Analysis of a Quantum Kernel-Based Classifier Using a Tunable Trapped Ion Noisy Simulator
ORAL
Abstract
In this work, we develop a tunable trapped-ion noisy simulator to analyze the noise-sensitivity of a relevant quantum machine learning (QML) algorithm with respect to various noise metrics specific to existing and near-term trapped-ion hardware. Investigating the effects of trapped-ion noise on the classification performance of a quantum-enhanced kernel-based classifier is insightful for the future use of these devices for larger-scale machine learning tasks. We explore the noise-sensitivity trade-offs associated with model training in simulated environments with varying amounts of noise. As trapped-ion quantum computers may offer several advantages over superconducting devices in the realm of QML, such as all-to-all connectivity, stable higher energy atomic levels for constructing qudits, and accessible many-qubit entangling gates, it is important that we analyze and explore strategies to mitigate the effects that noise can have on QML algorithms running on these near-term trapped-ion quantum processors.
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Presenters
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Keith Kenemer
Aliro Quantum Technologies
Authors
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Keith Kenemer
Aliro Quantum Technologies
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Michael Cubeddu
Aliro Quantum Technologies
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Ian MacCormack
Aliro Quantum Technologies, University of Chicago
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Conor Delaney
Aliro Quantum Technologies
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Nidhi Aggarwal
Aliro Quantum Technologies
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Prineha Narang
Harvard University, SEAS, Harvard University, John A. Paulson School of Engineering & Applied Science, Harvard University, Harvard John A. Paulson School of Engineering and Applied Sciences, Harvard University, Physics, Harvard University, John A. Paulson School of Engineering and Applied Sciences, Harvard University