In python docs I can see that deque is a special collection highly optimized for poping/adding items from left or right sides. E.g. documentation says:

Deques are a generalization of stacks and queues (the name is pronounced “deck” and is short for “double-ended queue”). Deques support thread-safe, memory efficient appends and pops from either side of the deque with approximately the same O(1) performance in either direction.

Though list objects support similar operations, they are optimized for fast fixed-length operations and incur O(n) memory movement costs for pop(0) and insert(0, v) operations which change both the size and position of the underlying data representation.

I decided to make some comparisons using ipython. Could anyone explain me what I did wrong here:

In [31]: %timeit range(1, 10000).pop(0)
 10000 loops, best of 3: 114 us per loop

In [32]: %timeit deque(xrange(1, 10000)).pop() 
10000 loops, best of 3: 181 us per loop

In [33]: %timeit deque(range(1, 10000)).pop()
1000 loops, best of 3: 243 us per loop
  • 7
    It takes O(n) time to create a deque object from a list (such as range or xrange). May 6, 2014 at 6:25
  • What do you mean by "wrong"? What did you expect to happen?
    – freakish
    May 6, 2014 at 6:26
  • 2
    Agree with @JayanthKoushik, time .pop after both list and deque created.
    – vaultah
    May 6, 2014 at 6:26
  • 3
    deque has internal locks to achieve thread safe, but list doesn't.
    – Xing Fei
    May 6, 2014 at 6:30
  • 3
    @XingFei No, collections.deque doesn't have internal locks. For that you want Queue.Queue. But the append(), appendleft(), pop(), popleft() and len() methods of deque can be considered atomic not by guarantee of contract, but by how they're implemented in CPython. See bugs.python.org/issue15329#msg199368 (For example, iterating over a deque is not thread-safe).
    – Jostikas
    Nov 7, 2016 at 20:01

5 Answers 5


Could anyone explain me what I did wrong here

Yes, your timing is dominated by the time to create the list or deque. The time to do the pop is insignificant in comparison.

Instead you should isolate the thing you're trying to test (the pop speed) from the setup time:

In [1]: from collections import deque

In [2]: s = list(range(1000))

In [3]: d = deque(s)

In [4]: s_append, s_pop = s.append, s.pop

In [5]: d_append, d_pop = d.append, d.pop

In [6]: %timeit s_pop(); s_append(None)
10000000 loops, best of 3: 115 ns per loop

In [7]: %timeit d_pop(); d_append(None)
10000000 loops, best of 3: 70.5 ns per loop

That said, the real differences between deques and list in terms of performance are:

  • Deques have O(1) speed for appendleft() and popleft() while lists have O(n) performance for insert(0, value) and pop(0).

  • List append performance is hit and miss because it uses realloc() under the hood. As a result, it tends to have over-optimistic timings in simple code (because the realloc doesn't have to move data) and really slow timings in real code (because fragmentation forces realloc to move all the data). In contrast, deque append performance is consistent because it never reallocs and never moves data.

  • 22
    Yes, it uses linked list logic. More specifically, it uses a doubly-linked list of fixed length blocks. Jan 4, 2017 at 7:00
  • 2
    Use of realloc() for lists is just an optimization. The list is over-allocated each time it is resized to guarantee O(1) amortized append performance, even if the data has to be copied on each resize.
    – augurar
    Feb 3, 2017 at 6:45
  • 5
    @augurar The use of realloc() isn't an optimization, it is at the core of how lists grow. It is the overallocation strategy that is the optimization -- that strategy reduces the number of calls to realloc() but it does not eliminate them. realloc() is still called periodically. This makes timings less repeatable and harder to interpret because the realloc performance varies wildly depending on whether the data has to be copied. Nov 21, 2018 at 9:02
  • 5
    @augurar You're missing the point completely. Yes, there is amortized O(1) performance. However, the constant factor varies wildly because the underlying operation is sometimes cheap and sometimes expensive. Nov 23, 2018 at 6:47
  • 3
    @zyxue I'll update the answer. It was correct for Python 2 where range() returned a list. Feb 13, 2020 at 4:05

For what it is worth:

Python 3

deque.pop vs list.pop

> python3 -mtimeit -s 'import collections' -s 'items = range(10000000); base = [*items]' -s 'c = collections.deque(base)' 'c.pop()'
5000000 loops, best of 5: 46.5 nsec per loop 
> python3 -mtimeit -s 'import collections' -s 'items = range(10000000); base = [*items]' 'base.pop()'
5000000 loops, best of 5: 55.1 nsec per loop

deque.appendleft vs list.insert

> python3 -mtimeit -s 'import collections' -s 'c = collections.deque()' 'c.appendleft(1)'
5000000 loops, best of 5: 52.1 nsec per loop

