I'm running a very large database (ATM like >5 Million datasets). My database stores custom generated numbers (which and how they compose doesn't really matters here) and the corresponding date to this one. In addition there is a ID stored for every product (means one product can have multiple entries for different dates in my database -> primary key is divided). Now I want to
SELECT those top 10 ID's which got the largest difference in theire numbers in the last two days. Currently I tried to achieve this using JOINS but since I got that much datasets this way is far to slow. How could I speed up the whole operation?
SELECT d1.place,d2.place,d1.ID FROM daily INNER JOIN daily AS d1 ON d1.date = CURDATE() INNER JOIN daily as d2 ON d2.date = DATE_ADD(CURDATE(), INTERVAL -1 DAY) ORDER BY d2.code-d1.code LIMIT 10
EDIT: Thats how my structure looks like
CREATE TABLE IF NOT EXISTS `daily` ( `ID` bigint(40) NOT NULL, `source` char(20) NOT NULL, `date` date NOT NULL, `code` int(11) NOT NULL, `cc` char(2) NOT NULL, PRIMARY KEY (`ID`,`source`,`date`,`cc`) ) ENGINE=MyISAM DEFAULT CHARSET=latin1;
Thats the output of the
id select_type table type possible_keys key key_len ref rows Extra 1 SIMPLE d1 ALL PRIMARY NULL NULL NULL 5150350 Using where; Using temporary; Using filesort 1 SIMPLE d2 ref PRIMARY PRIMARY 8 mytable.d1.ID 52 Using where