-
Book Overview & Buying
-
Table Of Contents
Hands-On MLOps on Azure
By :
MLOps extends the core principles of DevOps to machine learning projects, addressing the unique challenges posed by data dependencies, model versioning, and the need for continuous monitoring and retraining. By adopting MLOps practices, organizations can streamline their machine learning workflows, improve collaboration between data scientists and operations teams, and ensure reliable and efficient deployment of models in production environments.
In this chapter, we will explore three distinct case studies that illustrate how MLOps strategies can solve various real-world problems. To showcase the strengths of different cloud providers, each case study will focus on a unique cloud platform. This offers valuable insights into the offerings of the major cloud providers, highlighting their capabilities in supporting MLOps pipelines.
In this chapter, we will be covering the following main topics:
Change the font size
Change margin width
Change background colour