Querying quantum computers with neural networks: precise measurements and noise reduction
ORAL
Abstract
In this talk I will introduce neural-network estimators for quantum observables, obtained by integrating the measurement apparatus of a quantum simulator with neural networks. Unsupervised learning of single-qubit measurement data can produce estimates of complex observables free of quantum noise. Precise estimates are achieved for quantum chemistry Hamiltonians, with a reduction of several orders of magnitude in the amount of measurements needed compared to standard estimators. Finally, I will show results on molecular systems obtained using IBM superconducting quantum processors, combining precise measurements with error mitigation strategies.
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Presenters
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Antonio Mezzacapo
IBM T.J. Watson Research Center, IBM, IBM TJ Watson Research Center
Authors
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Antonio Mezzacapo
IBM T.J. Watson Research Center, IBM, IBM TJ Watson Research Center
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Abhinav Kandala
IBM TJ Watson Research Center
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Guglielmo Mazzola
IBM Zurich Research Lab
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Kenny Jing Choo
Univ of Zurich, University of Zurich
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Giacomo Torlai
Simons Foundation, Center for Computational Quantum Physics, Flatiron Institute, Flatiron Institute
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Giuseppe Carleo
Center for Computational Quantum Physics, Flatiron Institute, New York, NY, USA, Flatiron Institute