Essentials of MLOps with Azure: 2 Databricks MLflow and MLflow Tracking
20mAdvanced2022-09-08
Authors
Noah Gift
MLOps Expert | Solopreneur | Author | Adjunct Professor | CTO
Course details
This series of courses introduces you to the essentials of MLOps, the application of software engineering/devops principles to the development of machine learning applications. In this course, MLOps expert Noah Gift introduces you to the basics of tracking, gives you details on why you need to track your models in production, and shows you some telemetry. Noah gets you started with MLflow and MLflow Tracking, open-source MLflow implementation, uploading DBFS to AutoML, and end-to-end ML with Databricks and MLflow. He dives into how to ingest tables, quick start ML, attach a notebook, inspect experiments UI, and hyperparameter tune. Noah shows you how to obtain and get started using MLflow, interact with the UI, and check out the projects. After demonstrating how to configure an AutoML experiment, he finishes up with an end-to-end MLOps model workflow.
Skills covered
Apache SparkApacheMachine LearningData EngineeringAzureNetwork AdministrationCloud PlatformsEssential TrainingArtificial Intelligence (AI)Network and System AdministrationCloud ComputingData ScienceMicrosoft
Concepts
Databricks MLflow and MLflow Tracking
- Essentials of MLOps with Azure
- Getting started with MLflow and MLflow Tracking
- Open source MLflow
- Upload DBFS to AutoML
- End-to-end ML with Databricks and MLflow
Related courses
- Essentials of MLOps with Azure: 4 Spark MLflow Models and Model Registry
- Essentials of MLOps with Azure: 3 Spark MLflow Projects on Databricks
- Essentials of MLOps with Azure: 1 Introduction
- MLOps Essentials: Model Development and Integration
- MLOps Essentials: Model Deployment and Monitoring
- MLOps Essentials: Monitoring Model Drift and Bias
- Complete Guide to Python Fundamentals for MLOps
- Google Cloud Platform for Machine Learning Essential Training
Related learn paths
- Explore AI for Data Engineering
- MLOps Essentials for Developers and AI Engineers: Tools, Pipelines, Security
- Become an AI Engineer
- Develop Your AI Skills with Google Gemini and Google Cloud Platform
- Working with Data: Engineering, Integration, and MLOps for AI
- Building AI Products: Architecture and Orchestration Professional Certificate by LinkedIn Learning
- Develop Your Rust Skills for Data Engineering
- Navigating the AI Ecosystem