一键导入
council-of-llms
Multi-model deliberation for high-stakes decisions. Don't take one model's word for it.
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
菜单
Multi-model deliberation for high-stakes decisions. Don't take one model's word for it.
用 Codex 或 Claude 帮你安装 复制这段 Prompt,粘贴到 Codex、Claude 或其他助手里,让它检查 Skill 页面并帮你完成安装。
基于 SOC 职业分类
| name | council-of-llms |
| emoji | 🏛️ |
| description | Multi-model deliberation for high-stakes decisions. Don't take one model's word for it. |
| details | **Council of LLMs** orchestrates structured multi-model debate — routing a single question to multiple LLMs simultaneously, collecting their answers, and surfacing agreements/disagreements. ## Best For - Security audits - Architecture decisions - Policy analysis - LLM output evaluation ## Pre-requisites - OpenClaw with 2+ LLM providers configured - Recommended: Ollama Cloud for parallel execution ## Quick Start ```bash # Run with demo question council # Run with your question council "Should we use JWT or session cookies?" # Interactive model selection council --select-models "Architecture decision" ``` ## Usage ### Model Selection ```bash # List available models council --list-models # Explicit model list council "Security audit" --models "ollama/kimi-k2.5,openai/gpt-4o" # Use preset council "Code review" --preset security ``` ### Configuration ```bash # Sequential mode (limited hardware) council "Question" --sequential # Extended timeout council "Question" --timeout 180 # Export results council "Question" --output report.md ``` ## Safeguards - Timeout per model: 120s (configurable) - Cost cap: 50K tokens - Max rounds: 2 - Model diversity required - Rate limiting ## When NOT to Use - Quick factual lookups - Real-time applications - Cost-sensitive products - Tasks requiring consistent answers |
| install | ["npm install -g clawhub","clawhub install wahajahmed010/council-of-llms"] |
Multi-model deliberation for high-stakes decisions. Don't take one model's word for it.
Version: 1.0.0
License: MIT
Author: Wahaj Ahmed
The Council of LLMs orchestrates structured multi-model debate — routing a single question to multiple LLMs simultaneously, collecting their answers, and surfacing agreements/disagreements. Built for decisions where being wrong costs more than the overhead of multiple perspectives.
Best for: Security audits, architecture decisions, policy analysis, LLM output evaluation
Not for: Quick lookups, casual chat, first drafts
OpenClaw with multiple LLM providers configured (required)
openclaw status shows 2+ providersollama/kimi-k2.5, openai/gpt-4o, anthropic/claude-3-opusMulti-model access (recommended)
openclaw config set ollama.cloud.token=YOUR_TOKENclawhub install wahajahmed010/council-of-llms
cd ~/.openclaw/skills
git clone https://github.com/wahajahmed010/council-of-llms.git
# Run with built-in sample question
council
# Run with your own question
council "Should we use JWT or session cookies for auth?"
# Security audit example
council --review "Analyze this Python function for security issues" --input ./auth.py
# List available models
council --list-models
# Interactive model selection
council "Architecture decision" --select-models
# Explicit model list
council "Security audit" --models "ollama/kimi-k2.5,openai/gpt-4o,anthropic/claude-3-opus"
# Use specific council preset
council "Code review" --preset security
# Sequential mode (for limited hardware)
council "Question" --sequential
# Extended timeout for complex analysis
council "Question" --timeout 180
# Export results
council "Question" --output report.md
User Question
↓
[Pre-flight Check] → Verify 2+ models available
↓
[Agent Spawning] → Spawn 2-3 agents with different models
↓
[Round 1: Opening] → Each agent provides initial analysis
↓
[Round 2: Rebuttal] → Agents respond to each other's points
↓
[Synthesis] → Compare positions, find agreements/disagreements
↓
[Report] → Structured output with verdict
If sessions_spawn is unavailable, the skill automatically switches to single-prompt multi-persona simulation — all "agents" represented as sections in one prompt. Slightly less authentic but works everywhere.
# Council Report: [Question]
## Participants
- Strategist (ollama/kimi-k2.5)
- Security Expert (openai/gpt-4o)
- Pragmatist (anthropic/claude-3-opus)
## Individual Positions
### Strategist
**Stance:** JWT with short expiry
**Key Points:**
- Stateless authentication scales horizontally
- Reduces database lookups
- Industry standard for microservices
### Security Expert
**Stance:** Session cookies with httpOnly
**Key Points:**
- XSS protection via httpOnly flag
- Easier revocation on compromise
- No token storage complexity
### Pragmatist
**Stance:** Hybrid approach
**Key Points:**
- Sessions for web, JWT for API
- Best of both worlds
- Implementation overhead worth it
## Agreement Matrix
| Point | Strategist | Security | Pragmatist |
|-------|------------|----------|------------|
| Stateless scaling | ✅ | ⚠️ | ✅ |
| XSS protection | ⚠️ | ✅ | ✅ |
| Revocation ease | ⚠️ | ✅ | ✅ |
| Implementation | ✅ | ✅ | ⚠️ |
## Key Disagreements
1. **Security vs Scalability**: Security Expert prioritizes safety over performance
2. **Complexity**: Strategist sees JWT as simpler; Security Expert sees sessions as simpler
## Synthesis
**Consensus:** Hybrid approach recommended for most teams
**Dissent:** Security Expert maintains pure sessions for high-security contexts
**Confidence:** Medium (genuine disagreement on trade-offs)
## Recommendation
Start with session cookies. Migrate to JWT only if:
- Horizontal scaling becomes bottleneck
- Stateless requirement is critical
- Team has JWT expertise
---
*Generated by Council of LLMs v1.0.0*
*Models: kimik2.5, gpt-4o, claude-3-opus*
*Time: 45s | Tokens: 12,847*
The skill includes automatic protections:
| Safeguard | Default | Description |
|---|---|---|
| Timeout per model | 120s | Kills slow models, proceeds with others |
| Cost cap | 50K tokens | Hard stop if projection exceeds limit |
| Max rounds | 2 | Prevents infinite deliberation |
| Model diversity | Required | Rejects if all models same provider |
| Rate limiting | 10/min | Prevents accidental spam |
| Partial failure | Continue | Works even if 1 model fails |
| Context budget | 70% window | Fails fast before overflow |
| User opt-in | Required | Shows cost estimate before run |
~/.openclaw/council-config.json:
{
"default_models": [
"ollama/kimi-k2.5",
"openai/gpt-4o",
"anthropic/claude-3-opus"
],
"timeout": 120,
"max_tokens_per_model": 8192,
"cost_warning_threshold": 25000,
"sequential_fallback": true,
"output_format": "markdown",
"presets": {
"security": {
"models": ["openai/gpt-4o", "anthropic/claude-3-opus"],
"system_prompt": "security-expert"
},
"architecture": {
"models": ["ollama/kimi-k2.5", "anthropic/claude-3-opus"],
"system_prompt": "systems-architect"
}
}
}
MIT © 2026 Wahaj Ahmed