Itential Launches MCP Server for AI-Driven Infrastructure Automation

Itential has launched the MCP Server, a new orchestration and governance layer designed to enable AI agents and large language models (LLMs) to safely execute infrastructure changes. Announced in a press release, the MCP Server was unveiled at the Network Automation Forum's AutoCon 3 event.
The MCP Server introduces a control layer that connects AI systems to Itential's platform, ensuring that AI-generated actions are routed through policy-enforced workflows, validations, and approvals. This provides enterprises with the trust, compliance, and visibility needed to adopt AI at scale.
Key features of the MCP Server include AIOps-triggered automation, multi-agent collaboration, and configuration drift prevention. It allows enterprises to plug in their own AI agents while enforcing execution guardrails, ensuring secure and compliant infrastructure changes.
Itential is currently demonstrating the MCP Server and its integration with AIOps provider Selector at AutoCon 3, with plans to showcase it further at Cisco Live.
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