I need the following function:

Input: a list


  • True if all elements in the input list evaluate as equal to each other using the standard equality operator;
  • False otherwise.

Performance: of course, I prefer not to incur any unnecessary overhead.

I feel it would be best to:

  • iterate through the list
  • compare adjacent elements
  • and AND all the resulting Boolean values

But I'm not sure what's the most Pythonic way to do that.


Thank you for all the great answers. I rated up several, and it was really hard to choose between @KennyTM and @Ivo van der Wijk solutions.

The lack of short-circuit feature only hurts on a long input (over ~50 elements) that have unequal elements early on. If this occurs often enough (how often depends on how long the lists might be), the short-circuit is required. The best short-circuit algorithm seems to be @KennyTM checkEqual1. It pays, however, a significant cost for this:

  • up to 20x in performance nearly-identical lists
  • up to 2.5x in performance on short lists

If the long inputs with early unequal elements don't happen (or happen sufficiently rarely), short-circuit isn't required. Then, by far the fastest is @Ivo van der Wijk solution.

  • 3
    Equal as in a == b or identical as in a is b? – kennytm Oct 2 '10 at 7:35
  • 1
    Should the solution handle empty lists? If so, what should be returned? – Doug Oct 2 '10 at 7:43
  • 1
    Equal as in a == b. Should handle empty list, and return True. – max Oct 2 '10 at 8:21

24 Answers 24


General method:

def checkEqual1(iterator):
    iterator = iter(iterator)
        first = next(iterator)
    except StopIteration:
        return True
    return all(first == rest for rest in iterator)


def checkEqual2(iterator):
   return len(set(iterator)) <= 1

Also one-liner:

def checkEqual3(lst):
   return lst[1:] == lst[:-1]

The difference between the 3 versions are that:

  1. In checkEqual2 the content must be hashable.
  2. checkEqual1 and checkEqual2 can use any iterators, but checkEqual3 must take a sequence input, typically concrete containers like a list or tuple.
  3. checkEqual1 stops as soon as a difference is found.
  4. Since checkEqual1 contains more Python code, it is less efficient when many of the items are equal in the beginning.
  5. Since checkEqual2 and checkEqual3 always perform O(N) copying operations, they will take longer if most of your input will return False.
  6. For checkEqual2 and checkEqual3 it's harder to adapt comparison from a == b to a is b.

timeit result, for Python 2.7 and (only s1, s4, s7, s9 should return True)

s1 = [1] * 5000
s2 = [1] * 4999 + [2]
s3 = [2] + [1]*4999
s4 = [set([9])] * 5000
s5 = [set([9])] * 4999 + [set([10])]
s6 = [set([10])] + [set([9])] * 4999
s7 = [1,1]
s8 = [1,2]
s9 = []

we get

      | checkEqual1 | checkEqual2 | checkEqual3  | checkEqualIvo | checkEqual6502 |
| s1  | 1.19   msec | 348    usec | 183     usec | 51.6    usec  | 121     usec   |
| s2  | 1.17   msec | 376    usec | 185     usec | 50.9    usec  | 118     usec   |
| s3  | 4.17   usec | 348    usec | 120     usec | 264     usec  | 61.3    usec   |
|     |             |             |              |               |                |
| s4  | 1.73   msec |             | 182     usec | 50.5    usec  | 121     usec   |
| s5  | 1.71   msec |             | 181     usec | 50.6    usec  | 125     usec   |
| s6  | 4.29   usec |             | 122     usec | 423     usec  | 61.1    usec   |
|     |             |             |              |               |                |
| s7  | 3.1    usec | 1.4    usec | 1.24    usec | 0.932   usec  | 1.92    usec   |
| s8  | 4.07   usec | 1.54   usec | 1.28    usec | 0.997   usec  | 1.79    usec   |
| s9  | 5.91   usec | 1.25   usec | 0.749   usec | 0.407   usec  | 0.386   usec   |


# http://stackoverflow.com/q/3844948/
def checkEqualIvo(lst):
    return not lst or lst.count(lst[0]) == len(lst)

# http://stackoverflow.com/q/3844931/
def checkEqual6502(lst):
    return not lst or [lst[0]]*len(lst) == lst
  • 6
    @max: Yes. Note that 1 msec = 1000 usec. – kennytm Oct 2 '10 at 8:28
  • 1
    Don't forget memory usage analysis for very large arrays, a native solution which optimizes away calls to obj.__eq__ when lhs is rhs, and out-of-order optimizations to allow short circuiting sorted lists more quickly. – Glenn Maynard Oct 2 '10 at 8:31
  • 2
    Ivo van der Wijk has a better solution for sequences that's about 5 times faster than set and O(1) in memory. – aaronasterling Oct 2 '10 at 8:32
  • 1
    @AaronMcSmooth: Without being a criticism of this answer, it's telling that this answer will probably remain at four times the score of the other: not due to comparative value, but due to the common early-answer and popular-answer vote bias of this site. – Glenn Maynard Oct 2 '10 at 8:57
  • 1
    @TurtlesAreCute: What is the problem of [2,3,3,3]? checkEqual3 does correctly return False. – kennytm May 2 '16 at 11:25

