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I would like to create a column in a pandas data frame that is an integer representation of the number of days in a timedelta column. Is it possible to use 'datetime.days' or do I need to do something more manual?

timedelta column

7 days, 23:29:00

day integer column

7

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    Have you tried to use timedelta.days?
    – Ffisegydd
    Sep 3, 2014 at 13:53

6 Answers 6

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The Series class has a pandas.Series.dt accessor object with several useful datetime attributes, including dt.days. Access this attribute via:

timedelta_series.dt.days

You can also get the seconds and microseconds attributes in the same way.

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    I like this comment for the simplicity and not requiring import of another library. Jul 17, 2017 at 20:54
  • Make sue you use this on a Series. It does not work on a DataFrame. Jan 25, 2021 at 22:19
76

You could do this, where td is your series of timedeltas. The division converts the nanosecond deltas into day deltas, and the conversion to int drops to whole days.

import numpy as np

(td / np.timedelta64(1, 'D')).astype(int)
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    Thanks! Also after 15 more minutes of searching I found this. stackoverflow.com/questions/18215317/… Sep 3, 2014 at 14:13
  • what is the / for between td and np?
    – Jason Goal
    Mar 20, 2019 at 12:41
  • It's the timedelta64 division operator. Dividing td by a 1 day time delta is results in the (possibly fractional) number of days represented in td. Not required in this case but it's really useful if say you want to work out how many 15 minute intervals td represents Jul 13, 2019 at 5:29
40

Timedelta objects have read-only instance attributes .days, .seconds, and .microseconds.

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  • No .hours or .minutes though, so you will need to do some math if you want values in those units.
    – Nick
    Jan 15, 2021 at 18:34
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If the question isn't just "how to access an integer form of the timedelta?" but "how to convert the timedelta column in the dataframe to an int?" the answer might be a little different. In addition to the .dt.days accessor you need either df.astype or pd.to_numeric

Either of these options should help:

df['tdColumn'] = pd.to_numeric(df['tdColumn'].dt.days, downcast='integer')

or

df['tdColumn'] = df['tdColumn'].dt.days.astype('int16')
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  • Hi, I tried this, but I got ValueError: Cannot convert non-finite values (NA or inf) to integer because there are nans in the pandas series. Do you know who to sort this out???
    – Pablito
    Dec 10, 2019 at 2:28
  • The second option worked for me and the date values were of type timedelta64[ns]. If your dates are NaN, first convert them to datetime using the pandas to_datetime function, then use the second option above. For more details checkout to_datetime
    – Onen simon
    Jul 29, 2020 at 10:23
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The simplest way to do this is by

df["DateColumn"] = (df["DateColumn"]).dt.days
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  • this solution is not different from already proposed ones.
    – Ruli
    Feb 24, 2021 at 16:20
  • Yes you are right, I am only pointing out the easiest amongst the solutions I know
    – donDrey
    Feb 26, 2021 at 16:50
3

A great way to do this is

dif_in_days = dif.days (where dif is the difference between dates)

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    this answer is similar to a previous one, consider adding a comment instead of answering again
    – piertoni
    Jul 10, 2021 at 14:51

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