Dynamic Self-assembling Petaflop Scale Clusters

Mohammad Samarah, R. Fatmi
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Abstract

High Performance Computing (HPC) has been studied and used in the scientific community for decades. The Message Passing Interface was first introduced in 1992. Similarly, commercial businesses have been relying on High Throughput Computing (HTC) for the past two decades. Mapreduce platforms became popular with the advent of Very Large Databases (VLDBs) and Big Data. We are now seeing the convergence between HPC and HTC to provide faster and cheaper parallel computation. The emergence of MPI as a scalable and viable parallel platform along with the acceptance of Mapreduce to tackle large data sets now opens the door to a host of new applications particularly in biomedical, public health, scientific, and health informatics research. This convergence is making it possible to have every device be a parallel node. In this paper we explore this convergence and a method for creating dynamic self-assembling clusters using commodity hardware and mobile devices.
动态自组装千万亿次规模集群
高性能计算(HPC)已经在科学界进行了几十年的研究和应用。消息传递接口于1992年首次引入。同样,商业企业在过去的二十年里一直依赖于高吞吐量计算(HTC)。随着超大型数据库(vldb)和大数据的出现,Mapreduce平台变得流行起来。我们现在看到HPC和HTC之间的融合,以提供更快、更便宜的并行计算。MPI作为一个可扩展和可行的并行平台的出现,以及Mapreduce处理大型数据集的接受,现在为许多新应用打开了大门,特别是在生物医学、公共卫生、科学和健康信息学研究方面。这种融合使得每个设备都成为并行节点成为可能。在本文中,我们探讨了这种收敛性和一种使用商品硬件和移动设备创建动态自组装集群的方法。
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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