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I'm trying to implement a system where I'll have key-value structure pairs. They will need to be held in some sort of linear manner (that is, they can be indexed), and once given a position can't be moved, so insertions can only append (and there can't really be much sorting.) Just as an example this is what is had in mind:

Data list:
    0: { "somekey", somevalue }
    1: { "someotherkey", someothervalue }
    n: { "justanotherkey", justanothervalue }

I've designed the system like this so that when a key is searched for, it's index can be cached and then accessed with constant time. Now, since I have no way to predict the order or volume of the data, and I can't sort it, I need ideas on algorithms or data structures that would be better than just a linear seach, but still keep the constraints I'd like.

Anyone got any ideas? I doubt I can speed it up much, but every little bit helps since this will be the core of my system. Thanks in advance!


The idea of using two seperate structures (like a hash table and a dynamic array) was actually my first intention. Unfortunately, this won't work for me because I can't seperate the key and the value. The key will be used for errors and messages, so even once an index has been cached, the original key will still be needed to be accessed. Basically they have to just be an array structs, such as:

struct Entry {
    /* Key is actually a complex struct itself with string, and params */
    Key key;
    Data* data; 
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Why do you need to cache the index? The point of hash tables is to give you O(1) access by key. –  Mike Dunlavey Feb 3 '12 at 0:47
@MikeDunlavey The key is fairly complex (it will be an arbitrary length string, and an array of settings. Several keys can have the same string, but differ by settings.) In this type of case, what would be a good collision free hash table algorithm that could be used? –  Miguel Feb 3 '12 at 3:53
Well, what I would do is just take that big long key and smush it together into something short (like taking a 32 or 64 bit checksum, or maybe a message digest), or maybe just transform it into a long string of bits, or a long string. Whatever the hash function wants. It shouldn't be too expensive cycle-wise, compared to the cycles needed to run the hash, and depending on how many times per second you need to do it. –  Mike Dunlavey Feb 3 '12 at 14:42
... if you do that, rather than cache indices into the table, the hash map doesn't need to be collision-free. –  Mike Dunlavey Feb 3 '12 at 14:48

2 Answers 2

up vote 2 down vote accepted

One option would be to use a combination of a hash table and a dynamic array. The idea is as follows - whenever you insert an element into the data structure, you append it to a dynamic array, then insert the key into a hash table associated with the index into the dynamic array at which the key/value pair resides. That way, to look up by index, you can just look in the dynamic array, and to look up by name, you look up the index in the hash table, then query at that index. This takes expected O(1) time for insertion, deletion, and access, which is much faster than a linear search.

Hope this helps!

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I don't think this will work for me, since I can't seperare the key from the data. See edits to the question, please :) –  Miguel Feb 3 '12 at 0:41
@athlon32- I'm not sure I see why this won't work. If your array holds the key and the value, and if the hash table just stores the key, why wouldn't this data structure work? –  templatetypedef Feb 3 '12 at 0:42
Well, that would work, but might be a bit of overkill if I have say thousands of entries, and although I could just keep pointers to the key, that'd still be a bit more than I would want. :/ That said, I don't expect to get much more out of this question, so I'm probably going to have to use this method... –  Miguel Feb 3 '12 at 0:49
@athlon32- The overhead isn't actually all that much compared to the performance you get. You'll be using roughly 2x the original memory to store the hash table, and the performance benefit only will increase as the number of entries goes up. –  templatetypedef Feb 3 '12 at 0:59
You don't need to separate the key from the data. If you implement a hash function for your key, you can keep your hash index in (hash_value->list_index) form, for minimal overhead. –  comingstorm Feb 3 '12 at 1:30

How about a hashtable key -> index in array?

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