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I have a Table foo which records the sightings of bird species. foo_id is its PK, other concerned columns are s_date, latitude and longitude. species_id is its FK. I have indexes on s_date, latitude and longitude, species_id. Table foo has 20 million records and increasing. The following query gives me top 10 latest species sightings in a given lat/long. The query is taking too much time (10+ mins sometimes). How to optimize it? I am using mysql.

SELECT species_id, max(s_date) 
FROM foo 
WHERE latitude >= minlat 
    AND latitude <= maxlat 
    AND longitude >= minlon 
    AND longitude <= max lon 
GROUP BY species_id 
ORDER BY MAX(s_date) DESC LIMIT 0, 10;
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Besides proper indexing, there's not a whole lot to optimize... –  Lieven Keersmaekers Sep 23 '10 at 19:11
is species_id a real FK, with its indexes and constraints, or FK is just its nickname? –  Midhat Sep 23 '10 at 19:13
i think FK "nickname" suits it definition better –  androidharry Sep 23 '10 at 19:24
@ Lieven, what indexing would u suggest here? Explain shows that it is using longitude as key –  androidharry Sep 23 '10 at 19:30

1 Answer 1

I understand that you have separate indexes on the fields that you mention. You may want to try adding a composite index (aka multiple-column index) on (latitude, longitude):

CREATE INDEX ix_foo_lat_lng ON foo (latitude, longitude);

You may want to run an EXPLAIN on your query to see what index(es) MySQL is using. Quoting from the MySQL Manual :: How MySQL Uses Indexes:

Suppose that you issue the following SELECT statement:

mysql> SELECT * FROM tbl_name WHERE col1=val1 AND col2=val2;

If a multiple-column index exists on col1 and col2, the appropriate rows can be fetched directly. If separate single-column indexes exist on col1 and col2, the optimizer will attempt to use the Index Merge optimization, or attempt to find the most restrictive index by deciding which index finds fewer rows and using that index to fetch the rows.

You may also be interested in checking out the following presentation:

The author describes how you can use the Haversine Formula in MySQL to order by proximity and limit your searches to a defined range. He also describes how to avoid a full table scan for such queries, using traditional indexes on the latitude and longitude columns.

1 PDF Version

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thanks for the answer. any suggestions for optimizing the group by, order by part? –  androidharry Sep 23 '10 at 19:32
@androidharry: If the composite index on (latitude, longitude) works, and restricts the result set to just a few number of rows, the GROUP BY should be automatically pretty fast. Right now it's slow because (seeing your comment above) your query is just using the longitude index, so the intermediate result set is very big. –  Daniel Vassallo Sep 23 '10 at 19:39
I am already using something similar as shown in the presentation. I found the formula from movable-type.co.uk/scripts/latlong-db.html. It is using earth's radius for the calculation while in the presentation 69 miles is being used. I was wondering which one is correct? –  androidharry Sep 24 '10 at 6:08
will partitioning help? –  androidharry Sep 27 '10 at 10:40
@androidharry: I don't think it will. Are you still having performance problems? –  Daniel Vassallo Sep 27 '10 at 14:03

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