Samuel Koovely
Samuel has been a member of the Quantitative Network Science group since August 2022. Before joining the Department of Mathematical Modeling and machine learning (DM3L) as a PhD student, he received a BSc and MSc in mathematics from ETH Zurich. During his Master’s thesis, he worked on a graphical model for predicting protein-protein interactions as an intern at the IBM Research Lab in Zurich. His main research interest is the study of stochastic processes and statistical properties of temporal networks, particularly the use of diffusion processes over graphs and tools from information theory to investigate the structural properties of these systems. More broadly, he is interested in topics at the intersection of probability theory and statistics, such as Markov processes, graphical models, machine learning, and causal inference.