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Super detailed summary of mysql optimization practical skills

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2022-03-24 18:30:572103browse

This article brings you relevant knowledge about mysql, which mainly summarizes twenty-one practical skills for mysql optimization. Let’s take a look at these twenty-one optimization skills. I hope it will be helpful to everyone. .

Super detailed summary of mysql optimization practical skills

Recommended learning: mysql video tutorial

Today, database operations are increasingly becoming the entire application performance bottleneck, which is especially obvious for Web applications. Regarding the performance of the database, this is not just something that DBAs need to worry about, but this is something that we programmers need to pay attention to. When we design the database table structure and operate the database (especially SQL statements when looking up tables), we need to pay attention to the performance of data operations. Here, we will not talk too much about the optimization of SQL statements, but only for MySQL, the database with the most Web applications. I hope the following optimization tips are useful to you

1. Optimize your queries for query caching

Most MySQL servers have query caching enabled. This is one of the most effective ways to improve performance, and it's handled by the MySQL database engine. When many of the same queries are executed multiple times, these query results will be placed in a cache, so that subsequent identical queries do not need to operate the table but directly access the cached results.
The main problem here is that for programmers, this matter is easily overlooked. Because some of our query statements will cause MySQL not to use caching . Please look at the following example:

Super detailed summary of mysql optimization practical skills

The difference between the above two SQL statements is CURDATE(), MySQL’s query cache pair This function doesn't work. Therefore, SQL functions like NOW() and RAND() or other similar functions will not enable query caching, because the returns of these functions are volatile. So, all you need is to replace the MySQL function with a variable to enable caching.

2. EXPLAIN your SELECT query

Use the EXPLAIN keyword to let you know how MySQL processes your SQL statement of. This can help you analyze the performance bottlenecks of your query statements or table structures. The query results of
EXPLAIN will also tell you how your index primary key is used, how your data table is searched and sorted...etc., etc.
Pick one of your SELECT statements (it is recommended to pick the most complex one with multiple table connections) and add the keyword EXPLAIN to the front. You can use phpmyadmin to do this. Then, you will see a form. In the following example, we forgot to add the group_id index and have a table join:

Super detailed summary of mysql optimization practical skills

When we added the After indexing:
Super detailed summary of mysql optimization practical skills
We can see that the former result shows that 7883 rows were searched, while the latter one only searched 9 and 16 rows of the two tables. Looking at the rows column allows us to find potential performance issues.

3. Use LIMIT 1 1 when there is only one row of data

Sometimes when you query the table, you already know that the result will only be one result, but because you may need to fetch Cursor, or you might check the number of records returned.
In this case, adding LIMIT 1 can increase performance. In this way, the MySQL database engine will stop searching after finding a piece of data, instead of continuing to search for the next piece of data that matches the record.
The following example is just to find whether there are "China" users. Obviously, the latter one will be more efficient than the former one. (Please note that the first entry is Select * and the second entry is Select 1)

Super detailed summary of mysql optimization practical skills

4 . Build an index for the search field

The index does not necessarily mean the primary key or the only field. If there is a field in your table that you always use for searching, then please create an index for it

Super detailed summary of mysql optimization practical skills

You can see from the picture above that the search string "last_name LIKE 'a%'", one is indexed, the other is not indexed, the performance is poor by 4 About times .
In addition, you should also need to know what kind of searches cannot use normal indexes. For example, when you need to search for a word in a large article, such as: "WHERE post_content LIKE '%apple%'", the index may not make sense. You may need to use the MySQL full-text index or make an index yourself (for example: search for keywords or tags)

5. Use the same type of example when joining the table

If your application has many JOIN queries, you should confirm that the Join fields in both tables are indexed. In this way, MySQL will start a mechanism internally to optimize the Join SQL statement for you.
Moreover, these fields used for Join should be of the same type. For example: If you Join a DECIMAL field with an INT field, MySQL cannot use their indexes. For those STRING types, they also need to have the same character set. (The character sets of the two tables may be different)

