自5.1开始对分区(Partition)有支持
= 水平分区(根据列属性按行分)=举个简单例子:一个包含十年发piao记录的表可以被分区为十个不同的分区,每个分区包含的是其中一年的记录。=== 水平分区的几种模式:===* Range(范围) – 这种模式允许DBA将数据划分不同范围。例如DBA可以将一个表通过年份划分成三个分区,80年代(1980's)的数据,90年代(1990's)的数据以及任何在2000年(包括2000年)后的数据。 * Hash(哈希) – 这中模式允许DBA通过对表的一个或多个列的Hash Key进行计算,最后通过这个Hash码不同数值对应的数据区域进行分区,。例如DBA可以建立一个对表主键进行分区的表。 * Key(键值) – 上面Hash模式的一种延伸,这里的Hash Key是MySQL系统产生的。 * List(预定义列表) – 这种模式允许系统通过DBA定义的列表的值所对应的行数据进行分割。例如:DBA建立了一个横跨三个分区的表,分别根据2004年2005年和2006年值所对应的数据。 * Composite(复合模式) - 很神秘吧,哈哈,其实是以上模式的组合使用而已,就不解释了。举例:在初始化已经进行了Range范围分区的表上,我们可以对其中一个分区再进行hash哈希分区。 = 垂直分区(按列分)=举个简单例子:一个包含了大text和BLOB列的表,这些text和BLOB列又不经常被访问,这时候就要把这些不经常使用的text和BLOB了划分到另一个分区,在保证它们数据相关性的同时还能提高访问速度。[分区表和未分区表试验过程]*创建分区表,按日期的年份拆分- mysql> CREATE TABLE part_tab ( c1 int default NULL, c2 varchar(30) default NULL, c3 date default NULL) engine=myisam
- PARTITION BY RANGE (year(c3)) (PARTITION p0 VALUES LESS THAN (1995),
- PARTITION p1 VALUES LESS THAN (1996) , PARTITION p2 VALUES LESS THAN (1997) ,
- PARTITION p3 VALUES LESS THAN (1998) , PARTITION p4 VALUES LESS THAN (1999) ,
- PARTITION p5 VALUES LESS THAN (2000) , PARTITION p6 VALUES LESS THAN (2001) ,
- PARTITION p7 VALUES LESS THAN (2002) , PARTITION p8 VALUES LESS THAN (2003) ,
- PARTITION p9 VALUES LESS THAN (2004) , PARTITION p10 VALUES LESS THAN (2010),
- PARTITION p11 VALUES LESS THAN MAXVALUE );
注意最后一行,kao虑到可能的最大值
*创建未分区表- mysql> create table no_part_tab (c1 int(11) default NULL,c2 varchar(30) default NULL,c3 date default NULL) engine=myisam;
mysql> delimiter // /* 设定语句终结符为 //,因存储过程语句用;结束 */
- mysql> CREATE PROCEDURE load_part_tab()
- begin
- declare v int default 0;
- while v < 8000000
- do
- insert into part_tab
- values (v,'testing partitions',adddate('1995-01-01',(rand(v)*36520) mod 3652));
- set v = v + 1;
- end while;
- end
- //
- mysql> delimiter ;
- mysql> call load_part_tab();
Query OK, 1 row affected (8 min 17.75 sec)
- mysql> insert into no_part_tab select * from part_tab;
Query OK, 8000000 rows affected (51.59 sec)
Records: 8000000 Duplicates: 0 Warnings: 0* 测试SQL性能
- mysql> select count(*) from part_tab where c3 > date '1995-01-01' and c3 < date '1995-12-31';
+----------+
| count(*) |+----------+| 795181 |+----------+1 row in set (0.55 sec)
- mysql> select count(*) from no_part_tab where c3 > date '1995-01-01' and c3 < date '1995-12-31';
+----------+
| count(*) |+----------+| 795181 |+----------+1 row in set (4.69 sec)结果表明分区表比未分区表的执行时间少90%。* 通过explain语句来分析执行情况- mysql > explain select count(*) from no_part_tab where c3 > date '1995-01-01' and c3 < date '1995-12-31'\G
/* 结尾的\G使得mysql的输出改为列模式 */
*************************** 1. row *************************** id: 1select_type: SIMPLE table: no_part_tab type: ALLpossible_keys: NULL key: NULL key_len: NULL ref: NULL rows: 8000000 Extra: Using where1 row in set (0.00 sec)
- mysql> explain select count(*) from part_tab where c3 > date '1995-01-01' and c3 < date '1995-12-31'\G
