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MGiaD: Multigrid in all dimensions. Efficiency and robustness by
  coarsening in resolution and channel dimensions

MGiaD: Multigrid in all dimensions. Efficiency and robustness by coarsening in resolution and channel dimensions

10 November 2022
Antonia van Betteray
Matthias Rottmann
Karsten Kahl
ArXiv (abs)PDFHTML

Papers citing "MGiaD: Multigrid in all dimensions. Efficiency and robustness by coarsening in resolution and channel dimensions"

2 / 2 papers shown
Title
Gauge-equivariant pooling layers for preconditioners in lattice QCD
Gauge-equivariant pooling layers for preconditioners in lattice QCD
C. Lehner
T. Wettig
AI4CE
67
8
0
20 Apr 2023
Gauge-equivariant neural networks as preconditioners in lattice QCD
Gauge-equivariant neural networks as preconditioners in lattice QCD
C. Lehner
T. Wettig
AI4CE
77
10
0
10 Feb 2023
1