Scalable Hamiltonian learning for large-scale out-of-equilibrium quantum dynamics
ORAL · Invited
Abstract
Large-scale quantum devices provide insights beyond the reach of classical simulations. However, for a reliable and verifiable quantum simulation, the building blocks of the quantum device require exquisite benchmarking. This benchmarking of large-scale dynamical quantum systems represents a major challenge due to lack of efficient tools for their simulation. We present a scalable algorithm based on neural networks for Hamiltonian tomography in out-of-equilibrium quantum systems. We illustrate our approach using a model for a forefront quantum simulation platform: ultracold atoms in optical lattices. Specifically, we show that our algorithm is able to reconstruct the Hamiltonian of an arbitrary sized bosonic ladder system using an accessible amount of experimental measurements. We are able to significantly increase the known parameter precision and benchmark our results using Bayesian inference.
–
Publication: A. Valenti, G. Jin, J. Léonard, S. D. Huber and E. Greplova, Scalable Hamiltonian learning<br>for large-scale out-of-equilibrium quantum dynamics, (2021), Phys. Rev. A 105, 023302 (2022)
Presenters
-
Agnes Valenti
ETH Zurich
Authors
-
Agnes Valenti
ETH Zurich
-
Guliuxin Jin
Delft University of Technology
-
Julian Leonard
Harvard University
-
Sebastian Huber
ETH Zurcih
-
Eliska Greplova
Delft University of Technology