


What's the Most Efficient Way to Create Lists of Repeated Single Items in Python?
Creating Lists of Single Item Repetitions
To generate a series of lists containing the same element repeated n times, there are several approaches.
One common method is to employ list comprehension:
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However, if you seek an alternative approach, consider using the multiplication operator:
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While this method effectively duplicates the element e n times, note that if e is an empty list, you will obtain a list with n references to the same list, rather than n separate empty lists.
Performance Considerations
When comparing the time efficiency of different methods, it's often assumed that repeat is superior to [e] * n. However, it's important to recognize that repeat does not immediately create a list. Instead, it returns an object that allows for the creation of a list when necessary.
For a more accurate performance comparison:
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This modification reveals that [e] * n is the more efficient solution for generating actual lists. However, if lazily generated elements are desired, repeat remains a viable option.
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