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github-issue-creator

alex-ilgayev
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Metawordaimcp

About

This skill automates creating GitHub issues for the MCPSpy project using the `gh` CLI tool. It enforces naming conventions with feat/chore/fix prefixes and maintains proper detail levels. Use it when asked to create issues, report bugs, or document features.

Quick Install

Claude Code

Recommended
Plugin CommandRecommended
/plugin add https://github.com/alex-ilgayev/MCPSpy
Git CloneAlternative
git clone https://github.com/alex-ilgayev/MCPSpy.git ~/.claude/skills/github-issue-creator

Copy and paste this command in Claude Code to install this skill

Documentation

GitHub Issue Creator Skill

Automates the creation of well-structured GitHub issues for the MCPSpy project.

Tools and Usage

Use the gh issue CLI tool to create GitHub issues. If the issue body is rather long, write it to a temporary markdown file and use the gh issue create --body-file <file> option.

Issue Naming Convention

  • Use standard prefixes: feat(component):, chore:, fix(component):
  • Component examples: library-manager, ebpf, mcp, http, output
  • Brackets are optional but recommended for clarity
  • Keep titles concise and descriptive

Examples

  • feat(library-manager): add support for container runtime detection
  • chore: update dependencies to latest versions
  • fix(ebpf): handle kernel version compatibility issues

Issue Content Guidelines

What to Include

  • High-level design notes - focus on the "what" and "why"
  • POC-level details - enough to get started, not exhaustive
  • Actionable scope - should be implementable by a developer familiar with the codebase

What NOT to Include

  • Detailed test plans
  • Exhaustive acceptance criteria
  • Deep technical specifications
  • Code examples (unless absolutely necessary for clarity)

When to Use This Skill

  • Creating new feature requests
  • Reporting bugs and issues
  • Documenting technical debt
  • Planning work items for the MCPSpy project

GitHub Repository

alex-ilgayev/MCPSpy
Path: .claude/skills/github-issue-creator
aiai-securityllmmcpmonitoringsecurity

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