Legion Server
БесплатноНе проверенExposes multiple LLMs as individual tools via the OpenAI Responses API wire format, enabling the calling AI to get second opinions and orchestrate multi-model d
Описание
Exposes multiple LLMs as individual tools via the OpenAI Responses API wire format, enabling the calling AI to get second opinions and orchestrate multi-model discussions with a quorum tool.
README
"I am Legion, for we are many."
An MCP-native model council. Legion exposes LLMs as individual tools and orchestrates them into debates, juries, blind panels, private refinement gauntlets, workshops, and custom multi-model deliberations.
Every model is reached through the OpenAI Responses API wire format. Use OpenAI or Azure directly, route other providers through a compatible gateway (such as a LiteLLM proxy), and configure the entire council through hot-reloadable files.
Contents
- How it works
- Design decisions
- Requirements
- Setup
- Configuration
- Logging
- Run
- Try it
- Use in VS Code
- Deploy
How it works
flowchart LR
AI[Calling AI] -->|claude / gpt / gemini …| Legion
Legion -->|Responses API| GPT[OpenAI / Azure — direct]
Legion -->|Responses API| GW[Gateway e.g. LiteLLM]
GW --> Claude & Gemini & Llama
- One tool per model, named after the slugified model name (e.g.
Claude→claude). Each accepts apromptplus optionalcontext,role,system,temperature, andmaxTokens. - A
quorumtool fans one prompt out to several models — with roles, multi-round discussion, visibility modes, and synthesis — and returns each answer separately. See Presets for the orchestration options. - Presets are named, pre-staffed councils (debate, jury, code review, …), each exposed as its own tool.
- Identity and telemetry ride in
structuredContent, not the answer text. Logging goes to stderr (safe for stdio).
Design decisions
- No provider adapters. There is no provider-specific code and no built-in model list. Legion speaks one wire format; models that don't speak it natively go through a gateway. Supporting a new model requires no change here.
- Models are config, not code. Adding a model means adding a JSON file. The directory is re-read per request, so no rebuild or restart.
- One tool per model. Each model appears to the calling AI as its own tool
with its own description, rather than a single tool with a model parameter.
The
quorumtool covers the ad-hoc multi-model case, and each preset inconfig/presets/is exposed as its own enforced, pre-staffed council tool. - Stateless. Every call is one-shot with
store: false. Nothing is persisted, so there is no database and no conversation state to manage. - Small. A few hundred lines of TypeScript, one bundled output file, six dependencies.
Requirements
- Node.js 24+
- At least one OpenAI-Responses-compatible endpoint (a provider API directly, or a gateway such as LiteLLM for models that need bridging)
Setup
npm install
copy .env.example .env # then edit .env
Configuration
All configuration lives in a config/ directory. The bundled defaults are
always the base layer; a config/ folder in the current working directory
is overlaid on top of them, per file:
- Directory resources (
models/,roles/,presets/,tools/): a local file overrides the bundled file of the same name; a local-only file is added; every bundled file you don't touch stays. So dropping in oneconfig/presets/refine.jsonoverrides just that preset — the other bundled presets remain. - Single-file text (
prompts.json,errors.json,schema.json): merged per key — defaults < bundled < local. A partial local file overrides only the keys it sets. description.md: local wins whole if present, else bundled.
The overlay can override or add, but not delete a bundled entry. To turn off
bundled presets you don't want, use DISABLE_PRESETS (see below).
Installing from npm? You must supply your own model files. The bundled config ships only key-free
*.example.jsonmodel files, which the scanner deliberately ignores — so the bundle contributes zero real models. With no real model file the server fails fast at startup (No model files found in ...). Drop oneconfig/models/<name>.jsonnext to where you run the server (see below) — the rest falls back to the bundled defaults.
The layout below is identical either way, and everything hot-reloads per request.
Models — config/models/*.json
At least one model file is required — the server fails fast without one.
Each JSON file becomes a tool, named after the slugified file name
(config/models/fable.json → tool fable):
{
"model": "claude-fable-5",
"description": "Claude Fable — fast, creative, general purpose.",
"baseUrl": "https://api.example.com",
"apiKey": "sk-optional-per-model-key"
}
model(required) — the deployed model id the endpoint routes to.description— helps the calling AI pick the right model.system— optional baseline system instructions baked into every call to this model.baseUrl/apiKey— optional; omitted values fall back toDEFAULT_BASE_URL/DEFAULT_API_KEY.omitParams— optional list of request params to drop for this model, e.g.["temperature"]. The server stays provider-agnostic: it never assumes which models reject which params — you declare each model's quirks here. Useful for reasoning models and some deployments that rejecttemperature.
Hot-drop: the directory is re-scanned per request — add or edit a model file and it's live on the next call, no restart.
