From backend-development
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.
How this skill is triggered — by the user, by Claude, or both
Slash command
/backend-development:architecture-patternsThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
Master proven backend architecture patterns including Clean Architecture, Hexagonal Architecture, and Domain-Driven Design to build maintainable, testable, and scalable systems.
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.
Layers (dependency flows inward):
Key Principles:
Components:
Benefits:
Strategic Patterns:
Tactical Patterns:
Detailed pattern documentation lives in references/details.md. Read that file when the navigation tier above is insufficient.
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:
# 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
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.
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/.
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.
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.
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.
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.
For detailed DDD bounded context mapping, full multi-service project trees, Anti-Corruption Layer implementations, and Onion Architecture comparisons, see:
microservices-patterns — Apply these architecture patterns when decomposing a monolith into servicescqrs-implementation — Use Clean Architecture as the structural foundation for CQRS command/query separationsaga-orchestration — Sagas require well-defined aggregate boundaries, which DDD tactical patterns provideevent-store-design — Domain events produced by aggregates feed directly into an event storenpx claudepluginhub yo-steven/agents-exploration-20260523 --plugin backend-developmentCreates bite-sized, testable implementation plans from specs or requirements, with file structure and task decomposition. Activates before coding multi-step tasks.