Episode 26 — Pattern Recognition and Anomaly Detection in Workload Trends

This episode examines how pattern recognition and anomaly detection can enhance capacity planning and operational stability. We explain how pattern recognition identifies recurring workload behaviors, such as traffic spikes during specific times or predictable storage growth. Anomaly detection is covered in detail, showing how it flags deviations from these patterns that may indicate security incidents, configuration issues, or system failures. The discussion also covers tools and metrics used to automate this process, ensuring quicker detection and response.
We also explore how this capability integrates with monitoring systems, allowing teams to act on issues before they cause downtime or user disruption. In both the Cloud+ exam and real-world scenarios, understanding these techniques is key to designing resilient cloud environments that can adapt dynamically to changing conditions. Produced by BareMetalCyber.com, where more prepcasts, books, and cloud monitoring resources are available.
Episode 26 — Pattern Recognition and Anomaly Detection in Workload Trends
Broadcast by