A Path Towards Obtaining Quantum Advantage in Training Classical Deep Generative Models with Quantum Priors

ORAL

Abstract

A class of quantum-classical hybrid machine-learning algorithms can be obtained by integrating classical deep generative models with quantum probability distributions as 'priors' over their latent variables. We introduce a hybrid implementation of variational autoencoders (QVAE) and also present a technique to hybridize flow-based invertible generative models. We demonstrate the use of D-Wave quantum annealers as pysical simulators of quantum Boltzmann machines (QBM) to perform quantum-assisted training of QVAE. Latent-space QBM develop slowly mixing modes, opening a path to obtain quantum advantage in generative modeling with available quantum devices.

Presenters

  • Walter Vinci

    NASA Ames Research Center

Authors

  • Walter Vinci

    NASA Ames Research Center

  • Lorenzo Buffoni

    University of Florence

  • Hossein Sadeghi

    D-Wave Systems Inc.

  • Daniel O'Connor

    University College London

  • Evgeny Andriyash

    D-Wave Systems Inc.

  • Mohammad Amin

    D-Wave Systems Inc.