Overview
Explore the integration of Docker environments with MLflow Projects in this 27-minute video tutorial. Learn how to leverage containerized environments for your machine learning components while utilizing Databricks as an artifact repository and tracking server. Gain hands-on experience in implementing MLOps practices with MLflow, focusing on the use of Docker for reproducible and portable machine learning workflows. Access the accompanying code repository on GitHub to follow along and apply the concepts demonstrated in the video. Enhance your data science and machine learning skills by mastering the combination of MLflow Projects and Docker for more efficient and scalable MLOps pipelines.
Syllabus
MLOps MLFlow: MLFlow Projects : Dockerized Environments in MLflow #datascience #machinelearning
Taught by
The Machine Learning Engineer