What's the easiest way to shuffle an array with python?


11 Answers 11

import random
  • 14
    is there an option that doesn't mutate the original array but return a new shuffled array? Mar 29, 2017 at 17:48
  • @Charlie That would be a good thing to ask in a separate question. (Maybe someone else has already asked it.)
    – David Z
    Mar 29, 2017 at 18:17
  • 1
    @{Charlie Parker} Just make a copy of the original array before using random.shuffle: ` copy_of array = array.copy() random.shuffle(copy_of_array) ` Jun 2, 2020 at 20:38
  • @CharlieParker From the python docs shuffled = sample(array, k=len(array))
    – allenh
    Jun 10, 2021 at 13:38
  • 1
    @Tushar Despite the name, the object you get from np.array() is not an "array" in the sense of this question. You may want to look for another question to find out how to shuffle a Numpy array specifically. (Or you can search the web to find the right page in the Numpy documentation.)
    – David Z
    Sep 25, 2021 at 21:22
import random

Alternative way to do this using sklearn

from sklearn.utils import shuffle
y = ['one', 'two', 'three']
X, y = shuffle(X, y, random_state=0)


[2, 1, 3]
['two', 'one', 'three']

Advantage: You can random multiple arrays simultaneously without disrupting the mapping. And 'random_state' can control the shuffling for reproducible behavior.

  • Also note that the y is optional
    – 27px
    Apr 6, 2023 at 4:31

Just in case you want a new array you can use sample:

import random
new_array = random.sample( array, len(array) )

The other answers are the easiest, however it's a bit annoying that the random.shuffle method doesn't actually return anything - it just sorts the given list. If you want to chain calls or just be able to declare a shuffled array in one line you can do:

import random
def my_shuffle(array):
    return array

Then you can do lines like:

for suit in my_shuffle(['hearts', 'spades', 'clubs', 'diamonds']):
  • 12
    It doesn't return anything specifically because it is trying to remind you that it works by altering the input in place. (This can save memory.) Your function alters its input in place also.
    – John Y
    Dec 20, 2011 at 22:13
  • 2
    I guess it's a style thing. Personally I prefer the fact that I can write a single line to achieve what would take a couple otherwise. It seems odd to me that a language which aims to allow programs to be as short as possible doesn't tend to return the passed object in these cases. Since it alters the input in place, you can replace a call to random.shuffle for a call to this version without issue. Dec 21, 2011 at 14:39
  • 13
    Python doesn't actually aim to be as brief as possible. Python aims to balance readability with expressivity. It so happens to be fairly brief, mainly because it is a very high-level language. Python's own built-ins typically (not always) strive to either be "functionlike" (return a value, but don't have side effects) or be "procedurelike" (operate via side effects, and don't return anything). This goes hand-in-hand with Python's quite strict distinction between statements and expressions.
    – John Y
    Dec 21, 2011 at 18:37
  • Nice. I suggest renaming it to my_shuffle to see the difference in the code immediately.
    – Jabba
    Feb 23, 2012 at 9:21
  • Maybe, but this could be premature optimization (it could be helpful, but the need to shuffle doesn't explicitly require the need to return the array). Also, shuffle(array) followed by some use of shuffle would only be 2 lines as opposed to 3 + n (times usage), although I guess it would be a saving if you use it many times. Here is a great video that discusses this type of thing (e.g. phantom requirements and premature optimisation) - pyvideo.org/video/880/stop-writing-classes Apr 21, 2012 at 1:23

When dealing with regular Python lists, random.shuffle() will do the job just as the previous answers show.

But when it come to ndarray(numpy.array), random.shuffle seems to break the original ndarray. Here is an example:

import random
import numpy as np
import numpy.random

a = np.array([1,2,3,4,5,6])
a.shape = (3,2)
print a
random.shuffle(a) # a will definitely be destroyed
print a

Just use: np.random.shuffle(a)

Like random.shuffle, np.random.shuffle shuffles the array in-place.

  • 3
    what does destroyed mean, exactly? (i mean, in this context -- i'm not an ELL.)
    – abcd
    Jul 15, 2016 at 1:10
  • Well if I try A = np.array(range(9)).reshape([3,3]) Aug 10, 2017 at 17:32

You can sort your array with random key

sorted(array, key = lambda x: random.random())

key only be read once so comparing item during sort still efficient.

but look like random.shuffle(array) will be faster since it written in C

this is O(Nlog(N)) btw

  • 1
    This is O(n log n), not O(log n), and inherently slower than an O(n) shuffle, C aspect aside.
    – Ry-
    Jan 22, 2023 at 23:05

In addition to the previous replies, I would like to introduce another function.

numpy.random.shuffle as well as random.shuffle perform in-place shuffling. However, if you want to return a shuffled array numpy.random.permutation is the function to use.


I don't know I used random.shuffle() but it return 'None' to me, so I wrote this, might helpful to someone

def shuffle(arr):
    for n in range(len(arr) - 1):
        rnd = random.randint(0, (len(arr) - 1))
        val1 = arr[rnd]
        val2 = arr[rnd - 1]

        arr[rnd - 1] = val1
        arr[rnd] = val2

    return arr
  • 5
    yes it returns None, but array is modifed, if you really want to return something then do this import random def shuffle(arr): random.shuffle(arr) return arr
    – user781903
    Feb 8, 2017 at 12:25
  • 1
    This swaps n−1 random pairs of adjacent items, which isn’t a correct (uniform) shuffle.
    – Ry-
    Jan 22, 2023 at 23:13

Be aware that random.shuffle() should not be used on multi-dimensional arrays as it causes repetitions.

Imagine you want to shuffle an array along its first dimension, we can create the following test example,

import numpy as np
x = np.zeros((10, 2, 3))

for i in range(10):
   x[i, ...] = i*np.ones((2,3))

so that along the first axis, the i-th element corresponds to a 2x3 matrix where all the elements are equal to i.

If we use the correct shuffle function for multi-dimensional arrays, i.e. np.random.shuffle(x), the array will be shuffled along the first axis as desired. However, using random.shuffle(x) will cause repetitions. You can check this by running len(np.unique(x)) after shuffling which gives you 10 (as expected) with np.random.shuffle() but only around 5 when using random.shuffle().

# arr = numpy array to shuffle

def shuffle(arr):
    a = numpy.arange(len(arr))
    b = numpy.empty(1)
    for i in range(len(arr)):
        sel = numpy.random.random_integers(0, high=len(a)-1, size=1)
        b = numpy.append(b, a[sel])
        a = numpy.delete(a, sel)
    b = b[1:].astype(int)
    return arr[b]

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