18

I have my df with multi-index columns. All of my values are in float, and I want to merge values with in first level of multi-index. Please see below for detail.

first        bar                 baz                 foo   
second       one       two       one       two       one    
A       0.895717  0.805244  1.206412  2.565646  1.431256    
B       0.410835  0.813850  0.132003  0.827317  0.076467    
C       1.413681  1.607920  1.024180  0.569605  0.875906 

first        bar                 baz                 foo   

A       (0.895717+0.805244) (1.206412+2.565646)  1.431256    
B       (0.410835+0.813850) (0.132003+0.827317)  0.076467    
C       (1.413681+1.607920) (1.024180+0.569605)  0.875906 

The values are actually added (I just didn't feel like doing all this :)). Bottom line is that I just want to level-up(higher level I guess) and within the index, add all the values. Please let me know a good way to do this. Thank you!

2 Answers 2

27

I believe you're looking for a groupby along the first axis.

df.groupby(level=0, axis=1).sum()

On older versions of pandas, this method also works:

df.sum(level=0, axis=1)

The level argument to sum implies grouping.


df

first  bar     baz     foo    
second one two one two one two
A        2   3   3   4  10   8
B       22  16   7   3   2  26
C        4   5   1   9   6   5

df.sum(level=0, axis=1)

first  bar  baz  foo
A        5    7   18
B       38   10   28
C        9   10   11

Performance wise, there's hardly any difference between the two methods outlined above (the latter is a few ticks faster).

4
  • 1
    df.sum(axis=1, level='first') would also work in the OP case, has index level 0 has a name.
    – mins
    Dec 25, 2020 at 9:35
  • @mins taking advantage of the named index, that's a great callout. Thanks! Dec 25, 2020 at 10:28
  • 2
    A few years later and df.sum(levels=...) has become deprecated and will be removed from future versions. df.groupby(levels=...).sum() is the proper way to do it.
    – Antimon
    Apr 3, 2022 at 18:12
  • How can we assign sum of a single column to the new column? Nov 29, 2022 at 9:59
6

Keep in mind that df.sum(level, axis) will only work if you set your columns to the multi-index. Example,

D = {'one': range(6), 
     'two': range(1,7), 
     'CAT1': 'A A A A A A'.split(), 
     'CAT2': 'B B B C C C'.split(), 
     'CAT3': 'D D E E F F'.split()}

df = pd.DataFrame(D)
df = df.set_index('CAT1 CAT2 CAT3'.split())
df
                one  two
CAT1 CAT2 CAT3          
A    B    D       0    1
          D       1    2
          E       2    3
     C    E       3    4
          F       4    5
          F       5    6

If your data is in this form, you will have to use df.groupby(level=n).sum(axis=1)

df.groupby(level = 0).sum(axis=1)

      one  two
CAT1          
A      15   21

df.groupby(level = 1).sum(axis=1)

      one  two
CAT2          
B       3    6
C      12   15

df.groupby(level = 2).sum(axis=1)

      one  two
CAT3          
D       1    3
E       5    7
F       9   11

If you try skipping the groupby,

df.sum(level = 1, axis=1)

ValueError: level > 0 or level < -1 only valid with  MultiIndex

Which is an interesting error since,

df.index

MultiIndex(levels=[[u'A'], [u'B', u'C'], [u'D', u'E', u'F']],
           labels=[[0, 0, 0, 0, 0, 0], [0, 0, 0, 1, 1, 1], [0, 0, 1, 1, 2, 2]],
           names=[u'CAT1', u'CAT2', u'CAT3'])

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.