Professor Noam Yuchtman & Dr Maria Giamouzi

Big Data and the rise of AI technology have the potential to transform firms, markets and even entire societies. This poses significant questions: What will the managerial landscape look like as data-intensive technologies proliferate? How should managers approach data and statistical analysis in this age?

This course offers students an overview of the economic potential of Big Data and AI. It begins by describing the rise of Big Data and the burgeoning field of AI, and proceeds to consider the implications of these new technologies for managers and for society as a whole.

With this foundation, students will examine managerial decision-making using data analytics. Big Data does not solve all of managers’ problems; even with increasing amounts of data and better AI, managers still need to make decisions under incomplete information (solve statistical inference problems) and to distinguish between correlation and causation (solve causal inference problems). Finally, students will learn how to apply their new understanding of statistical and causal inference to the construction of regression models.

The course is designed to provide students with an understanding of the foundational elements of data analysis and the use of statistical thinking in the context of managerial decision-making in today’s age of big data.

It is important to note that the course is primarily conceptual and analytical, rather than technical, and does not cover programming techniques. The tools developed in the course are the interpretation and evaluation of data analytics, and managerial decision-making based on such analytics.