2023
DOI: 10.1007/s42484-023-00107-2
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Quantum Advantage Seeker with Kernels (QuASK): a software framework to speed up the research in quantum machine learning

Abstract: Exploiting the properties of quantum information to the benefit of machine learning models is perhaps the most active field of research in quantum computation. This interest has supported the development of a multitude of software frameworks (e.g. Qiskit, Pennylane, Braket) to implement, simulate, and execute quantum algorithms. Most of them allow us to define quantum circuits, run basic quantum algorithms, and access low-level primitives depending on the hardware such software is supposed to run. For most exp… Show more

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Cited by 2 publications
(1 citation statement)
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“…In the following, we will follow this strategy to check the class of the studied HEP dataset. The metrics introduced in [54] were calculated using the code provided in the software package QuASK [76]. First, we evaluate the geometric difference g, defined as a similarity measure between two kernel matrices,…”
Section: Appendix E 'Power Of Data' Metricsmentioning
confidence: 99%
“…In the following, we will follow this strategy to check the class of the studied HEP dataset. The metrics introduced in [54] were calculated using the code provided in the software package QuASK [76]. First, we evaluate the geometric difference g, defined as a similarity measure between two kernel matrices,…”
Section: Appendix E 'Power Of Data' Metricsmentioning
confidence: 99%