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BiPhase adaptive learning-based neural network model for cloud datacenter workload forecasting

机译:基于Biphase自适应学习的云数据中心工作量预测的神经网络模型

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Cloud computing promises elasticity, flexibility and cost-effectiveness to satisfy service level agreement conditions. The cloud service providers should plan and provision the computing resources rapidly to ensure the availability of infrastructure to match the demands with closed proximity. The workload prediction has become critical as it can be helpful in managing the infrastructure effectively. In this paper, we present a workload forecasting framework based on neural network model with supervised learning technique. An improved and adaptive differential evolution algorithm is developed to improve the learning efficiency of predictive model. The algorithm is capable of optimizing the best suitable mutation operator and crossover operator. The prediction accuracy and convergence rate of the learning are observed to be improved due to its adaptive behavior in pattern learning from sampled data. The predictive model's performance is evaluated on four real-world data traces including Google cluster trace and NASA Kennedy Space Center logs. The results are compared with state-of-the-art methods, and improvements up to 91%, 97% and 97.2% are observed over self-adaptive differential evolution, backpropagation and average-based workload prediction techniques, respectively.
机译:云计算应满足满足服务级别协议条件的弹性,灵活性和成本效益。云服务提供商应迅速规划和配置计算资源,以确保基础设施的可用性以匹配封闭的需求。工作负荷预测变得至关重要,因为它有助于有效地管理基础设施。本文介绍了基于具有监督学习技术的神经网络模型的工作量预测框架。开发了一种改进的和自适应差分演化算法以提高预测模型的学习效率。该算法能够优化最佳合适的突变操作员和交叉操作员。观察到学习的预测精度和收敛速度是由于其自适应行为从采样数据的模式学习中的自适应行为而得到改善。预测模型的性能是在四个现实世界数据迹线上进行评估,包括Google Cluster Trace和NASA Kennedy Space Center日志。将结果与最先进的方法进行比较,并且分别观察到高达91%,97%和97.2%的改善,分别通过自适应差分演化,备份和基于平均的工作量预测技术来观察到。

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