# remove None value from a list without removing the 0 value

This was my source I started with.

My List

``````L = [0, 23, 234, 89, None, 0, 35, 9]
``````

When I run this :

``````L = filter(None, L)
``````

I get this results

``````[23, 234, 89, 35, 9]
``````

But this is not what I need, what I really need is :

``````[0, 23, 234, 89, 0, 35, 9]
``````

Because I'm calculating percentile of the data and the 0 make a lot of difference.

How to remove the None value from a list without removing 0 value?

``````>>> L = [0, 23, 234, 89, None, 0, 35, 9]
>>> [x for x in L if x is not None]
[0, 23, 234, 89, 0, 35, 9]
``````

Just for fun, here's how you can adapt `filter` to do this without using a `lambda`, (I wouldn't recommend this code - it's just for scientific purposes)

``````>>> from operator import is_not
>>> from functools import partial
>>> L = [0, 23, 234, 89, None, 0, 35, 9]
>>> list(filter(partial(is_not, None), L))
[0, 23, 234, 89, 0, 35, 9]
``````
• The less elegant `filter` version: `filter(lambda x: x is not None, L)` -- You could get rid of the `lambda` using `partial` and `operator.is_not` I think, but it's probably not worth it since the list-comp is so much cleaner. Apr 19, 2013 at 3:36
• @mgilson Oh wow I didn't even know `is_not` existed! I thought it was only `is_`, I'm gonna add that in just for fun Apr 19, 2013 at 3:40
• @jamylak -- Yeah. It actually bothers me that `is_not` exists and `not_in` doesn't exist. I actually think that `not_in` should be turned into a magic method `__not_contains__` ... see a question I asked a while back and a comment I made to an answerer ... and still don't feel like it is resolved. Apr 19, 2013 at 3:47
• @mgilson I think under that same assumption I just assumed it didn't exist. I guess you can just use `filterfalse` or something depending on the use case Apr 19, 2013 at 3:58
• @jamylak -- Yeah. My main problem is that `x > y` does not imply `not x <= y` in python because you can do anything in `__lt__` and `__le__`, so why should `x not in y` imply `not x in y` (especially since `not in` has it's own bytecode?) Apr 19, 2013 at 4:07

A list comprehension is likely the cleanest way:

``````>>> L = [0, 23, 234, 89, None, 0, 35, 9
>>> [x for x in L if x is not None]
[0, 23, 234, 89, 0, 35, 9]
``````

There is also a functional programming approach but it is more involved:

``````>>> from operator import is_not
>>> from functools import partial
>>> L = [0, 23, 234, 89, None, 0, 35, 9]
>>> list(filter(partial(is_not, None), L))
[0, 23, 234, 89, 0, 35, 9]
``````
• @jamylak Yes, it is faster, a bit easier to write, and a bit more clear. Apr 21, 2013 at 1:50
• Consider using the `operator` module.
– user1804599
Feb 17, 2015 at 15:41
• What is `__ne__`? Jul 12, 2017 at 21:00
• @DrMcCleod The expression `x != y` internally calls `x.__ne__(y)` where the ne stands for "not equal". So, `None.__ne__` is a bound method that returns True when called with any value other than None. For example, `bm = None.__ne__` called with `bm(10)` returns NotImplemented which as true value, and `bm(None)` returns False. Jul 13, 2017 at 4:12
• That `NotImplemented` is true in boolean context is really bizarre. See Make NotImplemented unusable in boolean context Python issue. Sep 30, 2020 at 10:55

Using list comprehension this can be done as follows:

``````l = [i for i in my_list if i is not None]
``````

The value of l is:

``````[0, 23, 234, 89, 0, 35, 9]
``````
• This solution is already found in the top answer, or am I missing something? May 3, 2019 at 7:28

For Python 2.7 (See Raymond's answer, for Python 3 equivalent):

Wanting to know whether something "is not None" is so common in python (and other OO languages), that in my Common.py (which I import to each module with "from Common import *"), I include these lines:

``````def exists(it):
return (it is not None)
``````

Then to remove None elements from a list, simply do:

``````filter(exists, L)
``````

I find this easier to read, than the corresponding list comprehension (which Raymond shows, as his Python 2 version).

• I would prefer Raymonds solution for Python 3, and then the list comprehension for Python 2. But if I did have to go this route, I would rather `partial(is_not, None)` than this solution. I believe this will be slower (although thats not too important). But with a couple of imports of python modules, no need for a custom defined function in this case Feb 17, 2018 at 14:25
• The custom defined function isn't merely for this case. I wouldn't have defined a function if it were! I'm saying that I find it more readable, in many situations, to say "if exists(something)", instead of saying "if something is not None". Its closer to how I think, and avoids the "double-negative" of saying "not None". May 8, 2021 at 18:10
• I see what you mean about avoiding the double negative, actually in the definition of `exists` `return (it is not None)` is a clear way to define it. (maybe I'd remove the brackets but that's just a small thing anyway) May 10, 2021 at 3:54

@jamylak answer is quite nice, however if you don't want to import a couple of modules just to do this simple task, write your own `lambda` in-place:

``````>>> L = [0, 23, 234, 89, None, 0, 35, 9]
>>> filter(lambda v: v is not None, L)
[0, 23, 234, 89, 0, 35, 9]
``````