Secrets & git: model files can contain API keys, so config/models/*.json
is git-ignored. Copy a *.example.json (tracked, key-free, ignored by the
scanner) to get started:
copy config\models\gpt.example.json config\models\gpt.json # then add your key
Roles — config/roles/*.md
Optional hot-droppable instruction files. Each .md file becomes a named role
(slugified from filename). Drop a file, it's live on the next call. This repo
ships skeptic.md, builder.md, judge.md, and short.md (a terse "answer
immediately, no deliberation" role useful for constrained-output turns) as
ready-to-use starters — edit or delete them freely (they hold no secrets).
Available selectors in tools become roleName, e.g. passing role: "skeptic"
or using "model:skeptic" in quorum.models.
Presets — config/presets/*.json
Optional hot-droppable council recipes, one JSON file per preset (named
after the slugified file name, like models). Each preset becomes its own
tool — drop config/presets/code_review.json and a code_review tool appears
on the next request. Each preset has a description, a roles list, and
optional authoritative mode / synthesizer defaults. Each role defines its
behavior inline — a role's description is its instructions (the behavior
contract); a role with no description falls back to a matching
config/roles/<role>.md file:
{
"description": [
"Free-for-all: pit several contestants against each other, then crown a winner.",
"",
"Staff `contestant` with as many models as you like; one `judge` decides."
],
"mode": "parallel",
"synthesizer": "judge",
"roles": [
{ "role": "contestant", "description": "Argue why your answer beats the others.", "min": 2, "max": null },
{ "role": "judge", "description": "Crown a single winner and justify it.", "min": 1, "max": 1 }
]
}
The calling AI invokes the preset tool directly (e.g. code_review) and still
writes the models selectors, assigning any model to any preset role. Presets
are enforced: every selector must use a preset role and every role must be
staffed within its cardinality, else the result is an error saying what to fix.
Keys:
description(required) — string or array of strings; the preset tool's own MCP description.roles— each with optionaldescription, andmin/maxspeakers (default exactly one;max: null= unbounded,min: 0= optional).mode,synthesizer,synthesizeEvery,framer,reframeEvery,closingStatements,eliminateEvery,eliminationsOptional,enterEvery,vote,voteEvery,voteVisibility,defaultRounds— optional orchestration defaults.frameris the mirror ofsynthesizer: a neutral voice that opens the discussion (and re-steers everyreframeEveryrounds) instead of closing it. Most are overridable per call;eliminateEvery(survivor mode: the synthesizer removes one speaker every Nth round — a removed speaker is out for good and never prompted again),eliminationsOptional(let the synthesizer keep everyone in a given round), andenterEvery(staggered entry: with@team-tagged selectors, one combatant per team starts and one more enters every Nth round) are preset-only.voteturns on anonymous peer voting: every live speaker casts a hidden freeform ballot and only an anonymous tally reaches the transcript (advisory — the synthesizer/ref decides whether to act on it);voteEvery/voteVisibilitytune it. See a shipped preset and thequorumtool description for what each does.
This repo ships these presets — edit or delete freely:
code_review- Structured multi-model code review.
debate- Opposing sides argue a question to a synthesis.
brainstorm- Divergent idea generation across models.
quick_take- Fast one-shot reactions from several models.
tiebreak- A decisive third voice resolves a stalemate.
battle_royale- Free-for-all contest; an overseer crowns a winner.
jury- Independent verdicts plus a secret jury ballot the judge weighs.
election- Candidates campaign, then the field decides by secret ballot — the anonymous vote is the verdict, not a judge's call. Optional
incumbentdefends a record; an optional silentelectoratereads every round and votes without campaigning. double_blind- Independent blind panel — no one sees the others.
gauntlet- Private self-refinement race across rounds.
refine- Relay polish of an existing artifact.
workshop- Differentiated creative team.
focus_group- Moderated panel that riffs off each other.
final_girl- Survivors culled one per round until one remains.
war_games- A staggered-entry team cage match:
@team-tagged combatants enter one at a time while a neutral ref calls fouls and names the winning team, with an optionalbookerwho sets the match.
Empty/missing folder → no preset tools.
Role text nudges output, it doesn't cap it — use
maxTokensfor a hard limit, and budget generously for reasoning models and multi-round quorums.
AI guidance — config/description.md
Optional markdown served to clients as MCP instructions — describe your
models and when the AI should use each. See this repo's copy for a template.
Tool, field & message text — config/*.json and config/tools/*.md
All user-facing text lives in config, not code, and hot-reloads per request.
Each file merges over built-in defaults per key, so override only what you want;
open the shipped copies to see the full key set and {token} placeholders:
config/tools/<tool>.md— a tool's description (e.g.quorum.md). Delete to fall back to the built-in string.config/schema.json— input-field descriptions (prompt= shared fields,quorum= quorum-only; aquorumkey wins on a name clash).config/prompts.json— the prompt-shaping templates models read: role contract, context block, transcript header, round banners. Tune how strongly roles bind and how rounds are framed here.config/errors.json— runtime error messages shown to the calling AI.