A solution faster than using set() that works on sequences (not iterables) is to simply count the first element. This assumes the list is non-empty (but that's trivial to check, and decide yourself what the outcome should be on an empty list)

x.count(x[0]) == len(x)

some simple benchmarks:

>>> timeit.timeit('len(set(s1))<=1', 's1=[1]*5000', number=10000)
>>> timeit.timeit('len(set(s1))<=1', 's1=[1]*4999+[2]', number=10000)
>>> timeit.timeit('s1.count(s1[0])==len(s1)', 's1=[1]*5000', number=10000)
>>> timeit.timeit('s1.count(s1[0])==len(s1)', 's1=[1]*4999+[2]', number=10000)
  • 4
    OMG, this is 6 times faster than the set solution! (280 million elements/sec vs 45 million elements/sec on my laptop). Why??? And is there any way to modify it so that it short circuits (I guess not...) – max Oct 2 '10 at 9:18
  • I guess list.count has a highly optimized C implementation, and the length of the list is stored internally, so len() is cheap as well. There's not a way to short-circuit count() since you will need to really check all elements to get the correct count. – Ivo van der Wijk Oct 2 '10 at 10:01
  • Can I change it to: x.count(next(x)) == len(x) so that it works for any container x? Ahh.. nm, just saw that .count is only available for sequences.. Why isn't it implemented for other builtin containers? Is counting inside a dictionary inherently less meaningful than inside a list? – max Oct 5 '10 at 5:09
  • 4
    An iterator may not have a length. E.g. it can be infinite or just dynamically generated. You can only find its length by converting it to a list which takes away most of the iterators advantages – Ivo van der Wijk Oct 5 '10 at 5:51
  • Sorry, what I meant was why count isn't implemented for iterables, not why len isn't available for iterators. The answer is probably that it's just an oversight. But it's irrelavant for us because default .count() for sequences is very slow (pure python). The reason your solution is so fast is that it relies on the C-implemented count provided by list. So I suppose whichever iterable happens to implement count method in C will benefit from your approach. – max Mar 12 '16 at 3:36

The simplest and most elegant way is as follows:

all(x==myList[0] for x in myList)

(Yes, this even works with the null list! This is because this is one of the few cases where python has lazy semantics.)

Regarding performance, this will fail at the earliest possible time, so it is asymptotically optimal.

  • This works, but it's a bit (1.5x) slower than @KennyTM checkEqual1. I'm not sure why. – max Apr 24 '12 at 17:20
  • 3
    max: Likely because I did not bother to perform the optimization first=myList[0] all(x==first for x in myList), perhaps – ninjagecko Nov 17 '15 at 12:48
  • 1
    I should of course clarify that the optimization first=myList[0] will throw an IndexError on an empty list, so commenters who were talking about that optimization I mentioned will have to deal with the edge-case of an empty list. However the original is fine (x==myList[0] is fine within the all because it is never evaluated if the list is empty). – ninjagecko Jan 13 '16 at 10:45
  • 1
    This is clearly the right way to to it. If you want speed in every case, use something like numpy. – Henry Gomersall May 6 '16 at 16:14
  • 1
    upvote for beautifully pythonic code – Nitro Nov 11 '16 at 0:43

A set comparison work:

len(set(the_list)) == 1

Using set removes all duplicate elements.

  • 2
    pythonic solution!!! :) – Alpesh Valaki Dec 22 '17 at 10:34

You can convert the list to a set. A set cannot have duplicates. So if all the elements in the original list are identical, the set will have just one element.

if len(sets.Set(input_list)) == 1
// input_list has all identical elements.
  • this is nice but it doesn't short circuit and you have to calculate the length of the resulting list. – aaronasterling Oct 2 '10 at 7:44
  • 14
    why not just len(set(input_list)) == 1? – Nick Dandoulakis Oct 2 '10 at 7:50
  • 2
    @codaddict. It means that even if the first two elements are distinct, it will still complete the entire search. it also uses O(k) extra space where k is the number of distinct elements in the list. – aaronasterling Oct 2 '10 at 7:58
  • 1
    @max. because building the set happens in C and you have a bad implementation. You should at least do it in a generator expression. See KennyTM's answer for how to do it correctly without using a set. – aaronasterling Oct 2 '10 at 8:20
  • 1
    sets.Set is "Deprecated since version 2.6: The built-in set/frozenset types replace this module." (from docs.python.org/2/library/sets.html) – Moberg Jan 19 '17 at 22:23

For what it's worth, this came up on the python-ideas mailing list recently. It turns out that there is an itertools recipe for doing this already:1

def all_equal(iterable):
    "Returns True if all the elements are equal to each other"
    g = groupby(iterable)
    return next(g, True) and not next(g, False)

Supposedly it performs very nicely and has a few nice properties.

