I'm working with large number of rows in db(MySQL, innoDb engine, approx 20 milion rows) and I need to perform fuzzy like searching quite a lot. For some reasons I decided to use jaro_winkler algorithm and for performance issues I implemented it as a function in SQL. Application is written in Python and there is a weird situation I came across today:
Comparing these two queries (called from mysql shell not via Orm or etc):
SELECT * FROM products WHERE jaro_winkler(code, '78-1747') > 0.7 AND code LIKE '%78%';
SELECT * FROM products WHERE code LIKE '%78%' AND jaro_winkler(code, '78-1747') > 0.7;
I noticed that first one is at least 10 times slower than the second one. It seems logical at first, but as I checked the order of conditions in WHERE should not matter.
So my question - is it the normal behaviour ?
And has someone (from practical experience) can recommend a best algorithm or function to perform fuzzy searching ? I know about damerau-levenshtein metric, but it turns to be slower than my current solution.
EDIT: After using explain:
I created sample database really quickly and used both queries:
for the first query:
id select_type table type possible_keys key key_len ref rows Extra 1 SIMPLE products ALL NULL NULL NULL NULL 4166 Using where
query time: ~ 2 seconds
explain for the second query:
id select_type table type possible_keys key key_len ref rows Extra 1 SIMPLE products ALL NULL NULL NULL NULL 4332 Using where
query time: ~ 0.1 second