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What are the advantages of AD FS in Azure?

There are several advantages of deploying AD FS in Azure, a few of them are listed below:
  • High Availability - With the power of Azure Availability Sets, you ensure a highly available infrastructure.
  • Easy to Scale – Need more performance? Easily migrate to more powerful machines by just a few clicks in Azure
  • Cross-Geo Redundancy – With Azure Geo Redundancy you can be assured that your infrastructure is highly available across the globe
  • Easy to Manage – With highly simplified management options in Azure portal, managing your infrastructure is very easy and hassle-free

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