YoVDO

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

Offered By: Microsoft via Microsoft Learn

Tags

Microsoft Azure Courses Machine Learning Courses Python Courses Azure Machine Learning Courses Model Deployment Courses Hyperparameter Tuning Courses Model Training Courses MLFlow Courses

Course Description

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

Tags

Related Courses

Predicción del fraude bancario con autoML y Pycaret
Coursera Project Network via Coursera
Clasificación de datos de Satélites con autoML y Pycaret
Coursera Project Network via Coursera
Regresión (ML) en la vida real con PyCaret
Coursera Project Network via Coursera
ML Pipelines on Google Cloud
Google Cloud via Coursera
ML Pipelines on Google Cloud
Pluralsight