The current state of AIOps
Despite the media frenzy surrounding Large Language Models (LLMs), actual adoption of AIOps in network management remains nascent. Recent surveys suggest that only about 15% of organizations have deployed AIOps tools.
Jason points out that the hesitation stems largely from trust issues. Engineers are wary of “hallucinations,” where an AI might confidently provide false information, leading troubleshooters down the wrong path. Furthermore, data quality remains a significant hurdle. Many organizations possess years of unformatted legacy data that must be “massaged” before it can be effectively utilized by AI models.
How to implement AIOps
For network managers looking to dip their toes into AIOps, the advice is straightforward: start with the tools you already have. Many vendors, such as Juniper (Mist) and HPE (Aruba Central), have been integrating AI capabilities into their platforms for years.
For those looking to integrate their own internal data with LLMs, Jason recommends exploring the Model Context Protocol (MCP). MCP acts as a translator, allowing LLMs to securely query databases via API calls or SQL without needing to ingest the data permanently.
However, security is paramount. When connecting AI to network data, engineers should adopt a “Zero Trust” mindset. This includes giving AI agents read-only access to prevent accidental data deletion or unauthorized configuration changes.
The human element: context and intent
The most compelling use cases for AIOps currently involve root cause analysis and routine troubleshooting. Instead of combing through logs for hours, an engineer might ask, “Why can’t Sally connect to the Wi-Fi?” and receive an immediate diagnosis regarding password failures or signal strength. AI agents can also generate morning summaries, alerting engineers to overnight circuit flaps or anomalies.
However, AI currently lacks the ability to understand “intent” and organizational context. An AI might flag a maxed-out circuit as a critical failure, unaware that the office is closed or undergoing scheduled maintenance. Because AI cannot make judgment calls based on nuance, a “human in the loop” remains essential to authorize changes and interpret data.
A new way of working
By automating Tier 1 support tasks and rote data analysis, AI allows network engineers to escape the mundane and focus on complex, high-level problem solving. As the industry evolves, the most successful engineers will be those who learn to wield these new tools effectively.