  1. Short-circuits: It will stop consuming items from the iterable as soon as it finds the first non-equal item.
  2. Doesn't require items to be hashable.
  3. It is lazy and only requires O(1) additional memory to do the check.

1In other words, I can't take the credit for coming up with the solution -- nor can I take credit for even finding it.

  • 1
    Much faster than the fastest answer listed here in the worst case scenario. – ChaimG Apr 29 '18 at 23:32

Here are two simple ways of doing this

using set()

When converting the list to a set, duplicate elements are removed. So if the length of the converted set is 1, then this implies that all the elements are the same.


Here is an example

>>> a = ['not', 'the', 'same']
>>> b = ['same', 'same', 'same']
>>> len(set(a))==1  # == 3
>>> len(set(b))==1  # == 1

using all()

This will compare (equivalence) the first element of the input list to every other element in the list. If all are equivalent True will be returned, otherwise False will be returned.

all(element==input_list[0] for element in input_list)

Here is an example

>>> a = [1, 2, 3, 4, 5]
>>> b = [1, 1, 1, 1, 1]
>>> all(number==a[0] for number in a)
>>> all(number==b[0] for number in b)

P.S If you are checking to see if the whole list is equivalent to a certain value, you can suibstitue the value in for input_list[0].

  • 1
    For people interested in runtime, performing len(set(a)) on a list of 10,000,000 elements took 0.09 s whereas performing all took 0.9 s (10 times longer). – Elliptica Aug 17 '18 at 18:54
  • 2
    I also like this answer for its pythonic simplicity, in addition to performance score mentioned by @Elliptica – NickBraunagel Dec 2 '18 at 20:47

This is another option, faster than len(set(x))==1 for long lists (uses short circuit)

def constantList(x):
    return x and [x[0]]*len(x) == x
  • It is 3 times slower than the set solution on my computer, ignoring short circuit. So if the unequal element is found on average in the first third of the list, it's faster on average. – max Oct 2 '10 at 9:21

This is a simple way of doing it:

result = mylist and all(mylist[0] == elem for elem in mylist)

This is slightly more complicated, it incurs function call overhead, but the semantics are more clearly spelled out:

def all_identical(seq):
    if not seq:
        # empty list is False.
        return False
    first = seq[0]
    return all(first == elem for elem in seq)
  • You can avoid a redundant comparison here by using for elem in mylist[1:]. Doubt it improves speed much though since I guess elem[0] is elem[0] so the interpreter can probably do that comparison very quickly. – Brendan Jan 5 '17 at 15:58

Doubt this is the "most Pythonic", but something like:

>>> falseList = [1,2,3,4]
>>> trueList = [1, 1, 1]
>>> def testList(list):
...   for item in list[1:]:
...     if item != list[0]:
...       return False
...   return True
>>> testList(falseList)
>>> testList(trueList)

would do the trick.

  • 1
    Your for loop can be made more Pythonic into if any(item != list[0] for item in list[1:]): return False, with exactly the same semantics. – musiphil Aug 18 '16 at 20:59

If you're interested in something a little more readable (but of course not as efficient,) you could try:

def compare_lists(list1, list2):
    if len(list1) != len(list2): # Weed out unequal length lists.
        return False
    for item in list1:
        if item not in list2:
            return False
    return True

a_list_1 = ['apple', 'orange', 'grape', 'pear']
a_list_2 = ['pear', 'orange', 'grape', 'apple']

b_list_1 = ['apple', 'orange', 'grape', 'pear']
b_list_2 = ['apple', 'orange', 'banana', 'pear']

c_list_1 = ['apple', 'orange', 'grape']
c_list_2 = ['grape', 'orange']

print compare_lists(a_list_1, a_list_2) # Returns True
print compare_lists(b_list_1, b_list_2) # Returns False
print compare_lists(c_list_1, c_list_2) # Returns False
  • I'm actually trying to see if all elements in one list are identical; not if two separate lists are identical. – max Jun 5 '12 at 22:22

I'd do:

not any((x[i] != x[i+1] for i in range(0, len(x)-1)))

as any stops searching the iterable as soon as it finds a True condition.

