python-patterns by davila7/claude-code-templates
npx skills add https://github.com/davila7/claude-code-templates --skill python-patterns适用于 2025 年的 Python 开发原则与决策指南。学会思考,而非死记硬背模式。
此技能教授的是决策原则,而非固定的、可复制的代码。
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
| 因素 | FastAPI | Django | Flask |
|---|---|---|---|
| 最适合 |
广告位招租
在这里展示您的产品或服务
触达数万 AI 开发者,精准高效
| API,微服务 |
| 全栈,CMS |
| 简单,学习 |
| 异步 | 原生支持 | Django 5.0+ | 通过扩展 |
| 管理后台 | 手动构建 | 内置 | 通过扩展 |
| ORM | 自行选择 | Django ORM | 自行选择 |
| 学习曲线 | 低 | 中 | 低 |
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
| 需求 | 异步库 |
|---|---|
| HTTP 客户端 | httpx |
| PostgreSQL | asyncpg |
| Redis | aioredis / redis-py async |
| 文件 I/O | aiofiles |
| 数据库 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
| 解决方案 | 最适合 |
|---|---|
| BackgroundTasks | 简单、进程内任务 |
| Celery | 分布式、复杂工作流 |
| ARQ | 异步、基于 Redis |
| RQ | 简单的 Redis 队列 |
| Dramatiq | 基于 Actor 模型,比 Celery 简单 |
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)
| 类型 | 目的 | 工具 |
|---|---|---|
| 单元测试 | 业务逻辑 | pytest |
| 集成测试 | API 端点 | pytest + httpx/TestClient |
| 端到端测试 | 完整工作流 | 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
实施前检查:
记住:Python 模式是关于为你的特定上下文做决策。不要复制代码——思考什么最适合你的应用。
每周安装量
155
代码仓库
GitHub 星标数
22.6K
首次出现
2026年1月25日
安全审计
已安装于
opencode129
gemini-cli124
claude-code118
codex116
github-copilot115
cursor108
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.
Weekly Installs
155
Repository
GitHub Stars
22.6K
First Seen
Jan 25, 2026
Security Audits
Gen Agent Trust HubPassSocketPassSnykPass
Installed on
opencode129
gemini-cli124
claude-code118
codex116
github-copilot115
cursor108
agent-browser 浏览器自动化工具 - Vercel Labs 命令行网页操作与测试
150,000 周安装
Docker安全指南:全面容器安全最佳实践、漏洞扫描与合规性要求
177 周安装
iOS开发专家技能:精通Swift 6、SwiftUI与原生应用开发,涵盖架构、性能与App Store合规
177 周安装
describe技能:AI驱动结构化测试用例生成,提升代码质量与评审效率
2 周安装
专业 README 生成器 | 支持 Rust/TypeScript/Python 项目,自动应用最佳实践
2 周安装
Django 6 升级指南:从 Django 5 迁移的完整步骤与重大变更解析
1 周安装
GitLab DAG与并行处理指南:needs与parallel优化CI/CD流水线速度
2 周安装