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Table Of Contents
Hands-On MLOps on Azure
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This chapter builds upon the concepts introduced in Chapter 2, focusing on automating the machine learning (ML) lifecycle for robust and efficient model development and deployments. Reproducibility and reusability are fundamental principles in ML to ensure the reliability and efficiency of your projects. Reproducibility allows you to recreate the same results consistently, which is essential for verifying experiments and building trust in your models. Reusability enables you to leverage existing components and workflows, saving time and resources while maintaining consistency across different projects.
This chapter delves into strategies for automating a typical ML workflow, with a strong emphasis on enhancing debuggability, reproducibility, and reusability. Key topics include an exploration of the importance of reproducibility and reusability within the ML lifecycle and how they contribute to robust and scalable solutions. The chapter also covers...
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