Self-paced Learning in HPC Lab Courses

C. Terboven, Julian Miller, Sandra Wienke, Matthias S. Müller
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Abstract

In a software lab, groups of students develop parallel code using modern tools, document the results and present their solutions. The learning objectives include the foundations of High-Performance Computing (HPC), such as the understanding of modern architectures, the development of parallel programming skills, and coursespecic topics, like accelerator programming or cluster set-up. In order to execute the labs successfully with limited personnel resources and still provide students with access to world-class HPC architectures, we developed a set of concepts to motivate students and to track their progress. This includes the learning status survey and the developer diary, which are presented in this work. We also report on our experiences with using innovative teaching concepts to incentivize students to optimize their codes, such as using competition among the groups. Our concepts enable us to track the eectiveness of our labs and to steer them for increasing sizes of diverse students. We conclude that software labs are eective in adding practical experiences to HPC education. Our approach to hand out open tasks and to leave creative freedom in implementing the solutions enables the students to self-pace their learning process and to vary their investment of eort during the semester. Our eort and progress tracking ensures the achieving of the extensive learning objectives and enables our research on HPC programming productivity.
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在HPC实验课程中自主学习
在软件实验室里,一组学生使用现代工具开发并行代码,记录结果并展示他们的解决方案。学习目标包括高性能计算(HPC)的基础知识,如对现代架构的理解,并行编程技能的发展,以及课程特定主题,如加速器编程或集群设置。为了在有限的人力资源下成功地执行实验,并仍然为学生提供世界一流的高性能计算架构,我们开发了一套概念来激励学生并跟踪他们的进度。这包括学习状况调查和开发人员日记,这是在本工作中提出的。我们还报告了我们使用创新教学理念来激励学生优化代码的经验,例如在小组之间进行竞争。我们的理念使我们能够跟踪我们的实验室的有效性,并引导他们为不同的学生增加规模。我们的结论是,软件实验室在为HPC教育增加实践经验方面是有效的。我们的方法是分发开放式任务,并在实施解决方案时留下创造性的自由,使学生能够自我调整学习过程,并在学期中改变他们的努力投入。我们的报告和进度跟踪确保了广泛学习目标的实现,并使我们的HPC编程生产力研究成为可能。
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