【发布时间】:2022-01-13 06:10:04
【问题描述】:
我有这个数据框
+-----+-------+-----------+-------------------+-----+
|empID|Zipcode|ZipCodeType|City |State|
+-----+-------+-----------+-------------------+-----+
|1000 |704 |STANDARD |PARC PARQUE |PR |
|1000 |704 |STANDARD |PASEO COSTA DEL SUR|PR |
|1001 |709 |STANDARD |BDA SAN LUIS |PR |
|1001 |76166 |UNIQUE |CINGULAR WIRELESS |TX |
|1002 |76177 |STANDARD |FORT WORTH |TX |
|1002 |76177 |STANDARD |FT WORTH |TX |
|1003 |704 |STANDARD |URB EUGENE RICE |PR |
|1003 |85209 |STANDARD |MESA |AZ |
|1004 |85210 |STANDARD |MESA |AZ |
|1004 |32046 |STANDARD |HILLIARD |FL |
+-----+-------+-----------+-------------------+-----+
对于每个 empID 需要打印其值不同的列名。
+-----+---------------------------------+
|empID|nonMatchingColumnNames |
+-----+---------------------------------+
|1002 |City |
|1000 |City |
|1001 |State, City, ZipCodeType, Zipcode|
|1003 |State, City, Zipcode |
|1004 |State, City, Zipcode |
+-----+---------------------------------+
我采取的策略是,构建一个结构并收集所有值。检查每组的计数是否> 1,然后打印列名。这是我的代码
val schema = new StructType()
.add("empID", IntegerType, true)
.add("Zipcode", StringType, true)
.add("ZipCodeType", StringType, true)
.add("City", StringType, true)
.add("State", StringType, true)
val idColumn = "empID"
val dfJSON = dfFromText.withColumn("jsonData",from_json(col("value"),schema))
.select("jsonData.*")
dfJSON.printSchema()
dfJSON.show(false)
val aggMap = dfJSON.columns
.filterNot(x => x == idColumn)
.map(colName => (collect_set(colName).alias(s"${colName}_asList"), s"${colName}_asList"))
aggMap.foreach(println)
val aggMapColumns = aggMap.map(x => x._1)
val columnsAsList = dfJSON.groupBy(col(idColumn)).agg(aggMapColumns.head, aggMapColumns.tail : _ *)
columnsAsList.show(false)
val combinedDF = columnsAsList.select(col(idColumn), struct(
aggMap.map(x => col(x._2)) : _ * ).alias("combined_struct")
)
combinedDF.printSchema()
combinedDF.show(false)
val columnsToCompare = dfJSON.columns.filterNot(x => x == idColumn).zipWithIndex.map({ case (x,y) => (y,x)})
val output = combinedDF.rdd.map({row => {
val empNo = row.getAs[Int](0)
val conbinedStruct: Row = row.getAs[AnyRef]("combined_struct").asInstanceOf[Row]
val nonMatchingColumns = columnsToCompare.foldLeft(List[String]())((acc, item) => {
val counts = conbinedStruct.getAs[Seq[String]](item._1).length
if (counts == 1) acc else item._2 :: acc
})
(empNo, nonMatchingColumns.mkString(", "))
}}).toDF(idColumn, "nonMatchingColumnNames")
output.show(false)
它在我的本地机器上工作得很好,当我将它移植到 spark-shell(它是一个临时查询)时,当我试图将数据帧转换为 RDD 并遍历每个项目时,我得到空指针异常结构体。
【问题讨论】:
标签: scala apache-spark apache-spark-sql