Merge pull request #4 from marcominerva/streaming

Add support for response streaming
This commit is contained in:
Marco Minerva
2025-01-28 11:36:05 +01:00
committed by GitHub
6 changed files with 102 additions and 14 deletions
Binary file not shown.

Before

Width:  |  Height:  |  Size: 63 KiB

After

Width:  |  Height:  |  Size: 70 KiB

+2 -1
View File
@@ -1,3 +1,4 @@
namespace SqlDatabaseVectorSearch.Models;
public record class Response(string Question, string Answer);
// Question and Asnwer can be null when using response streaming.
public record class Response(string? Question, string? Answer, StreamState? StreamState = null);
@@ -0,0 +1,8 @@
namespace SqlDatabaseVectorSearch.Models;
public enum StreamState
{
Start,
Append,
End
}
+27 -1
View File
@@ -1,4 +1,5 @@
using System.ComponentModel;
using System.Text.Json.Serialization;
using Microsoft.AspNetCore.Http.HttpResults;
using Microsoft.EntityFrameworkCore;
using Microsoft.SemanticKernel;
@@ -49,6 +50,11 @@ builder.Services.AddSingleton<TokenizerService>();
builder.Services.AddSingleton<ChatService>();
builder.Services.AddScoped<VectorSearchService>();
builder.Services.ConfigureHttpJsonOptions(options =>
{
options.SerializerOptions.Converters.Add(new JsonStringEnumConverter());
});
builder.Services.AddOpenApi(options =>
{
options.RemoveServerList();
@@ -114,7 +120,7 @@ documentsApiGroup.MapPost(string.Empty, async (IFormFile file, VectorSearchServi
.DisableAntiforgery()
.ProducesProblem(StatusCodes.Status400BadRequest)
.WithSummary("Uploads a document")
.WithDescription("Uploads a document to SQL Database and saves its embedding using the new native Vector type. The document will be indexed and used to answer questions. Currently, only PDF files are supported.");
.WithDescription("Uploads a document to SQL Database and saves its embedding using the native VECTOR type. The document will be indexed and used to answer questions. Currently, only PDF files are supported.");
documentsApiGroup.MapDelete("{documentId:guid}", async (Guid documentId, VectorSearchService vectorSearchService) =>
{
@@ -134,4 +140,24 @@ app.MapPost("/api/ask", async (Question question, VectorSearchService vectorSear
.WithDescription("The question will be reformulated taking into account the context of the chat identified by the given ConversationId.")
.WithTags("Ask");
app.MapPost("/api/ask-streaming", (Question question, VectorSearchService vectorSearchService,
[Description("If true, the question will be reformulated taking into account the context of the chat identified by the given ConversationId.")] bool reformulate = true) =>
{
async IAsyncEnumerable<Response> Stream()
{
// Requests a streaming response.
var responseStream = vectorSearchService.AskStreamingAsync(question, reformulate);
await foreach (var delta in responseStream)
{
yield return delta;
}
}
return Stream();
})
.WithSummary("Asks a question and gets the response as streaming")
.WithDescription("The question will be reformulated taking into account the context of the chat identified by the given ConversationId.")
.WithTags("Ask");
app.Run();
+37 -10
View File
@@ -35,6 +35,42 @@ public class ChatService(IChatCompletionService chatCompletionService, Tokenizer
}
public async Task<string> AskQuestionAsync(Guid conversationId, IEnumerable<string> chunks, string question)
{
var chat = CreateChatAsync(chunks, question);
var answer = await chatCompletionService.GetChatMessageContentAsync(chat, new AzureOpenAIPromptExecutionSettings
{
MaxTokens = appSettings.MaxOutputTokens
});
// Add question and answer to the chat history.
await SetChatHistoryAsync(conversationId, question, answer.Content!);
return answer.Content!;
}
public async IAsyncEnumerable<string> AskStreamingAsync(Guid conversationId, IEnumerable<string> chunks, string question)
{
var chat = CreateChatAsync(chunks, question);
var answer = new StringBuilder();
await foreach (var token in chatCompletionService.GetStreamingChatMessageContentsAsync(chat, new AzureOpenAIPromptExecutionSettings
{
MaxTokens = appSettings.MaxOutputTokens
}))
{
if (!string.IsNullOrEmpty(token.Content))
{
yield return token.Content;
answer.Append(token.Content);
}
}
// Add question and answer to the chat history.
await SetChatHistoryAsync(conversationId, question, answer.ToString());
}
private ChatHistory CreateChatAsync(IEnumerable<string> chunks, string question)
{
var chat = new ChatHistory("""
You can use only the information provided in this chat to answer questions. If you don't know the answer, reply suggesting to refine the question.
@@ -79,16 +115,7 @@ public class ChatService(IChatCompletionService chatCompletionService, Tokenizer
}
chat.AddUserMessage(prompt.ToString());
var answer = await chatCompletionService.GetChatMessageContentAsync(chat, new AzureOpenAIPromptExecutionSettings
{
MaxTokens = appSettings.MaxOutputTokens
});
// Add question and answer to the chat history.
await SetChatHistoryAsync(conversationId, question, answer.Content!);
return answer.Content!;
return chat;
}
private async Task UpdateCacheAsync(Guid conversationId, ChatHistory chat)
@@ -81,6 +81,33 @@ public class VectorSearchService(ApplicationDbContext dbContext, ITextEmbeddingG
=> dbContext.Documents.Where(d => d.Id == documentId).ExecuteDeleteAsync();
public async Task<Response> AskQuestionAsync(Question question, bool reformulate = true)
{
var (reformulatedQuestion, chunks) = await CreateContextAsync(question, reformulate);
var answer = await chatService.AskQuestionAsync(question.ConversationId, chunks, reformulatedQuestion);
return new Response(reformulatedQuestion, answer);
}
public async IAsyncEnumerable<Response> AskStreamingAsync(Question question, bool reformulate = true)
{
var (reformulatedQuestion, chunks) = await CreateContextAsync(question, reformulate);
var answerStream = chatService.AskStreamingAsync(question.ConversationId, chunks, reformulatedQuestion);
// The first message contains the original question.
yield return new Response(reformulatedQuestion, null, StreamState.Start);
// Return each token as a partial response.
await foreach (var token in answerStream)
{
yield return new Response(null, token, StreamState.Append);
}
// The last message tells the client that the stream has ended.
yield return new Response(null, null, StreamState.End);
}
private async Task<(string Question, IEnumerable<string> Chunks)> CreateContextAsync(Question question, bool reformulate = true)
{
// Reformulate the following question taking into account the context of the chat to perform keyword search and embeddings:
var reformulatedQuestion = reformulate ? await chatService.CreateQuestionAsync(question.ConversationId, question.Text) : question.Text;
@@ -94,8 +121,7 @@ public class VectorSearchService(ApplicationDbContext dbContext, ITextEmbeddingG
.Take(appSettings.MaxRelevantChunks)
.ToListAsync();
var answer = await chatService.AskQuestionAsync(question.ConversationId, chunks, reformulatedQuestion);
return new Response(reformulatedQuestion, answer);
return (reformulatedQuestion, chunks);
}
private static Task<string> GetContentAsync(Stream stream)