Learning quantum dynamics with latent neural ordinary differential equations 

Matthew Choi, Daniel Flam-Shepherd, Thi Ha Kyaw, and Alán Aspuru-Guzik
Phys. Rev. A 105, 042403 – Published 4 April 2022

Abstract

The core objective of machine-assisted scientific discovery is to learn physical laws from experimental data without prior knowledge of the systems in question. In the area of quantum physics, making progress towards these goals is significantly more challenging due to the curse of dimensionality as well as the counterintuitive nature of quantum mechanics. Here we present the QNODE, a latent neural ordinary differential equation (ODE) trained on expectation values of closed and open-quantum-systems dynamics. It can learn to generate such measurement data and extrapolate outside of its training region that satisfies the von Neumann and time-local Lindblad master equations for closed and open quantum systems, respectively, in an unsupervised means. Furthermore, the QNODE rediscovers quantum-mechanical laws such as the Heisenberg's uncertainty principle in a data-driven way, without any constraint or guidance. Additionally, we show that trajectories that are generated from the QNODE that are close in its latent space have similar quantum dynamics while preserving the physics of the training system.

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  • Received 22 October 2021
  • Accepted 15 March 2022

DOI:https://doi.org/10.1103/PhysRevA.105.042403

©2022 American Physical Society

Physics Subject Headings (PhySH)

Quantum Information, Science & TechnologyInterdisciplinary PhysicsAtomic, Molecular & OpticalGeneral Physics

Authors & Affiliations

Matthew Choi1,*, Daniel Flam-Shepherd1,2,*, Thi Ha Kyaw1,3,†, and Alán Aspuru-Guzik1,2,3,4,‡

  • 1Department of Computer Science, University of Toronto, Toronto, Ontario M5S 2E4, Canada
  • 2Vector Institute for Artificial Intelligence, Toronto, Ontario M5S 1M1, Canada
  • 3Department of Chemistry, University of Toronto, Toronto, Ontario M5G 1Z8, Canada
  • 4Canadian Institute for Advanced Research, Toronto, Ontario M5G 1Z8, Canada

  • *These authors contributed equally to this work.
  • thihakyaw@cs.toronto.edu
  • alan@aspuru.com

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Vol. 105, Iss. 4 — April 2022

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