# What determines Pandas minimum and maximum timestamp?

The minimum `Timestamp` in Pandas is:

``````pd.Timestamp.min
Timestamp('1677-09-21 00:12:43.145225')
``````

and the maximum is:

``````pd.Timestamp.max
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?

## 2 Answers

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

• – 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.