2014
DOI: 10.1137/130944230
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Parallel Time Integration with Multigrid

Abstract: Abstract. We consider optimal-scaling multigrid solvers for the linear systems that arise from the discretization of problems with evolutionary behavior. Typically, solution algorithms for evolution equations are based on a time-marching approach, solving sequentially for one time step after the other. Parallelism in these traditional time-integration techniques is limited to spatial parallelism. However, current trends in computer architectures are leading towards systems with more, but not faster, processors… Show more

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Cited by 205 publications
(127 citation statements)
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References 36 publications
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“…The multigrid‐reduction‐in‐time (MGRIT) algorithm is based on applying multigrid reduction techniques to time integration. The method uses block smoothers for relaxation and employs a semicoarsening strategy that, in contrast to waveform relaxation, coarsens only in the temporal dimension.…”
Section: Multigrid Methods On Space‐time Grids For Parabolic Problemsmentioning
confidence: 99%
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“…The multigrid‐reduction‐in‐time (MGRIT) algorithm is based on applying multigrid reduction techniques to time integration. The method uses block smoothers for relaxation and employs a semicoarsening strategy that, in contrast to waveform relaxation, coarsens only in the temporal dimension.…”
Section: Multigrid Methods On Space‐time Grids For Parabolic Problemsmentioning
confidence: 99%
“…Current trends in computer architectures are leading towards systems with more, but not faster processors. As a consequence, faster compute speeds must come from greater parallelism, resurging the interest in multigrid algorithms for parabolic problems that allow temporal parallelism . Regarding this development, a predictive analysis tool for these methods becomes highly relevant.…”
Section: Introductionmentioning
confidence: 99%
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“…These factors include (a) hitting the limits of scaling when using purely sequential approaches, (b) the ability to store and solve the full time horizon with significant implications to solving adjoint problems, (c) the ability to only perform spatial adaptivity in blocks greatly simplifying storage, and, finally, (d) as a first step to simultaneous adaptivity in space and in time [19], which would prove very significant. 10 Several other researchers have also made this case [12,6,20]. We next look at how increasing the number of time steps, N , in a time block impacts performance of the space-time approach.…”
Section: C287mentioning
confidence: 99%
“…The two stages are used to devise algorithms that provide a way to exploit parallelization for time integration [35, 15, 28], e.g. the Parareal Algorithm [39, 37, 38, 41, 29, 30].…”
Section: Introductionmentioning
confidence: 99%