Possible Duplicate:
Flattening a shallow list in Python
Flatten (an irregular) list of lists in Python

EDIT: The question is not how to do it - this has been discussed in other questions - the question is, which is the fastest method?

I've found solutions before, but I'm wondering what the fastest solution is to flatten lists which contain other lists of arbitrary length.

For example:

[1, 2, [3, 4, [5],[]], [6]]

Would become:


There can be infinitely many levels. Some of the list objects can be strings, which mustn't be flattened into their sequential characters in the output list.

marked as duplicate by GreenMatt, bernie, senderle, Mark Ransom, Sven Marnach May 30 '12 at 21:44

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

  • 2
    Many years ago I had this exact problem and ended up testing a number of approaches. – Francis Avila May 30 '12 at 20:38
  • 1
    This answer from a previously asked question should do what you want. (Voting to close as duplicate). – GreenMatt May 30 '12 at 20:43
  • 3
    @GreenMatt, it's only a duplicate if the question is the same, not the answer. It's clear that the other question is for a single level of nesting, and simpler solutions are more appropriate. – Mark Ransom May 30 '12 at 20:52
  • @Mark Ransom: I thought I'd seen this before, and that was what I found when I searched. Guess I didn't read the question carefully enough. – GreenMatt May 30 '12 at 21:15
  • Please stop removing the system-generated "Possible duplicate" banner. The second link has the answer to your question. – vaultah Apr 24 '16 at 20:29

Here's a recursive approach that is string friendly:

nests = [1, 2, [3, 4, [5],['hi']], [6, [[[7, 'hello']]]]]

def flatten(container):
    for i in container:
        if isinstance(i, (list,tuple)):
            for j in flatten(i):
                yield j
            yield i

print list(flatten(nests))


[1, 2, 3, 4, 5, 'hi', 6, 7, 'hello']

Note, this doesn't make any guarantees for speed or overhead use, but illustrates a recursive solution that hopefully will be helpful.

  • 7
    This is just a beautiful application of yield. Well done ... – fabee Sep 13 '13 at 15:29
  • 9
    In Python 3.3+, you could use yield from flatten(i) instead of for j in flatten(i): yield j – jfs Feb 24 '15 at 10:38
  • 2
    you could also do if isinstance(i, (list, tuple)): instead. but great solution regardless. – acushner Mar 16 '16 at 22:39
  • What if it's a set? I used if hasattr(i, '__iter__'): – Tgsmith61591 May 26 '16 at 14:07
  • 1
    String types cause an infinite recursion with hastattr(i, '__iter__'). I filtered those out if hasattr(i, '__iter__') and not isinstance(i, str): – random8 Mar 1 '17 at 18:03

It doesn't have to be recursive. In fact, an iterative solution is often faster because of the overhead involved in function calls. Here's an iterative version I wrote a while back:

def flatten(items, seqtypes=(list, tuple)):
    for i, x in enumerate(items):
        while i < len(items) and isinstance(items[i], seqtypes):
            items[i:i+1] = items[i]
    return items

Haven't tested the performance of this specific implementation, but it is probably not so great because of all the slice assignments, which could end up moving a lot of memory around. Still, don't assume it has to be recursive, or that it's simpler to write it that way.

This implementation does have the advantage of flattening the list "in place" rather than returning a copy, as recursive solutions invariably do. This could be useful when memory is tight. If you want a flattened copy, just pass in a shallow copy of the list you want to flatten:

flatten(mylist)                # flattens existing list
newlist = flatten(mylist[:])   # makes a flattened copy

Also, this algorithm is not limited by the Python recursion limit because it's not recursive. I'm certain this will virtually never come into play, however.

  • 1
    @Mark this is write-once code :). Make a note to warn future editors and move on with your life. – Triptych May 30 '12 at 21:20
  • 4
    @Triptych, I don't quite understand your comment. – Mark Ransom May 30 '12 at 21:30
  • 2
    enumerate() is dead-simple and is documented as being lazy (i.e., returning an iterator that yields sequential index values). The behavior of iter() on a list (using an incrementing index with __getitem__() and comparing it to len() on each iteration, which works even as the length changes) is also documented. So, although it kind of looks like a hack, it's actually pretty safe barring significant changes to the language. – kindall May 30 '12 at 22:45
  • 1
    range instead of enumerate will also do the trick. – NarayaN Jul 17 '13 at 4:29
  • 1
    I am surprised this does not have more votes. I ascribe it to the fact that you have to read carefully to understand what it is doing. – Mad Physicist Mar 17 '16 at 16:36

This function should be able to quickly flatten nested, iterable containers without using any recursion:

import collections

def flatten(iterable):
    iterator = iter(iterable)
    array, stack = collections.deque(), collections.deque()
    while True:
            value = next(iterator)
        except StopIteration:
            if not stack:
                return tuple(array)
            iterator = stack.pop()
            if not isinstance(value, str) \
               and isinstance(value, collections.Iterable):
                iterator = iter(value)

After about five years, my opinion on the matter has changed, and this may be even better to use:

def main():
    data = [1, 2, [3, 4, [5], []], [6]]

def flatten(iterable):
    iterator, sentinel, stack = iter(iterable), object(), []
    while True:
        value = next(iterator, sentinel)
        if value is sentinel:
            if not stack:
            iterator = stack.pop()
        elif isinstance(value, str):
            yield value
                new_iterator = iter(value)
            except TypeError:
                yield value
                iterator = new_iterator

if __name__ == '__main__':

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