I'm trying to find a short way to see if any of the following items is in a list, but my first attempt does not work. Besides writing a function to accomplish this, is the any short way to check if one of multiple items is in a list.

>>> a = [2,3,4]
>>> print (1 or 2) in a
>>> print (2 or 1) in a

16 Answers 16

>>> L1 = [2,3,4]
>>> L2 = [1,2]
>>> [i for i in L1 if i in L2]

>>> S1 = set(L1)
>>> S2 = set(L2)
>>> S1.intersection(S2)

Both empty lists and empty sets are False, so you can use the value directly as a truth value.

  • 8
    The intersection idea gave me this idea. return len(set(a).intersection(set(b)))
    – Deon
    Apr 11, 2009 at 16:07
  • 25
    FWIW - I did a speed comparison, and the very first solution offered here was the fasted by far. Jun 8, 2012 at 15:43
  • 6
    @user89788's answer using a generator is much faster again, because any can return early as soon as it finds a True value - it doesn't have to build the whole list first
    – Anentropic
    Jan 29, 2014 at 12:28
  • The second/sets solution won't work if you have duplicates in the list (as sets only contain one of each item). If `L1 = [1,1,2,3]' and 'L2 = [1,2,3]', all items will be seen to intersect.
    – ron_g
    Sep 21, 2018 at 8:48
  • i know this is almost 10 years old, but the first solution doesnt seem to work for me. i've substituted the numbers in L2 for strings, and i'm getting the following error: TypeError: 'in <string>' requires string as left operand, not list
    – roastbeeef
    Jan 16, 2019 at 12:21

I was thinking of this slight variation on Tobias' solution:

>>> a = [1,2,3,4]
>>> b = [2,7]
>>> any(x in a for x in b)
  • 7
    I realize this is a very old answer, but if one list is very long and the other is short, is there an order that would yield faster performance? (i.e., x in long for x in short vs x in short for x in long)
    – Leah Sapan
    Feb 13, 2014 at 18:08
  • 15
    @LukeSapan: You are correct. That order can be obtained via "print any(x in max(a,b,key=len) for x in min(a,b,key=len))". This uses x in long for x in short.
    – Nuclearman
    Apr 16, 2014 at 23:33
  • 2
    This is the best answer because it uses a generator and will return as soon as a match is found (as others have said, just not on this answer!).
    – dotcomly
    Feb 20, 2016 at 23:01
  • 8
    @Nuclearman, watch out: If the two lists a and b are the same length, max and min will return the left-most list, which makes the any() call operate over the same list on both sides. If you absolutely require checking for length, reverse the order of the lists in the second call: any(x in max(a, b, key=len) for x in (b, a, key=len)). Jan 31, 2017 at 14:43
  • 7
    @NoahBogart You are correct and that solution seems as good as any. I also presume you meant: any(x in max(a, b, key=len) for x in min(b, a, key=len)) (missed the min).
    – Nuclearman
    Jan 31, 2017 at 19:45

Maybe a bit more lazy:

a = [1,2,3,4]
b = [2,7]

print any((True for x in a if x in b))
  • 1
    It's nearly the same as the one I posted. Apr 11, 2009 at 16:24
  • 12
    @BastienLéonard ...except it's much faster because it uses a generator and thus any can return early, whereas your version has to build the whole list from comprehension before any can use it. @user89788's answer is slightly better because the double parentheses are unnecessary
    – Anentropic
    Jan 29, 2014 at 12:26

Think about what the code actually says!

>>> (1 or 2)
>>> (2 or 1)

That should probably explain it. :) Python apparently implements "lazy or", which should come as no surprise. It performs it something like this:

def or(x, y):
    if x: return x
    if y: return y
    return False

In the first example, x == 1 and y == 2. In the second example, it's vice versa. That's why it returns different values depending on the order of them.

  • The return y at the end is not true. When all values are false, the last value is returned. It is more something like if x: return x; else: return y.
    – The_spider
    Jan 14, 2023 at 19:24
a = {2,3,4}
if {1,2} & a:

Code golf version. Consider using a set if it makes sense to do so. I find this more readable than a list comprehension.

  • Nice one and it certainly answers the question, but it only works with immutable values.
    – ingyhere
    Mar 28, 2021 at 3:59

1 line without list comprehensions.

>>> any(map(lambda each: each in [2,3,4], [1,2]))
>>> any(map(lambda each: each in [2,3,4], [1,5]))
>>> any(map(lambda each: each in [2,3,4], [2,4]))

Best I could come up with:

any([True for e in (1, 2) if e in a])
  • I mean it's a one-liner in python.. but it's one of the cleanest one-liners I've seen.
    – eDonkey
    Jul 13, 2022 at 13:25

In python 3 we can start make use of the unpack asterisk. Given two lists:

bool(len({*a} & {*b}))
  • 1
    @Anthony, it creates a set containing the elements in a, and another set containing the elements in b, then it finds the intersection (shared elements) between those sets and any() returns true if there are any such elements that are truthy. The solution won't work if the only shared element(s) are falsy (such as the number 0). It might be better to use len() than any()
    – alkanen
    Jan 8, 2019 at 10:30
  • 1
    @alkanen Good call Jan 9, 2019 at 12:17
  • 1
    why not to use set function?
    – Alex78191
    Dec 15, 2019 at 3:31

When you think "check to see if a in b", think hashes (in this case, sets). The fastest way is to hash the list you want to check, and then check each item in there.

