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AND/OR Branch-and-Bound on a Computational Grid

机译:和/或计算网格上的分支和绑定

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We present a parallel AND/OR Branch-and-Bound scheme that uses the power of a computational grid to push the boundaries of feasibility for combinatorial optimization. Two variants of the scheme are described, one of which aims to use machine learning techniques for parallel load balancing. In-depth analysis identifies two inherent sources of parallel search space redundancies that, together with general parallel execution overhead, can impede parallelization and render the problem far from embarrassingly parallel. We conduct extensive empirical evaluation on hundreds of CPUs, the first of its kind, with overall positive results. In a significant number of cases parallel speedup is close to the theoretical maximum and we are able to solve many very complex problem instances orders of magnitude faster than before; yet analysis of certain results also serves to demonstrate the inherent limitations of the approach due to the aforementioned redundancies.
机译:我们呈现了一种并行和/或分支和绑定方案,该方案使用计算网格的功率推动组合优化的可行性的边界。 描述了该方案的两个变型,其中一个旨在使用机器学习技术进行平行负载平衡。 深入分析识别两个并行搜索空间冗余的两个固有源,与一般并行执行开销一起可以阻碍并行化,并使远离令人尴尬的问题的问题。 我们对数百家CPU进行了广泛的实证评估,首先,具有整体肯定结果。 在大量的情况下,并行加速度接近理论最大值,我们能够解决比以前更快的数量级的数量级; 然而,对某些结果的分析也用于展示由于上述冗余的方法的固有局限性。

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