# how to test if a variable is pd.NaT?

I'm trying to test if one of my variables is pd.NaT. I know it is NaT, and still it won't pass the test. As an example, the following code prints nothing :

``````a=pd.NaT

if a == pd.NaT:
print("a not NaT")
``````

Does anyone have a clue ? Is there a way to effectively test if `a` is NaT?

• `pd.isnull` also works for NaTs.
– cs95
Mar 22, 2018 at 17:50
• `pandas` and `numpy` follow the standard that `NaN` does not equate to itself. so even if you typed `a == a` you would get `False` Mar 22, 2018 at 17:54
• Voting to reopen because `pandas.NaT` isn't actually a NumPy `NaT`, and it behaves differently in equality and `numpy.isnat` checks. Mar 22, 2018 at 18:01
• @ALollz: NumPy doesn't actually do that yet; there's a `FutureWarning` saying they plan to, but for now, `numpy.datetime64('NaT') == numpy.datetime64('NaT')`. Mar 22, 2018 at 18:21
• – jpp
Mar 22, 2018 at 18:22

Pandas `NaT` behaves like a floating-point `NaN`, in that it's not equal to itself. Instead, you can use `pandas.isnull`:

``````In [21]: pandas.isnull(pandas.NaT)
Out[21]: True
``````

This also returns `True` for None and NaN.

Technically, you could also check for Pandas `NaT` with `x != x`, following a common pattern used for floating-point NaN. However, this is likely to cause issues with NumPy NaTs, which look very similar and represent the same concept, but are actually a different type with different behavior:

``````In [29]: x = pandas.NaT

In [30]: y = numpy.datetime64('NaT')

In [31]: x != x
Out[31]: True

In [32]: y != y
/home/i850228/.local/lib/python3.6/site-packages/IPython/__main__.py:1: FutureWarning: In the future, NAT != NAT will be True rather than False.
# encoding: utf-8
Out[32]: False
``````

`numpy.isnat`, the function to check for NumPy `NaT`, also fails with a Pandas `NaT`:

``````In [33]: numpy.isnat(pandas.NaT)
---------------------------------------------------------------------------
TypeError                                 Traceback (most recent call last)
<ipython-input-33-39a66bbf6513> in <module>()
----> 1 numpy.isnat(pandas.NaT)

TypeError: ufunc 'isnat' is only defined for datetime and timedelta.
``````

`pandas.isnull` works for both Pandas and NumPy NaTs, so it's probably the way to go:

``````In [34]: pandas.isnull(pandas.NaT)
Out[34]: True

In [35]: pandas.isnull(numpy.datetime64('NaT'))
Out[35]: True
``````
• Note that `pandas.isnull()` is an alias to `pandas.isna()` Jul 21, 2022 at 9:03
• @DmitriChubarov there must be something different. I used this pattern: `df.apply(lambda x: ... if x.time.isna() else ..., axis=1)`. In that case the following error is thrown: `AttributeError: 'NaTType' object has no attribute 'isna'`. But if I use `pd. isnull(x.time)`, it behaves as expected Sep 23, 2022 at 14:14
• @MikeB2019x you should be able to use `pd.isna(x.time)` Sep 24, 2022 at 12:18
``````pd.NaT is pd.NaT
``````

True

this works for me.

• good when you specifically want to check for NaT without including other null types Jan 9 at 5:14

You can also use pandas.isna() for pandas.NaT, numpy.nan or None:

``````import pandas as pd
import numpy as np

x = (pd.NaT, np.nan, None)
[pd.isna(i) for i in x]

Output:
[True, True, True]
``````
• isnull is an alias for isna. From pandas source code: "isnull = isna" Jan 9 at 5:15

If it's in a `Series` (e.g. `DataFrame` column) you can also use `.isna()`:

``````pd.Series(pd.NaT).isna()
# 0    True
# dtype: bool
``````
• Not sure this is true. I had a df and was using "df.apply(lambda x: ... if x.time.isna() else ..., axis=1)". In that case the following error was thrown: "AttributeError: 'NaTType' object has no attribute 'isna'". Sep 23, 2022 at 14:09
• @MikeB2019x because `.isna()` is an attribute of the column (i.e. pd.Series), not of the element,. Jan 16 at 11:41

This is what works for me

``````>>> a = pandas.NaT
>>> type(a) == pandas._libs.tslibs.nattype.NaTType
>>> True
``````