I am trying to subsample rows of a DataFrame according to a grouping. Here is an example. Say I define the following data:

from pandas import *
df = DataFrame({'group1' : ["a","b","a","a","b","c","c","c","c",
                'group2' : [1,2,3,4,1,3,5,6,5,4,1,2,3,4,3,2,1],
                'value'  : ["apple","pear","orange","apple",

If I group by group1 and group2, then the number of rows in each group is here:

In [190]: df.groupby(['group1','group2'])['value'].agg({'count':len})
a  1  2    
   2  1    
   3  2    
   4  1    
b  1  2    
   2  2    
   3  1    
   4  1    
c  3  1    
   4  1    
   5  2    
   6  1    

(If there is an even more concise way to compute that, please tell.)

I now want to construct a DataFrame that has one randomly selected row from each group. My proposal is to do it like so:

In [215]: from random import choice
In [216]: grouped = df.groupby(['group1','group2'])
In [217]: subsampled = grouped.apply(lambda x: df.reindex(index=[choice(range(len(x)))]))
In [218]: subsampled.index = range(len(subsampled))
In [219]: subsampled
    group1  group2  value
0   b       2       pear 
1   a       1       apple
2   b       2       pear 
3   a       1       apple
4   a       1       apple
5   a       1       apple
6   a       1       apple
7   a       1       apple
8   a       1       apple
9   a       1       apple
10  a       1       apple
11  a       1       apple

which works. However, my real data has about 2.5 million rows and 12 columns. If I do this the dirty way by building my own data structures, I can complete this operation in a matter of seconds. However, my implementation above does not finish within 30 minutes (and does not appear to be memory-limited). As a side note, when I tried implementing this in R, I first tried plyr, which also did not finish in a reasonable amount of time; however, a solution using data.table finished very rapidly.

How do I get this to work rapidly with pandas? I want to love this package, so please help!

1 Answer 1


I tested with apply, it seems that when there are many sub groups, it's very slow. the groups attribute of grouped is a dict, you can choice index directly from it:

subsampled = df.ix[(choice(x) for x in grouped.groups.itervalues())]

EDIT: As of pandas version 0.18.1, itervalues no longer works on groupby objects - you can just use .values:

subsampled = df.ix[(choice(x) for x in grouped.groups.values())]
  • 3
    I replied on the pystatsmodels mailing list about this. I came up with the same solution you suggested-- being the package author I don't know of a better way =) Sep 28, 2011 at 13:18
  • @wesm, I was just about to cross-post your answer here as well. Thanks everyone! Sep 28, 2011 at 15:50

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.