- Course
Managing Models Using MLflow on Databricks
This course will teach you how to track, register, govern, and deploy machine learning models in Databricks using MLflow, Unity Catalog, and Mosaic AI Model Serving, enabling you to manage the full ML lifecycle from experimentation to production.
- Course
Managing Models Using MLflow on Databricks
This course will teach you how to track, register, govern, and deploy machine learning models in Databricks using MLflow, Unity Catalog, and Mosaic AI Model Serving, enabling you to manage the full ML lifecycle from experimentation to production.
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This course is included in the libraries shown below:
- AI
What you'll learn
Managing machine learning models in production requires more than training accurate algorithms. In this course, Managing Models Using MLflow on Databricks, you’ll gain the ability to manage end-to-end MLOps workflows using MLflow and Databricks. First, you’ll explore how to configure MLflow Tracking, log experiments and model runs, and register models using Unity Catalog. Next, you’ll discover how to manage model versions, apply governance and metadata, automate lifecycle workflows, and validate models using MLflow and Databricks APIs. Finally, you’ll learn how to deploy models using Mosaic AI Model Serving, manage serving endpoints, score models through REST APIs, and monitor deployed models in production. When you’re finished with this course, you’ll have the skills and knowledge needed to manage the complete machine learning lifecycle in Databricks using modern MLflow-based MLOps practices.