MLOps MLflow: Installing a MLflow Tracking Server in Docker Containers
Offered By: The Machine Learning Engineer via YouTube
Course Description
Overview
Learn how to install and set up an MLflow Tracking Server using Docker containers with a MariaDB backend storage. This 55-minute tutorial guides you through the process of implementing MLOps practices using MLflow. Explore the step-by-step instructions to containerize your MLflow environment, ensuring efficient experiment tracking and model management. Gain hands-on experience in configuring the MLflow server, integrating it with MariaDB for robust data storage, and leveraging Docker for seamless deployment. Access the accompanying code repository on GitHub to follow along and enhance your MLOps skills.
Syllabus
MlOps MLflow: How to install a Mlflow Tracking Server in docker containers
Taught by
The Machine Learning Engineer
Related Courses
Fundamentals of Containers, Kubernetes, and Red Hat OpenShiftRed Hat via edX Configuration Management for Containerized Delivery
Microsoft via edX Getting Started with Google Kubernetes Engine - Español
Google Cloud via Coursera Getting Started with Google Kubernetes Engine - 日本語版
Google Cloud via Coursera Architecting with Google Kubernetes Engine: Foundations en Español
Google Cloud via Coursera