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Let's say I have a dataframe with two columns that contain dates, and I want to create a new columns whose value is the number of months between those dates.


Index   Date1         Date2
1       2012/03/07    2013/03/16
2       2012/12/05    2012/12/25
3       2010/06/30    2013/05/19
4       2002/11/02    2011.06.08

df["Date1"]= pd.to_datetime(df["Date1"])
df["Date2"]= pd.to_datetime(df["Date2"])

Date1 will always be before date2. My current method of doing this requires about 10 steps, and I'm pretty sure there's an easier way to do this. Thoughts?

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in your title you put weeks, while the text has months? – Jeff Jul 1 '13 at 21:57
up vote 4 down vote accepted

see this link:

(df['Date2']-df['Date1']).apply(lambda x: x/np.timedelta64(1,'M'))

for numpy >=1.7 (see the link if you are using 1.6.1)

I am not sure what it will do with the fraction. (usually I would divide by np.timedelta64(1,'D') then divide by say 30 to make a fractional num of months (as a float)

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fyi....the title of your issue says weeks, but in the text you said months (if weeks then just use 'W' instead of 'M'), or use days and divide by 7 – Jeff Jul 1 '13 at 21:57

I'm not sure how to do it in python but the steps I would do:

  • Convert dates into number of days since the epoch
  • Subtract date1 from date2
  • Divide by 7
share|improve this answer
that is probably not at all what he should do in python ... but it would work – Joran Beasley Jul 1 '13 at 22:01
"She"... Not all of us are male. – Olga Mu Jul 1 '13 at 22:41

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