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Towards Systematic and Accurate Environment Selection for Emerging Cloud Applications

<p>As cloud computing is gaining popularity, many application owners are migrating their</p><p>applications into the cloud. However, because of the diversity of the cloud environments</p><p>and the complexity of the modern applications, it is very challenging to find out which</p><p>cloud environment is best fitted for one's application.</p><p>In this dissertation, we design and build systems to help application owners select the</p><p>most suitable cloud environments for their applications. The first part of this thesis focuses</p><p>on how to compare the general fitness of the cloud environments. We present CloudCmp,</p><p>a novel comparator of public cloud providers. CloudCmp measures the elastic computing,</p><p>persistent storage, and networking services offered by a cloud along metrics that directly</p><p>reflect their impact on the performance of customer applications. CloudCmp strives to</p><p>ensure fairness, representativeness, and compliance of these measurements while limiting</p><p>measurement cost. Applying CloudCmp to four cloud providers that together account</p><p>for most of the cloud customers today, we find that their offered services vary widely in</p><p>performance and costs, underscoring the need for thoughtful cloud environment selection.</p><p>From case studies on three representative cloud applications, we show that CloudCmp can</p><p>guide customers in selecting the best-performing provider for their applications.</p><p>The second part focuses on how to let customers compare cloud environments in the</p><p>context of their own applications. We describe CloudProphet, a novel system that can</p><p>accurately estimate an application's performance inside a candidate cloud environment</p><p>without the need of migration. CloudProphet generates highly portable shadow programs</p><p>to mimic the behavior of a real application, and deploys them inside the cloud to estimate</p><p>the application's performance. We use the trace-and-replay technique to automatically</p><p>generate high-fidelity shadows, and leverage the popular dispatcher-worker pattern</p><p>to accurately extract and enforce the inter-component dependencies. Our evaluation in</p><p>three popular cloud platforms shows that CloudProphet can help customers pick the bestperforming</p><p>cloud environment, and can also accurately estimate the performance of a</p><p>variety of applications.</p> / Dissertation

Identiferoai:union.ndltd.org:DUKE/oai:dukespace.lib.duke.edu:10161/5814
Date January 2012
CreatorsLi, Ang
ContributorsYang, Xiaowei
Source SetsDuke University
Detected LanguageEnglish
TypeDissertation

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