skills/setup/SKILL.md
Use first for install/update routing — sends setup, doctor, or MCP requests to the correct OMC setup flow
npx skillsauth add OliverOuyang/shuhe-work-skills setupInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Use /oh-my-claudecode:setup as the unified setup/configuration entrypoint.
/oh-my-claudecode:setup # full setup wizard
/oh-my-claudecode:setup doctor # installation diagnostics
/oh-my-claudecode:setup mcp # MCP server configuration
/oh-my-claudecode:setup wizard --local # explicit wizard path
Process the request by the first argument only so install/setup questions land on the right flow immediately:
wizard, local, global, or --force -> route to /oh-my-claudecode:omc-setup with the same remaining argsdoctor -> route to /oh-my-claudecode:omc-doctor with everything after the doctor tokenmcp -> route to /oh-my-claudecode:mcp-setup with everything after the mcp tokenExamples:
/oh-my-claudecode:setup --local # => /oh-my-claudecode:omc-setup --local
/oh-my-claudecode:setup doctor --json # => /oh-my-claudecode:omc-doctor --json
/oh-my-claudecode:setup mcp github # => /oh-my-claudecode:mcp-setup github
/oh-my-claudecode:omc-setup, /oh-my-claudecode:omc-doctor, and /oh-my-claudecode:mcp-setup remain valid compatibility entrypoints./oh-my-claudecode:setup in new documentation and user guidance.Task: {{ARGUMENTS}}
tools
SQL 分段验证、自我修复、结果导出与智能分析。流程:解析SQL → Dataphin MCP 验证元数据 → 自动修复 → 分段执行验证 → 导出 CSV → 智能分析(漏斗解读、异常识别、预判用户问题)。适用场景:"跑一下这个SQL"、"验证这个查询"、"帮我执行并导出"、"分析一下结果"等。
testing
Security-first vetting for OpenClaw skills. Use before installing any skill from ClawHub, GitHub, or other sources. Checks for red flags, permission scope, and suspicious patterns.
development
A universal self-improving agent that learns from ALL skill experiences. Uses multi-memory architecture (semantic + episodic + working) to continuously evolve the codebase. Auto-triggers on skill completion/error with hooks-based self-correction.
data-ai
Standardize Jupyter notebooks (.ipynb) for interactive data analysis workflows. Enforces a mandatory cell manifest (M1-M8 + archetype chapters) with tags ([CONFIG]/[SETUP]/[FUNC]/[RUN]/[VIZ]/[EXPORT]), structured markdown sections, and output prefixes ([OK]/[WARN]/[SKIP]). Use when the user wants to standardize, clean up, or create a notebook from scratch. Two archetypes: problem-driven (question-answer analysis) and monitoring (dimension-based periodic reporting).