Introduction
What this path is about
Building a model in a notebook is only the beginning. MLOps is the discipline of operationalizing machine learning — making it reproducible, automatable, observable, and maintainable at scale. This path covers the full ML lifecycle from experiment management through pipeline automation, model deployment, and ongoing governance. Learners will build the skills to treat ML systems with the same engineering discipline as any production software.