Workload Characterization and Classification: A Step Towards Better Resource Utilization in a Cloud Data Center

IF 0.6 Q3 MULTIDISCIPLINARY SCIENCES Pertanika Journal of Science and Technology Pub Date : 2023-07-27 DOI:10.47836/pjst.31.5.27
Avita Katal, Susheela Dahiya, T. Choudhury
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Abstract

Advancements in virtualization technology have led to better utilization of existing infrastructure. It allows numerous virtual machines with different workloads to coexist on the same physical server, resulting in a pool of server resources. It is critical to understand enterprise workloads to correctly create and configure existing and future support in such pools. Managing resources in a cloud data center is one of the most difficult tasks. The dynamic nature of the cloud environment, as well as the high level of uncertainty, has created these challenges. These applications’ diverse Quality of Service (QoS) requirements make data center management difficult. Accurate forecasting of future resource demand is required to meet QoS needs and ensure better resource utilization. Consequently, data center workload modeling and categorization are needed to meet software quality solutions cost-effectively. This paper uses traces of Bitbrain’s data to characterize and categorize workload. Clustering (K Means and Gaussian mixture model) and Classification strategies (K Nearest Neighbors, Logistic Regression, Decision Trees, Random Forest, and Support Vector Machine) characterize and model the workload traces. K Means shows better results as compared to GMM when compared to the Calinski Harabasz index and Davies-Bouldin score. The results showed that the Decision Tree achieves the maximum accuracy of 99.18%, followed by K Nearest Neighbor (KNN), Random Forest (RF), Support Vector Machine (SVM) Logistic Regression (LR), Multi-Layer Perceptron (MLP), and Back Propagation Neural Networks.
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工作负载表征和分类:云数据中心迈向更好资源利用的一步
虚拟化技术的进步使现有基础设施得到了更好的利用。它允许具有不同工作负载的多个虚拟机在同一物理服务器上共存,从而形成服务器资源池。理解企业工作负载对于正确创建和配置此类池中的现有和未来支持至关重要。管理云数据中心中的资源是最困难的任务之一。云环境的动态性以及高度的不确定性造成了这些挑战。这些应用程序不同的服务质量(QoS)需求使得数据中心管理变得困难。为了满足QoS需求,确保更好地利用资源,需要对未来的资源需求进行准确的预测。因此,需要对数据中心工作负载进行建模和分类,以经济有效地满足软件质量解决方案。本文使用Bitbrain的数据痕迹来描述和分类工作负载。聚类(K均值和高斯混合模型)和分类策略(K近邻、逻辑回归、决策树、随机森林和支持向量机)表征和建模工作负载轨迹。与Calinski Harabasz指数和Davies-Bouldin评分相比,K均值显示出比GMM更好的结果。结果表明,决策树的准确率最高,达到99.18%,其次是K近邻(KNN)、随机森林(RF)、支持向量机(SVM)、逻辑回归(LR)、多层感知器(MLP)和反向传播神经网络。
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来源期刊
Pertanika Journal of Science and Technology
Pertanika Journal of Science and Technology MULTIDISCIPLINARY SCIENCES-
CiteScore
1.50
自引率
16.70%
发文量
178
期刊介绍: Pertanika Journal of Science and Technology aims to provide a forum for high quality research related to science and engineering research. Areas relevant to the scope of the journal include: bioinformatics, bioscience, biotechnology and bio-molecular sciences, chemistry, computer science, ecology, engineering, engineering design, environmental control and management, mathematics and statistics, medicine and health sciences, nanotechnology, physics, safety and emergency management, and related fields of study.
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