MCPZoo: A Large-Scale Dataset of Runnable Model Context Protocol Servers for AI Agent
By: Mengying Wu , Pei Chen , Geng Hong and more
Potential Business Impact:
Helps computers learn to use online tools safely.
Model Context Protocol (MCP) enables agents to interact with external tools, yet empirical research on MCP is hindered by the lack of large-scale, accessible datasets. We present MCPZoo, the largest and most comprehensive dataset of MCP servers collected from multiple public sources, comprising 90,146 servers. MCPZoo includes over ten thousand server instances that have been deployed and verified as runnable and interactable, supporting realistic experimentation beyond static analysis. The dataset provides unified metadata and access interfaces, enabling systematic exploration and interaction without manual deployment effort. MCPZoo is released as an open and accessible resource to support research on MCP-based security analysis.
Similar Papers
Experiences with Model Context Protocol Servers for Science and High Performance Computing
Distributed, Parallel, and Cluster Computing
Lets computers plan and do science experiments.
A Measurement Study of Model Context Protocol
Computers and Society
AI can now connect to more tools safely.
Model Context Protocol (MCP) at First Glance: Studying the Security and Maintainability of MCP Servers
Software Engineering
Finds hidden dangers in AI tools.