSS");
5377-02-14 06:27:19'000000519
```
0946a9514f missed this case and this pr add it back.

### Why are the changes needed?

bugfix

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

no
### How was this patch tested?

add ut

Closes #27949 from yaooqinn/SPARK-31150-2.

Authored-by: Kent Yao <yaooqinn@hotmail.com>
Signed-off-by: Takeshi Yamamuro <yamamuro@apache.org>
2020-03-19 07:27:06 +09:00
yi.wu 8bfaa62f2f [SPARK-31175][SQL] Avoid creating reverse comparator for each compare in InterpretedOrdering
### What changes were proposed in this pull request?

Prpend `-` to the compare result instead of creating a new reverse comparator for each compare when sorting in DESC order in InterpretedOrdering.

### Why are the changes needed?

Currently, we'll create a new reverse comparator for each compare in InterpretedOrdering, which could generate lots of small and instant object and hurt JVM when there're plenty of data.

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

No.

### How was this patch tested?

Pass Jenkins.

Closes #27938 from Ngone51/reverse_comparator.

Authored-by: yi.wu <yi.wu@databricks.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2020-03-18 23:56:48 +08:00
Kent Yao 57fcc49306 [SPARK-31176][SQL] Remove support for 'e'/'c' as datetime pattern charactar
### What changes were proposed in this pull request?

The meaning of 'u' was day number of the week in SimpleDateFormat, it was changed to year in DateTimeFormatter. Now we keep the old meaning of 'u' by substituting 'u' to 'e' internally and use DateTimeFormatter to parse the pattern string. In DateTimeFormatter, the 'e' and 'c' also represents day-of-week. e.g.

```sql
select date_format(timestamp '2019-10-06', 'yyyy-MM-dd uuuu');
select date_format(timestamp '2019-10-06', 'yyyy-MM-dd uuee');
select date_format(timestamp '2019-10-06', 'yyyy-MM-dd eeee');
```
Because of the substitution, they all goes to `.... eeee` silently. The users may congitive problems of their meanings, so we should mark them as illegal pattern characters to stay the same as before.

This pr move the method `convertIncompatiblePattern` from `DatetimeUtils` to `DateTimeFormatterHelper` object, since it is quite specific for `DateTimeFormatterHelper` class.
And 'e' and 'c' char checking in this method.

Besides,`convertIncompatiblePattern` has a bug that will lose the last `'` if it ends with it, this pr fixes this too. e.g.

```sql
spark-sql> select date_format(timestamp "2019-10-06", "yyyy-MM-dd'S'");
20/03/18 11:19:45 ERROR SparkSQLDriver: Failed in [select date_format(timestamp "2019-10-06", "yyyy-MM-dd'S'")]
java.lang.IllegalArgumentException: Pattern ends with an incomplete string literal: uuuu-MM-dd'S

spark-sql> select to_timestamp("2019-10-06S", "yyyy-MM-dd'S'");
NULL
```
### Why are the changes needed?

avoid vagueness
bug fix

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

no, these are not  exposed yet

### How was this patch tested?

add ut

Closes #27939 from yaooqinn/SPARK-31176.

Authored-by: Kent Yao <yaooqinn@hotmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2020-03-18 20:19:50 +08:00
Kent Yao f1d27cdd91 [SPARK-31119][SQL] Add interval value support for extract expression as extract source
### What changes were proposed in this pull request?

```
<extract expression> ::= EXTRACT <left paren> <extract field> FROM <extract source> <right paren>

<extract source> ::= <datetime value expression> | <interval value expression>
```
We now only support datetime values as extract source for `extract` expression but it's alternative function `date_part` supports both datetime and interval.

This pr adds interval value support for `extract` expression as extract source

### Why are the changes needed?

For ANSI compliance and the semantic consistency between extract and `date_part`, we support intervals for extract expressions.

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

yes, in the `extract(abc from xyz)` expression, the `xyz` can be intervals

### How was this patch tested?

add unit tests

Closes #27876 from yaooqinn/SPARK-31119.

