Transform your maintenance strategy with a cognitive plant model that understands equipment behavior, predicts failures, and prescribes action, just like your best reliability engineer.
In complex industrial plants, fragmented data and disconnected workflows often lead to delayed root cause analysis (RCA), reactive maintenance, and suboptimal reliability.
This webinar explores how process traceability, powered by Agentic AI, can revolutionize maintenance, enabling:
By building a Process Traceability Graph, organizations can connect maintenance records, sensor events, SAP orders, and engineering documents to create a living digital thread of the plant.
Agentic AI agents can then traverse this graph to deliver explainable, self-learning, and prescriptive maintenance workflows.
Key Takeaways:
✔️ How process traceability accelerates fault-to-fix cycles and RCA
✔️ Building a maintenance knowledge graph from sensors, SAP, SOPs, and work orders
✔️ Automating maintenance planning, fault tracing, and risk-based decision-making with Agentic AI
✔️ Real-world use cases: recurring equipment failures, risk prioritization, prescriptive maintenance suggestions
✔️ The future of reliability: self-healing plants and continuous process-aware AI