Guglielmo Mazzola, Simon Mathis, et al.
APS March Meeting 2021
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.
Guglielmo Mazzola, Simon Mathis, et al.
APS March Meeting 2021
David Frank
ISSCC 2023
Jaseung Ku, Britton L Plourde, et al.
APS March Meeting 2020
Waheeda Banu Saib, Kenny Choo, et al.
QIP 2022