I have a MySQL database with one large table (5 million rows say). This table has several fields for actual data, an optional comment field, and fields to record when the row was first added and when the data is deleted. To simplify to one "data" column, it looks a bit like this:
+----+------+---------+---------+----------+ | id | data | comment | created | deleted | +----+------+---------+---------+----------+ | 1 | val1 | NULL | 1 | 2 | | 2 | val2 | nice | 1 | NULL | | 3 | val3 | NULL | 2 | NULL | | 4 | val4 | NULL | 2 | 3 | | 5 | val5 | NULL | 3 | NULL |
This schema allows us to look at any past version of the data thanks to the
deleted fields e.g.
SET @version=1; SELECT data, comment FROM MyTable WHERE created <= @version AND (deleted IS NULL OR deleted > @version); +------+---------+ | data | comment | +------+---------+ | val1 | NULL | | val2 | nice |
The current version of the data can be fetched more simply:
SELECT data, comment FROM MyTable WHERE deleted IS NULL; +------+---------+ | data | comment | +------+---------+ | val2 | nice | | val3 | NULL | | val5 | NULL |
CREATE TABLE `MyTable` ( `id` int(10) unsigned NOT NULL AUTO_INCREMENT, `data` varchar(32) NOT NULL, `comment` varchar(32) DEFAULT NULL, `created` int(11) NOT NULL, `deleted` int(11) DEFAULT NULL, PRIMARY KEY (`id`), KEY `data` (`data`,`comment`) ) ENGINE=InnoDB;
Periodically a new set of data and comments arrives. This can be fairly large, half a million rows say. I need to update
MyTable so that this new data set is stored in it. This means:
- "Deleting" old rows. Note the "scare quotes" - we don't actually delete rows from
MyTable. We have to set the
deletedfield to the new version
N. This has to be done for all rows in
MyTablethat are in the previous version
N-1, but are not in the new set.
- Inserting new rows. All rows that are in the new set and are not in version
MyTablemust be added as new rows with the
createdfield set to the new version
Some rows in the new set may match existing rows in
MyTable at version
N-1 in which case there is nothing to do.
My current solution
Given that we have to "diff" two sets of data to work out the deletions, we can't just read over the new data and do insertions as appropriate. I can't think of a way to do the diff operation without dumping all the new data into a temporary table first. So my strategy goes like this:
-- temp table uses MyISAM for speed. CREATE TEMPORARY TABLE tempUpdate ( `data` char(32) NOT NULL, `comment` char(32) DEFAULT NULL, PRIMARY KEY (`data`), KEY (`data`, `comment`) ) ENGINE=MyISAM; -- Bulk insert thousands of rows INSERT INTO tempUpdate VALUES ('some new', NULL), ('other', 'comment'), ... -- Start transaction for the update BEGIN; SET @newVersion = 5; -- Worked out out-of-band -- Do the "deletions". The join selects all non-deleted rows in MyTable for -- which the matching row in tempUpdate does not exist (tempUpdate.data is NULL) UPDATE MyTable LEFT JOIN tempUpdate ON MyTable.data = tempUpdate.data AND MyTable.comment <=> tempUpdate.comment SET MyTable.deleted = @newVersion WHERE tempUpdate.data IS NULL AND MyTable.deleted IS NULL; -- Delete all rows from the tempUpdate table that match rows in the current -- version (deleted is null) to leave just new rows. DELETE tempUpdate.* FROM MyTable RIGHT JOIN tempUpdate ON MyTable.data = tempUpdate.data AND MyTable.comment <=> tempUpdate.comment WHERE MyTable.id IS NOT NULL AND MyTable.deleted IS NULL; -- All rows left in tempUpdate are new so add them. INSERT INTO MyTable (data, comment, created) SELECT DISTINCT tempUpdate.data, tempUpdate.comment, @newVersion FROM tempUpdate; COMMIT; DROP TEMPORARY TABLE IF EXISTS tempUpdate;
The question (at last)
I need to find the fastest way to do this update operation. I can't change the schema for
MyTable, so any solution must work with that constraint. Can you think of a faster way to do the update operation, or suggest speed-ups to my existing method?
I have a Python script for testing the timings of different update strategies and checking their correctness over several versions. It's fairly long but I can edit into the question if people think it would be useful.