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I have a data frame of records that looks something like this:

stocks = pd.Series(['A', 'A', 'B', 'C', 'C'], name = 'stock')
positions = pd.Series([ 100, 200, 300, 400, 500], name = 'positions')
same1 = pd.Series(['AA', 'AA', 'BB', 'CC', 'CC'], name = 'same1')
same2 = pd.Series(['AAA', 'AAA', 'BBB', 'CCC', 'CCC'], name = 'same2')
diff = pd.Series(['A1', 'A2', 'B3' ,'C1', 'C2'], name = 'different')
df = pd.DataFrame([stocks, same1, positions, same2, diff]).T
df

This gives a pandas DataFrame that looks like

      stock same1 positions same2 different
0     A    AA       100   AAA        A1
1     A    AA       200   AAA        A2
2     B    BB       300   BBB        B3
3     C    CC       400   CCC        C1
4     C    CC       500   CCC        C2

not interested in the data in 'different' columns and want to sum the positions along the unique other columns. I am currently doing it by:

df.groupby(['stock','same1','same2'])['positions'].sum()

which gives:

stock  same1  same2
A      AA     AAA      300
B      BB     BBB      300
C      CC     CCC      900
Name: positions

Problem is that this is a pd.Series (with Multi-Index). Currently I iterate over it to build a DataFrame again. I am sure that I am missing a method. Basically I want do drop 1 column form a DataFrame and then "rebuild it" so that one column is summed and the rest of the fields (which are the same) stay in place.

This groupby method breaks if there are empty positions. So I currently use an elaborate iteration over the DataFrame to build a new one

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1 Answer 1

up vote 6 down vote accepted

Step 1. Use [['positions']] instead of ['positions']:

In [30]: df2 = df.groupby(['stock','same1','same2'])[['positions']].sum()

In [31]: df2 
Out[31]: 

                   positions
stock same1 same2               
A     AA    AAA          300 
B     BB    BBB          300 
C     CC    CCC          900 

Step 2. And then use reset_index to move the index back to the column

In [34]: df2.reset_index()
Out[34]: 
  stock same1 same2  positions
0     A    AA   AAA        300 
1     B    BB   BBB        300 
2     C    CC   CCC        900

EDIT

Seems my method is not so good.

Thanks to @Andy and @unutbu , you can achieve your goal by more elegant ways:

method 1:

df.groupby(['stock', 'same1', 'same2'])['positions'].sum().reset_index()

method 2:

df.groupby(['stock', 'same1', 'same2'], as_index=False)['positions'].sum()
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1  
Note: reset_index works equally well with the Series! –  Andy Hayden Jun 18 '13 at 10:38
    
Cool, so the step 1 can be ignore –  waitingkuo Jun 18 '13 at 10:43
1  
If you use df.groupby(['stock','same1','same2'], as_index=False) then the DataFrame will preserve ['stock','same1','same2'] as columns, (thus avoiding reset_index() altogether.) –  unutbu Jun 18 '13 at 10:45
    
Thanks. It's so luck to learn a lot from answering this question. –  waitingkuo Jun 18 '13 at 10:51
    
got one problem though. The methods break if any of the columns that are the same have NaN in them. E.g. same2 = pd.Series(['AAA', 'AAA', np.nan, np.nan, np.nan], name = 'same2') replacing this in code just drop those whole rows... Think it is probably to do with the NaN == issue in pandas? –  Joop Jun 18 '13 at 13:29

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