Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Let's say I have the following DataFrame, where each row represents an event performed by a certain user on a certain time:

In [1]: df
Out[1]: 
      time event
user            
a        1     x
a        2     y
a        3     z
b        1     x
b        2     x
b        3     z
b        4     z
c        1     y
c        2     y
c        3     z
d        1     z

I would like to reshape this such that it has the following structure:

In [2]: dfm
Out[2]: 
       x   y  z
user           
a      1   2  3
b      1 NaN  3
b      1 NaN  4
b      2 NaN  3
b      2 NaN  4
c    NaN   1  3
c    NaN   2  3
d    NaN NaN  1

I currently obtain this by first creating one DataFrame per event:

In [3]: dfs = [d[['time']].rename(columns={'time': k}) for k, d in df.groupby('event')]

In [4]: dfs
Out[4]: 
[      x
 user   
 a     1
 b     1
 b     2,       y
 user   
 a     2
 c     1
 c     2,       z
 user   
 a     3
 b     3
 b     4
 c     3
 d     1]

And then calling pd.merge multiple times:

In [5]: dfm = dfs[0]

In [5]: for d in dfs[1:]:
   ...:     dfm = pd.merge(dfm, d, left_index=True, right_index=True, how='outer')

This works fine, but I'm wondering whether there is a better way. It would not be the first time that pandas has surprised me with some nifty function! I have tried pd.concat(dfs, axis=1), but that produces the following error (only last line shown):

ValueError: Shape of passed values is (1, 5), indices imply (1, 4)

I have also looked into pd.pivot_table, but that produces one row per user and averages the timestamps. Maybe I'm overlooking something. Any help is greatly appreciated!

share|improve this question
    
you should be able to use pivot to accomplish what do you want –  lowtech Dec 6 '13 at 14:41
    
I have tried various incantations of pd.pivot_table, but to no avail. Would you be so kind to share the correct one? –  Jeroen Janssens Dec 6 '13 at 15:04
    
looks like your solution is the best given the problem. pivots are that helpful in your case. –  lowtech Dec 6 '13 at 15:41

1 Answer 1

up vote 1 down vote accepted

Below is the solution discussed in the question

import pandas as pd
from StringIO import StringIO

data = \
'user,time,event\n\
a,1,x\n\
a,2,y\n\
a,3,z\n\
b,1,x\n\
b,2,x\n\
b,3,z\n\
b,4,z\n\
c,1,y\n\
c,2,y\n\
c,3,z\n\
d,1,z\n'

df = pd.read_csv(StringIO(data), index_col='user')
dfs = [d[['time']].rename(columns={'time': k}) for k, d in df.groupby('event')]
dfm = dfs[0]
for d in dfs[1:]:
    dfm = pd.merge(dfm, d, left_index=True, right_index=True, how='outer')
share|improve this answer
    
Thanks for copying my solution into a separate answer. :) –  Jeroen Janssens May 10 '14 at 15:49

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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