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I have a DataFrame that has duplicated rows. I'd like to get a DataFrame with a unique index and no duplicates. It's ok to discard the duplicated values. Is this possible? Would it be a done by groupby?

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2 Answers 2

up vote 15 down vote accepted
In [29]: df.drop_duplicates()
Out[29]: 
   b  c
1  2  3
3  4  0
7  5  9
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It's worthwhile to note this takes either the first or last occurrence. So you need to sort by some other quantity first (if you're lucky) or do some complicated groupby logic anyway. –  EMS Sep 8 '12 at 2:20
    
This is wrong. drop_duplicates acts on the values only (at least in my version). You need to reset_index if you want to drop on index and values or just work with the index if you want to have a unique index. Maybe there is another way besides groupby to enforce unique index? –  mathtick Jul 11 '13 at 14:02

Figured out one way to do it by reading the split-apply-combine documentation examples.

df = pandas.DataFrame({'b':[2,2,4,5], 'c': [3,3,0,9]}, index=[1,1,3,7])
df_unique = df.groupby(level=0).first()

df
   b  c
1  2  3
1  2  3
3  4  0
7  5  9

df_unique
   b  c
1  2  3
3  4  0
7  5  9
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This relies on the row index being duplicated for rows where the data fields (b,c) are duplicated, effectively making the index part of your row as vector that you want to be unique (not duplicated). –  hobs Nov 1 '12 at 20:32
    
If you have duplicated index entries, this is the answer you want. –  rogueleaderr Jun 4 at 0:59

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