Indexes are used to find rows with specific column values
fast. Without an index, MySQL has to start with the first record
and then read through the whole table to find the relevant
rows. The larger the table, the more this costs. If the table has an index
for the columns in question, MySQL can quickly determine the position to
seek to in the middle of the data file without having to look at all the
data. If a table has 1,000 rows, this is at least 100 times faster than
reading sequentially. Note that if you need to access almost all 1,000
rows, it is faster to read sequentially, because that minimizes disk seeks.
Most MySQL indexes (PRIMARY KEY, UNIQUE, INDEX, and
FULLTEXT) are stored in B-trees. Exceptions are that indexes on
spatial column types use R-trees, and MEMORY (HEAP) tables
support hash indexes.
Strings are automatically prefix- and end-space compressed.
In general, indexes are used as described in the following discussion.
Characteristics specific to hash indexes (as used in MEMORY tables)
are described at the end of this section.
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To quickly find the rows that match a
WHERE clause.
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To eliminate rows from consideration. If there is a choice between multiple
indexes, MySQL normally uses the index that finds the smallest number of
rows.
-
To retrieve rows from other tables when performing joins.
-
To find the
MIN() or MAX() value for a specific indexed column
key_col. This is optimized by a preprocessor that checks whether you are
using WHERE key_part_# = constant on all key parts that occur before
key_col in the index. In this case, MySQL will do a single key
lookup for each MIN() or MAX() expression and replace it
with a constant. If all expressions are replaced with constants, the
query will return at once. For example:
SELECT MIN(key_part2),MAX(key_part2)
FROM tbl_name WHERE key_part1=10;
- To sort or group a table if the sorting or grouping is done on a leftmost
prefix of a usable key (for example,
ORDER BY key_part1,
key_part2). If all key parts are followed by DESC,
the key is read in reverse order.
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In some cases, a query can be optimized to retrieve values without
consulting the data rows. If a query uses only columns from a table that are
numeric and that form a leftmost prefix for some key, the selected values
may be retrieved from the index tree for greater speed:
SELECT key_part3 FROM tbl_name WHERE key_part1=1
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 tries to
find the most restrictive index by deciding which index will find fewer
rows and using that index to fetch the rows.
If the table has a multiple-column index, any leftmost prefix of the
index can be used by the optimizer to find rows. For example, if you
have a three-column index on (col1, col2, col3), you have indexed
search capabilities on (col1), (col1, col2), and
(col1, col2, col3).
MySQL can't use a partial index if the columns don't form a
leftmost prefix of the index. Suppose that you have the SELECT
statements shown here:
SELECT * FROM tbl_name WHERE col1=val1;
SELECT * FROM tbl_name WHERE col2=val2;
SELECT * FROM tbl_name WHERE col2=val2 AND col3=val3;
If an index exists on (col1, col2, col3), only the first of the preceding
queries uses the index. The second and third queries do involve
indexed columns, but (col2) and (col2, col3) are not
leftmost prefixes of (col1, col2, col3).
An index is used for columns that you compare with the =, >,
>=, <, <=, or BETWEEN operators.
MySQL also uses indexes for LIKE comparisons if the argument
to LIKE is a constant string that doesn't start with a wildcard
character. For example, the following SELECT statements use indexes:
SELECT * FROM tbl_name WHERE key_col LIKE 'Patrick%';
SELECT * FROM tbl_name WHERE key_col LIKE 'Pat%_ck%';
In the first statement, only rows with 'Patrick' <= key_col <
'Patricl' are considered. In the second statement, only rows with
'Pat' <= key_col < 'Pau' are considered.
The following SELECT statements will not use indexes:
SELECT * FROM tbl_name WHERE key_col LIKE '%Patrick%';
SELECT * FROM tbl_name WHERE key_col LIKE other_col;
In the first statement, the LIKE value begins with a wildcard
character. In the second statement, the LIKE value is not a
constant.
MySQL 4.0 and up performs an additional LIKE optimization. If you use
... LIKE '%string%' and string is longer than three characters,
MySQL will use the Turbo Boyer-Moore algorithm to initialize the
pattern for the string and then use this pattern to perform the search
quicker.
Searching using col_name IS NULL will use indexes if col_name
is indexed.
Any index that doesn't span all AND levels in the WHERE clause
is not used to optimize the query. In other words, to be able to use an
index, a prefix of the index must be used in every AND group.
The following WHERE clauses use indexes:
... WHERE index_part1=1 AND index_part2=2 AND other_column=3
/* index = 1 OR index = 2 */
... WHERE index=1 OR A=10 AND index=2
/* optimized like "index_part1='hello'" */
... WHERE index_part1='hello' AND index_part3=5
/* Can use index on index1 but not on index2 or index3 */
... WHERE index1=1 AND index2=2 OR index1=3 AND index3=3;
These WHERE clauses do not use indexes:
/* index_part1 is not used */
... WHERE index_part2=1 AND index_part3=2
/* Index is not used in both AND parts */
... WHERE index=1 OR A=10
/* No index spans all rows */
... WHERE index_part1=1 OR index_part2=10
Sometimes MySQL will not use an index, even if one is available. One way
this occurs is when the optimizer estimates that using the index would
require MySQL to access a large percentage of the rows in the table.
(In this case, a table scan is probably much faster, because it will
require many fewer seeks.) However, if such a query uses LIMIT to
only retrieve part of the rows, MySQL will use an index anyway, because
it can much more quickly find the few rows to return in the result.
Hash indexes have somewhat different characteristics than those just
discussed:
-
They are used only for
= or <=> comparisons (but are
very fast).
-
The optimizer cannot use a hash index to speed up
ORDER BY
operations. (This type of index cannot be used to search for the next entry
in order.)
-
MySQL cannot determine approximately how many rows there
are between two values (this is used by the range optimizer to decide which
index to use). This may affect some queries if you change a
MyISAM
table to a hash-indexed MEMORY table.
-
Only whole keys can be used to search for a row. (With a B-tree index,
any leftmost prefix of the key can be used to find rows.)
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