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In Spark 1.6.0 / Scala, is there an opportunity to get collect_list("colC") or collect_set("colC").over(Window.partitionBy("colA").orderBy("colB")?

22

Given that you have dataframe as

+----+----+----+
|colA|colB|colC|
+----+----+----+
|1   |1   |23  |
|1   |2   |63  |
|1   |3   |31  |
|2   |1   |32  |
|2   |2   |56  |
+----+----+----+

You can Window functions by doing the following

import org.apache.spark.sql.functions._
import org.apache.spark.sql.expressions._
df.withColumn("colD", collect_list("colC").over(Window.partitionBy("colA").orderBy("colB"))).show(false)

Result:

+----+----+----+------------+
|colA|colB|colC|colD        |
+----+----+----+------------+
|1   |1   |23  |[23]        |
|1   |2   |63  |[23, 63]    |
|1   |3   |31  |[23, 63, 31]|
|2   |1   |32  |[32]        |
|2   |2   |56  |[32, 56]    |
+----+----+----+------------+

Similar is the result for collect_set as well. But the order of elements in the final set will not be in order as with collect_list

df.withColumn("colD", collect_set("colC").over(Window.partitionBy("colA").orderBy("colB"))).show(false)
+----+----+----+------------+
|colA|colB|colC|colD        |
+----+----+----+------------+
|1   |1   |23  |[23]        |
|1   |2   |63  |[63, 23]    |
|1   |3   |31  |[63, 31, 23]|
|2   |1   |32  |[32]        |
|2   |2   |56  |[56, 32]    |
+----+----+----+------------+

If you remove orderBy as below

df.withColumn("colD", collect_list("colC").over(Window.partitionBy("colA"))).show(false)

result would be

+----+----+----+------------+
|colA|colB|colC|colD        |
+----+----+----+------------+
|1   |1   |23  |[23, 63, 31]|
|1   |2   |63  |[23, 63, 31]|
|1   |3   |31  |[23, 63, 31]|
|2   |1   |32  |[32, 56]    |
|2   |2   |56  |[32, 56]    |
+----+----+----+------------+

I hope the answer is helpful

  • Has the orderBy effect here? I was told it's a non-deterministic function to be avoided (stackoverflow.com/q/33878370/1773841 at the end of the accepted answer) or is it ok for this case since it happens inside the withColumn? – Ignacio Alorre Sep 27 '17 at 12:19
  • I think its safe to do it in above way @IgnacioAlorre. what is non-deterministic function in the above answer ? – Ramesh Maharjan Sep 27 '17 at 12:50
  • I was doing exactly as you do in the answer, but someone point me to the link I added in the previous comment. And they say there, that it may work in local the orderBy(), but not in a distributed enviroment. I´m rather new in Spark, and I am mostly gathering opinions and recommendation, don´t take my word as I an ultimate answer, it is just what I understood from the link I posted you. If I am wrong, please let me know because I would be happy to keep using the partitionBy and orderBy inside the withColumn – Ignacio Alorre Sep 27 '17 at 14:37
  • 1
    I agree that I have seen inconsistency in using orderBy with groupBy. But I haven't seen inconsistency with the window function as partitionBy will partition the dataframe to be grouped into partitions and shuffle data so that each partition would be in one of the distributed node and orderBy would work on that partitioned distributed dataframe/dataset. So I don't think there would be a problem with Window function. :) – Ramesh Maharjan Sep 28 '17 at 3:52
  • 4
    I don't believe this answer will work for version 1.6, since Spark 1.6 does not support using a distinct aggregate function as a window function (like collect_set). And I believe collect_list isn't a supported window function either. – RudyVerboven Feb 15 '18 at 12:42

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