Bootstrap仿真算法并行实现的性能问题

R. Czekster, Paulo Fernandes, Afonso Sales, T. Webber
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引用次数: 1

摘要

基于状态的随机模型的求解通常是一个要求很高的应用,因此它是高性能技术的一个自然主题。我们对结构化马尔可夫模型的Bootstrap仿真的加速特别感兴趣。该方法是性能评估领域的最新发展,尽管在模拟实验中存在随机性的内在影响,但它在结果准确性方面带来了相当大的提高。不幸的是,Bootstrap仿真的计算成本比其他选择更高。在随机自动机网络(SAN)形式化描述的三个实际例子中,我们提出了不同选项的实验来优化Bootstrap仿真的并行解。本文的贡献在于讨论了理论实现问题、获得的加速以及所有实验的实际处理和通信时间。此外,我们还建议未来的工作进一步改进所提出的解决方案,并讨论了类似应用程序并行化的一些有趣见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Issues for Parallel Implementations of Bootstrap Simulation Algorithm
The solution of state-based stochastic models is usually a demanding application, then it is a natural subject to high performance techniques. We are particularly interested in the speedup of Bootstrap Simulation of structured Markovian models. This approach is a quite recent development in the performance evaluation area, and it brings a considerable improvement in the results accuracy, despite the intrinsic effect of randomness in simulation experiments. Unfortunately, Bootstrap Simulation has higher computational cost than other alternatives. We present experiments with different options to optimize the parallel solution of Bootstrap Simulation applied to three practical examples described in Stochastic Automata Networks (SAN) formalism. This paper contribution resides in the discussion of theoretical implementation issues, the obtained speedup and the actual processing and communication times for all experiments. Additionally, we also suggest future works to improve even more the proposed solution and we discuss some interesting insights for parallelization of similar applications.
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