This is Karpathy's LLM Council pattern made provider-agnostic. Three phases: models answer independently, rank each other's anonymized responses, then a chairman synthesizes everything into a final answer. Works with OpenAI, Anthropic, Fireworks, OpenRouter, or any OpenAI-compatible endpoint you configure via env vars. The --wiki flag persists the full transcript as a searchable page, which is genuinely useful for architecture decisions you'll want to reference later. Cost scales quadratically with council size since every model ranks every other response, so stick to 3-5 models unless you have budget to burn. Best for high-stakes plan reviews or when you legitimately want multiple AI perspectives on record, not just a single model's output.
npx -y skills add rohitg00/pro-workflow --skill llm-council --agent claude-codeInstalls into .claude/skills of the current project.
Select a file.
supercent-io/skills-template
supercent-io/skills-template
huangjia2019/claude-code-engineering
reactjs/react.dev
reactjs/react.dev