Sign up ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

When group a pandas dataframe by one column say "version" and which has 10 distinct versions. How can one plot the Top 3 (which cover over 90%) and put the small remainders into one "Other"-Bucket.

data = array([
              ('Top1', 14),
              ('Top1', 3),
              ('Top1', 2),
              ('Top2', 6),
              ('Top2', 7),
              ('Other1', 1),
              ('Other2', 2),
      dtype=[('Version', 'S10'),('Value', '<i4')])
df = DataFrame.from_records(data)

This returns:

Other1   1
Other2   2
Top1     19
Top2     13

Im Looking for

Top1     19
Top2     13

The version names Other* and Top* are just chosen for the example.

Of course this is possible by manually setting the category to "Other" after grouping and comparing to a threshold. I was hoping for a shortcut.

share|improve this question
simple example with input and output dataframes could make it' much easier to work on solution –  Roman Pekar Nov 7 '13 at 12:36

1 Answer 1

up vote 2 down vote accepted

I assume you also want the Other group to be summed, for your example to a total of 3?

If i was aiming to win the Pandas one-liner competition this would be my entry:

df.replace(df.groupby('Version').sum().sort('Value', ascending=False).index[2:], 'Other').groupby('Version').sum()

Other        3
Top1        19
Top2        13

But that's completely unreadable, so lets break it down:

You already showed how to sum each group, sorting this result and selecting anything outside of the top 2 can be done with:

not_top2 = df.groupby('Version').sum().sort('Value', ascending=False).index[2:]

In this example not_top2 contains Other1 and Other2.

We can replace those Versions to a common name with:

dfnew  = df.replace(not_top2, 'Other')
print dfnew

  Version  Value
0    Top1     14
1    Top1      3
2    Top1      2
3    Top2      6
4    Top2      7
5   Other      1
6   Other      2

The above replaces the contents of not_top2 in any column. A little substep is needed if you expect this value to occur in any other column than Version.

Whats left is to do your original grouping again:


Which gives:

Other        3
Top1        19
Top2        13
share|improve this answer
here's an open issue to do basically this :, welcome PR's for it! –  Jeff Nov 7 '13 at 15:31
That's a very concise way to do what I meant with manually. Thanks! –  Cilvic Nov 8 '13 at 18:34

Your Answer


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.