| name | python |
| description | Python coding guidelines and best practices. Use when writing, reviewing, or refactoring Python code. Enforces PEP 8 style, syntax validation via py_compile, unit test execution, modern Python versions only (no EOL), uv for dependency management when available, and idiomatic Pythonic patterns. |
Python Coding Guidelines
Code Style (PEP 8)
- 4 spaces for indentation (never tabs)
- Max line length: 88 chars (Black default) or 79 (strict PEP 8)
- Two blank lines before top-level definitions, one within classes
- Imports: stdlib → third-party → local, alphabetized within groups
- Snake_case for functions/variables, PascalCase for classes, UPPER_CASE for constants
Before Committing
python -m py_compile *.py
python -m pytest tests/ -v 2>/dev/null || python -m unittest discover -v 2>/dev/null || echo "No tests found"
ruff check . --fix 2>/dev/null || python -m black --check . 2>/dev/null
Python Version
- Minimum: Python 3.10+ (3.9 EOL Oct 2025)
- Target: Python 3.11-3.13 for new projects
- Never use Python 2 syntax or patterns
- Use modern features: match statements, walrus operator, type hints
Dependency Management
Check for uv first, fall back to pip:
if command -v uv &>/dev/null; then
uv pip install <package>
uv pip compile requirements.in -o requirements.txt
else
pip install <package>
fi
For new projects with uv: uv init or uv venv && source .venv/bin/activate
Pythonic Patterns
squares = [x**2 for x in range(10)]
lookup = {item.id: item for item in items}
with open("file.txt") as f:
data = f.read()
first, *rest = items
a, b = b, a
try:
value = d[key]
except KeyError:
value = default
msg = f"Hello {name}, you have {count} items"
def process(items: list[str]) -> dict[str, int]:
...
from dataclasses import dataclass
@dataclass
class User:
name: str
email: str
active: bool = True
from pathlib import Path
config = Path.home() / ".config" / "app.json"
for i, item in enumerate(items):
...
for a, b in zip(list1, list2, strict=True):
...
Anti-patterns to Avoid
def bad(items=[]):
...
def good(items=None):
items = items or []
try:
...
except:
...
except Exception:
...
Testing
- Use pytest (preferred) or unittest
- Name test files
test_*.py, test functions test_*
- Aim for focused unit tests, mock external dependencies
- Run before every commit:
python -m pytest -v
Docstrings
def fetch_user(user_id: int, include_deleted: bool = False) -> User | None:
"""Fetch a user by ID from the database.
Args:
user_id: The unique user identifier.
include_deleted: If True, include soft-deleted users.
Returns:
User object if found, None otherwise.
Raises:
DatabaseError: If connection fails.
"""
Quick Checklist