Current Courses

EE-556 Mathematics of Data: From Theory to Computation

Throughout the course, we put the mathematical concepts into action with large-scale applications from machine learning, signal processing, and statistics.

EE-568 Reinforcement Learning

This course describes theory and methods for Reinforcement Learning (RL), which revolves around decision making under uncertainty. The course covers classic algorithms in RL as well as recent algorithms under the lens of contemporary optimization.

EE-618 Theory and Methods for Reinforcement Learning

This course describes theory and methods for decision making under uncertainty under partial feedback.

EE-735 Online learning in games

This course provides an overview of recent developments in online learning, game theory, and variational inequalities and their point of intersection with a focus on algorithmic development. The primary approach is to lay out the different problem classes and their associated optimal rates.