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I am attempting a merge between two data frames. Each data frame has two index levels (date, cusip). In the columns, some columns match between the two (currency, adj date) for example.

What is the best way to merge these by index, but to not take two copies of currency and adj date.

Each data frame is 90 columns, so I am trying to avoid writing everything out by hand.

df:                 currency  adj_date   data_col1 ...
date        cusip
2012-01-01  XSDP      USD      2012-01-03   0.45
...

df2:                currency  adj_date   data_col2 ...
date        cusip
2012-01-01  XSDP      USD      2012-01-03   0.45
...

If I do:

dfNew = merge(df, df2, left_index=True, right_index=True, how='outer')

I get

dfNew:              currency_x  adj_date_x   data_col2 ... currency_y adj_date_y
date        cusip
2012-01-01  XSDP      USD      2012-01-03   0.45             USD         2012-01-03

Thank you! ...

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A practical solution might be to delete the spurious columns. I'd love to see a better answer, though. –  Marcin Oct 1 '13 at 20:18
    
Why not just select the columns you want to merge on like this: dfNew = merge(df, df2[['data_col_2']], left_index=True, right_index=True, how='outer') this avoids the duplicate columns and clash –  EdChum Oct 1 '13 at 20:21
    
I agree for smaller dataframes, but each dataframe is 90 columns and there may be 10 overlapping columns. –  user1911092 Oct 1 '13 at 20:22
    
@user1911092 in that case there is nothing you can do other than define some method that drops all the columns that end in _y and rename the _x columns if you do not know upfront, after performing the merge, at least to the best of my knowledge –  EdChum Oct 1 '13 at 20:24
    
@user1911092 actually thinking about it you can just take the complement of the columns that don't overlap e.g. cols_to_use = df2.columns-df.columns and then perform a merge using this list of columns that are in df2 and not in df dfNew = merge(df, df2[cols_to_use.tolist()], left_index=True, right_index=True, how='outer') if htis works I will post as answer –  EdChum Oct 1 '13 at 20:37

1 Answer 1

up vote 7 down vote accepted

You can work out the columns that are only in one dataframe and use this to select a subset of columns in the merge

cols_to_use = df2.columns - df.columns

then perform the merge using this (note this is an index object but it has a handy tolist() method)

dfNew = merge(df, df2[cols_to_use], left_index=True, right_index=True, how='outer')

This will avoid any columns clashing in the merge

For version 0.15

cols_to_use = df2.columns.difference(df.columns)

thanks @odedbd

share|improve this answer
    
This is great, I just want to update that with 0.15 this will give a deprecation warning, suggesting the new syntax cols_to_use = df2.columns.difference(df.columns) –  odedbd Nov 3 '14 at 7:17
    
@odedbd thanks for the comment, have updated my answer –  EdChum Nov 3 '14 at 9:37

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