Computing

Katherine Romba
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引用次数: 0

Abstract

Traditionally, heavy computational tasks were performed on a dedicated infrastructure requiring a heavy initial investment, such as a supercomputer or a data center. Grid computing relaxed the assumptions of the fixed infrastructure, allowing the sharing of remote computational resources. Cloud computing brought these ideas into the commercial realm and allows users to request on demand an essentially unlimited amount of computing power. However, in contrast to previous assumptions, this computing power is metered and billed on an hour-by-hour basis. In this paper, we are considering applications where the output quality increases with the deployed computational power, a large class including applications ranging from weather prediction to financial modeling. We are proposing a computation scheduling that considers both the financial cost of the computation and the predicted financial benefit of the output, that is, its value of information (VoI). We model the proposed approach for an example of analyzing real-estate investment opportunities in a competitive environment. We show that by using the VoI-based scheduling algorithm, we can outperform minimalistic computing approaches, large but fixedly allocated data centers and cloud computing approaches that do not consider the VoI.
计算
传统上,繁重的计算任务是在需要大量初始投资的专用基础设施上执行的,例如超级计算机或数据中心。网格计算放宽了对固定基础设施的假设,允许共享远程计算资源。云计算将这些想法带入了商业领域,并允许用户按需请求基本上无限的计算能力。然而,与之前的假设相反,这种计算能力是按小时计量和计费的。在本文中,我们正在考虑输出质量随着部署的计算能力而增加的应用程序,这是一个很大的类别,包括从天气预报到金融建模的应用程序。我们提出了一种计算调度,它既考虑了计算的财务成本,也考虑了输出的预期财务效益,即其信息价值(VoI)。我们以一个在竞争环境中分析房地产投资机会的例子为例,对所提出的方法进行建模。我们表明,通过使用基于VoI的调度算法,我们可以胜过简约的计算方法,大型但固定分配的数据中心和不考虑VoI的云计算方法。
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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