Big Data, Analytics and Data-Driven Decision Making will cover several key topics: smart data management, defining questions, use case creation, knowledge about tools, and understanding aspects of key data science.
Big data econometric models provide a vehicle for modelling and analysing complex phenomena and for incorporating rich sources of often confounding information into economic models.
Participants will benefit from an applied, hands-on introduction to these methods and will be able to read and understand theoretical papers on the subject, by the end of the course. They will also learn to implement techniques in Python programming as well as being able to apply these techniques to data used in economics and business.
Sources of data sets used in the course include World Bank Group, Kaggle, Federal Reserve Economic Data and Google Finance.
The course will also introduce participants to applications of classification and learning algorithms in artificial intelligence. Integration of these algorithms to business analytics frameworks will be demonstrated using real-world examples. Supervised and unsupervised learning, deep learning techniques, text analytics and recommender systems will be covered in the course.