Database capacity planning and scaling: MySQL vs. PostgreSQL
Database capacity planning and expansion: MySQL vs. PostgreSQL
Introduction:
With the rapid development of the Internet and the advent of the big data era, database capacity planning and expansion have become increasingly important. MySQL and PostgreSQL are two popular relational database management systems (RDBMS). They have different characteristics and applicable scenarios in database capacity planning and expansion. This article will compare the two databases and give some code examples to demonstrate their differences.
1. MySQL
MySQL is an open source relational database management system known for its simplicity, high performance and reliability. In terms of database capacity planning, MySQL can easily handle a large number of read and write operations and provides several features to optimize and expand capacity.
- Partitioned table
MySQL supports partitioned tables, which can divide a large table into multiple small partitions, and each partition can perform read and write operations independently. This improves query efficiency and scalability. The following is an example of creating a partitioned table:
CREATE TABLE my_table ( id INT, name VARCHAR(100), created_at DATETIME ) PARTITION BY RANGE (YEAR(created_at)) ( PARTITION p0 VALUES LESS THAN (2020), PARTITION p1 VALUES LESS THAN (2021), PARTITION p2 VALUES LESS THAN (2022) );
- Master-slave replication
MySQL supports master-slave replication, which can synchronize write operations from one master database to multiple slave databases. Applications can distribute read operations to slave databases, thereby offloading the primary database. The following is an example of configuring master-slave replication:
Master database configuration:
binlog-format = mixed server-id = 1
Slave database configuration:
server-id = 2 relay-log = /var/lib/mysql/mysql-relay-bin read-only = 1
- Database sharding
MySQL supports database sharding, which can horizontally split data into multiple database servers. Each server is only responsible for a part of the data, which can improve query efficiency and scalability. The following is an example of configuring database sharding:
CREATE TABLE sharded_table ( id INT PRIMARY KEY, name VARCHAR(100) );
CREATE TABLE shard_1.sharded_table ( id INT PRIMARY KEY, name VARCHAR(100) ); CREATE TABLE shard_2.sharded_table ( id INT PRIMARY KEY, name VARCHAR(100) ); ... CREATE TABLE shard_n.sharded_table ( id INT PRIMARY KEY, name VARCHAR(100) );
2. PostgreSQL
PostgreSQL is a powerful open source relational database management system with its flexibility, scalability and powerful Known for extensions. In terms of database capacity planning, PostgreSQL provides several features to optimize and expand capacity.
- Partitioned table
PostgreSQL supports partitioned tables, which can divide a large table into multiple small partitions, and each partition can perform read and write operations independently. This improves query efficiency and scalability. The following is an example of creating a partitioned table:
CREATE TABLE my_table ( id INT, name VARCHAR(100), created_at TIMESTAMP ) PARTITION BY RANGE (created_at) ( PARTITION p0 START (MINVALUE) END ('2020-12-31') PARTITION p1 START ('2021-01-01') END ('2021-12-31') PARTITION p2 START ('2022-01-01') END (MAXVALUE) );
- Replication and streaming replication
PostgreSQL supports replication and streaming replication, which can synchronize write operations from one master database to multiple slave databases . Applications can distribute read operations to slave databases, thereby offloading the primary database. The following is an example of configuring master-slave replication:
Master database configuration:
wal_level = replica max_wal_senders = 5
Slave database configuration:
hot_standby = on
- Extension plug-in
PostgreSQL Supports extension plug-ins, and provides some other functions in addition to the default functions, such as full-text search, geographic information system, etc. Applicable plug-ins can be selected and installed according to needs. The following is an example of installing the full-text search plug-in:
CREATE EXTENSION pg_trgm;
Conclusion:
Both MySQL and PostgreSQL are relatively mature and stable relational database management systems, both in terms of database capacity planning and expansion. its unique advantages. Based on specific needs and scenarios, an appropriate database can be selected to optimize and expand capacity.
Reference materials:
- MySQL official documentation: https://dev.mysql.com/doc/
- PostgreSQL official documentation: https://www. postgresql.org/docs/
The above is the detailed content of Database capacity planning and scaling: MySQL vs. PostgreSQL. For more information, please follow other related articles on the PHP Chinese website!

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