Sunex
Permet aux assistants IA de rechercher le catalogue d'objectifs et d'imageurs Sunex à l'aide de requêtes en langage naturel. Il fournit des outils pour trouver des objectifs compatibles, des spécifications de capteurs et des détails sur les produits via un serveur public Model Context Protocol.
Documentation
Sunex Optics MCP Server
A public Model Context Protocol server that lets AI assistants search Sunex's lens and imager catalog in natural language.
Live endpoint: https://mcp.sunex-ai.com/mcp
Landing page: sunex-ai.com
Transport: Streamable HTTP (MCP spec 2025-03-26). Legacy SSE endpoint at /sse preserved for older clients.
Connect in 30 seconds
Claude
Settings → Connectors → Add custom connector → paste https://mcp.sunex-ai.com/mcp
Cursor / Continue / Zed
Add to your MCP config with transport streamable-http and the URL above.
ChatGPT
Via any MCP → OpenAPI bridge as a custom GPT Action.
Five tools
| Tool | What it does |
|---|---|
recommend_lens_for_imager | Give it an imager PN → compatible lenses with FOV and angular resolution. One shot. |
search_imagers | Find sensors by PN, manufacturer, or resolution class. |
get_imager_detail | Full sensor specs plus computed geometry (width / height / diagonal in mm). |
find_compatible_lenses | Given pixel count + pitch, return lenses whose image circle covers the sensor. |
search_products | Full catalog search by PN or keyword, with sample pricing and RFQ links. |
Example prompts
- "Recommend a wide-angle lens for the Sony IMX577 with F/2.0 or faster."
- "I need fisheye lenses under $100."
- "What's the diagonal of the IMX477 in mm?"
- "Find lenses for a 1920×1080 sensor with 3µm pixels, 100–180° HFOV."
Architecture
Claude / Cursor / ChatGPT → mcp.sunex-ai.com → optics-online.com/api/v1
(MCP client) (Cloudflare Worker) (ASP JSON API)
Thin proxy on Cloudflare Workers (free tier) over Sunex's production catalog. Streamable HTTP transport per MCP spec 2025-03-26 (with legacy SSE preserved). No auth, read-only.
Endpoints
| Path | Purpose |
|---|---|
/mcp | Primary — Streamable HTTP transport (current MCP standard) |
/sse | Legacy SSE transport, preserved for backward compatibility |
/.well-known/mcp.json | Public discovery manifest |
/ | Landing page with install instructions |
Self-host
git clone https://github.com/Sunex-AI/Optics-mcp
cd Optics-mcp
npm install
npx wrangler login
npx wrangler deploy
Calling a tool directly (Python)
from mcp import ClientSession
from mcp.client.streamable_http import streamablehttp_client
async with streamablehttp_client("https://mcp.sunex-ai.com/mcp") as (r, w, _):
async with ClientSession(r, w) as session:
await session.initialize()
result = await session.call_tool(
"recommend_lens_for_imager",
{"imagerPn": "IMX577", "fNumMax": 2.0}
)
Discovery
Public manifest: https://mcp.sunex-ai.com/.well-known/mcp.json
Contributing
Issues and PRs welcome. For requests about the backend API (pricing, additional catalog fields, new endpoints), email [email protected].
License
MIT — see LICENSE.