loading…
Search for a command to run...
loading…
An MCP server that provides expert knowledge on the OpenAI API, powered by RAG. It enables users to ask technical questions and get accurate answers, with suppo
An MCP server that provides expert knowledge on the OpenAI API, powered by RAG. It enables users to ask technical questions and get accurate answers, with support for search and fetch tools.
License: MIT TypeScript Cloudflare Workers
An MCP server that knows the OpenAI API inside and out. 100% TypeScript built with OpenAI Agents SDK, Hono, Cloudflare Workers, and Drizzle ORM. Powered by RAG and ready to answer your technical questions.

Use a publicly accessible URL (e.g., ngrok, Cloudflare Tunnel) to serve the endpoints for MCP clients. You can generate the token on the top page:
{
"mcpServers": {
"openai-sdk-knowledge.org": {
"type": "streamable-http",
"url": "https://openai-sdk-knowledge.org/mcp",
"headers": {
"Authorization": "Bearer {your api key here}"
}
}
}
}
For example, you can add this MCP server to Cursor:

Not only Cursor—you can use this MCP server with any other tools supporting MCP server connections.
You can pass https://openai-sdk-knowledge.org/mcp along with a valid API token:


Then, you can call the tool in the conversation with the Responses API agent:

Also, for ChatGPT Deep Research customer connector, use the same URL. When the ChatGPT server accesses this app's MCP server endpoint, it returns search and fetch tools as well (see the documentation for details).

# Clone and install
git clone https://github.com/seratch/openai-sdk-knowledge-org.git
cd openai-sdk-knowledge-org/
npm install
# Configure (add your OpenAI API key)
cp .dev.vars.example .dev.vars
# Edit .dev.vars: OPENAI_API_KEY=sk-your-key-here
# Run it
npm run dev
You can access http://localhost:8787 and see how it works.
Requirements: Node.js 22+ and API keys (OpenAI, GitHub)
This app is essentially a simple web app that runs on Cloudflare Workers. The web app provides MCP server protocol compatible endpoints, as well as a web user interface. For the RAG data pipeline, it collects data from sources and generates asynchronous tasks to run and enqueue them into Cloudflare’s Queue.
src/
├── agents/ # Internally used agents built with OpenAI Agents SDK
├── pipeline/ # RAG data collection and processing
├── server/mcp/ # MCP protocol implementation
├── server/web/ # Web app implementation
├── storage/ # Vector database (Vectorize) and D1 database access
└── index.ts # App entry point

MIT
Выполни в терминале:
claude mcp add openai-sdk-knowledge-mcp-server -- npx Безопасность
Низкий рискАвтоматическая эвристика по публичным данным — не гарантия безопасности.