I have a list of objects and I want to shuffle them. I thought I could use the random.shuffle method, but this seems to fail when the list is of objects. Is there a method for shuffling objects or another way around this?

import random

class A:
    foo = "bar"

a1 = a()
a2 = a()
b = [a1, a2]


This will fail.

  • 7
    Can you give an example how it fails? random.shuffle should work invariant to the type of the objects in the list. – bayer Jun 10 '09 at 17:01
  • 4
    >>> a1 = a() >>> a2 = a() >>> b = [a1,a2] >>> b [<__main__.a instance at 0xb7df9e6c>, <__main__.a instance at 0xb7df9e2c>] >>> print random.shuffle(b) None – utdiscant Jun 10 '09 at 17:02
  • 139
    As stated below, random.shuffle doesn't return a new shuffled list; it shuffles the list in place. So you shouldn't say "print random.shuffle(b)" and should instead do the shuffle on one line and print b on the next line. – Eli Courtwright Jun 10 '09 at 17:09
  • If you are trying to shuffle numpy arrays, see my answer below. – Gordon Bean Dec 19 '16 at 17:08
  • 2
    is there an option that doesn't mutate the original array but return a new shuffled array? – Charlie Parker Mar 29 '17 at 17:57

23 Answers 23


random.shuffle should work. Here's an example, where the objects are lists:

from random import shuffle
x = [[i] for i in range(10)]

# print(x)  gives  [[9], [2], [7], [0], [4], [5], [3], [1], [8], [6]]
# of course your results will vary

Note that shuffle works in place, and returns None.

  • 1
    @seokhoonlee Neither. It is a pseduo-random number generator which, when possible, is seeded by a source of real randomness from the OS. For all but cryptography purposes it is random "enough". This is laid out in detail in the random module's documentation. – dimo414 May 5 '16 at 2:50
  • 2
    use clone for a new list – Mohammad Mahdi KouchakYazdi Jan 11 '17 at 11:19
  • 9
    is there an option that doesn't mutate the original array but return a new shuffled array? – Charlie Parker Mar 29 '17 at 17:57
  • 5
    @CharlieParker: Not that I know of. You could use random.sample(x, len(x)) or just make a copy and shuffle that. For list.sort which has a similar issue, there's now list.sorted, but there's not a similar variant for shuffle. – tom10 Mar 29 '17 at 18:43
  • 6
    @seokhonlee for crypto-secure randomness, use from random import SystemRandom instead; add cryptorand = SystemRandom() and change row 3 to cryptorand.shuffle(x) – browly May 3 '17 at 23:10

As you learned the in-place shuffling was the problem. I also have problem frequently, and often seem to forget how to copy a list, too. Using sample(a, len(a)) is the solution, using len(a) as the sample size. See https://docs.python.org/3.6/library/random.html#random.sample for the Python documentation.

Here's a simple version using random.sample() that returns the shuffled result as a new list.

import random

a = range(5)
b = random.sample(a, len(a))
print a, b, "two list same:", a == b
# print: [0, 1, 2, 3, 4] [2, 1, 3, 4, 0] two list same: False

# The function sample allows no duplicates.
# Result can be smaller but not larger than the input.
a = range(555)
b = random.sample(a, len(a))
print "no duplicates:", a == list(set(b))

    random.sample(a, len(a) + 1)
except ValueError as e:
    print "Nope!", e

# print: no duplicates: True
# print: Nope! sample larger than population
  • is there an option that doesn't mutate the original array but return a new shuffled array? – Charlie Parker Mar 29 '17 at 17:57
  • just copy the list @CharlieParker: old = [1,2,3,4,5]; new = list(old); random.shuffle(new); print(old); print(new) (replace ; with newlines) – fjsj May 17 '18 at 18:22
  • old[:] also could do a shallow copy for list old. – Xiao Feb 14 '19 at 10:24
  • sample() is particularly helpful for prototyping a data analysis. sample(data, 2) for setting up the glue code of a pipeline, then "widening" it step-wise, up to len(data). – Katrin Leinweber Aug 30 '19 at 13:32

It took me some time to get that too. But the documentation for shuffle is very clear:

shuffle list x in place; return None.

So you shouldn't print(random.shuffle(b)). Instead do random.shuffle(b) and then print(b).


import random

random.shuffle(s) # << shuffle before print or assignment

# print: [2, 4, 1, 3, 0]

If you happen to be using numpy already (very popular for scientific and financial applications) you can save yourself an import.

import numpy as np    


  • What I like about this answer is that I can control the random seed in numpy. I bet there is a way to do that in the random module but that is not obvious to me right now... which means I need to read more. – VanBantam Jun 2 '20 at 17:53
>>> import random
>>> a = ['hi','world','cat','dog']
>>> random.shuffle(a,random.random)
>>> a
['hi', 'cat', 'dog', 'world']

It works fine for me. Make sure to set the random method.

