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A Hybrid Cross-Entropy Cognitive-Based Algorithm for Resource Allocation in Cloud Environments

机译:基于混合跨熵认知的云环境资源分配算法

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The direct consequence of the rapid growth of the demand for computational power by cloud based-applications has been the creation of an increasing number of large-scale data centres. In such a competitive market, each Cloud vendor needs to lower the price of the offered resources in order to increase its shares. This is done by reducing the cost associated with the execution of the users' applications, but still maintaining an adequate quality of Service. To reach this goal, each Cloud infrastructure needs to self-organise, by efficiently allocating its own resources. The complexity of the problem (exact solutions are NP-complete) calls for new, adaptive and highly-automated approaches that, at the arrival of new resource requests, are able to autonomously estimate potential resource consumptions. Hence the resource management subsystem is tuned up just keeping the associated costs as low as possible. This paper represent our contribution to this problem. We propose an approach that exploits the Cross-Entropy minimisation method to forecast the impact of different resource allocations on a Cloud infrastructure, assuming that many objective functions need to be optimised. Yet, in order to select the best allocation among those presented here, we make use of an adaptive, fast, and low resource-demanding decision-making strategy, derived from models coming from the cognitive science field. Preliminary results show the effectiveness of the proposed solution.
机译:基于云应用程序的计算能力需求快速增长的直接后果一直是创建越来越多的大规模数据中心。在如此竞争激烈的市场中,每个云供应商都需要降低所提供资源的价格,以增加其股份。这是通过降低与用户应用程序相关的成本来完成的,但仍保持足够的服务质量。为了实现这一目标,每个云基础架构都需要通过有效地分配自己的资源来自组织。问题的复杂性(确切的解决方案是NP-Complete)呼叫新资源请求到达的新的,适应性和高度自动化的方法,可以自主地估计潜在的资源消耗。因此,资源管理子系统被调整,只需保持相关的成本尽可能低。本文代表了我们对这个问题的贡献。我们提出了一种利用跨熵最小化方法来预测不同资源分配对云基础架构的影响的方法,假设需要优化许多客观函数。然而,为了选择此处提供的那些的最佳分配,我们利用来自来自认知科学领域的模型的自适应,快速和低的资源苛刻的决策策略。初步结果显示了所提出的解决方案的有效性。

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