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Evaluation of SMP Shared Memory Machines for Use With In-Memory and OpenMP Big Data Applications

机译:评估SMP共享内存机器用于内存和OpenMP大数据应用

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While distributed memory systems have shaped the field of distributed systems for decades, the demand for many-core shared memory resources is increasing. Symmetric Multiprocessor Systems (SMPs) have become increasingly important recently among a wide array of disciplines, ranging from Bioinformatics to astrophysics, and beyond. With the increase in big data computing, the size and scope of traditional commodity server systems is often outpaced. While some big data applications can be mapped to distributed memory systems found through many cluster and cloud technologies today, this effort represents a large barrier of entry that some projects cannot cross. Shared memory SMP systems look to effectively and efficiently fill this niche within distributed systems by providing high throughput and performance with minimized development effort, as the computing environment often represents what many researchers are already familiar with. In this paper, we look at the use of two common shared memory systems, the ScaleMP vSMP virtualized SMP deployment at Indiana University, and the SGI UV architecture deployed at University of Arizona. While both systems are notably different in their design, their potential impact on computing is remarkably similar. As such, we look to compare each system first under a set of OpenMP threaded benchmarks via the SPEC group, and to follow up with our experience using each machine for Trinity de-novo assembly. We find both SMP systems are well suited to support various big data applications, with the newer vSMP deployment often slightly faster; however, certain caveats and performance considerations are necessary when considering such SMP systems.
机译:虽然分布式存储器系统已经形成了几十年来分布式系统领域,但对许多核心共享内存资源的需求正在增加。最近在广泛的学科中,对称多处理器系统(SMPs)变得越来越重要,从生物信息学到天体物理学,而且超越。随着大数据计算的增加,传统商品服务器系统的大小和范围通常会超出。虽然可以将一些大数据应用程序映射到今天通过许多集群和云技术的分布式存储器系统,但这种努力代表了一些项目无法交叉的进入屏障。共享内存SMP系统通过提供高吞吐量和性能,通过提供高吞吐量和性能,通过最小化的开发工作,在分布式系统内有效和有效地填充该利基,因为计算环境经常代表许多研究人员已经熟悉的东西。在本文中,我们看看使用两个普通共享内存系统,印第安纳大学的Scalemp VSMP虚拟化SMP部署,以及在亚利桑那大学部署的SGI UV架构。虽然两个系统在其设计中具有显着不同,但它们对计算的潜在影响非常相似。因此,我们希望在一组OpenMP线程基准测试中通过规范组进行比较每个系统,并随时使用每种机器的Trinity De-Novo集装箱的经验。我们发现两个SMP系统非常适合支持各种大数据应用程序,较新的VSMP部署通常稍微快速;但是,在考虑此类SMP系统时,某些警告和性能考虑是必要的。

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