8

I have the following dataframe:

>>> df
Out[15]: 
      group   type  amount  number
0   group_A    buy     100     123
1   group_A   view       0     111
2   group_B   view       0     222
3   group_A   view       0     222 

I'd like to pivot the data so that I end up with:

              type  group_A   group_B
0    amount    buy      100         0
1    number    buy        0       123
2    number   view      333       222

How do I accomplish this?

1 Answer 1

6

Using:

df=pd.DataFrame([['group_A','buy',100,123],['group_A','view',0,111],['group_B','view',0,222],['group_A','view',0,222]],columns=['group','type','amount','number'])

First sum the indices and orientate:

>>> df = df.groupby(['type','group']).sum().transpose().stack(0).reset_index()
>>> df
group level_0  type  group_A  group_B
0      amount   buy      100      NaN
1      amount  view        0        0
2      number   buy      123      NaN
3      number  view      333      222

Drop rows that are all zero:

df = df[~((df['group_A']==0) | (df['group_B']==0))]

Fillna's:

>>> df.fillna(0)
group level_0  type  group_A  group_B
0      amount   buy      100        0
2      number   buy      123        0
3      number  view      333      222

Somewhat guessing in a few place here, but it should give you a start.

1
  • Thanks. I was trying to use multiindex but this is far simpler. Feb 17, 2014 at 20:45

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.