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In Pandas, how do I create a column that is the number of days a column 'Date' has lapsed since today? Since there are duplicate 'File's in my data, i need the max date only.

Here is my hypothetical data:

pafpull.sps,1,10-15-13 16:33 
pafpull.sps,1,10-14-13 16:33  
test.sps,1,10-14-13 11:19   

Current Code:

import pandas as pd

df = pd.read_csv(file, names=['File','Status','Date'])
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2 Answers 2

up vote 3 down vote accepted

Elapsed time should expressed as a timedelta type, which is what you get when you perform subtraction on two datetimes.

In [43]: datetime.now() - df['Date']
0   38 days, 00:08:44.917269
1   39 days, 00:08:44.917269
2   39 days, 05:22:44.917269

To round it to the day, we have to jump through some hoops.

In [42]: datetime.now().date() - pd.DatetimeIndex(df['Date']).normalize().to_series()
2013-10-15   38 days, 00:00:00
2013-10-14   39 days, 00:00:00
2013-10-14   39 days, 00:00:00
dtype: timedelta64[ns]

The reason for the mess is...a long story. Pandas support for timedeltas improves somewhat with the soon-to-be-released v0.13, but it has a ways to go.

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assume numpy 1.7; iirc you can divide by np.timedelta64(1,'D') even in 0.12 (in 0.13 you can do an astype), see here pandas.pydata.org/pandas-docs/dev/… –  Jeff Nov 22 '13 at 23:34
This is very helpful. Thanks. –  Chet Meinzer Nov 23 '13 at 1:21

went with a different solution since my final goal was to do logic on the lapse.

df['diff'] = df.apply(lambda x: (datetime.now() - x['Date']).days, axis=1)
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