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I have a data frame and I would like to group it by a particular column (or, in other words, by values from a particular column). I can do it in the following way: grouped = df.groupby(['ColumnName']).

I imagine the result of this operation as a table in which some cells can contain sets of values instead of single values. To get a usual table (i.e. a table in which every cell contains only one a single value) I need to indicate what function I want to use to transform the sets of values in the cells into single values.

For example I can replace sets of values by their sum, or by their minimal or maximal value. I can do it in the following way: grouped.sum() or grouped.min() and so on.

Now I want to use different functions for different columns. I figured out that I can do it in the following way: grouped.agg({'ColumnName1':sum, 'ColumnName2':min}).

However, because of some reasons I cannot use first. In more details, grouped.first() works, but grouped.agg({'ColumnName1':first, 'ColumnName2':first}) does not work. As a result I get a NameError: NameError: name 'first' is not defined. So, my question is: Why does it happen and how to resolve this problem.

ADDED

Here I found the following example:

grouped['D'].agg({'result1' : np.sum, 'result2' : np.mean})

May be I also need to use np? But in my case python does not recognize "np". Should I import it?

share|improve this question
    
You don't need np, it'll work with plain old sum (only less efficiently). numpy is imported with pandas (if you import pandas as pd it's pd.np) but most people will also import it separately for convenience. – Andy Hayden Feb 21 '13 at 12:59
up vote 9 down vote accepted

I think the issue is that there are two different first methods which share a name but act differently, one is for groupby objects and another for a Series/DataFrame (to do with timeseries).

To replicate the behaviour of the groupby first method over a DataFrame using agg you could use iloc[0] (which gets the first row in each group (DataFrame/Series) by index):

grouped.agg(lambda x: x.iloc[0])

For example:

In [1]: df = pd.DataFrame([[1, 2], [3, 4]])

In [2]: g = df.groupby(0)

In [3]: g.first()
Out[3]: 
   1
0   
1  2
3  4

In [4]: g.agg(lambda x: x.iloc[0])
Out[4]: 
   1
0   
1  2
3  4

Analogously you can replicate last using iloc[-1].

Note: This will works column-wise, et al:

g.agg({1: lambda x: x.iloc[0]})

In older version of pandas you could would use the irow method (e.g. x.irow(0), see previous edits.


A couple of updated notes:

This is better done using the nth groupby method, which is much faster >=0.13:

g.nth(0)  # first
g.nth(-1)  # last

You have to take care a little, as the default behaviour for first and last ignores NaN rows... and IIRC for DataFrame groupbys it was broken pre-0.13... there's a dropna option for nth.

You can use the strings rather than built-ins (though IIRC pandas spots it's the sum builtin and applies np.sum):

grouped['D'].agg({'result1' : "sum", 'result2' : "mean"})
share|improve this answer
    
Just in case it's useful to anyone, according to the docs, irow is now deprecated (x.iloc[0] does the trick instead) – cd98 Oct 30 '13 at 13:55
    
@cd98 Thanks for pointing that out, I've updated this with the newer syntax :) – Andy Hayden Oct 30 '13 at 19:55
    
I'm confused with the docs; it states: Aggregating functions are ones that reduce the dimension of the returned objects, for example: mean, sum, size, count, std, var, sem, describe, first, last, nth, min, max. So what are they talking about? – Tjorriemorrie Dec 5 '14 at 10:57
    
In some sense there's three types of mapping here: aggregation, apply and filter (the above is kind of a filter, although it uses the agg verb). This is complicated thing is that you can use either agg or apply to get the .iloc[0] job done, not sure why I used agg, apply is probably a better description. Since this post I fixed nth to work better so IMO that's the preferred solution here. – Andy Hayden Dec 5 '14 at 17:24

I'm not sure if this is really the issue, but sum and min are Python built-ins that take some iterables as input, whereas first is a method of pandas Series object, so maybe it's not in your namespace. Moreover it takes something else as an input (the doc says some offset value).

I guess one way to get around it is to create your own first function, and define it such that it takes a Series object as an input, e.g.:

def first(Series, offset):
    return Series.first(offset)

or something like that..

share|improve this answer
    
It's a pity the pd.Series.first does not work – Tjorriemorrie Dec 5 '14 at 10:44

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