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A. V. Molochkov

Machine-learning physics from unphysics: Finding deconfinement temperature in lattice Yang-Mills theories from outside the scaling window

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Sep 23, 2020
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Topological defects and confinement with machine learning: the case of monopoles in compact electrodynamics

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Jun 16, 2020
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Casimir effect with machine learning

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Nov 18, 2019
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