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I've got a large (1 million+ rows) MySQL InnoDB table with the following columns:

id int(11)
name varchar(255)

If I perform the following query it takes a very long time (Well over 3 minutes [I got bored whilst waiting and stopped it]).

SELECT name FROM large_table WHERE name LIKE '%peter%'

I have added an index on the name column which has made it perform much better 0.009 seconds

I just want to confirm that this is this a suitable work-around for the issue? Or are you reading this cringing?

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I'm a novice at optimization, but I'm surprised an index on an innodb table improved your LIKE query... I would have suggested a MySQL table with a fulltext index and using a fulltext search dev.mysql.com/doc/refman/5.0/en/fulltext-search.html –  Aerik Dec 16 '11 at 17:49
I'm surprised too, I thought LIKE queries starting with % defeated the index and always resulted in a table scan! –  Martin Dec 16 '11 at 17:51
Don't forget that MySQL has an efficient cache. You MIGHT be getting an amazing performance boost simply because it already knows how to find name like '%peter%' Rely more on explain plan, and make sure to change up your search conditions regularly when trying to optimize queries. –  Brian Hoover Dec 16 '11 at 17:52
I would also suggest a fulltext index. –  Fluff Dec 16 '11 at 18:30
Thanks guys. I have tried a lot of different queries to ensure it isn't being cached and, as you all have said, surprisingly it has made a difference. The reason I didn't initially chose a full text search is because I need partial word matching. I suppose in an ideal world I would implement something like Sphinx however due to project deadlines I do not have time to do that. Thank you all for your help. –  Tribal Dec 17 '11 at 11:28

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