Earlier, I was trying to answer a question where I wanted to iterate over a list slice as efficiently as possible.
for x in lst[idx1:]:
isn't ideal as it creates a copy (In general, this is
O(n)). My next thought was to use
itertools.islice. But if you look at the documentation, it appears that
islice will call
next until it finds the index it is looking for at which point it will start to yield values. This is also
O(n). It seems that there is an optimization that is available here if the object passed to
islice is a
list or a
tuple -- It seems that you could iterate over the "slice" directly (in C) without actually making a copy. I was curious if this optimization is in the source, But I didn't find anything. I'm not extremely familiar with C and the python source tree, so it's entirely possible that I missed it.
My question is this:
Is there a way to iterate over a list "slice" without making a copy of the list slice and without burning through a bunch of unwanted elements (in an optimized C implementation)?
I'm well aware that I could write my own generator for this (very naively, not accounting for the fact that many of the arguments should be optional, etc.):
def myslice(obj,start,stop,stride): for i in xrange(start,stop,stride): yield obj[i]
but that's definitely not going to beat an optimized C implementation.
If you're wondering why I would need this over just looping over a slice directly, consider the difference between:
takewhile(lambda x: x == 5, lst[idx:]) #copy's the tail of the list unnecessarily
takewhile(lambda x: x == 5, islice(lst,idx,None)) #inspects the head of the list unnecessarily
takewhile(lambda x: x == 5, magic_slice(lst,idx,None)) #How to create magic_slice???