Stochastic Models for Planning VLE Moodle Environments based on Containers and Virtual Machines

Cleyton Ferreira Gonçalves, E. Andrade, Júlio Rodrigues de Mendonça Neto, G. Callou
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引用次数: 1

Abstract

Moodle Virtual Learning Environments (VLEs) represent tools of a pedagogical dimension where the teacher uses various resources to stimulate student learning. Content presented in hypertext, audio or vídeo formats can be adopted as a means to facilitate the learning. These platforms tend to produce high processing rates on servers, large volumes of data on the network and, consequently, degrade performance, increase energy consumption and costs. However, to provide eficiente sharing of computing resources and at the same time minimize financial costs, these VLE platforms typically run on virtualized infrastructures such as Virtual Machines (VM) or containers, which have advantages and disadvantages. Stochastic models, such as stochastic Petri nets (SPNs), can be used in the modeling and evaluation of such environments. Therefore, this work aims to use analytical modeling through SPNs to assess the performance, energy consumption and cost of environments based on containers and VMs. Metrics such as throughput, response time, energy consumption and cost are collected and analyzed. The results revealed that, for example, a cluster with 10 replicas, occupied at their maximum capacity, can generate a 46.54% reduction in energy consumption if containers are used. Additionally, we validate the accuracy of the analytical models by comparing their results with the results obtained in a real infrastructure.
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基于容器和虚拟机的VLE Moodle环境规划的随机模型
Moodle虚拟学习环境(VLEs)代表了教师使用各种资源来刺激学生学习的教学维度工具。可以采用超文本、音频或vídeo格式的内容作为促进学习的手段。这些平台往往在服务器上产生高处理速率,在网络上产生大量数据,因此降低了性能,增加了能耗和成本。然而,为了提供有效的计算资源共享,同时最小化财务成本,这些VLE平台通常运行在虚拟机(VM)或容器等虚拟化基础设施上,这些基础设施有优点也有缺点。随机模型,如随机Petri网(SPNs),可以用于这种环境的建模和评估。因此,本工作旨在通过spn使用分析建模来评估基于容器和vm的环境的性能、能耗和成本。收集和分析吞吐量、响应时间、能耗和成本等指标。结果显示,例如,如果使用容器,一个具有10个副本的集群在其最大容量下可以减少46.54%的能耗。此外,我们通过将分析模型的结果与实际基础设施的结果进行比较,验证了分析模型的准确性。
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