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Bryan Cutler commented on SPARK-28502: -------------------------------------- That's strange, I added your example as a unit test in SPARK-29402. I'll try to take a look at what's going on with the 3.0 preview. > Error with struct conversion while using pandas_udf > --------------------------------------------------- > > Key: SPARK-28502 > URL: https://issues.apache.org/jira/browse/SPARK-28502 > Project: Spark > Issue Type: Bug > Components: PySpark > Affects Versions: 2.4.3 > Environment: OS: Ubuntu > Python: 3.6 > Reporter: Nasir Ali > Priority: Minor > Fix For: 3.0.0 > > > What I am trying to do: Group data based on time intervals (e.g., 15 days > window) and perform some operations on dataframe using (pandas) UDFs. I don't > know if there is a better/cleaner way to do it. > Below is the sample code that I tried and error message I am getting. > > {code:java} > df = sparkSession.createDataFrame([(17.00, "2018-03-10T15:27:18+00:00"), > (13.00, "2018-03-11T12:27:18+00:00"), > (25.00, "2018-03-12T11:27:18+00:00"), > (20.00, "2018-03-13T15:27:18+00:00"), > (17.00, "2018-03-14T12:27:18+00:00"), > (99.00, "2018-03-15T11:27:18+00:00"), > (156.00, "2018-03-22T11:27:18+00:00"), > (17.00, "2018-03-31T11:27:18+00:00"), > (25.00, "2018-03-15T11:27:18+00:00"), > (25.00, "2018-03-16T11:27:18+00:00") > ], > ["id", "ts"]) > df = df.withColumn('ts', df.ts.cast('timestamp')) > schema = StructType([ > StructField("id", IntegerType()), > StructField("ts", TimestampType()) > ]) > @pandas_udf(schema, PandasUDFType.GROUPED_MAP) > def some_udf(df): > # some computation > return df > df.groupby('id', F.window("ts", "15 days")).apply(some_udf).show() > {code} > This throws following exception: > {code:java} > TypeError: Unsupported type in conversion from Arrow: struct<start: > timestamp[us, tz=America/Chicago], end: timestamp[us, tz=America/Chicago]> > {code} > > However, if I use builtin agg method then it works all fine. For example, > {code:java} > df.groupby('id', F.window("ts", "15 days")).mean().show(truncate=False) > {code} > Output > {code:java} > +-----+------------------------------------------+-------+ > |id |window |avg(id)| > +-----+------------------------------------------+-------+ > |13.0 |[2018-03-05 00:00:00, 2018-03-20 00:00:00]|13.0 | > |17.0 |[2018-03-20 00:00:00, 2018-04-04 00:00:00]|17.0 | > |156.0|[2018-03-20 00:00:00, 2018-04-04 00:00:00]|156.0 | > |99.0 |[2018-03-05 00:00:00, 2018-03-20 00:00:00]|99.0 | > |20.0 |[2018-03-05 00:00:00, 2018-03-20 00:00:00]|20.0 | > |17.0 |[2018-03-05 00:00:00, 2018-03-20 00:00:00]|17.0 | > |25.0 |[2018-03-05 00:00:00, 2018-03-20 00:00:00]|25.0 | > +-----+------------------------------------------+-------+ > {code} -- This message was sent by Atlassian Jira (v8.3.4#803005) --------------------------------------------------------------------- To unsubscribe, e-mail: issues-unsubscr...@spark.apache.org For additional commands, e-mail: issues-h...@spark.apache.org