可视化算法的功率和性能权衡

Stephanie Labasan, Matthew Larsen, H. Childs, B. Rountree
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引用次数: 4

摘要

最先进的超级计算机面临的最大挑战之一是耗电量。展望未来,预计电力将成为一种越来越有限的资源,因此,为了明智地使用电力,理解这种受限环境中应用程序的运行时行为至关重要。在这种情况下,我们将专门探讨可视化算法在功率和性能之间的权衡。关于在功率限制下的执行行为,可视化算法不同于传统的HPC应用程序,如科学模拟,因为可视化更需要数据密集型。这种数据密集型特性使其适合于关于电力使用的替代策略。在本研究中,我们重点研究了一组具有代表性的可视化算法,并探讨了它们在应用功率界时的功率和性能特征。结果是一项研究,确定了未来的研究工作如何利用可视化应用程序的执行特性,以便在功率限制下优化性能。
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Power and Performance Tradeoffs for Visualization Algorithms
One of the biggest challenges for leading-edge supercomputers is power usage. Looking forward, power is expected to become an increasingly limited resource, so it is critical to understand the runtime behaviors of applications in this constrained environment in order to use power wisely. Within this context, we explore the tradeoffs between power and performance specifically for visualization algorithms. With respect to execution behavior under a power limit, visualization algorithms differ from traditional HPC applications, like scientific simulations, because visualization is more data intensive. This data intensive characteristic lends itself to alternative strategies regarding power usage. In this study, we focus on a representative set of visualization algorithms, and explore their power and performance characteristics as a power bound is applied. The result is a study that identifies how future research efforts can exploit the execution characteristics of visualization applications in order to optimize performance under a power bound.
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