Files
microsoft--semantic-kernel/dotnet/samples/Concepts/ChatCompletion/AzureOpenAI_ChatCompletionStreaming.cs
T
wehub-resource-sync b957a53def
CodeQL / Analyze (csharp) (push) Waiting to run
CodeQL / Analyze (python) (push) Waiting to run
chore: import upstream snapshot with attribution
2026-07-13 13:21:23 +08:00

132 lines
6.2 KiB
C#

// Copyright (c) Microsoft. All rights reserved.
using Microsoft.SemanticKernel;
using Microsoft.SemanticKernel.ChatCompletion;
using Microsoft.SemanticKernel.Connectors.AzureOpenAI;
using Microsoft.SemanticKernel.Connectors.OpenAI;
namespace ChatCompletion;
/// <summary>
/// These examples demonstrate different ways of using streaming chat completion with Azure OpenAI API.
/// </summary>
public class AzureOpenAI_ChatCompletionStreaming(ITestOutputHelper output) : BaseTest(output)
{
/// <summary>
/// This example demonstrates chat completion streaming using Azure OpenAI.
/// </summary>
[Fact]
public Task StreamServicePromptAsync()
{
Console.WriteLine("======== Azure Open AI Chat Completion Streaming ========");
AzureOpenAIChatCompletionService chatCompletionService = new(
deploymentName: TestConfiguration.AzureOpenAI.ChatDeploymentName,
endpoint: TestConfiguration.AzureOpenAI.Endpoint,
apiKey: TestConfiguration.AzureOpenAI.ApiKey,
modelId: TestConfiguration.AzureOpenAI.ChatModelId);
return this.StartStreamingChatAsync(chatCompletionService);
}
/// <summary>
/// This example demonstrates how the chat completion service streams text content.
/// It shows how to access the response update via StreamingChatMessageContent.Content property
/// and alternatively via the StreamingChatMessageContent.Items property.
/// </summary>
[Fact]
public async Task StreamServicePromptTextAsync()
{
Console.WriteLine("======== Azure Open AI Streaming Text ========");
// Create chat completion service
AzureOpenAIChatCompletionService chatCompletionService = new(
deploymentName: TestConfiguration.AzureOpenAI.ChatDeploymentName,
endpoint: TestConfiguration.AzureOpenAI.Endpoint,
apiKey: TestConfiguration.AzureOpenAI.ApiKey,
modelId: TestConfiguration.AzureOpenAI.ChatModelId);
// Create chat history with initial system and user messages
ChatHistory chatHistory = new("You are a librarian, an expert on books.");
chatHistory.AddUserMessage("Hi, I'm looking for book suggestions.");
chatHistory.AddUserMessage("I love history and philosophy. I'd like to learn something new about Greece, any suggestion?");
// Start streaming chat based on the chat history
await foreach (StreamingChatMessageContent chatUpdate in chatCompletionService.GetStreamingChatMessageContentsAsync(chatHistory))
{
// Access the response update via StreamingChatMessageContent.Content property
Console.Write(chatUpdate.Content);
// Alternatively, the response update can be accessed via the StreamingChatMessageContent.Items property
Console.Write(chatUpdate.Items.OfType<StreamingTextContent>().FirstOrDefault());
}
}
/// <summary>
/// This example demonstrates how the chat completion service streams raw function call content.
/// See <see cref="FunctionCalling.FunctionCalling.RunStreamingChatCompletionApiWithManualFunctionCallingAsync"/> for a sample demonstrating how to simplify
/// function call content building out of streamed function call updates using the <see cref="FunctionCallContentBuilder"/>.
/// </summary>
[Fact]
public async Task StreamFunctionCallContentAsync()
{
Console.WriteLine("======== Stream Function Call Content ========");
// Create chat completion service
AzureOpenAIChatCompletionService chatCompletionService = new(deploymentName: TestConfiguration.AzureOpenAI.ChatDeploymentName,
endpoint: TestConfiguration.AzureOpenAI.Endpoint,
apiKey: TestConfiguration.AzureOpenAI.ApiKey,
modelId: TestConfiguration.AzureOpenAI.ChatModelId);
// Create kernel with helper plugin.
Kernel kernel = new();
kernel.ImportPluginFromFunctions("HelperFunctions",
[
kernel.CreateFunctionFromMethod((string longTestString) => DateTime.UtcNow.ToString("R"), "GetCurrentUtcTime", "Retrieves the current time in UTC."),
]);
// Create execution settings with manual function calling
OpenAIPromptExecutionSettings settings = new() { FunctionChoiceBehavior = FunctionChoiceBehavior.Auto(autoInvoke: false) };
// Create chat history with initial user question
ChatHistory chatHistory = [];
chatHistory.AddUserMessage("Hi, what is the current time?");
// Start streaming chat based on the chat history
await foreach (StreamingChatMessageContent chatUpdate in chatCompletionService.GetStreamingChatMessageContentsAsync(chatHistory, settings, kernel))
{
// Getting list of function call updates requested by LLM
var streamingFunctionCallUpdates = chatUpdate.Items.OfType<StreamingFunctionCallUpdateContent>();
// Iterating over function call updates. Please use the unctionCallContentBuilder to simplify function call content building.
foreach (StreamingFunctionCallUpdateContent update in streamingFunctionCallUpdates)
{
Console.WriteLine($"Function call update: callId={update.CallId}, name={update.Name}, arguments={update.Arguments?.Replace("\n", "\\n")}, functionCallIndex={update.FunctionCallIndex}");
}
}
}
private async Task StartStreamingChatAsync(IChatCompletionService chatCompletionService)
{
Console.WriteLine("Chat content:");
Console.WriteLine("------------------------");
var chatHistory = new ChatHistory("You are a librarian, expert about books");
OutputLastMessage(chatHistory);
// First user message
chatHistory.AddUserMessage("Hi, I'm looking for book suggestions");
OutputLastMessage(chatHistory);
// First assistant message
await StreamMessageOutputAsync(chatCompletionService, chatHistory, AuthorRole.Assistant);
// Second user message
chatHistory.AddUserMessage("I love history and philosophy, I'd like to learn something new about Greece, any suggestion?");
OutputLastMessage(chatHistory);
// Second assistant message
await StreamMessageOutputAsync(chatCompletionService, chatHistory, AuthorRole.Assistant);
}
}