> agent-framework
Create AI agents and workflows using Microsoft Agent Framework SDK. Supports single-agent and multi-agent workflow patterns. USE FOR: create agent, build agent, scaffold agent, new agent, agent framework, workflow pattern, multi-agent, MCP tools, create workflow. DO NOT USE FOR: deploying agents (use agent/deploy), evaluating agents (use agent/evaluate), Azure AI Foundry agents without Agent Framework SDK.
curl "https://skillshub.wtf/microsoft/skills/agent-framework?format=md"Create Agent with Microsoft Agent Framework
Build AI agents, agentic apps, and multi-agent workflows using Microsoft Agent Framework SDK.
Quick Reference
| Property | Value |
|---|---|
| SDK | Microsoft Agent Framework (Python) |
| Patterns | Single Agent, Multi-Agent Workflow |
| Server | Azure AI Agent Server SDK (HTTP) |
| Debug | AI Toolkit Agent Inspector + VSCode |
| Best For | Enterprise agents with type safety, checkpointing, orchestration |
When to Use This Skill
Use when the user wants to:
- Create a new AI agent or agentic application
- Scaffold an agent with tools (MCP, function calling)
- Build multi-agent workflows with orchestration patterns
- Add HTTP server mode to an existing agent
- Configure F5/debug support for VSCode
Defaults
- Language: Python
- SDK: Microsoft Agent Framework (pin version
1.0.0b260107) - Server: HTTP via Azure AI Agent Server SDK
- Environment: Virtual environment (create or detect existing)
References
| Topic | File | Description |
|---|---|---|
| Server Pattern | references/agent-as-server.md | HTTP server wrapping (production) |
| Debug Setup | references/debug-setup.md | VS Code configs for Agent Inspector |
| Agent Samples | references/agent-samples.md | Single agent, tools, MCP, threads |
| Workflow Basics | references/workflow-basics.md | Executor types, handler signatures, edges, WorkflowBuilder — start here for any workflow |
| Workflow Agents | references/workflow-agents.md | Agents as executor nodes, linear pipeline, run_stream event consumption |
| Workflow Foundry | references/workflow-foundry.md | Foundry agents with bidirectional edges, loop control, register_executor factories |
💡 Tip: For advanced patterns (Reflection, Switch-Case, Fan-out/Fan-in, Loop, Human-in-Loop), search
microsoft/agent-frameworkon GitHub.
MCP Tools
This skill delegates to microsoft-foundry MCP tools for model and project operations:
| Tool | Purpose |
|---|---|
foundry_models_list | Browse model catalog for selection |
foundry_models_deployments_list | List deployed models for selection |
foundry_resource_get | Get project endpoint |
Creation Workflow
- Gather context (read agent-as-server.md + debug-setup.md + code samples)
- Select model & configure environment
- Implement agent/workflow code + HTTP server mode +
.vscode/configs - Install dependencies (venv + requirements.txt)
- Verify startup (Run-Fix loop)
- Documentation
Step 1: Gather Context
Read reference files based on user's request:
Always read these references:
- Server pattern: agent-as-server.md (required — HTTP server is the default)
- Debug setup: debug-setup.md (required — always generate
.vscode/configs)
Read the relevant code sample:
- Code samples: agent-samples.md, workflow-basics.md, workflow-agents.md, or workflow-foundry.md
Model Selection: Use microsoft-foundry skill's model catalog to help user select and deploy a model.
Recommended: Search microsoft/agent-framework on GitHub for advanced patterns.
Step 2: Select Model & Configure Environment
Decide on the model BEFORE coding.
If user hasn't specified a model, use microsoft-foundry skill to list deployed models or help deploy one.
ALWAYS create/update .env file:
FOUNDRY_PROJECT_ENDPOINT=<project-endpoint>
FOUNDRY_MODEL_DEPLOYMENT_NAME=<model-deployment-name>
- Standard flow: Populate with real values from user's Foundry project
- Deferred Config: Use placeholders, remind user to update before running
Step 3: Implement Code
All three are required by default:
- Agent/Workflow code: Use gathered context to structure the agent or workflow
- HTTP Server mode: Wrap with Agent-as-Server pattern from
agent-as-server.md— this is the default entry point - Debug configs: Generate
.vscode/launch.jsonand.vscode/tasks.jsonusing templates fromdebug-setup.md
⚠️ Warning: Only skip server mode or debug configs if the user explicitly requests a "minimal" or "no server" setup.
Step 4: Install Dependencies
- Generate/update
requirements.txt
# pin version to avoid breaking changes
# agent framework
agent-framework-azure-ai==1.0.0b260107
agent-framework-core==1.0.0b260107
# agent server (for HTTP server mode)
azure-ai-agentserver-core==1.0.0b10
azure-ai-agentserver-agentframework==1.0.0b10
# debugging support
debugpy
agent-dev-cli
- Use a virtual environment to avoid polluting the global Python installation
⚠️ Warning: Never use bare
pythonorpip— always use the venv-activated versions or full paths (e.g.,.venv/bin/pip).
Step 5: Verify Startup (Run-Fix Loop)
Enter a run-fix loop until no startup errors:
- Run the main entrypoint using the venv's Python (e.g.,
.venv/Scripts/python main.pyon Windows,.venv/bin/python main.pyon macOS/Linux) - If startup fails: Fix error → Rerun
- If startup succeeds: Stop server immediately
Guardrails:
- ✅ Perform real run to catch startup errors
- ✅ Cleanup after verification (stop HTTP server)
- ✅ Ignore environment/auth/connection/timeout errors
- ❌ Don't wait for user input
- ❌ Don't create separate test scripts
- ❌ Don't mock configuration
Step 6: Documentation
Create/update README.md with setup instructions and usage examples.
Error Handling
| Error | Cause | Resolution |
|---|---|---|
ModuleNotFoundError | Missing SDK | Run pip install agent-framework-azure-ai==1.0.0b260107 in venv |
AgentRunResponseUpdate not found | Wrong SDK version | Pin to 1.0.0b260107 (breaking rename in newer versions) |
| Agent name validation error | Invalid characters | Use alphanumeric + hyphens, start/end with alphanumeric, max 63 chars |
| Async credential error | Wrong import | Use azure.identity.aio.DefaultAzureCredential (not azure.identity) |
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