🧪 Skills

LLM Council Router

--- name: llmcouncil-router description: Route any prompt to the best-performing LLM using peer-reviewed council rankings from LLM Council homepage: https://llmcouncil.ai user-invocable: true metadata

v1.0.0
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Description


name: llmcouncil-router description: Route any prompt to the best-performing LLM using peer-reviewed council rankings from LLM Council homepage: https://llmcouncil.ai user-invocable: true metadata: {"openclaw":{"requires":{"env":["LLMCOUNCIL_API_KEY"]},"emoji":"🧠"}}

LLM Council Router

Route any prompt to the best-performing LLM. The API finds the top model for a given query based on thousands of peer-reviewed council deliberations — then you call that model directly.

Base URL

https://clawbot.llmcouncil.ai

Authentication

Use the X-API-Key header with your LLM Council API key.

X-API-Key: clwb_YOUR_KEY_HERE

Get a free key at llmcouncil.ai/developers.

Endpoint: POST /v1/route

Find the best-performing model for a query.

Request

{
  "query": "Explain quantum entanglement simply",
  "k": 20
}
Field Type Required Description
query string Yes The prompt or question to route
k integer No Number of past evaluations to consider (default: 20)

Response

{
  "query": "Explain quantum entanglement simply",
  "nearest_councils": 20,
  "model": "anthropic/claude-sonnet-4",
  "relevance": 0.8234,
  "confidence": 0.65,
  "model_rankings": [
    { "rank": 1, "model": "anthropic/claude-sonnet-4", "nearby_wins": 13, "nearby_appearances": 20 },
    { "rank": 2, "model": "openai/gpt-4.1", "nearby_wins": 5, "nearby_appearances": 18 }
  ]
}
Field Type Description
model string Top recommended model ID (matches OpenRouter catalogue)
relevance float (0–1) How closely matched evaluations relate to your query. Above 0.75 is strong.
confidence float (0–1) How decisively the top model outperforms alternatives. Higher = clearer winner.
nearest_councils integer Number of relevant past evaluations used
model_rankings array All models ranked by performance across matched evaluations

How to use this skill

When the user asks you to find the best model for a task, or when you need to decide which LLM to use:

  1. Call the routing API with the user's query:
curl -X POST https://clawbot.llmcouncil.ai/v1/route \
  -H "Content-Type: application/json" \
  -H "X-API-Key: $LLMCOUNCIL_API_KEY" \
  -d '{"query": "USER_QUERY_HERE"}'
  1. Read the response — the model field is the best-performing model for that query type.

  2. Chain with OpenRouter — model IDs match the OpenRouter catalogue directly, no mapping needed:

import requests, os

# Step 1: Get the best model from LLM Council
route = requests.post(
    "https://clawbot.llmcouncil.ai/v1/route",
    headers={"X-API-Key": os.environ["LLMCOUNCIL_API_KEY"]},
    json={"query": "Write a Python web scraper"},
).json()

best_model = route["model"]       # e.g. "anthropic/claude-sonnet-4"
confidence = route["confidence"]   # e.g. 0.85

# Step 2: Call that model via OpenRouter
answer = requests.post(
    "https://openrouter.ai/api/v1/chat/completions",
    headers={"Authorization": f"Bearer {os.environ['OPENROUTER_API_KEY']}"},
    json={
        "model": best_model,
        "messages": [{"role": "user", "content": "Write a Python web scraper"}],
    },
).json()

print(answer["choices"][0]["message"]["content"])

Rate Limits

Tier Daily Limit Attribution
Free 100 requests/day Required
Pro 10,000 requests/day None

When to use this

  • User asks "which model is best for X?"
  • You need to pick the optimal model for a specific task type
  • You want data-driven model selection instead of guessing
  • You want to chain model routing with OpenRouter for automatic best-model dispatch

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Compatible Platforms

Pricing

Free

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