Super detailed summary of mysql optimization practical skills

6. Never ORDER BY RAND()

Scramble the returned data rows? Randomly pick a piece of data? I really don’t know who invented this usage, but many novices like to use it this way. But you really don't understand what a terrible performance problem this has.
If you really want to scramble the returned data rows, you have N ways to achieve this. Using this will only cause your database performance to drop exponentially. The problem here is: MySQL will have to execute the RAND() function (which consumes a lot of CPU time), and this is to record the rows for each row of records, and then sort them. Even if you use Limit 1, it won’t help (because it needs to be sorted)

The following example randomly selects a record:
Super detailed summary of mysql optimization practical skills

7. Avoid SELECT *

The more data is read from the database, the slower the query will become. Moreover, if your database server and WEB server are two independent servers, this will also increase the load of network transmission. Therefore, you should develop a good habit of taking whatever you need.
Super detailed summary of mysql optimization practical skills

8. Always set an ID for each table

We should set an ID for each table in the database as its The primary key, and the best one is of type

INT (it is recommended to use UNSIGNED), and set the AUTO_INCREMENT flag that is automatically increased. Even if your users table has a field with a primary key called "
email", don't make it the primary key. Using the VARCHAR type as the primary key will degrade performance. Additionally, in your program, you should use table IDs to construct your data structures. Moreover, under the MySQL data engine, there are some operations that require the use of primary keys. In these cases,
The performance and settings of the primary keys become very important, such as clusters, partitions... Here, there is only one exception, and that is the "foreign key" of the "associated table". That is to say, the primary key of this table is composed of the primary keys of several individual tables. We call this situation "foreign key". For example: there is a "student table" with student IDs, and a "curriculum table" with course IDs. Then, the "score table" is an "association table", which associates the student table and course schedule. In the score table, The student ID and course ID are called "foreign keys" and together they form the primary key.

9. Use ENUM instead of VARCHAR

The ENUM type is very fast and compact. In fact, it saves

TINYINT, but it appears as a string. In this way, it becomes quite perfect to use this field to make some choice lists. If you have a field, such as "gender", "country", "ethnicity", "status" or "department", and you know that the values ​​of these fields are limited and fixed, then you should use
ENUM instead of VARCHAR. MySQL also has a "suggestion" (see item 10) to tell you how to reorganize your table structure. When you have a
VARCHAR field, this suggestion will tell you to change it to the ENUM type. Use PROCEDURE ANALYSE() You can get relevant suggestions

10. Get suggestions from PROCEDURE ANALYSE()

PROCEDURE ANALYSE() will let MySQL help you analyze your fields and their actual data. And will give you some useful suggestions. These suggestions will only become useful if there is actual data in the table, because making some big decisions requires data as a basis.
For example, if you create an INT field as your primary key, but there is not much data, then PROCEDURE ANALYSE() will suggest that you change the type of this field to MEDIUMINT. Or if you use a VARCHAR field, because there is not much data, you may get a suggestion to change it
to ENUM. These suggestions are all possible because there is not enough data, so the decision-making is not accurate enough.
In phpmyadmin, you can view these suggestions by clicking "Propose table structure" when viewing the table

Super detailed summary of mysql optimization practical skills

Be sure to note that these are just suggestions. These suggestions will only become accurate as you have more and more data in your table. Be sure to remember that you are the one who ultimately makes the decision

11. Use NOT NULL as much as possible

unless you have a very special reason To use NULL values, you should always keep your fields NOT NULL. This may seem a bit controversial, please read on.
First, ask yourself how big the difference is between "Empty" and "NULL" (if it's INT, that's 0 and NULL)? If you think there is no difference between them, then you should not use NULL. (Did you know? In Oracle, the strings of NULL and Empty are the same!)
Don’t think that NULL No need for space, it requires extra space , and your program will be more complex when you do comparisons. Of course, this does not mean that you cannot use NULL. The reality is very complicated, and there will still be situations where you need to use NULL values.

