Agent skill
gh
Enhanced GitHub CLI for managing repositories, issues, PRs, actions, and GitHub Models. Core Scenario: When the user needs to automate GitHub workflows, manage secrets, or use GitHub's AI models via CLI.
Install this agent skill to your Project
npx add-skill https://github.com/x-cmd/skill/tree/main/data/x-cmd/gh
SKILL.md
gh - GitHub Workflow Management
The gh module provides a comprehensive CLI for managing GitHub activities. It supports everything from basic repository operations to advanced features like GitHub Action artifacts and AI model interaction.
When to Activate
- When managing GitHub repositories (clone, create, delete).
- When automating Issue and Pull Request (PR) lifecycles.
- When managing GitHub Actions, workflows, and CI/CD artifacts.
- When configuring secrets or managing organizational team memberships.
- When interacting with GitHub Models for AI-assisted development.
Core Principles & Rules
- Token Required: Remind users to initialize their GitHub personal access token via
init. - Interactive Apps: Use
repo appfor a visual TUI to manage repositories. - AI Integration: Leverage the
modelsubcommand for GitHub's native AI capabilities.
Patterns & Examples
View User Repo (Interactive)
# Open an interactive TUI to browse your GitHub repositories
x gh repo app
Manage PRs
# List all open pull requests for the current repository
x gh pr ls
AI Models
# List available GitHub Models for AI tasks
x gh model ls
Checklist
- Ensure the GitHub token is correctly initialized.
- Confirm if the operation is for a personal or organizational account.
- Verify the target repository name and owner.
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