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I'm working with historical data, and have some very old dates that are outside the timestamp bounds for pandas. I've consulted the Pandas Time series/date functionality documentation, which has some information on out of bounds spans, but from this information, it still wasn't clear to me what, if anything I could do to convert my data into a datetime type.

I've also seen a few threads on Stack Overflow on this, but they either just point out the problem (i.e. nanoseconds, max range 570-something years), or suggest setting errors = coerce which turns 80% of my data into NaTs.

Is it possible to turn dates lower than the default Pandas lower bound into dates? Here's a sample of my data:

import pandas as pd

df = pd.DataFrame({'id': ['836', '655', '508', '793', '970', '1075', '1119', '969', '1166', '893'], 
                   'date': ['1671-11-25', '1669-11-22', '1666-05-15','1673-01-18','1675-05-07','1677-02-08','1678-02-08', '1675-02-15', '1678-11-28', '1673-12-23']})
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  • Also, here's a good read in the pandas docs, funny enough they don't mention the concise method jezrael is using
    – Erfan
    Nov 1, 2019 at 13:26
  • 2
    really curious as to what data you have going back to 1671?
    – Umar.H
    Nov 1, 2019 at 13:29

1 Answer 1

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You can create day periods by lambda function:

df['date'] = df['date'].apply(lambda x: pd.Period(x, freq='D'))

Or like mentioned @Erfan in comment (thank you):

df['date'] = df['date'].apply(pd.Period)

print (df)
     id        date
0   836  1671-11-25
1   655  1669-11-22
2   508  1666-05-15
3   793  1673-01-18
4   970  1675-05-07
5  1075  1677-02-08
6  1119  1678-02-08
7   969  1675-02-15
8  1166  1678-11-28
9   893  1673-12-23
1
  • 4
    Simply df['date'].apply(pd.Period), works as well
    – Erfan
    Nov 1, 2019 at 13:24

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