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So, I have table like this: df:

  A B C D
0 1 1 0 7
1 1 1 0 9
2 1 1 1 5
3 1 1 1 3

After doing df.groupby(['A','B','C']).sum() i get:

  A B C D
0 1 1 0 16
1 1 1 1 8

By what method I can get

  A B C D
0 1 1 0 16
1 1 1 0 16
2 1 1 1 8
3 1 1 1 8

which will not aggregate the original rows while getting the sum column??

Thanks!

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1 Answer 1

up vote 1 down vote accepted

IIUC, you want transform: it does the aggregation but returns an object indexed the same way as the original.

>>> df
   A  B  C  D
0  1  1  0  7
1  1  1  0  9
2  1  1  1  5
3  1  1  1  3
>>> df.groupby(["A", "B", "C"]).transform('sum')
    D
0  16
1  16
2   8
3   8
>>> df["D"] = df.groupby(["A", "B", "C"]).transform('sum')
>>> df 
   A  B  C   D
0  1  1  0  16
1  1  1  0  16
2  1  1  1   8
3  1  1  1   8
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