Repository: spark Updated Branches: refs/heads/master 2398fde45 -> 508de38c9
[SPARK-18555][SQL] DataFrameNaFunctions.fill miss up original values in long integers ## What changes were proposed in this pull request? DataSet.na.fill(0) used on a DataSet which has a long value column, it will change the original long value. The reason is that the type of the function fill's param is Double, and the numeric columns are always cast to double(`fillCol[Double](f, value)`) . ``` def fill(value: Double, cols: Seq[String]): DataFrame = { val columnEquals = df.sparkSession.sessionState.analyzer.resolver val projections = df.schema.fields.map { f => // Only fill if the column is part of the cols list. if (f.dataType.isInstanceOf[NumericType] && cols.exists(col => columnEquals(f.name, col))) { fillCol[Double](f, value) } else { df.col(f.name) } } df.select(projections : _*) } ``` For example: ``` scala> val df = Seq[(Long, Long)]((1, 2), (-1, -2), (9123146099426677101L, 9123146560113991650L)).toDF("a", "b") df: org.apache.spark.sql.DataFrame = [a: bigint, b: bigint] scala> df.show +-------------------+-------------------+ | a| b| +-------------------+-------------------+ | 1| 2| | -1| -2| |9123146099426677101|9123146560113991650| +-------------------+-------------------+ scala> df.na.fill(0).show +-------------------+-------------------+ | a| b| +-------------------+-------------------+ | 1| 2| | -1| -2| |9123146099426676736|9123146560113991680| +-------------------+-------------------+ ``` the original values changed [which is not we expected result]: ``` 9123146099426677101 -> 9123146099426676736 9123146560113991650 -> 9123146560113991680 ``` ## How was this patch tested? unit test added. Author: root <root@iZbp1gsnrlfzjxh82cz80vZ.(none)> Closes #15994 from windpiger/nafillMissupOriginalValue. Project: http://git-wip-us.apache.org/repos/asf/spark/repo Commit: http://git-wip-us.apache.org/repos/asf/spark/commit/508de38c Tree: http://git-wip-us.apache.org/repos/asf/spark/tree/508de38c Diff: http://git-wip-us.apache.org/repos/asf/spark/diff/508de38c Branch: refs/heads/master Commit: 508de38c9928d160cf70e8e7d69ddb1dca5c1a64 Parents: 2398fde Author: root <root@iZbp1gsnrlfzjxh82cz80vZ.(none)> Authored: Mon Dec 5 18:39:56 2016 -0800 Committer: Reynold Xin <r...@databricks.com> Committed: Mon Dec 5 18:39:56 2016 -0800 ---------------------------------------------------------------------- .../apache/spark/sql/DataFrameNaFunctions.scala | 89 ++++++++++++++------ .../spark/sql/DataFrameNaFunctionsSuite.scala | 18 ++++ 2 files changed, 80 insertions(+), 27 deletions(-) ---------------------------------------------------------------------- http://git-wip-us.apache.org/repos/asf/spark/blob/508de38c/sql/core/src/main/scala/org/apache/spark/sql/DataFrameNaFunctions.scala ---------------------------------------------------------------------- diff --git a/sql/core/src/main/scala/org/apache/spark/sql/DataFrameNaFunctions.scala b/sql/core/src/main/scala/org/apache/spark/sql/DataFrameNaFunctions.scala index 184c5a1..2882068 100644 --- a/sql/core/src/main/scala/org/apache/spark/sql/DataFrameNaFunctions.scala +++ b/sql/core/src/main/scala/org/apache/spark/sql/DataFrameNaFunctions.scala @@ -128,6 +128,12 @@ final class DataFrameNaFunctions private[sql](df: DataFrame) { /** * Returns a new `DataFrame` that replaces null or NaN values in numeric columns with `value`. * + * @since 2.2.0 + */ + def fill(value: Long): DataFrame = fill(value, df.columns) + + /** + * Returns a new `DataFrame` that replaces null or NaN values in numeric columns with `value`. * @since 1.3.1 */ def fill(value: Double): DataFrame = fill(value, df.columns) @@ -143,6 +149,14 @@ final class DataFrameNaFunctions private[sql](df: DataFrame) { * Returns a new `DataFrame` that replaces null or NaN values in specified numeric columns. * If a specified column is not a numeric column, it is ignored. * + * @since 2.2.0 + */ + def fill(value: Long, cols: Array[String]): DataFrame = fill(value, cols.toSeq) + + /** + * Returns a new `DataFrame` that replaces null or NaN values in specified numeric columns. + * If a specified column is not a numeric column, it is ignored. + * * @since 1.3.1 */ def fill(value: Double, cols: Array[String]): DataFrame = fill(value, cols.toSeq) @@ -151,20 +165,18 @@ final class DataFrameNaFunctions private[sql](df: DataFrame) { * (Scala-specific) Returns a new `DataFrame` that replaces null or NaN values in specified * numeric columns. If a specified column is not a numeric column, it is ignored. * + * @since 2.2.0 + */ + def fill(value: Long, cols: Seq[String]): DataFrame = fillValue(value, cols) + + /** + * (Scala-specific) Returns a new `DataFrame` that replaces null or NaN values in specified + * numeric columns. If a specified column is not a numeric column, it is ignored. + * * @since 1.3.1 */ - def fill(value: Double, cols: Seq[String]): DataFrame = { - val columnEquals = df.sparkSession.sessionState.analyzer.resolver - val projections = df.schema.fields.map { f => - // Only fill if the column is part of the cols list. - if (f.dataType.isInstanceOf[NumericType] && cols.exists(col => columnEquals(f.name, col))) { - fillCol[Double](f, value) - } else { - df.col(f.name) - } - } - df.select(projections : _*) - } + def fill(value: Double, cols: Seq[String]): DataFrame = fillValue(value, cols) + /** * Returns a new `DataFrame` that replaces null values in specified string columns. @@ -180,18 +192,7 @@ final class DataFrameNaFunctions private[sql](df: DataFrame) { * * @since 1.3.1 */ - def fill(value: String, cols: Seq[String]): DataFrame = { - val columnEquals = df.sparkSession.sessionState.analyzer.resolver - val projections = df.schema.fields.map { f => - // Only fill if the column is part of the cols list. - if (f.dataType.isInstanceOf[StringType] && cols.exists(col => columnEquals(f.name, col))) { - fillCol[String](f, value) - } else { - df.col(f.name) - } - } - df.select(projections : _*) - } + def fill(value: String, cols: Seq[String]): DataFrame = fillValue(value, cols) /** * Returns a new `DataFrame` that replaces null values. @@ -210,7 +211,7 @@ final class DataFrameNaFunctions private[sql](df: DataFrame) { * * @since 1.3.1 */ - def fill(valueMap: java.util.Map[String, Any]): DataFrame = fill0(valueMap.asScala.toSeq) + def fill(valueMap: java.util.Map[String, Any]): DataFrame = fillMap(valueMap.asScala.toSeq) /** * (Scala-specific) Returns a new `DataFrame` that replaces null values. @@ -230,7 +231,7 @@ final class DataFrameNaFunctions private[sql](df: DataFrame) { * * @since 1.3.1 */ - def fill(valueMap: Map[String, Any]): DataFrame = fill0(valueMap.toSeq) + def fill(valueMap: Map[String, Any]): DataFrame = fillMap(valueMap.toSeq) /** * Replaces values matching keys in `replacement` map with the corresponding values. @@ -368,7 +369,7 @@ final class DataFrameNaFunctions private[sql](df: DataFrame) { df.select(projections : _*) } - private def fill0(values: Seq[(String, Any)]): DataFrame = { + private def fillMap(values: Seq[(String, Any)]): DataFrame = { // Error handling values.foreach { case (colName, replaceValue) => // Check column name exists @@ -435,4 +436,38 @@ final class DataFrameNaFunctions private[sql](df: DataFrame) { case v => throw new IllegalArgumentException( s"Unsupported value type ${v.getClass.getName} ($v).") } + + /** + * Returns a new `DataFrame` that replaces null or NaN values in specified + * numeric, string columns. If a specified column is not a numeric, string column, + * it is ignored. + */ + private def fillValue[T](value: T, cols: Seq[String]): DataFrame = { + // the fill[T] which T is Long/Double, + // should apply on all the NumericType Column, for example: + // val input = Seq[(java.lang.Integer, java.lang.Double)]((null, 164.3)).toDF("a","b") + // input.na.fill(3.1) + // the result is (3,164.3), not (null, 164.3) + val targetType = value match { + case _: Double | _: Long => NumericType + case _: String => StringType + case _ => throw new IllegalArgumentException( + s"Unsupported value type ${value.getClass.getName} ($value).") + } + + val columnEquals = df.sparkSession.sessionState.analyzer.resolver + val projections = df.schema.fields.map { f => + val typeMatches = (targetType, f.dataType) match { + case (NumericType, dt) => dt.isInstanceOf[NumericType] + case (StringType, dt) => dt == StringType + } + // Only fill if the column is part of the cols list. + if (typeMatches && cols.exists(col => columnEquals(f.name, col))) { + fillCol[T](f, value) + } else { + df.col(f.name) + } + } + df.select(projections : _*) + } } http://git-wip-us.apache.org/repos/asf/spark/blob/508de38c/sql/core/src/test/scala/org/apache/spark/sql/DataFrameNaFunctionsSuite.scala ---------------------------------------------------------------------- diff --git a/sql/core/src/test/scala/org/apache/spark/sql/DataFrameNaFunctionsSuite.scala b/sql/core/src/test/scala/org/apache/spark/sql/DataFrameNaFunctionsSuite.scala index 47b55e2..fd82984 100644 --- a/sql/core/src/test/scala/org/apache/spark/sql/DataFrameNaFunctionsSuite.scala +++ b/sql/core/src/test/scala/org/apache/spark/sql/DataFrameNaFunctionsSuite.scala @@ -138,6 +138,24 @@ class DataFrameNaFunctionsSuite extends QueryTest with SharedSQLContext { checkAnswer( Seq[(String, String)]((null, null)).toDF("col1", "col2").na.fill("test", "col1" :: Nil), Row("test", null)) + + checkAnswer( + Seq[(Long, Long)]((1, 2), (-1, -2), (9123146099426677101L, 9123146560113991650L)) + .toDF("a", "b").na.fill(0), + Row(1, 2) :: Row(-1, -2) :: Row(9123146099426677101L, 9123146560113991650L) :: Nil + ) + + checkAnswer( + Seq[(java.lang.Long, java.lang.Double)]((null, 1.23), (3L, null), (4L, 3.45)) + .toDF("a", "b").na.fill(2.34), + Row(2, 1.23) :: Row(3, 2.34) :: Row(4, 3.45) :: Nil + ) + + checkAnswer( + Seq[(java.lang.Long, java.lang.Double)]((null, 1.23), (3L, null), (4L, 3.45)) + .toDF("a", "b").na.fill(5), + Row(5, 1.23) :: Row(3, 5.0) :: Row(4, 3.45) :: Nil + ) } test("fill with map") { --------------------------------------------------------------------- To unsubscribe, e-mail: commits-unsubscr...@spark.apache.org For additional commands, e-mail: commits-h...@spark.apache.org