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.

After fighting with NumPy and dateutil for days, I recently discovered the amazing Pandas library. I've been poring through the documentation and source code, but I can't figure out how to get date_range() to generate indices at the right breakpoints.

from datetime import date
import pandas as pd

start = date('2012-01-15')
end = date('2012-09-20')
# 'M' is month-end, instead I need same-day-of-month
date_range(start, end, freq='M')

What I want:

2012-01-15
2012-02-15
2012-03-15
...
2012-09-15

What I get:

2012-01-31
2012-02-29
2012-03-31
...
2012-08-31

I need month-sized chunks that account for the variable number of days in a month. This is possible with dateutil.rrule:

rrule(freq=MONTHLY, dtstart=start, bymonthday=(start.day, -1), bysetpos=1)

Ugly and illegible, but it works. How can do I this with pandas? I've played with both date_range() and period_range(), so far with no luck.

My actual goal is to use groupby, crosstab and/or resample to calculate values for each period based on sums/means/etc of individual entries within the period. In other words, I want to transform data from:

                total
2012-01-10 00:01    50
2012-01-15 01:01    55
2012-03-11 00:01    60
2012-04-28 00:01    80

#Hypothetical usage
dataframe.resample('total', how='sum', freq='M', start='2012-01-09', end='2012-04-15') 

to

                total
2012-01-09          105 # Values summed
2012-02-09          0   # Missing from dataframe
2012-03-09          60
2012-04-09          0   # Data past end date, not counted

Given that Pandas originated as a financial analysis tool, I'm virtually certain that there's a simple and fast way to do this. Help appreciated!

share|improve this question

2 Answers 2

freq='M' is for month-end frequencies (see here). But you can use .shift to shift it by any number of days (or any frequency for that matter):

pd.date_range(start, end, freq='M').shift(15, freq=pd.datetools.day)
share|improve this answer
    
Thanks, this may be the trick I need to create a solution based on the rrule hack. However, this doesn't help with resampling on a range, as resample will still use bins aligned to the beginning of the month AFAIK. –  knite Nov 19 '12 at 9:52

There actually is no "day of month" frequency (e.g. "DOMXX" like "DOM09"), but I don't see any reason not to add one.

http://github.com/pydata/pandas/issues/2289

I don't have a simple workaround for you at the moment because resample requires passing a known frequency rule. I think it should be augmented to be able to take any date range to be used as arbitrary bin edges, also. Just a matter of time and hacking...

share|improve this answer

Your Answer

 
discard

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.