A comprehensive research repository examining the architectural, security, and defense dimensions of MCP. This collection includes academic papers, visual infographics, and in-depth documentation covering threat analysis, benchmarks, and defense strategies for AI agent systems.
"A Critical Security and Architectural Review of the Model Context Protocol (MCP) Ecosystem"
A critical architectural synthesis of the MCP ecosystem, grounded in empirical analysis. This paper evaluates security risks (Lethal Trifecta), analyzes the shift to the Code Execution paradigm, and proposes tiered defense strategies.
The Model Context Protocol (MCP) is an open standard that enables AI models to securely and efficiently interact with external tools and data resources. Think of it as a "USB-C port for AI" — a universal connector that allows any AI application to work with any tool or data source without custom integrations.
Before MCP, integrating AI agents with tools required N × M unique connectors:
MCP creates a shared language for AI-tool communication:
A visual explanation of the Model Context Protocol, its architecture, and how it standardizes AI agent interactions.
In-depth guides covering all aspects of the Model Context Protocol, from fundamentals to advanced security considerations. Each document provides detailed analysis backed by academic research and real-world benchmarks.
Our research identifies critical security challenges in MCP deployments and provides actionable defense strategies based on analysis of 1,899 servers and multiple benchmark studies.
Curated collection of academic papers covering MCP security, benchmarks, applications, and
related research.
All papers are available in the reference/ folder with detailed abstracts in the
README.
Explore the comprehensive documentation, review the academic papers, and contribute to advancing MCP security research.