12.Prepared Statements

Prepared Statements Much like a stored procedure, it is a collection of SQL statements running in the background. We can use prepared statements Gain many benefits, whether it is a performance issue or a security issue .
Prepared Statements You can check some variables that you have bound, which can protect your program from "SQL injection" attacks. Of course, you can also manually check your variables. However, manual checks are prone to problems and are often forgotten by programmers. This problem will be better when we use some framework or ORM.
In terms of performance, when the same query is used multiple times, this will bring you considerable performance advantages. You can define some parameters for these Prepared Statements, and MySQL will only parse them once.
Although the latest version of MySQL uses binary form when transmitting Prepared Statements, this will make network transmission very efficient.
Of course, there are some cases where we need to avoid using Prepared Statements because it does not support query caching. But it is said to be supported after version 5.1.
To use prepared statements in PHP, you can check its manual: mysql extension or use the database abstraction layer, such as: PDO.

Super detailed summary of mysql optimization practical skills

13 . Unbuffered query

Normally, when you execute a SQL statement in your script, your program will stop there until the SQL statement returns. Then your program continues to execute. You can use unbuffered queries to change this behavior.
mysql_unbuffered_query() Sends a SQL statement to MySQL without automatically fethch and caching the results like mysql_query(). This will save a lot of considerable memory, especially for queries that generate a large number of results, and you don't need to wait until all the results are returned. You only need to return the first row of data and you can start working immediately. The query results are up.
However, this has some limitations. Because you either have to read all the rows, or you have to call mysql_free_result() to clear the results before the next query. Also, mysql_num_rows() or mysql_data_seek() will not work. Therefore, you need to consider carefully whether to use unbuffered queries.

14. Save the IP address as UNSIGNED INT

Many programmers will create a VARCHAR(15) field to store the IP in string form instead Shaped IP. If you use an integer to store it, it only takes 4 bytes, and you can have fixed-length fields. Moreover, this will bring you query advantages, especially when you need to use WHERE conditions like this: IP between ip1 and ip2.
We must use UNSIGNED INT, because the IP address uses the entire 32-bit unsigned integer type.
For your query, you can use INET_ATON() to convert a string IP into an integer, and use INET_NTOA() to convert an integer into a string IP. In PHP, there are also such functions ip2long() and long2ip().
Super detailed summary of mysql optimization practical skills

15. Fixed-length tables will be faster

If all fields in the table are "fixed length", the entire table will Considered "static" or "fixed-length". For example, there are no fields of the following types in the table: VARCHAR, TEXT. As long as you include one of these fields, the table is no longer a "fixed-length static table" and the MySQL engine will process it in another way.
Fixed length tables will improve performance because MySQL will search faster. Because these fixed lengths make it easy to calculate the offset of the next data, reading will naturally be faster. And if the field is not of fixed length, then every time you want to find the next one, the program needs to find the primary key.
Also, fixed-length tables are easier to cache and rebuild. However, The only side effect is that fixed-length fields will waste some space, because fixed-length fields will allocate so much space whether you use them or not.

Using the "vertical split" technology (see next item), you can split your table into two, one with a fixed length and one with a variable length of.

16. Vertical split

"Vertical split" is a method of converting the tables in the database into several tables by columns, which can reduce the complexity and fields of the table number, so as to achieve the purpose of optimization. (Before, I worked on a project in a bank and saw a table with more than 100 fields, which was scary)

Example 1: There is a field in the Users table that is home address. This The field is an optional field, in comparison, and except for personal information when you operate in the database, you do not need to read or rewrite this field frequently. So, why not put it in another table? This will make your table have better performance. Think about it, a lot of times, for the user table, I only have the user ID, user name, and password. , user roles, etc. will be used frequently. Smaller watches will always have better performance.

Example 2: You have a field called "last_login" that will be updated every time the user logs in. However, each update will cause the table's query cache to be cleared. Therefore, you can put this field in another table, so that it will not affect your continuous reading of user ID, user name, and user role, because the query cache will help you increase a lot of performance.

