I have a series with some NaNs that I need to replace with NaTs. How can I do this?

Here's a simple example with what I've tried so far:

>>> s = pd.Series([np.NaN, np.NaN])
>>> s.fillna(pd.NaT)
0   NaN
1   NaN
dtype: float64
>>> s.replace(np.NaN, pd.NaT)
0   NaN
1   NaN
dtype: float64
>>> s.where(pd.notnull(s), pd.NaT)
0    NaN
1    NaN
dtype: object

pandas version: 0.16.2

numpy version: 1.9.2

python version: 2.7.10

  • using pandas v0.18.0 the third s.where works btw. May 11, 2016 at 15:43
  • Your 3rd one should be s.where(pd.isnull(s), pd.NaT) which doesn't work on 0.18.0
    – EdChum
    May 11, 2016 at 15:49

1 Answer 1


Convert the dtype first as NaT is meaningless when the dtype is float which is the dtype initially:

In [90]:

0   NaT
1   NaT
dtype: datetime64[ns]

if You have non-NaN values in the Series then use to_datetime:

In [97]:
s = pd.Series([np.NaN, np.NaN, 1.0])

0                             NaT
1                             NaT
2   1970-01-01 00:00:00.000000001
dtype: datetime64[ns]

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