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The python wiki says: "Membership testing with sets and dictionaries is much faster, O(1), than searching sequences, O(n). When testing "a in b", b should be a set or dictionary instead of a list or tuple."

I've been using sets in place of lists whenever speed is important in my code, but lately I've been wondering why sets are so much faster than lists. Could anyone explain, or point me to a source that would explain, what exactly is going on behind the scenes in python to make sets faster?

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2  
A nudge -- hash table –  Austin Salonen Jan 19 '12 at 16:07

6 Answers 6

up vote 4 down vote accepted

Sets are implemented using hash tables. Whenever you add an object to a set, the position within the memory of the set object is determined using the hash of the object to be added. When testing for membership, all that needs to be done is basically to look if the object is at the position determined by its hash, so the speed of this operation does not depend on the size of the set. For lists, in contrast, the whole list needs to be searched, which will become slower as the list grows.

This is also the reason that sets do not preserve the order of the objects you add.

Note that sets aren't faster than lists in general -- membership test is faster for sets, and so is removing an element. As long as you don't need these operations, lists are often faster.

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list: Imagine you are looking for your socks in your closet, but you don't know in which drawer your socks are, so you have to search drawer by drawer until you find them (or maybe you never do). That's what we call O(n), because in the worst scenario, you will look all your drawers (where n is the number of drawers).

set: Now, imagine your still looking for your socks in your closet, but now you know in which drawer your socks are, say in the 3rd drawer. So, you will just search in the 3rd drawer, instead of searching in all drawers. That's what we call O(1), because in the worst scenarario you will look in just one drawer.

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Helpful explanation of lists and sets! –  chrtan May 1 '12 at 19:18
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This is the way I can understand anything. Model Answer. –  Nagri Apr 30 at 8:05

While I have not measured anything performance related in python so far, I'd still like to point out that lists are often faster.

Yes, you have O(1) vs. O(n). But always remember that this gives information only about the asymptotic behavior of something. That means if your n is very high O(1) will always be faster - theoretically. In practice however n often needs to be much bigger than your usual data set will be.

So sets are not faster than lists per se, but only if you have to handle a lot of elements.

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do you mind to give some words on why you downvoted my answer? I think it's an important note. But if I miss something I'm eager to learn ;D –  Mene Feb 19 '12 at 18:06

A list must be searched one by one, where a set or dictionary has an index for faster searching.

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I think you need to take a good look at a book on data structures. Basically, Python lists are implemented as dynamic arrays and sets are implemented as a hash tables.

The implementation of these data structures gives them radically different characteristics. For instance, a hash table has a very fast lookup time but cannot preserve the order of insertion.

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Python uses hashtables, which have O(1) lookup.

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