I'm using Beautiful Soup in Python to scrape some data from HTML files. In some cases, Beautiful Soup returns lists that contain both string and NoneType objects. I'd like to filter out all the NoneType objects.

In Python, lists with containing NoneType objects are not iterable, so list comprehension isn't an option for this. Specifically, if I have a list lis containing NoneTypes, and I try to do something like [x for x in lis (some condition/function)], Python throws the error TypeError: argument of type 'NoneType' is not iterable.

As we've seen in other posts, it's straightforward to implement this functionality in a user-defined function. Here's my flavor of it:

def filterNoneType(lis):
    lis2 = []
    for l in links: #filter out NoneType
        if type(l) == str:
    return lis2

However, I'd love to use a built-in Python function for this if it exists. I always like to simplify my code when possible. Does Python have a built-in function that can remove NoneType objects from lists?

  • You are wrong that lists containing None are not iterable. You are probably (accidentally) trying to iterate over None itself: [x for x in None]. – Andrew Jaffe Jan 9 '13 at 7:59

I think the cleanest way to do this would be:

#lis = some list with NoneType's
filter(None, lis)
  • 32
    This is wrong, because it will also remove 0, False and '' elements. – thomaspaulb Apr 19 '13 at 10:41
  • 20
    Fair enough. You can use filter(lambda x: x!=None, lis) then. – Abs Apr 20 '13 at 7:33
  • @Abs, is filter the appropriate way delete key-value pairs with None values from dicts? – alancalvitti Aug 19 at 20:38

You can do this using list comprehension:

clean = [x for x in lis if x != None]

As pointed in the comments you could also use is not, even if it essentially compiles to the same bytecode:

clean = [x for x in lis if x is not None]

You could also used filter (note: this will also filter empty strings, if you want more control over what you filter you can pass a function instead of None):

clean = filter(None, lis)

There is always the itertools approach if you want more efficient looping, but these basic approaches should work for most day to day cases.

  • 2
    As per PEP 8 you should use is not rather than != when comparing with singletons. – Tim Jan 9 '13 at 6:31
  • filter() takes a function as first argument – Thorsten Kranz Jan 9 '13 at 6:32
  • 1
    @ThorstenKranz if the first param is None it filters out all False-like entries (None, empty strings, zeros etc). – bereal Jan 9 '13 at 6:34
  • @ThorstenKranz filter with None will remove all None entries from a list and is more efficient than passing a lambda function which will be slower. – Charles Menguy Jan 9 '13 at 6:37
  • @CharlesMenguy the only problem is that it will also remove empty strings (which actually may be not a problem, since OP is going to iterate over those and likely to ignore them in any case). – bereal Jan 9 '13 at 6:40

List comprehension, as other answers proposed or, for the sake of completeness:

clean = filter(lambda x: x is not None, lis)

If the list is huge, an iterator approach is superior:

from itertools import ifilter
clean = ifilter(lambda x: x is not None, lis)

You could easily remove all NoneType objects from a list using a list comprehension:

lis = [i for i in lis if i is not None]

For those who came here from Google

In Python3 you can implement this using .__ne__ dunder method (or 'magic method' if you will):

>>> list1 = [0, 'foo', '', 512, None, 0, 'bar']
>>> list(filter(None.__ne__, list1))
[0, 'foo', '', 512, 0, 'bar']

This is how it works:

  • None.__ne__(None) --> False

  • None.__ne__(anything) --> NotImplemented

NotImplemented exeption effectively is True, e.g.:

>>> bool(None.__ne__('Something'))

As of the beginning of 2019, Python has no built-in function for filtering None values which avoids common pitfals with deleting zeroes, empty strings, etc.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.