20

Is there an option not drop the the indices with 'nan' in them? I think silently dropping these rows from the pivot will at some point cause someone serious pain.

import pandas
import numpy

a = [['a', 'b', 12, 12, 12], ['a', numpy.nan, 12.3, 233., 12], ['b', 'a', 123.23, 123, 1], ['a', 'b', 1, 1, 1.]]

df = pandas.DataFrame(a, columns=['a', 'b', 'c', 'd', 'e'])

df_pivot = df.pivot_table(rows=['a', 'b'], values=['c', 'd', 'e'], aggfunc=sum)
print(df)
print(df_pivot)

Output:

   a    b       c    d   e
0  a    b   12.00   12  12
1  a  NaN   12.30  233  12
2  b    a  123.23  123   1
3  a    b    1.00    1   1
          c    d   e
a b                 
a b   13.00   13  13
b a  123.23  123   1
15

This is currently not supported, see this issue for the enhancement: https://github.com/pydata/pandas/issues/3729.

Workaround to fill the index with a dummy, pivot, and replace

In [28]: df = df.reset_index()

In [29]: df['b'] = df['b'].fillna('dummy')

In [30]: df['dummy'] = np.nan

In [31]: df
Out[31]: 
   a      b       c    d   e  dummy
0  a      b   12.00   12  12    NaN
1  a  dummy   12.30  233  12    NaN
2  b      a  123.23  123   1    NaN
3  a      b    1.00    1   1    NaN

In [32]: df.pivot_table(rows=['a', 'b'], values=['c', 'd', 'e'], aggfunc=sum)
Out[32]: 
              c    d   e
a b                     
a b       13.00   13  13
  dummy   12.30  233  12
b a      123.23  123   1

In [33]: df.pivot_table(rows=['a', 'b'], values=['c', 'd', 'e'], aggfunc=sum).reset_index().replace('dummy',np.nan).set_index(['a','b'])
Out[33]: 
            c    d   e
a b                   
a b     13.00   13  13
  NaN   12.30  233  12
b a    123.23  123   1
| improve this answer | |
  • 1
    Maybe someone could inject a warning message when there are nan values in the index? I don't see that it needs to be "supported" really. Manually filling is fine, you just have to know that it needs to be done. – mathtick Jun 3 '13 at 14:18
  • The problem is that this is a 'feature', in that when you groupby and have a NaN it is excluded; I supposed you could have an option that controls this (and by default is false); and/or raises – Jeff Jun 3 '13 at 14:23
  • I agree but I can't imagine a warning would break anybody's notion of the feature. You could even have a flag in pivot_table to not print the warning. I'm just worried about safety. – mathtick Jun 3 '13 at 14:42
1

Currently the option "dropna=False" is supported by pivot_table:

df.pivot_table(rows=['a', 'b'], values=['c', 'd', 'e'], aggfunc=sum, dropna=False)

| improve this answer | |

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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