Common reasons for MySQL performance decline over time include slow queries, unreasonable index design, poor table structure design, and system resource bottlenecks. 1. Enable slow query logs and combine EXPLAIN to analyze execution plans to find time-consuming SQL and optimize; 2. Check index usage to avoid missing, inefficient or excessive indexes, and reasonably create joint indexes; 3. Regularly maintain table structure, optimize field types, execute ANALYZE TABLE and OPTIMIZE TABLE, and consider large table partitioning; 4. Monitor system resources and adjust configuration parameters such as innodb_buffer_pool_size to match hardware capabilities. The above methods can be used to effectively troubleshoot and improve performance.
MySQL performance declines over time is a common problem, especially when data volume increases, query complexity increases, or hardware resources are not adjusted in time. If you find that the database response is slower, the query execution time becomes longer, and even occasionally lag, it is likely to be a gradual degradation of performance. Below are some common reasons and response methods to help you troubleshoot and optimize.

1. Check the slow query log and execution plan
Slow queries are the most common cause of performance degradation . MySQL provides slow query log function, which can record SQL statements whose execution time exceeds the set threshold. Enable and analyze this log to quickly locate the "drag" statement.
- How to enable slow query logs:
- Add in the configuration file
my.cnf
ormy.ini
:slow_query_log = 1 slow_query_log_file = /var/log/mysql/mysql-slow.log long_query_time = 1
- Then restart MySQL or execute the
SET GLOBAL
command to take effect.
- Add in the configuration file
When analyzing slow queries, remember to use EXPLAIN
to view the execution plan to see if there are any problems such as full table scans, missing indexes, or temporary table usage.

2. The index design is unreasonable or missing
If the index is used well, the performance will be greatly improved; if the index is not used well, it will actually drag down the writing performance . Common questions include:
- There is no appropriate index for the query field
- Low selectivity fields are used as indexes (e.g. gender)
- Too many indexes, resulting in slow writing
- Incorrect joint index order
For example: If you often use WHERE user_id = ? AND status = ?
query, you should create a joint index of (user_id, status)
instead of creating two single column indexes separately.

It is recommended to check the index usage of the table regularly, which can be done by:
- Using
SHOW INDEX FROM table_name
- Use
information_schema.STATISTICS
- Tips for analyzing missing indexes in slow query logs
3. The table structure is unreasonable or not regularly maintained
As the amount of data increases, the problem of unreasonable table structure design will gradually be exposed. For example, the field type is too large, the redundant data is too much, and there is no partition.
- Inappropriate field type selection : For example, using
TEXT
to store short strings will not only waste space, but may also affect query performance. - There is no regular table maintenance : for example,
ANALYZE TABLE
andOPTIMIZE TABLE
. These operations can update index statistics and recycle fragmented space. - Large table unpartitioned : When the data volume of a single table exceeds one million or even tens of millions, consider using partitioned tables to improve query efficiency.
It is a good habit to execute maintenance commands regularly:
ANALYZE TABLE your_table; OPTIMIZE TABLE your_table;
4. System resource bottleneck or configuration is unreasonable
The performance of MySQL not only depends on whether SQL is written well, but also on system resources and configuration parameters.
Frequently asked questions include:
- Insufficient memory, resulting in frequent disk IO
- CPU becomes the bottleneck
- Poor disk IO performance
- MySQL configuration parameters are unreasonable, such as the buffer pool (innodb_buffer_pool_size) is too small
suggestion:
- Use
top
,htop
,iostat
,vmstat
and other tools to monitor the usage of server resources - Set
innodb_buffer_pool_size
reasonably according to server memory (usually set to 50%-70% of physical memory) - If using SSD, adjust
innodb_io_capacity
appropriately to improve IO throughput
Basically that's it. There are many reasons for performance degradation, but most of them can be checked and improved through slow query logs, index optimization, table structure maintenance and resource monitoring. Not every time you need to make a big move, but regular inspections and optimizations are necessary.
The above is the detailed content of Troubleshooting MySQL Performance Degradation Over Time. For more information, please follow other related articles on the PHP Chinese website!

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