Introduction to Azure Machine Learning
Where Azure ML fits in the modern ML lifecycle, its common use cases and user workflows.
Azure Machine Learning (Azure ML) is Microsoft's enterprise machine learning platform. It is a managed service that handles the heavy lifting involved in configuring and running machine learning workflows at scale, allowing organizations to focus on solving business problems rather than building infrastructure from scratch.
Sign in to read this course
A free account unlocks all 514 courses. 20 are readable without one.
What's inside
5 sections- 1 Table of Contents
- 2 Module 1 — Azure ML in the Modern ML Lifecycle
- 3 Module 2 — Common Use Cases for Azure ML
- 4 Module 3 — Azure ML Users and Their Workflows
- 5 Quick Reference — Key Concepts
More ML Platforms & Deployment courses
View all 10Azure ML Workspace Fundamentals
Azure ML workspace architecture, compute, datasets, environments, governance, security and cost.
Azure ML Studio and SDK – Overview
Navigate Azure ML Studio, notebooks, the Python SDK v2 and CLI v2 with a first end-to-end job.
Azure ML: Pipelines and Experiment Tracking
Build Azure ML pipelines, track experiments with MLflow and register and version the best model.
Azure ML: Practical Use Cases
Choose the right technique and run classification, clustering and batch inference with AutoML and the Designer.
Deploying Models with Azure Machine Learning
Online and batch endpoints, scoring scripts, blue/green deployment, AKS and model monitoring on Azure ML.
Deploying Machine Learning Solutions
Deploy models with Flask, on serverless, on Google AI Platform and to AWS SageMaker.
Interested in this course?
Contact us to book it or get a custom training plan for your team.