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66 lines
3.6 KiB
C#
66 lines
3.6 KiB
C#
// Copyright (c) Microsoft. All rights reserved.
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// This sample demonstrates how to use an agent with function tools that require a human in the loop for approvals.
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// It shows both non-streaming and streaming agent interactions using weather-related tools.
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// If the agent is hosted in a service, with a remote user, combine this sample with the Persisted Conversations sample to persist the chat history
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// while the agent is waiting for user input.
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using System.ComponentModel;
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using Azure.AI.Projects;
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using Azure.Identity;
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using Microsoft.Agents.AI;
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using Microsoft.Extensions.AI;
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string endpoint = Environment.GetEnvironmentVariable("AZURE_FOUNDRY_PROJECT_ENDPOINT") ?? throw new InvalidOperationException("AZURE_FOUNDRY_PROJECT_ENDPOINT is not set.");
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string deploymentName = Environment.GetEnvironmentVariable("AZURE_FOUNDRY_PROJECT_DEPLOYMENT_NAME") ?? "gpt-4o-mini";
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// Create a sample function tool that the agent can use.
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[Description("Get the weather for a given location.")]
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static string GetWeather([Description("The location to get the weather for.")] string location)
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=> $"The weather in {location} is cloudy with a high of 15°C.";
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const string AssistantInstructions = "You are a helpful assistant that can get weather information.";
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const string AssistantName = "WeatherAssistant";
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// Get a client to create/retrieve/delete server side agents with Azure Foundry Agents.
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// WARNING: DefaultAzureCredential is convenient for development but requires careful consideration in production.
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// In production, consider using a specific credential (e.g., ManagedIdentityCredential) to avoid
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// latency issues, unintended credential probing, and potential security risks from fallback mechanisms.
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AIProjectClient aiProjectClient = new(new Uri(endpoint), new DefaultAzureCredential());
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ApprovalRequiredAIFunction approvalTool = new(AIFunctionFactory.Create(GetWeather, name: nameof(GetWeather)));
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// Create AIAgent directly
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AIAgent agent = await aiProjectClient.CreateAIAgentAsync(name: AssistantName, model: deploymentName, instructions: AssistantInstructions, tools: [approvalTool]);
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// Call the agent with approval-required function tools.
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// The agent will request approval before invoking the function.
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AgentSession session = await agent.CreateSessionAsync();
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AgentResponse response = await agent.RunAsync("What is the weather like in Amsterdam?", session);
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// Check if there are any approval requests.
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// For simplicity, we are assuming here that only function approvals are pending.
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List<FunctionApprovalRequestContent> approvalRequests = response.Messages.SelectMany(m => m.Contents).OfType<FunctionApprovalRequestContent>().ToList();
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while (approvalRequests.Count > 0)
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{
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// Ask the user to approve each function call request.
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List<ChatMessage> userInputMessages = approvalRequests
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.ConvertAll(functionApprovalRequest =>
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{
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Console.WriteLine($"The agent would like to invoke the following function, please reply Y to approve: Name {functionApprovalRequest.FunctionCall.Name}");
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bool approved = Console.ReadLine()?.Equals("Y", StringComparison.OrdinalIgnoreCase) ?? false;
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return new ChatMessage(ChatRole.User, [functionApprovalRequest.CreateResponse(approved)]);
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});
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// Pass the user input responses back to the agent for further processing.
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response = await agent.RunAsync(userInputMessages, session);
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approvalRequests = response.Messages.SelectMany(m => m.Contents).OfType<FunctionApprovalRequestContent>().ToList();
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}
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Console.WriteLine($"\nAgent: {response}");
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// Cleanup by agent name removes the agent version created.
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await aiProjectClient.Agents.DeleteAgentAsync(agent.Name);
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