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Suppose I have a list of lists of elements which are all the same (i'll use ints in this example)

[range(100)[::4], range(100)[::3], range(100)[::2], range(100)[::1]]

What would be a nice and/or efficient way to take the intersection of these lists (so you would get every element that is in each of the lists)? For the example that would be:

[0, 12, 24, 36, 48, 60, 72, 84, 96]
share|improve this question
up vote 4 down vote accepted

Use sets, which have an intersection method.

>>> s = set()
>>> s.add(4)
>>> s.add(5)
>>> s
set([4, 5])
>>> t = set([2, 4, 9])
>>> s.intersection(t)

For your example, something like

>>> data = [range(100)[::4], range(100)[::3], range(100)[::2], range(100)[::1]]
>>> sets = map(set, data)
>>> print set.intersection(*sets)
set([0, 96, 36, 72, 12, 48, 84, 24, 60])
share|improve this answer
I'll put this as the best answer, because it's a little faster than my own (which is in turn twice as fast as the ones using reduce) and because the neat thing with the multiple sets at once. Thanks! – thepandaatemyface May 23 '10 at 21:45
Alternatively, set.intersection(set(x) for x in data) – David Z May 23 '10 at 21:45
@thepandaatemyface, I'm always glad to hear my code performs well, but always a bit suspicious as well. I'm sure it depends on the input a lot and you don't have time to have ran it on truly huge input if size of input was the issue. If I was trying to optimize for speed in an inner loop on large data, I would consider trying set(datas[0]).intersection(*datas[1:]) out and timing it, which has a nice ring of performance to me. – Mike Graham May 23 '10 at 21:52
are you sure that works, david? – thepandaatemyface May 23 '10 at 21:52
@Mike Graham, what I meant to say is: of all the elegant solutions posted here, yours was the fastest. I quickly tested it with a [[randint(0, 100000) for i in range(1000)] for i in range(100)] as my data. It's not very scientific, but it seems to keep giving yours as the fastest. – thepandaatemyface May 23 '10 at 21:56

I think the built-in set module should do the trick.

>>> elements = [range(100)[::4], range(100)[::3], range(100)[::2], range(100)[::1]]
>>> sets = map(set, elements)
>>> result = list(reduce(lambda x, y: x & y, sets))
>>> print result
[0, 96, 36, 72, 12, 48, 84, 24, 60]
share|improve this answer
You beat me to the punch. I'll leave my answer up as it applies reduce slightly differently, but I'm glad to see that other people think functionally too. :-) – Samir Talwar May 23 '10 at 21:29
Too many schools skip the (imho mandatory) introductory functional programming course by skipping straight to Java. Come on guys, SCIP is about the best introductory CS book ever... – Paul McMillan May 23 '10 at 21:34
Note that set is a type, not a module. (The set type used to be in a module called sets, but it is long deprecated.) – Mike Graham May 23 '10 at 21:38
although it's very elegant and works just fine, this seems to be twice as slow as the solutions not using reduce. Anyone have any ideas why? – thepandaatemyface May 23 '10 at 21:48
It could be due to having to build more intermediary sets. – Mike Graham May 24 '10 at 0:50

Convert them to sets and use the set.intersection method, reducing over the list of sets:

xs = [range(100)[::4], range(100)[::3], range(100)[::2], range(100)[::1]]
reduce(set.intersection, [set(x) for x in xs])

reduce is a functional programming device that iterates through any iterable and applies the function provided to the first two elements, then to the result and the next, and then the result of that and the next, and so on.

share|improve this answer
set.intersection takes an arbitrary number of iterables as arguments (in recent Pythons). If I'm not mistaken, this can be implemented with better algorithmic complexity than the reduce method provides. – Mike Graham May 23 '10 at 21:42
@Mike: That's brilliant. I had no idea. – Samir Talwar May 24 '10 at 12:09

I'm going to answer my own question:

lists =  [range(100)[::4],range(100)[::3],range(100)[::2],range(100)[::1]]

out = set(lists[0])
for l in lists[1:]:
    out = set(l).intersection(out)

print out


print list(out)
share|improve this answer
l = [range(100)[::4], range(100)[::3], range(100)[::2], range(100)[::1]]
l = [set(i) for i in l]
intersect = l[0].intersection(l[1])
for i in l[2:]:
    intersect = intersect.intersection(i)
share|improve this answer
This would raise NameError ? – Mike Graham May 23 '10 at 21:43
I don't think so, @MikeGraham. Perhaps you are referring to the code that was here before I edited. I ran the old code and got an error, but this code has been tested and woks fine – inspectorG4dget May 24 '10 at 5:01
@inspectG4dget, I was referring to the code before it was edited (my comment appears at least as old as the edit?) This code will not exibit that error, though I must confess I find your design a bit odd. – Mike Graham May 24 '10 at 5:32
@MikeGraham: I saw the timing of the edit and the comment, which is why I suggested that your comment may have been posted before the edit. But I am curious as to why and how you would change the design of this. – inspectorG4dget May 24 '10 at 19:21
@MikeGraham: Very true. I had thought of doing this, but I wanted to be more transparent with my code - especially since I did not document it at all. I don't know how proficient @thepandaatemyface is and therefore wanted to keep this as simple as possible. – inspectorG4dget May 24 '10 at 23:27

You can treat them as sets and use set.intersection():

lists = [range(100)[::4], range(100)[::3], range(100)[::2], range(100)[::1]]
sets = [set(l) for l in lists]

isect = reduce(lambda x,y: x.intersection(y), sets)
share|improve this answer
This would raise AttributeError? – Mike Graham May 23 '10 at 21:43
Oops, intersect -> intersection (fixed). – Andrew Jaffe May 23 '10 at 22:11

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