Authored-by: Kent Yao <yaooqinn@hotmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2020-03-18 12:29:39 +08:00
manuzhang 4e4e08f372
[SPARK-31047][SQL] Improve file listing for ViewFileSystem
### What changes were proposed in this pull request?
Use `listLocatedStatus` when `lnMemoryFileIndex` is listing files from a `ViewFileSystem` which should delegate to that of `DistributedFileSystem`.

### Why are the changes needed?
When `ViewFileSystem` is used to manage several `DistributedFileSystem`, the change will improve performance of file listing, especially when there are many files.

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

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

Closes #27801 from manuzhang/spark-31047.

Authored-by: manuzhang <owenzhang1990@gmail.com>
Signed-off-by: Dongjoon Hyun <dongjoon@apache.org>
2020-03-17 14:23:28 -07:00
Wenchen Fan dc5ebc2d5b
[SPARK-31171][SQL] size(null) should return null under ansi mode
### What changes were proposed in this pull request?

Make `size(null)` return null under ANSI mode, regardless of the `spark.sql.legacy.sizeOfNull` config.

### Why are the changes needed?

In https://github.com/apache/spark/pull/27834, we change the result of `size(null)` to be -1 to match the 2.4 behavior and avoid breaking changes.

However, it's true that the "return -1" behavior is error-prone when being used with aggregate functions. The current ANSI mode controls a bunch of "better behaviors" like failing on overflow. We don't enable these "better behaviors" by default because they are too breaking. The "return null" behavior of `size(null)` is a good fit of the ANSI mode.

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

No as ANSI mode is off by default.

### How was this patch tested?

new tests

Closes #27936 from cloud-fan/null.

Authored-by: Wenchen Fan <wenchen@databricks.com>
Signed-off-by: Dongjoon Hyun <dongjoon@apache.org>
2020-03-17 11:48:54 -07:00
Kent Yao 5bc0d76591 [SPARK-31170][SQL] Spark SQL Cli should respect hive-site.xml and spark.sql.warehouse.dir
### What changes were proposed in this pull request?

In Spark CLI, we create a hive `CliSessionState` and it does not load the `hive-site.xml`. So the configurations in `hive-site.xml` will not take effects like other spark-hive integration apps.

Also, the warehouse directory is not correctly picked. If the `default` database does not exist, the `CliSessionState` will create one during the first time it talks to the metastore. The `Location` of the default DB will be neither the value of `spark.sql.warehousr.dir` nor the user-specified value of `hive.metastore.warehourse.dir`, but the default value of `hive.metastore.warehourse.dir `which will always be `/user/hive/warehouse`.

### Why are the changes needed?

fix bug for Spark SQL cli to pick right confs

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

yes, the non-exists default database will be created in the location specified by the users via `spark.sql.warehouse.dir` or `hive.metastore.warehouse.dir`, or the default value of `spark.sql.warehouse.dir` if none of them specified.

### How was this patch tested?

add cli ut

Closes #27933 from yaooqinn/SPARK-31170.

Authored-by: Kent Yao <yaooqinn@hotmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2020-03-17 23:03:18 +08:00
Kent Yao 0946a9514f [SPARK-31150][SQL] Parsing seconds fraction with variable length for timestamp
### What changes were proposed in this pull request?
This PR is to support parsing timestamp values with variable length second fraction parts.