Say the list is like below

``````iterator = [None, 1, 2, 0, '', None, False, {}, (), []]
``````

This will return only those items whose `bool(item) is True`

``````print filter(lambda item: item, iterator)
# [1, 2]
``````

This is equivalent to

``````print [item for item in iterator if item]
``````

To just filter None:

``````print filter(lambda item: item is not None, iterator)
# [1, 2, 0, '', False, {}, (), []]
``````

Equivalent to:

``````print [item for item in iterator if item is not None]
``````

To get all the items that evaluate to False

``````print filter(lambda item: not item, iterator)
# Will print [None, '', 0, None, False, {}, (), []]
``````

Iteration vs Space, usage could be an issue. In different situations profiling may show either to be "faster" and/or "less memory" intensive.

``````# first
>>> L = [0, 23, 234, 89, None, 0, 35, 9, ...]
>>> [x for x in L if x is not None]
[0, 23, 234, 89, 0, 35, 9, ...]

# second
>>> L = [0, 23, 234, 89, None, 0, 35, 9]
>>> for i in range(L.count(None)): L.remove(None)
[0, 23, 234, 89, 0, 35, 9, ...]
``````

The first approach (as also suggested by @jamylak, @Raymond Hettinger, and @Dipto) creates a duplicate list in memory, which could be costly of memory for a large list with few `None` entries.

The second approach goes through the list once, and then again each time until a `None` is reached. This could be less memory intensive, and the list will get smaller as it goes. The decrease in list size could have a speed up for lots of `None` entries in the front, but the worst case would be if lots of `None` entries were in the back.

The second approach would likely always be slower than the first approach. That does not make it an invalid consideration.

Parallelization and in-place techniques are other approaches, but each have their own complications in Python. Knowing the data and the runtime use-cases, as well profiling the program are where to start for intensive operations or large data.

Choosing either approach will probably not matter in common situations. It becomes more of a preference of notation. In fact, in those uncommon circumstances, `numpy` (example if L is numpy.array: `L = L[L != numpy.array(None)` (from here)) or `cython` may be worthwhile alternatives instead of attempting to micromanage Python optimizations.

• Not a fan of this at all, the whole advantage you claim with this solution is that the list might be so huge that building duplicate list in memory could be costly. Well then your solution will be even more costly because you're scanning the entire list for `L.count(None)` and then you're calling `.remove(None)` multiple times which makes this `O(N^2)` The situation you are trying to solve should not be dealt with in this way, the data should be restructured into a Database or file instead if it's that memory intensive. Feb 17, 2018 at 14:31
• Would be interested if you had a practical example where this answer is the best solution, I tend to think that there would be a better approach in all cases. For example `numpy` would be able to handle this type of operation in a more optimised manner Feb 19, 2018 at 5:16
• This discussion is getting too abstract now, I don't think you'd be able to give me one real life example in your years of experience where this answer is the correct approach over restructuring the data as i mentioned before. Feb 20, 2018 at 5:39
• True, but not all real world situations allow flexibility of transforming the data. For example, pumping "legacy" geospatial data through a one-off analysis on a system without much memory. Another example is programming time vs runtime. Might not care if something takes all night to run so long as it was inexpensive to write. What about if writing a plugin or library? You may not be the one deciding what the data looks like. With this answer, I am bringing attention to considering memory and knowing the data, but I point out it probably does not matter most of the time. Aug 7, 2020 at 19:09
• Best-case is `O(n)`. Count n with nothing found. All `None` would be `O(2n)`. Count == n ops; then each remove comparison is found on the first item, so total comparisons is n. A single None at the end of the list is also `O(2n)`. Count is n; one additional pass through the list until None is found in the last position n. So, I think worst-case is when the back half the list is entirely None. I think that is `O(n + ((n / 2) + 1)^2)`. Another real world scenario is embedded systems with tiny amounts of memory. Micropython exists specifically for those. Aug 7, 2020 at 19:29
``````from operator import is_not
from functools import partial

filter_null = partial(filter, partial(is_not, None))

# A test case
L = [1, None, 2, None, 3]
L = list(filter_null(L))
``````
• Please, give some details information to the OP, and not just a code. Nov 2, 2016 at 20:23
• I did. What you think? Nov 23, 2016 at 8:05
• Well, this doesn't answer the OP question. Consider this answer instead: stackoverflow.com/a/16096769/1513933 Nov 23, 2016 at 8:11
• Yes you are right. There was a problem with the filter partial. Nov 23, 2016 at 8:30

If it is all a list of lists, you could modify sir @Raymond's answer

```L = [ [None], [123], [None], [151] ] no_none_val = list(filter(None.__ne__, [x[0] for x in L] ) ) ``` for python 2 however

```no_none_val = [x[0] for x in L if x[0] is not None] """ Both returns [123, 151]"""```

<< list_indice[0] for variable in List if variable is not None >>

``````L = [0, 23, 234, 89, None, 0, 35, 9]
result = list(filter(lambda x: x is not None, L))
``````

If the list has NoneType and pandas._libs.missing.NAType objects than use:

``````[i for i in lst if pd.notnull(i)]
``````
• using pandas is a great idea! Thank you @sedrak and welcome to the platform Oct 1, 2021 at 16:07