Introduction to MLflow on Azure Databricks
DS and AI Practice Team This session is offered as a scheduled group session with our expert.


What to expect
In this session, you’ll learn more about MLflow, the open-source platform for the complete management of machine learning life cycle.
Tracking
Models and Projects
Model Registry
Model Serving
Learn how to track machine learning training runs using MLflow.
Find out what an MLflow model is, the different models that MLflow supports, and how to run an MLflow project on Databricks.
Learn how MLflow Model Registry is used to manage the full life cycle of an MLflow model.
Learn how to make an MLflow model accessible to a large user base.
Tracking
Models and Projects
Learn how to track machine learning training runs using MLflow.
Find out what an MLflow model is, the different models that MLflow supports, and how to run an MLflow project on Databricks.
Model Registry
Model Serving
Learn how MLflow Model Registry is used to manage the full life cycle of an MLflow model.
Learn how to make an MLflow model accessible to a large user base.
Tracking
Learn how to track machine learning training runs using MLflow.
Models and Projects
Find out what an MLflow model is, the different models that MLflow supports, and how to run an MLflow project on Databricks.
Model Registry
Learn how MLflow Model Registry is used to manage the full life cycle of an MLflow model.
Model Serving
Learn how to make an MLflow model accessible to a large user base.


About Our Speaker
Ernest Kuśmierz is an accomplished professional with a wealth of expertise in various areas, including DevOps, infrastructure, cloud, and MLOps. With a strong background in these domains, Ernest is highly skilled in the responsible and efficient operationalization of machine learning projects.