Course Overview
TOPSecure AI solutions in the cloud by configuring AI workloads, applying cloud-native protections, and reinforcing security outcomes with identity controls. Learn how AI workloads authenticate, how trust boundaries are established, and how security posture and workload protection reduce risk using Microsoft Defender for Cloud and Microsoft Foundry. Extend these protections by using Microsoft Entra to design and apply identity and access controls that explain and harden earlier security decisions.
Scheduled Classes
TOPOutline
TOPModule 1: Protect Microsoft Foundry solutions by using Microsoft Defender for Cloud
- Understand how Microsoft Defender for Cloud supports AI security and governance in Azure
- Protect AI workloads with Microsoft Defender for Cloud
- Configure and manage guardrails in Microsoft Foundry
- Secure Microsoft Foundry environments
Module 2:Secure AI identity infrastructure with Microsoft Entra
- Understand identity architecture for AI workloads
- Implement access management for Azure resources
- Plan, implement, and administer Conditional Access
- Manage Microsoft Entra Identity Protection
Prerequisites
TOPLearners should have:
- Familiarity with Microsoft Azure and cloud-native security concepts, including workload protection and security posture management.
- Basic understanding of identity and access management concepts, such as authentication and authorization principles.
Experience or exposure to securing cloud workloads, especially in Azure environments.
Who Should Attend
TOPThis course is intended for professionals responsible for securing and operating AI workloads in the cloud. The audience includes cloud security engineers, platform engineers, and application teams working with AI services who need to understand how workload protection, security posture, and identity controls apply to AI environments. Familiarity with Azure, cloud-native security concepts, and basic identity and access principles is recommended.