面向分布式云计算快速响应的广域暂定缩放(WATS)

H. Yabusaki, Hiroshi Nakagoe, Koichi Murayama, Takatoshi Kato
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引用次数: 1

摘要

随着企业越来越多地采用云计算,为了运行业务应用程序,云需要严格的服务级别协议(如响应时间)。这可能会产生问题,因为由于全球化,来自地理上分布的终端的活动通常会增加平均响应时间。联合不同的云可以利用不同地理区域的数据中心,而不管它们的服务是什么。通过考虑延迟因素(如数据同步、多层应用程序的分布、其他应用程序的影响),在终端附近的数据中心复制应用程序和相关数据,可以减少响应时间。然而,要准确无误地分析所有因素是不现实的。我们建议采用广域试试性扩展(WATS),通过在其他数据中心重复复制部分应用程序和相关数据并选择更好的组织,以分阶段的方式改进响应时间。WATS方法是重复更改组织以减少响应时间,即使分析是不正确的,这与需要精确分析的基于数学公式的方法不同。这种方法的缺点是由于重复复制而消耗更多的计算资源。因此,我们应用贝叶斯推理,以较少的试验来寻找更好的组织。评价结果表明,WATS成功地分阶段缩短了响应时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wide area tentative scaling (WATS) for quick response in distributed cloud computing
As cloud computing is increasingly adopted by enterprises, a stringent service level agreement such as response time is required by the cloud in order to run business applications. This can be problematic because activity from geographically distributed terminals owing to globalization often increases the average response time. Federating various clouds enables to utilize datacenters in various geographical regions regardless of their servicers. The response time can be reduced by replicating the applications and related data at datacenters near the terminals by considering the factors of delay (e.g., data synchronization, distribution of multi-tier applications, and influence of other applications). However, it is unrealistic to accurately analyze all of the factors without any errors. We propose wide area tentative scaling (WATS) to improve the response time in a phased manner by repetitively replicate a part of the application and related data at other datacenters and selecting a better organization. The WATS approach is to repetitively change the organization to reduce the response time even if the analysis is incorrect, unlike mathematical-formulae-based approaches that require precise analysis. The drawback of this approach is that it consumes more computing resources due to repeating the replication. We therefore, applied Bayesian inference to search for a better organization with fewer trials. Evaluation results showed that WATS successfully reduced the response time in a phased manner.
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