This is why Joe Koberg's answer is fast: checking set intersection is very fast.

When you don't have a lot of data though, making sets can be a waste of time. So, you can make a set of the list and just check each item:

tocheck = [1,2] # items to check
a = [2,3,4] # the list

a = set(a) # convert to set (O(len(a)))
print [i for i in tocheck if i in a] # check items (O(len(tocheck)))

When the number of items you want to check is small, the difference can be negligible. But check lots of numbers against a large list...


from timeit import timeit

methods = ['''tocheck = [1,2] # items to check
a = [2,3,4] # the list
a = set(a) # convert to set (O(n))
[i for i in tocheck if i in a] # check items (O(m))''',

'''L1 = [2,3,4]
L2 = [1,2]
[i for i in L1 if i in L2]''',

'''S1 = set([2,3,4])
S2 = set([1,2])

'''a = [1,2]
b = [2,3,4]
any(x in a for x in b)''']

for method in methods:
    print timeit(method, number=10000)


methods = ['''tocheck = range(200,300) # items to check
a = range(2, 10000) # the list
a = set(a) # convert to set (O(n))
[i for i in tocheck if i in a] # check items (O(m))''',

'''L1 = range(2, 10000)
L2 = range(200,300)
[i for i in L1 if i in L2]''',

'''S1 = set(range(2, 10000))
S2 = set(range(200,300))

'''a = range(200,300)
b = range(2, 10000)
any(x in a for x in b)''']

for method in methods:
    print timeit(method, number=1000)


M1: 0.0170331001282 # make one set
M2: 0.0164539813995 # list comprehension
M3: 0.0286040306091 # set intersection
M4: 0.0305438041687 # any

M1: 0.49850320816 # make one set
M2: 25.2735087872 # list comprehension
M3: 0.466138124466 # set intersection
M4: 0.668627977371 # any

The method that is consistently fast is to make one set (of the list), but the intersection works on large data sets the best!


In some cases (e.g. unique list elements), set operations can be used.

>>> a=[2,3,4]
>>> set(a) - set([2,3]) != set(a)

Or, using set.isdisjoint(),

>>> not set(a).isdisjoint(set([2,3]))
>>> not set(a).isdisjoint(set([5,6]))

I collected several of the solutions mentioned in other answers and in comments, then ran a speed test. not set(a).isdisjoint(b) turned out the be the fastest, it also did not slowdown much when the result was False.

Each of the three runs tests a small sample of the possible configurations of a and b. The times are in microseconds.

Any with generator and max
        2.093 1.997 7.879
Any with generator
        0.907 0.692 2.337
Any with list
        1.294 1.452 2.137
True in list
        1.219 1.348 2.148
Set with &
        1.364 1.749 1.412
Set intersection explcit set(b)
        1.424 1.787 1.517
Set intersection implicit set(b)
        0.964 1.298 0.976
Set isdisjoint explicit set(b)
        1.062 1.094 1.241
Set isdisjoint implicit set(b)
        0.622 0.621 0.753

import timeit

def printtimes(t):
    print '{:.3f}'.format(t/10.0),

setup1 = 'a = range(10); b = range(9,15)'
setup2 = 'a = range(10); b = range(10)'
setup3 = 'a = range(10); b = range(10,20)'

print 'Any with generator and max\n\t',
printtimes(timeit.Timer('any(x in max(a,b,key=len) for x in min(b,a,key=len))',setup=setup1).timeit(10000000))
printtimes(timeit.Timer('any(x in max(a,b,key=len) for x in min(b,a,key=len))',setup=setup2).timeit(10000000))
printtimes(timeit.Timer('any(x in max(a,b,key=len) for x in min(b,a,key=len))',setup=setup3).timeit(10000000))

print 'Any with generator\n\t',
printtimes(timeit.Timer('any(i in a for i in b)',setup=setup1).timeit(10000000))
printtimes(timeit.Timer('any(i in a for i in b)',setup=setup2).timeit(10000000))
printtimes(timeit.Timer('any(i in a for i in b)',setup=setup3).timeit(10000000))

print 'Any with list\n\t',
printtimes(timeit.Timer('any([i in a for i in b])',setup=setup1).timeit(10000000))
printtimes(timeit.Timer('any([i in a for i in b])',setup=setup2).timeit(10000000))
printtimes(timeit.Timer('any([i in a for i in b])',setup=setup3).timeit(10000000))

