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 

and finally:

takewhile(lambda x: x == 5, magic_slice(lst,idx,None)) #How to create magic_slice???
  • 1
    The iteration itself is O(n). iteration plus slice is still O(n). iterations plus islice is also O(n). Just do the cleanest thing now and worry about the speed when it becomes an issue and worry about the big-O stuff later or never. – Duncan Nov 29 '12 at 15:24
  • @Duncan -- But the iteration doesn't have to be order N. Suppose I only want the first M elements from the slice? (M isn't necessarily static -- It could be based on some "predicate" function). I also agree that premature optimization can make code harder to read. I'm mostly just curious. – mgilson Nov 29 '12 at 15:32
  • Mind you -- svn.python.org is not updated anymore. The source code is now at hg.python.org/cpython. (I've mailed the python.org webmaster that he might put a notice atop svn.python explaining this, to no effect.) – Fred Foo Nov 29 '12 at 15:44
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    @larsmans -- Thanks for fixing that for me. I just googled itertools source code and that was the first thing that came up. Maybe we should get Guido to fix that. He works at google doesn't he? ;-) – mgilson Nov 29 '12 at 15:47

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)?

Yes there is, if you write that C implementation. Cython makes this particularly easy.

cdef class ListSlice(object):
    cdef object seq
    cdef Py_ssize_t start, end

    def __init__(self, seq, Py_ssize_t start, Py_ssize_t end):
        self.seq = seq
        self.start = start
        self.end = end

    def __iter__(self):
        return self

    def __next__(self):
        if self.start == self.end:
            raise StopIteration()
        r = self.seq[self.start]
        self.start += 1
        return r
  • 2
    grumbles -- I keep thinking that someday I'll teach myself Cython (even read the tutorial once or twice), but I keep putting off really using it because my fortran skills are better than my C skills and f2py just makes my life so easy. I suppose this is a case where f2py is simply inadequate and maybe I should bite the bullet and brush up on my C/Cython. – mgilson Nov 29 '12 at 16:13

I think it's worth mentioning that NumPy slices are non-copying (they create a view onto the underlying array). Therefore, if you can use NumPy arrays for your data, that would solve the problem. On top of that you could get additional performance improvements through vectorization.

  • "if you can use Numpy arrays for your data" is a pretty big constraint here -- You can't .append efficiently to a numpy array. However, this is still a very good point. (+1). – mgilson Nov 29 '12 at 15:27
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    @mgilson: It is a big constraint indeed. NumPy doesn't lends itself to every problem, but when it does work, it works really well. – NPE Nov 29 '12 at 15:33
  • How does that improve on itertools.islice, which is also non-copying? – Kirk Strauser Nov 29 '12 at 16:00
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    @KirkStrauser: it's O(1). – Fred Foo Nov 29 '12 at 16:00
  • @larsmans Wow - it seems you and the OP are right. islice really does start at the first object and call obj->tp_iternext() until it gets to the correct index. I'm kind of shocked that it doesn't do something like if isinstance(obj, list): start = obj[index]; current = index to do an O(1) skip into the middle of the object. – Kirk Strauser Nov 29 '12 at 17:25

If you use PyPy (which you might, since you care about performance), they optimize string slicing to be non-copying: http://doc.pypy.org/en/latest/interpreter-optimizations.html

  • I've often wondered if any implementations took advantage of a strings immutability in that way. Anyway, this still doesn't work for arbitrary sequences. – mgilson Nov 29 '12 at 16:10

islice is a function from itertools module, so it works (and definitely should work) with iterators in general, not only with lists. So, you can't find your optimization in itertools source code, cause it should work with any given iterator.

Right approach in your case is:

def magic_slice(lst, start, end=None):
    for pos in xrange(start, (end or len(lst)):
        yield lst[pos]

takewhile will call your generator "one-by-one", and it will yield new values - the same "speed" as for generic list walking + xrange iterating. So the overhead in such implementation is minimal. If you need more - you can rewrite such function on C level but I don't see many advantages to do this.

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    The fact that it should work with any iterator/iterable does not bar special implementations for sequences. – Fred Foo Nov 29 '12 at 15:59
  • While I agree that itertools should continue to work for any iterable, there are examples in the source code where things are special cased for lists and tuples since you can do it more efficiently when you're using those datatypes. (see the code for list.extend for example) – mgilson Nov 29 '12 at 15:59

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