
Ivanti announced new solution capabilities, focusing on enabling autonomous IT operations and organizations to secure their environments more efficiently at scale.
With these advancements, Ivanti is positioned to enable IT and security operations to detect, decide and act autonomously—without sacrificing trust, governance or control––something that is necessary in a post Mythos and GPT-5.4-Cyber world.
“Ivanti’s Neurons platform enables autonomous management with prevention, resolution and compliance, allowing IT and security teams to scale efficiently,” said Dennis Kozak, CEO at Ivanti. “Organizations need systems that can not only detect issues, but also have the capability to decide and act securely and at scale. These new capabilities reinforce our commitment to being the system of record for IT and security teams, where the Ivanti Neurons platform brings together trusted data, intelligent automation and governed remediation to deliver real outcomes for IT and security teams. While many other solutions offer visibility, they still require constant human intervention which is unsustainable with the pace in which LLMs’ advanced capabilities find exploitable vulnerabilities.”
The intelligence layer throughout these updates is the Ivanti Neurons platform, which combines a unified agentic AI framework with comprehensive platform data—providing data authority across devices, lifecycle status, entitlement, support context, and relationships. These benefits are possible through AI-driven workflows with accurate, trusted context which is required to operate reliably across complex environments.
This launch marks a pivotal step in transforming intelligence into impact, with highlights including:
- Autonomous Patch Compliance: Ivanti Neurons for Patch Management has introduced Continuous Compliance, an automated enforcement framework that eliminates the gap between scheduled patch deployments and regulatory requirements. Customers can automatically identify out-of-compliance endpoints and deploy patches out-of-band to update devices that missed scheduled maintenance windows, eliminating manual intervention and ensuring your organization consistently meets compliance objectives. An important advancement with many in the industry warning of a ‘patch apocalypse,’ Ivanti’s automated framework provides a solution for teams to effectively respond to any increase in patching that may come.
- Ivanti's Agentic AI solution for ITSM: With the controlled release of Ivanti Neurons AI self-service agent, teams move beyond conversational intake to autonomous resolution, with built-in guardrails for policy, approvals and data context. Designed to transform traditional IT service workflows, the Agentic AI solution delivers real-time insights and remediation, by enabling faster resolution, deflecting tickets and measurable improvements in efficiency, speed and user satisfaction. This feature will not be enabled automatically. Customers can request the addition of this exciting capability to their existing environment.
These updates establish the Ivanti Neurons platform as the foundation for autonomous operations—where trusted data, AI-driven insights and automated remediation work together to reduce risk and improve outcomes.
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