This chapter analyzes the complexities of using Kubernetes to manage machine learning workflows, emphasizing its challenges and solutions for stateful operations. It discusses the necessity of environment cloning, experiment tracking, and the importance of foundational Kubernetes knowledge for engineers. The chapter also highlights evolving tools in the Kubernetes ecosystem and the significance of adopting a unified approach to maximize productivity in ML projects.

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