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Is there a way to concat, join or merge dataframes based on both the index and columns? For example, suppose I have a list of dataframes and I want something like

df = pandas.fullConcat(dfList)

where df.index should be the union of the indices in dfList ('outer' join) and df.columns should also be the union of the columns in dfList. I think all of the concat, join and merge methods just do a join on either the index or the column. I suppose a workaround is stack/unstack or reset_index? I feel like I'm missing something simple.

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Maybe it makes sense that the joins can only occur on one multi-index at a time. When you have both MultiIndexes and multi-dimensional indexed arrays, the options are many. As a 'work flow' t seems that working with a single MultiIndex during aggregation of data makes the most sense. –  mathtick Feb 22 '13 at 23:06

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up vote 2 down vote accepted

I think you're going to have to reset the index:

df = df1.reset_index().merge(df2.reset_index(), on=['index','cols']).set_index('index')
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