This learning path is designed for data scientists and ML engineers looking to bridge the gap between machine learning prototypes and production-ready systems on Google Cloud. Learners will explore the full MLOps lifecycle, including feature management with Vertex AI Feature Store, robust model evaluation for predictive and generative AI, and the orchestration of automated workflows. The path concludes with advanced training on building production-grade pipelines using the Kubeflow SDK, Google Cloud components, and AI-driven development with the Data Science Agent.
Applied Learning Project
Learners will apply skills through hands-on labs, including creating a Vertex AI Feature Store for streaming data and authoring custom ML pipelines using the Kubeflow SDK. These projects require learners to solve authentic operational bottlenecks by automating model deployment, monitoring lineage, and integrating AI-driven agents to accelerate development cycles.
















