Quantum computation of molecular structure using data from challenging-to-classically-simulate nuclear magnetic resonance experiments

ORAL

Abstract

We propose a quantum algorithm for inferring the molecular nuclear spin Hamiltonian from time-resolved measurements of spin-spin correlators, which can be obtained via nuclear magnetic resonance (NMR). We focus on learning the anisotropic dipolar term of the Hamiltonian, which generates dynamics that are challenging-to-classically-simulate in some contexts. We demonstrate the ability to directly estimate the Jacobian and Hessian of the corresponding learning problem on a quantum computer. We develop algorithms for performing this computation on both noisy near-term and future fault-tolerant quantum computers. We argue that the former is promising as an early beyond-classical quantum application since it only requires evolution of a local spin Hamiltonian. We isolate small spin clusters in a protein example (ubiquitin), demonstrate the convergence of our learning algorithm on one such example, and then investigate the learnability of these clusters as we cross the ergodic to non-ergodic phase transition by suppressing the dipolar interaction. We see a clear correspondence between a drop in the multifractal dimension measured across many-body eigenstates of these clusters, and a transition in the structure of the Hessian of the learning cost-function (from degenerate to learnable).

Publication: arXiv:2109.02163

Presenters

  • Thomas E O'Brien

    • Google Quantum AI
    • Google LLC

Authors

  • Thomas E O'Brien

    • Google Quantum AI
    • Google LLC
  • Lev B Ioffe

    • Google LLC
  • Yuan Su

    • Google LLC
  • David Fushman

    • University of Maryland, College Park
  • Hartmut Neven

    • Google LLC
  • Ryan Babbush

    • Google Quantum AI
    • Google LLC
  • Vadim Smelyanskiy

    • Google LLC