MCP Scaffold
M

MCP Scaffold

mcp-scaffold is a sandbox environment for verifying the Model Context Protocol (MCP) server, supporting local and cloud LLM inference, providing a chat interface and reference architecture.
2 points
8.9K

What is the MCP Client-Server Sandbox?

This is a minimized development environment designed for developers to test and verify the MCP server, running LLM clients, and chat interfaces. It provides a quick-start setup to immediately evaluate the impact of MCP enhancements on LLM behavior.

How to Use the MCP Sandbox?

The MCP sandbox allows developers to easily test and integrate custom MCP servers and interact with different LLM models. It supports local operation and cloud service interfaces, providing flexible configuration options.

Why Use the MCP Sandbox?

Through the MCP sandbox, developers can quickly verify the effectiveness of their MCP implementations and test different context enhancement features in a controlled environment. This helps optimize model performance and ensure system stability.

Features

Support for Multiple LLM Models
Flexible MCP Integration
Real-Time Chat Interface

How to Use

Example Usages

Frequently Asked Questions

Which models are supported?
Is it available for production environments?
Can I use my own MCP implementation?

More Resources

GitHub Repository
Source code and issue tracking.
MCP Specification Document
Link to the Model Context Protocol document (to be added).
LLaMA Model Information
More information about the LLaMA language model.

Installation

Copy the following command to your Client for configuration
Note: Your key is sensitive information, do not share it with anyone.

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