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I have a pandas dataframe in which one column of text strings contains comma-separated values. I want to split each CSV field and create a new row per entry (assume that CSV are clean and need only be split on ','). For example, a should become b:

In [7]: a
Out[7]: 
    var1  var2
0  a,b,c     1
1  d,e,f     2

In [8]: b
Out[8]: 
  var1  var2
0    a     1
1    b     1
2    c     1
3    d     2
4    e     2
5    f     2

So far, I have tried various simple functions, but the .apply method seems to only accept one row as return value when it is used on an axis, and I can't get .transform to work. Any suggestions would be much appreciated!

Example data:

from pandas import DataFrame
import numpy as np
a = DataFrame([{'var1': 'a,b,c', 'var2': 1},
               {'var1': 'd,e,f', 'var2': 2}])
b = DataFrame([{'var1': 'a', 'var2': 1},
               {'var1': 'b', 'var2': 1},
               {'var1': 'c', 'var2': 1},
               {'var1': 'd', 'var2': 2},
               {'var1': 'e', 'var2': 2},
               {'var1': 'f', 'var2': 2}])

I know this won't work because we lose DataFrame meta-data by going through numpy, but it should give you a sense of what I tried to do:

def fun(row):
    letters = row['var1']
    letters = letters.split(',')
    out = np.array([row] * len(letters))
    out['var1'] = letters
a['idx'] = range(a.shape[0])
z = a.groupby('idx')
z.transform(fun)
share|improve this question

1 Answer 1

up vote 5 down vote accepted

How about something like this:

In [55]: pd.concat([Series(row['var2'], row['var1'].split(','))              
                    for _, row in a.iterrows()]).reset_index()
Out[55]: 
  index  0
0     a  1
1     b  1
2     c  1
3     d  2
4     e  2
5     f  2

Then you just have to rename the columns

share|improve this answer
    
Looks like this is going to work. Thanks for your help! In general, though, is there a prefered approach to Split-Apply-Combine where Apply returns a dataframe of arbitrary size (but consistent for all chunks), and Combine just vstacks the returned DFs? –  Vincent Oct 2 '12 at 0:22
    
GroupBy.apply should work (I just tried it against master). However, in this case you don't really need to go through the extra step of grouping since you're generating the data by row right? –  Chang She Oct 2 '12 at 1:43
    
Yes, that's right. Thanks for the tip. iterrows is nice. –  Vincent Oct 2 '12 at 3:00
    
Hey guys. Sorry to jump into this so late but wondering if there is not a better solution to this. I'm trying to experiment with iterrows for the first time since that seems like the ticket for this. I'm also confused by the solution proposed. What does the "_" represent? Can you possibly explain how the solution works? --Thank you –  prometheus2305 Jun 25 at 20:20
    
Can the solution be extended to more than two columns? –  prometheus2305 Jun 25 at 21:54

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