A Machine Learning Perspective on the Many-Body Problem - Juan Carrasquilla
Juan Carrasquilla (D-Wave Systems / Vector Institute for Artificial Intelligence)
Invited Talk 4: A Machine Learning Perspective on the Many-Body Problem in Physics
Deep Learning for Physical Sciences (DLPS) workshop at the 31st Conference on Neural Information Processing Systems (NIPS)
Long Beach, CA, United States, December 8, 2017
https://dl4physicalsciences.github.io/
Видео A Machine Learning Perspective on the Many-Body Problem - Juan Carrasquilla канала Deep Learning for Physical Sciences Workshop NIPS
Invited Talk 4: A Machine Learning Perspective on the Many-Body Problem in Physics
Deep Learning for Physical Sciences (DLPS) workshop at the 31st Conference on Neural Information Processing Systems (NIPS)
Long Beach, CA, United States, December 8, 2017
https://dl4physicalsciences.github.io/
Видео A Machine Learning Perspective on the Many-Body Problem - Juan Carrasquilla канала Deep Learning for Physical Sciences Workshop NIPS
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27 февраля 2018 г. 20:34:19
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