codex-skills-index
About
This skill serves as the central catalog and entry point for all Run-Smart AI coach skills, defining their shared conventions, contracts, and safety guardrails. Developers should use it before invoking any skill to understand common schemas and telemetry, or when onboarding a new skill to ensure compliance. Its key capabilities include providing shared references for validation and enabling Codex to discover available skills.
Quick Install
Claude Code
Recommended/plugin add https://github.com/majiayu000/claude-skill-registrygit clone https://github.com/majiayu000/claude-skill-registry.git ~/.claude/skills/codex-skills-indexCopy and paste this command in Claude Code to install this skill
Documentation
Purpose
Defines the shared conventions, contracts, safety posture, and telemetry used by all Run-Smart AI skills. This index allows Codex to discover available skills and the rules they follow.
When Codex should use it
- Before invoking any Run-Smart skill to understand shared schemas, safety guidance, and telemetry.
- When onboarding a new skill to ensure compliance with common contracts.
Invocation guidance
- Load shared references in
_index/references/(contracts, telemetry, conventions, smoke-tests). - Select the appropriate skill directory based on the user’s need (plan generation, adjustment, insights, etc.).
- Validate request/response payloads against the schemas in
contracts.mdand skill-specific schemas.
Shared components
- Contracts:
_index/references/contracts.md - Telemetry:
_index/references/telemetry.md - Conventions:
_index/references/conventions.md - Smoke tests:
_index/references/smoke-tests.md
Safety & guardrails
- No medical diagnosis. If pain/dizziness/severe symptoms appear, advise stopping activity and consulting a qualified professional.
- Prefer conservative adjustments under uncertainty.
- Emit
SafetyFlagobjects when thresholds are crossed and log viaai_safety_flag_raised.
Integration points
- Skills are invoked from chat flows (
v0/app/api/chat/route.ts,v0/lib/enhanced-ai-coach.ts), plan generation APIs (v0/app/api/generate-plan/route.ts), background jobs (plan adjustment), and post-run screens.
Telemetry events (standard)
ai_skill_invokedai_plan_generatedai_adjustment_appliedai_insight_createdai_safety_flag_raisedai_user_feedback
GitHub Repository
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