Files
wehub-resource-sync db620d33df
CodeQL / Analyze (csharp) (push) Waiting to run
CodeQL / Analyze (python) (push) Waiting to run
dotnet-build-and-test / dotnet-test-functions (push) Has been cancelled
dotnet-build-and-test / paths-filter (push) Has been cancelled
dotnet-build-and-test / dotnet-build (Debug, windows-latest, net9.0) (push) Has been cancelled
dotnet-build-and-test / dotnet-build (Release, ubuntu-latest, net10.0) (push) Has been cancelled
dotnet-build-and-test / dotnet-build (Release, ubuntu-latest, net8.0) (push) Has been cancelled
dotnet-build-and-test / dotnet-build (Release, windows-latest, net472) (push) Has been cancelled
dotnet-build-and-test / dotnet-test (Release, integration, true, ubuntu-latest, net10.0) (push) Has been cancelled
dotnet-build-and-test / dotnet-test (Release, integration, true, windows-latest, net472) (push) Has been cancelled
dotnet-build-and-test / dotnet-foundry-hosted-it (push) Has been cancelled
dotnet-build-and-test / dotnet-build-and-test-check (push) Has been cancelled
dotnet-build-and-test / Integration Test Report (push) Has been cancelled
chore: import upstream snapshot with attribution
2026-07-13 13:39:25 +08:00

98 lines
4.4 KiB
C#

// Copyright (c) Microsoft. All rights reserved.
using Azure.AI.Projects;
using Azure.Identity;
using Microsoft.Agents.AI;
using Microsoft.Agents.AI.Workflows;
using Microsoft.Extensions.AI;
namespace WorkflowAsAnAgentSample;
/// <summary>
/// This sample introduces the concept of workflows as agents, where a workflow can be
/// treated as an <see cref="AIAgent"/>. This allows you to interact with a workflow
/// as if it were a single agent.
///
/// In this example, we create a workflow that uses two language agents to process
/// input concurrently, one that responds in French and another that responds in English.
///
/// You will interact with the workflow in an interactive loop, sending messages and receiving
/// streaming responses from the workflow as if it were an agent who responds in both languages.
///
/// This sample also demonstrates <see cref="IResettableExecutor"/>, which is required
/// for stateful executors that are shared across multiple workflow runs. Each iteration
/// of the interactive loop triggers a new workflow run against the same workflow instance.
/// Between runs, the framework automatically calls <see cref="IResettableExecutor.ResetAsync"/>
/// on shared executors so that accumulated state (e.g., collected messages) is cleared
/// before the next run begins. See <c>WorkflowFactory.ConcurrentAggregationExecutor</c>
/// for the implementation.
/// </summary>
/// <remarks>
/// Pre-requisites:
/// - Foundational samples should be completed first.
/// - This sample uses concurrent processing.
/// - An Azure OpenAI endpoint and deployment name.
/// </remarks>
public static class Program
{
private static async Task Main()
{
// Set up the Azure AI Foundry client
var endpoint = Environment.GetEnvironmentVariable("FOUNDRY_PROJECT_ENDPOINT") ?? throw new InvalidOperationException("FOUNDRY_PROJECT_ENDPOINT is not set.");
var deploymentName = Environment.GetEnvironmentVariable("FOUNDRY_MODEL") ?? "gpt-5.4-mini";
AIProjectClient aiProjectClient = new(new Uri(endpoint), new DefaultAzureCredential());
// Create the workflow and turn it into an agent
var workflow = WorkflowFactory.BuildWorkflow(aiProjectClient, deploymentName);
var agent = workflow.AsAIAgent("workflow-agent", "Workflow Agent");
var session = await agent.CreateSessionAsync();
// Start an interactive loop to interact with the workflow as if it were an agent.
// Each iteration runs the workflow again on the same workflow instance. Between runs,
// the framework calls IResettableExecutor.ResetAsync() on shared stateful executors
// (like ConcurrentAggregationExecutor) to clear accumulated state from the previous run.
while (true)
{
Console.WriteLine();
Console.Write("User (or 'exit' to quit): ");
string? input = Console.ReadLine();
if (string.IsNullOrWhiteSpace(input) || input.Equals("exit", StringComparison.OrdinalIgnoreCase))
{
break;
}
await ProcessInputAsync(agent, session, input);
}
// Helper method to process user input and display streaming responses. To display
// multiple interleaved responses correctly, we buffer updates by message ID and
// re-render all messages on each update.
static async Task ProcessInputAsync(AIAgent agent, AgentSession? session, string input)
{
Dictionary<string, List<AgentResponseUpdate>> buffer = [];
await foreach (AgentResponseUpdate update in agent.RunStreamingAsync(input, session))
{
if (update.MessageId is null || string.IsNullOrEmpty(update.Text))
{
// skip updates that don't have a message ID or text
continue;
}
if (!buffer.TryGetValue(update.MessageId, out List<AgentResponseUpdate>? value))
{
value = [];
buffer[update.MessageId] = value;
}
value.Add(update);
foreach (var (messageId, segments) in buffer)
{
string combinedText = string.Concat(segments);
Console.WriteLine($"{segments[0].AuthorName}: {combinedText}");
Console.WriteLine();
}
}
}
}
}