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Python development principles and decision-making for 2025. Learn to THINK, not memorize patterns.
This skill teaches decision-making principles, not fixed code to copy.
What are you building?
│
├── API-first / Microservices
│ └── FastAPI (async, modern, fast)
│
├── Full-stack web / CMS / Admin
│ └── Django (batteries-included)
│
├── Simple / Script / Learning
│ └── Flask (minimal, flexible)
│
├── AI/ML API serving
│ └── FastAPI (Pydantic, async, uvicorn)
│
└── Background workers
└── Celery + any framework
| Factor | FastAPI | Django | Flask | |--------|---------|--------|-------| | Best for | APIs, microservices | Full-stack, CMS | Simple, learning | | Async | Native | Django 5.0+ | Via extensions | | Admin | Manual | Built-in | Via extensions | | ORM | Choose your own | Django ORM | Choose your own | | Learning curve | Low | Medium | Low |
async def is better when:
├── I/O-bound operations (database, HTTP, file)
├── Many concurrent connections
├── Real-time features
├── Microservices communication
└── FastAPI/Starlette/Django ASGI
def (sync) is better when:
├── CPU-bound operations
├── Simple scripts
├── Legacy codebase
├── Team unfamiliar with async
└── Blocking libraries (no async version)
I/O-bound → async (waiting for external)
CPU-bound → sync + multiprocessing (computing)
Don't:
├── Mix sync and async carelessly
├── Use sync libraries in async code
└── Force async for CPU work
| Need | Async Library | |------|---------------| | HTTP client | httpx | | PostgreSQL | asyncpg | | Redis | aioredis / redis-py async | | File I/O | aiofiles | | Database ORM | SQLAlchemy 2.0 async, Tortoise |
Always type:
├── Function parameters
├── Return types
├── Class attributes
├── Public APIs
Can skip:
├── Local variables (let inference work)
├── One-off scripts
├── Tests (usually)
# These are patterns, understand them:
# Optional → might be None
from typing import Optional
def find_user(id: int) -> Optional[User]: ...
# Union → one of multiple types
def process(data: str | dict) -> None: ...
# Generic collections
def get_items() -> list[Item]: ...
def get_mapping() -> dict[str, int]: ...
# Callable
from typing import Callable
def apply(fn: Callable[[int], str]) -> str: ...
When to use Pydantic:
├── API request/response models
├── Configuration/settings
├── Data validation
├── Serialization
Benefits:
├── Runtime validation
├── Auto-generated JSON schema
├── Works with FastAPI natively
└── Clear error messages
Small project / Script:
├── main.py
├── utils.py
└── requirements.txt
Medium API:
├── app/
│ ├── __init__.py
│ ├── main.py
│ ├── models/
│ ├── routes/
│ ├── services/
│ └── schemas/
├── tests/
└── pyproject.toml
Large application:
├── src/
│ └── myapp/
│ ├── core/
│ ├── api/
│ ├── services/
│ ├── models/
│ └── ...
├── tests/
└── pyproject.toml
Organize by feature or layer:
By layer:
├── routes/ (API endpoints)
├── services/ (business logic)
├── models/ (database models)
├── schemas/ (Pydantic models)
└── dependencies/ (shared deps)
By feature:
├── users/
│ ├── routes.py
│ ├── service.py
│ └── schemas.py
└── products/
└── ...
Django supports async:
├── Async views
├── Async middleware
├── Async ORM (limited)
└── ASGI deployment
When to use async in Django:
├── External API calls
├── WebSocket (Channels)
├── High-concurrency views
└── Background task triggering
Model design:
├── Fat models, thin views
├── Use managers for common queries
├── Abstract base classes for shared fields
Views:
├── Class-based for complex CRUD
├── Function-based for simple endpoints
├── Use viewsets with DRF
Queries:
├── select_related() for FKs
├── prefetch_related() for M2M
├── Avoid N+1 queries
└── Use .only() for specific fields
Use async def when:
├── Using async database drivers
├── Making async HTTP calls
├── I/O-bound operations
└── Want to handle concurrency
Use def when:
├── Blocking operations
├── Sync database drivers
├── CPU-bound work
└── FastAPI runs in threadpool automatically
Use dependencies for:
├── Database sessions
├── Current user / Auth
├── Configuration
├── Shared resources
Benefits:
├── Testability (mock dependencies)
├── Clean separation
├── Automatic cleanup (yield)
# FastAPI + Pydantic are tightly integrated:
# Request validation
@app.post("/users")
async def create(user: UserCreate) -> UserResponse:
# user is already validated
...
# Response serialization
# Return type becomes response schema
| Solution | Best For | |----------|----------| | BackgroundTasks | Simple, in-process tasks | | Celery | Distributed, complex workflows | | ARQ | Async, Redis-based | | RQ | Simple Redis queue | | Dramatiq | Actor-based, simpler than Celery |
FastAPI BackgroundTasks:
├── Quick operations
├── No persistence needed
├── Fire-and-forget
└── Same process
Celery/ARQ:
├── Long-running tasks
├── Need retry logic
├── Distributed workers
├── Persistent queue
└── Complex workflows
In FastAPI:
├── Create custom exception classes
├── Register exception handlers
├── Return consistent error format
└── Log without exposing internals
Pattern:
├── Raise domain exceptions in services
├── Catch and transform in handlers
└── Client gets clean error response
Include:
├── Error code (programmatic)
├── Message (human readable)
├── Details (field-level when applicable)
└── NOT stack traces (security)
| Type | Purpose | Tools | |------|---------|-------| | Unit | Business logic | pytest | | Integration | API endpoints | pytest + httpx/TestClient | | E2E | Full workflows | pytest + DB |
# Use pytest-asyncio for async tests
import pytest
from httpx import AsyncClient
@pytest.mark.asyncio
async def test_endpoint():
async with AsyncClient(app=app, base_url="http://test") as client:
response = await client.get("/users")
assert response.status_code == 200
Common fixtures:
├── db_session → Database connection
├── client → Test client
├── authenticated_user → User with token
└── sample_data → Test data setup
Before implementing:
Remember: Python patterns are about decision-making for YOUR specific context. Don't copy code—think about what serves your application best.
python-patterns is an expert AI persona designed to improve your coding workflow. Python development principles and decision-making. Framework selection, async patterns, type hints, project structure. Teaches thinking, not copying. It provides senior-level context directly within your IDE.
To install the python-patterns skill, download the package, extract the files to your project's .cursor/skills directory, and type @python-patterns in your editor chat to activate the expert instructions.
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Python development principles and decision-making. Framework selection, async patterns, type hints, project structure. Teaches thinking, not copying.
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