*************************** 1. row ***************************
id: 1select_type: SIMPLE table: part_tab type: ALLpossible_keys: NULL key: NULL key_len: NULL ref: NULL rows: 798458 Extra: Using where1 row in set (0.00 sec)explain语句显示了SQL查询要处理的记录数目* 试验创建索引后情况- mysql> create index idx_of_c3 on no_part_tab (c3);
Query OK, 8000000 rows affected (1 min 18.08 sec)
Records: 8000000 Duplicates: 0 Warnings: 0- mysql> create index idx_of_c3 on part_tab (c3);
Query OK, 8000000 rows affected (1 min 19.19 sec)
Records: 8000000 Duplicates: 0 Warnings: 0创建索引后的数据库文件大小列表:2008-05-24 09:23 8,608 no_part_tab.frm2008-05-24 09:24 255,999,996 no_part_tab.MYD2008-05-24 09:24 81,611,776 no_part_tab.MYI2008-05-24 09:25 0 part_tab#P#p0.MYD2008-05-24 09:26 1,024 part_tab#P#p0.MYI2008-05-24 09:26 25,550,656 part_tab#P#p1.MYD2008-05-24 09:26 8,148,992 part_tab#P#p1.MYI2008-05-24 09:26 25,620,192 part_tab#P#p10.MYD2008-05-24 09:26 8,170,496 part_tab#P#p10.MYI2008-05-24 09:25 0 part_tab#P#p11.MYD2008-05-24 09:26 1,024 part_tab#P#p11.MYI2008-05-24 09:26 25,656,512 part_tab#P#p2.MYD2008-05-24 09:26 8,181,760 part_tab#P#p2.MYI2008-05-24 09:26 25,586,880 part_tab#P#p3.MYD2008-05-24 09:26 8,160,256 part_tab#P#p3.MYI2008-05-24 09:26 25,585,696 part_tab#P#p4.MYD2008-05-24 09:26 8,159,232 part_tab#P#p4.MYI2008-05-24 09:26 25,585,216 part_tab#P#p5.MYD2008-05-24 09:26 8,159,232 part_tab#P#p5.MYI2008-05-24 09:26 25,655,740 part_tab#P#p6.MYD2008-05-24 09:26 8,181,760 part_tab#P#p6.MYI2008-05-24 09:26 25,586,528 part_tab#P#p7.MYD2008-05-24 09:26 8,160,256 part_tab#P#p7.MYI2008-05-24 09:26 25,586,752 part_tab#P#p8.MYD2008-05-24 09:26 8,160,256 part_tab#P#p8.MYI2008-05-24 09:26 25,585,824 part_tab#P#p9.MYD2008-05-24 09:26 8,159,232 part_tab#P#p9.MYI2008-05-24 09:25 8,608 part_tab.frm2008-05-24 09:25 68 part_tab.par* 再次测试SQL性能
- mysql> select count(*) from no_part_tab where c3 > date '1995-01-01' and c3 < date '1995-12-31';
+----------+
| count(*) |+----------+| 795181 |+----------+1 row in set (2.42 sec) /* 为原来4.69 sec 的51%*/
重启mysql ( net stop mysql, net start mysql)后,查询时间降为0.89 sec,几乎与分区表相同。
- mysql> select count(*) from part_tab where c3 > date '1995-01-01' and c3 < date '1995-12-31';
+----------+
| count(*) |+----------+| 795181 |+----------+1 row in set (0.86 sec)* 更进一步的试验** 增加日期范围- mysql> select count(*) from no_part_tab where c3 > date '1995-01-01' and c3 < date '1997-12-31';
+----------+
| count(*) |+----------+| 2396524 |+----------+1 row in set (5.42 sec)- mysql> select count(*) from part_tab where c3 > date '1995-01-01' and c3 < date '1997-12-31';
+----------+
| count(*) |+----------+| 2396524 |+----------+1 row in set (2.63 sec)
** 增加未索引字段查询
- mysql> select count(*) from part_tab where c3 > date '1995-01-01' and c3 < date
- '1996-12-31' and c2='hello';
+----------+
| count(*) |+----------+| 0 |+----------+1 row in set (0.75 sec)- mysql> select count(*) from no_part_tab where c3 > date '1995-01-01' and c3 < date '1996-12-31' and c2='hello';
+----------+
