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I have two pandas DataFrames and I want to join them together such that I get the outer join with the duplicates removed. My problem is that .drop_duplicates() ignores the index when finding duplicates. If the index is different then it shouldn't be a duplicate. How do I remove duplicates if the row index and columns are duplicates? The only thing I can think of is using df.to_dict() and then create a new DataFrame (very inefficient).

Update:

As requested here is an example of my data:

from pandas import *
index1 = ['2012-05-2' + str(i) for i in range(0,6)]
data1 = {'rate': range(0,6)}
a = DataFrame(data1, index1)

index2 = ['2012-05-2' + str(i) for i in range(3,9)]
data2 = {'rate': range(3,9)}
b = DataFrame(data2, index2)

Glen

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Have you checked if a.combine_first(b) is what you want? Otherwise can you give an example of your data and what you expect / want the result to be? –  Wes McKinney May 28 '12 at 5:04
    
Have you tried with pandas.merge(A, B, method="outer")? –  lbolla May 28 '12 at 8:25

1 Answer 1

up vote 1 down vote accepted

Solution:

a.combine_first(b)

Thanks Wes.

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