6

I followed a post on StackOverflow about returning the maximum of a column grouped by another column, and got an unexpected Java exception.

Here is the test data:

import pyspark.sql.functions as f
data = [('a', 5), ('a', 8), ('a', 7), ('b', 1), ('b', 3)]
df = spark.createDataFrame(data, ["A", "B"])
df.show()

+---+---+
|  A|  B|
+---+---+
|  a|  5|
|  a|  8|
|  a|  7|
|  b|  1|
|  b|  3|
+---+---+

Here is the solution that allegedly works for other users:

from pyspark.sql import Window
w = Window.partitionBy('A')
df.withColumn('maxB', f.max('B').over(w))\
    .where(f.col('B') == f.col('maxB'))\
    .drop('maxB').show()

which should produce this output:

#+---+---+
#|  A|  B|
#+---+---+
#|  a|  8|
#|  b|  3|
#+---+---+

Instead, I get:

java.lang.UnsupportedOperationException: Cannot evaluate expression: max(input[2, bigint, false]) windowspecdefinition(input[0, string, true], specifiedwindowframe(RowFrame, unboundedpreceding$(), unboundedfollowing$()))

I have only tried this on Spark 2.4 on Databricks. I tried the equivalent SQL syntax and got the same error.

2

Databricks Support was able to reproduce the issue on Spark 2.4 but not on earlier versions. Apparently, it arises from a difference in the way the physical plan is formulated (I can post their response if requested). A fix is planned.

Meanwhile, here is one alternative solution to the original problem that does not fall prey to the version 2.4 issue:

df.withColumn("maxB", f.max('B').over(w)).drop('B').distinct().show()

+---+----+
|  A|maxB|
+---+----+
|  b|   3|
|  a|   8|
+---+----+
1
  • 1
    btw, if you persist your dataframe after withColumn, the error doesn't occurs. – Steven Feb 4 '19 at 10:36

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.