HPE ups ante in self-driving net ops with enhanced Mist agentic AI | Computer Weekly
Briefly

HPE ups ante in self-driving net ops with enhanced Mist agentic AI | Computer Weekly
"Virtually all companies regard networks as critical to business success, but as they become more distributed and complex than ever, operations teams are needing tools that speed resolution, boost efficiency and ensure user experience at scale. Looking to address these needs, HPE has made what it says are major innovations to its HPE Juniper Networking portfolio to deliver agentic AIOps through more autonomous, intelligent and proactive network operations. The advances will be made through enhancements in the artificial intelligence (AI)-native Juniper Mist platform."
""Today's networks must do more than connect - they must understand, adapt and act," said HPE Networking executive vice-president, president and general manager Rami Rahim. "With these new digital experience twin and agentic AI capabilities in Juniper Mist, we continue to turn the network into a proactive partner for IT, capable of solving problems before they impact users. This is a major leap toward truly self-driving operations, helping our customers simplify complexity, reduce costs and deliver exceptional digital experiences at scale.""
HPE is enhancing the Juniper Mist AI-native platform to deliver agentic AIOps that enable more autonomous, intelligent and proactive network operations. Enhancements include agentic AI-powered troubleshooting, expanded visibility and control of self-driving actions, a generalised large experience model (LEM) and AIOps features tailored for datacentres. Marvis AI analyzes telemetry across wired, wireless, WAN and datacentre domains and creates automated workflows to simplify operations and lower costs. AI-driven support uses trouble ticket data to continuously train and improve the Marvis engine. The goal is to reduce IT complexity and assure exceptional digital experiences from client to cloud.
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