In addition, you need to pay attention to the fact that you will not join the tables formed by these separated fields frequently. Otherwise, the performance will be worse than without splitting. It is worse, and it will be an extreme drop

17. Split a large DELETE or INSERT statement

If you need to execute a large statement on an online website

DELETE or INSERT queries, you need to be very careful to avoid your operations causing your entire website to stop responding. Because these two operations will lock the table, once the table is locked, no other operations can enter. Apache will have many child processes or threads. Therefore, it works quite efficiently, and our server does not want to have too many child processes, threads and database links. This takes up a lot of server resources, especially memory.
If you lock your table for a period of time, such as 30 seconds, then for a site with a high traffic volume, the number of access processes/threads, database links, and open files accumulated in these 30 seconds , it may not only cause your WEB service to
Crash, but may also cause your entire server to hang up immediately. So, if you have a large process and you are sure to split it up, using the
LIMIT condition is a good way to do it. Here is an example:

Super detailed summary of mysql optimization practical skills

18. The smaller the column, the faster

For most database engines, hard disk operations may be the most significant bottleneck. So, making your data compact can be very helpful in this situation because it reduces access to the hard drive.
See the MySQL documentation Storage Requirements to view all data types.
If a table only has a few columns (such as dictionary table, configuration table), then we have no reason to use INT as the primary key, use MEDIUMINT, SMALLINT Or a smaller TINYINT would be more economical. If you don't need to record time, it's much better to use DATE than DATETIME.
Of course, you also need to leave enough room for expansion. Otherwise, if you do this in the future, you will die ugly. See the example of Slashdot (November 6, 2009). A simple ALTER TABLE statement took more than 3 hours because there were 16 million pieces of data in it.

19. Choose the right storage engine

There are two storage engines in MySQL, MyISAM and InnoDB. Each engine has advantages and disadvantages. Cool Shell's previous article "MySQL: InnoDB or MyISAM?" discussed this matter.
MyISAM is suitable for applications that require a large number of queries, but it is not very good for a large number of write operations. Even if you just need to update a field, the entire table will be locked, and other processes, even the reading process, cannot operate until the reading operation is completed. In addition, MyISAM is extremely fast for calculations such as SELECT COUNT(*).
The trend of InnoDB will be a very complex storage engine. For some small applications, it will be slower than MyISAM. The other reason is that it supports "row locking", so it will be better when there are more write operations. Moreover, it also supports more advanced applications, such as transactions.

20. Use an Object Relational Mapper

Using an ORM (Object Relational Mapper), you can get reliable Performance increases. Everything an ORM can do can also be written manually. However, this requires a high-level expert.
The most important thing about ORM is "Lazy Loading", that is to say, it will only be actually done when it is necessary to get the value. But you also need to be careful about the side effects of this mechanism, because it is likely to reduce performance by creating many, many small queries.
ORM can also package your SQL statements into a transaction, which is much faster than executing them individually.
Currently, my favorite ORM for PHP is: Doctrine

21. Be careful with "permanent links"

"permanent links" The purpose is to reduce the number of re-creation of MySQL connections. When a link is created, it remains connected forever, even after the database operation has ended. Moreover, since our Apache started reusing its child process - that is, the next HTTP request will reuse the Apache child process and reuse the same MySQL connection.
In theory, this sounds very good. But from personal experience (and most people's), this feature creates more trouble. Because, you only have a limited number of links, memory issues, file handles, etc.
Moreover, Apache runs in an extremely parallel environment and will create many, many processes. This is why this "permalink" mechanism doesn't work well. Before you decide to use "permanent links", you need to carefully consider the architecture of your entire system

22. SQL optimization index optimization

1. Independent columns

When querying, the index column cannot be part of the expression or the parameter of the function, otherwise the index cannot be used.
For example, the following query cannot use the index of the actor_id column:

#这是错误的SELECT actor_id FROM sakila.actor WHERE actor_id + 1 = 5;

Optimization method: Expressions and function operations can be moved to the right side of the equal sign. As follows:

SELECT actor_id FROM sakila.actor WHERE actor_id  = 5 - 1;

2. Multi-column index

When multiple columns need to be used as conditions for query, using a multi-column index has better performance than using multiple single-column indexes.
For example, in the following statement, it is best to set actor_id and film_id as multi-column indexes. Yuanfudao has a question, see the link for details, which can help you understand more deeply.

