Experimental quantum Hamiltonian learning

ORAL

Abstract

The efficient characterization and validation of the underlying model of a quantum physical system is a central challenge in the development of quantum techonologies. Quantum Hamiltonian Learning (QHL) combines the capabilities of quantum information processing and classical machine learning to allow the efficient characterization of the model of quantum systems. The behavior of a quantum Hamiltonian model can be efficiently predicted by a quantum simulator, and the predictions are contrasted with the data obtained from the system to infer its Hamiltonian via Bayesian methods.

Our experimental demonstration of QHL uses a programmable silicon-photonics quantum simulator to learn the electron spin dynamics of a nitrogen-vacancy centre in diamond. The spin is optically addressed and read-out and manipluated by microwave signals. The dynamics can be described using a Hamiltonian model fσx/2. The photonic chip allows to simulate the dynamics of the spin and to calculate the QHL likelihoods. The two quantum systems are interfaced through a classical processor drives the QHL protocol. The goal is to learn the Rabi frequency f of the spin system. We show the successful convergence of the QHL, with a learned f=6.93±0.09 MHz consistent with that obtained from the standard methods.

Presenters

  • Jianwei Wang

    Quantum Engineering Technology Labs, Univerisity of Bristol

Authors

  • Jianwei Wang

    Quantum Engineering Technology Labs, Univerisity of Bristol

  • Stefano Paesani

    Quantum Engineering Technology Labs, Univerisity of Bristol

  • Raffaele Santagati

    Quantum Engineering Technology Labs, Univerisity of Bristol

  • Sebastian Knauer

    Quantum Engineering Technology Labs, Univerisity of Bristol

  • Antonio Gentile

    Quantum Engineering Technology Labs, Univerisity of Bristol

  • Nathan Wiebe

    Quantum Architectures and Computation Group, Microsoft Research

  • Maurangelo Petruzzella

    Eindhoven University of Technology

  • Jeremy O’Brien

    Quantum Engineering Technology Labs, Univerisity of Bristol

  • John Rarity

    Quantum Engineering Technology Labs, Univerisity of Bristol

  • Anthony Laing

    Quantum Engineering Technology Labs, Univerisity of Bristol

  • Mark Thompson

    Quantum Engineering Technology Labs, Univerisity of Bristol