Tackling Quantum Sampling Noise in Quantum Machine Learning on Large-scale Quantum Devices
ORAL
Abstract
A new quantum machine learning algorithm, Noise Intermediate-Scale Quantum Reservoir Computing (NISQRC), was recently introduced that takes advantage of features generated by projectively measured quantum systems, where the number of features scales exponentially with the qubit count [1,2]. Designed to handle both time-independent data [1] and streaming time-dependent data [2], the NISQRC algorithm can also be optimized for limited measurement resources (e.g., shot count) through the Eigentask Analysis introduced in Ref. [1]. A recent application of NISQRC on superconducting quantum processors has demonstrated inference on arbitrarily long time-dependent data, unconstrained by coherence time limitations without error mitigation or correction [2]. Its design for particular ML tasks can be systematically optimized using the Quantum Volterra Theory introduced in Ref. [2]. In this study, we numerically investigate the effectiveness of Eigentask Analysis scales with the number of qubits on large multi-qubit devices. Specifically, we identify the count of noise-resilient eigentasks as the number of qubits and measurement shots increases and conduct a comparative analysis using experimental data from an analog quantum computer on a neutral atom platform.
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Publication: [1] F. Hu, G. Angelatos, S. A. Khan, et al., Phys. Rev. X 13, 041020 (2023)<br>[2] F. Hu, S. A. Khan, et al., Nat. Commun. 15, 7491 (2024)
Presenters
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Fangjun Hu
Princeton University
Authors
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Fangjun Hu
Princeton University
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Marti Vives
Princeton University
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Theodoros Ilias
Princeton University
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Hakan E Tureci
Princeton University