IT teams managing multi-vendor networks face a growing volume of alerts and a shrinking pool of engineers with the expertise to act on them. Agentic AI is increasingly seen as the solution, and the latest vendor to embrace this approach is Auvik.
Auvik has spent 15 years building a cloud-based IT and network management platform. This week, the company launched Aurora, an agentic AI platform designed to push beyond alerting and into automated remediation. The direction was shaped by customers who had grown impatient with AI that doesn’t translate into action.
“Our customers have been very clear, and our customer advisory boards, when you come out with something, it has to be something that solves real world problems, and not just AI or agentic, for the sake of AI,” said Doug Murray, CEO of Auvik. “We expect you to provide us with an experience that is going to help me automate and simplify things. That’s what we care about. We don’t care about some fancy AI nomenclature.”
What Aurora does differently to simplify network operations
Before Aurora, the platform told IT teams there was a problem. Aurora is designed to tell them exactly what to do about it and, over time, do it for them.
- Alert prioritization. Rather than a flat alert feed, the platform ranks incoming alerts by impact in a red/yellow/green view. An MSP technician arriving to 20 alerts sees the three that matter first.
- Device lifecycle management. Aurora surfaces end-of-life and end-of-support status for managed devices in a ranked dashboard. A customer managing 100 devices gets a notification identifying exactly which SonicWall Gen 7 firewalls need to be rolled back and the scope of the exposure.
- CVE monitoring (beta). Agents scan managed devices against known vulnerabilities proactively, surfacing exposure before reactive ticketing forces the issue.
- Scripting assistance. A technician unfamiliar with a device’s CLI can ask Aurora how to remediate an issue in natural language and receive a generated script to execute directly.
The longer-term direction is fully automated remediation. Aurora represents what Auvik calls the “Do” phase of a framework the company’s founders put on a whiteboard in its earliest days: See, Tell, Do. See is about visibility — knowing what’s in your infrastructure. Tell is alerting and prescriptive notification. Do is where Aurora comes in, moving the platform from surfacing problems to acting on them.
“People will call it self driving, if you will,” Murray said. “But it’s really taking all of that and driving more into automation.”
How it works
What separates Aurora from a generic AI layer bolted onto a network management platform is what’s underneath it. Aurora’s recommendations are grounded in live network context pulled from Auvik’s own infrastructure, not general training data, built up through years of on-network data collection across thousands of customer environments.
- The collector. Auvik’s on-network collector agent continuously pulls device state, topology, configuration and performance data from every managed device and sends it to a central cloud repository.
- The data foundation. Over 15 years of SaaS-based network management, Auvik has accumulated more than 300 million device configuration backups and 2.2 billion CLI command executions across hundreds of supported vendors. The platform currently manages more than 10 million devices daily.
- The agentic layer. Murray described the architecture as primarily contextual. Agents operate against the live context of a specific customer’s network, drawing on both real-time collector data and patterns from the broader dataset to surface recommendations specific to that environment. Getting there required significant data preparation work. “When we actually started taking all of that data about four years ago and worked through it, it wasn’t very clean,” Murray said. “It was basically, literally, just reams of data that we were trying to figure out architecturally, how to turn it into action.”
- The AI stack. The platform is built on proprietary infrastructure but uses Claude as its predominant LLM, with OpenAI models applied to specific functions. Murray said the shift to agentic AI tooling over the past two years made it substantially easier to mine Auvik’s historical dataset than the proprietary ML approach the company had been pursuing earlier.
The talent gap
Fundamentally, there is a structural problem that underpins the whole Aurora thesis: why more automation is needed. “There aren’t a lot of kids that are coming out of university today that are studying Cisco CLI or deep networking oriented expertise,” Murray said. “And so because of that, you have a lot of people that know infrastructure in the IT segment that will be retiring in the next five to 10 years.”
Aurora’s scripting assistance and push toward auto-remediation are both direct responses to that gap. “Being able to create this in a way where we try to make it such that you don’t need to be a networking person to run the networking infrastructure is really the vision of where we’re trying to take this,” Murray said. “So the more we can automate and simplify and help people with auto remediation, the more powerful the platform becomes.”
Source: Network World News