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Joo-Von Kim

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Machine learning #sciart

25 August 201817 September 2018 admin

Here is a proposal we submitted for the cover of the Nature Electronics issue in which our recent paper appeared.

It features a stylised representation of the different antiskyrmion trajectories used as inputs into the classification algorithm, based on machine learning, that we employed to generate the phase diagram in Fig. 2 of the paper.

Last modified 17/09/18
antiskyrmions machine learning sciart

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Skyrmiogenesis #sciart
Outstanding Referee of the American Physical Society

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