Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Given the following -

drop table if exists learning_indexes;

create table learning_indexes (
    id INT NOT NULL,
    col1 CHAR(30),
    col2 CHAR(30),
    col3 CHAR(30), 
    PRIMARY KEY (id),
    index idx_col1 (col1),
    index idx_col1_col2 (col1,col2)
);

explain

select
    col1,col2
from
    learning_indexes
where
    col1 = 'FOO'
    and col2 = 'BAR'

Why does MySQL pick idx_col1 over idx_col1_col2?

+----+-------------+------------------+------+------------------------+----------+---------+-------+------+-------------+
| id | select_type | table            | type | possible_keys          | key      | key_len | ref   | rows | Extra       |
+----+-------------+------------------+------+------------------------+----------+---------+-------+------+-------------+
|  1 | SIMPLE      | learning_indexes | ref  | idx_col1,idx_col1_col2 | idx_col1 | 91      | const |    1 | Using where |
+----+-------------+------------------+------+------------------------+----------+---------+-------+------+-------------+

This is my version information -

+-------------------------+---------------------+
| Variable_name           | Value               |
+-------------------------+---------------------+
| innodb_version          | 1.1.8               |
| protocol_version        | 10                  |
| slave_type_conversions  |                     |
| version                 | 5.5.29              |
| version_comment         | Source distribution |
| version_compile_machine | i386                |
| version_compile_os      | osx10.7             |
+-------------------------+---------------------+
share|improve this question
add comment

2 Answers

up vote 0 down vote accepted

I agree with Floaf that MySQL sometimes chooses the wrong indexes, but I don't think this is the case here. MySQL includes the number of rows and the data structure into its decision which index to choose.

For a rather simple query like this one, MySQL will likely not use any index at all if the table contains less than about 100 rows or is even empty. It seems to be computationally cheaper just to scan all table rows than to use the index. In your explain plan, you can see that the "key" column says idx_col1, but the "Extra" column doesn't say "using index".

If the table contains more than about 100 rows, MySQL will start using idx_col1. The explain plan will show you this. Only when there are more than about 100 rows that actually contain the string 'FOO' in col1, MySQL will notice that using idx_col1 doesn't reduce the tentative result set enough, since it will have to scan the remaining 100 rows for the value 'BAR' in col2. Therefore, it will switch to idx_col1_col2.

I'm not entirely sure how MySQL decides this quickly which index to use, but I think it has something to do with heuristics and the cardinality of the individual rows in the index, i.e. how "selective" an indexed row is.

share|improve this answer
    
thanks. I thought "using index" implies that it is retrieving the select values from the index? Try two variations, comment out idx_col1. Also, switch "col1,col2" to *. Can you share where you got the 100 rows information from? –  Josh Unger Apr 10 '13 at 17:03
    
MySQL Doc says that if the Extra column using where AND using index, it means the index is being used to perform lookups of key values (dev.mysql.com/doc/refman/5.5/en/…). –  Marcellus Apr 10 '13 at 17:48
    
For 100 (or more) rows of data, I made id to be an auto_increment primary key. Then I added 3 rows with random values. To multiply, I did something like INSERT INTO learning_indexes (col1, col2, col3) SELECT CONCAT(col2, 'q'), CONCAT(col1, 'z'), CONCAT(col3, 'c') FROM learning_indexes; repeatedly. This doubles the number of rows with each execution and somehow shuffles and modifies newly inserted row values. –  Marcellus Apr 10 '13 at 17:53
add comment

I can't explain your case here, but sometimes MySQL simply chooses the "wrong" index. Maybe the database is small enough that it understands that it does not make any difference in this case.

This query is so simple that it should understand which index is the most appropriate.

I can say by experience that when the queries are getting more complex and especially when the tables grow very large, MySQL sometimes (random?) decides to pick another index and go with that and then queries can go from 0.01 second to 100+ seconds, so if you know which index is the right one, use FORCE INDEX(). Even if you use USE INDEX() MySQL sometimes chooses another index with various devestating result to the query speed.

share|improve this answer
add comment

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.