| count(*) |+----------+| 0 |+----------+1 row in set (11.52 sec)= 初步结论 =* 分区和未分区占用文件空间大致相同 (数据和索引文件)* 如果查询语句中有未建立索引字段,分区时间远远优于未分区时间* 如果查询语句中字段建立了索引,分区和未分区的差别缩小,分区略优于未分区。= 最终结论 =* 对于大数据量,建议使用分区功能。* 去除不必要的字段* 根据手册, 增加myisam_max_sort_file_size 会增加分区性能[分区命令详解]= 分区例子 = * RANGE 类型- CREATE TABLE users (
- uid INT UNSIGNED NOT NULL AUTO_INCREMENT PRIMARY KEY,
- name VARCHAR(30) NOT NULL DEFAULT '',
- email VARCHAR(30) NOT NULL DEFAULT ''
- )
- PARTITION BY RANGE (uid) (
- PARTITION p0 VALUES LESS THAN (3000000)
- DATA DIRECTORY = '/data0/data'
- INDEX DIRECTORY = '/data1/idx',
- PARTITION p1 VALUES LESS THAN (6000000)
- DATA DIRECTORY = '/data2/data'
- INDEX DIRECTORY = '/data3/idx',
- PARTITION p2 VALUES LESS THAN (9000000)
- DATA DIRECTORY = '/data4/data'
- INDEX DIRECTORY = '/data5/idx',
- PARTITION p3 VALUES LESS THAN MAXVALUE DATA DIRECTORY = '/data6/data'
- INDEX DIRECTORY = '/data7/idx'
- );
在这里,将用户表分成4个分区,以每300万条记录为界限,每个分区都有自己独立的数据、索引文件的存放目录,与此同时,这些目录所在的物理磁盘分区可能也都是完全独立的,可以提高磁盘IO吞吐量。
* LIST 类型- CREATE TABLE category (
- cid INT UNSIGNED NOT NULL AUTO_INCREMENT PRIMARY KEY,
- name VARCHAR(30) NOT NULL DEFAULT ''
- )
- PARTITION BY LIST (cid) (
- PARTITION p0 VALUES IN (0,4,8,12)
- DATA DIRECTORY = '/data0/data'
- INDEX DIRECTORY = '/data1/idx',
- PARTITION p1 VALUES IN (1,5,9,13)
- DATA DIRECTORY = '/data2/data'
- INDEX DIRECTORY = '/data3/idx',
- PARTITION p2 VALUES IN (2,6,10,14)
- DATA DIRECTORY = '/data4/data'
- INDEX DIRECTORY = '/data5/idx',
- PARTITION p3 VALUES IN (3,7,11,15)
- DATA DIRECTORY = '/data6/data'
- INDEX DIRECTORY = '/data7/idx'
- );
分成4个区,数据文件和索引文件单独存放。
* HASH 类型- CREATE TABLE users (
- uid INT UNSIGNED NOT NULL AUTO_INCREMENT PRIMARY KEY,
- name VARCHAR(30) NOT NULL DEFAULT '',
- email VARCHAR(30) NOT NULL DEFAULT ''
- )
- PARTITION BY HASH (uid) PARTITIONS 4 (
- PARTITION p0
- DATA DIRECTORY = '/data0/data'
- INDEX DIRECTORY = '/data1/idx',
- PARTITION p1
- DATA DIRECTORY = '/data2/data'
- INDEX DIRECTORY = '/data3/idx',
- PARTITION p2
- DATA DIRECTORY = '/data4/data'
- INDEX DIRECTORY = '/data5/idx',
- PARTITION p3
- DATA DIRECTORY = '/data6/data'
- INDEX DIRECTORY = '/data7/idx'
- );
分成4个区,数据文件和索引文件单独存放。
例子:- CREATE TABLE ti2 (id INT, amount DECIMAL(7,2), tr_date DATE)
- ENGINE=myisam
- PARTITION BY HASH( MONTH(tr_date) )
- PARTITIONS 6;
- CREATE PROCEDURE load_ti2()
- begin
- declare v int default 0;
- while v < 80000
- do
- insert into ti2
- values (v,'3.14',adddate('1995-01-01',(rand(v)*3652) mod 365));
- set v = v + 1;
- end while;
- end
- //
* KEY 类型
- CREATE TABLE users (
- uid INT UNSIGNED NOT NULL AUTO_INCREMENT PRIMARY KEY,
- name VARCHAR(30) NOT NULL DEFAULT '',
- email VARCHAR(30) NOT NULL DEFAULT ''
- )
- PARTITION BY KEY (uid) PARTITIONS 4 (
- PARTITION p0
- DATA DIRECTORY = '/data0/data'
- INDEX DIRECTORY = '/data1/idx',
- PARTITION p1
- DATA DIRECTORY = '/data2/data'
- INDEX DIRECTORY = '/data3/idx',
- PARTITION p2
- DATA DIRECTORY = '/data4/data'
- INDEX DIRECTORY = '/data5/idx',
- PARTITION p3
- DATA DIRECTORY = '/data6/data'
- INDEX DIRECTORY = '/data7/idx'
- );
分成4个区,数据文件和索引文件单独存放。
* 子分区子分区是针对 RANGE/LIST 类型的分区表中每个分区的再次分割。再次分割可以是 HASH/KEY 等类型。例如:- CREATE TABLE users (
