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Deployment of Containerized Deep Learning Applications in the Cloud

机译:在云中部署集装箱深度学习应用程序

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摘要

During the last years, the use of Cloud computing environment has increased as a result of the various services offered by Cloud providers (Amazon Web Services, Google Cloud, Microsoft Azure, etc.). Many companies are moving their data and applications to the Cloud in order to tackle the complex configuration effort, for having more flexibility, maintenance, and resource availability. However, it is important to mention the challenges that developers may face when using a Cloud solution such as the variation of applications requirements (in terms of computation, memory and energy consumption) over time, which makes the deployment and migration a hard process. In fact, the deployment will not depend only on the application, but it will also rely on the related services and hardware for the proper functioning of the application. In this paper, we propose a Cloud infrastructure for automatic deployment of applications using the services of Kubernetes, Docker, Ansible and Slurm. Our architecture includes a script to deploy the application depending of its requirement needs. Experiments are conducted with the analysis and the deployment of Deep Learning (DL) applications and more particularly images classification and object localization.
机译:在过去几年中,由于云提供商提供的各种服务(亚马逊Web服务,Google云,Microsoft Azure等),使用云计算环境的使用增加。许多公司正在将他们的数据和应用程序移动到云中,以解决复杂的配置工作,具有更多的灵活性,维护和资源可用性。但是,重要的是要提及开发人员可能在使用云解决方案时可能面临的挑战,例如应用程序要求的变化(在计算,内存和能量消耗方面)随着时间的推移,这使得部署和迁移是一个艰难的过程。实际上,部署将不依赖于应用程序,但它也将依赖于相关服务和硬件进行应用程序的正常运行。在本文中,我们提出了一种云基础架构,用于使用Kubernetes,Docker,Ansible和Slurm的服务自动部署应用程序。我们的体系结构包括一个脚本,可以根据其要求部署应用程序。通过分析和部署深度学习(DL)应用程序进行实验,更具体地是图像分类和对象本地化。

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