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A mathematical model for empowerment of Beowulf clusters for exascale computing

机译:Beowulf集群用于百亿亿次运算能力的数学模型

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High-performance computing (HPC) clusters are currently faced with two major challenges — namely, the dynamic nature of new generation of applications and the heterogeneity of platforms — if they are going to be useful for exascale computing. Processes running these applications may well demand unpredictable requirements and changes to system configuration and capabilities at runtime, thereby requiring fast system response without sacrificing the transparency and integrity of the reconfigured empowered system that is running on a heterogeneous platform. While a challenge in and of itself, platform heterogeneity is both useful and instrumental in the handling of unpredictable requests. The realization of such a dynamically reconfigurable and heterogeneous HPC cluster system for exascale computing requires a model to guide running processes to determine if they need empowerment of the current cluster, and if yes, by how much. To show the feasibility of empowerment of traditional HPC clusters for exascale computing, we have selected Beowulf as a noble candidate cluster and present a mathematical model for the empowerment of Beowulf clusters for exascale computing (EBEC). We have developed the model in line with Beowulf's cluster approach and by using vector space algebra. In contrast to traditional hardware-oriented approaches to improvise the performance of clusters, we use a software approach to the development of the proposed model by emphasizing processes, which act as the creators of the cluster and thus should decide on system (re)configuration, as the principal building blocks of the system. We have also adopted a new approach to heterogeneity by considering heterogeneity at different levels including hardware, system software, application software, and system functionality. In addition to support for heterogeneity and dynamic reconfiguration, the proposed model includes support for scalability that is crucial to exascale computing too.
机译:高性能计算(HPC)集群目前正面临着两个主要挑战,即新一代应用程序的动态特性和平台的异构性,它们将对百亿亿次计算有用。运行这些应用程序的进程很可能在运行时需要不可预测的要求以及对系统配置和功能的更改,从而需要快速的系统响应,而又不牺牲在异构平台上运行的已重新配置的已授权系统的透明性和完整性。虽然平台本身具有挑战性,但平台异质性在处理不可预测的请求时既有用又有用。实现用于百亿美元级计算的这种可动态重新配置的异构HPC集群系统,需要一个模型来指导正在运行的进程,以确定它们是否需要授权当前集群,如果需要,则需要授权多少。为了展示授权使用传统HPC群集进行百亿美元级计算的可行性,我们选择了Beowulf作为高贵的候选簇,并提出了用于授权Beowulf群集进行百亿级计算(EBEC)的数学模型。我们已经根据Beowulf的聚类方法并使用向量空间代数开发了该模型。与传统的面向硬件的方法来改善集群的性能相反,我们通过强调过程(作为集群的创建者)并因此决定系统(重新)配置,作为系统的主要构件。我们还通过考虑不同级别的异构性(包括硬件,系统软件,应用程序软件和系统功能)采用了一种新的异构性方法。除了支持异构性和动态重新配置之外,建议的模型还包括对可伸缩性的支持,而这对于亿亿级计算也至关重要。

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