Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Using pandas I can index a timeseries using a datetime object (with a month and day) and get the value for a period, e.g.:

from pandas import *
ts = TimeSeries([41,45,48],[Period('2012'),Period('2013'),Period('2014')])
print ts[datetime(2013,05,17)]

Is there any way to define a period with a month but without a year? I have an average annual profile with a monthly frequency, that I'd like to be able to index by month/day, eg:

ts = TimeSeries(range(1,13),[Period(month=n,freq='M') for n in range(1,13)])
print ts[datetime(2013,05,17)]

The Period object doesn't seem to support this (it throws an error). Is there a better way to do this than creating the timeseries with a year, then modifying the datetime object before it's used to index the timeseries?


Edit 1:

To clarify a little why I want to do this: I have a model which computes on a daily timestep. I have a variable in the model which is a datetime object representing the current day. I need to check the current day against several timeseries, some of which have a full date (year/month/day) but others which only have a month. I was hoping for something as seamless as indexing, as the timeseries/profiles are supplied by the user at runtime. I've had a go at overriding the __getitem__ method of the TimeSeries object (so that I could fix the years behind the scenes), but it seems a bit of a crazy hack.

from pandas import *

class TimeSeriesProfile(TimeSeries):
    year = 2004

    def __new__(self, *args, **kwargs):
        inst = TimeSeries.__new__(self, *args, **kwargs)
        inst.index = period_range(str(self.year)+str(inst.index[0])[4:], periods=len(inst.index), freq=inst.index.freq)
        return inst.view(TimeSeriesProfile)

    def __getitem__(self, key):
        without_year = datetime(self.year, key.month, key.day, key.hour, key.minute, key.second)
        return TimeSeries.__getitem__(self, without_year)

ts = TimeSeriesProfile(range(0, 366), period_range('1996-01-01', periods=366, freq='D'))

print ts[datetime(2008, 02, 29)]
share|improve this question

1 Answer 1

Try period_range:

In [65]: TimeSeries(range(1, 13), period_range('2013-01', periods=12, freq='M'))
2013-01     1   
2013-02     2   
2013-03     3   
2013-04     4   
2013-05     5   
2013-06     6   
2013-07     7   
2013-08     8   
2013-09     9   
2013-10    10  
2013-11    11  
2013-12    12  
Freq: M, dtype: int64
share|improve this answer
period_range looks useful, but it doesn't answer my underlying question about creating timeseries without a year. –  Snorfalorpagus May 29 '13 at 8:15

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.