database-manager

Comprehensive database management workflow that orchestrates database architecture, schema design, performance optimization, and data governance. Handles everything from database design and implementation to performance tuning, backup strategies, and data migration.

$ インストール

git clone https://github.com/majiayu000/claude-skill-registry /tmp/claude-skill-registry && cp -r /tmp/claude-skill-registry/skills/data/database-manager ~/.claude/skills/claude-skill-registry

// tip: Run this command in your terminal to install the skill


name: database-manager description: Comprehensive database management workflow that orchestrates database architecture, schema design, performance optimization, and data governance. Handles everything from database design and implementation to performance tuning, backup strategies, and data migration. license: Apache 2.0 tools: []

Database Manager - Complete Database Management Workflow

Overview

This skill provides end-to-end database management services by orchestrating database architects, performance specialists, and data governance experts. It transforms data requirements into optimized database systems with comprehensive design, performance optimization, and operational excellence.

Key Capabilities:

  • 🏗️ Database Architecture Design - Multi-database architecture and schema design
  • Performance Optimization - Query optimization, indexing, and performance tuning
  • 🔄 Data Migration & Replication - Seamless data migration and replication strategies
  • 📊 Data Governance & Security - Data quality, security, and compliance management
  • 🛡️ Backup & Recovery - Comprehensive backup strategies and disaster recovery

When to Use This Skill

Perfect for:

  • Database architecture design and implementation
  • Schema design and data modeling
  • Performance optimization and query tuning
  • Data migration and database modernization
  • Backup and disaster recovery implementation
  • Data governance and compliance management

Triggers:

  • "Design database architecture for [application]"
  • "Optimize database performance for [system]"
  • "Implement data migration from [source] to [target]"
  • "Set up backup and disaster recovery for databases"
  • "Implement data governance and security measures"

Database Expert Panel

Database Architect (Database Design & Architecture)

  • Focus: Database architecture, schema design, data modeling
  • Techniques: Normalization, indexing strategies, data modeling, database patterns
  • Considerations: Scalability, performance, data integrity, maintainability

Performance Specialist (Database Optimization)

  • Focus: Query optimization, performance tuning, indexing strategies
  • Techniques: Query analysis, performance profiling, caching strategies, optimization
  • Considerations: Response times, throughput, resource utilization, scalability

Data Migration Expert (Migration & Replication)

  • Focus: Data migration, database replication, data synchronization
  • Techniques: ETL processes, data transformation, replication strategies, migration planning
  • Considerations: Data integrity, minimal downtime, data consistency, rollback procedures

Data Governance Specialist (Data Quality & Security)

  • Focus: Data governance, data quality, security, compliance
  • Techniques: Data quality management, access control, encryption, compliance frameworks
  • Considerations: Data privacy, regulatory compliance, audit trails, data classification

Backup & Recovery Expert (Backup & Disaster Recovery)

  • Focus: Backup strategies, disaster recovery, high availability
  • Techniques: Backup automation, point-in-time recovery, failover strategies, testing
  • Considerations: RPO/RTO requirements, data retention, recovery testing, business continuity

Database Management Workflow

Phase 1: Database Requirements Analysis & Planning

Use when: Starting database design or database modernization

Tools Used:

/sc:analyze database-requirements
Database Architect: database requirements analysis and architecture planning
Performance Specialist: performance requirements and optimization needs
Data Governance Specialist: governance and compliance requirements

Activities:

  • Analyze data requirements and usage patterns
  • Define database architecture and technology selection
  • Identify performance requirements and scalability needs
  • Assess data governance and compliance requirements
  • Plan migration strategies and timelines

Phase 2: Database Architecture & Schema Design

Use when: Designing database structure and data models

Tools Used:

/sc:design --type database schema-architecture
Database Architect: comprehensive database design and schema creation
Performance Specialist: performance-optimized schema design
Data Governance Specialist: data classification and security design

Activities:

  • Design database architecture and technology selection
  • Create normalized data models and schemas
  • Design indexing strategies for optimal performance
  • Plan data partitioning and distribution strategies
  • Define data relationships and integrity constraints

Phase 3: Database Implementation & Optimization

Use when: Implementing database and optimizing performance

Tools Used:

/sc:implement database-optimization
Performance Specialist: query optimization and performance tuning
Database Architect: database implementation and best practices
Data Governance Specialist: security implementation and access control

Activities:

  • Implement database schema and data models
  • Optimize queries and implement indexing strategies
  • Configure database parameters for optimal performance
  • Implement caching strategies and query optimization
  • Set up database monitoring and performance metrics

