MCP Server with OpenAI Integration
Production-ready MCP server that integrates OpenAI API with extensible tool support, enabling dynamic plugin loading and knowledge search capabilities through multiple interfaces including CLI and browser UI.
README
MCP Server with OpenAI Integration
A production-ready Model Context Protocol server implemented in TypeScript. The server provides:
- OpenAI connectivity demo – prove the API key works end-to-end via
npm run demo:openai. - MCP tool demo – spawn the server and call tools through an MCP client using
npm run demo:tool. - Extensibility demo – hot-load third-party tools from disk via
npm run demo:extorMCP_TOOL_MODULES. - Browser UI demo – launch an interactive web page that exercises the OpenAI call and knowledge-search tool with
npm run demo:ui.
The codebase focuses on clean abstractions, schema validation, and commercial readiness (logging, config safety, tests).
Requirements
- Node.js 18+ (Node 20 recommended to avoid optional engine warnings).
- npm 9+.
- A valid
OPENAI_API_KEYwith access to the desired models.
Quick start
npm install
cp .env.example .env # fill in OPENAI_API_KEY
npm run build
npm start # runs the compiled MCP server on stdio
To run the TypeScript entry directly during development:
npm run dev
Environment variables
| Variable | Description |
|---|---|
OPENAI_API_KEY |
Required. API key for OpenAI. |
OPENAI_BASE_URL |
Override base URL for Azure/OpenAI proxies. |
OPENAI_TIMEOUT_MS |
Timeout (ms) applied to OpenAI API calls. Defaults to 20000. |
MCP_SERVER_NAME |
Name advertised to MCP clients. |
LOG_LEVEL |
fatal → trace. Defaults to info. |
MCP_TOOL_MODULES |
Comma-separated absolute paths to extra tool modules (see extensibility demo). |
MCP_PORT |
Reserved for future transports; defaults to 7337. |
UI_DEMO_PORT |
Optional port for the browser UI demo. Defaults to 4399. |
Demo workflows
1. OpenAI connectivity
Verifies credentials and model access:
npm run demo:openai
Outputs the model reply plus token usage metrics via Pino logs.
2. MCP tool invocation
Spawns the compiled MCP server (node dist/index.js) and connects with the official MCP client SDK:
npm run build
npm run demo:tool
Set MCP_DEMO_SERVER_COMMAND / MCP_DEMO_SERVER_ARGS if you want the client to launch a different command (for example npx tsx src/index.ts). The script lists tools and invokes knowledge_search end-to-end.
3. Extensibility via plugins
Ships with src/examples/plugins/stockQuoteTool.ts. After npm run build the compiled module lives at dist/examples/plugins/stockQuoteTool.js.
Load it either through the demo script:
npm run build
npm run demo:ext
or by setting an environment variable before starting the server:
export MCP_TOOL_MODULES=$(pwd)/dist/examples/plugins/stockQuoteTool.js
npm start
The server automatically registers every tool exported from the referenced module(s).
4. Browser UI walkthrough
Launch a lightweight HTTP server that serves public/ui-demo.html:
npm run demo:ui
Visit http://localhost:4399 (or UI_DEMO_PORT) to:
- Send prompts directly to OpenAI using the configured API key.
- Call the built-in
knowledge_searchtool through a REST façade.
Responses render inline so you can validate both flows without leaving the browser.
Tooling
- TypeScript strict mode with
tscfor builds. - Vitest for unit testing (
npm test). - ESLint + Prettier for linting/formatting (
npm run lint,npm run format). - Pino structured logging with pretty printing in development.
Test & quality gates
npm run lint
npm test
Coverage reports are emitted under coverage/ via V8 instrumentation.
Project structure
src/config/env.ts– centralized, validated environment loading.src/clients/openaiClient.ts– resilient OpenAI wrapper implementing theLLMProvidercontract.src/mcp/registry.ts– tool lifecycle management + dynamic module loading.src/mcp/server.ts– MCP server wiring, tool adapters, and plugin APIs.src/demos/*– runnable scripts covering the three required scenarios.src/examples/plugins/*– sample plugin(s) for extensibility demos.tests/*– Vitest coverage for critical units.
For a deeper architectural overview, read docs/architecture.md.
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