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My data is year-based, with year as an index. I have someFunc() that does some stuff on groupedBy data. However, it will return two values (two floats, not columns). I want to put these two values into two new columns in the old dataframe. Using a simple function for demonstration, what I had in mind was

def someFunc(group):
    a = 1
    b = 2
    return pd.DataFrame([[a, b]], columns={'colA', 'colB'}, index=[group['year'][0]])
results = df.groupby(level=0).apply(someFunc)
pd.merge(df, results, left_index=True, right_index=True)

However, this will create a double-indexed value: one because I added an index, and one index which comes from apply():

results
                colA        colB
year                            
1961 1961          1           2
1962 1962          1           2
1963 1963          1           2

and therefore, of course, the merge will not work. I have tried other various ways (including returning numpy arrays), but all of them are not neat. What should I do? I am aware that I could split the function up to run the code twice, once for each column - but that's not really efficient. To be clear, my expected results (for the variable result) is

results
                colA        colB
year                            
1961               1           2
1962               1           2
1963               1           2

And prior to this, data looks like

           c      a        b  
year                                                                          
1983     722   1001  1.06300  
1984     722   1001  1.24225   
1985     722   1001  2.78925   
1986     722   1001  0.59600   
1982  442110   1003  1.86300 

Intermediate Result

return pd.DataFrame([[a, b]], columns=['colA', 'colB'], index=[group['year'].max()])

returns

           colA       colB
1961         30   2.434379

So then this is the key problem, right? It returns something with an index, and then apply() stacks its own index on top. Since there is no way to return a dataframe without index, I'd guess the solution must lie in affecting apply()

Solution

As posted in a comment somewhere down the road:

results = df.groupby(level=0).apply(someFunc).reset_index(level=0, drop=True)
share|improve this question
    
Try results = df.groupby(level=0).apply(someFunc, axis=1) –  EdChum Apr 29 '14 at 14:35
    
someFunc() got an unexpected keyword argument 'axis' - or was I supposed to use that somehow in my function? –  FooBar Apr 29 '14 at 14:47
    
My mistake you can pass that param on a groupby apply, could you post some sample data so I can see what your df looks like prior to the groupby –  EdChum Apr 29 '14 at 15:39
    
I have added sample data. –  FooBar Apr 30 '14 at 8:32
    
I think I can get what you want but don't want to post my answer just yet try changing the last line in your someFunc to:return pd.DataFrame([[a, b]], columns={'colA', 'colB'}, index=[group['year'].max()]) –  EdChum Apr 30 '14 at 8:52

1 Answer 1

up vote 1 down vote accepted

This worked for me using your data

In [57]:

temp="""year           c      a        b                                                                
1983     722   1001  1.06300  
1984     722   1001  1.24225   
1985     722   1001  2.78925   
1986     722   1001  0.59600   
1982  442110   1003  1.86300 """

df = pd.read_csv(io.StringIO(temp), sep='\s+')
df
Out[57]:
   year       c     a        b
0  1983     722  1001  1.06300
1  1984     722  1001  1.24225
2  1985     722  1001  2.78925
3  1986     722  1001  0.59600
4  1982  442110  1003  1.86300

[5 rows x 4 columns]
In [66]:

def someFunc(group):
    a = 1
    b = 2
    #print(group['year'].values)
    return pd.DataFrame([[a, b]], columns={'colA', 'colB'}, index=[group['year'].max()])
df.groupby(level=0).apply(someFunc)
Out[66]:
        colA  colB
0 1983     1     2
1 1984     1     2
2 1985     1     2
3 1986     1     2
4 1982     1     2

[5 rows x 2 columns]

EDIT

After further discussion, the above code also shows the duplicated index you face so you can call reset_index to get rid of the duplication:

In [91]:

def someFunc(group):
    a = 1
    b = 2
    return pd.DataFrame([[a, b]], columns={'colA', 'colB'}, index=[group['year'].max()])
df.groupby(level=0).apply(someFunc).reset_index(level=0, drop=True)

Out[91]:
      colA  colB
1983     1     2
1984     1     2
1985     1     2
1986     1     2
1982     1     2

[5 rows x 2 columns]
share|improve this answer
    
Well your data does not have year as an index - that may be making the difference. –  FooBar Apr 30 '14 at 10:21
    
@FooBar So if you reset_index and then do groupby and apply does it work? –  EdChum Apr 30 '14 at 10:24
    
Oh wait. Yes, I can reproduce this when I reset the index. However, you also have a double index... I would like to have just the annual index, no other integers. My hackish way of doing this right now is adding results = results.reset_index().drop('level_1', 1).set_index('year') to my code –  FooBar Apr 30 '14 at 10:32
    
@FooBar, OK I see the problem, you could using your original code just drop the duplicate index values: df.groupby(level=0).apply(someFunc).reset_index(level=0, drop=True) –  EdChum Apr 30 '14 at 10:41

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