python-project-structure
npx machina-cli add skill wshobson/agents/python-project-structure --openclawPython Project Structure & Module Architecture
Design well-organized Python projects with clear module boundaries, explicit public interfaces, and maintainable directory structures. Good organization makes code discoverable and changes predictable.
When to Use This Skill
- Starting a new Python project from scratch
- Reorganizing an existing codebase for clarity
- Defining module public APIs with
__all__ - Deciding between flat and nested directory structures
- Determining test file placement strategies
- Creating reusable library packages
Core Concepts
1. Module Cohesion
Group related code that changes together. A module should have a single, clear purpose.
2. Explicit Interfaces
Define what's public with __all__. Everything not listed is an internal implementation detail.
3. Flat Hierarchies
Prefer shallow directory structures. Add depth only for genuine sub-domains.
4. Consistent Conventions
Apply naming and organization patterns uniformly across the project.
Quick Start
myproject/
├── src/
│ └── myproject/
│ ├── __init__.py
│ ├── services/
│ ├── models/
│ └── api/
├── tests/
├── pyproject.toml
└── README.md
Fundamental Patterns
Pattern 1: One Concept Per File
Each file should focus on a single concept or closely related set of functions. Consider splitting when a file:
- Handles multiple unrelated responsibilities
- Grows beyond 300-500 lines (varies by complexity)
- Contains classes that change for different reasons
# Good: Focused files
# user_service.py - User business logic
# user_repository.py - User data access
# user_models.py - User data structures
# Avoid: Kitchen sink files
# user.py - Contains service, repository, models, utilities...
Pattern 2: Explicit Public APIs with __all__
Define the public interface for every module. Unlisted members are internal implementation details.
# mypackage/services/__init__.py
from .user_service import UserService
from .order_service import OrderService
from .exceptions import ServiceError, ValidationError
__all__ = [
"UserService",
"OrderService",
"ServiceError",
"ValidationError",
]
# Internal helpers remain private by omission
# from .internal_helpers import _validate_input # Not exported
Pattern 3: Flat Directory Structure
Prefer minimal nesting. Deep hierarchies make imports verbose and navigation difficult.
# Preferred: Flat structure
project/
├── api/
│ ├── routes.py
│ └── middleware.py
├── services/
│ ├── user_service.py
│ └── order_service.py
├── models/
│ ├── user.py
│ └── order.py
└── utils/
└── validation.py
# Avoid: Deep nesting
project/core/internal/services/impl/user/
Add sub-packages only when there's a genuine sub-domain requiring isolation.
Pattern 4: Test File Organization
Choose one approach and apply it consistently throughout the project.
Option A: Colocated Tests
src/
├── user_service.py
├── test_user_service.py
├── order_service.py
└── test_order_service.py
Benefits: Tests live next to the code they verify. Easy to see coverage gaps.
Option B: Parallel Test Directory
src/
├── services/
│ ├── user_service.py
│ └── order_service.py
tests/
├── services/
│ ├── test_user_service.py
│ └── test_order_service.py
Benefits: Clean separation between production and test code. Standard for larger projects.
Advanced Patterns
Pattern 5: Package Initialization
Use __init__.py to provide a clean public interface for package consumers.
# mypackage/__init__.py
"""MyPackage - A library for doing useful things."""
from .core import MainClass, HelperClass
from .exceptions import PackageError, ConfigError
from .config import Settings
__all__ = [
"MainClass",
"HelperClass",
"PackageError",
"ConfigError",
"Settings",
]
__version__ = "1.0.0"
Consumers can then import directly from the package:
from mypackage import MainClass, Settings
Pattern 6: Layered Architecture
Organize code by architectural layer for clear separation of concerns.
myapp/
├── api/ # HTTP handlers, request/response
│ ├── routes/
│ └── middleware/
├── services/ # Business logic
├── repositories/ # Data access
├── models/ # Domain entities
├── schemas/ # API schemas (Pydantic)
└── config/ # Configuration
Each layer should only depend on layers below it, never above.
Pattern 7: Domain-Driven Structure
For complex applications, organize by business domain rather than technical layer.
ecommerce/
├── users/
│ ├── models.py
│ ├── services.py
│ ├── repository.py
│ └── api.py
├── orders/
│ ├── models.py
│ ├── services.py
│ ├── repository.py
│ └── api.py
└── shared/
├── database.py
└── exceptions.py
File and Module Naming
Conventions
- Use
snake_casefor all file and module names:user_repository.py - Avoid abbreviations that obscure meaning:
user_repository.pynotusr_repo.py - Match class names to file names:
UserServiceinuser_service.py
Import Style
Use absolute imports for clarity and reliability:
# Preferred: Absolute imports
from myproject.services import UserService
from myproject.models import User
# Avoid: Relative imports
from ..services import UserService
from . import models
Relative imports can break when modules are moved or reorganized.
Best Practices Summary
- Keep files focused - One concept per file, consider splitting at 300-500 lines (varies by complexity)
- Define
__all__explicitly - Make public interfaces clear - Prefer flat structures - Add depth only for genuine sub-domains
- Use absolute imports - More reliable and clearer
- Be consistent - Apply patterns uniformly across the project
- Match names to content - File names should describe their purpose
- Separate concerns - Keep layers distinct and dependencies flowing one direction
- Document your structure - Include a README explaining the organization
Source
git clone https://github.com/wshobson/agents/blob/main/plugins/python-development/skills/python-project-structure/SKILL.mdView on GitHub Overview
This skill teaches how to organize Python projects with clear module boundaries, explicit public interfaces, and maintainable directory layouts. It emphasizes defining public APIs with __all__, choosing between flat versus nested structures, and planning test placements for predictable maintenance.
How This Skill Works
You structure code into cohesive modules, expose only intended functionality via __all__, and favor flat hierarchies unless a genuine sub-domain requires depth. It also covers consistent conventions and deliberate test organization to keep production and test code cleanly separated.
When to Use It
- Starting a new Python project from scratch
- Reorganizing an existing codebase for clarity
- Defining module public APIs with __all__
- Deciding between flat and nested directory structures
- Determining test file placement strategies
Quick Start
- Step 1: Create a minimal skeleton mirroring a flat structure (src, tests, pyproject.toml, README)
- Step 2: Implement focused modules (e.g., services/, models/, api/) and expose public APIs with __all__
- Step 3: Decide and apply a test layout (colocated vs parallel) and document your public surface
Best Practices
- Aim for one concept per file to keep files focused and maintainable
- Define explicit public APIs with __all__; keep internals private by omission
- Prefer a flat directory structure unless deeper isolation is warranted
- Choose a consistent test organization approach (colocated or parallel tests)
- Use __init__.py to provide a clean public interface for packages
Example Use Cases
- Good: Separate responsibilities in files like user_service.py, user_repository.py, user_models.py
- Avoid: A single kitchen-sink file (e.g., user.py) that mixes services, repos, and models
- Example: mypackage/services/__init__.py exporting UserService, OrderService, and errors via __all__
- Public interface exposure: __init__.py defines the library's public API
- Test layout options: colocated tests next to code or a separate parallel tests directory