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Neural network parameter regression for lattice quantum chromodynamics simulations in nuclear and particle physics
2018
International Conference on Learning Representations
Nuclear and particle physicists seek to understand the structure of matter at the smallest scales through numerical simulations of lattice Quantum Chromodynamics (LQCD) performed on the largest supercomputers available. Multi-scale techniques have the potential to dramatically reduce the computational cost of such simulations, if a challenging parameter regression problem matching physics at different resolution scales can be solved. Simple neural networks applied to this task fail because of
dblp:conf/iclr/ShanahanTD18
fatcat:wnefrqd33vafnes733zvxxbuwu