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Making Predictions in a Quantum World

ORAL · Invited

Abstract

I will review an experimentally feasible procedure for converting a quantum state into a succinct classical description of the state, its classical shadow. Classical shadows can be applied to predict efficiently many properties of interest, including expectation values of local observables and few-body correlation functions. Efficient classical machine learning algorithms using classical shadows can address quantum many-body problems such as classifying quantum phases of matter. I will also explain how experiments that exploit quantum memory can learn properties of a quantum system far more efficiently than conventional experiments.

Publication: Hsin-Yuan Huang, Richard Kueng, Giacomo Torlai, Victor V. Albert, John Preskill, Provably efficient machine learning for quantum many-body problems, Science 377, 1397 (2022).<br><br>Hsin-Yuan Huang, Michael Broughton, Jordan Cotler, Sitan Chen, Jerry Li, Masoud Mohseni, Hartmut Neven, Ryan Babbush, Richard Kueng, John Preskill, Jarrod R. McClean, Quantum advantage in learning from experiments, Science 376, 1182-1186 (2022).

Presenters

  • John P Preskill

    Caltech, California Institute of Technology

Authors

  • John P Preskill

    Caltech, California Institute of Technology