过年这段时间由于线上数据库经常压力过大导致响应非常缓慢甚至死机,咬咬牙下大决心来解决效率不高的问题!
首先是由于公司秉承快速开发原则,频繁上线,导致每次忽视了性能问题!日积月累,所以导致系统越来越慢,所以如果你的系统查询语句本来就优化的很好了可能参考意义不大!
提取慢查询日志文件,应该在你的DataDir目录下面
通过程序处理慢查询文件,将文件格式的慢查询导入到数据库中:
1 mysql> desc slow_query;
2 +---------------+-------------+------+-----+---------+-------+
3 | Field | Type | Null | Key | Default | Extra |
4 +---------------+-------------+------+-----+---------+-------+
5 | Date | varchar(32) | NO | | | | 查询发生的时间
6 | user | varchar(64) | NO | | | |
7 | host | varchar(64) | NO | | | |
8 | content | text | NO | | | | 将Statement进行Mask后的语句,便于Group By
9 | query_time | int(11) | NO | | | | 查询所用时间,直接性能指标
10 | lock_time | int(11) | YES | | 0 | | 等待锁定的时间
11 | rows_sent | int(11) | YES | | 0 | | 返回的结果行数
12 | rows_examined | int(11) | YES | | 0 | | 扫描行数
13 | statement | text | YES | | NULL | | 实际查询语句
14 +---------------+-------------+------+-----+---------+-------+
然后发挥您的想象力在这个表中尽力捕捉你想捕捉的,那类型语句压力最大、扫描行数最多、等锁最久……
比如:
优化后:
mysql> select sum(query_time)/count(*),count
(*),sum(query_time),min(Date),Max(Date) from slow where Date>'2008-02-20 22:50:52'and Date+--------------------------+----------+-----------------+---------------------+---------------------+
| sum(query_time)/count(*) | count(*) | sum(query_time) | min(Date) | Max(Date) |
+--------------------------+----------+-----------------+---------------------+---------------------+
| 5.7233 | 2197 | 12574 | 2008-02-20 22:51:16 | 2008-02-21 17:34:10 |
+--------------------------+----------+-----------------+---------------------+---------------------+
1 row in set (0.09 sec)
优化前:
mysql> select sum(query_time)/count(*),count(*),sum(query_time),min(Date),Max(Date) from slow where Date>'2008-02-17 22:50:52' and Date+--------------------------+----------+-----------------+---------------------+---------------------+
| sum(query_time)/count(*) | count(*) | sum(query_time) | min(Date) | Max(Date) |
+--------------------------+----------+-----------------+---------------------+---------------------+
| 2.5983 | 16091 | 41810 | 2008-02-17 22:50:58 | 2008-02-18 17:34:34 |
+--------------------------+----------+-----------------+---------------------+---------------------+
1 row in set (0.15 sec)

MySQL index cardinality has a significant impact on query performance: 1. High cardinality index can more effectively narrow the data range and improve query efficiency; 2. Low cardinality index may lead to full table scanning and reduce query performance; 3. In joint index, high cardinality sequences should be placed in front to optimize query.

The MySQL learning path includes basic knowledge, core concepts, usage examples, and optimization techniques. 1) Understand basic concepts such as tables, rows, columns, and SQL queries. 2) Learn the definition, working principles and advantages of MySQL. 3) Master basic CRUD operations and advanced usage, such as indexes and stored procedures. 4) Familiar with common error debugging and performance optimization suggestions, such as rational use of indexes and optimization queries. Through these steps, you will have a full grasp of the use and optimization of MySQL.

MySQL's real-world applications include basic database design and complex query optimization. 1) Basic usage: used to store and manage user data, such as inserting, querying, updating and deleting user information. 2) Advanced usage: Handle complex business logic, such as order and inventory management of e-commerce platforms. 3) Performance optimization: Improve performance by rationally using indexes, partition tables and query caches.

SQL commands in MySQL can be divided into categories such as DDL, DML, DQL, DCL, etc., and are used to create, modify, delete databases and tables, insert, update, delete data, and perform complex query operations. 1. Basic usage includes CREATETABLE creation table, INSERTINTO insert data, and SELECT query data. 2. Advanced usage involves JOIN for table joins, subqueries and GROUPBY for data aggregation. 3. Common errors such as syntax errors, data type mismatch and permission problems can be debugged through syntax checking, data type conversion and permission management. 4. Performance optimization suggestions include using indexes, avoiding full table scanning, optimizing JOIN operations and using transactions to ensure data consistency.

InnoDB achieves atomicity through undolog, consistency and isolation through locking mechanism and MVCC, and persistence through redolog. 1) Atomicity: Use undolog to record the original data to ensure that the transaction can be rolled back. 2) Consistency: Ensure the data consistency through row-level locking and MVCC. 3) Isolation: Supports multiple isolation levels, and REPEATABLEREAD is used by default. 4) Persistence: Use redolog to record modifications to ensure that data is saved for a long time.

MySQL's position in databases and programming is very important. It is an open source relational database management system that is widely used in various application scenarios. 1) MySQL provides efficient data storage, organization and retrieval functions, supporting Web, mobile and enterprise-level systems. 2) It uses a client-server architecture, supports multiple storage engines and index optimization. 3) Basic usages include creating tables and inserting data, and advanced usages involve multi-table JOINs and complex queries. 4) Frequently asked questions such as SQL syntax errors and performance issues can be debugged through the EXPLAIN command and slow query log. 5) Performance optimization methods include rational use of indexes, optimized query and use of caches. Best practices include using transactions and PreparedStatemen

MySQL is suitable for small and large enterprises. 1) Small businesses can use MySQL for basic data management, such as storing customer information. 2) Large enterprises can use MySQL to process massive data and complex business logic to optimize query performance and transaction processing.

InnoDB effectively prevents phantom reading through Next-KeyLocking mechanism. 1) Next-KeyLocking combines row lock and gap lock to lock records and their gaps to prevent new records from being inserted. 2) In practical applications, by optimizing query and adjusting isolation levels, lock competition can be reduced and concurrency performance can be improved.


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