MySQL 9.3 Reference Manual Including MySQL NDB Cluster 9.3
Database performance depends on several factors at the database level, such as tables, queries, and configuration settings. These software constructs result in CPU and I/O operations at the hardware level, which you must minimize and make as efficient as possible. As you work on database performance, you start by learning the high-level rules and guidelines for the software side, and measuring performance using wall-clock time. As you become an expert, you learn more about what happens internally, and start measuring things such as CPU cycles and I/O operations.
Typical users aim to get the best database performance out of their existing software and hardware configurations. Advanced users look for opportunities to improve the MySQL software itself, or develop their own storage engines and hardware appliances to expand the MySQL ecosystem.
The most important factor in making a database application fast is its basic design:
Are the tables structured properly? In particular, do the columns have the right data types, and does each table have the appropriate columns for the type of work? For example, applications that perform frequent updates often have many tables with few columns, while applications that analyze large amounts of data often have few tables with many columns.
Are the right indexes in place to make queries efficient?
Are you using the appropriate storage engine for each table,
and taking advantage of the strengths and features of each
storage engine you use? In particular, the choice of a
transactional storage engine such as
InnoDB
or a nontransactional one such as
MyISAM
can be very important for performance and scalability.
InnoDB
is the default storage engine
for new tables. In practice, the advanced
InnoDB
performance features mean that
InnoDB
tables often outperform the
simpler MyISAM
tables, especially for a
busy database.
Does each table use an appropriate row format? This choice
also depends on the storage engine used for the table. In
particular, compressed tables use less disk space and so
require less disk I/O to read and write the data.
Compression is available for all kinds of workloads with
InnoDB
tables, and for read-only
MyISAM
tables.
Does the application use an appropriate
locking strategy? For
example, by allowing shared access when possible so that
database operations can run concurrently, and requesting
exclusive access when appropriate so that critical
operations get top priority. Again, the choice of storage
engine is significant. The InnoDB
storage
engine handles most locking issues without involvement from
you, allowing for better concurrency in the database and
reducing the amount of experimentation and tuning for your
code.
Are all memory areas used
for caching sized correctly? That is, large enough to
hold frequently accessed data, but not so large that they
overload physical memory and cause paging. The main memory
areas to configure are the InnoDB
buffer
pool and the MyISAM
key cache.
Any database application eventually hits hardware limits as the database becomes more and more busy. A DBA must evaluate whether it is possible to tune the application or reconfigure the server to avoid these bottlenecks, or whether more hardware resources are required. System bottlenecks typically arise from these sources:
Disk seeks. It takes time for the disk to find a piece of data. With modern disks, the mean time for this is usually lower than 10ms, so we can in theory do about 100 seeks a second. This time improves slowly with new disks and is very hard to optimize for a single table. The way to optimize seek time is to distribute the data onto more than one disk.
Disk reading and writing. When the disk is at the correct position, we need to read or write the data. With modern disks, one disk delivers at least 10–20MB/s throughput. This is easier to optimize than seeks because you can read in parallel from multiple disks.
CPU cycles. When the data is in main memory, we must process it to get our result. Having large tables compared to the amount of memory is the most common limiting factor. But with small tables, speed is usually not the problem.
Memory bandwidth. When the CPU needs more data than can fit in the CPU cache, main memory bandwidth becomes a bottleneck. This is an uncommon bottleneck for most systems, but one to be aware of.
To use performance-oriented SQL extensions in a portable MySQL
program, you can wrap MySQL-specific keywords in a statement
within /*! */
comment delimiters. Other SQL
servers ignore the commented keywords. For information about
writing comments, see Section 11.7, “Comments”.