1

I got a Pandas dataframe and a column that is called expiration that has datetime64[ns] datatype. df.['expiration'][0] gives Timestamp('2010-12-31 00:00:00').

I want to substract a calendar day from this column but can't figure out how. I tried pandas.tseries.offsets.DateOffset(days=1) but this gives the error cannot use a non-absolute DateOffset in datetime/timedelta operations [<DateOffset: kwds={'days': 1}>]

THis is obviously because it only works on timeindex. So I tried

import pandas
df['expiration']=df['expiration']-pandas.datetime.timedelta(days=1)

but this results in another error:

type object 'datetime.datetime' has no attribute 'timedelta'

How to do it in a way tht works?

1 Answer 1

2

You have 2 problems. firstly pandas.datetime is the datetime.datetime class not the module, so you need to reference the datetime.timedelta class directly. Secondly you need to take 1 day away from every value in the column. I would do:

import datetime as dt
df['expiration'] = df['expiration'].apply(lambda x: x - dt.timedelta(days=1))

To vectorise this you need to convert the timedelta into a numpy.timedelta64:

df['expiration'] = df['expiration'] - pt.timedeltas.to_timedelta(dt.timedelta(days=1))

or create the numpy.timedelta64 directly:

df['expiration'] = df['expiration'] - numpy.timedelta64(1, 'D')
4
  • That's not vectorized, though. Dec 8, 2014 at 17:38
  • Added vectorised solution Dec 8, 2014 at 21:07
  • Thanks a lot. However, why does dt.timedelta work in the iterative fashion and not in the vectorized code line? Things like df['mycolumn']=df['mycolumn']+2 are working, though. Dec 8, 2014 at 21:31
  • My guess is that there is simply no typecasting in place between datetime.timedelta and numpy.timedelta64, whereas there is typecasting for int -> numpy.timedelta64. Or maybe timedelta64 is an integer type underneath and therefore numpy casts automatically. It looks like a feature that could be added. Dec 10, 2014 at 9:15

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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