AI
Empowering Field Operations with Agentic AI

Key Points
- Agentic AI is structured around groups of specialized agents that serve as subject matter experts in their own areas of expertise, capable of addressing field operations tasks using structured decision-making.
- The intelligent, autonomous multi-agent system allows operators to integrate predictive analytics into field operations, lowering their costs, minimizing service disruptions and enhancing the customer experience.
Field operations teams are essential for ensuring the seamless performance of modern networks, including hybrid fiber coax (HFC), fiber and mobile infrastructures. However, as networks grow in complexity, traditional troubleshooting methods — manual workflows, static documentation and reliance on expert technicians — struggle to keep pace.
Enter Agentic AI, a transformative approach that embeds intelligent, autonomous AI-driven agents into field operations. These agents act as subject matter experts (SMEs), each specializing in a specific aspect of network troubleshooting, decision support and workflow optimization. By leveraging this structured, multi-agent AI system, organizations can scale expertise, reduce resolution time and enhance operational efficiency.
The Evolution of AI in Field Operations
From AI Assistants to Structured Agentic AI
While AI-powered virtual assistants have been used to support technicians with knowledge retrieval, they lack structured decision-making capabilities. Agentic AI introduces a multi-agent system where each AI agent specializes in a distinct area of expertise, much like human SMEs within an organization.
These specialist AI agents are grouped together into teams based on their expertise, allowing groups of specialist AI agents to collaboratively solve problems in a shared area of expertise, like human teams within an organization. This multi-agent team approach allows for efficient and accurate decision-making to address field operations tasks.
How Agentic AI Operates as a Team of SMEs
Agentic AI is structured around multiple specialized agents, each performing specific roles within the troubleshooting and network maintenance process. These agents collaborate dynamically, ensuring that every decision is informed by real-time data and domain knowledge.
Key AI agents include:
- Knowledge Retrieval Agent (SME in Network Standards & Best Practices)
- Retrieves industry standards, vendor documentation and best practice guides.
- Cross-references sources such as CableLabs specifications and SCTE standards.
- Telemetry Analysis Agent (SME in Real-Time Network Monitoring)
- Continuously monitors network logs, telemetry data, meter measurements and service degradation patterns.
- Detects anomalies like signal degradation, upstream noise or fiber attenuation.
- Troubleshooting Workflow Agent (SME in Guided Resolutions)
- Generates step-by-step troubleshooting workflows based on real-time conditions.
- Adapts workflows dynamically based on technician feedback and sensor inputs.
- Decision Support Agent (SME in Root Cause Analysis & AI-Driven Recommendations)
- Synthesizes insights from multiple agents to determine the most effective resolution.
- Suggests alternative troubleshooting paths if the initial fix does not resolve the issue.
- Proactive Network Maintenance Agent (SME in Proactive Network Health & Failure Prevention)
- Uses historical patterns and AI-driven models to detect potential failures before they occur.
- Recommends preemptive maintenance to avoid service disruptions.
These agents are combined into agentic teams that are tailored to different areas of expertise, such as impairment types, enabling targeted collaboration and troubleshooting. By structuring AI in this multi-agent, SME-like framework, Agentic AI mirrors the way expert teams collaborate in real-world field operations, ensuring that each aspect of troubleshooting and maintenance is handled with precision.
Agentic AI in Action: Enhancing Field Operations
AI-Driven Troubleshooting for Faster Resolution
With Agentic AI, network troubleshooting shifts from manual trial-and-error approaches to data-driven, AI-guided processes. When a technician encounters an issue, the AI agents work together to provide precise, real-time recommendations.
Example: Resolving Signal Impairments in HFC Networks
- The Telemetry Analysis Agent detects signal impairments from network telemetry.
- The Knowledge Retrieval Agent pulls relevant troubleshooting workflows from specs, standards and vendor manuals.
- The Troubleshooting Workflow Agent generates a guided resolution process, suggesting tests with field meters.
- The Decision Support Agent analyzes technician input and network readings, refining recommendations dynamically.
- If the issue is a recurring fault, the Proactive Maintenance Agent flags it for proactive intervention.
This real-time, multi-agent collaboration ensures that field technicians receive expert-level guidance instantly, reducing mean time to resolution (MTTR) and improving service quality.
Scaling Expertise with AI-Driven SMEs
Transforming Field Training & Knowledge Retention
A major challenge in field operations is scaling knowledge across teams. Traditionally, new technicians rely on classroom training and shadowing experienced engineers. With Agentic AI, expertise is available on demand — every technician, regardless of experience level, can access AI-powered SMEs for troubleshooting guidance.
Key Benefits:
- Faster onboarding: New hires gain instant access to SME-level knowledge, reducing training time.
- Standardized troubleshooting: AI ensures consistent best practices across teams based on SCTE Learning and Development guidelines.
- Knowledge retention: AI continuously learns from past cases, preserving institutional expertise.
By deploying Agentic AI as a structured knowledge system, organizations can scale expertise at unprecedented levels.
Beyond Troubleshooting: AI-Powered Proactive Maintenance
Future Work: Predicting & Preventing Failures Before They Occur
Instead of reacting to service disruptions, Agentic AI enables a shift toward proactive and predictive network maintenance.
- The Predictive Maintenance Agent continuously analyzes historical network performance trends.
- AI identifies early warning signs of network failures, such as cable degradation, fiber attenuation, or RF noise issues.
- The system recommends preemptive maintenance actions, reducing truck rolls and service downtime.
By integrating predictive analytics into field operations, network operators can lower costs, minimize disruptions and improve customer experience.