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harishsg993010/damn-vulnerable-MCP-server

Score: 22.0 Rank #10413

Damn Vulnerable MCP Server

Overview

harishsg993010/damn-vulnerable-MCP-server is a Python MCP server. Damn Vulnerable MCP Server

Ranked #10413 out of 25632 indexed tools.

Has 1,266 GitHub stars.

Ecosystem

Python No license

Signal Breakdown

Stars 1,266
Freshness 3mo ago
Issue Health 12%
Contributors 7
Dependents 0
Forks 140
Description Brief
License None

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Matched Queries

"mcp server""mcp-server"

From the README

# Damn Vulnerable Model Context Protocol (DVMCP)

A deliberately vulnerable implementation of the Model Context Protocol (MCP) for educational purposes.

## Overview

The Damn Vulnerable Model Context Protocol (DVMCP) is an educational project designed to demonstrate security vulnerabilities in MCP implementations. It contains 10 challenges of increasing difficulty that showcase different types of vulnerabilities and attack vectors.

This project is intended for security researchers, developers, and AI safety professionals to learn about potential security issues in MCP implementations and how to mitigate them.

## What is MCP?

The [Model Context Protocol (MCP)](https://modelcontextprotocol.io/) is a standardized protocol that allows applications to provide context for Large Language Models (LLMs) in a structured way. It separates the concerns of providing context from the actual LLM interaction, enabling applications to expose resources, tools, and prompts to LLMs.

## Recommended MC
Read full README on GitHub →
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