# How to calculate shifted columns over Groups in Python Pandas

I have the following pandas dataframe:

``````    Circuit-ID  DATETIME    LATE?
78899   07/06/2018 15:30    1
78899   08/06/2018 17:30    0
78899   09/06/2018 20:30    1
23544   12/07/2017 23:30    1
23544   13/07/2017 19:30    0
23544   14/07/2017 20:30    1
``````

And I need to calculate the shifted value for the DATETIME and LATE? columns to get the following result:

``````Circuit DATETIME          LATE?     DATETIME-1        LATE-1
78899   07/06/2018 15:30    1   NA                    NA
78899   08/06/2018 17:30    0   07/06/2018 15:30       1
78899   09/06/2018 20:30    1   08/06/2018 17:30       0
23544   12/07/2017 23:30    1   NA                    NA
23544   13/07/2017 19:30    0   12/07/2017 23:30       1
23544   14/07/2017 20:30    1   13/07/2017 19:30       0
``````

I tried the following code :

``````df.groupby(['circuit ID, DATETILE', LATE? ]) \
.apply(lambda x : x.sort_values(by=['circuit ID, 'DATETILE', 'LATE?'], ascending = [True, True, True]))['LATE?'] \
.transform(lambda x:x.shift()) \
.reset_index(name= 'LATE-1')
``````

But I keep getting erroneous results on some rows where the first shifted value is different from Nan. Could you please indicate a more clean way to get the desired result?

Use `groupby` and `shift`, then join it back:

``````df.join(df.groupby('Circuit-ID').shift().add_suffix('-1'))

Circuit-ID          DATETIME  LATE?        DATETIME-1  LATE?-1
0       78899  07/06/2018 15:30      1               NaN      NaN
1       78899  08/06/2018 17:30      0  07/06/2018 15:30      1.0
2       78899  09/06/2018 20:30      1  08/06/2018 17:30      0.0
3       23544  12/07/2017 23:30      1               NaN      NaN
4       23544  13/07/2017 19:30      0  12/07/2017 23:30      1.0
5       23544  14/07/2017 20:30      1  13/07/2017 19:30      0.0
``````

A similar solution uses `concat` for joining:

``````pd.concat([df, df.groupby('Circuit-ID').shift().add_suffix('-1')], axis=1)

Circuit-ID          DATETIME  LATE?        DATETIME-1  LATE?-1
0       78899  07/06/2018 15:30      1               NaN      NaN
1       78899  08/06/2018 17:30      0  07/06/2018 15:30      1.0
2       78899  09/06/2018 20:30      1  08/06/2018 17:30      0.0
3       23544  12/07/2017 23:30      1               NaN      NaN
4       23544  13/07/2017 19:30      0  12/07/2017 23:30      1.0
5       23544  14/07/2017 20:30      1  13/07/2017 19:30      0.0
``````