SELECT film_id, actor_ id FROM sakila.film_actorWHERE actor_id = 1 AND film_id = 1;

3. The order of index columns

Let the most selective index column be placed first.
Index selectivity refers to the ratio of unique index values ​​to the total number of records. The maximum value is 1, at which time each record has a unique index corresponding to it. The higher the selectivity, the higher the discrimination of each record and the higher the query efficiency.

For example, in the results shown below, customer_id is more selective than staff_id, so it is best to put the customer_id column in front of the multi-column index.

SELECT COUNT(DISTINCT staff_id)/COUNT(*) AS staff_id_selectivity,
COUNT(DISTINCT customer_id)/COUNT(*) AS customer_id_selectivity,
COUNT(*)
FROM payment;

#结果如下
staff_id_selectivity: 0.0001
customer_id_selectivity: 0.0373
COUNT(*): 16049

4. Prefix index

For BLOB, TEXT and VARCHAR type columns, you must use a prefix index to only index the beginning characters.

The selection of prefix length needs to be determined based on index selectivity.

5.覆盖索引

索引包含所有需要查询的字段的值。具有以下优点:

1.索引通常远小于数据行的大小,只读取索引能大大减少数据访问量。
2.一些存储引擎(例如 MyISAM)在内存中只缓存索引,而数据依赖于操作系统来缓存。因此,只访问索引可以不使用系统调用(通常比较费时)。
3.对于 InnoDB 引擎,若辅助索引能够覆盖查询,则无需访问主索引。

6.优先使用索引,避免全表扫描

mysql在使用like进行模糊查询的时候把%放后面,避免开头模糊查询
因为mysql在使用like查询的时候只有使用后面的%时,才会使用到索引。

如:’%ptd_’ 和 ‘%ptd_%’ 都没有用到索引;而 ‘ptd_%’ 使用了索引。

#进行全表查询,没有用到索引
EXPLAIN SELECT * FROM `user` WHERE username LIKE '%ptd_%';
EXPLAIN SELECT * FROM `user` WHERE username LIKE '%ptd_';

#有用到索引
EXPLAIN SELECT * FROM `user` WHERE username LIKE 'ptd_%';

再比如:经常用到的查询数据库中姓张的所有人:

SELECT * FROM `user` WHERE username LIKE '张%';

7.尽量避免使用in 和not in,会导致数据库引擎放弃索引进行全表扫描。

比如:

SELECT * FROM t WHERE id IN (2,3)SELECT * FROM t1 WHERE username IN (SELECT username FROM t2)

优化方式:如果是连续数值,可以用between代替。如下:

SELECT * FROM t WHERE id BETWEEN 2 AND 3

如果是子查询,可以用exists代替。如下:

SELECT * FROM t1 WHERE EXISTS (SELECT * FROM t2 WHERE t1.username = t2.username)

8.尽量避免使用or,会导致数据库引擎放弃索引进行全表扫描

如:

SELECT * FROM t WHERE id = 1 OR id = 3

优化方式:可以用union代替or。如下:

SELECT * FROM t WHERE id = 1UNIONSELECT * FROM t WHERE id = 3

9.尽量避免进行null值的判断,会导致数据库引擎放弃索引进行全表扫描

SELECT * FROM t WHERE score IS NULL

优化方式:可以给字段添加默认值0,对0值进行判断。如下:

SELECT * FROM t WHERE score = 0

10.尽量避免在where条件中等号的左侧进行表达式、函数操作,会导致数据库引擎放弃索引进行全表扫描

同第1个,单独的列;

