--- name: architecture-patterns description: Implement proven backend architecture patterns including Clean Architecture, Hexagonal Architecture, and Domain-Driven Design. Use this skill when designing clean architecture for a new microservice, when refactoring a monolith to use bounded contexts, when implementing hexagonal or onion architecture patterns, or when debugging dependency cycles between application layers. --- # Architecture Patterns Master proven backend architecture patterns including Clean Architecture, Hexagonal Architecture, and Domain-Driven Design to build maintainable, testable, and scalable systems. **Given:** a service boundary or module to architect. **Produces:** layered structure with clear dependency rules, interface definitions, and test boundaries. ## When to Use This Skill - Designing new backend services or microservices from scratch - Refactoring monolithic applications where business logic is entangled with ORM models or HTTP concerns - Establishing bounded contexts before splitting a system into services - Debugging dependency cycles where infrastructure code bleeds into the domain layer - Creating testable codebases where use-case tests do not require a running database - Implementing domain-driven design tactical patterns (aggregates, value objects, domain events) ## Core Concepts ### 1. Clean Architecture (Uncle Bob) **Layers (dependency flows inward):** - **Entities**: Core business models, no framework imports - **Use Cases**: Application business rules, orchestrate entities - **Interface Adapters**: Controllers, presenters, gateways — translate between use cases and external formats - **Frameworks & Drivers**: UI, database, external services — all at the outermost ring **Key Principles:** - Dependencies point inward only; inner layers know nothing about outer layers - Business logic is independent of frameworks, databases, and delivery mechanisms - Every layer boundary is crossed via an abstract interface - Testable without UI, database, or external services ### 2. Hexagonal Architecture (Ports and Adapters) **Components:** - **Domain Core**: Business logic lives here, framework-free - **Ports**: Abstract interfaces that define how the core interacts with the outside world (driving and driven) - **Adapters**: Concrete implementations of ports (PostgreSQL adapter, Stripe adapter, REST adapter) **Benefits:** - Swap implementations without touching the core (e.g., replace PostgreSQL with DynamoDB) - Use in-memory adapters in tests — no Docker required - Technology decisions deferred to the edges ### 3. Domain-Driven Design (DDD) **Strategic Patterns:** - **Bounded Contexts**: Isolate a coherent model for one subdomain; avoid sharing a single model across the whole system - **Context Mapping**: Define how contexts relate (Anti-Corruption Layer, Shared Kernel, Open Host Service) - **Ubiquitous Language**: Every term in code matches the term used by domain experts **Tactical Patterns:** - **Entities**: Objects with stable identity that change over time - **Value Objects**: Immutable objects identified by their attributes (Email, Money, Address) - **Aggregates**: Consistency boundaries; only the root is accessible from outside - **Repositories**: Persist and reconstitute aggregates; abstract over the storage mechanism - **Domain Events**: Capture things that happened inside the domain; used for cross-aggregate coordination ## Detailed patterns and worked examples Detailed pattern documentation lives in `references/details.md`. Read that file when the navigation tier above is insufficient. ## Testing — In-Memory Adapters The hallmark of correctly applied Clean Architecture is that every use case can be exercised in a plain unit test with no real database, no Docker, and no network: ```python # tests/unit/test_create_user.py import asyncio from typing import Dict, Optional from domain.entities.user import User from domain.interfaces.user_repository import IUserRepository from use_cases.create_user import CreateUserUseCase, CreateUserRequest class InMemoryUserRepository(IUserRepository): def __init__(self): self._store: Dict[str, User] = {} async def find_by_id(self, user_id: str) -> Optional[User]: return self._store.get(user_id) async def find_by_email(self, email: str) -> Optional[User]: return next((u for u in self._store.values() if u.email == email), None) async def save(self, user: User) -> User: self._store[user.id] = user return user async def delete(self, user_id: str) -> bool: return self._store.pop(user_id, None) is not None async def test_create_user_succeeds(): repo = InMemoryUserRepository() use_case = CreateUserUseCase(user_repository=repo) response = await use_case.execute(CreateUserRequest(email="alice@example.com", name="Alice")) assert response.success assert response.user.email == "alice@example.com" assert response.user.id is not None async def test_duplicate_email_rejected(): repo = InMemoryUserRepository() use_case = CreateUserUseCase(user_repository=repo) await use_case.execute(CreateUserRequest(email="alice@example.com", name="Alice")) response = await use_case.execute(CreateUserRequest(email="alice@example.com", name="Alice2")) assert not response.success assert "already exists" in response.error ``` ## Troubleshooting ### Use case tests require a running database Business logic has leaked into the infrastructure layer. Move all database calls behind an `IRepository` interface and inject an in-memory implementation in tests (see Testing section above). The use case constructor must accept the abstract port, not the concrete class. ### Circular imports between layers A common symptom is `ImportError: cannot import name X` between `use_cases` and `adapters`. This happens when a use case imports a concrete adapter class instead of the abstract port. Enforce the rule: `use_cases/` imports only from `domain/` (entities and interfaces). It must never import from `adapters/` or `infrastructure/`. ### Framework decorators appearing in domain entities If SQLAlchemy `Column()` or Pydantic `Field()` annotations appear on domain entities, the entity is no longer pure. Create a separate ORM model in `adapters/repositories/` and map to/from the domain entity in the repository's `_to_entity()` method. ### All logic ending up in controllers When the controller grows beyond HTTP parsing and response formatting, extract the logic into a use case class. A controller method should do three things only: parse the request, call a use case, map the response. ### Value objects raising errors too late Validate invariants in `__post_init__` (Python) or the constructor so an invalid `Email` or `Money` cannot be constructed at all. This surfaces bad data at the boundary, not deep inside business logic. ### Context bleed across bounded contexts If the `Order` context is importing `User` entities from the `Identity` context, introduce an Anti-Corruption Layer. The `Order` context should hold its own lightweight `CustomerId` value object and only call the `Identity` context through an explicit interface. ## Advanced Patterns For detailed DDD bounded context mapping, full multi-service project trees, Anti-Corruption Layer implementations, and Onion Architecture comparisons, see: - [`references/advanced-patterns.md`](references/advanced-patterns.md) ## Related Skills - `microservices-patterns` — Apply these architecture patterns when decomposing a monolith into services - `cqrs-implementation` — Use Clean Architecture as the structural foundation for CQRS command/query separation - `saga-orchestration` — Sagas require well-defined aggregate boundaries, which DDD tactical patterns provide - `event-store-design` — Domain events produced by aggregates feed directly into an event store