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The following piece of code:

import pandas as pd
import numpy as np

data = pd.DataFrame({'date': ('13/02/2012', '14/02/2012')})
data['date'] = data['date'].astype('datetime64')

works fine on one machine (windows) and doesn't work on another (linux). Both numpy and pandas are installed on both.

The error I get is:

ValueError: Cannot create a NumPy datetime other than NaT with generic units

What does this error mean? I see it for the first time ever and there is not much on the web I can find. Is it some missing dependency?

share|improve this question
Are the numpy versions the same on both machines? (print np.__version__). If I remember correctly, datetime64 is a pretty recent addition. – mgilson Apr 23 '13 at 0:12
1.6.2 on machine where it works and 1.7.0 on another one. – sashkello Apr 23 '13 at 0:15
up vote 7 down vote accepted

Do this instead. Pandas keeps datestimes internally as datetime64[ns]. Conversions like this are very buggy (because of issues in various numpy version, 1.6.2 especially). Use the pandas routines, then operate like thesee are actual datetime objects. What are you trying to do?

In [30]: pandas.to_datetime(data['date'])
0   2012-02-13 00:00:00
1   2012-02-14 00:00:00
Name: date, dtype: datetime64[ns]
share|improve this answer
Worked perfectly! Thanks! I just have a file with dates as strings and so converting them to objects with which I can work... Cheers :) – sashkello Apr 23 '13 at 0:21
Congrats on 2000, mate – sashkello Apr 23 '13 at 0:21
ha....also can try passing parse_dates=True to read_csv (more options in the docs as well) – Jeff Apr 23 '13 at 0:26
Yep, I avoided that one because there are some date-similar strings which I didn't want to convert. – sashkello Apr 23 '13 at 0:31
makes sense, only recommendation on that is too create 2 columns then, moving date-similar to another column, and filling this one with NaT where they were (as easy as s[indexes_of_moved_columns] = np.nan, which will convert to NaT when the columns is datetime64[ns]), my2c – Jeff Apr 23 '13 at 0:34

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