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Multi Agent Orchestrator

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An MCP server that orchestrates multiple AI agents in parallel to get diverse perspectives on a single topic, supporting debate, review, and quick modes.

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About

An MCP server that orchestrates multiple AI agents in parallel to get diverse perspectives on a single topic, supporting debate, review, and quick modes.

README

An MCP server that orchestrates multiple AI agents (LLMs, CLI tools) in parallel to get diverse perspectives on a single topic. Agents run side-by-side — debating, reviewing, or answering questions — and results are synthesized or returned raw.

Built for use inside Claude Code (or any MCP-compatible client).

What it does

You configure two or more AI agents (e.g. Gemini via MCP, Codex CLI, any LLM with a CLI or MCP interface). The orchestrator fans out your prompt to all agents in parallel, collects their responses, and optionally synthesizes the results.

Three orchestration modes:

Mode Rounds Synthesis Cross-talk Use case
debate Multi (default 2) Yes Yes — agents see previous rounds Get balanced analysis with opposing viewpoints
review 1+ Yes No — independent reviews Code/config/architecture review from multiple angles
quick 1 (forced) No No Fast multi-perspective answers, lowest latency

Setup

1. Install dependencies and build

npm install
npm run build

2. Configure agents

Edit agents.config.json in the project root:

{
  "agents": [
    {
      "id": "gemini",
      "name": "Gemini",
      "type": "mcp",
      "command": "npx",
      "args": ["-y", "gemini-mcp-tool"],
      "mcpTool": "ask-gemini",
      "mcpPromptField": "prompt",
      "timeout": 120000
    },
    {
      "id": "codex",
      "name": "Codex CLI",
      "type": "cli",
      "cliCommand": "codex",
      "cliArgs": ["exec"],
      "cliInputMode": "arg",
      "timeout": 120000
    }
  ]
}

Agent types:

  • mcp — Connects to another MCP server as a client. Specify command/args to launch it, mcpTool for which tool to call, and mcpPromptField for the parameter name that receives the prompt.
  • cli — Runs a CLI command. The prompt is passed as a trailing argument (cliInputMode: "arg") or via stdin (cliInputMode: "stdin").

3. Register as MCP server

Add to your Claude Code config (~/.claude.json or project-level .mcp.json):

{
  "mcpServers": {
    "multi-agent": {
      "command": "node",
      "args": ["/absolute/path/to/multi-agent/dist/index.js"]
    }
  }
}

Restart Claude Code. The tools list_agents, orchestrate, and orchestrate_respond should appear.

Usage

List agents

list_agents

Shows all configured agents and their connection status.

Quick mode — fast parallel answers

orchestrate(mode="quick", topic="What's the best way to handle secrets in Docker Compose?")

All agents answer in parallel. No synthesis, no rounds. You get side-by-side responses immediately.

Review mode — independent parallel reviews

orchestrate(
  mode="review",
  topic="Review this Dockerfile for security issues",
  context="FROM ubuntu:latest\nRUN apt-get update\nCOPY . /app\nRUN chmod 777 /app\nEXPOSE 22\nCMD [\"python\", \"app.py\"]"
)

Each agent reviews independently (no cross-talk). Results are synthesized into a consolidated report with deduplicated findings ranked by severity.

Interactive review (Claude participates between rounds):

orchestrate(
  mode="review",
  topic="Review this Terraform module",
  context="...",
  participate=true,
  rounds=2
)

After round 1, Claude can steer round 2 by providing feedback via orchestrate_respond. Agents receive Claude's feedback and dig deeper into flagged areas.

Debate mode — structured multi-round discussion

orchestrate(
  mode="debate",
  topic="Should infrastructure teams use Pulumi over Terraform?",
  rounds=2
)

Agents see each other's previous responses and build on, challenge, or refine arguments. Final synthesis highlights agreements, disagreements, and a balanced conclusion.

Interactive debate (default — Claude participates):

orchestrate(
  mode="debate",
  topic="Microservices vs monolith for a 5-person startup",
  participate=true,
  rounds=3
)

After each round, Claude adds perspective via orchestrate_respond(session_id, response). Agents see Claude's input in the next round.

Parameters

Parameter Type Default Description
mode "debate" | "review" | "quick" required Orchestration mode
topic string required The question or task
context string Code, config, or other content to analyze
agents string[] all Agent IDs to use (subset of configured agents)
rounds number (1-10) 2 Number of rounds (forced to 1 for quick)
participate boolean true Claude participates between rounds (forced to false for quick)
systemPrompt string Custom system prompt prepended to agent prompts

Use cases

  • Code review: Get independent security/quality reviews from multiple LLMs, then a consolidated report
  • Architecture decisions: Debate trade-offs (e.g. Pulumi vs Terraform) with agents arguing different sides
  • Dockerfile/IaC audits: Review mode catches issues each model is best at, synthesis deduplicates
  • Quick Q&A: Fan out a question to multiple models, compare answers side-by-side
  • Second opinions: When one LLM's answer feels off, get parallel perspectives fast
  • Compliance checks: Independent reviews against best practices, merged into actionable findings

