I have a fairly large InnoDB table which contains about 10 million rows (and counting, it is expected to become 20 times that size). Each row is not that large (131 B on average), but from time to time I have to delete a chunk of them, and that is taking ages. This is the table structure:
CREATE TABLE `problematic_table` ( `id` bigint(20) unsigned NOT NULL AUTO_INCREMENT, `taxid` int(10) unsigned NOT NULL, `blastdb_path` varchar(255) NOT NULL, `query` char(32) NOT NULL, `target` int(10) unsigned NOT NULL, `score` double NOT NULL, `evalue` varchar(100) NOT NULL, `log_evalue` double NOT NULL DEFAULT '-999', `start` int(10) unsigned DEFAULT NULL, `end` int(10) unsigned DEFAULT NULL, PRIMARY KEY (`id`), KEY `taxid` (`taxid`), KEY `query` (`query`), KEY `target` (`target`), KEY `log_evalue` (`log_evalue`) ) ENGINE=InnoDB AUTO_INCREMENT=7888676 DEFAULT CHARSET=latin1;
Queries that delete large chunks from the table are simply like this:
DELETE FROM problematic_table WHERE problematic_table.taxid = '57';
A query like this just took almost an hour to finish. I can imagine that the index rewriting overhead makes these queries very slow.
I am developing an application that will run on pre-existing databases. I most likely have no control over server variables unless I make changes to them mandatory (which I would prefer not to), so I'm afraid suggestions that change those are of little value.
I have tried to
INSERT ... SELECT those rows that I don't want to delete into a temporary table and just dropping the rest, but as the ratio of to-delete vs. to-keep shifts towards to-keep, this is no longer a useful solution.
This is a table that may see frequent
SELECTs in the future, but no
UPDATEs. Basically, it's a logging and reference table that needs to drop parts of its content from time to time.
Could I improve my indexes on this table by limiting their length? Would switching to MyISAM help, which supports
DISABLE KEYS during transactions? What else could I try to improve
Edit: One such deletion would be in the order of about one million of rows.