  • You don't need the extra parentheses around the generator expression if it's the only argument. – ninjagecko Apr 23 '12 at 17:02
  • so does all(), why not use all(x == seq[0] for x in seq) ? looks more pythonic and should perform the same – Chen A. Sep 4 '17 at 7:36

Regarding using reduce() with lambda. Here is a working code that I personally think is way nicer than some of the other answers.

reduce(lambda x, y: (x[1]==y, y), [2, 2, 2], (True, 2))

Returns a truple where the first value is the boolean if all items are same or not.


Check if all elements equal to the first.

np.allclose(array, array[0])

  • Needs third party module. – Bachsau Feb 27 at 21:39

Convert the list into the set and then find the number of elements in the set. If the result is 1, it has identical elements and if not, then the elements in the list are not identical.

list1 = [1,1,1]

list1 = [1,2,3]
>>> a = [1, 2, 3, 4, 5, 6]
>>> z = [(a[x], a[x+1]) for x in range(0, len(a)-1)]
>>> z
[(1, 2), (2, 3), (3, 4), (4, 5), (5, 6)]
# Replacing it with the test
>>> z = [(a[x] == a[x+1]) for x in range(0, len(a)-1)]
>>> z
[False, False, False, False, False]
>>> if False in z : Print "All elements are not equal"
def allTheSame(i):
    j = itertools.groupby(i)
    for k in j: break
    for k in j: return False
    return True

Works in Python 2.4, which doesn't have "all".

  • 1
    for k in j: break is equivalent to next(j). You could also have done def allTheSame(x): return len(list(itertools.groupby(x))<2) if you did not care about efficiency. – ninjagecko Apr 23 '12 at 17:06

Can use map and lambda

lst = [1,1,1,1,1,1,1,1,1]

print all(map(lambda x: x == lst[0], lst[1:]))

You can do:

reduce(and_, (x==yourList[0] for x in yourList), True)

It is fairly annoying that python makes you import the operators like operator.and_. As of python3, you will need to also import functools.reduce.

(You should not use this method because it will not break if it finds non-equal values, but will continue examining the entire list. It is just included here as an answer for completeness.)

  • This wouldn't short circuit. Why would you prefer it over your other solution? – max Apr 24 '12 at 17:18
  • @max: you wouldn't, precisely for that reason; I included it for the sake of completeness. I should probably edit it to mention that, thanks. – ninjagecko Apr 24 '12 at 17:39
lambda lst: reduce(lambda a,b:(b,b==a[0] and a[1]), lst, (lst[0], True))[1]

The next one will short short circuit:

all(itertools.imap(lambda i:yourlist[i]==yourlist[i+1], xrange(len(yourlist)-1)))
  • Your first code was obviously wrong: reduce(lambda a,b:a==b, [2,2,2]) yields False... I edited it, but this way it's not pretty anymore – berdario Mar 27 '14 at 9:41
  • @berdario Then you should have written your own answer, rather than changing what somebody else wrote. If you think this answer was wrong, you can comment on it and/or downvote it. – Gorpik Mar 27 '14 at 9:47
  • 3
    It's better to fix something wrong, than leave it there for all the people to read it, possibly missing out the comments that explain why that was wrong – berdario Mar 27 '14 at 12:04
  • 3
    "When should I edit posts?" "Any time you feel you can make the post better, and are inclined to do so. Editing is encouraged!" – berdario Mar 27 '14 at 12:06

Change the list to a set. Then if the size of the set is only 1, they must have been the same.

if len(set(my_list)) == 1:

There is also a pure Python recursive option:

 def checkEqual(lst):
    if len(lst)==2 :
        return lst[0]==lst[1]
        return lst[0]==lst[1] and checkEqual(lst[1:])

However for some reason it is in some cases two orders of magnitude slower than other options. Coming from C language mentality, I expected this to be faster, but it is not!

The other disadvantage is that there is recursion limit in Python which needs to be adjusted in this case. For example using this.


Or use diff method of numpy:

import numpy as np
def allthesame(l):
    return np.all(np.diff(l)==0)

And to call:




Or use diff method of numpy:

import numpy as np
def allthesame(l):
    return np.unique(l).shape[0]<=1

And to call:




  • This answer is identical to an answer from U9-Forward from last year. – mhwombat Feb 28 at 11:34
  • Good eye! I used the same structure/API, but my method uses np.unique and shape. U9's function uses np.all() and np.diff() -- I don't use either of those functions. – Luis B Mar 2 at 5:59

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