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Amazon RDS Event Categories and Event Messages

Amazon RDS generates a significant number of events in categories that you can subscribe to using the Amazon RDS Console, CLI, or the API. Each category applies to a source type, which can be a DB instance, DB snapshot, DB security group, or DB parameter group.

Event categories for a DB instance source type include: Availability, Backup, Configuration Change, Creation, Deletion, Failover, Failure, Low Storage, Maintenance, Notification, Read Replica, Recovery, and Restoration.
Event categories for a DB snapshot source type include: Creation, Deletion, and Restoration.
Event categories for a DB security group source type include: Configuration Change and Failure.
The event category for a DB parameter group source type is Configuration Change.
The following table shows the event category and a list of events when a DB instance is the source type.

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