
XMPro Unveils MAGS 1.5 with Enhanced AI Trust Architecture
XMPro has announced the release of its Multi-Agent Generative System (MAGS) version 1.5, introducing a new trust architecture for industrial AI applications. This update, announced in a press release, integrates Google's Agent-to-Agent (A2A) communication protocol and Anthropic's Model Context Protocol (MCP), aiming to enhance reliability, security, and cross-domain collaboration.
MAGS 1.5 features evidence-based confidence scoring and multi-method consensus decision-making, addressing the critical challenges faced by industrial organizations in deploying AI systems. The A2A protocol facilitates standardized communication between AI agents, bridging the gap between operational and information technology.
The system's confidence assessment framework evaluates agent actions using five dimensions, allowing organizations to set decision thresholds based on criticality. Additionally, the integration of MCP enables AI models to interact with external data sources effectively, enhancing their contextual understanding.
XMPro's approach ensures rigorous control over AI actions, maintaining safety boundaries through DataStream control mechanisms. This architecture allows industrial organizations to deploy AI at scale with confidence, ensuring that human oversight remains integral to critical decision-making processes.
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