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I'm working on a way to transform sequence/genotype data from a csv format to a genepop format.

I have two dataframes: df1 is empty, df1.index (rows = samples) consists of almost the same as df2.index, except I inserted "POP" in several places (to specify the different populations). df2 holds the data, with Loci as columns.

I want to insert the values from df2 into df1, keeping empty rows where df1.index = 'POP'.

I tried join, combine, combine_first and concat, but they all seem to take the rows that exist in both df's.

Is there a way to do this?

share|improve this question
df1.join(df2) should default to a left join which only preserves the columns from df1. Is that what you want? In pandas 0.10 that is the default. – Zelazny7 Jan 12 '13 at 3:04
umm, not really. I'd like to preserve the indices of df1, the columns are fine. – schimar Jan 12 '13 at 19:39

It sounds like you want an 'outer' join:

df1.join(df2, how='outer')
share|improve this answer
thx Hayden. it keeps the rows, however, the 'POP' rows are being lumped together, that means I lose the order. – schimar Jan 12 '13 at 17:41

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