Error Mitigation in Data Driven Circuit Learning
ORAL
Abstract
Mitigating state preparation and measurement (SPAM) errors has been shown to improve the performance of noisy intermediate scale quantum (NISQ) devices. This talk focuses on the incorporation of matrix-based SPAM error mitigation into data-driven circuit learning for parameterized circuits implementing generative modeling tasks. We discuss how the choice of nonlinear optimization, loss function and the structure of the target distributions can affect the computational cost associated with gradient-based training of densely parameterized quantum circuits trained on NISQ hardware accessed via cloud-based queues.
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Presenters
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Kathleen Hamilton
Oak Ridge National Lab
Authors
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Kathleen Hamilton
Oak Ridge National Lab
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Tyler Kharazi
Oak Ridge National Lab
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Vicente Leyton-Ortega
Oak Ridge National Lab
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Raphael Pooser
Oak Ridge National Lab, Oak Ridge National Laboratory