基于绩效指标的云提供商选择的进化方法探索

Lucas Borges de Moraes, Adriano Fiorese, R. S. Parpinelli
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引用次数: 1

摘要

云计算模型已经在世界范围内传播,并已成为提供计算服务的创新和效率的基础。这一事实激发了大量提供云计算服务的新公司的出现。为了使这些提供者合格,性能指标(PI)对于系统的信息收集是有用的。选择最适合每个客户需求并具有理想服务质量的供应商,已经成为一个需要鲁棒搜索方法的难题。因此,问题是找到能够以最低价格最大化客户请求的出席率的最小提供商集。本文采用遗传算法(GA)和二元差分进化(BDE)两种进化算法来解决这一问题。使用具有10个、100个和200个提供者的实例。将所得结果与确定性方法进行了比较,结果表明BDE方法优于遗传算法和确定性方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Evolutive Methods for Cloud Provider Selection Based on Performance Indicators
The cloud computing model has been spreading around the world and has become a basis for innovation and efficiency on provisioning computational services. This fact inspired the emergence of a large number of new companies providing cloud computing services. In order to qualify such providers, performance indicators (PI) are useful for systematic information collection. Select which providers are the most suitable to each customer's needs and with the desired quality of service, has become a hard problem with the need of robust search methods. Thus, the problem is to find the smallest set of providers that maximize the attendance of a customer's request with and the lowest price. In this paper, two evolutionary algorithms, named Genetic Algorithms (GA) and Binary Differential Evolution (BDE), are modeled to address this problem. Instances with 10, 100, and 200 providers are employed. Results obtained are compared with a deterministic method and show that the BDE approach outperforms GA and the deterministic method.
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