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I need a rolling window (aka sliding window) iterable over a sequence/iterator/generator. Default Python iteration can be considered a special case, where the window length is 1. I'm currently using the following code. Does anyone have a more Pythonic, less verbose, or more efficient method for doing this?

def rolling_window(seq, window_size):
    it = iter(seq)
    win = [it.next() for cnt in xrange(window_size)] # First window
    yield win
    for e in it: # Subsequent windows
        win[:-1] = win[1:]
        win[-1] = e
        yield win

if __name__=="__main__":
    for w in rolling_window(xrange(6), 3):
        print w

"""Example output:

   [0, 1, 2]
   [1, 2, 3]
   [2, 3, 4]
   [3, 4, 5]
share|improve this question

12 Answers 12

up vote 55 down vote accepted

There's one in an old version of the Python docs with itertools examples:

from itertools import islice

def window(seq, n=2):
    "Returns a sliding window (of width n) over data from the iterable"
    "   s -> (s0,s1,...s[n-1]), (s1,s2,...,sn), ...                   "
    it = iter(seq)
    result = tuple(islice(it, n))
    if len(result) == n:
        yield result    
    for elem in it:
        result = result[1:] + (elem,)
        yield result

The one from the docs is a little more succinct and uses itertools to greater effect I imagine.

share|improve this answer
Nice answer, but (and I know you're just reproducing the recipe as linked), I wonder why the default window size should be 2? Should it have a default at all? – SingleNegationElimination Jul 25 '11 at 22:02
@TakenMacGuy: I dunno what the author of that recipe's reasoning is, but I'd also choose 2. 2 is the smallest useful window size (otherwise you're just iterating and don't need the window), and it is also common to need to know the previous (or next) item, arguably more so than any other specific n. – kindall Jul 26 '11 at 23:41
Does anyone know why this example was removed from the docs? Was there something wrong with it, or there is an easier alternative now? – wim Apr 15 '13 at 15:10

This seems tailor-made for a collections.deque since you essentially have a FIFO (add to one end, remove from the other). However, even if you use a list you shouldn't be slicing twice; instead, you should probably just pop(0) from the list and append() the new item.

Here is an optimized deque-based implementation patterned after your original:

from collections import deque

def window(seq, n=2):
    it = iter(seq)
    win = deque((next(it, None) for _ in xrange(n)), maxlen=n)
    yield win
    append = win.append
    for e in it:
        yield win

In my tests it handily beats everything else posted here most of the time, though pillmuncher's tee version beats it for large iterables and small windows. On larger windows, the deque pulls ahead again in raw speed.

Access to individual items in the deque may be faster or slower than with lists or tuples. (Items near the beginning are faster, or items near the end if you use a negative index.) I put a sum(w) in the body of my loop; this plays to the deque's strength (iterating from one item to the next is fast, so this loop ran a a full 20% faster than the next fastest method, pillmuncher's). When I changed it to individually look up and add items in a window of ten, the tables turned and the tee method was 20% faster. I was able to recover some speed by using negative indexes for the last five terms in the addition, but tee was still a little faster. Overall I would estimate that either one is plenty fast for most uses and if you need a little more performance, profile and pick the one that works best.

share|improve this answer
I almost included the collections.deque idea in the original question as an example of a possible improvement. Using pop(0) and append(...) (or '+') is, of course, much better. The version in my question seems to indicate that I think lists are arrays... – David B. Jul 25 '11 at 21:56
Actually, on further reflection, it's possible that the method call overhead from append() and pop() would be slower than the slicing, especially for small values. This overhead can be reduced by assigning a local variable to point to these methods. – kindall Jul 25 '11 at 22:05
yield win should be yield tuple(win) or yield list(win) to prevent returning an iterator of references to the same deque object. – Joel Cornett Mar 6 '13 at 19:40
I submitted this to PyPI. Install with pip install sliding_window, and run with from sliding_window import window. – Thomas Levine Feb 24 '14 at 7:36
It obviously won't; you'd need to do something like list(list(x) for x in window(range(10))) or else add that to the iterator. For some applications this will matter, for others not, and since I was going for speed I elected not and put the onus on the caller to copy the window if needed. – kindall Feb 18 at 21:56

I like tee():

from itertools import tee, izip

def window(iterable, size):
    iters = tee(iterable, size)
    for i in xrange(1, size):
        for each in iters[i:]:
            next(each, None)
    return izip(*iters)

for each in window(xrange(6), 3):
    print list(each)


