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If I have a dataframe that has columns that include the same name, is there a way to combine the columns that have the same name with some sort of function (i.e. sum)?

For instance with:

In [186]:

df["NY-WEB01"].head()
Out[186]:
NY-WEB01    NY-WEB01
DateTime        
2012-10-18 16:00:00  5.6     2.8
2012-10-18 17:00:00  18.6    12.0
2012-10-18 18:00:00  18.4    12.0
2012-10-18 19:00:00  18.2    12.0
2012-10-18 20:00:00  19.2    12.0

How might I collapse the NY-WEB01 columns (there are a bunch of duplicate columns, not just NY-WEB01) by summing each row where the column name is the same?

share|improve this question
    
Yes, this is Split-Apply-Combine where your aggregating function is sum(). This is a very common paradigm. Btw, you're 'aggregating' the rows, not 'merging' them. – smci Mar 21 '13 at 7:40
    
Also, here you're actually combining Rows, not Columns. (You're combining Rows based on certain Columns having the same value (not 'name')). You might like to correct your title. – smci Mar 21 '13 at 7:43
up vote 7 down vote accepted

I believe this does what you are after:

df.groupby(lambda x:x, axis=1).sum()

Alternatively, between 3% and 15% faster depending on the length of the df:

df.groupby(df.columns, axis=1).sum()

EDIT: To extend this beyond sums, use .agg() (short for .aggregate()):

df.groupby(df.columns, axis=1).agg(numpy.max)
share|improve this answer
    
Thank you! Been searching for something like this for a while. – Jason Kholodnov Jan 21 at 17:57

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