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Book Overview & Buying
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Table Of Contents
Hands-On MLOps on Azure
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Machine learning pipelines are the backbone of efficient, reproducible, and scalable ML workflows. In this chapter, we’ll dive deep into the world of ML pipelines, exploring how they can be implemented across multiple cloud platforms to create robust, end-to-end solutions. We’ll build upon the concepts of components and pipelines introduced in Chapter 3, taking them to the next level with real-world applications and advanced CI/CD strategies.
In Chapter 3, we introduced the concepts of components and pipelines to build machine learning workflows, along with a few practical examples. In this chapter, we will expand on those foundations by demonstrating how to construct an end-to-end workflow that begins with data ingestion and transformation and progresses through to model deployment. We will also explore scenarios where AML pipelines may need to be complemented with GitHub Actions to enable robust...
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