From raw data to actionable intelligence
Multiple data sources aggregated in real-time
Cleaning, normalization, and feature extraction
Ensemble models for risk prediction
Classification into risk categories
Personalized interventions for each student
Real-time visualization and alerts
Real-time data collection from academic databases, IoT devices, and manual entries.
Handling missing values, outlier detection, and feature scaling.
Creating derived features like trend indicators, engagement scores, and risk indicators.
Ensemble model prediction with confidence scores and explainability metrics.
Rule-based + ML recommendations tailored to risk factors.
Push notifications to faculty and updated dashboard views.