# Groupby and transform another column sequentially

I have this dataframe

``````df1 = pd.DataFrame(data = {'id':[1,1,1,1,2,2,3],'task':[12,32,12,54,64,21,52]})
``````

I want to group by `id` and change `task` values respectively like this

``````   id  task
0  1   1A
1  1   2A
2  1   3A
3  1   4A
4  2   1B
5  2   2B
6  3   1C
``````

I have done this so far

``````df1['task']=df1.groupby('id')['task'].transform(lambda x : x.factorize()[0]+1)
``````

Which gives me

``````   id  task
0  1   1
1  1   2
2  1   1
3  1   3
4  2   1
5  2   2
6  3   1
``````

How can I get the alphabets and secondly why in `id` 1 the task sequence is 1213 but not 1234?

``````(df1.groupby('id').cumcount().add(1).astype(str)   # digit
+ df1['id'].add(ord('A') - 1).map(chr))           # letter

0    1A
1    2A
2    3A
3    4A
4    1B
5    2B
6    1C
dtype: object
``````

There are two pieces - the digit, and the letter. Construct each one separately. First, the digits. Your code can be shortened using `GroupBy.cumcount`. Finally convert this result to a string so we can concatenate it with the letter later.

``````df1.groupby('id').cumcount().add(1).astype(str)

0    1
1    2
2    3
3    4
4    1
5    2
6    1
dtype: object
``````

This gets the letter for the group.

``````df1['id'].add(ord('A') - 1).map(chr)

0    A
1    A
2    A
3    A
4    B
5    B
6    C
Name: id, dtype: object
``````