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I have a dataframe with several columns and indexed by dates. I would like to pad missing values but only for the next x days. It means that a missing value will not be padded if its difference in index is more than x days with the previous non missing value in this column.

I did something with a loop but it is not very efficient. Is there a better and more elegant way of doing it ?

I precise that the dates in my index are not equally spaced so the limit argument will not work.

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Can you provide part of your dataframe that we can solve your problem easier? –  waitingkuo Jun 11 '13 at 6:02
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5 Answers 5

You can use the limit argument of fillna:

df.fillna(method='ffill', limit=3)  # ffill is equivalent to pad

The same argument is available for the ffill, bfill convenience functions.

limit : int, default None
       Maximum size gap to forward or backward fill

If you're dates aren't evenly spaced, you can resample (by day) first:

df.resample('D')

See also the missing data section of the docs.

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it does not work for my case. The dates in my index are not equally spaced –  Maxi Jun 11 '13 at 10:32
    
I already looked into the missing data section in the docs but I see nothing that fits my need –  Maxi Jun 11 '13 at 10:35
    
or reindex to equally spaced dates first? –  Jeff Jun 11 '13 at 10:41
    
@user2307205 I see what you're asking, updated. –  Andy Hayden Jun 11 '13 at 10:56
    
Thanks Andy. If I have datetime instead of dates and I do not want to resample as I want to keep my original index, is there a way ? –  Maxi Jun 11 '13 at 11:15
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This illustrates what I meant

In [20]: df = DataFrame(randn(10,2),columns=list('AB'),index=date_range('20130101',periods=3)+date_range('20130110',periods=3)+date_range('20130120',periods=4))

In [21]: df
Out[21]: 
                   A         B
2013-01-01 -0.176354  1.033962
2013-01-02  0.666911 -0.018723
2013-01-03  0.300097  1.552866
2013-01-10  0.581816 -1.188106
2013-01-11 -0.394817 -1.018765
2013-01-12  1.000461 -1.211131
2013-01-20  0.097940  1.225805
2013-01-21 -2.205975 -0.455641
2013-01-22  0.508865 -0.403321
2013-01-23 -0.726969  0.448002

In [22]: df.reindex(index=date_range('20130101','20130125')).fillna(limit=2,method='pad')
Out[22]: 
                   A         B
2013-01-01 -0.176354  1.033962
2013-01-02  0.666911 -0.018723
2013-01-03  0.300097  1.552866
2013-01-04  0.300097  1.552866
2013-01-05  0.300097  1.552866
2013-01-06       NaN       NaN
2013-01-07       NaN       NaN
2013-01-08       NaN       NaN
2013-01-09       NaN       NaN
2013-01-10  0.581816 -1.188106
2013-01-11 -0.394817 -1.018765
2013-01-12  1.000461 -1.211131
2013-01-13  1.000461 -1.211131
2013-01-14  1.000461 -1.211131
2013-01-15       NaN       NaN
2013-01-16       NaN       NaN
2013-01-17       NaN       NaN
2013-01-18       NaN       NaN
2013-01-19       NaN       NaN
2013-01-20  0.097940  1.225805
2013-01-21 -2.205975 -0.455641
2013-01-22  0.508865 -0.403321
2013-01-23 -0.726969  0.448002
2013-01-24 -0.726969  0.448002
2013-01-25 -0.726969  0.448002
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This is what I want Jeff except that you have some missing values in the column B and not in the column A –  Maxi Jun 11 '13 at 12:16
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Actually I just thought about the solution. It would take 3 lines of code :

1/ resample the dataframe to the second 2/ fillna with limit 3/ reindex my new dataframe with the index of the original one

In terms of speed I do not how it will look but should be fine I think as most of the pandas functions are implemented in cython

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Resample for every second could be a rather a large overhead though. :s –  Andy Hayden Jun 11 '13 at 17:10
    
yes I know but do you think of a better solution ? Otherwise I would just implement the method I need in cython –  Maxi Jun 11 '13 at 20:12
    
Andy I am currently looking at the code in pandas. I think it should not be too difficult to modify the code to accept this option. Do you know in which file the function fillna is implemented ? –  Maxi Jun 11 '13 at 20:35
    
It's in pandas/core/frame.py and pandas/core/series.py (plus a few more), pull requests greatly appreciated. :) –  Andy Hayden Jun 11 '13 at 20:45
    
I will definitely do. I will create a patch and create a push request so you can review it –  Maxi Jun 12 '13 at 8:50
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In the vein of Onyxx's answer, I solved the same issue as follows:

  1. Add a column to the dataframe for the index date, set to nan where data to be filled is nan.
  2. Fill index date column and data
  3. Set nans where backfilled index date is too old.
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I solved this by implementing a cython function that would do the job for a Series. I just call this function on each column of my dataframe to do this.

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