I have the following tables in my game's database:
rankedUp (image_id, user_id, created_at) globalRank (image_id, rank ) matchups (user_id, image_id1, image_id2)
All image_ids in globalRank table are assigned a rank which is a float from 0 to 1
Assuming I have the current logged in user's "user_id" value, I'm looking for a query that will return a pair of image ids (imageid1, imageid2) such that:
- imageid1 has lower rank than imageid2 but is also the next highest rank less than imageid2
- matchups table doesn't have (userid,imageid1,imageid2) or (userid,imageid2,imageid1)
- rankedup table doesn't have (userid,imageid1) or if it does, the createdat column is older than X hours
What I have so far for requirement 1 is this:
SELECT lowerImages.image_id AS lower_image, higherImages.image_id AS higher_image FROM global_rank AS lowerImages, global_rank AS higherImages WHERE lowerImages.rank < higherImages.rank AND lowerImages.image_id = ( SELECT image_id FROM ( SELECT image_id FROM global_rank WHERE rank < higherImages.rank ORDER BY rank DESC LIMIT 1 , 1 ) AS tmp )
but it doesnt work because I can't reference higherImages.rank in the subquery.
Does anyone know how I could satisfy all of those requirements in one query?
Thanks for your help
I now have this query but I don't know about the efficiency and I need to test it for correctness:
SELECT lowerImages.image_id AS lower_image, max(higherImages.image_id) AS higher_image FROM global_rank AS lowerImages, global_rank AS higherImages WHERE lowerImages.rank < higherImages.rank AND 1 NOT IN (select 1 from ranked_up where lowerImages.image_id = ranked_up.image_id AND ranked_up.user_id = $user_id AND ranked_up.created_at > DATE_SUB(NOW(), INTERVAL 1 DAY)) AND 1 NOT IN ( SELECT 1 from matchups where user_id = $userId AND lower_image_id = lowerImages.image_id AND higher_image_id = higherImages.image_id UNION SELECT 1 from matchups where user_id = $user_id AND lower_image_id = higherImages.image_id AND higher_image_id = lowerImages.image_id ) GROUP BY 1
the "not in" statements I'm using are all indexed so they should run fast. The efficiency problem I have is the group by and selection of the global_rank tables
This question is a revision of Pretty Complex SQL Query, which should no longer be answered.