[0, 1, 2]
[1, 2, 3]
[2, 3, 4]
[3, 4, 5]
share|improve this answer
+1 @pillmuncher: me too. – Jochen Ritzel Jul 25 '11 at 22:50
From my quick timeit tests, this is much slower than Daniel DePaolo's (by about a 2:1 ratio) and doesn't feel much "nicer". – David B. Jul 25 '11 at 23:15
@David B.: On my box it's only about 8% slower than Daniel DePaolo's. – pillmuncher Jul 25 '11 at 23:42
@pillmuncher: Python 2.7 or 3.x? I was using 2.7. The ratio is also fairly sensitive to the value of size. If you increase it (e.g., if the iterable is 100000 elements long, make the window size 1000), you may see an increase. – David B. Jul 26 '11 at 0:29
@David B.: What you say makes sense. In my code the setup time for iters is O(size!), and calling next() many times (in izip()) is probably a lot more time consuming than copying a tuple twice. I was using Python 2.6.5, BTW. – pillmuncher Jul 26 '11 at 0:46

Here's a generalization that adds support for step, fillvalue parameters:

from collections import deque
from itertools import islice

def sliding_window(iterable, size=2, step=1, fillvalue=None):
    if size < 0 or step < 1:
        raise ValueError
    it = iter(iterable)
    q = deque(islice(it, size), maxlen=size)
    if not q:
        return  # empty iterable or size == 0
    q.extend(fillvalue for _ in range(size - len(q)))  # pad to size
    while True:
        yield iter(q)  # iter() to avoid accidental outside modifications
        q.extend(next(it, fillvalue) for _ in range(step - 1))

It yields in chunks size items at a time rolling step positions per iteration padding each chunk with fillvalue if necessary. Example for size=4, step=3, fillvalue='*':

 [a b c d]e f g h i j k l m n o p q r s t u v w x y z
  a b c[d e f g]h i j k l m n o p q r s t u v w x y z
  a b c d e f[g h i j]k l m n o p q r s t u v w x y z
  a b c d e f g h i[j k l m]n o p q r s t u v w x y z
  a b c d e f g h i j k l[m n o p]q r s t u v w x y z
  a b c d e f g h i j k l m n o[p q r s]t u v w x y z
  a b c d e f g h i j k l m n o p q r[s t u v]w x y z
  a b c d e f g h i j k l m n o p q r s t u[v w x y]z
  a b c d e f g h i j k l m n o p q r s t u v w x[y z * *]

For an example of use case for the step parameter, see Processing a large .txt file in python efficiently.

share|improve this answer

Just a quick contribution.

Since the current python docs don't have "window" in the itertool examples (i.e., at the bottom of http://docs.python.org/library/itertools.html), here's an snippet based on the code for grouper which is one of the examples given:

import itertools as it
def window(iterable, size):
    shiftedStarts = [it.islice(iterable, s, None) for s in xrange(size)]
    return it.izip(*shiftedStarts)

Basically, we create a series of sliced iterators, each with a starting point one spot further forward. Then, we zip these together. Note, this function returns a generator (it is not directly a generator itself).

Much like the appending-element and advancing-iterator versions above, the performance (i.e., which is best) varies with list size and window size. I like this one because it is a two-liner (it could be a one-liner, but I prefer naming concepts).

It turns out that the above code is wrong. It works if the parameter passed to iterable is a sequence but not if it is an iterator. If it is an iterator, the same iterator is shared (but not tee'd) among the islice calls and this breaks things badly.

Here is some fixed code:

import itertools as it
def window(iterable, size):
    itrs = it.tee(iterable, size)
    shiftedStarts = [it.islice(anItr, s, None) for s, anItr in enumerate(itrs)]
    return it.izip(*shiftedStarts)

Also, one more version for the books. Instead of copying an iterator and then advancing copies many times, this version makes pairwise copies of each iterator as we move the starting position forward. Thus, iterator t provides both the "complete" iterator with starting point at t and also the basis for creating iterator t + 1:

import itertools as it
def window4(iterable, size):
    complete_itr, incomplete_itr = it.tee(iterable, 2)
    iters = [complete_itr]
    for i in xrange(1, size):
        complete_itr, incomplete_itr = it.tee(incomplete_itr, 2)
    return it.izip(*iters)
share|improve this answer

I use the following code as a simple sliding window that uses generators to drastically increase readability. Its speed has so far been sufficient for use in bioinformatics sequence analysis in my experience.

