# shuffle vs permute numpy

What is the difference between `numpy.random.shuffle(x)` and `numpy.random.permutation(x)`?

I have read the doc pages but I could not understand if there was any difference between the two when I just want to randomly shuffle the elements of an array.

To be more precise suppose I have an array `x=[1,4,2,8]`.

If I want to generate random permutations of x, then what is the difference between `shuffle(x)` and `permutation(x)`?

`np.random.permutation` has two differences from `np.random.shuffle`:

• if passed an array, it will return a shuffled copy of the array; `np.random.shuffle` shuffles the array inplace
• if passed an integer, it will return a shuffled range i.e. `np.random.shuffle(np.arange(n))`

If x is an integer, randomly permute np.arange(x). If x is an array, make a copy and shuffle the elements randomly.

The source code might help to understand this:

``````3280        def permutation(self, object x):
...
3307            if isinstance(x, (int, np.integer)):
3308                arr = np.arange(x)
3309            else:
3310                arr = np.array(x)
3311            self.shuffle(arr)
3312            return arr
``````
• When used on a `panda.Index`, only `permutation` works and `shuffle` doesn't. How does this case fit into your explanation? Feb 19, 2015 at 6:15
• @Heisenberg `permutation` coerces its argument into an ndarray (by copying); `pandas.Index` is sufficiently different from an ndarray that `shuffle` won't work on it, but will work on an ndarray created from it. Feb 19, 2015 at 10:39

Adding on to what @ecatmur said, `np.random.permutation` is useful when you need to shuffle ordered pairs, especially for classification:

``````from np.random import permutation
X = iris.data
y = iris.target

# Data is currently unshuffled; we should shuffle
# each X[i] with its corresponding y[i]
perm = permutation(len(X))
X = X[perm]
y = y[perm]
``````
• I keep getting this: TypeError: only integer scalar arrays can be converted to a scalar index Nov 6, 2017 at 21:57
• To clarify @hlin117, this only works if x and y are numpy arrays. If you try to do it with pythons built-in lists it will throw the TypeError. Mar 25, 2019 at 23:21

The permutation() method returns a re-arranged array (and leaves the original array un-changed),this method will keep the original array intact and will return a shuffled array, for example x = [1,4,2,8] is the original array and the permutation method will return the rearranged array (lets say [8,4,1,2]).Now,you have two arrays, original array and the rearranged array.

In the other hand,

The shuffle() method makes changes to the original array,for example x = [1,4,2,8] is the original array and the shuffle method will return the shuffled array(lets say shuffled array is [8,4,1,2]). Now , the original array itself got changed to the Shuffled array, and you are only left with the shuffled array.

Adding on @ecatmur, Here is a brief explanation. To start with I have created an array which is of shape 3,3 and has numbers from 0 to 8

``````import numpy as np
x1 = np.array(np.arange(0,9)).reshape(3,3) #array with shape 3,3 and have numbers from 0 to 8

#step1: using np.random.permutation
x_per = np.random.permutation(x1)
print('x_per:', x_per)
print('x_1:', x_1)
#Inference: x1 is not changed and x_per has its rows randomly changed

#The outcome will be
x1: [[0 1 2]
[3 4 5]
[6 7 8]]
x_per:[[3 4 5]
[0 1 2]
[6 7 8]]
#Lets apply shuffling
x2 = np.array(range(9)).reshape(3,3)
x2_shuffle = np.random.shuffle(x2)
print('x2_shuffle:', x2_shuffle)
print('x2', x2)

#Outcome:
x2_shuffle: None
x2 [[3 4 5]
[0 1 2]
[6 7 8]]
``````

Key inference is: When x is an array, both numpy.random.permutation(x) and numpy.random.shuffle(x) can permute the elements in x randomly along the first axis. numpy.random.permutation(x) actually returns a new variable and the original data is not changed. Where as numpy.random.shuffle(x) has changed original data and does not return a new variable. I just tried to show with an example so it can help others. Thanks!!