| name | python-code-style |
| description | Python code style, linting, formatting, naming conventions, and documentation standards. Use when writing new code, reviewing style, configuring linters, writing docstrings, or establishing project standards. |
Python Code Style & Documentation
Consistent code style and clear documentation make codebases maintainable and collaborative. This skill covers modern Python tooling, naming conventions, and documentation standards.
When to Use This Skill
- Setting up linting and formatting for a new project
- Writing or reviewing docstrings
- Establishing team coding standards
- Configuring ruff an ty
- Reviewing code for style consistency
- Creating project documentation
Core Concepts
1. Automated Formatting
Let tools handle formatting debates. Configure once, enforce automatically.
2. Consistent Naming
Follow PEP 8 conventions with meaningful, descriptive names.
3. Documentation as Code
Docstrings should be maintained alongside the code they describe.
4. Type Annotations
Modern Python code should include type hints for all public APIs.
Quick Start
[tool.ruff]
line-length = 120
target-version = "py314"
[tool.ty.environment]
python-version = "3.14"
root = ["./src"]
Fundamental Patterns
Pattern 1: Modern Python Tooling
Use ruff as an all-in-one linter and formatter. It replaces flake8, isort, and black with a single fast tool.
[tool.ruff]
line-length = 120
target-version = "py312"
[tool.ruff.lint]
select = [
"E",
"W",
"F",
"I",
"B",
"C4",
"UP",
"SIM",
]
ignore = ["E501"]
[tool.ruff.format]
quote-style = "double"
indent-style = "space"
Run with:
ruff check --fix .
ruff format .
Pattern 2: Type Checking Configuration
Configure strict type checking for production code.
[tool.ty.environment]
python-version = "3.14"
root = ["./src"]
Pattern 3: Naming Conventions
Follow PEP 8 with emphasis on clarity over brevity.
Files and Modules:
user_repository.py
order_processing.py
http_client.py
usr_repo.py
ord_proc.py
http_cli.py
Classes and Functions:
class UserRepository:
pass
class HTTPClientFactory:
pass
def get_user_by_email(email: str) -> User | None:
retry_count = 3
max_connections = 100
Constants:
MAX_RETRY_ATTEMPTS = 3
DEFAULT_TIMEOUT_SECONDS = 30
API_BASE_URL = "https://api.example.com"
Pattern 4: Import Organization
Group imports in a consistent order: standard library, third-party, local.
import os
from collections.abc import Callable
from typing import Any
import httpx
from pydantic import BaseModel
from sqlalchemy import Column
from myproject.models import User
from myproject.services import UserService
Use absolute imports exclusively:
from myproject.utils import retry_decorator
from ..utils import retry_decorator
Advanced Patterns
Pattern 5: Google-Style Docstrings
Write docstrings for all public classes, methods, and functions.
Simple Function:
def get_user(user_id: str) -> User:
"""Retrieve a user by their unique identifier."""
...
Complex Function:
def process_batch(
items: list[Item],
max_workers: int = 4,
on_progress: Callable[[int, int], None] | None = None,
) -> BatchResult:
"""Process items concurrently using a worker pool.
Processes each item in the batch using the configured number of
workers. Progress can be monitored via the optional callback.
Args:
items: The items to process. Must not be empty.
max_workers: Maximum concurrent workers. Defaults to 4.
on_progress: Optional callback receiving (completed, total) counts.
Returns:
BatchResult containing succeeded items and any failures with
their associated exceptions.
Raises:
ValueError: If items is empty.
ProcessingError: If the batch cannot be processed.
Example:
>>> result = process_batch(items, max_workers=8)
>>> print(f"Processed {len(result.succeeded)} items")
"""
...
Class Docstring:
class UserService:
"""Service for managing user operations.
Provides methods for creating, retrieving, updating, and
deleting users with proper validation and error handling.
Attributes:
repository: The data access layer for user persistence.
logger: Logger instance for operation tracking.
Example:
>>> service = UserService(repository, logger)
>>> user = service.create_user(CreateUserInput(...))
"""
def __init__(self, repository: UserRepository, logger: Logger) -> None:
"""Initialize the user service.
Args:
repository: Data access layer for users.
logger: Logger for tracking operations.
"""
self.repository = repository
self.logger = logger
Pattern 6: Line Length and Formatting
Set line length to 120 characters for modern displays while maintaining readability.
def create_user(
email: str,
name: str,
role: UserRole = UserRole.MEMBER,
notify: bool = True,
) -> User:
...
result = (
db.query(User)
.filter(User.active == True)
.order_by(User.created_at.desc())
.limit(10)
.all()
)
error_message = (
f"Failed to process user {user_id}: "
f"received status {response.status_code} "
f"with body {response.text[:100]}"
)
Pattern 7: Project Documentation
README Structure:
# Project Name
Brief description of what the project does.
## Installation
\`\`\`bash
pip install myproject
\`\`\`
## Quick Start
\`\`\`python
from myproject import Client
client = Client(api_key="...")
result = client.process(data)
\`\`\`
## Configuration
Document environment variables and configuration options.
## Development
\`\`\`bash
pip install -e ".[dev]"
pytest
\`\`\`
CHANGELOG Format (Keep a Changelog):
# Changelog
## [Unreleased]
### Added
- New feature X
### Changed
- Modified behavior of Y
### Fixed
- Bug in Z
Best Practices Summary
- Use ruff - Single tool for linting and formatting
- Enable strict mypy - Catch type errors before runtime
- 120 character lines - Modern standard for readability
- Descriptive names - Clarity over brevity
- Absolute imports - More maintainable than relative
- Google-style docstrings - Consistent, readable documentation
- Document public APIs - Every public function needs a docstring
- Keep docs updated - Treat documentation as code
- Automate in CI - Run linters on every commit
- Target Python 3.10+ - For new projects, Python 3.12+ is recommended for modern language features