Moai Domain Backend

Backend development specialist covering API design, database integration, microservices architecture, and modern backend patterns

Published by modu-ai

Development

Cloud-native skill

Runs in the cloud

No local installation

Dependencies pre-installed

Ready to run instantly

Secure VM environment

Isolated per task

Works on any device

Desktop, tablet, or phone

Documentation

Backend Development Specialist

Quick Reference

Backend Development Mastery - Comprehensive backend development patterns covering API design, database integration, microservices, and modern architecture patterns.

Core Capabilities:

  • API Design: REST, GraphQL, gRPC with OpenAPI 3.1
  • Database Integration: PostgreSQL, MongoDB, Redis, caching strategies
  • Microservices: Service mesh, distributed patterns, event-driven architecture
  • Security: Authentication, authorization, OWASP compliance
  • Performance: Caching, optimization, monitoring, scaling

When to Use:

  • Backend API development and architecture
  • Database design and optimization
  • Microservices implementation
  • Performance optimization and scaling
  • Security integration for backend systems

Implementation Guide

API Design Patterns

RESTful API Architecture:

Create a FastAPI application with authentication and response models. Define a Pydantic UserResponse model with id, email, and name fields. Implement list_users and create_user endpoints with HTTPBearer security dependency. The list endpoint returns a list of UserResponse objects, while the create endpoint accepts a UserCreate model and returns a single UserResponse.

GraphQL Implementation:

Use Strawberry to define GraphQL types. Create a User type with id, email, and name fields. Define a Query type with a users resolver that returns a list of User objects asynchronously. Generate the schema by passing the Query type to strawberry.Schema.

Database Integration Patterns

PostgreSQL with SQLAlchemy:

Define SQLAlchemy models using declarative_base. Create a User model with id as primary key, email as unique string, and name as string column. Configure the engine with connection pooling parameters including pool_size of 20, max_overflow of 30, and pool_pre_ping enabled for connection health checks.

MongoDB with Motor:

Create a UserService class that initializes with an AsyncIOMotorClient. Set up the database and users collection in the constructor. Create indexes for email (unique) and created_at fields. Implement create_user method that inserts a document and returns the inserted_id as string.

Microservices Architecture

Service Discovery with Consul:

Create a ServiceRegistry class that connects to Consul. Implement register_service method that registers a service with name, id, port, and health check endpoint. Implement discover_service method that queries healthy services and returns list of address:port strings.

Event-Driven Architecture:

Create an EventBus class using aio_pika for AMQP messaging. Implement connect method to establish connection and channel. Implement publish_event method that serializes event type and data as JSON and publishes to the default exchange with routing_key matching the event type.


Advanced Patterns

Caching Strategies

Redis Integration:

Create a CacheManager class with Redis connection. Implement a cache_result decorator that accepts ttl parameter. The decorator generates cache keys from function name and arguments, checks Redis for cached results, executes the function on cache miss, and stores results with expiration. Use json.loads and json.dumps for serialization.

Security Implementation

JWT Authentication:

Create a SecurityManager class with CryptContext for bcrypt password hashing. Implement hash_password and verify_password methods using the context. Implement create_access_token that encodes a JWT with expiration time using HS256 algorithm. Default expiration is 15 minutes if not specified.

Performance Optimization

Database Connection Pooling:

Create an optimized SQLAlchemy engine with QueuePool, pool_size 20, max_overflow 30, pool_pre_ping enabled, and pool_recycle of 3600 seconds. Add event listeners for before_cursor_execute and after_cursor_execute to track query timing. Log warnings for queries exceeding 100ms threshold.


Works Well With

  • moai-domain-frontend - Full-stack development integration
  • moai-domain-database - Advanced database patterns
  • moai-foundation-core - MCP server development patterns for backend services
  • moai-quality-security - Security validation and compliance
  • moai-foundation-core - Core architectural principles

Technology Stack

Primary Technologies:

  • Languages: Python 3.13+, Node.js 20+, Go 1.23
  • Frameworks: FastAPI, Django, Express.js, Gin
  • Databases: PostgreSQL 16+, MongoDB 7+, Redis 7+
  • Message Queues: RabbitMQ, Apache Kafka, Redis Pub/Sub
  • Containerization: Docker, Kubernetes
  • Monitoring: Prometheus, Grafana, OpenTelemetry

Integration Patterns:

  • RESTful APIs with OpenAPI 3.1
  • GraphQL with Apollo Federation
  • gRPC for high-performance services
  • Event-driven architecture with CQRS
  • API Gateway patterns
  • Circuit breakers and resilience patterns

Resources

For working code examples, see examples.md.

Status: Production Ready Last Updated: 2026-01-11 Maintained by: MoAI-ADK Backend Team

Skill as a Service

Everyone else asks you to install skills locally. On Rebyte, just click Run. Works from any device — even your phone. No CLI, no terminal, no configuration.

  • Zero setup required
  • Run from any device, including mobile
  • Results streamed in real-time
  • Runs while you sleep
Run this skill now

Compatible agents

Claude Code

Gemini CLI

Codex

Cursor, Windsurf, Amp

rebyte.ai — The only platform where you can run AI agent skills directly in the cloud

No downloads. No configuration. Just sign in and start using AI skills immediately.

Use this skill in Agent Computer — your shared cloud desktop with all skills pre-installed. Join Moltbook to connect with other teams.