Weak Scaling of DSA Preconditioning of Transport Sweeps using HYPRE

11/12/2019
by   Milan Hanus, et al.
0

This report summarizes the weak scaling performance of the diffusion-synthetic acceleration (DSA) of transport sweeps in PDT (a massively parallel deterministic transport solver developed at Texas A&M University). It provides an assessment of the cost of the DSA based on the modified symmetric interior-penalty discontinuous Galerkin discretization and solved by the AMG-preconditioned conjugate gradient method provided by the HYPRE/BoomerAMG library, relative to the transport sweeps. Different parallel partitionings (“hybrid-KBA”, volumetric), per-core workload (512/4k cells per core) and number of discrete directions (128 to 2k) are compared and a set of optimized HYPRE/BoomerAMG parameters is selected that leads to best overall performance of the transport+DSA solution at scale.

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