I have 17 million points of interest in a MySQL table (v5.0.77), with several fields, including name,lat,lng, and category. Lat and Long are of type Decimal(10,6), and Category is a Small Integer. I have an multi-column index on lat,lng,category.
My queries to find points within 2km of location take a long time - on average about 120 seconds.
If I query from exactly the same center point, I can tell that the query is cached b/c the query executes in less than second. As soon as I change the center point, the query takes a long time again.
I do my calculation to determine the bounds of the area I'm searching outside of the query, versus a distance calculation within it, which is the source of a lot of reports you see about similar queries taking a long time.
Here's an example from the Slow Query Log:
Query_time: 177 Lock_time: 0 Rows_sent: 2841 Rows_examined: 28691 SELECT p.id, p.name AS name, p.lat, p.lng, c.name AS category FROM poi AS p LEFT JOIN categories AS c ON p.category = c.id WHERE p.lat BETWEEN 37.524993 AND 37.560965 AND p.lng BETWEEN -77.491776 AND -77.446408;
I feel like the server is tuned correctly - I have enough memory, it's just me using it for development, I feel I've tweaked MySQL settings appropriately.
This has really stumped me for a while now. Shouldn't MySQL be able to very efficiently scan the index I've created? Should I convert to spatial data types, or use Sphinx to improve query speed? Any thoughts/perspective much appreciated.