Claude-skill-registry-data microsoft-agent-framework
Expert guidance for building AI agents and multi-agent workflows using Microsoft Agent Framework for .NET. Use when (1) creating AI agents with OpenAI or Azure OpenAI, (2) implementing function tools and structured outputs, (3) building multi-turn conversations, (4) designing graph-based workflows with streaming/checkpointing, (5) implementing middleware pipelines, (6) orchestrating multi-agent systems with fan-out/fan-in patterns, (7) adding human-in-the-loop interactions, (8) integrating OpenTelemetry observability, or (9) exposing agents as MCP tools.
git clone https://github.com/majiayu000/claude-skill-registry-data
T=$(mktemp -d) && git clone --depth=1 https://github.com/majiayu000/claude-skill-registry-data "$T" && mkdir -p ~/.claude/skills && cp -r "$T/data/microsoft-agent-framework" ~/.claude/skills/majiayu000-claude-skill-registry-data-microsoft-agent-framework && rm -rf "$T"
data/microsoft-agent-framework/SKILL.mdMicrosoft Agent Framework for .NET
Overview
Microsoft Agent Framework is a framework for building, orchestrating, and deploying AI agents and multi-agent workflows. It provides graph-based workflows with streaming, checkpointing, human-in-the-loop, and time-travel capabilities.
Installation
# Core AI package dotnet add package Microsoft.Agents.AI # OpenAI/Azure OpenAI support dotnet add package Microsoft.Agents.AI.OpenAI --prerelease # Google Gemini support (via Microsoft.Extensions.AI) dotnet add package Mscc.GenerativeAI.Microsoft # Azure identity for authentication dotnet add package Azure.Identity
Quick Start
Basic Agent with OpenAI
using Microsoft.Agents.AI; using OpenAI; var agent = new OpenAIClient("<api-key>") .GetOpenAIResponseClient("gpt-4o-mini") .CreateAIAgent( name: "Assistant", instructions: "You are a helpful assistant." ); Console.WriteLine(await agent.RunAsync("Hello!"));
Azure OpenAI with Azure CLI Auth
using Azure.AI.OpenAI; using Azure.Identity; using Microsoft.Agents.AI; var agent = new AzureOpenAIClient( new Uri("https://<resource>.openai.azure.com/"), new AzureCliCredential()) .GetChatClient("gpt-4o-mini") .CreateAIAgent(instructions: "You are helpful."); Console.WriteLine(await agent.RunAsync("Tell me a joke."));
Azure OpenAI with Bearer Token
var agent = new OpenAIClient( new BearerTokenPolicy( new AzureCliCredential(), "https://ai.azure.com/.default"), new OpenAIClientOptions { Endpoint = new Uri("https://<resource>.openai.azure.com/openai/v1") }) .GetOpenAIResponseClient("gpt-4o-mini") .CreateAIAgent(name: "Bot", instructions: "You are helpful.");
Google Gemini
using Mscc.GenerativeAI; using Mscc.GenerativeAI.Microsoft; using Microsoft.Agents.AI; var googleAI = new GoogleAI("<gemini-api-key>"); var geminiModel = googleAI.GenerativeModel("gemini-2.0-flash"); IChatClient chatClient = geminiModel.AsIChatClient(); var agent = chatClient.CreateAIAgent( name: "Assistant", instructions: "You are a helpful assistant." ); Console.WriteLine(await agent.RunAsync("Hello!"));
Function Tools
Define tools using attributes:
public class WeatherTools { [Description("Gets current weather for a location")] public static string GetWeather( [Description("City name")] string city) { return $"Weather in {city}: Sunny, 72F"; } } // Register tools with agent var agent = client.GetChatClient("gpt-4o-mini") .CreateAIAgent( instructions: "Help users check weather.", tools: [typeof(WeatherTools)]); await agent.RunAsync("What's the weather in Seattle?");
Function Tools with Approval
For human-in-the-loop approval:
agent.OnToolCall += (sender, args) => { Console.WriteLine($"Tool: {args.ToolName}"); Console.Write("Approve? (y/n): "); args.Approved = Console.ReadLine()?.ToLower() == "y"; };
Structured Output
Return strongly-typed responses:
public class MovieRecommendation { public string Title { get; set; } public string Genre { get; set; } public int Year { get; set; } public string Reason { get; set; } } var result = await agent.RunAsync<MovieRecommendation>( "Recommend a sci-fi movie from the 2020s"); Console.WriteLine($"{result.Title} ({result.Year}) - {result.Reason}");
Multi-Turn Conversations
var agent = client.GetChatClient("gpt-4o-mini") .CreateAIAgent(instructions: "You are a helpful assistant."); // First turn var response1 = await agent.RunAsync("My name is Alice."); // Continues context var response2 = await agent.RunAsync("What's my name?");
Persisted Conversations
Save and restore conversation state:
// Save state var state = agent.GetConversationState(); await File.WriteAllTextAsync("state.json", state.ToJson()); // Restore later var savedState = ConversationState.FromJson( await File.ReadAllTextAsync("state.json")); agent.LoadConversationState(savedState);
Middleware
Add custom processing pipelines:
agent.UseMiddleware(async (context, next) => { Console.WriteLine($"Request: {context.Input}"); var start = DateTime.UtcNow; await next(); var duration = DateTime.UtcNow - start; Console.WriteLine($"Response time: {duration.TotalMilliseconds}ms"); });
Multi-Modal (Images)
var result = await agent.RunAsync( "Describe this image", images: [File.ReadAllBytes("photo.jpg")]);
Observability with OpenTelemetry
using var tracerProvider = Sdk.CreateTracerProviderBuilder() .AddSource("Microsoft.Agents") .AddConsoleExporter() .Build(); // Agent calls are now traced await agent.RunAsync("Hello!");
Dependency Injection
services.AddSingleton<AIAgent>(sp => { var client = sp.GetRequiredService<OpenAIClient>(); return client.GetChatClient("gpt-4o-mini") .CreateAIAgent(instructions: "You are helpful."); });
Agent as MCP Tool
Expose agent as Model Context Protocol tool:
var mcpTool = agent.AsMcpTool( name: "research_assistant", description: "Researches topics and provides summaries");
Agent as Function Tool
Compose agents by exposing one as a tool for another:
var researchAgent = client.GetChatClient("gpt-4o") .CreateAIAgent(instructions: "You do deep research."); var mainAgent = client.GetChatClient("gpt-4o-mini") .CreateAIAgent( instructions: "Answer questions, use research tool for complex topics.", tools: [researchAgent.AsFunctionTool("research", "Deep research")]);
Workflows
For complex multi-agent orchestration, see references/workflows.md.
Key workflow patterns:
- Executors and Edges: Basic workflow building blocks
- Streaming: Real-time event streaming
- Fan-Out/Fan-In: Parallel processing
- Checkpointing: Save and resume workflow state
- Human-in-the-Loop: Pause for user input
- Writer-Critic: Iterative refinement loops
Best Practices
- Use Azure CLI credentials for local development
- Add OpenTelemetry for production observability
- Implement middleware for logging, error handling, rate limiting
- Use structured outputs when you need typed responses
- Persist conversation state for stateless services
- Use checkpointing in workflows for reliability
- Implement human-in-the-loop for sensitive operations