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`

).

If I had

```
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.