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
```

`pd.isnull`

also works for NaTs.`pandas`

and`numpy`

follow the standard that`NaN`

does not equate to itself. so even if you typed`a == a`

you would get`False`

`pandas.NaT`

isn't actually a NumPy`NaT`

, and it behaves differently in equality and`numpy.isnat`

checks.`FutureWarning`

saying they plan to, but for now,`numpy.datetime64('NaT') == numpy.datetime64('NaT')`

.Related: Numpy: Checking if a value is NaT1more comment