LLM Radar

LLM Radar

MCP server that provides AI assistants with real-time, current information about AI models from OpenAI, Anthropic, and Google, including pricing, capabilities, and context windows.

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⚠️ Project Retired (2026-05-01)

LLM Radar is no longer maintained. The daily data pipeline has been disabled and the repository is archived.

The live dashboard and MCP server may stop working as upstream APIs change. The model data in data/ reflects the last update before retirement.

Code remains here for reference only. Forks are welcome.


<div align="center">

LLM Radar

Real-time AI Model Intelligence via MCP

MIT License Python 3.10+ MCP Server Updated Daily

Skip the search. Your AI already has current model info.

Live Dashboard · Model Reference · MCP Setup · Contributing

</div>


What is LLM Radar?

LLM Radar is an MCP server that gives your AI assistant current information about AI models from OpenAI, Anthropic, and Google.

The problem: AI assistants have training cutoffs. Ask about models and you get outdated recommendations, deprecated APIs, or hallucinated pricing.

The solution: Connect LLM Radar and your AI already knows what's available today:

  • Fetching fresh data from provider APIs daily
  • Enriching it with Claude for better descriptions
  • Exposing it via MCP for any compatible client

MCP Server Setup

Install via pip

# Install
pip install llm-radar-mcp

# Or run directly
pip install llm-radar-mcp && llm-radar-mcp

Claude Desktop config (local stdio):

{
  "mcpServers": {
    "llm-radar": {
      "command": "llm-radar-mcp"
    }
  }
}

Option 3: Docker

docker run -p 8000:8000 ghcr.io/ajentsor/llm-radar:latest

Then connect to http://localhost:8000/sse


Available MCP Tools

Once connected, you can use these tools:

Tool Description
query_models Search/filter models by provider, type, or modality support
compare_models Side-by-side comparison of specific models
get_model Get detailed info about a specific model by API ID
list_model_ids List all available model IDs for a provider

Example Queries

"What models support vision input?"
→ Uses query_models with input_modality="image"

"Compare GPT-4o, Claude Sonnet, and Gemini 2.5 Pro"
→ Uses compare_models with those model IDs

"List all OpenAI model IDs"
→ Uses list_model_ids with provider="openai"

Available Resources

The MCP server also exposes resources you can read directly:

Resource URI Description
llm-radar://models/all Complete JSON data
llm-radar://models/openai OpenAI models only
llm-radar://models/anthropic Anthropic models only
llm-radar://models/google Google models only
llm-radar://highlights Curated recommendations

How It Works

┌─────────────────────────────────────────────────────────────────┐
│                    Daily GitHub Action (8am UTC)                │
├─────────────────────────────────────────────────────────────────┤
│                                                                 │
│  ┌──────────┐   ┌──────────┐   ┌──────────┐                    │
│  │  OpenAI  │   │Anthropic │   │  Google  │   ← Fetch APIs     │
│  │   API    │   │   API    │   │   API    │                    │
│  └────┬─────┘   └────┬─────┘   └────┬─────┘                    │
│       │              │              │                           │
│       └──────────────┼──────────────┘                           │
│                      ▼                                          │
│              ┌──────────────┐                                   │
│              │    Claude    │   ← Enrich & Format               │
│              │   (Sonnet)   │                                   │
│              └──────┬───────┘                                   │
│                     │                                           │
│       ┌─────────────┼─────────────┐                            │
│       ▼             ▼             ▼                            │
│  ┌─────────┐  ┌──────────┐  ┌───────────┐                      │
│  │models.  │  │ MCP      │  │  GitHub   │   ← Deploy           │
│  │  json   │  │ Server   │  │  Pages    │                      │
│  └─────────┘  └──────────┘  └───────────┘                      │
│                                                                 │
└─────────────────────────────────────────────────────────────────┘

Data Format

Each model includes:

Field Description
id API model identifier
name Human-friendly name
provider openai, anthropic, or google
description What the model is best for
context_window Max input tokens
pricing Input/output cost per 1M tokens
capabilities vision, function_calling, reasoning, etc.
status active, preview, or deprecated
released Release date
recommended_for Use case suggestions

Local Development

# Clone
git clone https://github.com/ajentsor/llm-radar.git
cd llm-radar

# Install
python3 -m venv venv
source venv/bin/activate
pip install -e ".[dev]"

# Run MCP server (stdio mode)
llm-radar-mcp

# Run MCP server (HTTP mode for testing)
llm-radar-mcp --http --port 8000

# Fetch fresh data (requires API keys)
cp .env.example .env
# Edit .env with your API keys
python3 -m llm_radar.fetch_models
python3 -m llm_radar.aggregate_with_claude

Project Structure

llm-radar/
├── src/llm_radar/              # Main package
│   ├── __init__.py
│   ├── mcp_server.py           # MCP server implementation
│   ├── fetch_models.py         # API fetchers
│   └── aggregate_with_claude.py # Claude enrichment
├── data/
│   ├── models.json             # Structured model data
│   ├── MODELS.md               # Human-readable reference
│   └── raw/                    # Raw API responses
├── docs/                       # Landing page (Cloudflare)
├── Dockerfile                  # Container build
├── docker-compose.yml          # Local container setup
├── pyproject.toml              # Python package config
└── .github/workflows/
    └── update-models.yml       # Daily cron job

Configuration

To run the data fetcher yourself:

# .env file
OPENAI_API_KEY=sk-...
ANTHROPIC_API_KEY=sk-ant-...
GOOGLE_API_KEY=AI...

For GitHub Actions, add these as repository secrets.


Self-Hosting

Docker Compose

version: '3.8'
services:
  llm-radar:
    image: ghcr.io/ajentsor/llm-radar:latest
    ports:
      - "8000:8000"
    restart: unless-stopped

Cloudflare Workers / Fly.io / Railway

The MCP server supports HTTP/SSE transport, making it deployable to any platform that supports long-running HTTP connections.


Contributing

See CONTRIBUTING.md for guidelines.

Key areas for contribution:

  • Additional providers (Cohere, Mistral, etc.)
  • More MCP tools
  • Better data enrichment prompts
  • Documentation improvements

License

MIT License - see LICENSE


<div align="center">

Built for developers who want accurate AI model info

Star this repo · Report Issue · View Dashboard

</div>

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