e.g. 'yyyy-MM-dd HH:mm:ss.SSSSSS[zzz]' can parse timestamp with 0~6 digit-length second fraction but fail >=7
```sql
select to_timestamp(v, 'yyyy-MM-dd HH:mm:ss.SSSSSS[zzz]') from values
 ('2019-10-06 10:11:12.'),
 ('2019-10-06 10:11:12.0'),
 ('2019-10-06 10:11:12.1'),
 ('2019-10-06 10:11:12.12'),
 ('2019-10-06 10:11:12.123UTC'),
 ('2019-10-06 10:11:12.1234'),
 ('2019-10-06 10:11:12.12345CST'),
 ('2019-10-06 10:11:12.123456PST') t(v)
2019-10-06 03:11:12.123
2019-10-06 08:11:12.12345
2019-10-06 10:11:12
2019-10-06 10:11:12
2019-10-06 10:11:12.1
2019-10-06 10:11:12.12
2019-10-06 10:11:12.1234
2019-10-06 10:11:12.123456

select to_timestamp('2019-10-06 10:11:12.1234567PST', 'yyyy-MM-dd HH:mm:ss.SSSSSS[zzz]')
NULL
```
Since 3.0, we use java 8 time API to parse and format timestamp values. when we create the `DateTimeFormatter`, we use `appendPattern` to create the build first, where the 'S..S' part will be parsed to a fixed-length(= `'S..S'.length`). This fits the formatting part but too strict for the parsing part because the trailing zeros are very likely to be truncated.

### Why are the changes needed?

improve timestamp parsing and more compatible with 2.4.x

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

no, the related changes are newly added
### How was this patch tested?

add uts

Closes #27906 from yaooqinn/SPARK-31150.

Authored-by: Kent Yao <yaooqinn@hotmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2020-03-17 21:53:46 +08:00
Takeshi Yamamuro 124b4ce2e6
[MINOR][SQL] Update the DataFrameWriter.bucketBy comment
### What changes were proposed in this pull request?

This PR intends to update the `DataFrameWriter.bucketBy` comment for clearly describing that the bucketBy scheme follows a Spark "specific" one.

I saw the questions about the current bucketing compatibility with Hive in [SPARK-31162](https://issues.apache.org/jira/browse/SPARK-31162?focusedCommentId=17060408&page=com.atlassian.jira.plugin.system.issuetabpanels%3Acomment-tabpanel#comment-17060408) and [SPARK-17495](https://issues.apache.org/jira/browse/SPARK-17495?focusedCommentId=17059847&page=com.atlassian.jira.plugin.system.issuetabpanels%3Acomment-tabpanel#comment-17059847) from users and IMHO the comment is a bit confusing to users about the compatibility

### Why are the changes needed?

To make users understood smoothly.

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

No.

### How was this patch tested?

N/A

Closes #27930 from maropu/UpdateBucketByComment.

Authored-by: Takeshi Yamamuro <yamamuro@apache.org>
Signed-off-by: Dongjoon Hyun <dongjoon@apache.org>
2020-03-17 00:52:45 -07:00
Wenchen Fan 30d95356f1 [SPARK-31134][SQL] optimize skew join after shuffle partitions are coalesced
### What changes were proposed in this pull request?

Run the `OptimizeSkewedJoin` rule after the `CoalesceShufflePartitions` rule.

### Why are the changes needed?

Remove duplicated coalescing code in `OptimizeSkewedJoin`.

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

No

### How was this patch tested?

existing tests

Closes #27893 from cloud-fan/aqe.

Authored-by: Wenchen Fan <wenchen@databricks.com>
Signed-off-by: gatorsmile <gatorsmile@gmail.com>
2020-03-17 00:23:16 -07:00
Zhenhua Wang 1369a973cd [SPARK-31164][SQL] Inconsistent rdd and output partitioning for bucket table when output doesn't contain all bucket columns
### What changes were proposed in this pull request?

For a bucketed table, when deciding output partitioning, if the output doesn't contain all bucket columns, the result is `UnknownPartitioning`. But when generating rdd, current Spark uses `createBucketedReadRDD` because it doesn't check if the output contains all bucket columns. So the rdd and its output partitioning are inconsistent.

### Why are the changes needed?

To fix a bug.

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

No.

### How was this patch tested?

Modified existing tests.

Closes #27924 from wzhfy/inconsistent_rdd_partitioning.

