# efficient way of removing None's from numpy array

Is there an efficient way to remove Nones from numpy arrays and resize the array to its new size?

For example, how would you remove the None from this frame without iterating through it in python. I can easily iterate through it but was working on an api call that would be potentially called many times.

``````a = np.array([1,45,23,23,1234,3432,-1232,-34,233,None])
``````
• What do you want the None's replaced with? Or do you want to remove the None's, then resize the array? Aug 12, 2014 at 1:51
• I want to remove the Nones and resize the array. Aug 12, 2014 at 1:52
• possible duplicate of efficient filter of an array with numpy Aug 12, 2014 at 1:55
• != is much more efficient than filter Aug 12, 2014 at 2:17
• Also, you cannot do != None as the previous example has Aug 12, 2014 at 2:18

``````In [17]: a[a != np.array(None)]
Out[17]: array([1, 45, 23, 23, 1234, 3432, -1232, -34, 233], dtype=object)
``````

The above works because `a != np.array(None)` is a boolean array which maps out non-None values:

``````In [20]: a != np.array(None)
Out[20]: array([ True,  True,  True,  True,  True,  True,  True,  True,  True, False], dtype=bool)
``````

Selecting elements of an array in this manner is called boolean array indexing.

• If you don't mind me asking, if there are n items in the array, is this method faster than O(n)? Aug 12, 2014 at 2:04
• This is saving me 80% of the time on a large array Aug 12, 2014 at 2:11
• @wookie919 If I understand the internals of numpy correctly, this is copying out the array, and removing the None's one-by-one. So, I don't think so. Aug 12, 2014 at 2:29
• but most of this will live in C. its much faster than filter Aug 12, 2014 at 2:31
• Does using a comparison inside of an access (index) operator have a name? Like the colon in the accessor is called the slice. Feb 19, 2018 at 15:53

I use the following which I find simpler than the accepted answer:

``````a = a[a != None]
``````

Caveat: PEP8 warns against using the equality operator with singletons such as `None`. I didn't know about this when I posted this answer. That said, for numpy arrays I find this too Pythonic and pretty to not use. See discussion in comments.

• While it is simpler, this does not work with PEP8 autoformatters like flake8, which would want to turn `a[a != None]` into `a[a is not None]` (which is not semantically equivalent). Feb 3, 2020 at 16:33
• There is nothing in PEP8 about not using `!=` that I have seen. Consider: sometimes it is apt to use `is`, other times `==`. Similarly, sometimes you need `!=` and other times `is not`. You just have to know what you are doing. Note also this question/answer pertains to numpy arrays -- for Python lists you need something else.
– eric
Feb 3, 2020 at 19:21
• From PEP8 - "Comparisons to singletons like None should always be done with is or is not, never the equality operators.". I understand that this is talking about numpy, not Python lists. Feb 3, 2020 at 19:43
• Your answer is how I used to do this all time... until we started using flake8 (and autopep8) in our repos - this resulted in code changed (sometimes automatically) to `a = a[a is not None]` which resulted in some weird bugs. Thanks for the link - good discussion! Feb 3, 2020 at 22:45