SELECT * FROM t2 WHERE score/10 = 9SELECT * FROM t2 WHERE SUBSTR(username,1,2) = 'li'

优化方式:可以将表达式、函数操作移动到等号右侧。如下:

SELECT * FROM t2 WHERE score = 10*9SELECT * FROM t2 WHERE username LIKE 'li%'

11.当数据量大时,避免使用where 1=1的条件。通常为了方便拼装查询条件,我们会默认使用该条件,数据库引擎会放弃索引进行全表扫描

SELECT * FROM t WHERE 1=1

优化方式用代码拼装sql时进行判断,没where加where,有where加and。
索引的好处:建立索引后,查询时不会扫描全表,而会查询索引表锁定结果。
索引的缺点:在数据库进行DML操作的时候,除了维护数据表之外,还需要维护索引表,运维成本增加。
应用场景:数据量比较大,查询字段较多的情况。

索引规则:

1.选用选择性高的字段作为索引,一般unique的选择性最高;
2.复合索引:选择性越高的排在越前面。(左前缀原则);
3.如果查询条件中两个条件都是选择性高的,最好都建索引;

23.SQL优化之查询优化

1.使用Explain进行分析

Explain 用来分析 SELECT 查询语句,开发人员可以通过分析 Explain 结果来优化查询语句。

比较重要的字段有:

select_type : 查询类型,有简单查询、联合查询、子查询等;
key : 使用的索引;
rows : 扫描的行数;

2.优化数据访问

1.减少请求的数据量

只返回必要的列:最好不要使用 SELECT * 语句。
只返回必要的行:使用 LIMIT 语句来限制返回的数据。
缓存重复查询的数据:使用缓存可以避免在数据库中进行查询,特别在要查询的数据经常被重复查询时,缓存带来的查询性能提升将会是非常明显的。

2.减少服务器端扫描的行数

最有效的方式是使用索引来覆盖查询。

3.重构查询方式

1.切分大查询

一个大查询如果一次性执行的话,可能一次锁住很多数据、占满整个事务日志、耗尽系统资源、阻塞很多小的但重要的查询。

2.分解大连接查询

将一个大连接查询分解成对每一个表进行一次单表查询,然后在应用程序中进行关联,这样做的好处有:

Make caching more efficient: For join queries, if one of the tables changes, the entire query cache cannot be used. For multiple queries after decomposition, even if one table changes, the query cache for other tables can still be used.
Decompose into multiple single-table queries. The cached results of these single-table queries are more likely to be used by other queries, thereby reducing redundant record queries.
Reduce lock competition;
Connecting at the application layer makes it easier to split the database, making it easier to achieve high performance and scalability.
The efficiency of the query itself may also be improved. For example, in the following example, using IN() instead of a join query allows MySQL to query in ID order, which may be more efficient than a random join.

SELECT * FROM tab
JOIN tag_post ON tag_post.tag_id=tag.id
JOIN post ON tag_post.post_id=post.id
WHERE tag.tag='mysql';

SELECT * FROM tag WHERE tag='mysql';
SELECT * FROM tag_post WHERE tag_id=1234;
SELECT * FROM post WHERE post.id IN (123,456,567,9098,8904);

