Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

Sign up and start helping → Learn more about Documentation →

I would like to perform an aggregation on some data , but once done, link the aggregate back to the rows which made up the aggregate.

df = pd.DataFrame({"vehicle":  ['car','bus','bus' ,'car','bus'],
               "colour" :  ['red','red','blue','red','blue'],
               "weight" :  [ 1,    14,   10,    2,    12]

grouped = df.groupby(["vehicle", "colour"], as_index=False)
print grouped.agg({"weight":"sum"})

vehicle colour  weight
0     bus   blue      22
1     bus    red      14
2     car    red       3

Say I want to display the aggregates, I can iterate through the above aggregate data. However, I also want to be able to determine / display the rows which made up any given aggregate. I.e. I need to be able to efficiently determine that the red car aggregate, is comprised of row 0 and row 3 in the original data set

Ultimately I'd like to persist this relationship to a file - but I'm unsure if this could be accomplished in one combined dataset, or if I'd need two separate data sets - with a way of linking any given aggregate back to the rows in the original data

My main question is - how do I determine the red car = 3, is comprised of rows 0 and 3 in the original dataset.

Many thanks for any help, Marcus

share|improve this question
This would be easier to understand with a toy example. Also you should link to the previous question, it's unclear exactly what's different here (are you looking to transform rather than agg)? – Andy Hayden Sep 16 '13 at 22:44
Can you illustrate (either with a toy example or some sort of simple diagram) what you mean by "link"? – Phillip Cloud Sep 17 '13 at 1:28
@marcusadamski please edit your question with that, it's better suited for updates like this (with formatting etc.) :) – Andy Hayden Sep 17 '13 at 21:39
@Andy Hayden - had trouble describing my changes in the comment, so as suggested, updated my original question. – marcus adamski Sep 17 '13 at 22:10
@marcusadamski I think I see what you're asking (thanks for editing) – Andy Hayden Sep 17 '13 at 23:00

You can apply a join operation between your original dataframe and the resulting aggregated data:

key_cols = ["Date", "TextA", "TextB"]
grouped = data.groupby(key_cols)
data.join(grouped.agg({"NumberA":"sum", "NumberB": "min"}), on=key_cols, rsuffix='_agg')
share|improve this answer

You can use the groups dictionary:

In [11]: grouped.groups[('car', 'red')]
Out[11]: [0, 3]

In [12]: df.loc[grouped.groups[('car', 'red')]]
  colour vehicle  weight
0    red     car       1
3    red     car       2

You have to be a bit careful, as in general this returns the labels (and not the integer locations).
Because it uses labels this solution fails with repeat indexes, so it may be a better idea to use the indices dictionary (which uses the integer location):

In [21]: df.index = list('abcdd')

See that the above solution fails (due to the repeat in the index):

In [22]: grouped.groups[('car', 'red')]
Out[22]: ['a', 'd']

In [23]: df.loc[grouped.groups[('car', 'red')]]
  colour vehicle  weight
a    red     car       1
d    red     car       2
d   blue     bus      12

But with indices (integer location) it works fine:

In [24]: grouped.indices[('car', 'red')]
Out[24]: array([0, 3])

In [25]: df.iloc[grouped.indices[('car', 'red')]]
  colour vehicle  weight
a    red     car       1
d    red     car       2
share|improve this answer

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.