This course is for anyone who wants to understand machine learning at a conceptual level, without writing code and without working through the mathematics.
Starting from first principles, the course builds a complete picture of how machine learning works: what it is, how models learn from data, and where the approach succeeds and where it fails. You will develop the mental models needed to evaluate ML systems, ask better questions, and make more informed decisions when machine learning is involved in your work.
By the end of this course, you will be able to:
Every concept is grounded in finance, with examples drawn from credit risk, fraud detection, and the kinds of problems that arise in banks, asset managers, and fintech companies.
Cheat Sheets