  • Still does not work for me, see my example code in the edited question. – utdiscant Jun 10 '09 at 17:08
  • 4
    The second parameter defaults to random.random. It's perfectly safe to leave it out. – cbare May 11 '15 at 20:29
  • 3
    @alvas random.shuffle(a) doesn't return any thing i.e. it returns None . So you have to check a not return value . – sonus21 May 20 '15 at 9:34

If you have multiple lists, you might want to define the permutation (the way you shuffle the list / rearrange the items in the list) first and then apply it to all lists:

import random

perm = list(range(len(list_one)))
list_one = [list_one[index] for index in perm]
list_two = [list_two[index] for index in perm]

Numpy / Scipy

If your lists are numpy arrays, it is simpler:

import numpy as np

perm = np.random.permutation(len(list_one))
list_one = list_one[perm]
list_two = list_two[perm]


I've created the small utility package mpu which has the consistent_shuffle function:

import mpu

# Necessary if you want consistent results
import random

# Define example lists
list_one = [1,2,3]
list_two = ['a', 'b', 'c']

# Call the function
list_one, list_two = mpu.consistent_shuffle(list_one, list_two)

Note that mpu.consistent_shuffle takes an arbitrary number of arguments. So you can also shuffle three or more lists with it.

  • I had used an alternative " from sklearn.utils import shuffle", "list1,list2=shuffle(list1,list2)" but the list1 and list2 swapped over randomly, which I didn't want. – vk3who Oct 24 '20 at 5:36
from random import random
my_list = range(10)
shuffled_list = sorted(my_list, key=lambda x: random())

This alternative may be useful for some applications where you want to swap the ordering function.

  • Also, note that thanks to sorted, this is a functional shuffle (if you're into that sort of thing). – Inaimathi Nov 15 '17 at 19:52
  • 2
    This doesn't truly randomly distribute the values due to the stability of Timsort. (Values with the same key are left in their original order.) EDIT: I suppose it doesn't matter since the risk of collision with 64-bit floats is quite minimal. – Mateen Ulhaq Nov 13 '18 at 19:30

In some cases when using numpy arrays, using random.shuffle created duplicate data in the array.

An alternative is to use numpy.random.shuffle. If you're working with numpy already, this is the preferred method over the generic random.shuffle.



>>> import numpy as np
>>> import random

Using random.shuffle:

>>> foo = np.array([[1,2,3],[4,5,6],[7,8,9]])
>>> foo

array([[1, 2, 3],
       [4, 5, 6],
       [7, 8, 9]])

>>> random.shuffle(foo)
>>> foo

array([[1, 2, 3],
       [1, 2, 3],
       [4, 5, 6]])

Using numpy.random.shuffle:

>>> foo = np.array([[1,2,3],[4,5,6],[7,8,9]])
>>> foo

array([[1, 2, 3],
       [4, 5, 6],
       [7, 8, 9]])

>>> np.random.shuffle(foo)
>>> foo

array([[1, 2, 3],
       [7, 8, 9],
       [4, 5, 6]])
  • 1
    Also, numpy.random.permutation may be of interest: stackoverflow.com/questions/15474159/shuffle-vs-permute-numpy – Gordon Bean Dec 19 '16 at 19:57
  • Do you have an example of duplicated data being created in an array when using random.shuffle? – nurettin Jan 22 '19 at 10:36
  • Yes - it's included in my answer. See the section entitled "Example". ;) – Gordon Bean Jan 25 '19 at 19:36
  • Nevermind, I saw three elements and thought it was the same. Nice find – nurettin Jan 25 '19 at 19:57
  • 1
    random.shuffle documentation should shout Do not use with numpy arrays – winterlight Oct 13 '19 at 7:50

For one-liners, userandom.sample(list_to_be_shuffled, length_of_the_list) with an example:

import random
random.sample(list(range(10)), 10)

outputs: [2, 9, 7, 8, 3, 0, 4, 1, 6, 5]


'print func(foo)' will print the return value of 'func' when called with 'foo'. 'shuffle' however has None as its return type, as the list will be modified in place, hence it prints nothing. Workaround:

# shuffle the list in place 

# print it

If you're more into functional programming style you might want to make the following wrapper function:

def myshuffle(ls):
    return ls
  • 2
    Since this passes a reference to the list, the original gets modified. You might want to copy the list before shuffling using deepcopy – shivram.ss Feb 12 '14 at 20:54
  • @shivram.ss In this case, you'd want something like random.sample(ls, len(ls)) if you really want to go down that route. – Arda Xi Feb 28 '15 at 18:43

One can define a function called shuffled (in the same sense of sort vs sorted)

def shuffled(x):
    import random
    y = x[:]
    return y

x = shuffled([1, 2, 3, 4])
print x
import random

class a:
    foo = "bar"

a1 = a()
a2 = a()
a3 = a()
a4 = a()
b = [a1,a2,a3,a4]


shuffle is in place, so do not print result, which is None, but the list.


