
Teradata launches MCP Server for trustworthy enterprise AI
The MCP Server has been developed on Teradata's Vantage platform and is intended to provide AI agents with the necessary context for delivering meaningful outcomes. The server includes integrated features for data quality, security, feature management, and retrieval-augmented generation (RAG), designed to help businesses develop AI agents that are context-aware and trustworthy.
In addressing the challenge of providing AI agents with adequate access to enterprise data, Teradata is targeting the difficulties organisations face as they transition from simply building advanced AI models to achieving meaningful insights from dispersed, complex data sets.
The MCP Server offers AI developer tools, security prompts, feature store management, and custom tool integration. According to Teradata, these elements are intended to establish a modular, open-source base to create AI agents capable of reasoning, memory, and precise action within enterprise environments. "With the launch of the Teradata MCP Server, we're giving our customers a powerful new way to unlock the full potential of agentic AI. Success in this new era of AI hinges not just on model sophistication, but on meaningful context. By providing AI agents with trusted, transparent access to enterprise data, we're enabling our customers to build intelligent systems that are not only more capable, but also more aligned with real-world business needs. This is a major step forward in making AI truly enterprise-ready," said Louis Landry, Chief Technology Officer at Teradata.
The company states that AI agents powered by Teradata Vantage and the MCP Server can deliver the required context, scale, and trust demanded by contemporary organisations. This approach is aimed at helping customers transition from isolated AI trials to deploying operational, context-aware agents across projects and departments more efficiently, with a focus on enhancing business outcomes.
Healthcare use case
In the healthcare sector, the MCP Server – Community Edition is being positioned as a practical solution for integrating data across fragmented sources such as electronic health records (EHRs), telehealth platforms, wearable devices, and various lifestyle data inputs. Data fragmentation has been a persistent obstacle to clinicians seeking a comprehensive patient view.
Teradata proposes that the MCP Server, operating in conjunction with Vantage, can provide full-context patient intelligence by consolidating data from EHRs, lab results, prescriptions, telehealth transcripts, and patient-generated sources into a single, unified platform. This enables AI agents to access comprehensive data in context, supporting clinicians with personalised, context-aware recommendations.
With support for predictive analytics, generative AI, and real-time operational insights provided by ClearScape Analytics, Teradata's platform is intended to enable AI agents to detect early warning signs, recommend treatment adjustments, and give evidence-based insights - all while centralising and securing patient data.
From a technical perspective, the ability to perform high-scale analytics on millions of patient records or to generate immediate alerts is a design focus, with Teradata Vantage seeking to deliver these features in a cost-effective manner. This scalability is positioned as essential for healthcare providers aiming to expand personalised care while maintaining compliance requirements and operational routines.
Technical features
The MCP Server – Community Edition includes a set of modular and extensible tools enabling AI agents to interact with enterprise data: Developer tools for streamlined administration and database management
Data quality tools to promote effective data analysis and ensure integrity
Security tools for resolving data access and permission issues
Feature store tools supporting the operationalisation of features for machine learning and AI applications
RAG tools to simplify the development and management of vector stores for retrieval-augmented generation use cases
Custom tools for deployment aligning with specific business and data contexts
These capabilities have been structured to assist organisations in constructing AI agents that are not only equipped with intelligence but are also closely integrated with a business's operational and analytical processes.
Teradata Vantage customers are able to access and implement the MCP Server for AI agent development and deployment with immediate effect.
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30-07-2025
- Techday NZ
Teradata launches MCP Server for trustworthy enterprise AI
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Techday NZ
30-07-2025
- Techday NZ
Teradata launches MCP Server to boost AI in enterprise data
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