Stibo Systems Launches MCP Server for AI Agent Access to Master Data
Stibo Systems announced in a press release the launch of the Stibo Systems MCP Server, a new capability that allows AI agents to connect directly to governed master data using the open Model Context Protocol (MCP) standard. The solution provides instant access to verified data without requiring custom integration.
The MCP Server lets AI agents query and consume master data on demand while maintaining governance and compliance controls. It operates across different AI systems and frameworks, preserving enterprise data policies as agents perform tasks within defined parameters. The platform is built on Stibo Systems' STEP semantic data graph modeling, which provides the structure and relationships needed for AI to interpret data accurately.
According to the company, the MCP Server eliminates the need for bespoke connectors and supports a platform-agnostic architecture. It is designed to make master data management an active intelligence layer for enterprises using AI, enabling faster deployment of agentic AI applications. Early examples include AI agents built on the Microsoft platform that use the MCP Server to deliver personalized, governed recommendations in real time.
The launch continues Stibo Systems' approach of embedding AI into existing workflows while maintaining explainability and compliance across enterprise environments.
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