2

Best

At this moment I'm experimenting with pyspark 2.3.2.
And I would like to shift a column based on a certain column (group by).

Input:

    id  timestamp                logintype  start_sessie    timestamp_prev
0   3   2016-02-09 09:36:57.217     INTERN  True            None
1   3   2016-02-09 09:51:40.899     INTERN  False           None
2   3   2016-02-10 10:11:22.131     INTERN  True            None
3   3   2016-02-10 10:17:16.345     INTERN  False           None
4   4   2017-08-10 10:18:12.412     INTERN  True            None
5   4   2017-08-10 10:21:11.788     INTERN  False           None
6   4   2017-08-11 14:17:33.119     INTERN  True            None
7   4   2017-08-11 14:11:51.173     INTERN  False           None
8   4   2017-08-16 11:43:16.609     INTERN  True            None
9   4   2017-08-16 11:13:35.421     INTERN  False           None

Lucky, since pyspark 2.3.x we can use pandas_udf. Therefore I had this piece of code into my mind

my code:

from pyspark.sql.functions import pandas_udf, PandasUDFType

@pandas_udf(data_shift_prep.schema, PandasUDFType.GROUPED_MAP)
def test(pdf):
    pdf["timestamp_prev"] = pdf['timestamp'].shift(1)
    return pdf

data_shift = data_shift_prep.groupby('id').apply(test)

with the following expected result:

Expected result:

    id  timestamp                logintype  start_sessie    timestamp_prev
0   3   2016-02-09 09:36:57.217     INTERN  True            None
1   3   2016-02-09 09:51:40.899     INTERN  False           2016-02-09 09:36:57.217
2   3   2016-02-10 10:11:22.131     INTERN  True            2016-02-09 09:51:40.899
3   3   2016-02-10 10:17:16.345     INTERN  False           2016-02-10 10:11:22.131
4   4   2017-08-10 10:18:12.412     INTERN  True            None
5   4   2017-08-10 10:21:11.788     INTERN  False           2017-08-10 10:18:12.412
6   4   2017-08-11 14:17:33.119     INTERN  True            2017-08-10 10:21:11.788
7   4   2017-08-11 14:11:51.173     INTERN  False           2017-08-11 14:17:33.119 
8   4   2017-08-16 11:43:16.609     INTERN  True            2017-08-11 14:11:51.173
9   4   2017-08-16 11:13:35.421     INTERN  False           2017-08-16 11:43:16.609

But unfortunately, I receive always an error.
pyarrow.lib.ArrowInvalid: Error converting from Python objects to Int64: Got Python object of type Timestamp but can only handle these types: integer And i don't know how to handle it. First i thought, it was because of the NaT which are created by the shift function. But i'm not sure about it (I still have a same type of error after replacing the NaT by an None value)

Does someone has some more experience with this? (and can you solve this type error)

kind regards

-- Add extra : schema --

StructType(List(StructField(id,IntegerType,true),
                StructField(timestamp,TimestampType,true),
                StructField(logintype,StringType,true),
                StructField(start_sessie,BooleanType,true),
                StructField(timestamp_prev,TimestampType,true)))
| |
  • Could you add data_shift_prep schema? – 10465355 says Reinstate Monica Nov 30 '18 at 18:41
  • 2
    Why can't you use lag (or lead)? It will be something like df.withColumn("timestamp_prev", lag("timestamp").over(Window.partitionBy("id").orderBy("timestamp"))) – pault Nov 30 '18 at 18:59
  • 1
    @user10465355 - i've added the schema – Dieter Nov 30 '18 at 19:01
  • @pault - can be a sollution, but its more about testing the pandas functionallity ... how it returns data back etc – Dieter Nov 30 '18 at 19:02

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