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arxiv: 1809.05018 · v1 · pith:I5BDW7K3new · submitted 2018-09-13 · 💻 cs.DC

DPP-PMRF: Rethinking Optimization for a Probabilistic Graphical Model Using Data-Parallel Primitives

classification 💻 cs.DC
keywords algorithmdata-parallelgraphicalmodeloptimizationperformanceprimitivesprobabilistic
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We present a new parallel algorithm for probabilistic graphical model optimization. The algorithm relies on data-parallel primitives (DPPs), which provide portable performance over hardware architecture. We evaluate results on CPUs and GPUs for an image segmentation problem. Compared to a serial baseline, we observe runtime speedups of up to 13X (CPU) and 44X (GPU). We also compare our performance to a reference, OpenMP-based algorithm, and find speedups of up to 7X (CPU).

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