Spec-Zone .ru
спецификации, руководства, описания, API
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In most cases, you can estimate query performance by counting disk seeks. For small tables, you can usually find
a row in one disk seek (because the index is probably cached). For bigger tables, you can estimate that, using
B-tree indexes, you need this many seeks to find a row: log(
. row_count
)
/ log(index_block_length
/ 3 * 2 / (index_length
+ data_pointer_length
)) + 1
In MySQL, an index block is usually 1,024 bytes and the data pointer is usually four bytes. For a 500,000-row
table with a key value length of three bytes (the size of MEDIUMINT
), the formula indicates log(500,000)/log(1024/3*2/(3+4))
+ 1
= 4
seeks.
This index would require storage of about 500,000 * 7 * 3/2 = 5.2MB (assuming a typical index buffer fill ratio of 2/3), so you probably have much of the index in memory and so need only one or two calls to read data to find the row.
For writes, however, you need four seek requests to find where to place a new index value and normally two seeks to update the index and write the row.
Note that the preceding discussion does not mean that your application performance slowly degenerates by log N
. As long as everything is cached by the OS or the MySQL server,
things become only marginally slower as the table gets bigger. After the data gets too big to be cached, things
start to go much slower until your applications are bound only by disk seeks (which increase by log N
). To avoid this, increase the key cache size as the data grows.
For MyISAM
tables, the key cache size is controlled by the key_buffer_size
system variable. See Section
8.11.2, "Tuning Server Parameters".