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Table of Contents
Install GitLab
Get API access token
Send API request
Custom hooks (Hooks)
Custom Services
Custom Webhooks
Home Operation and Maintenance Linux Operation and Maintenance GitLab's plug-in development guide on Debian

GitLab's plug-in development guide on Debian

Apr 13, 2025 am 08:24 AM
python git access

Developing a GitLab plugin on Debian requires some specific steps and knowledge. Here is a basic guide to help you get started with this process.

Install GitLab

First, you need to install GitLab on your Debian system. You can refer to the official installation manual of GitLab.

Get API access token

Before performing API integration, you need to obtain the API access token of GitLab. Open the GitLab dashboard, find the "Access Tokens" option in user settings, and generate a new access token. Save the generated access token and will be used when making subsequent API requests.

Send API request

Use HTTP request libraries, such as requests libraries in Python, to send API requests. The URL requested by the API is usually prefixed with the address of the GitLab server, followed by the specific path and parameters of the API. The generated API access token is required in the requested header.

Custom hooks (Hooks)

Hooks are scripts executed when the GitLab event is triggered. Through custom hooks, some customized operations can be implemented, such as sending notifications, automated construction, etc. Custom hooks can be implemented by creating the .gitlab/hooks directory in the GitLab project and writing script files in the directory.

Custom Services

A service is an external access performed on GitLab. You can integrate with other systems through custom services, such as continuous integration (CI), deployment to cloud platforms, etc. By configuring Services options in your GitLab project, you can set up integration with other systems.

Custom Webhooks

Webhooks is an API function provided by GitLab to enable notification of GitLab events to other systems. Through custom Webhooks, real-time integration with other systems can be achieved, such as sending notifications, synchronizing data, etc. In the Webhooks options set by GitLab project, you can configure the URL and parameters of Webhooks.

The above is a basic guide to developing GitLab plug-ins on Debian. Please note that these steps may need to be adjusted according to your specific needs. It is recommended to consult GitLab's official documentation and API reference for more detailed information and sample code.

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