What Can Reinforcement Learning Teach Us About Non-Equilibrium Quantum Dynamics

ORAL

Abstract

Equilibrium thermodynamics and statistical physics are the building blocks of modern science and technology. Yet, our understanding of thermodynamic processes away from equilibrium is largely missing. In this talk, I will reveal the potential of what artificial intelligence can teach us about the complex behaviour of non-equilibrium systems. Specifically, I will discuss the problem of finding optimal drive protocols to prepare a desired target state in quantum mechanical systems by applying ideas from Reinforcement Learning [one can think of Reinforcement Learning as the study of how an agent (e.g. a robot) can learn and perfect a given policy through interactions with an environment.]. The driving protocols learnt by our agent suggest that the non-equilibrium world features possibilities easily defying intuition based on equilibrium physics.

Authors

  • Marin Bukov

    • Boston University
  • Alexandre Day

    • Boston University
  • Dries Sels

    • Boston University
  • Phillip Weinberg

    • Boston University
  • Anatoli Polkovnikov

    • Boston University
  • Pankaj Mehta

    • Boston University