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The same question has been posted on pydata google group.

I want to do a custom concat i.e using the rows in a group by object to create new cols.

Here is an contrived example:

Input data frame
name age
foo     12
bar     14

df = pandas.DataFrame({  'name':['foo','bar'],'age': [12,14] })



expected output, a pandas data frame with four cols 
foo 12 bar 14

PS: I am looking for an efficient solution as this would be applied to a grouped pandas object containing 800k odd groupings.

Sample 800k data would have following structure. I am still using an analogy as actual data is scientific and column names might not be intuitive

Subject (grouped by col)
          Name     Age        mark1   
          Foo      12         80     
          Bar      14         90 

What we want from this grouped by data is the following data frame

Subject Foo 12 80 Bar 14 90
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Could you give more details on how the 800k df looks like? –  elyase May 15 '13 at 1:00
    
Sure @elyase..details are present now –  Abhi May 15 '13 at 4:20
    
What do you mean when you say you want a DataFrame Subject Foo 12 80 Bar 14 90? (how is one line a DataFrame?) –  Andy Hayden May 15 '13 at 8:20
    
see also same question on google group pydata: groups.google.com/forum/?fromgroups=#!topic/pydata/8sWqBRwRXNU –  Wouter Overmeire May 15 '13 at 9:47
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1 Answer 1

You want to reshape the values of the DataFrame so:

In [43]: pandas.DataFrame(df[['name', 'age']].values.reshape(1, 4))
Out[43]:
     0   1    2   3
0  foo  12  bar  14

This should be efficient as reshape() returns a view. Credits @Wouter Overmeire.

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