30

Pandas throws a Future Warning when I apply a function to multiple columns of a groupby object. It suggests to use a list as index instead of tuples. How would one go about this?

>>> df = pd.DataFrame([[1,2,3],[4,5,6],[7,8,9]])
>>> df.groupby([0,1])[1,2].apply(sum)
<stdin>:1: FutureWarning: Indexing with multiple keys (implicitly converted to a tuple of keys) will be deprecated, use a list instead.
     1  2
0 1      
1 2  2  3
4 5  5  6
7 8  8  9
5
  • 12
    [[1, 2]]. 2 Brackets is how you do DataFrame selection (i.e. selection with a list). I'm suprirsed [1,2] has worked all this time.
    – ALollz
    Apr 2 '20 at 19:44
  • Thanks, you are right! Maybe this should have thrown a Keyerror.
    – cmosig
    Apr 2 '20 at 19:47
  • 3
    [[1,2]].sum(). No need to apply the built-in python's sum function
    – rafaelc
    Apr 2 '20 at 20:02
  • Correct, but sum was just an example to visualize my problem.
    – cmosig
    Apr 2 '20 at 20:04
  • 1
    The decision was made github.com/pandas-dev/pandas/issues/23566. To keep compatibility between 0.25 and 1.0 they didn't remove the feature but added a warning in 1.0. Likely it will be removed in the next major deprecation cycle.
    – ALollz
    Apr 2 '20 at 20:09
30

This warning was introduced in pandas 1.0.0, following a discussion on GitHub. So best use what was suggested there:

df.groupby([0, 1])[[1, 2]].apply(sum)

It's also possible to move the slicing operation to the end, but that is not as efficient:

df.groupby([0, 1]).apply(sum).loc[:, 1:]

Thanks @ALollz and @cmosig for helpful comments.

1
  • You should have integrated the comment of @ALollz into your answer, not just referring to it. That is why the other answer gets upvoted, even though you had the answer at hand much earlier. You simply need to explain why the double brackets are needed - and comments do not belong to an answer. Dec 1 '20 at 0:45
12

Use double brackets after the groupby method. Single brackets are used to output a Pandas Series and double brackets are used to output a Pandas DataFrame.

df.groupby([0,1])[[1,2]].apply(sum)
1
  • This should have been a comment under / an edit of @Arne's answer. Dec 1 '20 at 0:46

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