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Quantum Kernel Methods (hands-on on Quask)

<!--HTML--><h1>Abstract</h1> In this introduction to the foundations of quantum machine learning, we will dive into key concepts such as data encoding, feature map selection, and the comparison of different metrics for quantum kernel estimation. By the end of the session, students...

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Autores principales: Wixinger, Roman Luca, Di Marcantonio, Francesco
Lenguaje:eng
Publicado: 2023
Materias:
Acceso en línea:http://cds.cern.ch/record/2866465
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author Wixinger, Roman Luca
Di Marcantonio, Francesco
author_facet Wixinger, Roman Luca
Di Marcantonio, Francesco
author_sort Wixinger, Roman Luca
collection CERN
description <!--HTML--><h1>Abstract</h1> In this introduction to the foundations of quantum machine learning, we will dive into key concepts such as data encoding, feature map selection, and the comparison of different metrics for quantum kernel estimation. By the end of the session, students should be able to understand the basic steps and considerations in implementing and assessing quantum algorithms for machine learning. <h2>Bio</h2> <h3>Francesco Di Marcantonio</h3> Francesco is a PhD student at CERN and University of the Basque Country. He studied at KTH and Politecnico di Torino and focuses on the simulation of Quantum Matter with Tensor Network Methods and other techniques related to Quantum Computation. <h3>Roman Wixinger</h3> Roman is a Software Engineer with a background in Physics. He studied at ETH Zurich and does research in Quantum Computing and Particle Physics at CERN and the University of Tokyo.
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institution Organización Europea para la Investigación Nuclear
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publishDate 2023
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spelling cern-28664652023-08-01T20:14:23Zhttp://cds.cern.ch/record/2866465engWixinger, Roman LucaDi Marcantonio, FrancescoQuantum Kernel Methods (hands-on on Quask)Rieger, C., Di Marcantonio, F., Wixinger, R. "Quantum Computing Applications and Use-cases"CERN openlab summer student lecture programme<!--HTML--><h1>Abstract</h1> In this introduction to the foundations of quantum machine learning, we will dive into key concepts such as data encoding, feature map selection, and the comparison of different metrics for quantum kernel estimation. By the end of the session, students should be able to understand the basic steps and considerations in implementing and assessing quantum algorithms for machine learning. <h2>Bio</h2> <h3>Francesco Di Marcantonio</h3> Francesco is a PhD student at CERN and University of the Basque Country. He studied at KTH and Politecnico di Torino and focuses on the simulation of Quantum Matter with Tensor Network Methods and other techniques related to Quantum Computation. <h3>Roman Wixinger</h3> Roman is a Software Engineer with a background in Physics. He studied at ETH Zurich and does research in Quantum Computing and Particle Physics at CERN and the University of Tokyo.oai:cds.cern.ch:28664652023
spellingShingle CERN openlab summer student lecture programme
Wixinger, Roman Luca
Di Marcantonio, Francesco
Quantum Kernel Methods (hands-on on Quask)
title Quantum Kernel Methods (hands-on on Quask)
title_full Quantum Kernel Methods (hands-on on Quask)
title_fullStr Quantum Kernel Methods (hands-on on Quask)
title_full_unstemmed Quantum Kernel Methods (hands-on on Quask)
title_short Quantum Kernel Methods (hands-on on Quask)
title_sort quantum kernel methods (hands-on on quask)
topic CERN openlab summer student lecture programme
url http://cds.cern.ch/record/2866465
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AT dimarcantoniofrancesco quantumkernelmethodshandsononquask
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AT dimarcantoniofrancesco riegercdimarcantoniofwixingerrquantumcomputingapplicationsandusecases