Deep Neural Networks for High-fidelity Measurement of Multiqubit Circuits.
ORAL
Abstract
Superconducting qubits are a leading candidate for fault-tolerant quantum computing; however, it is challenging to maintain high measurement fidelity as systems are scaled to large size. In this work, we perform numerical simulations to benchmark various Deep Neural Network (DNN) architectures on the task of multiplexed dispersive measurement of superconducting qubits. We compare the robustness of the different state assignment approaches against three sources of measurement infidelity: added measurement noise, qubit relaxation during measurement, and state initialization errors. We find that transformer and convolutional neural network architectures increase readout fidelity relative to conventional thresholding and that these approaches are robust against labeling error in the training datasets. In addition, we calculate the theoretical limit for readout fidelity and demonstrate that the transformer approach provides assignment fidelity approaching the theoretical limit.
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Presenters
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Linipun Phuttitarn
University of Wisconsin - Madison
Authors
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Linipun Phuttitarn
University of Wisconsin - Madison
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Robert McDermott
University of Wisconsin - Madison
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Chuan-Hong Liu
University of Wisconsin Madison, University of Wisconsin- Madison, University of Wisconsin - Madison, University of Wisconsin-Madison
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Kangwook Lee
University of Wisconsin Madison
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Liang Shang
University of Wisconsin Madison
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Daewon Seo
University of Wisconsin Madison