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arxiv: 1807.05728 · v1 · pith:3HBIH653new · submitted 2018-07-16 · ⚛️ nucl-th · cond-mat.dis-nn· hep-ex· hep-ph· nucl-ex

Applications of deep learning to relativistic hydrodynamics

classification ⚛️ nucl-th cond-mat.dis-nnhep-exhep-phnucl-ex
keywords deephydrodynamicslearningrelativisticwillapplicationsbrieflycalled
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In this proceeding, we will briefly review our recent progress on implementing deep learning to relativistic hydrodynamics. We will demonstrate that a successfully designed and trained deep neural network, called {\tt stacked U-net}, can capture the main features of the non-linear evolution of hydrodynamics, which could also rapidly predict the final profiles for various testing initial conditions.

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