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I'm looking for a simple reliable way to obtain the grouping level inside an agg function for a pandas groupby object.

So, for example, for the following group object, and agg command:

import pandas as pd
df = pd.DataFrame({'Name': ['foo', 'bar'] * 3,
                   'Rank': range(6)})
grouped = df.groupby('Name')
result = grouped.agg(GetLevel)

What command do I use inside the GetLevel function to return 'foo' and then 'bar'?

def GetLevel(arr):
    level = arr.????
    return level

Hope that's clear

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What result are you looking for? –  Andy Hayden Nov 25 '13 at 7:39
Ultimately, what I want to do is to compare the items in the group with all of the other remaining items in the same column. More specifically, a proportions significance test looking for differences in proportions in survey responses in the group compared to survey responses in all of the other groups (using the R prop.test through rpy2) –  dreme Nov 25 '13 at 23:02

2 Answers 2

Can't say what you want to get, but to get keys inside aggregate function you can take first element from arr:

>>> def GetLevel(arr):
...     level = arr.iloc[0]['Name']
...     return level

Don't know if there's more elegant method to do that. You may also take a look at grouped.groups, may be you can take information you need from there.

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Yes, that works, as also does: level = arr.values[0][0] But here's the weird thing. Both of these solutions yield errors if I add another call in the function on the the arr attributes. So for instance the following functions fails: def Getlevel(arr):, e.g. arr.name. –  dreme Nov 25 '13 at 11:47
Sorry, have to rework that last comment, had trouble with the formatting. As I was saying your solution works, but fails with an IndexError if I add a statement in the function which calls on another arr attribute, like say, print arr.name. Somehow, it seems that just accessing an attribute in arr is actually changing it. –  dreme Nov 25 '13 at 12:16
@dreme can you give an actual example... –  Andy Hayden Nov 25 '13 at 23:46
Damn, I can't work out how to enter code in the comments, so I'll have to show you in my 'Answer Your Question' entry below. –  dreme Nov 26 '13 at 0:19
up vote 0 down vote accepted

OK, this is not an answer to my question. Just can't figure how to show code in the comments box.

Anyway, in answer to Andy's question below, here is an example of a function which returns the IndexError message I was talking about:

def GetLevel(arr):
    level = arr.iloc[0]['Name']
    colname = arr.name
    return level

You'll see it is the same as Roman's function, except with the addition of the colname assignment to arr.name. Strangely, if I remove either one of the two assignments, I get no error, but it just won't work with both. It's like a pointer gets moved or something changes after the first call on arr's attributes.

However, I found that this does work:

def Getlevel(arr):
    x = arr.index[0]
    colname = arr.name
    level = df.loc[x,'Name']
    return level

It's a bit kludgy since I have to insert the name of the dataframe and the aggregation column into the function, which I would prefer to avoid.

share|improve this answer
You should edit this to your own question. It could be you have to select an item from names rather than name... (Will take a look later). –  Andy Hayden Nov 27 '13 at 20:32

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