24.分析查询语句

通过对查询语句的分析,可以了解查询语句执行的情况,找出查询语句执行的瓶颈,从而优化查询语句。mysql中提供了EXPLAIN语句和DESCRIBE语句,用来分析查询语句。
EXPLAIN语句的基本语法如下:
EXPLAIN [EXTENDED] SELECT select_options;
使用EXTENED关键字,EXPLAIN语句将产生附加信息。select_options是select语句的查询选项,包括from where子句等等。
执行该语句,可以分析EXPLAIN后面的select语句的执行情况,并且能够分析出所查询的表的一些特征。
例如:EXPLAIN SELECT * FROM user;
查询结果进行解释说明:
a、id:select识别符,这是select的查询序列号。
b、select_type:标识select语句的类型。
它可以是以下几种取值:
b1、SIMPLE(simple)表示简单查询,其中不包括连接查询和子查询。
b2、PRIMARY(primary)表示主查询,或者是最外层的查询语句。
b3、UNION(union)表示连接查询的第2个或者后面的查询语句。
b4、DEPENDENT UNION(dependent union)连接查询中的第2个或者后面的select语句。取决于外面的查询。
b5、UNION RESULT(union result)连接查询的结果。
b6、SUBQUERY(subquery)子查询的第1个select语句。
b7、DEPENDENT SUBQUERY(dependent subquery)子查询的第1个select,取决于外面的查询。
b8、DERIVED(derived)导出表的SELECT(FROM子句的子查询)。
c、table:表示查询的表。
d、type:表示表的连接类型。
下面按照从最佳类型到最差类型的顺序给出各种连接类型。
d1、system,该表是仅有一行的系统表。这是const连接类型的一个特例。
d2、const,数据表最多只有一个匹配行,它将在查询开始时被读取,并在余下的查询优化中作为常量对待。const表查询速度很快,因为它们只读一次。const用于使用常数值比较primary key或者unique索引的所有部分的场合。
例如:EXPLAIN SELECT * FROM user WHERE id=1;
d3、eq_ref,对于每个来自前面的表的行组合,从该表中读取一行。当一个索引的所有部分都在查询中使用并且索引是UNIQUE或者PRIMARY KEY时候,即可使用这种类型。eq_ref可以用于使用“=”操作符比较带索引的列。比较值可以为常量或者一个在该表前面所读取的表的列的表达式。
例如:EXPLAIN SELECT * FROM user,db_company WHERE user.company_id = db_company.id;
d4、ref对于来自前面的表的任意行组合,将从该表中读取所有匹配的行。这种类型用于所以既不是UNION也不是primaey key的情况,或者查询中使用了索引列的左子集,即索引中左边的部分组合。ref可以用于使用=或者操作符的带索引的列。
d5、ref_or_null,该连接类型如果ref,但是如果添加了mysql可以专门搜索包含null值的行,在解决子查询中经常使用该连接类型的优化。
d6、index_merge,该连接类型表示使用了索引合并优化方法。在这种情况下,key列包含了使用的索引的清单,key_len包含了使用的索引的最长的关键元素。
d7、unique_subquery,该类型替换了下面形式的in子查询的ref。是一个索引查询函数,可以完全替代子查询,效率更高。
d8、index_subquery,该连接类型类似于unique_subquery,可以替换in子查询,但是只适合下列形式的子查询中非唯一索引。
d9、range,只检索给定范围的行,使用一个索引来选择行。key列显示使用了那个索引。key_len包含所使用索引的最长关键元素。当使用=,,>,>=,,between或者in操作符,用常量比较关键字列时,类型为range。
d10、index,该连接类型与all相同,除了只扫描索引树。着通常比all快,引文索引问价通常比数据文件小。
d11、all,对于前面的表的任意行组合,进行完整的表扫描。如果表是第一个没有标记const的表,这样不好,并且在其他情况下很差。通常可以增加更多的索引来避免使用all连接。
e. possible_keys: The possible_keys column indicates which index mysql can use to find rows in the table. If the column is null, there is no associated index. In this case, you can improve query performance by checking the where clause to see if it causes certain columns or columns that are suitable for indexing. If so, you can create appropriate indexes to improve query performance.
f, key: Indicates the index actually used in the query. If no index is selected, the value of this column is null. If you want to force mysql to use or ignore the index in the possible_key column, use it in the query. force index, use index or ignore index.
g, key_len: Indicates the length of the mysql selected index field calculated in bytes. If the key is null, the length is null. Note that the key_len value determines how many fields in a multi-column index mysql will actually use.
h, ref: Indicates which column, constant or index to use to query records.
i, rows: Displays the number of rows that mysql must check when querying in the table.
j, Extra: The detailed information of this column when mysql processes the query.

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