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成果報告書

Modern applications of machine learning in quantum sciences

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Marquardt,  Florian
Marquardt Division, Max Planck Institute for the Science of Light, Max Planck Society;

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フルテキスト (公開)

2204.04198.pdf
(全文テキスト(全般)), 18MB

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引用

Dawid, A., Arnold, J., Requena, B., Gresch, A., Płodzień, M., Donatella, K., Nicoli, K., Stornati, P., Koch, R., Büttner, M., Okuła, R., Muñoz-Gil, G., Vargas-Hernández, R. A., Cervera-Lierta, A., Carrasquilla, J., Dunjko, V., Gabrié, M., Huembeli, P., van Nieuwenburg, E., Vicentini, F., Wang, L., Wetzel, S. J., Carleo, G., Greplová, E., Krems, R., Marquardt, F., Tomza, M., Lewenstein, M., & Dauphin, A. (2022). Modern applications of machine learning in quantum sciences. arXiv,.


引用: https://hdl.handle.net/21.11116/0000-000A-538D-A
要旨
In these Lecture Notes, we provide a comprehensive introduction to the most
recent advances in the application of machine learning methods in quantum
sciences. We cover the use of deep learning and kernel methods in supervised,
unsupervised, and reinforcement learning algorithms for phase classification,
representation of many-body quantum states, quantum feedback control, and
quantum circuits optimization. Moreover, we introduce and discuss more
specialized topics such as differentiable programming, generative models,
statistical approach to machine learning, and quantum machine learning.