managing-database-recovery
About
This skill manages database recovery operations including disaster recovery, point-in-time recovery (PITR), and automated failover strategies. It's triggered when users request help with database recovery, backup validation, or multi-region failover. The skill automates backup verification and recovery testing using the database-recovery-manager plugin.
Documentation
Overview
This skill empowers Claude to orchestrate comprehensive database recovery strategies, including disaster recovery setup, point-in-time recovery implementation, and automated failover configuration. It leverages the database-recovery-manager plugin to ensure database resilience and minimize downtime.
How It Works
- Initiate Recovery Manager: The skill invokes the
/recoverycommand to start the database-recovery-manager plugin. - Analyze User Request: The plugin analyzes the user's request to determine the specific recovery task (e.g., disaster recovery setup, PITR configuration).
- Execute Recovery Steps: The plugin executes the necessary steps to implement the requested recovery strategy, including configuring backups, setting up replication, and automating failover procedures.
When to Use This Skill
This skill activates when you need to:
- Implement a disaster recovery plan for a production database.
- Configure point-in-time recovery (PITR) for a database.
- Automate backup validation and recovery testing.
Examples
Example 1: Setting up Disaster Recovery
User request: "Set up disaster recovery for my production PostgreSQL database."
The skill will:
- Invoke the
/recoverycommand. - Configure a disaster recovery plan, including setting up replication to a secondary region and automating failover procedures.
Example 2: Implementing Point-in-Time Recovery
User request: "Implement point-in-time recovery for my MySQL database."
The skill will:
- Invoke the
/recoverycommand. - Configure point-in-time recovery, including setting up regular backups and enabling transaction log archiving.
Best Practices
- Backup Frequency: Ensure backups are performed frequently enough to meet your recovery point objective (RPO).
- Recovery Testing: Regularly test your recovery procedures to ensure they are effective and efficient.
- Documentation: Document your recovery procedures thoroughly to ensure they can be followed by anyone on your team.
Integration
This skill can be integrated with other plugins for database management, monitoring, and alerting to provide a comprehensive database operations solution. For example, it could work with a monitoring plugin to automatically trigger failover in the event of a database outage.
Quick Install
/plugin add https://github.com/jeremylongshore/claude-code-plugins-plus/tree/main/database-recovery-managerCopy and paste this command in Claude Code to install this skill
GitHub 仓库
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