Files
agent-framework/dotnet/samples/GettingStarted/AgentWithRAG/AgentWithRAG_Step01_BasicTextRAG/Program.cs
T
Copilot db36809744 .NET: Move TextSearchProvider and TextSearchProviderOptions to Microsoft.Agents.AI namespace (#2639)
* Initial plan

* Move TextSearchProvider and TextSearchProviderOptions to Microsoft.Agents.AI namespace

Co-authored-by: SergeyMenshykh <68852919+SergeyMenshykh@users.noreply.github.com>

* Restore AgentWithTextSearchRag project in solution file

Co-authored-by: SergeyMenshykh <68852919+SergeyMenshykh@users.noreply.github.com>

* Revert using statement removal in AgentWithRAG_Step01_BasicTextRAG sample

Co-authored-by: SergeyMenshykh <68852919+SergeyMenshykh@users.noreply.github.com>

* Revert the previous revert - remove using Microsoft.Agents.AI.Data from AgentWithRAG_Step01_BasicTextRAG

Co-authored-by: SergeyMenshykh <68852919+SergeyMenshykh@users.noreply.github.com>

* Revert using statement removal in AgentWithTextSearchRag sample

Co-authored-by: SergeyMenshykh <68852919+SergeyMenshykh@users.noreply.github.com>

---------

Co-authored-by: copilot-swe-agent[bot] <198982749+Copilot@users.noreply.github.com>
Co-authored-by: SergeyMenshykh <68852919+SergeyMenshykh@users.noreply.github.com>
2025-12-05 11:01:53 +00:00

105 lines
5.4 KiB
C#

// Copyright (c) Microsoft. All rights reserved.
// This sample shows how to use TextSearchProvider to add retrieval augmented generation (RAG) capabilities to an AI agent.
// The sample uses an In-Memory vector store, which can easily be replaced with any other vector store that implements the Microsoft.Extensions.VectorData abstractions.
// The TextSearchProvider runs a search against the vector store via the TextSearchStore before each model invocation and injects the results into the model context.
// The TextSearchStore is a sample store implementation that hardcodes a storage schema and uses the vector store to store and retrieve documents.
using Azure.AI.OpenAI;
using Azure.Identity;
using Microsoft.Agents.AI;
using Microsoft.Agents.AI.Samples;
using Microsoft.Extensions.AI;
using Microsoft.Extensions.VectorData;
using Microsoft.SemanticKernel.Connectors.InMemory;
using OpenAI;
var endpoint = Environment.GetEnvironmentVariable("AZURE_OPENAI_ENDPOINT") ?? throw new InvalidOperationException("AZURE_OPENAI_ENDPOINT is not set.");
var deploymentName = Environment.GetEnvironmentVariable("AZURE_OPENAI_DEPLOYMENT_NAME") ?? "gpt-4o-mini";
var embeddingDeploymentName = Environment.GetEnvironmentVariable("AZURE_OPENAI_EMBEDDING_DEPLOYMENT_NAME") ?? "text-embedding-3-large";
AzureOpenAIClient azureOpenAIClient = new(
new Uri(endpoint),
new AzureCliCredential());
// Create an In-Memory vector store that uses the Azure OpenAI embedding model to generate embeddings.
VectorStore vectorStore = new InMemoryVectorStore(new()
{
EmbeddingGenerator = azureOpenAIClient.GetEmbeddingClient(embeddingDeploymentName).AsIEmbeddingGenerator()
});
// Create a store that defines a storage schema, and uses the vector store to store and retrieve documents.
TextSearchStore textSearchStore = new(vectorStore, "product-and-policy-info", 3072);
// Upload sample documents into the store.
await textSearchStore.UpsertDocumentsAsync(GetSampleDocuments());
// Create an adapter function that the TextSearchProvider can use to run searches against the TextSearchStore.
Func<string, CancellationToken, Task<IEnumerable<TextSearchProvider.TextSearchResult>>> SearchAdapter = async (text, ct) =>
{
// Here we are limiting the search results to the single top result to demonstrate that we are accurately matching
// specific search results for each question, but in a real world case, more results should be used.
var searchResults = await textSearchStore.SearchAsync(text, 1, ct);
return searchResults.Select(r => new TextSearchProvider.TextSearchResult
{
SourceName = r.SourceName,
SourceLink = r.SourceLink,
Text = r.Text ?? string.Empty,
RawRepresentation = r
});
};
// Configure the options for the TextSearchProvider.
TextSearchProviderOptions textSearchOptions = new()
{
// Run the search prior to every model invocation.
SearchTime = TextSearchProviderOptions.TextSearchBehavior.BeforeAIInvoke,
};
// Create the AI agent with the TextSearchProvider as the AI context provider.
AIAgent agent = azureOpenAIClient
.GetChatClient(deploymentName)
.CreateAIAgent(new ChatClientAgentOptions
{
ChatOptions = new() { Instructions = "You are a helpful support specialist for Contoso Outdoors. Answer questions using the provided context and cite the source document when available." },
AIContextProviderFactory = ctx => new TextSearchProvider(SearchAdapter, ctx.SerializedState, ctx.JsonSerializerOptions, textSearchOptions)
});
AgentThread thread = agent.GetNewThread();
Console.WriteLine(">> Asking about returns\n");
Console.WriteLine(await agent.RunAsync("Hi! I need help understanding the return policy.", thread));
Console.WriteLine("\n>> Asking about shipping\n");
Console.WriteLine(await agent.RunAsync("How long does standard shipping usually take?", thread));
Console.WriteLine("\n>> Asking about product care\n");
Console.WriteLine(await agent.RunAsync("What is the best way to maintain the TrailRunner tent fabric?", thread));
// Produces some sample search documents.
// Each one contains a source name and link, which the agent can use to cite sources in its responses.
static IEnumerable<TextSearchDocument> GetSampleDocuments()
{
yield return new TextSearchDocument
{
SourceId = "return-policy-001",
SourceName = "Contoso Outdoors Return Policy",
SourceLink = "https://contoso.com/policies/returns",
Text = "Customers may return any item within 30 days of delivery. Items should be unused and include original packaging. Refunds are issued to the original payment method within 5 business days of inspection."
};
yield return new TextSearchDocument
{
SourceId = "shipping-guide-001",
SourceName = "Contoso Outdoors Shipping Guide",
SourceLink = "https://contoso.com/help/shipping",
Text = "Standard shipping is free on orders over $50 and typically arrives in 3-5 business days within the continental United States. Expedited options are available at checkout."
};
yield return new TextSearchDocument
{
SourceId = "tent-care-001",
SourceName = "TrailRunner Tent Care Instructions",
SourceLink = "https://contoso.com/manuals/trailrunner-tent",
Text = "Clean the tent fabric with lukewarm water and a non-detergent soap. Allow it to air dry completely before storage and avoid prolonged UV exposure to extend the lifespan of the waterproof coating."
};
}