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Scalability Evaluation of Iterative Algorithms Used for Supercomputer Simulation of Physical processes

机译:用于超级计算机模拟物理过程的迭代算法的可扩展性评估

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The paper is devoted to the development of a methodology for evaluating the scalability of compute-intensive iterative algorithms used in simulating complex physical processes on supercomputer systems. The proposed methodology is based on the BSF (Bulk Synchronous Farm) parallel computation model, which makes it possible to predict the upper scalability bound of an iterative algorithm in early phases of its design. The BSF model assumes the representation of the algorithm in the form of operations on lists using high-order functions. Two classes of representations are considered: BSF-M (Map BSF) and BSF-MR (Map-Reduce BSF). The proposed methodology is described by the example of the solution of the system of linear equations by the Jacobi method. For the Jacobi method, two iterative algorithms are constructed: Jacobi-M based on the BSF-M representation and Jacobi-MR based on the BSF-MR representation. Analytical estimations of the speedup, parallel efficiency and upper scalability bound are constructed for these algorithms using the BSF cost metrics on multiprocessor computing systems with distributed memory. An information about the implementation of these algorithms in C++language using the BSF program skeleton and MPI parallel programming library are given. The results of large-scale computational experiments, performed on a cluster computing system, are demonstrated. Based on the experimental results, an analysis of the adequacy of estimations, obtained analytically by using the cost metrics of the BSF model, is made.
机译:本文致力于方法论的发展评估的在超级计算机系统模拟复杂的物理过程所使用的计算密集型迭代算法的可扩展性。所提出的方法是基于这使得能够预测在其设计的早期阶段结合的迭代算法的上部可伸缩性BSF(散装同步农场)并行计算模型,。该BSF模型假设在使用高阶函数列表的操作形式的算法的代表性。两类陈述被认为是:BSF-M(地图BSF)和BSF-MR(地图,减少BSF)。所建议的方法是通过线性方程系统由雅可比方法的溶液的实施例中描述。为雅可比方法中,两个迭代算法被构造:雅可比-M基于所述BSF-M表示和基于所述BSF-MR表示雅可比-MR。加速比,并行效率和可扩展性上结合的分析估计被构造为使用关于与分布式内存多处理器计算系统的BSF成本度量这些算法。关于使用BSF程序骨架和MPI并行编程库的C ++语言,这些算法的实现的信息中给出。大规模计算实验,集群计算系统上执行的结果,被证明。基于该实验结果,估计的充分性,通过使用BSF模式的成本度量分析得到的分析,制成。

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