A workload prediction model for reducing service level agreement violations in cloud data centers

P. Nehra, Nishtha Kesswani
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引用次数: 0

Abstract

Cloud computing has become an emerging technology that offers services based on the pay-as-usage model. The cloud provides several advantages, but these advantages come with challenges, such as reducing Service Level Agreement (SLA) violations, efficient resource utilization, reducing energy consumption, etc., needing attention to leverage customer satisfaction and benefit cloud service providers. Workload prediction is a strategy that provides many benefits: reduced SLA violation, resource scaling, and resource optimization by predicting future workload. However, due to the varying workload of cloud applications, it is difficult to predict the workload accurately, and it fails for long-term dependencies. We propose a methodology based on Multiplicative Long Short Term Memory (mLSTM) that allows input-dependent transitions and considers long-term dependencies to predict the workload to address this issue. The proposed method is implemented and compared with other variants of LSTM used in literature for workload prediction purposes. The proposed work outperforms existing variants of LSTM in terms of prediction accuracy.

减少云数据中心违反服务水平协议情况的工作量预测模型
云计算已成为一种新兴技术,它以按使用付费的模式提供服务。云计算提供了多种优势,但这些优势也带来了挑战,如减少违反服务水平协议(SLA)的情况、高效利用资源、降低能耗等,需要引起重视,以提高客户满意度并使云服务提供商受益。工作负载预测是一种能带来诸多好处的策略:通过预测未来的工作负载来减少违反服务水平协议的情况、进行资源扩展和资源优化。然而,由于云应用的工作量各不相同,因此很难准确预测工作量,而且对于长期依赖关系也无法预测。为了解决这个问题,我们提出了一种基于乘法长短期记忆(mLSTM)的方法,它允许依赖输入的转换,并考虑长期依赖性来预测工作量。我们实施了所提出的方法,并将其与文献中用于工作量预测的其他 LSTM 变体进行了比较。就预测准确性而言,所提出的方法优于现有的 LSTM 变体。
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CiteScore
3.90
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