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I have got a dataframe with a column of datetime64 type. In this column there are several rows with dates as 1999-09-09 23:59:59 where as they should have actually been represented as missing dates NaT. Somebody just decided to use this particular date to represent the missing data. Now I want these dates to be replaced as NaT (the missing date type for Pandas).

Also if I perform operation on this column with NaTs, like

df['date'] - df['column with missing date']

Does Pandas ignore the missing dates and maintain NaT for those rows or will it throw an error some thing like Null pointer exception in Java.

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Does df.loc[df['date'] == '1999-09-09 23:59:59 ', 'date'] = pd.NaT work? –  EdChum Jul 17 at 12:43

1 Answer 1

up vote 2 down vote accepted
In [6]:
import pandas as pd
df = pd.DataFrame({'date':[pd.datetime(1999,9,9,23,59,59), pd.datetime(2014,1,1)]* 10})
df
Out[6]:
                  date
0  1999-09-09 23:59:59
1  2014-01-01 00:00:00
2  1999-09-09 23:59:59
3  2014-01-01 00:00:00
4  1999-09-09 23:59:59
5  2014-01-01 00:00:00
6  1999-09-09 23:59:59
7  2014-01-01 00:00:00
8  1999-09-09 23:59:59
9  2014-01-01 00:00:00
10 1999-09-09 23:59:59
11 2014-01-01 00:00:00
12 1999-09-09 23:59:59
13 2014-01-01 00:00:00
14 1999-09-09 23:59:59
15 2014-01-01 00:00:00
16 1999-09-09 23:59:59
17 2014-01-01 00:00:00
18 1999-09-09 23:59:59
19 2014-01-01 00:00:00
In [9]:

import numpy as np
df.loc[df['date'] == '1999-09-09 23:59:59 ', 'date'] = pd.NaT
df
Out[9]:
         date
0         NaT
1  2014-01-01
2         NaT
3  2014-01-01
4         NaT
5  2014-01-01
6         NaT
7  2014-01-01
8         NaT
9  2014-01-01
10        NaT
11 2014-01-01
12        NaT
13 2014-01-01
14        NaT
15 2014-01-01
16        NaT
17 2014-01-01
18        NaT
19 2014-01-01

To answer your second question most pandas functions handle NaN's appropriately, you can always just drop them:

In [10]:

df.dropna()
Out[10]:
         date
1  2014-01-01
3  2014-01-01
5  2014-01-01
7  2014-01-01
9  2014-01-01
11 2014-01-01
13 2014-01-01
15 2014-01-01
17 2014-01-01
19 2014-01-01

and perform the operation just on these rows

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Thank you for the solution. The thing is that I didn't want to drop these NaT rows as I wanted to subtract this date column from another date column. It does the job and gives NaT values in the resulting columns wherever there was a NaT in the original column. –  user3527975 Jul 17 at 14:44
    
@user3527975 the point here is that dropna does not affect the original dataframe, this will only happen if you assign back to the original df like: df = df.dropna() or df.dropna(inplace=True) –  EdChum Jul 17 at 14:46

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