# time complexity of variable loops

i want to try to calculate the O(n) of my program (in python). there are two problems:

1: i have a very basic knowledge of O(n) [aka: i know O(n) has to do with time and calculations]

and

2: all of the loops in my program are not set to any particular value. they are based on the input data.

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That's exactly what the N means in big-oh notation (what you're calling O(n)). The N stands for the size of the input. It depends on the problem. Maybe you can share some more context? –  R. Martinho Fernandes Jan 15 '10 at 0:28
Your second "problem" is not a problem, which you would know if you solved your first problem. I think you should do some basic study first and then come back if you have some more specific questions. –  Mark Byers Jan 15 '10 at 0:28
Indeed. If there was no recursion and all loops were a constant number of iterations, the time complexity would be O(1). –  Anon. Jan 15 '10 at 0:29
Haha you cracked me up! Thank you for that! –  Hamish Grubijan Jan 15 '10 at 0:36

The `n` in `O(n)` means precisely the input size. So, if I have this code:

``````def findmax(l):
maybemax = 0
for i in l:
if i > maybemax:
maybemax = i
return maybemax
``````

Then I'd say that the complexity is `O(n)` -- how long it takes is proportional to the input size (since the loop loops as many times as the length of `l`).

``````def allbigger(l, m):
for el in l:
for el2 in m:
if el < el2:
return False
return True
``````

then, in the worst case (that is, when I return `True`), I have one loop of length `len(l)` and inside it, one of length `len(m)`, so I say that it's `O(l * m)` or `O(n^2)` if the lists are expected to be about the same length.

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You just have to be aware of how long function calls in your loop take and factor them in. For instance `for i in range(n): if i in arr: do something` Is actually O(N^2) and not O(N) since the in operator takes O(N) time. –  JPvdMerwe Jan 21 '10 at 13:02

Try this out to start, then head to wiki:

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