Deploying AI Frameworks on Secure HPC Systems with Containers.

D. Brayford, S. Vallecorsa, Atanas Z. Atanasov, F. Baruffa, Walter Riviera
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引用次数: 17

Abstract

The increasing interest in the usage of Artificial Intelligence (AI) techniques from the research community and industry to tackle “real world” problems, requires High Performance Computing (HPC) resources to efficiently compute and scale complex algorithms across thousands of nodes. Unfortunately, typical data scientists are not familiar with the unique requirements and characteristics of HPC environments. They usually develop their applications with high level scripting languages or frameworks such as TensorFlow and the installation processes often require connection to external systems to download open source software during the build. HPC environments, on the other hand, are often based on closed source applications that incorporate parallel and distributed computing API’s such as MPI and OpenMP, while users have restricted administrator privileges, and face security restrictions such as not allowing access to external systems. In this paper we discuss the issues associated with the deployment of AI frameworks in a secure HPC environment and how we successfully deploy AI frameworks on SuperMUC-NG with Charliecloud.
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在带有容器的安全HPC系统上部署AI框架。
研究界和工业界对使用人工智能(AI)技术来解决“现实世界”问题的兴趣日益浓厚,这需要高性能计算(HPC)资源来高效地计算和扩展跨越数千个节点的复杂算法。不幸的是,典型的数据科学家并不熟悉HPC环境的独特需求和特征。他们通常使用高级脚本语言或框架(如TensorFlow)开发应用程序,并且安装过程通常需要连接到外部系统以在构建期间下载开源软件。另一方面,HPC环境通常基于封闭源应用程序,这些应用程序结合了并行和分布式计算API(如MPI和OpenMP),而用户具有受限的管理员权限,并且面临不允许访问外部系统等安全限制。在本文中,我们讨论了在安全的高性能计算环境中部署AI框架的相关问题,以及我们如何通过charlicloud在supermu - ng上成功部署AI框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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