


How to Structure a Non-Trivial Python Desktop Application Project: A Guide to Folder Hierarchy
How to Structure a Non-Trivial Python Desktop Application Project
When developing a complex Python application, organizing your project effectively is crucial for maintainability, testing, and packaging. Here's a comprehensive guide to structure your project's folder hierarchy:
Source Code
- Place source code under a designated folder, e.g., "/src" or "/code".
- Organize modules and classes within subdirectories based on logical divisions.
Application Startup Scripts
- Store executable scripts that launch the application in a separate folder, e.g., "/bin" or "/scripts".
- Name scripts descriptively to indicate their functions.
IDE Project Cruft
- IDE-specific configuration files, such as ".vscode" or ".idea" folders, should be kept separate.
- Consider excluding these files from version control.
Unit and Acceptance Tests
- Dedicate a folder for unit and acceptance tests, e.g., "/tests".
- Organize test files based on the functionality they test.
Non-Python Data
- Store non-Python configuration files, such as JSON or YAML, in a separate folder, e.g., "/config".
- Ensure that these files are properly versioned.
Non-Python Sources
- Place C source code for pyd/so extension modules in a dedicated folder, e.g., "/lib/cpp".
- Include appropriate build instructions and scripts for compiling and installing these modules.
Top-Level Directory
-
The top-level directory should contain important files such as:
- README file with project description and installation instructions
- Configuration files for setting project-wide parameters
- Version control files (e.g., ".git")
- This directory can also serve as a high-level architectural breakdown of the application.
Additional Considerations
- Use a version control system such as Git to track project changes.
- Consider using a Python packaging tool like setuptools or wheel for installing and distributing your application.
- Document your project structure and organization for easy onboarding and collaboration.
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