基于传统机房构建AI实验平台的实践研究

A Practical Study of Building AI Experiment Platform Based on Traditional Computer Room

  • 摘要: 人工智能教学正在融合到各个学科中,其理论教学和实践教学同样重要,并且人工智能的实验教学对实验条件有着特定的复杂要求。该文介绍了基于传统实验室机房进行架构改造、构建人工智能实验教学平台的方法实践和思考。通过充分利用现有的工作站等硬件资源进行软件系统层面的架构实现,充分引入K8s、Docker等开源技术方案,在不影响日常教学活动的前提下创建能够充分提高教学和科研效率的人工智能教学全流程实验环境,优化运行机制和服务模式,实现教学资源的按需定制,提升教学治理水平,为人工智能的实验教学环境建设提供了有益的思路和方法。

     

    Abstract: Artificial intelligence teaching is being integrated into various disciplines, its theoretical and practical teaching are equally important, and the experimental teaching of artificial intelligence has specific and complex requirements for experimental conditions. This paper introduces the practice and reflection on the method of architecture transformation and construction of AI experimental teaching platform based on traditional laboratory rooms. By fully utilizing existing hardware resources such as workstations for software system architecture implementation and thoroughly introducing open-source technology solutions such as Kubernetes (K8s) and Docker, an all-process AI teaching experiment environment that significantly improves teaching and research efficiency can be created based on the work in this paper. This is achieved without impacting regular teaching activities. The approach optimizes operating mechanisms and service models, realizes demand-customized teaching resources, enhances the level of teaching management, and provides beneficial insights and methods for the construction of an experimental teaching environment for artificial intelligence.

     

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