Agent skill
gl
Enhanced GitLab CLI for managing repositories, issues, snippets, and CI/CD deployments. Core Scenario: When the user needs to automate GitLab project management or coordinate deployments.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/gl
SKILL.md
gl - GitLab Workflow Management
The gl module provides an interface for GitLab project management, including support for snippets, deployment tracking, and group/subgroup coordination.
When to Activate
- When managing repositories and teams on a GitLab instance.
- When coordinating CI/CD deployments via GitLab subcommands.
- When creating or managing project code snippets.
Core Principles & Rules
- Token Required: Remind users to initialize their GitLab access token.
- Broad Support: Covers groups, subgroups, and individual project settings.
Patterns & Examples
Clone Repository
# Clone a specific GitLab repository using the shortcut
x gl cl owner/repo
View Project Snippets
# List all code snippets associated with a project
x gl snippet ls
Checklist
- Ensure the GitLab token is initialized.
- Verify if the command is targeting a self-hosted or cloud-based GitLab.
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