# "isnotnan" functionality in numpy, can this be more pythonic?

I need a function that returns non-NaN values from an array. Currently I am doing it this way:

``````>>> a = np.array([np.nan, 1, 2])
>>> a
array([ NaN,   1.,   2.])

>>> np.invert(np.isnan(a))
array([False,  True,  True], dtype=bool)

>>> a[np.invert(np.isnan(a))]
array([ 1.,  2.])
``````

Python: 2.6.4 numpy: 1.3.0

Please share if you know a better way, Thank you

``````a = a[~np.isnan(a)]
``````

You are currently testing for anything that is not NaN and mtrw has the right way to do this. If you are interested in testing for finite numbers (is not NaN and is not INF) then you don't need an inversion and can use:

``````np.isfinite(a)
``````

More pythonic and native, an easy read, and often when you want to avoid NaN you also want to avoid INF in my experience.

Just thought I'd toss that out there for folks.

• Note: If you want to use isnotnan for filtering pandas, this is the way to go. Jan 13, 2016 at 20:12
• @EzekielKruglick if the data is already in pandas, not only is pandas actually faster, but it is more functional as well, given that it includes an index you can use to more easily join on: gist.github.com/jaypeedevlin/fdfb88f6fd1031a819f1d46cb36384da Mar 6, 2018 at 19:07
• I think leave it in the comments - the original question is not about pandas. Mar 9, 2018 at 14:58
• @JoshD. that's incorrect, Numpy is faster. I commented on your Gist: gist.github.com/jaypeedevlin/… . Basically, you did it wrong -- you're performing the operation on the Pandas object, rather than doing it on the ndarray. Performing the operation on the ndarray is about 25x faster. Mar 14, 2018 at 23:07
• @philipKahn Hmm, looks like I did make an error. I was imagining that numpy would cast to an ndarray before it did the operations, so that `.values` was unnecessary - live and learn! Mar 15, 2018 at 16:17

To get `array([ 1., 2.])` from an array `arr = np.array([np.nan, 1, 2])` You can do :

`````` arr[~np.isnan(arr)]
``````

OR

``````arr[arr == arr]
``````

(While : np.nan == np.nan is False)

I'm not sure whether this is more or less pythonic...

``````a = [i for i in a if i is not np.nan]
``````
• It's not appropriate for numpy arrays. Not only do you now get a list back (and thus fundamentally change the nature of the object returned) but this runs in a Python loop and will be orders of magnitude slower than a numpy method. I do not recommend this at all Dec 3, 2020 at 19:48