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If I do:

result = reduce(operator.and_, [False] * 1000)

Will it stop after the first result? (since False & anything == False)


result = reduce(operator.or_, [True] * 1000)
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4 Answers 4

up vote 19 down vote accepted

It doesn't. Your alternative in this case is any and all.

result = reduce(operator.and_, [False] * 1000)
result = reduce(operator.or_, [True] * 1000)

can be replaced by

result = all([False] * 1000)
result = any([True] * 1000)

which do short circuit.

The timing results show the difference:

In [1]: import operator

In [2]: timeit result = reduce(operator.and_, [False] * 1000)
10000 loops, best of 3: 113 us per loop

In [3]: timeit result = all([False] * 1000)
100000 loops, best of 3: 5.59 us per loop

In [4]: timeit result = reduce(operator.or_, [True] * 1000)
10000 loops, best of 3: 113 us per loop

In [5]: timeit result = any([True] * 1000)
100000 loops, best of 3: 5.49 us per loop
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You're right. any() and all() seem to be exactly what I need (and probably clearer too). How did you do that timing? – Brendan Long Aug 25 '10 at 22:34
I am using ipython and its timeit command. But Python has a timeit module. So you can do python -mtimeit "result = any([True] * 10)" from the command line for timing. – Muhammad Alkarouri Aug 25 '10 at 22:46

Not only does reduce() not short-circuit, it cannot possibly short-circuit over all the items being reduced, because it only considers the items two at a time. Additionally, it has no idea of the conditions under which the function being used short-circuits. (It would be sorta nifty if functions could have a property that indicates the value at which they begin to short-circuit, which reduce() could then recognize and use, but they don't.)

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This is why Lisp users love Lisp so much- because all functions are data, it's (in principal) possible to do this kind of detection. – Lucretiel May 31 at 0:43

It may well be possible (see fate of reduce) that an alternative reduce implementation will do a good job.

This idea has perfectly worked for me to make things more transparent in the design.

def ipairs(seq):
    prev = None
    for item in seq:
        if prev is not None:
            yield (prev, item)
        prev = item

def iapply(seq, func):
    for a, b in ipairs(seq):
        yield func(a, b)

def satisfy(seq, cond):
    return all(iapply(seq, cond))

def is_uniform(seq):
    return satisfy(seq, lambda a, b: a == b)

As you see reduce is broken into iapply <- ipairs.

Please note it is not equivalent to

def ireduce(seq, func):
    prev = None
    for item in seq:
        if prev is None:
            prev = item
            prev = func(prev, item)
    return prev
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Bear in mind that short circuit evaluation is not always what you want. "Fixing" reduce to short circuit would be a mistake for that reason. For example, I recently had to change my use of all() to reduce() while processing a list of forms in django: I want to report any is_valid() problems, not just the first one.

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it could use a keyword argument for the short-circuit criteria, other builtins do : reduce (operator.or, mylist, key=lambda x : :x < 0) – LBarret Jan 30 '12 at 14:39

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