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Continuing some themes in this question, I would like to know if I could get a performance of O(log n) on the size of the table from somes sqlite queries.

The first would get the mth element of a table ordered by weight:

select id, weight from items order by weight limit 1 offset m

The second would do the opposite, get mth position of an elment of a given weight:

select count(id) from items where weight > x

'items' would be indexed by weight and id if necessary. Weight and id are unique but not necessarily distributed uniformly. m and x are arbitrary. O(log ) might seem extreme but it is what one could get from a correctly hacked b-tree and I would like to avoid rolling my own.

If this wouldn't work, are there any in-memory databases or key-value databases that could do this?

Actually, I think that this is answered here and here - of course SQLite will perform faster than standard databases and if they do O(log n) here, so should it.

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I'm not sure whether to close this or not. It's not identical to an existing question but the answers to existing questions make this question's answers clear. –  Joe Soul-bringer Dec 9 '09 at 1:34
Have you bothered to benchmark your query with varying data sizes? Without your dataset, schema & query, no one here can tell you with any definitive / authoritative answer. For instance, if your primary key is a string, then no. You cannot hope for O(log N). –  pestilence669 Dec 10 '09 at 2:43
I don't understand the question title or the tags -- what does this have to do with joins? –  Eric Dec 12 '09 at 16:01

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