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I have a set of lots of big long strings that I want to do existence lookups for. I don't need the whole string ever to be saved. As far as I can tell, the set() actually stored the string which is eating up a lot of my memory.

Does such a data structure exist?

done = hash_only_set()
while len(queue) > 0 :
   item = queue.pop()
   if item not in done :

(My queue is constantly being filled by other threads so I have no way of dedupping it at the start).

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btw, are you related to the Tarjan? –  yairchu Aug 26 '09 at 9:48
+1, this question brought very interesting answers. –  e-satis Aug 26 '09 at 10:14
How big is the lot? –  u0b34a0f6ae Aug 26 '09 at 11:20

6 Answers 6

up vote 10 down vote accepted

It's certainly possible to keep a set of only hashes:

done = set()
while len(queue) > 0 :
   item = queue.pop()
   h = hash(item)
   if h not in done :

Notice that because of hash collisions, there is a chance that you consider an item done even though it isn't.

If you cannot accept this risk, you really need to save the full strings to be able to tell whether you have seen it before. Alternatively: perhaps the processing itself would be able to tell?

Yet alternatively: if you cannot accept to keep the strings in memory, keep them in a database, or create files in a directory with the same name as the string.

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would your method store the hash twice? once as the key in the table, and once as the value? –  Paul Tarjan Aug 26 '09 at 10:05
Using a hash... Very clever :-) –  e-satis Aug 26 '09 at 10:13
Using the builtin hash will you have a lot of chances to find collisions (it's only 32 bits). –  tonfa Aug 26 '09 at 10:22
e-satis: set() always uses the hash (but not only the hash), set(), just like dict() is a hash map. –  u0b34a0f6ae Aug 26 '09 at 11:08
@Paul: since it's a set, no it wouldn't store it twice. –  tonfa Aug 26 '09 at 11:19

You can use a data structure called Bloom Filter specifically for this purpose. A Python implementation can be found here.

EDIT: Important notes:

  1. False positives are possible in this data structure, i.e. a check for the existence of a string could return a positive result even though it was not stored.
  2. False negatives (getting a negative result for a string that was stored) are not possible.

That said, the chances of this happening can be brought to a minimum if used properly and so I consider this data structure to be very useful.

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With a bloom filter, false positive are possible, which I think rules it out for what the OP wants. I'm sure he wouldn't want one of his items not to be processed because of a false positive. –  Virgil Dupras Aug 26 '09 at 9:31
All solutions which do not store the entire strings will have a chance of false positives, but this one has low memory usage and can be adjusted to your needs. –  spatz Aug 26 '09 at 10:30
Thanks for the literature. –  u0b34a0f6ae Aug 26 '09 at 10:53

If you use a secure (like SHA-256, found in the hashlib module) hash function to hash the strings, it's very unlikely that you would found duplicate (and if you find some you can probably win a prize as with most cryptographic hash functions).

The builtin __hash__() method does not guarantee you won't have duplicates (and since it only uses 32 bits, it's very likely you'll find some).

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If Python's string hash holds up, it might be reasonable to use the string hash with <65000 strings: stackoverflow.com/questions/1303021/… –  u0b34a0f6ae Aug 26 '09 at 10:46
Using a secure hash is not necessary. Secure != low probability of collision. Secure just means it is unfeasible to produce a certain hash with "wrong" data. –  truppo Aug 26 '09 at 11:10
@truppo If you look at en.wikipedia.org/wiki/Cryptographic_hash_function you'll see that the low probability of collision is part of the properties of an ideal cryptographic hash. –  tonfa Aug 26 '09 at 11:16
@kaizer.se: He said he had a lot of strings :) –  tonfa Aug 26 '09 at 11:18
64K strings of length, say 100 characters => at least 6400 Kilobytes; not that prohibitive and it is probably much more to be a memory problem so you are right. –  u0b34a0f6ae Aug 26 '09 at 11:21

You need to know the whole string to have 100% certainty. If you have lots of strings with similar prefixes you could save space by using a trie to store the strings. If your strings are long you could also save space by using a large hash function like SHA-1 to make the possibility of hash collisions so remote as to be irrelevant.

If you can make the process() function idempotent - i.e. having it called twice on an item is only a performance issue, then the problem becomes a lot simpler and you can use lossy datastructures, such as bloom filters.

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This is a very very good suggestion. You could save all the string memory just for the outside (promille or less?) extra CPU cost. –  u0b34a0f6ae Aug 26 '09 at 11:34

You would have to think about how to do the lookup, since there are two methods that the set needs, __hash__ and __eq__.

The hash is a "loose part" that you can take away, but the __eq__ is not a loose part that you can save; you have to have two strings for the comparison.

If you only need negative confirmation (this item is not part of the set), you could fill a Set collection you implemented yourself with your strings, then you "finalize" the set by removing all strings, except those with collisions (those are kept around for eq tests), and you promise not to add more objects to your Set. Now you have an exclusive test available.. you can tell if an object is not in your Set. You can't be certain if "obj in Set == True" is a false positive or not.

Edit: This is basically a bloom filter that was cleverly linked, but a bloom filter might use more than one hash per element which is really clever.

Edit2: This is my 3-minute bloom filter:

class BloomFilter (object):
    Let's make a bloom filter

    __contains__ has false positives, but never false negatives
    def __init__(self, hashes=(hash, )): 
        self.hashes = hashes
        self.data = set()
    def __contains__(self, obj):
        return all((h(obj) in self.data) for h in self.hashes)
    def add(self, obj):
        self.data.update(h(obj) for h in self.hashes)
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As has been hinted already, if the answers offered here (most of which break down in the face of hash collisions) are not acceptable you would need to use a lossless representation of the strings.

Python's zlib module provides built-in string compression capabilities and could be used to pre-process the strings before you put them in your set. Note however that the strings would need to be quite long (which you hint that they are) and have minimal entropy in order to save much memory space. Other compression options might provide better space savings and some Python based implementations can be found here

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