print 'True in list\n\t',
printtimes(timeit.Timer('True in [i in a for i in b]',setup=setup1).timeit(10000000))
printtimes(timeit.Timer('True in [i in a for i in b]',setup=setup2).timeit(10000000))
printtimes(timeit.Timer('True in [i in a for i in b]',setup=setup3).timeit(10000000))

print 'Set with &\n\t',
printtimes(timeit.Timer('bool(set(a) & set(b))',setup=setup1).timeit(10000000))
printtimes(timeit.Timer('bool(set(a) & set(b))',setup=setup2).timeit(10000000))
printtimes(timeit.Timer('bool(set(a) & set(b))',setup=setup3).timeit(10000000))

print 'Set intersection explcit set(b)\n\t',

print 'Set intersection implicit set(b)\n\t',

print 'Set isdisjoint explicit set(b)\n\t',
printtimes(timeit.Timer('not set(a).isdisjoint(set(b))',setup=setup1).timeit(10000000))
printtimes(timeit.Timer('not set(a).isdisjoint(set(b))',setup=setup2).timeit(10000000))
printtimes(timeit.Timer('not set(a).isdisjoint(set(b))',setup=setup3).timeit(10000000))

print 'Set isdisjoint implicit set(b)\n\t',
printtimes(timeit.Timer('not set(a).isdisjoint(b)',setup=setup1).timeit(10000000))
printtimes(timeit.Timer('not set(a).isdisjoint(b)',setup=setup1).timeit(10000000))
printtimes(timeit.Timer('not set(a).isdisjoint(b)',setup=setup3).timeit(10000000))

This will do it in one line.

>>> a=[2,3,4]
>>> b=[1,2]
>>> bool(sum(map(lambda x: x in b, a)))
  • I'm not getting a True here >>> print a [2, 3, 4] >>> print b [2, 7] >>> reduce(lambda x, y: x in b, a) False
    – Deon
    Apr 11, 2009 at 16:10
  • Yep. You're right. reduce() wasn't quite handling boolean values the way I thought it would. The revised version I wrote above works for that case though. Apr 11, 2009 at 16:32

A lot of similar answers, but for me the simplest and cleanest way is just to logical AND two sets and return the result as a bool, and I think this one is not listed yet:

def check_for_matching_elements(list1, list2):
    return bool(set(list1) & set(list2))

I have to say that my situation might not be what you are looking for, but it may provide an alternative to your thinking.

I have tried both the set() and any() method but still have problems with speed. So I remembered Raymond Hettinger said everything in python is a dictionary and use dict whenever you can. So that's what I tried.

I used a defaultdict with int to indicate negative results and used the item in the first list as the key for the second list (converted to defaultdict). Because you have instant lookup with dict, you know immediately whether that item exist in the defaultdict. I know you don't always get to change data structure for your second list, but if you are able to from the start, then it's much faster. You may have to convert list2 (larger list) to a defaultdict, where key is the potential value you want to check from small list, and value is either 1 (hit) or 0 (no hit, default).

from collections import defaultdict
already_indexed = defaultdict(int)

def check_exist(small_list, default_list):
    for item in small_list:
        if default_list[item] == 1:
            return True
    return False

if check_exist(small_list, already_indexed):
    for x in small_list:
        already_indexed[x] = 1

Some timings on py3.11 with a small dataset:

from functools import reduce
to_match = [r for r in range(1, 50, 3_000)]
big_range = list(range(0, 100_000))

%timeit not set(to_match).isdisjoint(big_range)
120 ns ± 1.38 ns per loop (mean ± std. dev. of 7 runs, 10,000,000 loops each)

%timeit [item for item in to_match if item in big_range]
153 ns ± 0.775 ns per loop (mean ± std. dev. of 7 runs, 10,000,000 loops each)

%timeit len(set(to_match).intersection(big_range)) > 0
191 ns ± 2.13 ns per loop (mean ± std. dev. of 7 runs, 1,000,000 loops each)

%timeit any(map(lambda v: v in to_match, big_range))
235 ns ± 4.57 ns per loop (mean ± std. dev. of 7 runs, 1,000,000 loops each)

%timeit any(x in to_match for x in big_range)
419 ns ± 2.84 ns per loop (mean ± std. dev. of 7 runs, 1,000,000 loops each)

%timeit set(to_match) & set(big_range)
1.5 ms ± 13.3 µs per loop (mean ± std. dev. of 7 runs, 1,000 loops each)

%timeit reduce(lambda v1, v2: v1 or v2, map(lambda v: v in to_match, big_range))
7.27 ms ± 134 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)


_new_list = []
for item in a:
    if item in b:
  • 1
    This does not answer the question. OP wants to know if any value from list a is in list b.
    – That1Guy
    May 19, 2015 at 17:57
  • Plus it's very slow compared to a comprehension. And eats RAM like stupid if you've many items; in any (or at least most) case, it should be better to use a generator instead. Mar 29, 2023 at 23:25

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