Authored-by: Zhenhua Wang <wzh_zju@163.com>
Signed-off-by: Zhenhua Wang <wzh_zju@163.com>
2020-03-17 14:20:16 +08:00
Wenchen Fan d7b97a1d0d [SPARK-31166][SQL] UNION map<null, null> and other maps should not fail
### What changes were proposed in this pull request?

After https://github.com/apache/spark/pull/27542, `map()` returns `map<null, null>` instead of `map<string, string>`. However, this breaks queries which union `map()` and other maps.

The reason is, `TypeCoercion` rules and `Cast` think it's illegal to cast null type map key to other types, as it makes the key nullable, but it's actually legal. This PR fixes it.

### Why are the changes needed?

To avoid breaking queries.

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

Yes, now some queries that work in 2.x can work in 3.0 as well.

### How was this patch tested?

new test

Closes #27926 from cloud-fan/bug.

Authored-by: Wenchen Fan <wenchen@databricks.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2020-03-17 12:01:29 +08:00
zero323 01f20394ac [SPARK-30569][SQL][PYSPARK][SPARKR] Add percentile_approx DSL functions
### What changes were proposed in this pull request?

- Adds following overloaded variants to Scala `o.a.s.sql.functions`:

  - `percentile_approx(e: Column, percentage: Array[Double], accuracy: Long): Column`
  - `percentile_approx(columnName: String, percentage: Array[Double], accuracy: Long): Column`
  - `percentile_approx(e: Column, percentage: Double, accuracy: Long): Column`
  - `percentile_approx(columnName: String, percentage: Double, accuracy: Long): Column`
  - `percentile_approx(e: Column, percentage: Seq[Double], accuracy: Long): Column` (primarily for
Python interop).
  - `percentile_approx(columnName: String, percentage: Seq[Double], accuracy: Long): Column`

- Adds `percentile_approx` to `pyspark.sql.functions`.

- Adds `percentile_approx` function to SparkR.

### Why are the changes needed?

Currently we support `percentile_approx` only in SQL expression. It is inconvenient and makes this function relatively unknown.

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

No.

### How was this patch tested?

New unit tests for SparkR an PySpark.

As for now there are no additional tests in Scala API ‒ `ApproximatePercentile` is well tested and Python (including docstrings) and R tests provide additional tests, so it seems unnecessary.

Closes #27278 from zero323/SPARK-30569.

Lead-authored-by: zero323 <mszymkiewicz@gmail.com>
Co-authored-by: HyukjinKwon <gurwls223@apache.org>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
2020-03-17 10:44:21 +09:00
yi.wu cb26f636b0
[SPARK-31163][SQL] TruncateTableCommand with acl/permission should handle non-existed path
### What changes were proposed in this pull request?

This fix #26956
Wrap try-catch on `fs.getFileStatus(path)` within acl/permission in case of the path doesn't exist.

### Why are the changes needed?

`truncate table` may fail to re-create path in case of interruption or something else. As a result, next time we `truncate table` on the same table with acl/permission, it will fail due to `FileNotFoundException`. And it also brings behavior change compares to previous Spark version, which could still `truncate table` successfully even if the path doesn't exist.

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

No.

### How was this patch tested?

Added UT.

Closes #27923 from Ngone51/fix_truncate.

Authored-by: yi.wu <yi.wu@databricks.com>
Signed-off-by: Dongjoon Hyun <dongjoon@apache.org>
2020-03-16 11:45:25 -07:00
HyukjinKwon 6704103499
[SPARK-31146][SQL] Leverage the helper method for aliasing in built-in SQL expressions
### What changes were proposed in this pull request?

This PR is kind of a followup of #26808. It leverages the helper method for aliasing in built-in SQL expressions to use the alias as its output column name where it's applicable.

- `Expression`, `UnaryMathExpression` and `BinaryMathExpression` search the alias in the tags by default.
- When the naming is different in its implementation, it has to be overwritten for the expression specifically. E.g., `CallMethodViaReflection`, `Remainder`, `CurrentTimestamp`,
`FormatString` and `XPathDouble`.

