Command Palette

Search for a command to run...

UnylyUnyly
Весь каталог

AIDC AI Design Engine

БесплатноНе проверен

Deterministic AI data-center design engine exposed as MCP tools for sizing, validation, and physical layout. Supports NVIDIA Hopper, Blackwell, and Vera Rubin w

GitHubEmbed

Описание

Deterministic AI data-center design engine exposed as MCP tools for sizing, validation, and physical layout. Supports NVIDIA Hopper, Blackwell, and Vera Rubin with anonymous access to the remote engine.

README

AI data center sizing, validation, and layout via a remote MCP server.
AI 데이터센터 자동화 툴: 결정론적 엔진으로 AI 데이터센터를 설계·검증·레이아웃합니다.

MCP Registry License


What is this?

This repository shows how to connect an MCP client or REST client to the AIDC-AI.IO Design Engine — a deterministic, source-backed engine that sizes, validates, and lays out Rubin-era AI data centers.

What the engine does (on the server):

  • Accepts an IT load, rack density, GPU generation (Hopper / Blackwell / NVIDIA Vera Rubin NVL72 / VR200), and site constraints.
  • Returns deployment-unit-snapped rack counts, design PUE, power-factor-backed total MVA (22.9 kV intake), liquid-cooling / air-cooling heat split, CDU planning values, cost (KRW), and timeline.
  • Validates designs against electrical, cooling, layout, safety, and data rules with severity-classified findings and RFIs.
  • Generates a rack-plan grid (hall dimensions, row/column positions in mm) and a site-block layout.

What this repo contains:

  • MCP client configuration snippet.
  • curl and Node.js examples that call the public REST projection (/api/agent/*).
  • An illustrative response so you know what fields to expect.

The core calculation engine, reference catalogs (rack library, AHJ/code matrix, 1.6T fabric topology, direct-to-chip (D2C) cooling models, etc.) are proprietary and remain server-side. No engine source is published here.

Korea live. Region-specific: 22.9 kV utility intake, Korean AHJ/code, climate, and operations validation. Keywords the engine targets: AI data center, AIDC, NVIDIA Rubin, Vera Rubin, 22.9kV, liquid cooling, CDU, D2C, 1.6T fabric, PUE.


MCP Server

Field Value
Transport Streamable HTTP
Endpoint https://aidc-ai.io/api/mcp
Official registry name io.aidc-ai/design-engine
Auth None required (anonymous tier). Optional Authorization: Bearer aidc_live_<32hex> raises rate tier.
Tool count 3
Rate limit (anon) 10 req / hour on /api/agent/*

Tools

Tool One-line description
design Size an AI data center: returns rack count, PUE, total MVA, liquid/air cooling split, CDU count, cost (KRW), and build timeline.
validate Check a design against electrical, cooling, layout, safety, and data rules; returns severity-classified findings and RFIs.
layout Generate a rack-plan grid (hall dimensions, row/column positions in mm) and a site-block layout.

Quick Start

MCP client configuration

Add this to your MCP client config (e.g. Claude Desktop claude_desktop_config.json, Cursor MCP settings, or any Streamable HTTP client):

{
  "mcpServers": {
    "aidc-design-engine": {
      "url": "https://aidc-ai.io/api/mcp"
    }
  }
}

The server is immediately usable without an API key. To raise the rate limit, add:

{
  "mcpServers": {
    "aidc-design-engine": {
      "url": "https://aidc-ai.io/api/mcp",
      "headers": {
        "Authorization": "Bearer aidc_live_<your-32-hex-key>"
      }
    }
  }
}

Contact [email protected] for a registered or partner key.

Docker (local stdio server)

Build and run the same published MCP server used for registry evaluation:

docker build -t aidc-ai-mcp .
docker run --rm -i aidc-ai-mcp

The container communicates over stdio and connects to https://aidc-ai.io by default. No API key is required for the anonymous tier.