Phase 4: Data Migration & Integration

Use when: Migrating data or integrating with other systems

Tools Used:

/sc:implement data-migration
Data Migration Expert: migration planning and execution
Database Architect: target database design and validation
Performance Specialist: migration performance optimization

Activities:

  • Design ETL processes and data transformation logic
  • Implement data validation and quality checks
  • Execute data migration with minimal downtime
  • Validate data integrity and consistency
  • Implement data synchronization and replication

Phase 5: Data Governance & Security Implementation

Use when: Implementing data governance and security measures

Tools Used:

/sc:implement data-governance
Data Governance Specialist: governance framework implementation
Database Architect: security architecture and access control
Performance Specialist: security-optimized database configuration

Activities:

  • Implement data classification and access controls
  • Set up data encryption and security measures
  • Create audit trails and compliance reporting
  • Implement data quality management processes
  • Configure data retention and deletion policies

Phase 6: Backup & Disaster Recovery Setup

Use when: Setting up backup strategies and disaster recovery

Tools Used:

/sc:implement backup-recovery
Backup & Recovery Expert: backup strategy and disaster recovery implementation
Database Architect: recovery architecture and testing
Performance Specialist: backup performance optimization

Activities:

  • Design backup strategies and retention policies
  • Implement automated backup procedures
  • Set up disaster recovery and failover mechanisms
  • Create recovery testing and validation procedures
  • Document backup and recovery procedures

Integration Patterns

SuperClaude Command Integration

CommandUse CaseOutput
/sc:design --type databaseDatabase designComplete database architecture
/sc:implement database-optimizationPerformance tuningOptimized database configuration
/sc:implement data-migrationData migrationComplete migration solution
/sc:implement data-governanceData governanceGovernance framework
/sc:implement backup-recoveryBackup/DRBackup and disaster recovery

Database Technology Integration

TechnologyRoleCapabilities
PostgreSQLRelational databaseAdvanced relational database features
MongoDBNoSQL databaseDocument-oriented database
RedisCache/databaseIn-memory caching and data store
MySQLRelational databasePopular relational database

MCP Server Integration

ServerExpertiseUse Case
SequentialDatabase reasoningComplex database design and problem-solving
Web SearchDatabase trendsLatest database practices and optimizations
FirecrawlDocumentationDatabase documentation and best practices

Usage Examples

Example 1: Complete Database Architecture Design

User: "Design a scalable database architecture for an e-commerce platform with high performance requirements"

Workflow:
1. Phase 1: Analyze e-commerce data requirements and performance needs
2. Phase 2: Design multi-database architecture with proper data distribution
3. Phase 3: Implement optimized schemas with proper indexing
4. Phase 4: Set up data migration and integration with payment systems
5. Phase 5: Implement data governance and security measures
6. Phase 6: Configure backup and disaster recovery procedures

Output: Scalable database architecture with optimized performance and comprehensive governance

Example 2: Database Performance Optimization

User: "Optimize our database performance for better response times and throughput"

Workflow:
1. Phase 1: Analyze current database performance and identify bottlenecks
2. Phase 2: Design optimization strategies with proper indexing
3. Phase 3: Implement query optimization and caching strategies
4. Phase 4: Configure database parameters for optimal performance
5. Phase 5: Set up performance monitoring and alerting
6. Phase 6: Validate performance improvements and document results

Output: Optimized database with significant performance improvements and monitoring

Example 3: Data Migration Project

User: "Migrate our legacy database to a modern database system with minimal downtime"

Workflow:
1. Phase 1: Analyze legacy database and migration requirements
2. Phase 2: Design migration strategy with minimal downtime approach
3. Phase 3: Implement ETL processes and data transformation
4. Phase 4: Execute migration with data validation and testing
5. Phase 5: Set up data synchronization and cutover procedures
6. Phase 6: Validate migration success and decommission legacy system

Output: Successful database migration with minimal downtime and data integrity

Quality Assurance Mechanisms

Multi-Layer Database Validation

  • Design Validation: Database architecture and schema validation
  • Performance Validation: Performance testing and optimization validation
  • Data Integrity Validation: Data consistency and integrity validation
  • Security Validation: Security controls and compliance validation

Automated Quality Checks

  • Schema Validation: Automated schema validation and compliance checking
  • Performance Monitoring: Automated performance monitoring and alerting
  • Data Quality Checks: Automated data quality validation and reporting
  • Security Monitoring: Automated security monitoring and vulnerability scanning

