Performance Verification Mechanism for Adaptive Assessment e-Platform and e-Navigation Application

Chang-Shing Lee, Mei-Hui Wang, Cheng-Hao Huang
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引用次数: 6

Abstract

Adaptive assessment e-platform is being promoted in the world to make teachers understand students’ e-learning performance on the Internet. However, system's load testing for an adaptive assessment is a very important issue during development of such an e-platform. In this paper, we have adopted the genetic fuzzy markup language (GFML) to infer the performance of an adaptive assessment e-platform. Firstly, we collected the data and information of the e-platform loading in two different mechanisms. With the collected data, the proposed CPU usage calculation mechanism is first implemented to acquire the CPU usage information from the screenshot of Ganglia. Next, we used the fuzzy c-means (FCM) clustering mechanism to construct the knowledge base according to the collected data. Then, number of threads, constant timer, MySQL parameter, CPU usage, and testing time of the e-platform were utilized to infer the e-platform load performance. Finally, the genetic learning algorithm was utilized to learn the knowledge and rule base to optimize the proposed approach. From these experimental results, the proposed method is feasible for verifying the performance of an adaptive assessment e-platform. In the future, the adaptive assessment e-platform can be utilized to e-Navigation systems and applications.

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自适应评估电子平台与电子导航应用的性能验证机制
自适应评估电子平台正在国际上推广,以使教师了解学生在互联网上的电子学习表现。然而,在开发电子平台的过程中,系统的负载测试是一个非常重要的问题。在本文中,我们采用遗传模糊标记语言(GFML)来推断自适应评估电子平台的性能。首先,我们收集了两种不同机制下电子平台加载的数据和信息。利用收集到的数据,首先实现所提出的CPU使用率计算机制,从Ganglia的截图中获取CPU使用率信息。接下来,我们利用模糊c均值(FCM)聚类机制,根据收集到的数据构建知识库。然后利用e-platform的线程数、常量计时器、MySQL参数、CPU使用率和测试时间来推断e-platform的负载性能。最后,利用遗传学习算法学习知识和规则库,对所提方法进行优化。实验结果表明,该方法对自适应评估电子平台的性能验证是可行的。在未来,自适应评估电子平台可用于电子导航系统和应用。
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