# quicksort in place performance (python)

I was asked to write an 'in place' Quicksort version. Created two internal functions - a recursive one and an 'in place sorting' one that chooses random pivot (Question required so), sorts the list in place and returns the pivot's index after sorting.

``````     import random

def quicksort(lst):

def innerfunc(lst, start=0, end=(len(lst) - 1)):
temporal_pivot = subfunc(lst, start, end)

if (end - start > 1):
if (temporal_pivot == start or temporal_pivot == start + 1):
innerfunc(lst, temporal_pivot + 1, end)

elif (temporal_pivot == end or temporal_pivot == end - 1):
innerfunc(lst, 0 , temporal_pivot - 1)

else:
innerfunc(lst, 0 , temporal_pivot - 1), innerfunc(lst, temporal_pivot + 1, end)

def subfunc(l, start, end):
i_random = random.randint(start, end)  # chooses random index!
l[i_random], l[start] = l[start], l[i_random]

i_pivot = start
pivot = l[start]

i = end
while i > i_pivot:
if l[i] <= pivot:
l.insert(i_pivot, l[i])
i_pivot += 1
l.pop(i + 1)

else:
i = i - 1

return i_pivot

return innerfunc(lst)
``````

The problem is running time -

Lists that contain 100 elements or more are sorted very slowly.

Do you have an Idea how to improve "subfunc" algorithm and my Quicksort performance?

Thank you!

Oren

-

The problem are the repeated calls to `l.insert()` and `l.pop()`. Each of these has `O(n)` complexity, whereas you want each iteration of the loop to be `O(1)`.