This PR fixes the aliases of the functions below:

| class                    | alias            |
|--------------------------|------------------|
|`Rand`                    |`random`          |
|`Ceil`                    |`ceiling`         |
|`Remainder`               |`mod`             |
|`Pow`                     |`pow`             |
|`Signum`                  |`sign`            |
|`Chr`                     |`char`            |
|`Length`                  |`char_length`     |
|`Length`                  |`character_length`|
|`FormatString`            |`printf`          |
|`Substring`               |`substr`          |
|`Upper`                   |`ucase`           |
|`XPathDouble`             |`xpath_number`    |
|`DayOfMonth`              |`day`             |
|`CurrentTimestamp`        |`now`             |
|`Size`                    |`cardinality`     |
|`Sha1`                    |`sha`             |
|`CallMethodViaReflection` |`java_method`     |

Note: `EqualTo`, `=` and `==` aliases were excluded because it's unable to leverage this helper method. It should fix the parser.

Note: this PR also excludes some instances such as `ToDegrees`, `ToRadians`, `UnaryMinus` and `UnaryPositive` that needs an explicit name overwritten to make the scope of this PR smaller.

### Why are the changes needed?

To respect expression name.

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

Yes, it will change the output column name.

### How was this patch tested?

Manually tested, and unittests were added.

Closes #27901 from HyukjinKwon/31146.

Authored-by: HyukjinKwon <gurwls223@apache.org>
Signed-off-by: Dongjoon Hyun <dongjoon@apache.org>
2020-03-16 11:22:34 -07:00
Tae-kyeom, Kim e736c62764
[SPARK-31116][SQL] Fix nested schema case-sensitivity in ParquetRowConverter
### What changes were proposed in this pull request?

This PR (SPARK-31116) add caseSensitive parameter to ParquetRowConverter so that it handle materialize parquet properly with respect to case sensitivity

### Why are the changes needed?

From spark 3.0.0, below statement throws IllegalArgumentException in caseInsensitive mode because of explicit field index searching in ParquetRowConverter. As we already constructed parquet requested schema and catalyst requested schema during schema clipping in ParquetReadSupport, just follow these behavior.

```scala
val path = "/some/temp/path"

spark
  .range(1L)
  .selectExpr("NAMED_STRUCT('lowercase', id, 'camelCase', id + 1) AS StructColumn")
  .write.parquet(path)

val caseInsensitiveSchema = new StructType()
  .add(
    "StructColumn",
    new StructType()
      .add("LowerCase", LongType)
      .add("camelcase", LongType))

spark.read.schema(caseInsensitiveSchema).parquet(path).show()
```

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

No. The changes are only in unreleased branches (`master` and `branch-3.0`).

### How was this patch tested?

Passed new test cases that check parquet column selection with respect to schemas and case sensitivities

Closes #27888 from kimtkyeom/parquet_row_converter_case_sensitivity.

Authored-by: Tae-kyeom, Kim <kimtkyeom@devsisters.com>
Signed-off-by: Dongjoon Hyun <dongjoon@apache.org>
2020-03-16 10:31:56 -07:00
jiake 21c02ee5d0 [SPARK-30864][SQL][DOC] add the user guide for Adaptive Query Execution
### What changes were proposed in this pull request?
This PR will add the user guide for AQE and the detailed configurations about the three mainly features in AQE.

### Why are the changes needed?
Add the detailed configurations.

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

### How was this patch tested?
only add doc no need ut.

Closes #27616 from JkSelf/aqeuserguide.

Authored-by: jiake <ke.a.jia@intel.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2020-03-16 23:33:56 +08:00
Maxim Gekk 57854c736c [SPARK-31076][SQL][FOLLOWUP] Incapsulate date rebasing to DaysWritable
### What changes were proposed in this pull request?
Move the code related to days rebasing from/to Julian calendar from `HiveInspectors` to new class `DaysWritable`.

### Why are the changes needed?
To improve maintainability of the `HiveInspectors` trait which is already pretty complex.

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

### How was this patch tested?
By `HiveOrcHadoopFsRelationSuite`.