Continuous Database Improvement

  • Performance Optimization: Ongoing performance monitoring and optimization
  • Schema Evolution: Continuous schema improvement and adaptation
  • Data Quality Management: Ongoing data quality monitoring and improvement
  • Security Enhancement: Continuous security assessment and improvement

Output Deliverables

Primary Deliverable: Complete Database System

database-system/
├── architecture/
│   ├── schemas/                  # Database schemas and data models
│   ├── indexes/                  # Indexing strategies and implementations
│   ├── partitions/               # Data partitioning and distribution
│   └── relationships/            # Data relationships and constraints
├── optimization/
│   ├── queries/                  # Optimized queries and procedures
│   ├── caching/                  # Caching strategies and implementations
│   ├── configuration/            # Database configuration and tuning
│   └── monitoring/               # Performance monitoring and metrics
├── migration/
│   ├── etl-processes/            # ETL processes and data transformation
│   ├── validation/               # Data validation and quality checks
│   ├── synchronization/          # Data synchronization and replication
│   └── rollback/                 # Rollback procedures and scripts
├── governance/
│   ├── security/                 # Security controls and access management
│   ├── audit-logs/               # Audit trails and compliance reporting
│   ├── data-quality/             # Data quality management processes
│   └── policies/                 # Data policies and procedures
├── backup-recovery/
│   ├── backup-scripts/           # Automated backup scripts and procedures
│   ├── recovery-procedures/      # Disaster recovery procedures
│   ├── testing/                  # Backup and recovery testing
│   └── documentation/            # Backup and recovery documentation
└── documentation/
    ├── architecture-docs/        # Database architecture documentation
    ├── performance-docs/          # Performance optimization documentation
    ├── migration-docs/           # Migration procedures and documentation
    └── governance-docs/          # Data governance and security documentation

Supporting Artifacts

  • Database Architecture Documents: Complete database design and architecture documentation
  • Performance Reports: Database performance analysis and optimization recommendations
  • Migration Documentation: Detailed migration procedures and validation results
  • Governance Documentation: Data governance policies and compliance documentation
  • Backup and Recovery Procedures: Complete backup and disaster recovery documentation

Advanced Features

Intelligent Database Optimization

  • AI-powered query optimization and performance tuning
  • Automated indexing strategy and implementation
  • Intelligent caching strategies and optimization
  • Predictive performance analysis and optimization

Advanced Data Governance

  • AI-powered data quality assessment and improvement
  • Automated data classification and security implementation
  • Intelligent data lineage and impact analysis
  • Automated compliance validation and reporting

Smart Migration Strategies

  • AI-powered migration planning and execution
  • Automated data transformation and validation
  • Intelligent risk assessment and mitigation
  • Automated rollback and recovery procedures

Advanced Backup and Recovery

  • AI-powered backup optimization and scheduling
  • Intelligent disaster recovery planning and testing
  • Automated recovery procedures and validation
  • Predictive failure analysis and prevention

Troubleshooting

Common Database Management Challenges

  • Performance Issues: Use proper indexing, query optimization, and caching
  • Data Integrity Problems: Implement proper constraints, validation, and audit trails
  • Migration Challenges: Use proper planning, testing, and rollback procedures
  • Security Issues: Implement proper access controls, encryption, and monitoring

Database Optimization Issues

  • Query Performance: Use proper indexing, query optimization, and caching
  • Resource Utilization: Optimize configuration, resource allocation, and monitoring
  • Scalability Problems: Use proper partitioning, distribution, and scaling strategies
  • Data Growth: Implement proper archiving, retention, and cleanup procedures

Best Practices

For Database Design

  • Use proper normalization and data modeling techniques
  • Implement appropriate indexing strategies for performance
  • Design for scalability and maintainability
  • Use proper data types and constraints for data integrity

For Performance Optimization

  • Monitor performance metrics and identify bottlenecks
  • Use appropriate caching strategies and query optimization
  • Implement proper indexing and partitioning strategies
  • Regularly review and optimize database configuration

For Data Migration

  • Plan migration carefully with proper testing and validation
  • Use appropriate ETL tools and data transformation techniques
  • Implement proper rollback procedures and contingency plans
  • Validate data integrity and consistency throughout migration

For Data Governance

  • Implement proper data classification and access controls
  • Use comprehensive audit trails and compliance monitoring
  • Implement data quality management and validation processes
  • Regularly review and update governance policies and procedures

This database manager skill transforms the complex process of database management into a guided, expert-supported workflow that ensures optimized, secure, and maintainable database systems with comprehensive governance and operational excellence.