Smithery Logo
MCPsSkillsDocsPricing
Login
NewFlame, an assistant that learns and improves. Available onTelegramSlack
    Microck

    moai-domain-database

    Microck/moai-domain-database
    Data & Analytics
    116

    About

    SKILL.md

    Install

    • Telegram
      Telegram
    • Slack
      Slack
    • Claude Code
      Claude Code
    • Codex
      Codex
    • OpenClaw
      OpenClaw
    • Cursor
      Cursor
    • Amp
      Amp
    • GitHub Copilot
      GitHub Copilot
    • Gemini CLI
      Gemini CLI
    • Kilo Code
      Kilo Code
    • Junie
      Junie
    • Replit
      Replit
    • Windsurf
      Windsurf
    • Cline
      Cline
    • Continue
      Continue
    • OpenCode
      OpenCode
    • OpenHands
      OpenHands
    • Roo Code
      Roo Code
    • Augment
      Augment
    • Goose
      Goose
    • Trae
      Trae
    • Zencoder
      Zencoder
    • Antigravity
      Antigravity
    • Download skill
    ├─
    ├─
    └─
    Smithery Logo

    Give agents more agency

    Resources

    DocumentationPrivacy PolicySystem Status

    Company

    PricingAboutBlog

    Connect

    © 2026 Smithery. All rights reserved.

    About

    Database specialist covering PostgreSQL, MongoDB, Redis, and advanced data patterns for modern applications

    SKILL.md

    Database Domain Specialist

    Quick Reference (30 seconds)

    Enterprise Database Expertise - Comprehensive database patterns and implementations covering PostgreSQL, MongoDB, Redis, and advanced data management for scalable modern applications.

    Core Capabilities:

    • PostgreSQL: Advanced relational patterns, optimization, and scaling
    • MongoDB: Document modeling, aggregation, and NoSQL performance tuning
    • Redis: In-memory caching, real-time analytics, and distributed systems
    • Multi-Database: Hybrid architectures and data integration patterns
    • Performance: Query optimization, indexing strategies, and scaling
    • Operations: Connection management, migrations, and monitoring

    When to Use:

    • Designing database schemas and data models
    • Implementing caching strategies and performance optimization
    • Building scalable data architectures
    • Working with multi-database systems
    • Optimizing database queries and performance

    Implementation Guide (5 minutes)

    Quick Start Workflow

    Database Stack Initialization:

    from moai_domain_database import DatabaseManager
    
    # Initialize multi-database stack
    db_manager = DatabaseManager()
    
    # Configure PostgreSQL for relational data
    postgresql = db_manager.setup_postgresql(
     connection_string="postgresql://...",
     connection_pool_size=20,
     enable_query_logging=True
    )
    
    # Configure MongoDB for document storage
    mongodb = db_manager.setup_mongodb(
     connection_string="mongodb://...",
     database_name="app_data",
     enable_sharding=True
    )
    
    # Configure Redis for caching and real-time features
    redis = db_manager.setup_redis(
     connection_string="redis://...",
     max_connections=50,
     enable_clustering=True
    )
    
    # Use unified database interface
    user_data = db_manager.get_user_with_profile(user_id)
    analytics = db_manager.get_user_analytics(user_id, time_range="30d")
    

    Single Database Operations:

    # PostgreSQL schema migration
    moai db:migrate --database postgresql --migration-file schema_v2.sql
    
    # MongoDB aggregation pipeline
    moai db:aggregate --collection users --pipeline analytics_pipeline.json
    
    # Redis cache warming
    moai db:cache:warm --pattern "user:*" --ttl 3600
    

    Core Components

    1. PostgreSQL (modules/postgresql.md)
    • Advanced schema design and constraints
    • Complex query optimization and indexing
    • Window functions and CTEs
    • Partitioning and materialized views
    • Connection pooling and performance tuning
    1. MongoDB (modules/mongodb.md)
    • Document modeling and schema design
    • Aggregation pipelines for analytics
    • Indexing strategies and performance
    • Sharding and scaling patterns
    • Data consistency and validation
    1. Redis (modules/redis.md)
    • Multi-layer caching strategies
    • Real-time analytics and counting
    • Distributed locking and coordination
    • Pub/sub messaging and streams
    • Advanced data structures (HyperLogLog, Geo)

    Advanced Patterns (10+ minutes)

    Multi-Database Architecture

    Polyglot Persistence Pattern:

    class DataRouter:
     def __init__(self):
     self.postgresql = PostgreSQLConnection()
     self.mongodb = MongoDBConnection()
     self.redis = RedisConnection()
    
     def get_user_profile(self, user_id):
     # Get structured user data from PostgreSQL
     user = self.postgresql.get_user(user_id)
    
     # Get flexible profile data from MongoDB
     profile = self.mongodb.get_user_profile(user_id)
    
     # Get real-time status from Redis
     status = self.redis.get_user_status(user_id)
    
     return self.merge_user_data(user, profile, status)
    
     def update_user_data(self, user_id, data):
     # Route different data types to appropriate databases
     if 'structured_data' in data:
     self.postgresql.update_user(user_id, data['structured_data'])
    
     if 'profile_data' in data:
     self.mongodb.update_user_profile(user_id, data['profile_data'])
    
     if 'real_time_data' in data:
     self.redis.set_user_status(user_id, data['real_time_data'])
    
