How to check MySQL storage engine type on Linux_MySQL
Question: I need to know whether my MySQL database table is MyISAM or Innodb type. How can I check the type of a MySQL database table?
There are two major MySQL storage engines used: MyISAM and Innodb . MyISAM is non-transactional, and thus can be faster for reads, while InnoDB fully supports transactions (e.g., commit/rollback) with finer-grain locking. When you create a new MySQL table, you choose its type (i.e., storage engine). Without any choice, you will simply use a pre-configured default engine.
If you would like to know the type of an existing MySQL database table, there are a couple of ways to do it.
Method One
If you have access to phpMyAdmin, you can find out the database type from phpMyAdmin. Simply choose your database from phpMyAdmin to see a list of its tables. Under "Type" column, you will see the database type for each table.
Method Two
If you can log in to a MySQL server directly, another way to identify the storage engine is to run the following MySQL command inside your MySQL server after logging in.
mysql> SELECT ENGINE FROM information_schema.TABLES WHERE TABLE_SCHEMA = 'my_database' AND TABLE_NAME = 'my_table';
The above command will show the engine type of a table called 'my_table' in 'my_database' database.
Method Three
Yet another method to check the MySQL engine is to use mysqlshow , a command-line utility which shows database information. The mysqlshow utility comes with MySQL client package installation . To use mysqlshow , you need to supply MySQL server login credential.
The following command will show information about a particular database. Under "Engine" column, you will see the storage engine for each table.
$ mysqlshow -u
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