This course is uniquely tailored to the needs of investment professionals or those with investment industry knowledge who want to develop a basic, practical understanding of machine learning techniques and how they are used in the investment process. Incorporating real-life case studies, this course covers both the technical and the “soft skills” necessary for investment professionals to stay relevant.
In this course, you will learn how to:
-Distinguish between supervised and unsupervised machine learning and deep learning
-Describe how machine learning algorithm performance is evaluated
-Describe supervised and unsupervised machine learning algorithms and determine the problems they are best suited for
-Describe neural networks, deep learning nets, and reinforcement learning
-Choose an appropriate machine learning algorithm
-Describe the value of integrating machine learning and data projects in the investment process
-Work with data scientists and investment teams to harness information and insights from within large and alternative data sets
-Apply the CFA Institute Ethical Decision-Making Framework to machine learning dilemmas
This course is part of the Data Science for Investment Professionals Specialization offered by CFA Institute.