2022
DOI: 10.26907/1562-5419-2022-25-2-177-196
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Analysis and Development of the MLOps Pipeline for ML Model Deployment

Abstract: The growth in the number of IT products with machine-learning features is increasing the relevance of automating machine-learning processes. The use of MLOps techniques is aimed at providing training and efficient deployment of applications in a production environment by automating side infrastructure issues that are not directly related to model development. In this paper, we review the components, principles, and approaches of MLOps and analyze existing platforms and solutions for building machine lear… Show more

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