Multi-level Parallelism in the Computational Modeling of the Heart

C. R. Xavier, R. S. Oliveira, V. D. F. Vieira, R. D. Santos, Wagner Meira Jr
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引用次数: 6

Abstract

Computational modeling of the heart has demonstrated to be a useful tool for the investigation and comprehension of the complex biophysical processes that underlie cardiac function. Unfortunately, large scale simulations, such as those resulting from the discretization of an entire heart, remain a computational challenge. In order to reduce simulation execution times, parallel implementations have traditionally exploited data parallelism via numerical schemes based on domain-decomposition. However, it has been verified that the parallel efficiency of these implementations severely degrades as the number of processors increases. In this work, we propose and implement a new parallel algorithm for the solution of cardiac models. By relaxing the coherence of the execution, a new level of parallelism could be identified and exploited: pipelining. A synchronous parallel algorithm that uses both pipelining and data decomposition techniques was implemented and used the MPI library for communication. Numerical tests were performed in a 8-node Linux-cluster. Our preliminary results indicate that the proposed algorithm is able to increase the parallel efficiency up to 20% when compared to the traditional approach that uses pure data-level parallelism. In addition, the numerical precision was kept under control (relative errors under 4%) when the relaxed coherence execution was adopted.
心脏计算建模中的多级并行性
心脏的计算建模已被证明是一种有用的工具,用于研究和理解心脏功能背后复杂的生物物理过程。不幸的是,大规模的模拟,比如对整个心脏进行离散化,仍然是一个计算上的挑战。为了减少仿真执行时间,并行实现传统上通过基于域分解的数值方案来利用数据并行性。然而,已经证实,随着处理器数量的增加,这些实现的并行效率会严重降低。在这项工作中,我们提出并实现了一种新的心脏模型求解并行算法。通过放松执行的一致性,可以识别和利用新的并行性级别:流水线。实现了一种同时使用流水线和数据分解技术的同步并行算法,并使用MPI库进行通信。在一个8节点的linux集群中进行了数值测试。我们的初步结果表明,与使用纯数据级并行的传统方法相比,所提出的算法能够将并行效率提高20%。此外,采用放松相干执行时,数值精度得到了控制(相对误差在4%以内)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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