大型可扩展和容错逻辑网络的计算特性

C. Cérin, Yu Lei, Michel Koskas
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引用次数: 1

摘要

随着高性能计算平台中嵌入的处理器数量越来越多,迫使开发人员增强其代码的可伸缩性以充分利用平台的所有资源是至关重要的。这通常需要新的算法、技术和代码开发方法,为应用程序代码添加新的属性:错误的出现不再是偶然事件,而是一种挑战。可伸缩性和容错问题也存在于任何平台的隐藏部分:为控制应用程序而构建的覆盖网络,或者在运行时系统中对消息传递的支持,也需要可伸缩性和容错。在本文中,我们关注大规模(数百万个节点)逻辑拓扑实验的计算挑战。我们计算了随机生成的二项图(BMG)的不同变体的容错特性。例如,我们展示了一些关于链接数量的有趣属性,以及一些期望的容错属性,我们用二项式图结构作为参考结构比较了不同的度量。为此研究开发了一个软件工具,并展示了包含21000个节点的拓扑结构的实验结果。我们还解释了处理如此大规模拓扑时的计算挑战,并引入了各种概率算法来解决计算传统度量的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computing Properties of Large Scalable and Fault-Tolerant Logical Networks
As the number of processors embedded in high performance computing platforms becomes higher and higher, it is vital to force the developers to enhance the scalability of their codes in order to exploit all the resources of the platforms. This often requires new algorithms, techniques and methods for code development that add to the application code new properties: the presence of faults is no more an occasional event but a challenge. Scalability and Fault-Tolerance issues are also present in hidden part of any platform: the overlay network that is necessary to build for controlling the application or in the runtime system support for messaging which is also required to be scalable and fault tolerant. In this paper, we focus on the computational challenges to experiment with large scale (many millions of nodes) logical topologies. We compute Fault-Tolerant properties of different variants of Binomial Graphs (BMG) that are generated at random. For instance, we exhibit interesting properties regarding the number of links regarding some desired Fault-Tolerant properties and we compare different metrics with the Binomial Graph structure as the reference structure. A software tool has been developed for this study and we show experimental results with topologies containing 21000 nodes. We also explain the computational challenge when we deal with such large scale topologies and we introduce various probabilistic algorithms to solve the problems of computing the conventional metrics.
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