REST Usage

The MCP tools proxy to these REST endpoints (permissive CORS, same optional auth):

Tool REST endpoint
design POST https://aidc-ai.io/api/agent/design
validate POST https://aidc-ai.io/api/agent/validate
layout POST https://aidc-ai.io/api/agent/layout

Example: size a 30 MW Rubin-era AI data center

curl -s -X POST https://aidc-ai.io/api/agent/design \
  -H "Content-Type: application/json" \
  -d '{
    "itLoadMw": 30,
    "rackDensityKw": 120,
    "gpuGen": "rubin",
    "siteAreaSqm": 5000,
    "region": "metropolitan",
    "options": {
      "redundancy": "n_plus_1",
      "coolingMode": "liquid",
      "pueTarget": 1.2
    }
  }'

Illustrative response

The JSON below is illustrative — field names and structure reflect the actual API shape, but exact numbers will vary by engine version and input. See design.response.example.json for the full object.

{
  "rackCount": 256,
  "rackCountRaw": 250,
  "pueDesign": 1.21,
  "mvaTotal": 45.8,
  "liquidCoolingLoadMw": 26.4,
  "airCoolingLoadMw": 3.6,
  "cduCount": 13,
  "totalCostKrw": 187500000000,
  "totalMonths": 28,
  "warnings": []
}

(30 MW IT / 120 kW per rack / Rubin / 5 000 m² / metropolitan / N+1 / liquid / PUE 1.2 target)


Tools — Input Reference

design

Size an AI data center from scratch.

Field Type Range / values Required
itLoadMw number 0 < x ≤ 1000 Yes
rackDensityKw number 0 < x ≤ 500 Yes
gpuGen string "hopper" | "blackwell" | "rubin" Yes
siteAreaSqm number 0 < x ≤ 1 000 000 Yes
region string "metropolitan" | "regional" Yes
options.redundancy string "n" | "n_plus_1" | "2n" No
options.coolingMode string "air" | "hybrid" | "liquid" No
options.pueTarget number 1.0 – 2.5 No

Key response fields: rackCount, rackCountRaw, pueDesign, mvaTotal, liquidCoolingLoadMw, airCoolingLoadMw, cduCount, totalCostKrw, totalMonths, warnings[]


validate

Check a design against engineering rules.

{
  "rawInput": {
    "itLoadMw": 30,
    "rackDensityKw": 120,
    "gpuGen": "rubin",
    "siteAreaSqm": 5000,
    "region": "metropolitan"
  }
}

Key response fields: findings[] (each with severity, code, message), rfis[], passCount, warnCount, failCount


layout

Generate a rack plan and site block layout.

{
  "design": {
    "itLoadMw": 30,
    "rackDensityKw": 120,
    "gpuGen": "rubin",
    "siteAreaSqm": 5000,
    "region": "metropolitan"
  },
  "siteCentroid": { "lat": 37.5665, "lng": 126.9780 },
  "siteAreaSqm": 5000
}

Key response fields: rackPlan (hall dimensions, rows, columns, per-rack positions in mm), sitePlan (block-level layout in percentage coords)


Links

Resource URL
Website https://aidc-ai.io
OpenAPI 3.1 spec https://aidc-ai.io/api/openapi.json
MCP server card https://aidc-ai.io/.well-known/mcp/server.json
LLM context https://aidc-ai.io/llms.txt
Full LLM context https://aidc-ai.io/llms-full.txt
Contact [email protected]

License

This repository (examples and connector code only) is released under the MIT License.
The AIDC-AI.IO engine, reference catalogs, and all server-side logic remain proprietary.

from github.com/aidc2026ai-melon/aidc-ai-mcp

Установка AIDC AI Design Engine

У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.

▸ github.com/aidc2026ai-melon/aidc-ai-mcp

FAQ

AIDC AI Design Engine MCP бесплатный?

Да, AIDC AI Design Engine MCP бесплатный — установка в пару кликов через Unyly без оплаты.

Нужен ли API-ключ для AIDC AI Design Engine?

Нет, AIDC AI Design Engine работает без API-ключей и переменных окружения.

AIDC AI Design Engine — hosted или self-hosted?

Доступен hosted-вариант: Unyly запускает сервер в облаке, локальная установка не обязательна.

Как установить AIDC AI Design Engine в Claude Desktop, Claude Code или Cursor?

Открой AIDC AI Design Engine на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.

Похожие MCP

Compare AIDC AI Design Engine with

Не уверен что выбрать?

Найди свой стек за 60 секунд

Автор?

Embed-бейдж для README

Похожее

Все в категории design