I include it here because I didn't see this method used yet. Again, I make no claims about its compared performance.

def slidingWindow(sequence,winSize,step=1):
"""Returns a generator that will iterate through
the defined chunks of input sequence. Input sequence
must be sliceable."""

    # Verify the inputs
    if not ((type(winSize) == type(0)) and (type(step) == type(0))):
        raise Exception("**ERROR** type(winSize) and type(step) must be int.")
    if step > winSize:
        raise Exception("**ERROR** step must not be larger than winSize.")
    if winSize > len(sequence):
        raise Exception("**ERROR** winSize must not be larger than sequence length.")

    # Pre-compute number of chunks to emit
    numOfChunks = ((len(sequence)-winSize)/step)+1

    # Do the work
    for i in range(0,numOfChunks*step,step):
        yield sequence[i:i+winSize]
share|improve this answer
The main drawback here is the len(sequence) call. This won't work if sequence is an iterator or generator. When the input does fit in memory, this does offer a more readable solution than with iterators. – David B. Mar 26 '12 at 19:23
Yes, you're right. This particular case was originally meant for scanning DNA sequences which are usually represented as strings. It certainly DOES have the limitation you mention. If you wanted you could simply test each slice to make sure its still the right length and then forget about having to know the length of the whole sequence. But it would add a bit more overhead (a len() test every iteration). – Gus Mar 26 '12 at 20:19

a slightly modified version of the deque window, to make it a true rolling window. So that it starts being populated with just one element, then grows to it's maximum window size, and then shrinks as it's left edge comes near the end:

from collections import deque
def window(seq, n=2):
    it = iter(seq)
    win = deque((next(it, None) for _ in xrange(1)), maxlen=n)
    yield win
    append = win.append
    for e in it:
        yield win
    for _ in xrange(len(win)-1):
        yield win

for wnd in window(range(5), n=3):

this gives

[0, 1]
[0, 1, 2]
[1, 2, 3]
[2, 3, 4]
[3, 4]
share|improve this answer

Multiple iterators!

def window(seq, size, step=1):
    # initialize iterators
    iters = [iter(seq) for i in range(size)]
    # stagger iterators (without yielding)
    [next(iters[i]) for j in range(size) for i in range(-1, -j-1, -1)]
        yield [next(i) for i in iters]
        # next line does nothing for step = 1 (skips iterations for step > 1)
        [next(i) for i in iters for j in range(step-1)]

next(it) raises StopIteration when the sequence is finished, and for some cool reason that's beyond me, the yield statement here excepts it and the function returns, ignoring the leftover values that don't form a full window.

Anyway, this is the least-lines solution yet whose only requirement is that seq implement either __iter__ or __getitem__ and doesn't rely on itertools or collections besides @dansalmo's solution :)

share|improve this answer
note: the stagger step is O(n^2) where n is the size of the window, and only happens on the first call. It could be optimized down to O(n), but it would make the code a little messier :P – jameh Oct 28 '13 at 5:46
def rolling_window(list, degree):
    for i in range(len(list)-degree+1):
        yield [list[i+o] for o in range(degree)]

Made this for a rolling average function

share|improve this answer
>>> n, m = 6, 3
>>> k = n - m+1
>>> print ('{}\n'*(k)).format(*[range(i, i+m) for i in xrange(k)])
[0, 1, 2]
[1, 2, 3]
[2, 3, 4]
[3, 4, 5]
share|improve this answer

How about using the following:

mylist = [1, 2, 3, 4, 5, 6, 7]

def sliding_window(l, window_size=2):
    if window_size > len(l):
        raise ValueError("Window size must be smaller or equal to the number of elements in the list.")

    t = []
    for i in xrange(0, window_size):

    return zip(*t)

print sliding_window(mylist, 3)


[(1, 2, 3), (2, 3, 4), (3, 4, 5), (4, 5, 6), (5, 6, 7)]
share|improve this answer
def GetShiftingWindows(thelist, size):
    return [ thelist[x:x+size] for x in range( len(thelist) - size + 1 ) ]

>> a = [1, 2, 3, 4, 5]
>> GetShiftingWindows(a, 3)
[ [1, 2, 3], [2, 3, 4], [3, 4, 5] ]
share|improve this answer
Please edit with more information. Code-only and "try this" answers are discouraged, because they contain no searchable content, and don't explain why someone should "try this". – abarisone 8 hours ago

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