自动管理云基础设施的无监督神经预测器

Hanen Chihi, Walid Chainbi, K. Ghédira
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引用次数: 5

摘要

由于它产生的所有污染物和其速率的稳步增长,能源消耗已成为一个关键问题。云计算是分布式效用计算的一种新兴模型,被认为是通过集中管理计算资源来节约能源的一个极具吸引力的机会。显然,可以通过在服务器不使用时关闭电源来大幅降低能耗。这项工作提出了一种基于无监督预测模型的资源配置方法,该模型采用基于自组织映射的无监督、循环神经网络的形式。长期以来,计算机中的无监督学习一直被认为是计算机问题的理想目标。与传统的预测学习方法通过预测结果与实际结果之间的差异来分配学分不同,该研究通过时间连续预测之间的差异来分配学分。我们已经证明,所提出的方法产生了有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised Neural Predictor to Auto-administrate the Cloud Infrastructure
Due to all the pollutants generated by it and the steady increases in its rates, energy consumption has become a key issue. Cloud computing is an emerging model for distributed utility computing and is being considered as an attractive opportunity for saving energy through central management of computational resources. Obviously, a substantial reduction in energy consumption can be made by powering down servers when they are not in use. This work presents a resources provisioning approach based on an unsupervised predictor model in the form of an unsupervised, recurrent neural network based on a self-organizing map. Unsupervised learning in computers has for long been considered as the desired ambition of computer problems. Unlike conventional prediction-learning methods which assign credit by means of the difference between predicted and actual outcomes, the proposed study assigns credit by means of the difference between temporally successive predictions. We have shown that the proposed approach gives promising results.
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