Student Analytics
Machine learning models that predict student retention risk and identify the highest-impact intervention opportunities.

Natalia Benson
Accounting

Umi Adesokan
Actuarial Science

Analytics Outcomes
Don't let students slip through the cracks. Intervene at the precise moment support is needed with data-driven precision.
Identify at-risk students 4-6 weeks earlier via engagement signals.
Predict persistence risk with >85% accuracy using historical data.
Reduce dropouts by surfacing specific drivers for every flagged student.
Optimize outreach by prioritizing the 10-15% most likely to benefit.
Measure program efficacy by tracking post-intervention retention.
Eliminate bias by focusing on behavioral patterns, not demographics.


