EdgeOne Pages MCP
An MCP server implementation using EdgeOne Pages Functions for intelligent chat applications.
EdgeOne Pages: MCP Client and Server Implementation with Functions
Project Overview
This project showcases an intelligent chat application built with EdgeOne Pages Functions technology. It interacts with backend functions through a web interface, implementing a complete Model Context Protocol (MCP) workflow.
The system architecture consists of the following core components:
- MCP Streamable HTTP Server (
functions/mcp-server/index.ts
) - MCP Client (
functions/mcp-client/index.ts
) - Backend API (
functions/v1/chat/completions/index.ts
) as the MCP HOST, responsible for coordinating the entire MCP workflow
Through this architecture, users can access powerful MCP tool capabilities in the browser, enabling intelligent interactions such as "generating online webpages with a single prompt."
Core Features
- Interactive Chat Interface: Modern, responsive web interface built with Next.js and React
- High-Performance Edge Functions: Critical business logic deployed on highly scalable EdgeOne Pages Functions
- Complete MCP Implementation: Model Context Protocol implementation based on the latest specifications, providing powerful context management and request routing capabilities
- OpenAI Format Compatible: Backend API fully supports OpenAI-formatted request and response handling
Streamable HTTP MCP Server
Configure remote MCP services in applications that support Streamable HTTP MCP Server
.
{
"mcpServers": {
"edgeone-pages-mcp-server": {
"url": "https://mcp-on-edge.edgeone.site/mcp-server"
}
}
}
Deploy
More Templates: EdgeOne Pages
Local Development
Environment Setup
First, install dependencies and start the development server:
# Install dependencies
npm install
# Or use other package managers
# yarn install / pnpm install / bun install
# Start development server
npm run dev
# Or use other package managers
# yarn dev / pnpm dev / bun dev
Configure environment variables: Copy the .env.example
file and rename it to .env
, then fill in your AI service interface configuration information.
After starting, visit http://localhost:3000 in your browser to view the application.
Project Structure
- Frontend Interface:
app/page.tsx
contains the main page logic and UI components - Backend Functions: All edge functions are in the
functions
directory- Chat API:
functions/v1/chat/completions
- MCP Server:
functions/mcp-server
- MCP Client:
functions/mcp-client
- Chat API:
Technical Documentation
Learn more about related technologies:
- Next.js Documentation - Next.js framework features and API
- EdgeOne Pages Functions Documentation - Detailed explanation of EdgeOne serverless functions
- Model Context Protocol (MCP) - Implemented based on the 2025-03-26 version of Streamable HTTP transport
Related Servers
MCP Simple OpenAI Assistant
A simple server for interacting with OpenAI assistants using an API key.
MCP Utils
A Python package with utilities and helpers for building MCP-compliant servers, often using Flask and Redis.
NPM Sentinel MCP
An AI-powered MCP server for analyzing NPM package security, dependencies, and performance.
Markdown Sidecar MCP Server
Serve and access markdown documentation for locally installed NPM, Go, or PyPi packages.
MCP LaTeX Server
Create, edit, and manage LaTeX files. Requires an external LaTeX distribution like MiKTeX, TeX Live, or MacTeX.
Unified MCP Client Library
An open-source library to connect any LLM to any MCP server, enabling the creation of custom agents with tool access.
Code Knowledge Tool
A knowledge management tool for code repositories using vector embeddings, powered by a local Ollama service.
API Tester
This MCP Server accepts swagger/postman documents as input. It then generates API & Load test scenarios, executes the tests and generates the execution report.
Remote MCP Server for Odoo
An example of a remote MCP server for Odoo, deployable on Cloudflare Workers without authentication.
ocireg
An SSE-based MCP server that allows LLM-powered applications to interact with OCI registries. It provides tools for retrieving information about container images, listing tags, and more.