- uid INT UNSIGNED NOT NULL AUTO_INCREMENT PRIMARY KEY,
- name VARCHAR(30) NOT NULL DEFAULT '',
- email VARCHAR(30) NOT NULL DEFAULT ''
- )
- PARTITION BY RANGE (uid) SUBPARTITION BY HASH (uid % 4) SUBPARTITIONS 2(
- PARTITION p0 VALUES LESS THAN (3000000)
- DATA DIRECTORY = '/data0/data'
- INDEX DIRECTORY = '/data1/idx',
- PARTITION p1 VALUES LESS THAN (6000000)
- DATA DIRECTORY = '/data2/data'
- INDEX DIRECTORY = '/data3/idx'
- );
对 RANGE 分区再次进行子分区划分,子分区采用 HASH 类型。
或者- CREATE TABLE users (
- uid INT UNSIGNED NOT NULL AUTO_INCREMENT PRIMARY KEY,
- name VARCHAR(30) NOT NULL DEFAULT '',
- email VARCHAR(30) NOT NULL DEFAULT ''
- )
- PARTITION BY RANGE (uid) SUBPARTITION BY KEY(uid) SUBPARTITIONS 2(
- PARTITION p0 VALUES LESS THAN (3000000)
- DATA DIRECTORY = '/data0/data'
- INDEX DIRECTORY = '/data1/idx',
- PARTITION p1 VALUES LESS THAN (6000000)
- DATA DIRECTORY = '/data2/data'
- INDEX DIRECTORY = '/data3/idx'
- );
对 RANGE 分区再次进行子分区划分,子分区采用 KEY 类型。
= 分区管理 = * 删除分区- ALERT TABLE users DROP PARTITION p0;
删除分区 p0。
* 重建分区
o RANGE 分区重建- ALTER TABLE users REORGANIZE PARTITION p0,p1 INTO (PARTITION p0 VALUES LESS THAN (6000000));
将原来的 p0,p1 分区合并起来,放到新的 p0 分区中。
o LIST 分区重建- ALTER TABLE users REORGANIZE PARTITION p0,p1 INTO (PARTITION p0 VALUES IN(0,1,4,5,8,9,12,13));
将原来的 p0,p1 分区合并起来,放到新的 p0 分区中。
o HASH/KEY 分区重建- ALTER TABLE users REORGANIZE PARTITION COALESCE PARTITION 2;
用 REORGANIZE 方式重建分区的数量变成2,在这里数量只能减少不能增加。想要增加可以用 ADD PARTITION 方法。
* 新增分区 o 新增 RANGE 分区- ALTER TABLE category ADD PARTITION (PARTITION p4 VALUES IN (16,17,18,19)
- DATA DIRECTORY = '/data8/data'
- INDEX DIRECTORY = '/data9/idx');
新增一个RANGE分区。
o 新增 HASH/KEY 分区- ALTER TABLE users ADD PARTITION PARTITIONS 8;
将分区总数扩展到8个。
[ 给已有的表加上分区 ]- alter table results partition by RANGE (month(ttime))
- (PARTITION p0 VALUES LESS THAN (1),
- PARTITION p1 VALUES LESS THAN (2) , PARTITION p2 VALUES LESS THAN (3) ,
- PARTITION p3 VALUES LESS THAN (4) , PARTITION p4 VALUES LESS THAN (5) ,
- PARTITION p5 VALUES LESS THAN (6) , PARTITION p6 VALUES LESS THAN (7) ,
- PARTITION p7 VALUES LESS THAN (8) , PARTITION p8 VALUES LESS THAN (9) ,
- PARTITION p9 VALUES LESS THAN (10) , PARTITION p10 VALUES LESS THAN (11),
- PARTITION p11 VALUES LESS THAN (12),
- PARTITION P12 VALUES LESS THAN (13) );
- mysql> ALTER TABLE np_pk
- -> PARTITION BY HASH( TO_DAYS(added) )
- -> PARTITIONS 4;
ERROR 1503 (HY000): A PRIMARY KEY must include all columns in the table's partitioning function
However, this statement using the id column for the partitioning column is valid, as shown here:- mysql> ALTER TABLE np_pk
- -> PARTITION BY HASH(id)
- -> PARTITIONS 4;
Query OK, 0 rows affected (0.11 sec)
Records: 0 Duplicates: 0 Warnings: 0[方法2] 将原有PK去掉生成新PK- mysql> alter table results drop PRIMARY KEY;
Query OK, 5374850 rows affected (7 min 4.05 sec)
Records: 5374850 Duplicates: 0 Warnings: 0- mysql> alter table results add PRIMARY KEY(id, ttime);
Query OK, 5374850 rows affected (6 min 14.86 sec)
Records: 5374850 Duplicates: 0 Warnings: 0