Scalable quantum processor noise characterization

2020 IEEE International Conference on Quantum Computing and Engineering (QCE)(2020)

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摘要
Measurement fidelity matrices (MFMs) (also called error kernels) are a natural way to characterize state preparation and measurement errors in near-term quantum hardware. They can be employed in post processing to mitigate errors and substantially increase the effective accuracy of quantum hardware. However, the feasibility of using MFMs is currently limited as the experimental cost of determining the MFM for a device grows exponentially with the number of qubits. In this work we present a scalable way to construct approximate MFMs for many-qubit devices based on cumulant expansions. Our method can also be used to characterize various types of correlation error.
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关键词
quantum computing,NISQ computing,error mitigation,noise characterization
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