github-issue-creator
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 add https://github.com/alex-ilgayev/MCPSpygit clone https://github.com/alex-ilgayev/MCPSpy.git ~/.claude/skills/github-issue-creatorCopy 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 detectionchore: update dependencies to latest versionsfix(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
Related Skills
sglang
MetaSGLang is a high-performance LLM serving framework that specializes in fast, structured generation for JSON, regex, and agentic workflows using its RadixAttention prefix caching. It delivers significantly faster inference, especially for tasks with repeated prefixes, making it ideal for complex, structured outputs and multi-turn conversations. Choose SGLang over alternatives like vLLM when you need constrained decoding or are building applications with extensive prefix sharing.
evaluating-llms-harness
TestingThis Claude Skill runs the lm-evaluation-harness to benchmark LLMs across 60+ standardized academic tasks like MMLU and GSM8K. It's designed for developers to compare model quality, track training progress, or report academic results. The tool supports various backends including HuggingFace and vLLM models.
llamaguard
OtherLlamaGuard is Meta's 7-8B parameter model for moderating LLM inputs and outputs across six safety categories like violence and hate speech. It offers 94-95% accuracy and can be deployed using vLLM, Hugging Face, or Amazon SageMaker. Use this skill to easily integrate content filtering and safety guardrails into your AI applications.
langchain
MetaLangChain is a framework for building LLM applications using agents, chains, and RAG pipelines. It supports multiple LLM providers, offers 500+ integrations, and includes features like tool calling and memory management. Use it for rapid prototyping and deploying production systems like chatbots, autonomous agents, and question-answering services.
