Python Patterns

sickn33's avatarfrom sickn33
2.7kstars🔀574forks📁View on GitHub🕐Updated Jan 1, 1970

When & Why to Use This Skill

This Claude skill provides expert guidance on modern Python development principles and architectural decision-making for 2025. It helps developers navigate complex choices such as framework selection (FastAPI vs. Django vs. Flask), async vs. sync execution patterns, and robust project structuring. By focusing on high-level thinking rather than rote memorization, it ensures the creation of scalable, maintainable, and high-performance Python applications.

Use Cases

  • Determining the optimal Python framework (FastAPI, Django, or Flask) based on project requirements like API-first design, full-stack needs, or microservices.
  • Deciding between asynchronous and synchronous programming patterns to optimize I/O-bound operations and CPU-bound tasks.
  • Implementing advanced type hinting strategies and Pydantic validation to improve code reliability and developer experience.
  • Designing scalable project structures for evolving applications, from simple scripts to large-scale enterprise systems with clear separation of concerns.
  • Integrating background task managers like Celery or ARQ for complex workflows and persistent message queuing.
namepython-patterns
descriptionPython development principles and decision-making. Framework selection, async patterns, type hints, project structure. Teaches thinking, not copying.
allowed-toolsRead, Write, Edit, Glob, Grep

Python Patterns

Python development principles and decision-making for 2025. Learn to THINK, not memorize patterns.


⚠️ How to Use This Skill

This skill teaches decision-making principles, not fixed code to copy.

  • ASK user for framework preference when unclear
  • Choose async vs sync based on CONTEXT
  • Don't default to same framework every time

1. Framework Selection (2025)

Decision Tree

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

Comparison Principles

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

Selection Questions to Ask:

  1. Is this API-only or full-stack?
  2. Need admin interface?
  3. Team familiar with async?
  4. Existing infrastructure?

2. Async vs Sync Decision

When to Use Async

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)

The Golden Rule

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

Async Library Selection

Need Async Library
HTTP client httpx
PostgreSQL asyncpg
Redis aioredis / redis-py async
File I/O aiofiles
Database ORM SQLAlchemy 2.0 async, Tortoise

3. Type Hints Strategy

When to Type

Always type:
├── Function parameters
├── Return types
├── Class attributes
├── Public APIs

Can skip:
├── Local variables (let inference work)
├── One-off scripts
├── Tests (usually)

Common Type Patterns

# 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: ...

Pydantic for Validation

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

4. Project Structure Principles

Structure Selection

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

FastAPI Structure Principles

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/
    └── ...

5. Django Principles (2025)

Django Async (Django 5.0+)

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

Django Best Practices

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

6. FastAPI Principles

async def vs def in FastAPI

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

Dependency Injection

Use dependencies for:
├── Database sessions
├── Current user / Auth
├── Configuration
├── Shared resources

Benefits:
├── Testability (mock dependencies)
├── Clean separation
├── Automatic cleanup (yield)

Pydantic v2 Integration

# 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

7. Background Tasks

Selection Guide

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

When to Use Each

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

8. Error Handling Principles

Exception Strategy

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

Error Response Philosophy

Include:
├── Error code (programmatic)
├── Message (human readable)
├── Details (field-level when applicable)
└── NOT stack traces (security)

9. Testing Principles

Testing Strategy

Type Purpose Tools
Unit Business logic pytest
Integration API endpoints pytest + httpx/TestClient
E2E Full workflows pytest + DB

Async Testing

# 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

Fixtures Strategy

Common fixtures:
├── db_session → Database connection
├── client → Test client
├── authenticated_user → User with token
└── sample_data → Test data setup

10. Decision Checklist

Before implementing:

  • Asked user about framework preference?
  • Chosen framework for THIS context? (not just default)
  • Decided async vs sync?
  • Planned type hint strategy?
  • Defined project structure?
  • Planned error handling?
  • Considered background tasks?

11. Anti-Patterns to Avoid

❌ DON'T:

  • Default to Django for simple APIs (FastAPI may be better)
  • Use sync libraries in async code
  • Skip type hints for public APIs
  • Put business logic in routes/views
  • Ignore N+1 queries
  • Mix async and sync carelessly

✅ DO:

  • Choose framework based on context
  • Ask about async requirements
  • Use Pydantic for validation
  • Separate concerns (routes → services → repos)
  • Test critical paths

Remember: Python patterns are about decision-making for YOUR specific context. Don't copy code—think about what serves your application best.