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I have following data structure:

2011-01-01 00:00, 2011-01-20 00:00, 200   # days-range
2011-01-20 00:00, 2011-03-08 00:00, 1288  # days-range
2011-04-11 00:00, 2012-01-08 00:00, 5987  # days-range

2012-02-01 00:00, 2012-02-01 01:00, 7     # hourly-range
2012-02-01 02:00, 2012-02-01 02:30, 3     # hourly-range

This is interval with start date, end date and value (some metric recorded between dates).

For further data analysis I need to generate time series with required frequency: monthly/daily/hourly/half-hourly time series. For example, hourly data:

2011-01-01 00:00, 2 
2011-01-01 01:00, 6
2011-01-01 02:00, 5
...

Is there any python lib which can help to implement this kind of data transformation?

share|improve this question
    
Yes, pandas. You have tagged it. But what are you doing with the values in the second column? –  eumiro May 10 '12 at 10:59
    
Have a look at pleac.sourceforge.net/pleac_python/datesandtimes.html then come back here with some code if you are stuck... –  Fredrik Pihl May 10 '12 at 11:01
1  
@eumiro Yes, pandas work great for further analysis, but before it, I need to generate frequency time series from interval data. Example: I have 200 km tracked from 1st for Jan to 10th of Jan. I need to build values per day: 200/10 = 20 km per day. This is a simple case, of course. –  Olexiy Strashko May 10 '12 at 11:54

1 Answer 1

up vote 0 down vote accepted
import pandas as pd

def stretch(start_date, end_date, value, freq):
    freq_dict = {'d': pd.datetools.day,
                 'h': pd.datetools.Hour(1)}
    dr = pd.DateRange(start_date, end_date, offset=freq_dict[freq])
    return pd.TimeSeries(value / dr.size, index=dr)


print stretch('2011-01-01 00:00', '2011-01-20 00:00', 200, 'd')

prints

2011-01-01    10
2011-01-02    10
2011-01-03    10
2011-01-04    10
2011-01-05    10
2011-01-06    10
2011-01-07    10
2011-01-08    10
2011-01-09    10
2011-01-10    10
2011-01-11    10
2011-01-12    10
2011-01-13    10
2011-01-14    10
2011-01-15    10
2011-01-16    10
2011-01-17    10
2011-01-18    10
2011-01-19    10
2011-01-20    10
share|improve this answer
    
Thanks, @eumiro, it is very helpful! Maybe pandas can solve another case: I have 200 km tracked from 1-10 of Jan, and 600km 11 Jan - 20 Feb, and I need monthly frequency, for Jan and Feb? –  Olexiy Strashko May 11 '12 at 11:17
    
Create the individual daily TimeSeries, combine them and groupby them into month frequencies. –  eumiro May 11 '12 at 11:57
1  
pandas's resampling capabilities will be vastly improved in the upcoming 0.8.0 release, keep an eye out. –  Wes McKinney May 18 '12 at 19:05

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