We introduce NetKet, a comprehensive open source framework for the study of many-body quantum systems using machine learning techniques. The framework is built around a general and flexible implementation of neural-network quantum states, which are used as a variational ansatz for quantum wavefunctions. NetKet provides algorithms for several key tasks in quantum many-body physics and quantum technology, namely quantum state tomography, supervised learning from wavefunction data, and ground state searches for a wide range of customizable lattice models. Our aim is to provide a common platform for open research and to stimulate the collaborative development of computational methods at the interface of machine learning and many-body physics.

NetKet: A machine learning toolkit for many-body quantum systems / Carleo, G., Choo, K., Hofmann, D., Smith, J.E.T., Westerhout, T., Alet, F., Davis, E.J., Efthymiou, S., Glasser, I., Lin, S.-H., Mauri, M., Mazzola, G., Mendl, C.B., Van Nieuwenburg, E., O'Reilly, O., Theveniaut, H., Torlai, G., Vicentini, F., Wietek, A.. - In: SOFTWAREX. - ISSN 2352-7110. - 10:(2019), pp. 1-8. [10.1016/j.softx.2019.100311]

NetKet: A machine learning toolkit for many-body quantum systems

Mazzola G.;
2019-01-01

Abstract

We introduce NetKet, a comprehensive open source framework for the study of many-body quantum systems using machine learning techniques. The framework is built around a general and flexible implementation of neural-network quantum states, which are used as a variational ansatz for quantum wavefunctions. NetKet provides algorithms for several key tasks in quantum many-body physics and quantum technology, namely quantum state tomography, supervised learning from wavefunction data, and ground state searches for a wide range of customizable lattice models. Our aim is to provide a common platform for open research and to stimulate the collaborative development of computational methods at the interface of machine learning and many-body physics.
2019
10
1
8
100311
https://doi.org/10.1016/j.softx.2019.100311
https://arxiv.org/abs/1904.00031
Carleo, G.; Choo, K.; Hofmann, D.; Smith, J. E. T.; Westerhout, T.; Alet, F.; Davis, E. J.; Efthymiou, S.; Glasser, I.; Lin, S. -H.; Mauri, M.; Mazzol...espandi
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.11767/151499
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