I am writing a program, that does a lot of deletions at either the front or back of a list of data, never the middle.

I understand that deletion of the last element is cheap, but how about deletion of the first element? For example let's say list A's address is at 4000, so element 0 is at 4000 and element 1 is at 4001.

Would deleting element 0 then just make the compiler put list A's address at 4001, or would it shift element 1 at 4001 to the location at 4000, and shift all other elements down by 1?

  • No, it resizes when you delete form the middle or front. Also, a Python list is not equivalent to a C-array. Although, deep down, there is an array of Py_Object pointers. Feb 2 '17 at 22:55

No, it isn't cheap. Removing an element from the front of the list (using list.pop(0), for example) is an O(N) operation and should be avoided. Similarly, inserting elements at the beginning (using list.insert(0, <value>)) is equally inefficient.

This is because, after the list is resized, it's elements must be shifted. For CPython, in the l.pop(0) case, this is done with memmove while for l.insert(0, <value>), the shifting is implemented with a loop through the items stored.

Lists are built for fast random access and O(1) operations on their end.

Since you're doing this operation commonly, though, you should consider using a deque from the collections module (as @ayhan suggested in a comment). The docs on deque also highlight how list objects aren't suitable for these operations:

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.

(Emphasis mine)

The deque data structure offers O(1) complexity for both sides (beginning and end) with appendleft/popleft and append/pop methods for the beginning and end respectively.

Of course, with small sizes this incurs some extra space requirements (due to the structure of the deque) which should generally be of no concern (and as @juanpa noted in a comment, doesn't always hold) as the sizes of the lists grow. Finally, as @ShadowRanger's insightful comment notes, with really small sequence sizes the problem of popping or inserting from the front is trivialized to the point that it becomes of really no concern.

So, in short, for lists with many items, use deque if you need fast appends/pops from both sides, else, if you're randomly accessing and appending to the end, use lists.

  • Actually, in my experience, deques are smaller than lists. Try a simple test, for i in range(0, 10000000, 100000): l,d = list(range(i)), deque(range(i)); print(sys.getsizeof(l), sys.getsizeof(d)). the list is always slightly larger. Feb 2 '17 at 23:00
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    @juanpa.arrivillaga You're using the list initializer which always creates larger lists, try it with a comprehension (or a literal, for smaller lists) and provide that to deque and count the sizes again. There seems to be some discrepancies in larger sizes (probably due to how these allocate memory) but in general, the assertion that in smaller sizes the list is smaller I believe holds. Feb 2 '17 at 23:06
  • I actually did try it with the list-comprehension. Last reading: 81528056 82500632. Essentially, in this case the list-comprehension will optimize the storage, and there are runs of lists having the same size. At the beginning of the run, it is slightly smaller than the equivalent deque. By the middle of the run, the deque is smaller. It probably averages to about a wash. But basically, my conclusion is that deques are usually smaller or about the same size. Feb 2 '17 at 23:14
  • Actually, it the lists are bigger at the beginning of the run, smaller relative to the deque at the end. Feb 2 '17 at 23:21
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    Note: For a sequence that never grows beyond single digit lengths, it hardly matters if you use list or deque; sure, poping from the front will be O(n), but when n is 6, the fixed overhead of Python outweighs any benefit of avoiding the memmove, and in fact, the fact that new deque blocks would be allocated intermittently for the deque as you reach the end of the current block (where a list with a narrow range of lengths would never need to reallocate) would make the performance less consistent. Until lengths are meaningful, it's just noise compared to interpreter overhead. Feb 2 '17 at 23:40

Removing elements from the front of a list in Python is O(n), while removing elements from the ends of a collections.deque is only O(1). A deque would be great for your purpose as a result, however it should be noted that accessing or adding/removing from the middle of a deque is more costly than for a list.

The O(n) cost for removal is because a list in CPython is simply implemented as an array of pointers, thus your intuition regarding the shifting cost for each element is correct.

This can be seen in the Python TimeComplexity page on the Wiki.


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