Tutorial: Create workspace resources - Azure Machine Learning (2024)

  • Article

In this tutorial, you'll create the resources you need to start working with Azure Machine Learning.

  • A workspace. To use Azure Machine Learning, you'll first need a workspace. The workspace is the central place to view and manage all the artifacts and resources you create.
  • A compute instance. A compute instance is a pre-configured cloud-computing resource that you can use to train, automate, manage, and track machine learning models. A compute instance is the quickest way to start using the Azure Machine Learning SDKs and CLIs. You'll use it to run Jupyter notebooks and Python scripts in the rest of the tutorials.

In this tutorial, you'll create your resources in Azure Machine Learning studio.

Other ways to create a workspace are via the Azure portal or SDK, the CLI, Azure PowerShell, or the Visual Studio Code extension.

For other ways to create a compute instance, see Create a compute instance.

This video shows you how to create a workspace and compute instance in Azure Machine Learning studio. The steps are also described in the sections below.

Prerequisites

  • An Azure account with an active subscription. Create an account for free.

Create the workspace

The workspace is the top-level resource for your machine learning activities, providing a centralized place to view and manage the artifacts you create when you use Azure Machine Learning.

If you already have a workspace, skip this section and continue to Create a compute instance.

If you don't yet have a workspace, create one now:

  1. Sign in to Azure Machine Learning studio

  2. Select Create workspace

  3. Provide the following information to configure your new workspace:

    FieldDescription
    Workspace nameEnter a unique name that identifies your workspace. Names must be unique across the resource group. Use a name that's easy to recall and to differentiate from workspaces created by others. The workspace name is case-insensitive.
    Friendly nameThis name is not restricted by Azure naming rules. You can use spaces and special characters in this name.
    HubA hub allows you to group related workspaces together and share resources. If you have access to a hub, select it here. If you don't have access to a hub, leave this blank.
  4. If you did not select a hub, provide the advanced information. If you selected a hub, these values are taken from the hub.

    FieldDescription
    SubscriptionSelect the Azure subscription that you want to use.
    Resource groupUse an existing resource group in your subscription or enter a name to create a new resource group. A resource group holds related resources for an Azure solution. You need contributor or owner role to use an existing resource group. For more information about access, see Manage access to an Azure Machine Learning workspace.
    RegionSelect the Azure region closest to your users and the data resources to create your workspace.
  5. Select Create to create the workspace

Note

This creates a workspace along with all required resources. If you would like to more customization, use the Azure portal instead. See Create a workspace for more information.

Create a compute instance

You'll use the compute instance to run Jupyter notebooks and Python scripts in the rest of the tutorials. If you don't yet have a compute instance, create one now:

  1. Select your workspace.

  2. On the top right, select New.

  3. Select Compute instance in the list.

    Tutorial: Create workspace resources - Azure Machine Learning (1)

  4. Supply a name.

  5. Keep the default values for the rest of the page.

  6. Select Review + Create.

  7. Select Create.

Quick tour of the studio

The studio is your web portal for Azure Machine Learning. This portal combines no-code and code-first experiences for an inclusive data science platform.

Review the parts of the studio on the left-hand navigation bar:

  • The Authoring section of the studio contains multiple ways to get started in creating machine learning models. You can:

    • Notebooks section allows you to create Jupyter Notebooks, copy sample notebooks, and run notebooks and Python scripts.
    • Automated ML steps you through creating a machine learning model without writing code.
    • Designer gives you a drag-and-drop way to build models using prebuilt components.
  • The Assets section of the studio helps you keep track of the assets you create as you run your jobs. If you have a new workspace, there's nothing in any of these sections yet.

  • The Manage section of the studio lets you create and manage compute and external services you link to your workspace. It's also where you can create and manage a Data labeling project.

Learn from sample notebooks

Use the sample notebooks available in studio to help you learn about how to train and deploy models. They're referenced in many of the other articles and tutorials.

  1. On the left navigation, select Notebooks.
  2. At the top, select Samples.

Tutorial: Create workspace resources - Azure Machine Learning (3)

  • Use notebooks in the SDK v2 folder for examples that show the current version of the SDK, v2.
  • These notebooks are read-only, and are updated periodically.
  • When you open a notebook, select the Clone this notebook button at the top to add your copy of the notebook and any associated files into your own files. A new folder with the notebook is created for you in the Files section.

Create a new notebook

When you clone a notebook from Samples, a copy is added to your files and you can start running or modifying it. Many of the tutorials mirror these sample notebooks.

But you could also create a new, empty notebook, then copy/paste code from a tutorial into the notebook. To do so:

  1. Still in the Notebooks section, select Files to go back to your files,

  2. Select + to add files.

  3. Select Create new file.

    Tutorial: Create workspace resources - Azure Machine Learning (4)

Clean up resources

If you plan to continue now to other tutorials, skip to Next step.

