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Tomorrow’s financiers are learning to think like machines

Business schools are redesigning their curricula to produce graduates who interpret machine learning models, and make critical decisions in data-rich environments
At HEC Paris, future financial leaders learn to decode machine learning models and navigate complex, data-rich decisions

The world of finance has evolved beyond spreadsheets and human judgment. In today’s markets, many finance roles now involve navigating vast data sets, interpreting machine learning outputs, and making sense of AI-generated forecasts. Business schools are responding with programmes and modules designed to produce not only technically skilled analysts, but professionals who can critically understand and assess data-driven insights with greater confidence and accuracy.

At Imperial College Business School in London, this balance of interpretation and computation shapes the approach taken in modules such as Systematic Trading Strategies with Machine Learning Algorithms, led by visiting lecturer Hachem Madmoun. “The financial sector has entered an era where traditional analytical methods increasingly show their limitations,” Madmoun says. “Advanced computational tools enable the development of more rigorous financial theories.”

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