Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have massaged a dataframe so it looks like this:


I would like to transform it, so it looks like this:


The pattern is this:

123 789 CDE ...
456 0AB FGH ,,,

That is, I take two rows and concatenate the next two rows, etc, so I get a wide dataframe.

But my real dataframe is not three columns, it is maybe 50 columns, and maybe 100,000 rows, so my dataframe is 100,000 x 50 big. I want to take 100 rows, and concatenate the next 100 rows, etc so I get a wide dataframe with dimension 100 x (50 * 100,000/100) = 100 x 50,000.

Can Pandas do this? My aim is to do some calculations on each of these 100 rows. Or is hierarchical indexing better?

share|improve this question

1 Answer 1

shell [33]>>> df
0  123
1  456
2  789
3  0AB
4  CDE
5  FGH
6  ...
7  ,,,

shell [34]>>> pd.DataFrame(df.values.reshape(4, 2)).sum()
0    123789CDE...
1    4560ABFGH,,,
dtype: object

Another approach is using groupby.

shell [35]>>> df['group'] = 0

shell [36]>>> df[1::2]['group'] = 1

shell [37]>>> grouped = df.groupby('group')

shell [38]>>> grouped.sum()
0      123789CDE...
1      4560ABFGH,,,

Maybe worth studying not to create a new frame and instead work directly on the groups? Certainly for multiple columns and huge numnber of rows.

shell [39]>>> for key, group in grouped:
    print key
    print group
     0  group
0  123      0
2  789      0
4  CDE      0
6  ...      0
     0  group
1  456      1
3  0AB      1
5  FGH      1
7  ,,,      1                                
share|improve this answer
Your approach with "reshape()" does not give the output you gave. It gives: >>...reshape(10,2)<newline> 123 456 789 0AB<newline> CDE FGH ... ,,,<newline> instead of: 123 789 CDE ...<newline> 456 0AB FGH ,,,<newline> Thanks for teaching me about "groupby" which is better. However, "grouped" is a DataFrameGroupBy object. I would like "grouped" to be an ordinary DataFrame object which I can work with. Now, the "grouped" object is a DataFrameGroupBy which I dont know how to work with. It does not have .ix(...) method, for instance. Can I transform "grouped" to a DataFrame? –  user2186859 May 22 '13 at 13:43
PS. Thank you for your help. I really appreciate you pointed me in the right direction! :) –  user2186859 May 22 '13 at 13:44
I have got groupby() solution to work, but I can not work with the individual groups. I need to look at all groups at the same time. Therefore I would like to have a very wide dataframe like this: Group1 | Group2 | ... | Groupn (where each Group consists of 100 rows, concatenated by the next Group etc, so all Groups span the columns) And now, I will look at the first row (which spans every group), and run some functions on each row. How should I do that? –  user2186859 May 22 '13 at 14:47
Have a look at pandas.pydata.org/pandas-docs/stable/groupby.html more specifically at the apply and transform sections –  Wouter Overmeire May 22 '13 at 18:48
Thanks for your help everybody! I have solved the problem. First I add a new "group" column numbering each row. Then I use groupby to extract a sub dataframe consisting of each group. After that, I do pandas.concat([df1, df2], axis=1) which concatenates the dataframes columnwise just as I wanted. Thanx! :) –  user2186859 May 23 '13 at 11:17

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.