You can go for this:

>>> A = ['r','a','n','d','o','m']
>>> B = [1,2,3,4,5,6]
>>> import random
>>> random.sample(A+B, len(A+B))
[3, 'r', 4, 'n', 6, 5, 'm', 2, 1, 'a', 'o', 'd']

if you want to go back to two lists, you then split this long list into two.


you could build a function that takes a list as a parameter and returns a shuffled version of the list:

from random import *

def listshuffler(inputlist):
    for i in range(len(inputlist)):
        swap = randint(0,len(inputlist)-1)
        temp = inputlist[swap]
        inputlist[swap] = inputlist[i]
        inputlist[i] = temp
    return inputlist
""" to shuffle random, set random= True """

def shuffle(x,random=False):
     shuffled = []
     ma = x
     if random == True:
         rando = [ma[i] for i in np.random.randint(0,len(ma),len(ma))]
         return rando
     if random == False:
          for i in range(len(ma)):
          ave = len(ma)//3
          if i < ave:
     return shuffled
  • a small introduction or explanation would be helpful? – kacase Mar 28 '18 at 9:53
  • the function is helpful for shuffling activity, imagine you have to shuffle a list of numbers for three times and in the three times you require random shuffle to occur then just turn the random argument to True else if you don't require randomness and you want same shuffling order to be preserved then don't make any changes, just run the code. – Josh Anish Apr 16 '18 at 17:23
  • Since there is no use case where the caller of this function would decide at runtime whether he wants the random or the non-random shuffle, this function should be split into two. – toolforger Oct 13 '18 at 8:41
  • There is no description what the non-random shuffle is supposed to do. (On a tangent, it is not an answer so the question, so it does not serve the purpose of Stack Overflow.) – toolforger Oct 13 '18 at 8:43

you can either use shuffle or sample . both of which come from random module.

import random
def shuffle(arr1):
    return b


import random
def shuffle(arr1):
    return arr1

Make sure you are not naming your source file random.py, and that there is not a file in your working directory called random.pyc.. either could cause your program to try and import your local random.py file instead of pythons random module.

def shuffle(_list):
    if not _list == []:
        import random
        list2 = []
        while _list != []:
            card = random.choice(_list)
        while list2 != []:
            card1 = list2[0]
        return _list
  • This function can help you if you don't want to use random module – Pogramist May 29 '17 at 14:52
  • This solution is not only verbose but inefficient (runtime is proportional to the square of the list size). – toolforger Oct 13 '18 at 8:33
  • The second loop could be replaced by _list.extend(list2), which is more succinct AND more efficient. – toolforger Oct 13 '18 at 8:36
  • A Python function that modifies a parameter should never return a result. It's just a convention, but a useful one: People often lack the time to look at the implementation of all the functions that they call, so anybody who just sees your function's name and that it has a result will be very surprised to see the function update its parameter. – toolforger Oct 13 '18 at 8:38
import random
class a:
    foo = "bar"

a1 = a()
a2 = a()
b = [a1.foo,a2.foo]

The shuffling process is "with replacement", so the occurrence of each item may change! At least when when items in your list is also list.


ml = [[0], [1]] * 10



The number of [0] may be 9 or 8, but not exactly 10.


Plan: Write out the shuffle without relying on a library to do the heavy lifting. Example: Go through the list from the beginning starting with element 0; find a new random position for it, say 6, put 0’s value in 6 and 6’s value in 0. Move on to element 1 and repeat this process, and so on through the rest of the list

import random
iteration = random.randint(2, 100)
temp_var = 0
while iteration > 0:

    for i in range(1, len(my_list)): # have to use range with len()
        for j in range(1, len(my_list) - i):
            # Using temp_var as my place holder so I don't lose values
            temp_var = my_list[i]
            my_list[i] = my_list[j]
            my_list[j] = temp_var

        iteration -= 1
  • you can swap variables in python like this: my_list[i], my_list[j] = my_list[j], my_list[i] – Karolis Ryselis Jun 12 '18 at 17:58

It works fine. I am trying it here with functions as list objects:

    from random import shuffle

    def foo1():
        print "foo1",

    def foo2():
        print "foo2",

    def foo3():
        print "foo3",


    for x in A:

    print "\r"

    for y in A:

It prints out: foo1 foo2 foo3 foo2 foo3 foo1 (the foos in the last row have a random order)

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