# Pandas pivot table Percent Calculations

Given the following data frame and pivot table:

``````import pandas as pd
df=pd.DataFrame({'A':['x','y','z','x','y','z'],
'B':['one','one','one','two','two','two'],
'C':[2,18,2,8,2,18]})
df

A   B       C
0   x   one     2
1   y   one     18
2   z   one     2
3   x   two     8
4   y   two     2
5   z   two     18

table = pd.pivot_table(df, index=['A', 'B'],aggfunc=np.sum)

C
A   B
x   one     2
two     8
y   one     18
two     2
z   one     2
two     18
``````

I'd like to add 2 columns to this pivot table; one showing the percent of all values and another for percent within column A like this:

``````           C    % of Total  % of B
A   B
x   one    2    4%          10%
two   18    36%         90%
y   one    2    4%          20%
two    8    16%         80%
z   one    2    4%          10%
two   18    36%         90%
``````

Extra Credit:

I'd like a bottom summary row which has the sum of column C (it's okay if it also has 100% for the next 2 columns, but nothing is needed for those).

You can use:

``````table['% of Total'] = (table.C / table.C.sum() * 100).astype(str) + '%'
table['% of B'] = (table.C / table.groupby(level=0).C.transform(sum) * 100).astype(str) + '%'
print table
C % of Total % of B
A B
x one   2       4.0%  20.0%
two   8      16.0%  80.0%
y one  18      36.0%  90.0%
two   2       4.0%  10.0%
z one   2       4.0%  10.0%
two  18      36.0%  90.0%
``````

But with real data I think casting to `int` is not recommended, better is use `round`.

Extra Credit:

``````table['% of Total'] = (table.C / table.C.sum() * 100)
table['% of B'] = (table.C / table.groupby(level=0).C.transform(sum) * 100)
table.loc['total', :] = table.sum().values
print table
C  % of Total  % of B
A     B
x     one   2.0         4.0    20.0
two   8.0        16.0    80.0
y     one  18.0        36.0    90.0
two   2.0         4.0    10.0
z     one   2.0         4.0    10.0
two  18.0        36.0    90.0
total      50.0       100.0   300.0
``````
• I think you are my Pandas guardian angel. May 10 '16 at 21:05
• God bless all of you! May 10 '16 at 21:13