


Why Does Python's `random.shuffle()` Return `None` and How Can I Use It Correctly?
Shuffling a List of Objects
Problem:
Mistakes can occur when attempting to shuffle a list of objects using the random.shuffle() function. The expected shuffling behavior doesn't seem to occur, and the function outputs None instead.
Solution:
To effectively shuffle a list of objects, use the shuffle() function from the random module as follows:
from random import shuffle objects = [obj1, obj2, obj3] # initialize the list of objects shuffle(objects) # shuffle the objects in place
Explanation:
Unlike some other programming languages, in Python, random.shuffle() operates in place, meaning it modifies the original list without returning a new one. Additionally, it's common practice for functions in Python to return None when mutating objects is intended.
Sample Code:
from random import shuffle x = [[i] for i in range(10)] shuffle(x) print(x)
This will shuffle the list of lists x and print the shuffled result.
Note:
It's important to remember that shuffle() alters the original list, so subsequent operations or accesses to the list will reflect the changes made by shuffle().
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