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Applications of Quantum Computing: Quantum Machine Learning, Optimization and CERN use-cases

<!--HTML-->This talk introduces the fundamental concepts of quantum machine learning (QML). In the realm of parametrised quantum circuits, embedding of classical data and parameter optimization methods as part of the general data processing pipeline for quantum networks are being discussed. Fu...

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Autor principal: Rieger, Carla Sophie
Lenguaje:eng
Publicado: 2023
Materias:
Acceso en línea:http://cds.cern.ch/record/2873586
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author Rieger, Carla Sophie
author_facet Rieger, Carla Sophie
author_sort Rieger, Carla Sophie
collection CERN
description <!--HTML-->This talk introduces the fundamental concepts of quantum machine learning (QML). In the realm of parametrised quantum circuits, embedding of classical data and parameter optimization methods as part of the general data processing pipeline for quantum networks are being discussed. Furthermore, possible advantages and challenges in the QML domain are considered and the presentation concludes with examples of CERN specific use-cases. <h2>Bio</h2> Carla is a theoretical physicist specializing in quantum computing and quantum algorithms. With a master's degree from ETH Zurich, Carla is currently pursuing a Ph.D. at CERN with TUM, focusing on quantum algorithms for combinatorial problems and efficient classical simulability of quantum circuits.
id cern-2873586
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2023
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spelling cern-28735862023-10-03T21:22:44Zhttp://cds.cern.ch/record/2873586engRieger, Carla SophieApplications of Quantum Computing: Quantum Machine Learning, Optimization and CERN use-casesRieger, C., Di Marcantonio, F., Wixinger, R. "Quantum Computing Applications and Use-cases"CERN openlab summer student lecture programme<!--HTML-->This talk introduces the fundamental concepts of quantum machine learning (QML). In the realm of parametrised quantum circuits, embedding of classical data and parameter optimization methods as part of the general data processing pipeline for quantum networks are being discussed. Furthermore, possible advantages and challenges in the QML domain are considered and the presentation concludes with examples of CERN specific use-cases. <h2>Bio</h2> Carla is a theoretical physicist specializing in quantum computing and quantum algorithms. With a master's degree from ETH Zurich, Carla is currently pursuing a Ph.D. at CERN with TUM, focusing on quantum algorithms for combinatorial problems and efficient classical simulability of quantum circuits.oai:cds.cern.ch:28735862023
spellingShingle CERN openlab summer student lecture programme
Rieger, Carla Sophie
Applications of Quantum Computing: Quantum Machine Learning, Optimization and CERN use-cases
title Applications of Quantum Computing: Quantum Machine Learning, Optimization and CERN use-cases
title_full Applications of Quantum Computing: Quantum Machine Learning, Optimization and CERN use-cases
title_fullStr Applications of Quantum Computing: Quantum Machine Learning, Optimization and CERN use-cases
title_full_unstemmed Applications of Quantum Computing: Quantum Machine Learning, Optimization and CERN use-cases
title_short Applications of Quantum Computing: Quantum Machine Learning, Optimization and CERN use-cases
title_sort applications of quantum computing: quantum machine learning, optimization and cern use-cases
topic CERN openlab summer student lecture programme
url http://cds.cern.ch/record/2873586
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