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AVD Accelerator deployment automation to simplify the setup of AVD (Azure Virtual Desktop) based on best practices

License: MIT License

PowerShell 1.63% HCL 1.73% Bicep 96.63%

avdaccelerator's Introduction

Welcome to the Azure Virtual Desktop (AVD) Landing Zone Accelerator

Average time to resolve an issue Percentage of issues still open

Overview

Enterprise-scale is an architectural approach and a reference implementation that enables effective construction and operation of landing zones on Azure, at scale. This approach aligns with the Azure roadmap and the Cloud Adoption Framework for Azure.

AVD Landing Zone Accelerator represents the strategic design path and target technical state for AVD deployment. This solution provides an architectural approach and reference implementation to prepare landing zone subscriptions for a scalable AVD deployment. For the architectural guidance, check out Enterprise-scale for AVD in Microsoft Docs.

The AVD Landing Zone Accelerator only addresses what gets deployed in the specific AVD landing zone subscriptions, highlighted by the red boxes in the architectural diagram below. It is assumed that an appropriate platform foundation is already setup which may or may not be the official ALZ platform foundation. This means that policies and governance should already be in place or should be set up after this implementation and are not a part of the scope this program. The policies applied to management groups in the hierarchy above the subscription will trickle down to the Enterprise-scale for AVD landing zone subscriptions.

This Repository

This repository will contain various customer scenarios that can help accelerate the development and deployment of AVD that conforms with Enterprise-Scale for AVD best practices and guidelines. Each scenario aims to represent common customer experiences with the goal of accelerating the process of developing and deploying conforming AVD using IaaC. Each scenario will eventually have an ARM, Bicep, PowerShell and CLI version to choose from. As of today, we have a first reference implementation scenario that is one of the most common ones used by Enterprise customers and partners and it can be used to deploy an AVD workload. We will continue to add new scenarios in future updates.

Getting Started

AVD Accelerator Baseline

Getting Started deploying Azure Virtual Desktop (AVD) resources and dependent services for establishing the baseline

  • AVD resources: workspace, two (2) application groups, scaling plan and a host pool
  • [Optional]: new virtual network (VNet) with NSGs, ASG and route tables
  • Azure Files with Integration to the identity service
  • Key vault
  • Session Hosts
Deployment Type Link
Azure portal UI Deploy to Azure Deploy to Azure Gov
Command line (Bicep/ARM) Powershell/Azure CLI
Terraform Terraform

Brownfield deployments deploy new features to existing AVD deployments.

Optional: Custom Image Build

Getting Started deploying a custom image based on the latest version of the Azure marketplace image to an Azure Compute Gallery. The following images are offered:

  • Windows 10 21H2
  • Windows 10 22H2 (Gen 2)
  • Windows 11 21H2 (Gen 2)
  • Windows 11 22H2 (Gen 2)
  • Windows 10 21H2 with O365
  • Windows 10 22H2 with O365 (Gen 2)
  • Windows 11 21H2 with O365 (Gen 2)
  • Windows 11 22H2 with O365 (Gen 2)

You can also select to enable the Trusted Launch or Confidential VM security type feature on the Azure Compute Gallery image definition.

Custom image is optimized using Virtual Desktop Optimization Tool (VDOT) and patched with the latest Windows updates.

Deployment Type Link
Azure portal UI Deploy to Azure Deploy to Azure Gov
Command line (Bicep/ARM) Powershell/Azure CLI
Terraform Terraform

Architectural Diagram

AVD accelerator diagram

Download a Visio file of this architecture.

Contributing

This project welcomes contributions and suggestions. Most contributions require you to agree to a Contributor License Agreement (CLA) declaring that you have the right to, and actually do, grant us the rights to use your contribution. For details, visit https://cla.opensource.microsoft.com.

When you submit a pull request, a CLA bot will automatically determine whether you need to provide a CLA and decorate the PR appropriately (e.g., status check, comment). Simply follow the instructions provided by the bot. You will only need to do this once across all repos using our CLA.

This project has adopted the Microsoft Open Source Code of Conduct. For more information see the Code of Conduct FAQ or contact [email protected] with any additional questions or comments.

Trademarks

This project may contain trademarks or logos for projects, products, or services. Authorized use of Microsoft trademarks or logos is subject to and must follow Microsoft's Trademark & Brand Guidelines. Use of Microsoft trademarks or logos in modified versions of this project must not cause confusion or imply Microsoft sponsorship. Any use of third-party trademarks or logos are subject to those third-party's policies.

Reporting issues

Microsoft Support is not yet handling issues for any published tools in this repository. However, we would like to welcome you to open issues using GitHub issues to collaborate and improve these tools.

avdaccelerator's People

Contributors

danycontre avatar jamasten avatar nataliakon avatar jensheerin avatar moisesjgomez avatar wahidsaleemi avatar kmdfaizal avatar xelizondo avatar whitscripts avatar shawntmeyer avatar mofaizal avatar microsoftopensource avatar svenaelterman avatar anlucen avatar lenvolk avatar jtracey93 avatar christiankuhtz avatar aaronparker avatar willymoselhy avatar prasad3017 avatar edm-ms avatar swathibhat1 avatar benmartinbaur avatar bryanla avatar florian-ried avatar pauldotyu avatar ckuhtz avatar microsoft-github-operations[bot] avatar rickvdboor avatar roarrioj avatar

Watchers

Marco Janse avatar

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