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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')]]
Out[12]:
  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')]]
Out[23]:
  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')]]
Out[25]:
  colour vehicle  weight
a    red     car       1
d    red     car       2
share|improve this answer

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