Data from quantum devices and generative quantum advantage

ORAL  · Invited

Abstract

Recent breakthroughs in generative machine learning, powered by massive computational resources, have demonstrated unprecedented human-like capabilities. While beyond-classical quantum experiments can generate samples from classically intractable distributions, their complexity has thwarted all efforts toward efficient learning. This challenge has hindered demonstrations of generative quantum advantage: the ability of quantum computers to learn and generate desired outputs substantially better than classical computers. We resolve this challenge by introducing families of generative quantum models that are hard to simulate classically, are efficiently trainable, exhibit no barren plateaus or proliferating local minima, and can learn to generate distributions beyond the reach of classical computers. These models and their training come with provable efficiency and performance guarantees. Using a 68-qubit superconducting quantum processor, we demonstrate these capabilities in two scenarios: learning classically intractable probability distributions and learning quantum circuits for accelerated physical simulation. Our results establish that both learning and sampling can be performed efficiently in the beyond-classical regime, opening new possibilities for quantum-enhanced generative models with provable advantage. Beyond this, we give a general perspective on the interplay between data and models on quantum and classical computers.

Presenters

  • Jarrod McClean

    • Google LLC

Authors

  • Hsin-Yuan Huang

    • Caltech
  • Michael Broughton

    • Google LLC
  • Norhan Mahmoud Eassa

    • Purdue University
  • Hartmut Neven

    • Google LLC
  • Ryan Babbush

    • Google LLC
  • Jarrod McClean

    • Google LLC