Optimizing Service Level Agreements for Autonomic Cloud Bursting Schedulers

S. Kailasam, N. Gnanasambandam, D. Ram, Naveen Sharma
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引用次数: 40

Abstract

The practice of computing across two or more data centers separated by the Internet is growing in popularity due to an explosion in scalable computing demands and pay-as-you-go schemes offered on the cloud. While cloud-bursting is addressing this process of scaling up and down across data centers (i.e. between private and public clouds), offering service level guarantees, is a challenge for inter-cloud computation, particularly for best-effort traffic and large files. The parallel workload we address is real-time and involves inter-cloud processing and analysis of images and documents. In our production printing domain, dedicated processing/network resources are cost-prohibitive. Further, the problem is exacerbated by data intensive computing - we encounter huge file sizes atypical of intercloud parallel processing. To address these problems we propose three flavors of autonomic cloud-bursting schedulers that offer probabilistic guarantees on service levels required by customers (such as speed-up and queue sequence preservation) by adapting to changing workload characteristics, variation in bandwidth and available resources. In particular, these opportunistic schedulers use a quadratic response surface model for processing time in concert with a time-of-day dependent bandwidth predictor to increase the throughput and utilization while simultaneously reducing out-of-sequence completions for a document processing workload.
优化自主云爆发调度程序的服务水平协议
由于可伸缩计算需求的爆炸式增长和云上提供的随用随付方案,跨Internet分隔的两个或多个数据中心进行计算的实践越来越受欢迎。虽然云爆发解决了跨数据中心(即在私有云和公共云之间)上下扩展的过程,但提供服务水平保证对于云间计算来说是一个挑战,特别是对于“尽力而为”的流量和大文件。我们处理的并行工作负载是实时的,涉及图像和文档的云间处理和分析。在我们的生产印刷领域,专用的加工/网络资源成本过高。此外,数据密集型计算加剧了这个问题——我们遇到了超大文件大小的云间并行处理。为了解决这些问题,我们提出了三种类型的自主云爆发调度器,它们通过适应不断变化的工作负载特征、带宽变化和可用资源,为客户所需的服务级别(如加速和队列序列保留)提供概率保证。特别是,这些机会调度器使用二次响应面模型来处理时间,并使用与时间相关的带宽预测器来提高吞吐量和利用率,同时减少文档处理工作负载的乱序完成。
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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