Towards Automation for MLOps: An Exploratory Study of Bot Usage in Deep Learning Libraries

A. Rahman, Farzana Ahamed Bhuiyan, M. M. Hassan, H. Shahriar, Fan Wu
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引用次数: 1

Abstract

Machine learning (ML) operations or MLOps advo-cates for integration of DevOps- related practices into the ML development and deployment process. Adoption of MLOps can be hampered due to a lack of knowledge related to how development tasks can be automated. A characterization of bot usage in ML projects can help practitioners on the types of tasks that can be automated with bots, and apply that knowledge into their ML development and deployment process. To that end, we conduct a preliminary empirical study with 135 issues reported mined from 3 libraries related to deep learning: Keras, PyTorch, and Tensorflow. From our empirical study we observe 9 categories of tasks that are automated with bots. We conclude our work-in-progress paper by providing a list of lessons that we learned from our empirical study.
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迈向MLOps的自动化:深度学习库中Bot使用的探索性研究
机器学习(ML)操作或MLOps提倡将与DevOps相关的实践集成到ML开发和部署过程中。由于缺乏与如何自动化开发任务相关的知识,mlop的采用可能会受到阻碍。对机器学习项目中机器人使用情况的描述可以帮助从业者了解机器人可以自动化的任务类型,并将这些知识应用到机器学习开发和部署过程中。为此,我们对从3个与深度学习相关的库(Keras、PyTorch和Tensorflow)中挖掘的135个问题进行了初步的实证研究。从我们的实证研究中,我们观察到机器人自动化的9类任务。我们通过提供我们从实证研究中学到的经验教训清单来结束我们正在进行的论文。
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