Files
microsoft--semantic-kernel/dotnet/samples/Demos/OnnxSimpleRAG/Program.cs
T
wehub-resource-sync b957a53def
CodeQL / Analyze (csharp) (push) Has been cancelled
CodeQL / Analyze (python) (push) Has been cancelled
chore: import upstream snapshot with attribution
2026-07-13 13:21:23 +08:00

140 lines
4.5 KiB
C#

// Copyright (c) Microsoft. All rights reserved.
using System;
using System.IO;
using System.Linq;
using Microsoft.Extensions.AI;
using Microsoft.Extensions.Configuration;
using Microsoft.Extensions.VectorData;
using Microsoft.ML.OnnxRuntimeGenAI;
using Microsoft.SemanticKernel;
using Microsoft.SemanticKernel.ChatCompletion;
using Microsoft.SemanticKernel.Connectors.InMemory;
using Microsoft.SemanticKernel.Connectors.Onnx;
using Microsoft.SemanticKernel.Data;
using Microsoft.SemanticKernel.PromptTemplates.Handlebars;
Console.OutputEncoding = System.Text.Encoding.UTF8;
// Ensure you follow the preparation steps provided in the README.md
var config = new ConfigurationBuilder().AddUserSecrets<Program>().Build();
// Path to the folder of your downloaded ONNX PHI-3 model
var chatModelPath = config["Onnx:ModelPath"]!;
var chatModelId = config["Onnx:ModelId"] ?? "phi-3";
// Path to the file of your downloaded ONNX BGE-MICRO-V2 model
var embeddingModelPath = config["Onnx:EmbeddingModelPath"]!;
// Path to the vocab file your ONNX BGE-MICRO-V2 model
var embeddingVocabPath = config["Onnx:EmbeddingVocabPath"]!;
// If using Onnx GenAI 0.5.0 or later, the OgaHandle class must be used to track
// resources used by the Onnx services, before using any of the Onnx services.
using var ogaHandle = new OgaHandle();
// Load the services
var builder = Kernel.CreateBuilder()
.AddOnnxRuntimeGenAIChatCompletion(chatModelId, chatModelPath)
.AddBertOnnxEmbeddingGenerator(embeddingModelPath, embeddingVocabPath);
// Build Kernel
var kernel = builder.Build();
// Get the instances of the services
using var chatService = kernel.GetRequiredService<IChatCompletionService>() as OnnxRuntimeGenAIChatCompletionService;
var embeddingService = kernel.GetRequiredService<IEmbeddingGenerator<string, Embedding<float>>>();
// Create a vector store and a collection to store information
var vectorStore = new InMemoryVectorStore(new() { EmbeddingGenerator = embeddingService });
var collection = vectorStore.GetCollection<string, InformationItem>("ExampleCollection");
await collection.EnsureCollectionExistsAsync();
// Save some information to the memory
var collectionName = "ExampleCollection";
foreach (var factTextFile in Directory.GetFiles("Facts", "*.txt"))
{
var factContent = File.ReadAllText(factTextFile);
await collection.UpsertAsync(new InformationItem()
{
Id = Guid.NewGuid().ToString(),
Text = factContent
});
}
// Add a plugin to search the database with.
var vectorStoreTextSearch = new VectorStoreTextSearch<InformationItem>(collection);
kernel.Plugins.Add(vectorStoreTextSearch.CreateWithSearch("SearchPlugin"));
// Start the conversation
while (true)
{
// Get user input
Console.ForegroundColor = ConsoleColor.White;
Console.Write("User > ");
var question = Console.ReadLine()!;
// Clean resources and exit the demo if the user input is null or empty
if (question is null || string.IsNullOrWhiteSpace(question))
{
// To avoid any potential memory leak all disposable
// services created by the kernel are disposed
DisposeServices(kernel);
return;
}
// Invoke the kernel with the user input
var response = kernel.InvokePromptStreamingAsync(
promptTemplate: @"Question: {{input}}
Answer the question using the memory content:
{{#with (SearchPlugin-Search input)}}
{{#each this}}
{{this}}
-----------------
{{/each}}
{{/with}}",
templateFormat: "handlebars",
promptTemplateFactory: new HandlebarsPromptTemplateFactory(),
arguments: new KernelArguments()
{
{ "input", question },
{ "collection", collectionName }
});
Console.Write("\nAssistant > ");
await foreach (var message in response)
{
Console.Write(message);
}
Console.WriteLine();
}
static void DisposeServices(Kernel kernel)
{
foreach (var target in kernel
.GetAllServices<IChatCompletionService>()
.OfType<IDisposable>())
{
target.Dispose();
}
}
/// <summary>
/// Information item to represent the embedding data stored in the memory
/// </summary>
internal sealed class InformationItem
{
[VectorStoreKey]
[TextSearchResultName]
public string Id { get; set; } = string.Empty;
[VectorStoreData]
[TextSearchResultValue]
public string Text { get; set; } = string.Empty;
[VectorStoreVector(Dimensions: 384)]
public string Embedding => this.Text;
}