// Copyright (c) Microsoft. All rights reserved. // This sample demonstrates how to wrap MCP tools with a DelegatingAIFunction to add custom behavior (e.g., logging). // Compare with Step09 which shows basic MCP tool usage without wrapping. // The LoggingMcpTool pattern is useful for diagnostics, metering, or adding approval logic around tool calls. using Azure.AI.Projects; using Azure.Identity; using Microsoft.Agents.AI; using Microsoft.Extensions.AI; using ModelContextProtocol.Client; using SampleApp; const string AgentInstructions = "You are a helpful assistant that can help with Microsoft documentation questions. Use the Microsoft Learn MCP tool to search for documentation."; const string AgentName = "DocsAgent-RAPI"; // Connect to the MCP server locally via HTTP (Streamable HTTP transport). Console.WriteLine("Connecting to MCP server at https://learn.microsoft.com/api/mcp ..."); await using McpClient mcpClient = await McpClient.CreateAsync(new HttpClientTransport(new() { Endpoint = new Uri("https://learn.microsoft.com/api/mcp"), Name = "Microsoft Learn MCP", })); // Retrieve the list of tools available on the MCP server (resolved locally). IList mcpTools = await mcpClient.ListToolsAsync(); Console.WriteLine($"MCP tools available: {string.Join(", ", mcpTools.Select(t => t.Name))}"); // Wrap each MCP tool with a DelegatingAIFunction to log local invocations. List wrappedTools = mcpTools.Select(tool => (AITool)new LoggingMcpTool(tool)).ToList(); string endpoint = Environment.GetEnvironmentVariable("AZURE_AI_PROJECT_ENDPOINT") ?? throw new InvalidOperationException("AZURE_AI_PROJECT_ENDPOINT is not set."); string deploymentName = Environment.GetEnvironmentVariable("AZURE_AI_MODEL_DEPLOYMENT_NAME") ?? "gpt-5.4-mini"; // WARNING: DefaultAzureCredential is convenient for development but requires careful consideration in production. // In production, consider using a specific credential (e.g., ManagedIdentityCredential) to avoid // latency issues, unintended credential probing, and potential security risks from fallback mechanisms. AIProjectClient aiProjectClient = new(new Uri(endpoint), new DefaultAzureCredential()); // Create a AIAgent with the locally-resolved MCP tools. AIAgent agent = aiProjectClient.AsAIAgent(deploymentName, instructions: AgentInstructions, name: AgentName, tools: wrappedTools); Console.WriteLine($"Agent '{agent.Name}' created successfully."); // First query const string Prompt1 = "How does one create an Azure storage account using az cli?"; Console.WriteLine($"\nUser: {Prompt1}\n"); AgentResponse response1 = await agent.RunAsync(Prompt1); Console.WriteLine($"Agent: {response1}"); Console.WriteLine("\n=======================================\n"); // Second query const string Prompt2 = "What is Microsoft Agent Framework?"; Console.WriteLine($"User: {Prompt2}\n"); AgentResponse response2 = await agent.RunAsync(Prompt2); Console.WriteLine($"Agent: {response2}"); namespace SampleApp { /// /// Wraps an MCP tool to log when it is invoked locally, /// confirming that the MCP call is happening client-side. /// internal sealed class LoggingMcpTool(AIFunction innerFunction) : DelegatingAIFunction(innerFunction) { protected override ValueTask InvokeCoreAsync(AIFunctionArguments arguments, CancellationToken cancellationToken) { Console.WriteLine($" >> [LOCAL MCP] Invoking tool '{this.Name}' locally..."); return base.InvokeCoreAsync(arguments, cancellationToken); } } }