I have a table of time-series data with the following setup:
CREATE TABLE `data_raw` ( `id` int(20) NOT NULL AUTO_INCREMENT, `gid` int(6) DEFAULT NULL, `ip` int(20) DEFAULT NULL, `uid` int(20) DEFAULT NULL, `lat` float DEFAULT NULL, `lng` float DEFAULT NULL, `shape` int(1) DEFAULT NULL, `color` int(1) DEFAULT NULL, `timestamp` timestamp NOT NULL DEFAULT CURRENT_TIMESTAMP ON UPDATE CURRENT_TIMESTAMP, PRIMARY KEY (`id`), KEY `gid` (`gid`), KEY `TimeStamp` (`timestamp`), KEY `LatLng` (`lat`,`lng`) ) ENGINE=MyISAM AUTO_INCREMENT=3939884 DEFAULT CHARSET=latin1;
It now has 3.5 Million rows and running the following query based on the indexed 'timestamp' column takes over 30 seconds:
SELECT COUNT(*), `timestamp` FROM data_raw GROUP BY MONTH(`timestamp`), DAY(`timestamp`), HOUR(`timestamp`)
I'm pretty sure that this isn't that hard a query for MySQL. Any help on this would be majorly appreciated!