Professor Lahlou’s current research is focused on AI for science tools, including, but not limited to, uncertainty quantification, interactive learning, sample efficient reinforcement learning, generative models, and language model reasoning. Recently, he has been involved in developing GFlowNets, a new class of generative models of compositional objects, that find direct applications in speeding up the scientific discovery process, both from a theoretical side and through an open-source library. More generally, he is interested in understanding the mechanisms behind intelligence, be it human or artificial. Email
Interested in working with
our renowned faculty?
Fill out the below form and we will get back to you.