Closes #27890 from MaxGekk/replace-DateWritable-by-DaysWritable.

Authored-by: Maxim Gekk <max.gekk@gmail.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2020-03-16 17:06:15 +08:00
Wenchen Fan 50a29672e0 [SPARK-30958][SQL] do not set default era for DateTimeFormatter
### What changes were proposed in this pull request?

It's not needed at all as now we replace "y" with "u" if there is no "G". So the era is either explicitly specified (e.g. "yyyy G") or can be inferred from the year (e.g. "uuuu").

### Why are the changes needed?

By default we use "uuuu" as the year pattern, which indicates the era already. If we set a default era, it can get conflicted and fail the parsing.

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

yea, now spark can parse date/timestamp with negative year via the "yyyy" pattern, which will be converted to "uuuu" under the hood.

### How was this patch tested?

new tests

Closes #27707 from cloud-fan/bug.

Authored-by: Wenchen Fan <wenchen@databricks.com>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
2020-03-16 16:48:31 +09:00
LantaoJin 08bdc9c9b2 [SPARK-31068][SQL] Avoid IllegalArgumentException in broadcast exchange
### What changes were proposed in this pull request?
Fix the IllegalArgumentException in broadcast exchange when numRows over 341 million but less than 512 million.

Since the maximum number of keys that `BytesToBytesMap` supports is 1 << 29, and only 70% of the slots can be used before growing in `HashedRelation`, So here the limitation should not be greater equal than 341 million (1 << 29 / 1.5(357913941)) instead of 512 million.

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

### How was this patch tested?
Manually test.

Closes #27828 from LantaoJin/SPARK-31068.

Lead-authored-by: LantaoJin <jinlantao@gmail.com>
Co-authored-by: Alan Jin <jinlantao@gmail.com>
Signed-off-by: Sean Owen <srowen@gmail.com>
2020-03-15 20:20:23 -05:00
Shixiong Zhu 1ddf44dfca
[SPARK-31144][SQL] Wrap Error with QueryExecutionException to notify QueryExecutionListener
### What changes were proposed in this pull request?

This PR manually reverts changes in #25292 and then wraps java.lang.Error with `QueryExecutionException` to notify `QueryExecutionListener` to send it to `QueryExecutionListener.onFailure` which only accepts `Exception`.

The bug fix PR for 2.4 is #27904. It needs a separate PR because the touched codes were changed a lot.

### Why are the changes needed?

Avoid API changes and fix a bug.

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

Yes. Reverting an API change happening in 3.0. QueryExecutionListener APIs will be the same as 2.4.

### How was this patch tested?

The new added test.

Closes #27907 from zsxwing/SPARK-31144.

Authored-by: Shixiong Zhu <zsxwing@gmail.com>
Signed-off-by: Dongjoon Hyun <dongjoon@apache.org>
2020-03-13 15:55:29 -07:00
Dale Clarke 2a4fed0443 [SPARK-30654][WEBUI] Bootstrap4 WebUI upgrade
### What changes were proposed in this pull request?
Spark's Web UI is using an older version of Bootstrap (v. 2.3.2) for the portal pages. Bootstrap 2.x was moved to EOL in Aug 2013 and Bootstrap 3.x was moved to EOL in July 2019 (https://github.com/twbs/release). Older versions of Bootstrap are also getting flagged in security scans for various CVEs:

https://snyk.io/vuln/SNYK-JS-BOOTSTRAP-72889
https://snyk.io/vuln/SNYK-JS-BOOTSTRAP-173700
https://snyk.io/vuln/npm:bootstrap:20180529
https://snyk.io/vuln/npm:bootstrap:20160627

I haven't validated each CVE, but it would be nice to resolve any potential issues and get on a supported release.

The bad news is that there have been quite a few changes between Bootstrap 2 and Bootstrap 4. I've tried updating the library, refactoring/tweaking the CSS and JS to maintain a similar appearance and functionality, and testing the UI for functionality and appearance. This is a fairly large change so I'm sure additional testing and fixes will be needed.

