AI predictive analytics operates as a middleware layer between your Learning Management System (LMS) and your student intervention workflows. It ingests structured data exports (e.g., Canvas Data, Moodle Logs, Brightspace Data Sets) and real-time API streams (gradebook, activity, submission endpoints) to identify patterns indicative of academic risk. The integration surfaces are specific: the Gradebook API for assignment submission lateness and scores, the Analytics API for page views and participation, and the Users API to tie activity to student demographics and enrollment status. This data fuels models that calculate risk scores, not for replacement of advisors, but to trigger targeted workflows in systems like Starfish, EAB Navigate, or custom CRM modules.




