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Is there a function to enforce that the index is unique or is it only possibly to handle this in python 'itself' by converting to dict and back or something like that?

As noted in the comments below: python pandas is a project built on numpy/scipy.

to_dict and back works, but I bet this gets slow when you get BIG.

In [24]: a = pandas.Series([1,2,3], index=[1,1,2])

In [25]: a
Out[25]: 
1    1
1    2
2    3

In [26]: a = a.to_dict()

In [27]: a
Out[27]: {1: 2, 2: 3}

In [28]: a = pandas.Series(a)

In [29]: a
Out[29]: 
1    2
2    3
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2 Answers

up vote 1 down vote accepted

Use groupby and last()

In [279]: s
Out[279]: 
a    1
b    2
b    3
b    4
e    5

In [280]: grouped = s.groupby(level=0)

In [281]: grouped.first()
Out[281]: 
a    1
b    2
e    5

In [282]: grouped.last()
Out[282]: 
a    1
b    4
e    5
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In pandas 0.8 and up I think you can have duplicate indices ... i.e. s = Series([1,2,1], index=['a','a','b']). to_dict and back does the trick but it seems like there should be an option or something to handle this or maybe it's something to do with the way I'm constructing the Series. –  mathtick Oct 19 '12 at 3:27
    
thatnks for clearing the question. it's a pitty you missed Wes McKinney by couple of hours time... –  root Oct 19 '12 at 5:13
    
@ mathtick -- edited the answer. –  root Oct 19 '12 at 6:01
    
I believe I clarified //because// of Wes McKinney's comment :) –  mathtick Oct 19 '12 at 20:58
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BTW we plan on adding a drop_duplicates method to Series like DataFrame.drop_duplicates in the near future.

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