### How was this patch tested?
This has been manually tested, but there is a ton of functionality and there are many pages and detail pages so it is very possible bugs introduced from the upgrade were missed. Additional testing and feedback is welcomed. If it appears a whole page was missed let me know and I'll take a pass at addressing that page/section.

Closes #27370 from clarkead/bootstrap4-core-upgrade.

Authored-by: Dale Clarke <a.dale.clarke@gmail.com>
Signed-off-by: Gengliang Wang <gengliang.wang@databricks.com>
2020-03-13 15:24:48 -07:00
Kousuke Saruta 680981587d [SPARK-31004][WEBUI][SS] Show message for empty Streaming Queries instead of empty timelines and histograms
### What changes were proposed in this pull request?

`StreamingQueryStatisticsPage` shows a message "No visualization information available because there is no batches" instead of showing empty timelines and histograms for empty streaming queries.

[Before this change applied]
![before-fix-for-empty-streaming-query](https://user-images.githubusercontent.com/4736016/75642391-b32e1d80-5c7e-11ea-9c07-e2f0f1b5b4f9.png)

[After this change applied]
![after-fix-for-empty-streaming-query2](https://user-images.githubusercontent.com/4736016/75694583-1904be80-5cec-11ea-9b13-dc7078775188.png)

### Why are the changes needed?

Empty charts are ugly and a little bit confusing.
It's better to clearly say "No visualization information available".

Also, this change fixes a JS error shown in the capture above.
This error occurs because `drawTimeline` in `streaming-page.js` is called even though `formattedDate` will be `undefined` for empty streaming queries.

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

Yes. screen captures are shown above.

### How was this patch tested?

Manually tested by creating an empty streaming query like as follows.
```
val df = spark.readStream.format("socket").options(Map("host"->"<non-existing hostname>", "port"->"...")).load
df.writeStream.format("console").start
```
This streaming query will fail because of `non-existing hostname` and has no batches.

Closes #27755 from sarutak/fix-for-empty-batches.

Authored-by: Kousuke Saruta <sarutak@oss.nttdata.com>
Signed-off-by: Gengliang Wang <gengliang.wang@databricks.com>
2020-03-13 12:58:49 -07:00
Gabor Somogyi 231e65092f [SPARK-30874][SQL] Support Postgres Kerberos login in JDBC connector
### What changes were proposed in this pull request?
When loading DataFrames from JDBC datasource with Kerberos authentication, remote executors (yarn-client/cluster etc. modes) fail to establish a connection due to lack of Kerberos ticket or ability to generate it.

This is a real issue when trying to ingest data from kerberized data sources (SQL Server, Oracle) in enterprise environment where exposing simple authentication access is not an option due to IT policy issues.

In this PR I've added Postgres support (other supported databases will come in later PRs).

What this PR contains:
* Added `keytab` and `principal` JDBC options
* Added `ConnectionProvider` trait and it's impementations:
  * `BasicConnectionProvider` => unsecure connection
  * `PostgresConnectionProvider` => postgres secure connection
* Added `ConnectionProvider` tests
* Added `PostgresKrbIntegrationSuite` docker integration test
* Created `SecurityUtils` to concentrate re-usable security related functionalities
* Documentation

### Why are the changes needed?
Missing JDBC kerberos support.

### Does this PR introduce any user-facing change?
Yes, 2 additional JDBC options added:
* keytab
* principal

If both provided then Spark does kerberos authentication.

### How was this patch tested?
To demonstrate the functionality with a standalone application I've created this repository: https://github.com/gaborgsomogyi/docker-kerberos

* Additional + existing unit tests
* Additional docker integration test
* Test on cluster manually
* `SKIP_API=1 jekyll build`

Closes #27637 from gaborgsomogyi/SPARK-30874.

Authored-by: Gabor Somogyi <gabor.g.somogyi@gmail.com>
Signed-off-by: Marcelo Vanzin <vanzin@apache.org>
2020-03-12 19:04:35 -07:00