Application

Analogue-digital quantum computing

Quantum Technologies and Quantum Machine Learning

Group Description:

The University of Sevilla’s (US) interest in quantum computing lies in contributing to fundamental knowledge in this cutting-edge area, particularly in quantum machine learning, which could have implications not only in the scientific realm but also for society as a whole. Principal investigator Lucas Lamata is one of the leading experts in digital-analog quantum computing and has dedicated recent years of research to its development and application to various problems. Within the framework of Quantum Spain, the US will study the use of this computational paradigm for quantum machine learning and apply it to solving various problems.

Activity description:

Analog-digital quantum computing involves combining elementary operations (quantum gates) used in current quantum computers with periods during which the qubit system evolves according to its natural interactions, perhaps with the mediation of slight external “trained” control. In this activity, the following tasks will be addressed in this context:

  • Analyze how quantum machine learning algorithms, particularly quantum reinforcement learning, can be enhanced with the new paradigm of analog-digital quantum algorithms.
  • Study the implementation of these algorithms on platforms of superconducting circuits, trapped ions, and quantum photonics.

Results

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Martín-Guerrero, J. D.; Lamata, L.; Villmann, T.

Quantum Artificial Intelligence: A tutorial Conference

2023, ISBN: 978-2-87587-088-9.

Abstract | Links | BibTeX | Tags: artificial intelligence, machine learning, US

Hernani-Morales, C.; Alvarado, G.; Albarrán-Arriagada, F.; Vives-Gilabert, Y.; Solano, E.; Martín-Guerrero, J. D.

Machine Learning for maximizing the memristivity of single and coupled quantum memristors pre-print

2023.

Abstract | Links | BibTeX | Tags: machine learning, UV

Dawid, Anna; Arnold, Julian; Requena, Borja; Gresch, Alexander; Płodzień, Marcin; Donatella, Kaelan; Nicoli, Kim; Stornati, Paolo; Koch, Rouven; Büttner, Miriam; Okuła, Robert; Muñoz-Gil, Gorka; Vargas-Hernández, Rodrigo A.; Cervera-Lierta, Alba; Carrasquilla, Juan; Dunjko, Vedran; Gabrié, Marylou; Huembeli, Patrick; van Nieuwenburg, Evert; Vicentini, Filippo; Wang, Lei; Wetzel, Sebastian J.; Carleo, Giuseppe; Greplová, Eliška; Krems, Roman; Marquardt, Florian; Tomza, Michał; Lewenstein, Maciej; Dauphin, Alexandre

Modern applications of machine learning in quantum sciences pre-print

2022.

Abstract | Links | BibTeX | Tags: machine learning, quantic, quantum science, quantumsimulation