The minimum Timestamp in Pandas is:

Timestamp('1677-09-21 00:12:43.145225')

and the maximum is:

Timestamp('2262-04-11 23:47:16.854775807')

This means you can't convert a value outside this range to a Pandas datetime:

pd.Timestamp(datetime.date(2500, 1, 1))
OutOfBoundsDatetime: Out of bounds nanosecond timestamp: 2500-01-01 00:00:00

What determines these limits?


The datetime type is stored in nanoseconds using a signed 64 bit integer. The range, then, is [2^-63;2^63 -1 ]. Using the 0 as the unix epoch (1970/01/01 00:00:00.0), you can see by running this code that the result is approximately 292 years from the 0 (unix epoch). The maximum, then, is the date represented with a leading 0 followed by 63 1

Run this code to prove it yourself.

max_int=2**63-1 # maximum integer
max_int/=10**9 # from nanoseconds to seconds
max_int/=86400 # from seconds to days
max_int/=365 # from days to years (suppose no leap years)
print(1970+max_int) # print the maximum year, with an error of days

EDIT: as written in the comment below by Ben, I didn't report the source. here

  • 1
    confirmed in the documentation. – Ben Mar 24 '19 at 12:12
  • Thank you, so the answer is because Pandas uses nanosecond precision? If I change the 10**9, then I could figure out what the limits would be if Pandas used a different precision? – willk Mar 25 '19 at 0:36
  • Exactly. BTW now I found this other answer that allows to do that. So the limits would be in the order of a billion years. – pittix Mar 25 '19 at 8:29

The source is the amount of nanoseconds derived from the largest and smallest amount of integers storable in numpy's int64 class, with some tweaks. You can see the implementation and a helpful comment here.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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