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I have a dataframe with unhelpful column names that I'd like to turn into datetimes. The current column names are

Index([Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median, Market Median], dtype=object)

I've tried to turn them into datetime names with

cols = pd.date_range(start='2004-02-28', end='2013-05-31', freq='Q-NOV')
df.columns = cols

but I get the error

Exception: Reindexing only valid with uniquely valued Index objects

cols appears to be a valid index:

<class 'pandas.tseries.index.DatetimeIndex'>
[2004-02-29 00:00:00, ..., 2013-05-31 00:00:00]
Length: 38, Freq: Q-NOV, Timezone: None

so I'm not sure of the problem. I also didn't think that columns needed to be named with unique objects so there's probably a more fundamental problem with what I'm trying to do.

Thanks for any help you can offer.

share|improve this question
    
I didn't think they did either, I think someone else also had this issue yesterday... –  Andy Hayden May 23 '13 at 11:04
    
posted as an issue on github. –  Andy Hayden May 23 '13 at 11:11

2 Answers 2

up vote 1 down vote accepted

A roundabout way is to reset_index of the transpose:

In [1]: df = pd.DataFrame(np.random.randn(3, 2), columns=['A', 'A'])

In [2]: df
Out[2]:
          A         A
0  0.210915  1.698726
1 -1.423380 -0.861011
2 -0.895981  0.192910

In [3]: df = df.T.reset_index(drop=True).T

In [4]: df
Out[4]:
          0         1
0  0.210915  1.698726
1 -1.423380 -0.861011
2 -0.895981  0.192910

That way you have a uniquely valued Index, and can change the column as you suggest.
This feels like a workaround...

share|improve this answer
    
Ah, so the problem is that the original names aren't a uniquely valued index and need to be reset. Great, that workaround sorted things out, thanks. –  rauparaha May 23 '13 at 11:10
    
@rauparaha yeah, columns are of Index (or MultiIndex) type, little confusing I guess! :) –  Andy Hayden May 23 '13 at 11:13

This is a bug (as noted by @Andy Hayden), and is fixed in the upcoming 0.11.1 (out very soon)

In [11]: df = DataFrame([[1,1,1,5],[1,1,2,5],[2,1,3,5]],columns=['a','a','a','a'])

In [12]: idx = date_range('20130101',periods=4,freq='Q-NOV')

In [13]: df = DataFrame([[1,1,1,5],[1,1,2,5],[2,1,3,5]],columns=['a','a','a','a'])

In [14]: df.columns = idx

In [15]: df
Out[15]: 
   2013-02-28  2013-05-31  2013-08-31  2013-11-30
0           1           1           1           5
1           1           1           2           5
2           2           1           3           5
share|improve this answer
    
That's service! :) –  Andy Hayden May 23 '13 at 11:32
    
my change is not fully merged yet :) –  Jeff May 23 '13 at 11:32
    
actually I started this change a few days ago from another question you answered (but I don't remember which one...) –  Jeff May 23 '13 at 11:33
    
Great, thanks both for helping out so quickly! –  rauparaha May 23 '13 at 11:49

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