creating-github-issues-from-web-research
关于
This skill automates creating structured GitHub issues from web research results. It extracts key information from searches and formats it into actionable tickets for tracking and collaboration. Use it when you need to research a topic and immediately generate a corresponding development task.
快速安装
Claude Code
推荐/plugin add https://github.com/jeremylongshore/claude-code-plugins-plusgit clone https://github.com/jeremylongshore/claude-code-plugins-plus.git ~/.claude/skills/creating-github-issues-from-web-research在 Claude Code 中复制并粘贴此命令以安装该技能
技能文档
Overview
This skill empowers Claude to streamline the research-to-implementation workflow. By integrating web search with GitHub issue creation, Claude can efficiently convert research findings into trackable tasks for development teams.
How It Works
- Web Search: Claude utilizes its web search capabilities to gather information on the specified topic.
- Information Extraction: The plugin extracts relevant details, key findings, and supporting evidence from the search results.
- GitHub Issue Creation: A new GitHub issue is created with a clear title, a summary of the research, key recommendations, and links to the original sources.
When to Use This Skill
This skill activates when you need to:
- Investigate a technical topic and create an implementation ticket.
- Track security vulnerabilities and generate a security issue with remediation steps.
- Research competitor features and create a feature request ticket.
Examples
Example 1: Researching Security Best Practices
User request: "research Docker security best practices and create a ticket in myorg/backend"
The skill will:
- Search the web for Docker security best practices.
- Extract key recommendations, security vulnerabilities, and mitigation strategies.
- Create a GitHub issue in the specified repository with a summary of the findings, a checklist of best practices, and links to relevant resources.
Example 2: Investigating API Rate Limiting
User request: "find articles about API rate limiting, create issue with label performance"
The skill will:
- Search the web for articles and documentation on API rate limiting.
- Extract different rate limiting techniques, their pros and cons, and implementation examples.
- Create a GitHub issue with the "performance" label, summarizing the findings and providing links to the source articles.
Best Practices
- Specify Repository: When creating issues for a specific project, explicitly mention the repository name to ensure the issue is created in the correct location.
- Use Labels: Add relevant labels to the issue to categorize it appropriately and facilitate issue tracking.
- Provide Context: Include sufficient context in your request to guide the web search and ensure the generated issue contains the most relevant information.
Integration
This skill seamlessly integrates with Claude's web search Skill and requires authentication with a GitHub account. It can be used in conjunction with other skills to further automate development workflows.
GitHub 仓库
相关推荐技能
content-collections
元Content Collections 是一个 TypeScript 优先的构建工具,可将本地 Markdown/MDX 文件转换为类型安全的数据集合。它专为构建博客、文档站和内容密集型 Vite+React 应用而设计,提供基于 Zod 的自动模式验证。该工具涵盖从 Vite 插件配置、MDX 编译到生产环境部署的完整工作流。
sglang
元SGLang是一个专为LLM设计的高性能推理框架,特别适用于需要结构化输出的场景。它通过RadixAttention前缀缓存技术,在处理JSON、正则表达式、工具调用等具有重复前缀的复杂工作流时,能实现极速生成。如果你正在构建智能体或多轮对话系统,并追求远超vLLM的推理性能,SGLang是理想选择。
evaluating-llms-harness
测试该Skill通过60+个学术基准测试(如MMLU、GSM8K等)评估大语言模型质量,适用于模型对比、学术研究及训练进度追踪。它支持HuggingFace、vLLM和API接口,被EleutherAI等行业领先机构广泛采用。开发者可通过简单命令行快速对模型进行多任务批量评估。
langchain
元LangChain是一个用于构建LLM应用程序的框架,支持智能体、链和RAG应用开发。它提供多模型提供商支持、500+工具集成、记忆管理和向量检索等核心功能。开发者可用它快速构建聊天机器人、问答系统和自主代理,适用于从原型验证到生产部署的全流程。
