Masterclass
AI-Powered Observability: Predicting and Preventing Failures
The CTO & Architect’s Guide to Modern Observability
Ever struggled with incidents that take hours to diagnose or worse, failures you only learn about from customers?
In this masterclass, we’ll cover:
1. Why traditional monitoring breaks down in modern distributed, cloud, and AI-driven systems
2. The foundations of modern observability—metrics, logs, traces, profiling, and how they connect
3. How AI transforms operations, from anomaly detection to predictive incident prevention
4. How to design a scalable observability architecture, including multi-cloud, Kubernetes, and enterprise integrations
5. A look into AI observability—data drift, model degradation, and monitoring ML pipelines
Key takeaway: You’ll learn how to evolve from reactive monitoring to proactive and predictive reliability engineering—while improving performance, reducing costs, and strengthening engineering velocity.
