2

I'm not sure this is a bug (or just incorrect syntax). I searched around and didn't see this mentioned elsewhere so I'm asking here before filing a bug report.

I'm trying to use a Window function partitioned on a nested column. I've created a small example below demonstrating the problem.

import sqlContext.implicits._
import org.apache.spark.sql.functions._
import org.apache.spark.sql.expressions.Window

val data = Seq(("a", "b", "c", 3), ("c", "b", "a", 3)).toDF("A", "B", "C", "num")
  .withColumn("Data", struct("A", "B", "C")).drop("A").drop("B").drop("C")
val winSpec = Window.partitionBy("Data.A", "Data.B").orderBy($"num".desc)
data.select($"*", max("num").over(winSpec) as "max").where("num = max").drop("max").show

The above results in an error org.apache.spark.sql.AnalysisException: resolved attribute(s) A#39,B#40 missing from num#33,Data#37 in operator !Project [num#33,Data#37,A#39,B#40]; at org.apache.spark.sql.catalyst.analysis.CheckAnalysis$class.failAnalysis(CheckAnalysis.scala:38) at org.apache.spark.sql.catalyst.analysis.Analyzer.failAnalysis(Analyzer.scala:44) ...

If instead those columns aren't nested, it works fine. Am I missing something with the syntax, or is this a bug?

2

It looks to me like you are hitting a bug when the analyzer is trying to expand the *

import sqlContext.implicits._
import org.apache.spark.sql.functions._
import org.apache.spark.sql.expressions.Window

sql("SET spark.sql.eagerAnalysis=false") // Let us see the error even though we are constructing an invalid tree

val data = Seq(("a", "b", "c", 3), ("c", "b", "a", 3)).toDF("A", "B", "C", "num")
  .withColumn("Data", struct("A", "B", "C"))
  .drop("A")
  .drop("B")
  .drop("C")

val winSpec = Window.partitionBy("Data.A", "Data.B").orderBy($"num".desc)
data.select($"*", max("num").over(winSpec) as "max").explain(true)

By turning off eager analysis (so that we can call explain without it throwing an error) you can see that the "*" is getting expanded to include columns that aren't actually available:

== Parsed Logical Plan ==
'Project [*,'max('num) windowspecdefinition('Data.A,'Data.B,'num DESC,UnspecifiedFrame) AS max#64928]
+- Project [num#64926,Data#64927]
   +- Project [C#64925,num#64926,Data#64927]
      +- Project [B#64924,C#64925,num#64926,Data#64927]
         +- Project [A#64923,B#64924,C#64925,num#64926,struct(A#64923,B#64924,C#64925) AS Data#64927]
            +- Project [_1#64919 AS A#64923,_2#64920 AS B#64924,_3#64921 AS C#64925,_4#64922 AS num#64926]
               +- LocalRelation [_1#64919,_2#64920,_3#64921,_4#64922], [[a,b,c,3],[c,b,a,3]]

== Analyzed Logical Plan ==
num: int, Data: struct<A:string,B:string,C:string>, max: int
Project [num#64926,Data#64927,max#64928]
+- Project [num#64926,Data#64927,A#64932,B#64933,max#64928,max#64928]
   +- Window [num#64926,Data#64927,A#64932,B#64933], [HiveWindowFunction#org.apache.hadoop.hive.ql.udf.generic.GenericUDAFMax(num#64926) windowspecdefinition(A#64932,B#64933,num#64926 DESC,RANGE BETWEEN UNBOUNDED PRECEDING AND CURRENT ROW) AS max#64928], [A#64932,B#64933], [num#64926 DESC]
      +- !Project [num#64926,Data#64927,A#64932,B#64933]
         +- Project [num#64926,Data#64927]
            +- Project [C#64925,num#64926,Data#64927]
               +- Project [B#64924,C#64925,num#64926,Data#64927]
                  +- Project [A#64923,B#64924,C#64925,num#64926,struct(A#64923,B#64924,C#64925) AS Data#64927]
                     +- Project [_1#64919 AS A#64923,_2#64920 AS B#64924,_3#64921 AS C#64925,_4#64922 AS num#64926]
                        +- LocalRelation [_1#64919,_2#64920,_3#64921,_4#64922], [[a,b,c,3],[c,b,a,3]]

I've filed this here: https://issues.apache.org/jira/browse/SPARK-12989. If you manually list out the columns instead of using a * that should act as a workaround.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.