EasyVista announced the launch of the EasyVista Platform 2025.1, the latest evolution of its unified IT operations platform.
Designed to enhance efficiency and security, the new release features AI-powered automation, advanced reporting, and infrastructure upgrades that help IT teams work smarter with less manual effort.
The EasyVista Platform brings ITSM, remote support, device management, and infrastructure monitoring together in a single platform, enabling agents, engineers, and analysts access to the same information to collaborate seamlessly, reduce silos, and resolve issues faster. The 2025.1 release further strengthens these capabilities with:
- Smart, AI-Powered Automation: EV Pulse AI Automations streamline workflows, including real-time multilingual translations, reducing manual effort for global IT teams.
- Enhanced Reporting & Insights: EV Insights delivers custom dashboards and data modeling, providing clear, actionable intelligence for IT decision makers.
- Stronger Security & Infrastructure: Enhanced encryption protects sensitive data against cyber threats, reinforcing enterprise security.
“As IT environments grow increasingly complex, organizations need solutions that simplify operations while maximizing impact,” said Loïc Besnard, Chief Product Officer, EasyVista. “EasyVista Platform 2025.1 delivers powerful AI automation, deeper insights, and enhanced security—helping IT teams drive efficiency from day one.”
This release reinforces EasyVista's mission to unify ITSM, monitoring, automation, and remote support into a single, intelligent platform. By eliminating silos and streamlining access to critical information, IT teams—across both support and operations—can work more efficiently and proactively manage their IT environments.
EasyVista Platform 2025.1 is now available for all customers.
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