Scroll behavior analysis transforms raw interaction data into a predictive signal for user intent and content performance. The framework's core is a data pipeline that captures granular scroll events—position, velocity, and dwell time—from the browser. This raw telemetry is processed into structured features, such as scroll depth segments and pattern signatures, which serve as the input for machine learning models. The goal is to move beyond simple aggregate metrics to a real-time, individual-level understanding of engagement. For foundational concepts, see our guide on Setting Up an AI-Powered Engagement Depth Analytics Platform.




