Teaching Accelerated Computing and Deep Learning at a Large-Scale with the NVIDIA Deep Learning Institute

Bálint Gyires-Tóth, Işıl Öz, Joe Bungo
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Abstract

Researchers and developers in a variety of fields have benefited from the massively parallel processing paradigm. Numerous tasks are facilitated by the use of accelerated computing, such as graphics, simulations, visualisations, cryptography, data science, and machine learning. Over the past years, machine learning and in particular deep learning have received much attention. The development of such solutions requires a different level of expertise and insight than that required for traditional software engineering. Therefore, there is a need for novel approaches to teaching people about these topics. This paper outlines the primary challenges of accelerated computing and deep learning education, discusses the methodology and content of the NVIDIA Deep Learning Institute, presents the results of a quantitative survey conducted after full-day workshops, and demonstrates a sample adoption of DLI teaching kits for teaching heterogeneous parallel computing.
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与NVIDIA深度学习研究所一起大规模教授加速计算和深度学习
各个领域的研究人员和开发人员都从大规模并行处理范式中受益。许多任务都是通过使用加速计算来实现的,比如图形、模拟、可视化、密码学、数据科学和机器学习。在过去的几年里,机器学习,特别是深度学习受到了广泛的关注。与传统软件工程相比,开发这样的解决方案需要不同层次的专业知识和洞察力。因此,我们需要一种新颖的方法来教授人们这些话题。本文概述了加速计算和深度学习教育的主要挑战,讨论了NVIDIA深度学习研究所的方法和内容,介绍了全天研讨会后进行的定量调查的结果,并展示了采用DLI教学工具包进行异构并行计算教学的样本。
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