Abstract
This paper examines how predictive analytics enhances risk management in financial institutions.
Advanced tools like machine learning and statistical modeling help predict risks, identify trends, and implement
strategies to prevent losses by analyzing historical and real-time data. It covers the use of predictive analytics for credit
risk, market risk, operational risk, and fraud detection, with practical case studies. Additionally, it discusses challenges,
ethical issues, and prospects in this field.