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I have 2 tables

activity (activity_id (PRIMARY), user_id (INDEX), created_at (INDEX))
friends (user_id (PRIMARY), friend_id (PRIMARY), approved (INDEX))

Indexes:

friends - (user_id, approved)

I would like to like to write the following query:

SELECT activity_id, user_id, created_at
FROM activity
WHERE activity.user_id IN 
(SELECT friend_id from friends where approved = 1 and user_id = 1) 
OR activity.user_id = 1
ORDER by created_at DESC
LIMIT 15

Explanation: The query will pull data from the activity table for all the friends of user_id (1), and also include their activity.

For users with less than 10 friends, the query slows down (>15 seconds), but users with high friends - this query is very quick. I'm not sure why this is happening, can anyone provide any guidance or perhaps rewrite the query?

UPDATE: Explain

Both tables are using PRIMARY as the key, with 15 rows returned for activity, while the other SUBQUERY is using PRIMARY as well with 1 row.

share|improve this question
    
It might help to provide the EXPLAIN SELECT ... output for both cases – user83358 Aug 6 '12 at 19:24
    
They both return the same, I've just added it as it doesn't really copy well into the form – gregavola Aug 6 '12 at 19:29
    
According to the explain they should be no different then :) Have you tried using a join instead? Is there anything else running on the system that could degrade performance? Are the tables very large? Do they regularly have updates and deleted, or just inserts? What is a large number of friends? Note that testing may be affected by query caching if you have run some of the queries before. – user83358 Aug 6 '12 at 19:50

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