XMPro's implementation uses a layered approach: A2A DataStream Connector: Enables no-code configuration of agent communication, maintaining XMPro's visual approach to agent designProtocol Bridge: Translates between XMPro's existing MQTT/OPC US/DDS/Kafka-based communication and A2A's JSON-RPC formatAgent Card Capabilities: Each agent exposes its capabilities through a digital identity that describes what it can do and how to authenticate with it "What distinguishes industrial AI from general business applications is the need for absolute trust in automated systems that can affect physical operations," said Pieter van Schalkwyk, CEO at XMPro."With XMPro MAGS 1.5, we've created a comprehensive trust architecture that gives industrial organizations the confidence to deploy AI at scale, while maintaining appropriate boundaries between operational and business domains".
This system combines: Collaborative Iteration: Agents work through structured rounds of proposal and conflict resolution rather than simple votingIntelligent Conflict Detection: Automatically identifies resource contentions and interdependencies between agent plansAdaptive Protocols: Dynamically selects appropriate decision methods based on situation complexityExpertise Weighting: Gives greater influence to agents with relevant domain expertiseConfidence Integration: Adjusts validation requirements based on confidence scoresSmart Escalation: Routes low-confidence decisions to humans with comprehensive contextComplete Traceability: Captures all proposals, conflicts, and justifications for audit purposes This system reduces decision bottlenecks, improves plan quality, and creates the right balance between agent autonomy and human oversight—enabling teams to tackle complex challenges with greater reliability and transparency.
Learn more at Watch Introductory Demo here → XMPro's Collaborative AI Agent Teams For Industrial Operations Watch the Deep Dive Demo here → Collaborative AI Agent Teams for Autonomous Industrial Operations Agent-to-Agent (A2A) Communication Protocol XMPro MAGS v1.5 implements Google's Agent-to-Agent (A2A) protocol as a communication framework that transforms how AI agents interact across organizational boundaries.
The story "XMPro MAGS 1.5: Agentic AI for Industry with MCP & A2A Integration" has 677 words across 25 sentences, which will take approximately 3 - 6 minutes for the average person to read.
Which news outlet covered this story?
The story "XMPro MAGS 1.5: Agentic AI for Industry with MCP & A2A Integration" was covered 16 hours ago by GlobeNewswire, a news publisher based in China.
How trustworthy is 'GlobeNewswire' news outlet?
GlobeNewswire is a fully independent (privately-owned) news outlet established in 1998 that covers mostly technology news.
The outlet is headquartered in China and publishes an average of 49 news stories per day.
It's most recent story was published 8 hours ago.
What do people currently think of this news story?
The sentiment for this story is currently Neutral, indicating that people are not responding positively or negatively to this news.
How do I report this news for inaccuracy?
You can report an inaccurate news publication to us via our contact page. Please also include the news #ID number and the URL to this story.