Files
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

190 lines
8.0 KiB
C#

// Copyright (c) Microsoft. All rights reserved.
using Microsoft.SemanticKernel;
using Microsoft.SemanticKernel.Data;
using Microsoft.SemanticKernel.Plugins.Web.Bing;
using Microsoft.SemanticKernel.PromptTemplates.Handlebars;
namespace RAG;
/// <summary>
/// This example shows how to perform RAG with an <see cref="ITextSearch"/>.
/// </summary>
public sealed class Bing_RagWithTextSearch(ITestOutputHelper output) : BaseTest(output)
{
/// <summary>
/// Show how to create a default <see cref="KernelPlugin"/> from an <see cref="ITextSearch"/> and use it to
/// add grounding context to a prompt.
/// </summary>
[Fact]
public async Task RagWithBingTextSearchAsync()
{
// Create a kernel with OpenAI chat completion
IKernelBuilder kernelBuilder = Kernel.CreateBuilder();
kernelBuilder.AddOpenAIChatCompletion(
modelId: TestConfiguration.OpenAI.ChatModelId,
apiKey: TestConfiguration.OpenAI.ApiKey);
Kernel kernel = kernelBuilder.Build();
// Create a text search using Bing search
var textSearch = new BingTextSearch(new(TestConfiguration.Bing.ApiKey));
// Build a text search plugin with Bing search and add to the kernel
var searchPlugin = textSearch.CreateWithSearch("SearchPlugin");
kernel.Plugins.Add(searchPlugin);
// Invoke prompt and use text search plugin to provide grounding information
var query = "What is the Semantic Kernel?";
KernelArguments arguments = new() { { "query", query } };
Console.WriteLine(await kernel.InvokePromptAsync("{{SearchPlugin.Search $query}}. {{$query}}", arguments));
}
/// <summary>
/// Show how to create a default <see cref="KernelPlugin"/> from an <see cref="ITextSearch"/> and use it to
/// add grounding context to a Handlebars prompt and include citations in the response.
/// </summary>
[Fact]
public async Task RagWithBingTextSearchIncludingCitationsAsync()
{
// Create a kernel with OpenAI chat completion
IKernelBuilder kernelBuilder = Kernel.CreateBuilder();
kernelBuilder.AddOpenAIChatCompletion(
modelId: TestConfiguration.OpenAI.ChatModelId,
apiKey: TestConfiguration.OpenAI.ApiKey);
Kernel kernel = kernelBuilder.Build();
// Create a text search using Bing search
var textSearch = new BingTextSearch(new(TestConfiguration.Bing.ApiKey));
// Build a text search plugin with Bing search and add to the kernel
var searchPlugin = textSearch.CreateWithGetTextSearchResults("SearchPlugin");
kernel.Plugins.Add(searchPlugin);
// Invoke prompt and use text search plugin to provide grounding information
var query = "What is the Semantic Kernel?";
string promptTemplate = """
{{#with (SearchPlugin-GetTextSearchResults query)}}
{{#each this}}
Name: {{Name}}
Value: {{Value}}
Link: {{Link}}
-----------------
{{/each}}
{{/with}}
{{query}}
Include citations to the relevant information where it is referenced in the response.
""";
KernelArguments arguments = new() { { "query", query } };
HandlebarsPromptTemplateFactory promptTemplateFactory = new();
Console.WriteLine(await kernel.InvokePromptAsync(
promptTemplate,
arguments,
templateFormat: HandlebarsPromptTemplateFactory.HandlebarsTemplateFormat,
promptTemplateFactory: promptTemplateFactory
));
}
/// <summary>
/// Show how to create a default <see cref="KernelPlugin"/> from an <see cref="ITextSearch"/> and use it to
/// add grounding context to a Handlebars prompt and include citations in the response.
/// </summary>
[Fact]
public async Task RagWithBingTextSearchIncludingTimeStampedCitationsAsync()
{
// Create a kernel with OpenAI chat completion
IKernelBuilder kernelBuilder = Kernel.CreateBuilder();
kernelBuilder.AddOpenAIChatCompletion(
modelId: TestConfiguration.OpenAI.ChatModelId,
apiKey: TestConfiguration.OpenAI.ApiKey);
Kernel kernel = kernelBuilder.Build();
// Create a text search using Bing search
var textSearch = new BingTextSearch(new(TestConfiguration.Bing.ApiKey));
// Build a text search plugin with Bing search and add to the kernel
var searchPlugin = textSearch.CreateWithGetSearchResults("SearchPlugin");
kernel.Plugins.Add(searchPlugin);
// Invoke prompt and use text search plugin to provide grounding information
var query = "What is the Semantic Kernel?";
string promptTemplate = """
{{#with (SearchPlugin-GetSearchResults query)}}
{{#each this}}
Name: {{Name}}
Snippet: {{Snippet}}
Link: {{DisplayUrl}}
Date Last Crawled: {{DateLastCrawled}}
-----------------
{{/each}}
{{/with}}
{{query}}
Include citations to and the date of the relevant information where it is referenced in the response.
""";
KernelArguments arguments = new() { { "query", query } };
HandlebarsPromptTemplateFactory promptTemplateFactory = new();
Console.WriteLine(await kernel.InvokePromptAsync(
promptTemplate,
arguments,
templateFormat: HandlebarsPromptTemplateFactory.HandlebarsTemplateFormat,
promptTemplateFactory: promptTemplateFactory
));
}
#pragma warning disable CS0618 // Suppress obsolete warnings for legacy TextSearchOptions/TextSearchFilter usage
/// <summary>
/// Show how to create a default <see cref="KernelPlugin"/> from an <see cref="ITextSearch"/> and use it to
/// add grounding context to a Handlebars prompt that include full web pages.
/// </summary>
[Fact]
public async Task RagWithBingTextSearchUsingDevBlogsSiteAsync()
{
// Create a kernel with OpenAI chat completion
IKernelBuilder kernelBuilder = Kernel.CreateBuilder();
kernelBuilder.AddOpenAIChatCompletion(
modelId: TestConfiguration.OpenAI.ChatModelId,
apiKey: TestConfiguration.OpenAI.ApiKey);
Kernel kernel = kernelBuilder.Build();
// Create a text search using Bing search
var textSearch = new BingTextSearch(new(TestConfiguration.Bing.ApiKey));
// Build a text search plugin with Bing search and add to the kernel
var filter = new TextSearchFilter().Equality("site", "devblogs.microsoft.com");
var searchOptions = new TextSearchOptions() { Filter = filter };
var searchPlugin = KernelPluginFactory.CreateFromFunctions(
"SearchPlugin", "Search Microsoft Developer Blogs site only",
[textSearch.CreateGetTextSearchResults(searchOptions: searchOptions)]);
kernel.Plugins.Add(searchPlugin);
// Invoke prompt and use text search plugin to provide grounding information
var query = "What is the Semantic Kernel?";
string promptTemplate = """
{{#with (SearchPlugin-GetTextSearchResults query)}}
{{#each this}}
Name: {{Name}}
Value: {{Value}}
Link: {{Link}}
-----------------
{{/each}}
{{/with}}
{{query}}
Include citations to the relevant information where it is referenced in the response.
""";
KernelArguments arguments = new() { { "query", query } };
HandlebarsPromptTemplateFactory promptTemplateFactory = new();
Console.WriteLine(await kernel.InvokePromptAsync(
promptTemplate,
arguments,
templateFormat: HandlebarsPromptTemplateFactory.HandlebarsTemplateFormat,
promptTemplateFactory: promptTemplateFactory
));
}
#pragma warning restore CS0618
}