This is my query:
SELECT DISTINCT id, stat, date, user_id FROM data AS T1 WHERE 2.0 >= ( SELECT avg1 FROM ( SELECT stat, AVG(value) AS avg1 FROM data WHERE date > SUBTIME(NOW(), MAKETIME(168, 0, 0)) GROUP BY stat_name) b1 WHERE stat = T1.stat AND id = T1.id)/ ( SELECT avg2 FROM ( SELECT stat, AVG(value) AS avg2 FROM cata WHERE date > SUBTIME(NOW(), MAKETIME(336, 0, 0)) AND date <= SUBTIME(NOW(), MAKETIME(168, 0, 0)) GROUP BY stat) b2 WHERE stat = T1.stat AND id = T1.id) ORDER BY id;
The idea is that I create a table of stats whose average value this week is more than twice their average value last week.
My problem is this: I want to select a column diff_values that represents MAX(value this week) - MAX(value last week) for each stat, representing the increase over the past week. (Basically, an entry for stat made today is the stat yesterday plus the increase.) I can't think of a way to do it without creating two subqueries similar to those in the WHERE clause, but doing so would make the query execution time really long, since data is a pretty big table.
Is there any way to split the math between the existing subqueries?