> python3 -mtimeit -s 'c = []' 'c.insert(0, 1)'
50000 loops, best of 5: 12.1 usec per loop

Python 2

> python -mtimeit -s 'import collections' -s 'c = collections.deque(xrange(1, 100000000))' 'c.pop()'
10000000 loops, best of 3: 0.11 usec per loop
> python -mtimeit -s 'c = range(1, 100000000)' 'c.pop()'
10000000 loops, best of 3: 0.174 usec per loop
> python -mtimeit -s 'import collections' -s 'c = collections.deque()' 'c.appendleft(1)'
10000000 loops, best of 3: 0.116 usec per loop
> python -mtimeit -s 'c = []' 'c.insert(0, 1)'
100000 loops, best of 3: 36.4 usec per loop

As you can see, where it really shines is in appendleft vs insert.


I would recommend you to refer https://wiki.python.org/moin/TimeComplexity

Python lists and deque have simlilar complexities for most operations(push,pop etc.)

  • 10
    But critically, not for popleft / .pop(0) / pop intermediate which is what this question was trying to measure. Oct 6, 2019 at 19:46

I found my way to this question and thought I'd offer up an example with a little context.
A classic use-case for using a Deque might be rotating/shifting elements in a collection because (as others have mentioned), you get very good (O(1)) complexity for push/pop operations on both ends because these operations are just moving references around as opposed to a list which has to physically move objects around in memory.

So here are 2 very similar-looking implementations of a rotate-left function:

def rotate_with_list(items, n):
    l = list(items)
    for _ in range(n):
    return l

from collections import deque
def rotate_with_deque(items, n):
    d = deque(items)
    for _ in range(n):
    return d

Note: This is such a common use of a deque that the deque has a built-in rotate method, but I'm doing it manually here for the sake of visual comparison.

Now let's %timeit.

In [1]: def rotate_with_list(items, n):
   ...:     l = list(items)
   ...:     for _ in range(n):
   ...:         l.append(l.pop(0))
   ...:     return l
   ...: from collections import deque
   ...: def rotate_with_deque(items, n):
   ...:     d = deque(items)
   ...:     for _ in range(n):
   ...:         d.append(d.popleft())
   ...:     return d

In [2]: items = range(100000)

In [3]: %timeit rotate_with_list(items, 800)
100 loops, best of 3: 17.8 ms per loop

In [4]: %timeit rotate_with_deque(items, 800)
The slowest run took 5.89 times longer than the fastest. This could mean that an intermediate result is being cached.
1000 loops, best of 3: 527 µs per loop

In [5]: %timeit rotate_with_list(items, 8000)
10 loops, best of 3: 174 ms per loop

In [6]: %timeit rotate_with_deque(items, 8000)
The slowest run took 8.99 times longer than the fastest. This could mean that an intermediate result is being cached.
1000 loops, best of 3: 1.1 ms per loop

In [7]: more_items = range(10000000)

In [8]: %timeit rotate_with_list(more_items, 800)
1 loop, best of 3: 4.59 s per loop

In [9]: %timeit rotate_with_deque(more_items, 800)
10 loops, best of 3: 109 ms per loop

Pretty interesting how both data structures expose an eerily similar interface but have drastically different performance :)


out of curiosity I tried inserting in beginning in list vs appendleft() of deque.
clearly deque is winner.
enter image description here

  • 6
    It's better to copy/paste code and text as text (with code blocks for formatting), not pictures of text, like how sberry showed results in their answer. Some users are blind and use text-to-speech, and others are behind corporate firewalls the block imgur. Mar 16, 2022 at 5:57
  • @PeterCordes it's hardly 7 lines. Mar 16, 2022 at 7:02
  • 8
    Then it shouldn't take long to copy/paste and format. Mar 16, 2022 at 13:51
  • 4
    @CanH.Tartanoglu: I never said I wanted to copy/paste this code anywhere, I said that's what the author of this answer should do, from their code into SO. It's about searches indexing text not images. And the reasons I mentioned in my first comment: blind users, and firewalls that block imgur. Apr 28, 2022 at 12:02
  • 1
    The response being discussed has a flavour that I appreciate seeing, and sadly it just doesn't make sense to copy/paste the code. Yes, it is not an inclusive format, and that is a problem. There is a direct equivalent that can be copy/pasted in other answers. We should advocate for jupyter notebook integration into the StackExchange framework, because this puts way too much pressure on responders using native features. Apr 28, 2022 at 12:21

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