Do's and Don'ts

Do

  • Use quick for simple questions where you just want diverse answers fast
  • Use review for auditing artifacts (code, Dockerfiles, Terraform, configs) — independent reviews catch more than a single model
  • Use debate for subjective/strategic decisions where trade-offs matter
  • Provide context when reviewing code or configs — agents need the actual content
  • Use participate=true to steer multi-round sessions — Claude's feedback between rounds focuses agents on gaps
  • Start with fewer rounds (1-2) and increase if you need deeper analysis
  • Use agents parameter to pick specific agents when not all are relevant

Don't

  • Don't use debate for factual questions — debating facts produces noise, not insight. Use quick instead
  • Don't skip context in review mode — without content to review, agents can only give generic advice
  • Don't set high round counts blindly — each round multiplies latency and cost. 2-3 rounds covers most cases
  • Don't expect agents to remember across sessions — each orchestration is stateless. Sessions expire after 10 minutes
  • Don't use this for simple single-model tasks — orchestration overhead isn't worth it when one model is enough
  • Don't put secrets in context — prompts are sent to external LLM APIs

Adding agents

Any tool that accepts a text prompt and returns text can be an agent:

MCP agent (any MCP server with a tool that takes a prompt):

{
  "id": "my-agent",
  "name": "My Agent",
  "type": "mcp",
  "command": "node",
  "args": ["path/to/mcp-server.js"],
  "mcpTool": "ask",
  "mcpPromptField": "prompt",
  "timeout": 120000
}

CLI agent (any CLI that accepts a prompt as argument or stdin):

{
  "id": "my-cli",
  "name": "My CLI Tool",
  "type": "cli",
  "cliCommand": "my-tool",
  "cliArgs": ["--format", "markdown"],
  "cliInputMode": "arg",
  "timeout": 60000
}

Environment variables can be passed per agent via the env field:

{
  "id": "openai",
  "name": "GPT",
  "type": "cli",
  "cliCommand": "openai-cli",
  "cliArgs": ["chat"],
  "cliInputMode": "stdin",
  "env": { "OPENAI_API_KEY": "sk-..." },
  "timeout": 120000
}

Terms of Service & Compliance

This tool orchestrates third-party AI models. You are responsible for complying with each provider's terms. The orchestrator itself is a local dev tool — it doesn't proxy, resell, or redistribute API access.

Authentication requirements

Agents must authenticate through commercial/API tiers, not consumer accounts:

Provider Compliant auth Non-compliant auth
Google Gemini API key (GOOGLE_API_KEY), Google Workspace Enterprise, Vertex AI Free-tier Google account OAuth
OpenAI API key, Teams/Enterprise plan ChatGPT consumer account scraping
Anthropic Claude Code with MCP (built-in), API key via Console Subscription OAuth tokens in third-party tools

Using gemini-mcp-tool with Google OAuth on a free personal account is a gray area — Google's free tier allows automated API usage but may use your inputs for training. Prefer setting GOOGLE_API_KEY or authenticating through a Workspace subscription.

What this tool does NOT do

  • Does not use model outputs to train competing AI models
  • Does not resell, sublicense, or proxy API access to third parties
  • Does not bypass rate limits, safety filters, or usage caps
  • Does not extract or scrape consumer web interfaces

Key TOS clauses to be aware of

  • Google (Gemini API Terms): Prohibits using the service to develop competing models or reverse-engineer underlying data. Free-tier inputs may be used for training.
  • OpenAI (Services Agreement): Prohibits using outputs to develop competing AI models, transferring API keys, and circumventing usage limits.
  • Anthropic (Consumer Terms, Commercial Terms): MCP servers within Claude Code are explicitly supported. Subscription OAuth tokens must not be used outside Claude Code/Claude.ai. Prohibits building competing products from service outputs.

Recommendations for public/shared deployments

  1. Always use commercial API tiers (Google Workspace, OpenAI Teams/Enterprise, Anthropic API)
  2. Don't commit API keys — use environment variables or a secrets manager
  3. Don't expose the orchestrator as a public API — it's designed as a local dev tool
  4. Review provider terms periodically — AI service terms change frequently

Disclaimer: This is not legal advice. Review each provider's current terms before use. Terms linked above were last verified in February 2026.

Architecture

Claude Code (MCP client)
    |
    v
multi-agent-orchestrator (MCP server)
    |
    +---> Agent 1 (MCP client -> child MCP server)
    +---> Agent 2 (CLI subprocess)
    +---> Agent N (...)

The orchestrator is both an MCP server (exposing tools to Claude) and an MCP client (connecting to agent MCP servers). CLI agents are spawned as subprocesses.

License

MIT

from github.com/SwamiRama/multi-agent-orchestrator

Installing Multi Agent Orchestrator

This server has no published package — it is built from source. Open the repository and follow its README.

▸ github.com/SwamiRama/multi-agent-orchestrator

FAQ

Is Multi Agent Orchestrator MCP free?

Yes, Multi Agent Orchestrator MCP is free — one-click install via Unyly at no cost.

Does Multi Agent Orchestrator need an API key?

No, Multi Agent Orchestrator runs without API keys or environment variables.

Is Multi Agent Orchestrator hosted or self-hosted?

Self-hosted: the server runs locally on your machine via the install command above.

How do I install Multi Agent Orchestrator in Claude Desktop, Claude Code or Cursor?

Open Multi Agent Orchestrator on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.

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