Say I have some Python list, my_list which contains N elements. Single elements may be indexed by using my_list[i_1], where i_1 is the index of the desired element. However, Python lists may also be indexed my_list[i_1:i_2] where a "slice" of the list from i_1 to i_2 is desired. What is the Big-O (worst-case) notation to slice a list of size N?

Personally, if I were coding the "slicer" I would iterate from i_1 to i_2, generate a new list and return it, implying O(N), is this how Python does it?

Thank you,


3 Answers 3


Getting a slice is O(i_2 - i_1). This is because Python's internal representation of a list is an array, so you can start at i_1 and iterate to i_2.

For more information, see the Python Time Complexity wiki entry

You can also look at the implementation in the CPython source if you want to.

  • I just need my_list[1:] but performed often, so it looks like it will double to complexity vs my_list. My lists have fixed size, the elements may change values. How expensive is to keep a reference to slice of a fixed list?
    – uuu777
    Nov 22, 2020 at 14:04
  • Update: I wrote a custom iterable class that iterates over my existing list, it should have no penalties.
    – uuu777
    Nov 22, 2020 at 15:57

according to http://wiki.python.org/moin/TimeComplexity

it is O(k) where k is the slice size


For a list of size N, and a slice of size M, the iteration is actually only O(M), not O(N). Since M is often << N, this makes a big difference.

In fact, if you think about your explanation, you can see why. You're only iterating from i_1 to i_2, not from 0 to i_1, then I_1 to i_2.

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