Dr. Pawel Polak
Pawel Polak is an Assistant Professor in the Department of Applied Mathematics and
Statistics (AMS) at Stony Brook University. He also holds positions as an Affiliated
Researcher at the Center of Excellence Wireless and Information Technology (CEWIT)
and as an Affiliated Faculty at the Institute for Advanced Computational Science (IACS).
His research specializes in statistical learning and machine learning methods with
applications across engineering, medicine, and quantitative finance. His recent initiatives
include developing multimodal Large Language Models for conversational AI, analyzing
facial muscle dynamics for medical applications, designing Physics Informed Neural
Networks for automated threat detection, creating advanced portfolio optimization
methods in asset management, and developing signal processing techniques for high-frequency
trading systems. His contributions have been highlighted at major machine learning
and computer science conferences, including CVPR'24 and NeurIPS'23 workshops, and
published in leading journals such as Quantitative Finance, the Journal of Econometrics,
and the Journal of Banking and Finance. Rebellion Research, a global machine learning
think tank, artificial intelligence financial advisor, and hedge fund, recognized
him as one of the Top 10 Professors in Quantitative Finance in the US in 2023.
Website: https://sites.google.com/view/pawelpolak
LinkedIn: https://www.linkedin.com/in/pawelpolaknyc/