Stop compute instance

If you're not going to use it now, stop the compute instance:

  1. In the studio, on the left menu, select Compute.
  2. In the top tabs, select Compute instances
  3. Select the compute instance in the list.
  4. On the top toolbar, select Stop.

Delete all resources

Important

The resources that you created can be used as prerequisites to other Azure Machine Learning tutorials and how-to articles.

If you don't plan to use any of the resources that you created, delete them so you don't incur any charges:

  1. In the Azure portal, select Resource groups on the far left.

  2. From the list, select the resource group that you created.

  3. Select Delete resource group.

    Tutorial: Create workspace resources - Azure Machine Learning (5)

  4. Enter the resource group name. Then select Delete.

Next step

You now have an Azure Machine Learning workspace, which contains a compute instance to use for your development environment.

Continue on to learn how to use the compute instance to run notebooks and scripts in the Azure Machine Learning cloud.

Quickstart: Get to know Azure Machine Learning

Use your compute instance with the following tutorials to train and deploy a model.

TutorialDescription
Upload, access, and explore your data in Azure Machine LearningStore large data in the cloud and retrieve it from notebooks and scripts
Model development on a cloud workstationStart prototyping and developing machine learning models
Train a model in Azure Machine LearningDive in to the details of training a model
Deploy a model as an online endpointDive in to the details of deploying a model
Create production machine learning pipelinesSplit a complete machine learning task into a multistep workflow.

Want to jump right in? Browse code samples.

Tutorial: Create workspace resources - Azure Machine Learning (2024)
Top Articles
Loans For Flipping Houses: A Guide For Beginners
Bail Bond Pricing | San Diego Bail Bonds Blog
Drury Inn & Suites Bowling Green
Cold Air Intake - High-flow, Roto-mold Tube - TOYOTA TACOMA V6-4.0
What Are Romance Scams and How to Avoid Them
Obor Guide Osrs
Teenbeautyfitness
Sportsman Warehouse Cda
Nwi Police Blotter
Directions To Lubbock
A Fashion Lover's Guide To Copenhagen
Conduent Connect Feps Login
Https://Gw.mybeacon.its.state.nc.us/App
Bjork & Zhulkie Funeral Home Obituaries
Walmart End Table Lamps
"Une héroïne" : les funérailles de Rebecca Cheptegei, athlète olympique immolée par son compagnon | TF1 INFO
Edicts Of The Prime Designate
No Hard Feelings - Stream: Jetzt Film online anschauen
SF bay area cars & trucks "chevrolet 50" - craigslist
Walgreens Tanque Verde And Catalina Hwy
[Cheryll Glotfelty, Harold Fromm] The Ecocriticism(z-lib.org)
Ge-Tracker Bond
Beverage Lyons Funeral Home Obituaries
Globle Answer March 1 2023
Rogue Lineage Uber Titles
Sand Dollar Restaurant Anna Maria Island
Mals Crazy Crab
Sound Of Freedom Showtimes Near Movie Tavern Brookfield Square
TJ Maxx‘s Top 12 Competitors: An Expert Analysis - Marketing Scoop
Log in to your MyChart account
Osrs Important Letter
Shauna's Art Studio Laurel Mississippi
Http://N14.Ultipro.com
Ny Post Front Page Cover Today
Duff Tuff
Tugboat Information
Anya Banerjee Feet
Red Dead Redemption 2 Legendary Fish Locations Guide (“A Fisher of Fish”)
Tillman Funeral Home Tallahassee
Craigslist Tulsa Ok Farm And Garden
Thor Majestic 23A Floor Plan
Scythe Banned Combos
Suntory Yamazaki 18 Jahre | Whisky.de » Zum Online-Shop
26 Best & Fun Things to Do in Saginaw (MI)
Rite Aid | Employee Benefits | Login / Register | Benefits Account Manager
Lebron James Name Soundalikes
Missed Connections Dayton Ohio
Arnold Swansinger Family
Overstock Comenity Login
Lagrone Funeral Chapel & Crematory Obituaries
Ocean County Mugshots
Vt Craiglist
Latest Posts
Article information

Author: Ray Christiansen

Last Updated:

Views: 6042

Rating: 4.9 / 5 (69 voted)

Reviews: 84% of readers found this page helpful

Author information

Name: Ray Christiansen

Birthday: 1998-05-04

Address: Apt. 814 34339 Sauer Islands, Hirtheville, GA 02446-8771

Phone: +337636892828

Job: Lead Hospitality Designer

Hobby: Urban exploration, Tai chi, Lockpicking, Fashion, Gunsmithing, Pottery, Geocaching

Introduction: My name is Ray Christiansen, I am a fair, good, cute, gentle, vast, glamorous, excited person who loves writing and wants to share my knowledge and understanding with you.