     # Invalidate cache across databases
     self.invalidate_user_cache(user_id)
    

    Data Synchronization:

    class DataSyncManager:
     def sync_user_data(self, user_id):
     # Sync from PostgreSQL to MongoDB for search
     pg_user = self.postgresql.get_user(user_id)
     search_document = self.create_search_document(pg_user)
     self.mongodb.upsert_user_search(user_id, search_document)
    
     # Update cache in Redis
     cache_data = self.create_cache_document(pg_user)
     self.redis.set_user_cache(user_id, cache_data, ttl=3600)
    

    Performance Optimization

    Query Performance Analysis:

    # PostgreSQL query optimization
    def analyze_query_performance(query):
     explain_result = postgresql.execute(f"EXPLAIN (ANALYZE, BUFFERS) {query}")
     return QueryAnalyzer(explain_result).get_optimization_suggestions()
    
    # MongoDB aggregation optimization
    def optimize_aggregation_pipeline(pipeline):
     optimizer = AggregationOptimizer()
     return optimizer.optimize_pipeline(pipeline)
    
    # Redis performance monitoring
    def monitor_redis_performance():
     metrics = redis.info()
     return PerformanceAnalyzer(metrics).get_recommendations()
    

    Scaling Strategies:

    # Read replicas for PostgreSQL
    read_replicas = postgresql.setup_read_replicas([
     "postgresql://replica1...",
     "postgresql://replica2..."
    ])
    
    # Sharding for MongoDB
    mongodb.setup_sharding(
     shard_key="user_id",
     num_shards=4
    )
    
    # Redis clustering
    redis.setup_cluster([
     "redis://node1:7000",
     "redis://node2:7000",
     "redis://node3:7000"
    ])
    

    Works Well With

    Complementary Skills:

    • moai-domain-backend - API integration and business logic
    • moai-foundation-core - Database migration and schema management
    • moai-workflow-project - Database project setup and configuration
    • moai-platform-baas - BaaS database integration patterns

    Technology Integration:

    • ORMs and ODMs (SQLAlchemy, Mongoose, TypeORM)
    • Connection pooling (PgBouncer, connection pools)
    • Migration tools (Alembic, Flyway)
    • Monitoring (pg_stat_statements, MongoDB Atlas)
    • Cache invalidation and synchronization

    Usage Examples

    Database Operations

    # PostgreSQL advanced queries
    users = postgresql.query(
     "SELECT * FROM users WHERE created_at > %s ORDER BY activity_score DESC LIMIT 100",
     [datetime.now() - timedelta(days=30)]
    )
    
    # MongoDB analytics
    analytics = mongodb.aggregate('events', [
     {"$match": {"timestamp": {"$gte": start_date}}},
     {"$group": {"_id": "$type", "count": {"$sum": 1}}},
     {"$sort": {"count": -1}}
    ])
    
    # Redis caching operations
    async def get_user_data(user_id):
     cache_key = f"user:{user_id}"
     data = await redis.get(cache_key)
    
     if not data:
     data = fetch_from_database(user_id)
     await redis.setex(cache_key, 3600, json.dumps(data))
    
     return json.loads(data)
    

    Multi-Database Transactions

    async def create_user_with_profile(user_data, profile_data):
     try:
     # Start transaction across databases
     async with transaction_manager():
     # Create user in PostgreSQL
     user_id = await postgresql.insert_user(user_data)
    
     # Create profile in MongoDB
     await mongodb.insert_user_profile(user_id, profile_data)
    
     # Set initial cache in Redis
     await redis.set_user_cache(user_id, {
     "id": user_id,
     "status": "active",
     "created_at": datetime.now().isoformat()
     })
    
     return user_id
    
     except Exception as e:
     # Automatic rollback across databases
     logger.error(f"User creation failed: {e}")
     raise
    

    Technology Stack

    Relational Database:

    • PostgreSQL 14+ (primary)
    • MySQL 8.0+ (alternative)
    • Connection pooling (PgBouncer, SQLAlchemy)

    NoSQL Database:

    • MongoDB 6.0+ (primary)
    • Document modeling and validation
    • Aggregation framework
    • Sharding and replication

    In-Memory Database:

    • Redis 7.0+ (primary)
    • Redis Stack for advanced features
    • Clustering and high availability
    • Advanced data structures

    Supporting Tools:

    • Migration tools (Alembic, Flyway)
    • Monitoring (Prometheus, Grafana)
    • ORMs/ODMs (SQLAlchemy, Mongoose)
    • Connection management

    Performance Features:

    • Query optimization and analysis
    • Index management and strategies
    • Caching layers and invalidation
    • Load balancing and failover

    For detailed implementation patterns and database-specific optimizations, see the modules/ directory.

    Recommended Servers
    ThinAir Data
    ThinAir Data
    PlanetScale
    PlanetScale
    Airtable
    Airtable
    Repository
    microck/ordinary-claude-skills
    Files