Generative UI MCP

Generative UI MCP

Provides AI models with structured design guidelines and system prompts for creating consistent, high-quality interactive visualizations like charts, diagrams, and mockups. It enables on-demand loading of UI specifications to optimize token usage while ensuring visually polished and functional widget generation.

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README

Generative UI MCP

An MCP server that teaches AI models to generate interactive visualizations — charts, diagrams, mockups, and more.

Inspired by Anthropic's Artifacts and Vercel's Generative UI. This server provides structured design guidelines so AI models produce consistent, streaming-safe, visually polished widgets.

What it does

Instead of stuffing thousands of tokens of design rules into every system prompt, this MCP server lets the model load guidelines on demand — only when it actually needs to generate a visualization.

Module What it covers
interactive HTML controls, forms, sliders, calculators
chart Chart.js patterns, canvas setup, interactive data controls
mockup UI mockup layouts, component patterns
art SVG illustrations, artistic visualizations
diagram Flowcharts, timelines, hierarchies, cycle diagrams, matrices

The model calls load_ui_guidelines with the modules it needs, and gets back comprehensive design specs including:

  • Core design system (philosophy, streaming rules, CSS variables)
  • Color palette (6 ramps with semantic usage rules)
  • Component patterns and code templates
  • SVG setup guides with arrow markers and viewBox calculations
  • 8 diagram types with layout rules and code examples

Quick start

Auto-install via AI

Copy and paste the following prompt into your AI assistant (Claude Code, Cursor, etc.) to install automatically:

Install the generative-ui-mcp MCP server. Run npx generative-ui-mcp as a stdio MCP server. The server name should be "generative-ui".

Claude Code

claude mcp add generative-ui -- npx generative-ui-mcp

Claude Desktop

Add to your claude_desktop_config.json:

{
  "mcpServers": {
    "generative-ui": {
      "command": "npx",
      "args": ["generative-ui-mcp"]
    }
  }
}

Cursor / Windsurf

Add to your MCP settings (.cursor/mcp.json or equivalent):

{
  "mcpServers": {
    "generative-ui": {
      "command": "npx",
      "args": ["generative-ui-mcp"]
    }
  }
}

Tool

load_ui_guidelines

Load detailed design guidelines for generating visual widgets.

Parameters:

Name Type Description
modules string[] Modules to load: interactive, chart, mockup, art, diagram

Example call:

{
  "name": "load_ui_guidelines",
  "arguments": {
    "modules": ["chart", "diagram"]
  }
}

Shared sections (like Core Design System and Color Palette) are automatically deduplicated when loading multiple modules.

Resource

generative-ui://system-prompt

A compact system prompt snippet (~300 tokens) with all hard constraints needed for valid widget output. Hosts can inject this into their system prompt so the model can generate basic widgets even without calling the tool.

Contains: output format, JSON escaping rules, streaming order, CDN allowlist, SVG setup, size limits, and interaction patterns.

How it works

┌─────────────┐    system prompt     ┌─────────────┐
│   AI Host   │ ◄── injects ──────── │  Resource:   │
│ (Claude,    │     ~300 tokens      │ system-prompt│
│  Cursor,    │                      └─────────────┘
│  etc.)      │
│             │    tool call          ┌─────────────┐
│   Model ────│──► load_ui_          │  Guidelines  │
│             │    guidelines         │  Modules     │
│             │ ◄── returns ──────── │  (on demand) │
│             │    detailed specs     └─────────────┘
└─────────────┘

Token savings: The system prompt is ~300 tokens vs ~650+ tokens for full guidelines. Detailed specs are only loaded when the model actually needs to generate a visualization. Most conversations don't involve widgets, so this saves tokens on every request.

Development

npm install
npm run build
npm start

License

MIT

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