I want to subtract dates in 'A' from dates in 'B' and add a new column with the difference.

          A        B
one 2014-01-01  2014-02-28 
two 2014-02-03  2014-03-01

I've tried the following, but get an error when I try to include this in a for loop...

import datetime
mdate1 = datetime.datetime.strptime(date1, "%Y-%m-%d").date()
rdate1 = datetime.datetime.strptime(date2, "%Y-%m-%d").date()
delta =  (mdate1 - rdate1).days
print delta

What should I do?

5 Answers 5


To remove the 'days' text element, you can also make use of the dt() accessor for series: https://pandas.pydata.org/pandas-docs/stable/generated/pandas.Series.dt.html


df[['A','B']] = df[['A','B']].apply(pd.to_datetime) #if conversion required
df['C'] = (df['B'] - df['A']).dt.days

which returns:

             A          B   C
one 2014-01-01 2014-02-28  58
two 2014-02-03 2014-03-01  26
  • 5
    Great answer. In my case, df['C'] = (df['B'] - df['A']).dt.days did not work and I had to use df['C'] = (df['B'] - df['A']).days. Any idea why mine did not give the number of days as expected?
    – Samuel Nde
    Commented Sep 21, 2018 at 18:44
  • Nde - how exactly did it not work? Error or wrong values? Did you convert both A and B columns to datetime successfully? Commented Sep 24, 2018 at 6:56
  • 3
    Both my columns are datetime (or datetime64[ns] to be precise). When I did df['C'] = (df['B'] - df['A']).dt.days, I got an attribute error that said AttributeError: 'Timedelta' object has no attribute 'dt', so I tried df['C'] = (df['B'] - df['A']).days which gave me the desired answer. (Of course I am using my own dataframe not the one in the example above. Or could it be because I also have time in my date and not as in 2018-09-24 10:17:18.800277)
    – Samuel Nde
    Commented Sep 24, 2018 at 17:20
  • How does this function rounds, if my original dataframe is with Hours:Minutes:Seconds?
    – PV8
    Commented Jun 27, 2019 at 8:35
  • 1
    one small suggestion, use df['A'] = pd.to_datetime(df['A']) is much faster than using apply function,
    – Jacob2309
    Commented Mar 11, 2023 at 2:25

Assuming these were datetime columns (if they're not apply to_datetime) you can just subtract them:

df['A'] = pd.to_datetime(df['A'])
df['B'] = pd.to_datetime(df['B'])

In [11]: df.dtypes  # if already datetime64 you don't need to use to_datetime
A    datetime64[ns]
B    datetime64[ns]
dtype: object

In [12]: df['A'] - df['B']
one   -58 days
two   -26 days
dtype: timedelta64[ns]

In [13]: df['C'] = df['A'] - df['B']

In [14]: df
             A          B        C
one 2014-01-01 2014-02-28 -58 days
two 2014-02-03 2014-03-01 -26 days

Note: ensure you're using a new of pandas (e.g. 0.13.1), this may not work in older versions.

  • 32
    Do can we get rid of the "days" portion in the result incase we just need to see the numeric value ie. -58, -26 in this case.
    – 0nir
    Commented Oct 22, 2014 at 17:24
  • 7
    to expand on @AndyHayden comment, that works but it should pd.offsets.Day(1) (with an 's'). I also usually negate it, so you get (df['A'] - df['B']) / pd.offsets.Day(-1)
    – dirkjot
    Commented Oct 14, 2015 at 18:54
  • 12
    However, if you want to do this on a whole Series you need (df['A'] - df['B']) / np.timedelta64(-1, 'D') for reasons that I don't fully understand.
    – dirkjot
    Commented Oct 14, 2015 at 19:05
  • @dirkjot Thanks for spotting the typo! IIRC this was fix in recent pandas, are you using 0.16.2 / 0.17? Commented Oct 14, 2015 at 19:27
  • 5
    @webelo the DatetimeIndex/Series itself should have a .dt.days attribute which should be strongly preferred. Commented Apr 26, 2017 at 23:33

A list comprehension is your best bet for the most Pythonic (and fastest) way to do this:

[int(i.days) for i in (df.B - df.A)]
  1. i will return the timedelta(e.g. '-58 days')
  2. i.days will return this value as a long integer value(e.g. -58L)
  3. int(i.days) will give you the -58 you seek.

If your columns aren't in datetime format. The shorter syntax would be: df.A = pd.to_datetime(df.A)

  • I'm not sure why i got the error "TypeError: cannot subtract DatetimeArray from ndarray", but this adjustment solved it: [(b-a).days for b,a in zip(df.B,df.A)]
    – Joris
    Commented May 15 at 11:54

How about this:

times['days_since'] = max(list(df.index.values))  
times['days_since'] = times['days_since'] - times['months']  

Solution above did not work for me. If you are using a simple pd.to_datetime() to first convert it, later you can just use:

import numpy as np

df['C'] = df['A'] - df['B'] / np.timedelta64(1, 'D')

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