(Startup/config-validation errors stay in code — a message that reports a broken config file can't live inside it.)
Environment variables
| Variable | Required | Description |
|---|---|---|
DEFAULT_BASE_URL |
no* | API root for models without a baseUrl — the SDK appends /responses. E.g. https://api.openai.com/v1, https://<res>.openai.azure.com/openai/v1; a LiteLLM proxy works at its plain root. |
DEFAULT_API_KEY |
no* | API key for models without an apiKey. Stays server-side. |
HOST |
no | HTTP bind address (default 127.0.0.1). Set 0.0.0.0 to expose — then set ALLOWED_HOSTS. |
ALLOWED_HOSTS |
no | Comma-separated hostnames for DNS-rebinding protection on non-localhost binds. |
PORT |
no | HTTP port (default 5000; ignored by stdio). |
MAX_ROUNDS |
no | Max discussion rounds the quorum tool accepts (default 5). |
TOKEN_BUDGET |
no | Default soft cumulative token budget for a quorum run (unset = no limit; per-call tokenBudget overrides). |
DYNAMIC_ROLES |
no | Allow the calling AI to define ad-hoc quorum roles inline (default true). |
DISABLE_PRESETS |
no | Comma-separated preset slugs to not register as tools (e.g. battle_royale,jury). Applies to bundled and local presets alike; unknown names are ignored. Unset = all presets registered. |
LOG_LEVEL |
no | debug | info | warn | error (default info). |
* Every model must resolve a baseUrl and apiKey from its file or the
defaults — validated at startup.
The server fails fast at startup on a missing/empty models directory, invalid model files, an unresolvable endpoint or key, or two file names that slugify to the same tool.
Routing
Every tool call is a stateless, one-shot Responses API request. Models whose
endpoints natively speak Responses (OpenAI, Azure OpenAI / Foundry) set a
baseUrl to be called directly; the rest fall back to the defaults —
typically an OpenAI-compatible gateway like LiteLLM that bridges to their native
APIs.
Logging
info(blue): server start and one metadata line per model call — model, latency, token usage, role, context presence. No prompt/response content.debug(gray): additionally logs the full prompt and response (context is noted as present, not printed).warn(orange) /error(red): fallbacks and failures.
Color is auto-disabled when stderr is not a TTY.
Run
One entrypoint, transport as an argument (stdio is the default):
Development (no build step, via tsx):
npm run dev # stdio transport
npm run dev:http # Streamable HTTP transport on :$PORT/mcp
Production (compiled to bin/server.js):
npm run build
npm start # node bin/server.js (stdio)
npm run start:http # node bin/server.js http
Try it
List the tools with the MCP Inspector:
npx @modelcontextprotocol/inspector npx tsx ts/server.ts
Use in VS Code
Add to your mcp.json:
{
"servers": {
"legion": {
"command": "node",
"args": ["bin/server.js"],
"cwd": "path/to/legion",
"env": {
"DEFAULT_BASE_URL": "https://your-gateway.example.com",
"DEFAULT_API_KEY": "sk-your-key"
}
}
}
}
For the HTTP transport, point your client at http://<host>:<PORT>/mcp.
Health
GET /health— cheap liveness: confirms the process is up and config loaded. Returns{ status: "ok", name, version, models }(a count). Makes no external calls. This is what containerHEALTHCHECKs and Kubernetes liveness/readiness probes should hit.GET /health?deep— optional connectivity check: sends a tiny prompt to every model and reports per-model reachability (503if any fail). Makes a real billable call per model, so use it manually — don't wire it to an automatic probe.
Deploy
Ready-to-use container deployment examples (Azure App Service, Azure Container
Apps, Docker Compose, Kubernetes, and Compose + Caddy for HTTPS) live in
examples/ — each installs Legion from npm and ships a complete
drop-in config/.
Установить Legion Server в Claude Desktop, Claude Code, Cursor
unyly install legion-mcp-serverСтавит в Claude Desktop, Claude Code, Cursor и VS Code — сам разбирается с npx, uvx и сборкой из исходников.
Впервые? Поставь CLI: curl -fsSL https://unyly.org/install | sh
Или настроить вручную
Выполни в терминале:
claude mcp add legion-mcp-server -- npx -y legion-mcpFAQ
Legion Server MCP бесплатный?
Да, Legion Server MCP бесплатный — установка в пару кликов через Unyly без оплаты.
Нужен ли API-ключ для Legion Server?
Нет, Legion Server работает без API-ключей и переменных окружения.
Legion Server — hosted или self-hosted?
Доступен hosted-вариант: Unyly запускает сервер в облаке, локальная установка не обязательна.
Как установить Legion Server в Claude Desktop, Claude Code или Cursor?
Открой Legion Server на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.
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