


What Happens Behind the .gitignore: How Git Handles Ignored Files
Git’s .gitignore file: the mechanism behind ignoring files
Introduction
Have you ever wondered how Git handles ignored files, such as <code>dist/</code> directories? This article will take a Python project as an example to discuss how Git handles ignored files in scenarios such as CI/CD workflow, cloning and pulling code libraries.
Python project example
Typical project structure
<code>my-python-project/ ├── src/ │ └── my_package/ │ └── __init__.py ├── tests/ │ └── test_my_package.py ├── dist/ │ ├── my_package-1.0.0-py3-none-any.whl │ └── my_package-1.0.0.tar.gz ├── .gitignore ├── setup.py ├── README.md └── requirements.txt</code>
Ignore dist/ directory in .gitignore
<code>dist/</code>
<code>dist/</code> directory usually contains the build artifacts (.whl, .tar.gz) generated during the packaging process. Keeping these files out of version control helps keep your codebase clean.
Why ignore the dist/ directory?
1. Manage code base size
?️ Do not ignore <code>dist/</code> Directory:
- Every build adds build artifacts to the code base.
- The codebase size bloated, causing cloning to be slower.
? Ignore <code>dist/</code> Directory:
- Only source code is tracked.
- The code base remains lean and efficient.
2. Avoid conflicts
⚠️ Don’t ignore <code>dist/</code> Directory:
- Changes to build files may cause unnecessary merge conflicts.
- Developers may push outdated or broken build artifacts.
✅ Ignore <code>dist/</code> Directory:
- Build products are generated on demand in CI/CD or locally.
- Ensure consistency across environments.
3. Improve CI/CD efficiency
? Do not ignore <code>dist/</code> Directory:
- CI/CD workflows may use outdated build artifacts that have already been pushed.
- Build failure may occur due to outdated files.
? Ignore <code>dist/</code> Directory:
- CI/CD dynamically generates build products to ensure their freshness.
- Reduce errors caused by outdated files.
Common scenarios for ignoring files
1. Push changes
- Ignored files (such as <code>dist/</code>) will never be pushed.
- Even if they exist locally, Git will ensure that these files are not included in the commit.
2. Clone the code base
- If <code>dist/</code> does not exist: The directory will not be recreated during the cloning process.
- If CI/CD created <code>dist/</code>: the clone will ignore it as it is not tracked into the code base.
3. Pull changes
- Ignored files are not affected during
git pull
. - If the directory already exists locally, it will remain unchanged unless modified manually.
4. CI/CD workflow
-
The
- CI/CD pipeline dynamically generates the <code>dist/</code> directory during the build process.
- These files are temporary and are usually cleaned up after the build to avoid clutter.
Visual summary of ignored file scenarios
操作 | 行为 |
---|---|
推送更改 | 忽略的文件永远不会被推送。 |
克隆代码库 | 忽略的文件不会被下载。 |
拉取更改 | 忽略的文件保持不变。 |
CI/CD 工作流 | 文件会被动态创建/删除。 |
Best Practices for Managing Ignored Files
- Keep the .gitignore file updated: Regularly check and adjust the schema to ensure efficiency.
- Avoid over-ignoring: Make sure you don’t accidentally ignore any important files.
- Use build tools to generate build artifacts: Use tools like make, tox, or CI/CD pipelines to dynamically generate files.
-
Record Mode: Add comments in
.gitignore
to explain why certain files are ignored.
The above is the detailed content of What Happens Behind the .gitignore: How Git Handles Ignored Files. For more information, please follow other related articles on the PHP Chinese website!

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