@anyscalecompute: Anyscale on Azure is now in public preview, and we're going deep on how it works. Join Daniel Arrizza (Field Engineer, …
Summary
Anyscale on Azure is now in public preview. Daniel Arrizza and Paul Yu will host a working session on building and deploying production AI workloads within an Azure tenant, integrating with existing Azure services.
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Anyscale on Azure is now in public preview, and we’re going deep on how it works. Join Daniel Arrizza (Field Engineer, Anyscale) and Paul Yu (Senior Cloud Advocate, Microsoft) for a working session on running production AI inside your own Azure tenant – where your data stays within your existing governance.
You will learn:
- Where Anyscale on Azure fits in your AI stack
- How it integrates with the Azure services you already use: Microsoft Entra ID, Azure RBAC, Azure Policy, Azure Monitor, and Microsoft Cost Management
- What you need to get started, from your Azure tenant to your first Ray cluster
- Plus a live demo: building, training, and serving a real AI workload on Anyscale in an Azure environment
https://na2.hubs.ly/H061t3b0
Anyscale on Azure: Build and deploy AI at scale in your own tenant
Source: https://www.anyscale.com/events/2026/06/16/anyscale-on-azure?utm_content=442210005&utm_medium=social&utm_source=twitter&hss_channel=tw-1173110913517281280 Anyscale on Azure is now in public preview. Built by the creators of Ray, the most widely adopted AI compute engine, it runs inside your own Azure tenant so your data stays within your existing governance, and it gives teams a production-ready platform to build, train, and serve AI without stitching infrastructure together.
In this session, you’ll learn:
- What Anyscale on Azure is and where it fits in your AI stack
- How it integrates with the Azure services you already use, including Microsoft Entra ID, Azure RBAC, Azure Policy, Azure Monitor, and Microsoft Cost Management
- What you need to get started, from your Azure tenant to your first Ray cluster
- A live demo of building, training, and serving a real AI workload on Anyscale in an Azure environment
Whether you’re a platform engineer, ML engineer, or architect deciding where to run AI on Azure, you’ll leave knowing how Anyscale on Azure works and how to get up and running.
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