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PS: cross posted on pydata mailing list..sorry I am in need of quick help.

I am creating a groupby object from a pandas df and want to select out all the groups with > 1 size. The following doesn't seem to work.

grouped[grouped.size > 1 ]

also how can one filter out certain values from a grouped df.

For example

remove all the rows from grouped where the colmun 'name' has a value 'foo' or 'bar'

Contrived Example

df = pandas.DataFrame({'A': ['foo','bar','foo','foo'],
                        'B': range(4)})
grouped = df.groupby('A')

Need the groupby object after removing the groups that have a group size <= 1 I tried the following, dint work..I am not sure how indexing/slicing works for the grouped object.

grouped[grouped.size() > 1]

Expected:

A
foo 0
    2
    3
share|improve this question
    
give us a concrete example, and show what you have tried. –  root Oct 31 '12 at 21:08
    
@root: example added –  Abhi Oct 31 '12 at 21:26
    
Hopefully some help: grouped.size().apply(lambda x: x>1), but I'm not sure how to do this –  Andy Hayden Oct 31 '12 at 21:44
3  
github.com/pydata/pandas/issues/919 –  root Oct 31 '12 at 21:45
1  
this is interesting ..for a change I have hit a area where a feature needed by me is missing in Pandas ..for long it was my understanding of it that was missing ..great library for what I do.. –  Abhi Oct 31 '12 at 21:51

2 Answers 2

As of pandas 0.12 you can do:

>>> grouped.filter(lambda x: len(x) > 1)

     A  B
0  foo  0
2  foo  2
3  foo  3
share|improve this answer
    
What is the 'x' in this case? Does that refer to the column which you used to groupby? –  goldisfine Oct 17 '13 at 23:45
1  
x would be each subgroup of the groupby operation, which you can examine with grouped.groups. In case of a multicolumn groupby these subgroups refer to several columns, but this is irrelevant as len counts by the rows in pandas objects. –  elyase Oct 18 '13 at 8:45

If you still need a workaround:

In [49]: pd.concat([group for _, group in grouped if len(group) > 1])
Out[49]: 
     A  B
0  foo  0
2  foo  2
3  foo  3
share|improve this answer
    
:Thanks : thats what I had implemented now but it would be nice to know how to do filtering on grouped objects coz that would be independent of writing a new list comprehension for each custom filtering case. –  Abhi Nov 1 '12 at 17:57
1  
The issue #919 cited above would be a good solution once someone implements it –  Wes McKinney Nov 9 '12 at 20:59

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