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Parametric Design and Performance Analysis of a Decoupled Service-Oriented Prediction Framework Based on Embedded Numerical Software

机译:基于嵌入式数值软件的去耦服务预测框架的参数设计与性能分析

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摘要

In modern utility computing infrastructures, like grids and clouds, one of the significant actions of a service provider is to predict the resources needed by the services included in its platform in an automated fashion for service provisioning optimization. Furthermore, a variety of software toolkits exist that implement an extended set of algorithms applicable to workload forecasting. However, their automated use as services in the distributed computing paradigm includes a number of design and implementation challenges. In this paper, a decoupled framework is presented, for taking advantage of software like GNU Octave in the process of creating and using prediction models during the service life cycle of a SOI. A performance analysis of the framework is also conducted. In this context, a methodology for creating parametric or gearbox services with multiple modes of operations based on the execution conditions is portrayed and is applied to transform the aforementioned service framework to optimize service performance. A new estimation algorithm is introduced, that creates performance rules of applications as black boxes, through the creation and usage of genetically optimized artificial neural networks. Through this combination, the critical parameters of the networks are decided through an evolutionary iterative process.
机译:在诸如网格和云之类的现代公用计算基础架构中,服务提供商的重要动作之一是以自动化的方式预测其平台中包含的服务所需的资源,以优化服务供应。此外,存在各种软件工具箱,这些工具箱实现了适用于工作负荷预测的扩展算法集。然而,它们在分布式计算范例中作为服务的自动化使用包括许多设计和实现挑战。在本文中,提出了一个解耦的框架,以便在SOI的服务生命周期中利用诸如GNU Octave之类的软件来创建和使用预测模型的过程中。还对框架进行了性能分析。在这种情况下,描绘了一种用于基于执行条件创建具有多种操作模式的参数或变速箱服务的方法,并将其应用于变换上述服务框架以优化服务性能。引入了一种新的估计算法,该算法通过创建和使用经过遗传优化的人工神经网络,将应用程序的性能规则创建为黑盒。通过这种组合,网络的关键参数是通过进化的迭代过程来确定的。

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