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I'm trying to wrap my head around Pandas groupby methods. I'd like to write a function that does some aggregation functions and then returns a Pandas DataFrame. Here's a grossly simplified example using sum(). I know there are easier ways to do simple sums, in real life my function is more complex:

import pandas as pd
df = pd.DataFrame({'col1': ['A', 'A', 'B', 'B'], 'col2':[1.0, 2, 3, 4]})

In [3]: df
Out[3]: 
  col1  col2
0    A     1
1    A     2
2    B     3
3    B     4

def func2(df):
    dfout = pd.DataFrame({ 'col1' : df['col1'].unique() ,
                           'someData': sum(df['col2']) })
    return  dfout

t = df.groupby('col1').apply(func2)

In [6]: t
Out[6]: 
       col1  someData
col1                 
A    0    A         3
B    0    B         7

I did not expect to have col1 in there twice nor did I expect that mystery index looking thing. I really thought I would just get col1 & someData.

In my real life application I'm grouping by more than one column and really would like to get back a DataFrame and not a Series object.
Any ideas for a solution or an explanation on what Pandas is doing in my example above?

----- added info -----

I should have started with this example, I think:

In [13]: import pandas as pd

In [14]: df = pd.DataFrame({'col1':['A','A','A','B','B','B'], 'col2':['C','D','D','D','C','C'], 'col3':[.1,.2,.4,.6,.8,1]})

In [15]: df
Out[15]: 
  col1 col2  col3
0    A    C   0.1
1    A    D   0.2
2    A    D   0.4
3    B    D   0.6
4    B    C   0.8
5    B    C   1.0

In [16]: def func3(df):
   ....:         dfout =  sum(df['col3']**2)
   ....:         return  dfout
   ....: 

In [17]: t = df.groupby(['col1', 'col2']).apply(func3)

In [18]: t
Out[18]: 
col1  col2
A     C       0.01
      D       0.20
B     C       1.64
      D       0.36

In the above illustration the result of the apply() function is a Pandas Series. And it lacks the groupby columns from the df.groupby. The essence of what I'm struggling with is how do I create a function which I apply to a groupby which returns both the result of the function AND the columns on which it was grouped?

----- yet another update ------

It appears that if I then do this:

 pd.DataFrame(t).reset_index()

I get back a dataframe which is really close to what I was after.

share|improve this question
1  
btw, this tutorial by one of the pandas programmers helped me understand the groupby and aggregation mechanics of pandas: youtube.com/watch?v=MxRMXhjXZos –  Zelazny7 Feb 21 '13 at 14:28
    
In the example you've appended, what's the purpose of the groupby (it'll just find dupes), you can just do an apply to df itself and add that as a column: df['func3'] = df.apply(lambda row: row['col2'] ** 2, axis=1). ? –  Andy Hayden Feb 21 '13 at 15:19
    
The data is a bit too simple for the example, I'm afraid. I'll update the example. –  JD Long Feb 21 '13 at 15:23
    
I don't can't see an example where it makes sense to groupby all columns and apply, rather than just apply (DataFrames apply can be very non-trivial and save to multiple columns). (Also you don't need to create a dfout return variable, you can just return the calculation e.g. return df['col3']**2 :) ) –  Andy Hayden Feb 21 '13 at 15:35
    
example updated... and now it works! Geesh. It appears that when the apply is on every row it does not return the keys, but if the apply results in aggregation it does return the keys –  JD Long Feb 21 '13 at 15:39

1 Answer 1

The reason you are seeing the columns with 0s is because the output of .unique() is an array.

The best way to understand how your apply is going to work is to inspect each action group-wise:

In [11] :g = df.groupby('col1')

In [12]: g.get_group('A')
Out[12]: 
  col1  col2
0    A     1
1    A     2

In [13]: g.get_group('A')['col1'].unique()
Out[13]: array([A], dtype=object)

In [14]: sum(g.get_group('A')['col2'])
Out[14]: 3.0

The majority of the time you want this to be an aggregated value.

The output of grouped.apply will always have the group labels as an index (the unique values of 'col1'), so your example construction of col1 seems a little obtuse to me.

Note: To pop 'col1' (the index) back to a column you can call reset_index, so in this case.

In [15]: g.sum().reset_index()
Out[15]: 
  col1  col2
0    A     3
1    B     7
share|improve this answer
    
Thank you for the explanation on the array. I'm clearly bringing my R baggage to Python. –  JD Long Feb 21 '13 at 14:48
    
for an arbitrary function which I am applying, the groupby seems to drop my grouping columns from the result and returns only a Series of answers. Clearly using the sum() method gets around that, but it's not helpful for custom functions which are not implemented as groupby methods. I added an example to my question to illustrate better. –  JD Long Feb 21 '13 at 15:18
    
@JDLong are you are groupby on every column? (to me, this seems a strange thing to do, but I agree the output is a little weird: not having the MultiIndex of the columns) :s –  Andy Hayden Feb 21 '13 at 15:23
    
nope, in real life I might group on 3 columns and then have 10 more which I do calculations on. But when I output I want to keep the groupby keys in the result. –  JD Long Feb 21 '13 at 15:33
    
@JDLong I see, that's strange! I thought reset_index works in that case. (Could you give an example where it doesn't?) –  Andy Hayden Feb 21 '13 at 15:38

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