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I have a Series s with duplicate index :

>>> s
STK_ID  RPT_Date
600809  20061231    demo_str
        20070331    demo_str
        20070630    demo_str
        20070930    demo_str
        20071231    demo_str
        20060331    demo_str
        20060630    demo_str
        20060930    demo_str
        20061231    demo_str
        20070331    demo_str
        20070630    demo_str
Name: STK_Name, Length: 11

And I just want to keep the unique rows and only one copy of the duplicate rows by:

s[s.index.unique()]

Pandas 0.10.1.dev-f7f7e13 give the below error msg

>>> s[s.index.unique()]
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
  File "d:\Python27\lib\site-packages\pandas\core\series.py", line 515, in __getitem__
    return self._get_with(key)
  File "d:\Python27\lib\site-packages\pandas\core\series.py", line 558, in _get_with
    return self.reindex(key)
  File "d:\Python27\lib\site-packages\pandas\core\series.py", line 2361, in reindex
    level=level, limit=limit)
  File "d:\Python27\lib\site-packages\pandas\core\index.py", line 2063, in reindex
    limit=limit)
  File "d:\Python27\lib\site-packages\pandas\core\index.py", line 2021, in get_indexer
    raise Exception('Reindexing only valid with uniquely valued Index '
Exception: Reindexing only valid with uniquely valued Index objects
>>> 

So how to drop extra duplicate rows of series, keep the unique rows and only one copy of the duplicate rows in an efficient way ? (better in one line)

share|improve this question

2 Answers 2

up vote 11 down vote accepted

You can groupby the index and apply a function that returns one value per index group. Here, I take the first value:

In [1]: s = Series(range(10), index=[1,2,2,2,5,6,7,7,7,8])

In [2]: s
Out[2]:
1    0
2    1
2    2
2    3
5    4
6    5
7    6
7    7
7    8
8    9

In [3]: s.groupby(s.index).first()
Out[3]:
1    0
2    1
5    4
6    5
7    6
8    9

UPDATE

Addressing BigBug's comment about crashing when passing a MultiIndex to Series.groupby():

In [1]: s
Out[1]:
STK_ID  RPT_Date
600809  20061231    demo
        20070331    demo
        20070630    demo
        20070331    demo

In [2]: s.reset_index().groupby(s.index.names).first()
Out[2]:
                    0
STK_ID RPT_Date
600809 20061231  demo
       20070331  demo
       20070630  demo
share|improve this answer
    
It'd be great to know why this works. The docstring for Series.groupby doesn't say anything about passing an index. What's going on behind the scenes? –  Zelazny7 Jan 18 '13 at 14:21
1  
You can groupby an arbitrary list e.g. s.groupby([1]*5+[2]*5).count(), agreed docstring not hugely clear. –  Andy Hayden Jan 18 '13 at 17:02
1  
+1 for your answer, however something like drop_publicates for the index would be nice in pandas. –  bmu Jan 18 '13 at 17:08
    
hayden, does the arbitrary list have to have the same length as the series index? When I do s.groupby([1, 2]) I get the error: TypeError: 'numpy.int64' object is not callable'. What conditions need to be met when passing a list? –  Zelazny7 Jan 18 '13 at 17:34
1  
@Zelazny7 's.reset_index().groupby(s.index.names).first()' works for me. It solve my headache. Thanks. But I somewhat dislike this for it involves reset_index, groupby, first to solve looks like simple filter issue ,don't know whether cause performance penalty. (Might Set operation make it simple ?). I raise a issue at github.com/pydata/pandas/issues/2706 –  bigbug Jan 19 '13 at 3:58

One way would be using drop and index.get_duplicates:

In [43]: df
Out[43]: 
                      String
STK_ID RPT_Date             
600809 20061231  demo_string
       20070331  demo_string
       20070630  demo_string
       20070930  demo_string
       20071231  demo_string
       20060331  demo_string
       20060630  demo_string
       20060930  demo_string
       20061231  demo_string
       20070331  demo_string
       20070630  demo_string

In [44]: df.drop(df.index.get_duplicates())
Out[44]: 
                      String
STK_ID RPT_Date             
600809 20070930  demo_string
       20071231  demo_string
       20060331  demo_string
       20060630  demo_string
       20060930  demo_string
share|improve this answer
    
Sorry, i should have made my intention more clearly. What I want is : keep the unique rows and only one copy of the duplicate rows. Not totally drop the duplicated ones. I modified the question accordingly. –  bigbug Jan 18 '13 at 13:23
4  
I think that drops all of the duplicates, even the first occurrence. –  Zelazny7 Jan 18 '13 at 14:06
    
@bigbug I think the answer by Zelazny7 is more appropriate in this case. I'll upvote it. –  bmu Jan 18 '13 at 17:07

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