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I have a Pandas time series that looks like this:

In [1]: ser1
Out[1]: 
Date
2005-12-31    11382000
Name: Amount, dtype: float64

I would like to reindex it, using the index of another time series:

In [2]: ser2
Out[2]: 
Date
2005-12-20    14.13
2005-12-21    14.22
2005-12-22    14.30
2005-12-23    14.35
2005-12-27    14.32
2005-12-28    14.32
2005-12-29    14.23
2005-12-30    14.19
2006-01-03    14.48
2006-01-04    14.54
2006-01-05    14.68
Name: Amount, dtype: float64

But when I use

ser3 = ser1.reindex(ser2.index)

I get

In [4]: ser3
Out[4]: 
Date
2005-12-20   NaN
2005-12-21   NaN
2005-12-22   NaN
2005-12-23   NaN
2005-12-27   NaN
2005-12-28   NaN
2005-12-29   NaN
2005-12-30   NaN
2006-01-03   NaN
2006-01-04   NaN
2006-01-05   NaN
Name: Amount, dtype: float64

Notice that the item from ser1 having a date of '2005-12-31' does not appear in ser3, because ser2's index did not include 2005-12-31. I would like to put ser1's values on the next available date in ser2's index. How can I do this?

share|improve this question
    
Do you want NaNs or the values from s2? –  Andy Hayden Dec 11 '13 at 23:53
    
NaN's are fine for my purposes here. It's more that I want to be sure ser1 values are in ser3 as of the next available date. –  TimHussonSLCG Dec 11 '13 at 23:54

1 Answer 1

The following will allow you to fill to the nearest forward date if its a nan (otherwise it will take the value at that index). (if you want the nearest backward date, you can use method bfill). IIRC this is still an open issue in pandas as its a bit non-trivial (and in theory should be a filling method, e.g. 'nearest'), but need a PR for that!

In [25]: ser1 = Series(100000,index=[Timestamp('20051231')])

In [26]: ser1
Out[26]: 
2005-12-31    100000
dtype: int64

In [27]: ser2
Out[27]: 
0
2005-12-20    14.13
2005-12-21    14.22
2005-12-22    14.30
2005-12-23    14.35
2005-12-27    14.32
2005-12-28    14.32
2005-12-29    14.23
2005-12-30    14.19
2006-01-03    14.48
2006-01-04    14.54
2006-01-05    14.68
Name: 1, dtype: float64

In [28]: ser1.reindex(ser2.index,method='ffill',limit=1)
Out[28]: 
0
2005-12-20       NaN
2005-12-21       NaN
2005-12-22       NaN
2005-12-23       NaN
2005-12-27       NaN
2005-12-28       NaN
2005-12-29       NaN
2005-12-30       NaN
2006-01-03    100000
2006-01-04       NaN
2006-01-05       NaN
dtype: float64
share|improve this answer
    
Perfect! Thank you very much. I agree that it'd be nice to have a 'nearest' method built-in (doesn't seem Pythonic to require cleverness like this) but this solves my problem nicely. –  TimHussonSLCG Dec 12 '13 at 12:11
    
Rut roh, spoke too soon. If I use this method and the ser1 date IS in the index, then the ser1 value gets duplicated on the next date. So this method does not work for a series that has both matched and non-matched dates. Is there a work-around for that situation? –  TimHussonSLCG Dec 12 '13 at 12:35
    
that was my comment in the of the response. you might be able to reset these matched ones after the reindex with filling. –  Jeff Dec 12 '13 at 12:48
    
Because the data in ser1 is very sparse, in the end I was able to assume that if two numbers appeared consecutively in ser3, the second was a result of this issue. So I just looped through ser3 turning that second value to 0. Would definitely be interested in better approaches though. –  TimHussonSLCG Dec 12 '13 at 19:37

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