Train models in Azure Machine Learning with the CLI (v2)

Go to class
Write Review

Free Online Course: Train models in Azure Machine Learning with the CLI (v2) provided by Microsoft Learn is a comprehensive online course, which lasts for 2-3 hours worth of material. The course is taught in English and is free of charge.

Overview
    • Module 1: Create Azure Machine Learning resources with the CLI (v2)
    • In this module, you'll learn how to:

      • Install the Azure CLI and the Azure Machine Learning extension.
      • Create an Azure Machine Learning workspace.
      • Manage assets in the Azure Machine Learning workspace.
    • Module 2: Run jobs in Azure Machine Learning with CLI (v2)
    • In this module, you'll learn how to:

      • Train a model with a Python script using the CLI (v2).
      • Perform hyperparameter tuning with the CLI (v2).
    • Module 3: Use MLflow with Azure Machine Learning jobs submitted with CLI (v2)
    • In this module, you'll learn how to:

      • Automatically track model metrics with MLflow when using common machine learning libraries.
      • Track custom metrics with MLflow.
      • Use MLflow model assets to register a model in the Azure Machine Learning workspace.
    • Module 4: Deploy an Azure Machine Learning model to a managed endpoint with CLI (v2)
    • In this module, you'll learn how to:

      • Understand managed online endpoints.
      • Understand how to use managed endpoint with blue/green deployments.
      • Deploy a MLflow model to a managed online endpoint.

Syllabus
    • Module 1: Create Azure Machine Learning resources with the CLI (v2)
      • Introduction
      • Use the Azure CLI (v2) with Azure Machine Learning
      • Create an Azure Machine Learning workspace with CLI (v2)
      • Manage workspace assets with CLI (v2)
      • Exercise: Create an Azure Machine Learning workspace
      • Knowledge check
      • Summary
    • Module 2: Run jobs in Azure Machine Learning with CLI (v2)
      • Introduction
      • Run a Python script as a training job with CLI (v2)
      • Exercise: Create a basic training job
      • Run a hyperparameter tuning job with CLI (v2)
      • Exercise: Run a sweep job
      • Knowledge check
      • Summary
    • Module 3: Use MLflow with Azure Machine Learning jobs submitted with CLI (v2)
      • Introduction
      • Track and view model metrics with MLflow
      • Manage models with MLflow
      • Exercise: Train and track model with MLflow
      • Knowledge check
      • Summary
    • Module 4: Deploy an Azure Machine Learning model to a managed endpoint with CLI (v2)
      • Introduction
      • Explore managed online endpoints
      • Deploy your model to a managed endpoint
      • Exercise: Deploy your model with CLI (v2)
      • Knowledge check
      • Summary