How do I use random.shuffle() on a generator without initializing a list from the generator? Is that even possible? if not, how else should I use random.shuffle() on my list?

>>> import random
>>> random.seed(2)
>>> x = [1,2,3,4,5,6,7,8,9]
>>> def yielding(ls):
...     for i in ls:
...             yield i
>>> for i in random.shuffle(yielding(x)):
...     print i
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
  File "/usr/lib/python2.7/random.py", line 287, in shuffle
    for i in reversed(xrange(1, len(x))):
TypeError: object of type 'generator' has no len()

Note: random.seed() was designed such that it returns the same output after each script run?

  • 3
    that does not really make sense, as the point of a generator is that you don't know what are the elements and can't access them but in an orderly fashion – njzk2 Jan 17 '14 at 13:25
  • because the seed is supposed to be customized so in this case: n=2; random.seed(2). Sometimes the random seed could be other number. – alvas Jan 17 '14 at 13:26
  • Can't imagine any canonique method to shuffle a sequence of unknown length. And note, that random.shuffle shuffles in place. – alko Jan 17 '14 at 13:28
  • 2
    Instead of a whole generator function, you could have used iter(x). – Martijn Pieters Jan 17 '14 at 13:31
  • I would suggest using a poisson distribution for a positive random look-ahead. Then (lazily or not) ignore that element from the iterated object, then repeat. – mnish May 27 '18 at 5:40

In order to shuffle the sequence uniformly, random.shuffle() needs to know how long the input is. A generator cannot provide this; you have to materialize it into a list:

lst = list(yielding(x))
for i in lst:
    print i

You could, instead, use sorted() with random.random() as the key:

for i in sorted(yielding(x), key=lambda k: random.random()):
    print i

but since this also produces a list, there is little point in going this route.


>>> import random
>>> x = [1,2,3,4,5,6,7,8,9]
>>> sorted(iter(x), key=lambda k: random.random())
[9, 7, 3, 2, 5, 4, 6, 1, 8]
  • But this could produce duplicates? – thefourtheye Jan 17 '14 at 13:27
  • @thefourtheye: No. It might assign two elements the same "weight" but it won't duplicate the elements themselves. – Aaron Digulla Jan 17 '14 at 13:28
  • 1
    @thefourtheye: no, it just sorts the output of the yielding(x) generator using random values. – Martijn Pieters Jan 17 '14 at 13:29
  • 1
    I would have expected sorted to rely on the key function being deterministic (if not, there is probably a caching mechanism (which, on second though, makes sense, given that sorted does not know the complexity of the key function)) – njzk2 Jan 17 '14 at 13:30
  • The first thing sorted() does is storing all elements in the generator in a list, before even starting to compute the keys and sorting it. – Sven Marnach Jan 17 '14 at 13:31

It's not possible to randomize the yield of a generator without temporarily saving all the elements somewhere. Luckily, this is pretty easy in Python:

tmp = list(yielding(x))
for i in tmp:
    print i

Note the call to list() which will read all items and put them into a list.

If you don't want to or can't store all elements, you will need to change the generator to yield in a random order.


I needed to find a solution to this problem so I could get expensive to compute elements in a shuffled order, without wasting computation by generating values. This is what I have come up with for your example. It involves making another function to index the first array.

You will need numpy installed

pip install numpy

The Code:

import numpy as np
x = [1, 2, 3, 4, 5, 6, 7, 8, 9]

def shuffle_generator(lst):
    return (lst[idx] for idx in np.random.permutation(len(lst)))

def yielding(ls):
    for i in ls:
        yield i

# for i in random.shuffle(yielding(x)):
#    print i

for i in yielding(shuffle_generator(x)):

Depending on the case, if you know how much data you have ahead of time, you can index the data and compute/read from it based on a shuffled index. This amounts to: 'don't use a generator for this problem', and without specific use-cases it's hard to come up with a general method.

Alternatively... If you need to use the generator...

it depends on 'how shuffled' you want the data. Of course, like folks have pointed out, generators don't have a length, so you need to at some point evaluate the generator, which could be expensive. If you don't need perfect randomness, you can introduce a shuffle buffer:

from itertools import islice

import numpy as np

def shuffle(generator, buffer_size):
    while True:
        buffer = list(islice(generator, buffer_size))
        if len(buffer) == 0:
        for item in buffer:
            yield item

shuffled_generator = shuffle(my_generator, 256)

This will shuffle data in chunks of buffer_size, so you can avoid memory issues if that is your limiting factor. Of course, this is not a truly random shuffle, so it shouldn't be used on something that's sorted, but if you just need to add some randomness to your data this may be a good solution.

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