Michael Gimelfarb
Michael Gimelfarb
I am a researcher in reinforcement learning, a branch of artificial intelligence that studies how an algorithm (agent) should interact with a dynamic environment (task) to achieve a specific goal. My current research tackles the following questions:
Transfer Learning: How (and what) information learned by one agent on one task could help other agents trying to solve other related tasks? (i.e.)
Automated Planning: How can the optimal actions be found efficiently when the observations and interactions are high-dimensional and complex? (i.e., i.e.)
Offline RL: How can agents be evaluated/optimized better without costly interactions, by using data of prior interactions from another source? (i.e.)