Microsoft Foundry Skill
This skill helps developers work with Microsoft Foundry resources, covering model discovery and deployment, RAG (Retrieval-Augmented Generation) applications, AI agent creation, evaluation workflows, and troubleshooting.
Sub-Skills
This skill includes specialized sub-skills for specific workflows. Use these instead of the main skill when they match your task:
Sub-Skill When to Use Reference
project/create Creating a new Azure AI Foundry project for hosting agents and models. Use when onboarding to Foundry or setting up new infrastructure. project/create/create-foundry-project.md
resource/create Creating Azure AI Services multi-service resource (Foundry resource) using Azure CLI. Use when manually provisioning AI Services resources with granular control. resource/create/create-foundry-resource.md
models/deploy-model Unified model deployment with intelligent routing. Handles quick preset deployments, fully customized deployments (version/SKU/capacity/RAI), and capacity discovery across regions. Routes to sub-skills: preset (quick deploy), customize (full control), capacity (find availability). models/deploy-model/SKILL.md
agent/create/agent-framework Creating AI agents and workflows using Microsoft Agent Framework SDK. Supports single-agent and multi-agent workflow patterns with HTTP server and F5/debug support. agent/create/agent-framework/SKILL.md
quota Managing quotas and capacity for Microsoft Foundry resources. Use when checking quota usage, troubleshooting deployment failures due to insufficient quota, requesting quota increases, or planning capacity. quota/quota.md
rbac Managing RBAC permissions, role assignments, managed identities, and service principals for Microsoft Foundry resources. Use for access control, auditing permissions, and CI/CD setup. rbac/rbac.md
💡 Tip: For a complete onboarding flow: project/create → agent/create → agent/deploy . If the user wants to create AND deploy an agent, start with agent/create which can optionally invoke agent/deploy automatically.
💡 Model Deployment: Use models/deploy-model for all deployment scenarios — it intelligently routes between quick preset deployment, customized deployment with full control, and capacity discovery across regions.
SDK Quick Reference
- Python