79 lines
4.0 KiB
C#
79 lines
4.0 KiB
C#
// Copyright (c) Microsoft. All rights reserved.
|
|
|
|
// ==========================================================================================================
|
|
// The easier way to instantiate the Semantic Kernel is to use KernelBuilder.
|
|
// You can access the builder using Kernel.CreateBuilder().
|
|
|
|
using System.Diagnostics;
|
|
using Microsoft.Extensions.DependencyInjection;
|
|
using Microsoft.Extensions.Logging;
|
|
using Microsoft.SemanticKernel;
|
|
using Microsoft.SemanticKernel.Plugins.Core;
|
|
|
|
namespace DependencyInjection;
|
|
|
|
public class Kernel_Building(ITestOutputHelper output) : BaseTest(output)
|
|
{
|
|
[Fact]
|
|
public void BuildKernelUsingServiceCollection()
|
|
{
|
|
// For greater flexibility and to incorporate arbitrary services, KernelBuilder.Services
|
|
// provides direct access to an underlying IServiceCollection.
|
|
IKernelBuilder builder = Kernel.CreateBuilder();
|
|
builder.Services.AddLogging(c => c.AddConsole().SetMinimumLevel(LogLevel.Information))
|
|
.AddHttpClient()
|
|
.AddAzureOpenAIChatCompletion(
|
|
deploymentName: TestConfiguration.AzureOpenAI.ChatDeploymentName,
|
|
endpoint: TestConfiguration.AzureOpenAI.Endpoint,
|
|
apiKey: TestConfiguration.AzureOpenAI.ApiKey,
|
|
modelId: TestConfiguration.AzureOpenAI.ChatModelId);
|
|
Kernel kernel2 = builder.Build();
|
|
}
|
|
|
|
[Fact]
|
|
public void BuildKernelUsingServiceProvider()
|
|
{
|
|
// Every call to KernelBuilder.Build creates a new Kernel instance, with a new service provider
|
|
// and a new plugin collection.
|
|
var builder = Kernel.CreateBuilder();
|
|
Debug.Assert(!ReferenceEquals(builder.Build(), builder.Build()));
|
|
|
|
// KernelBuilder provides a convenient API for creating Kernel instances. However, it is just a
|
|
// wrapper around a service collection, ultimately constructing a Kernel
|
|
// using the public constructor that's available for anyone to use directly if desired.
|
|
var services = new ServiceCollection();
|
|
services.AddLogging(c => c.AddConsole().SetMinimumLevel(LogLevel.Information));
|
|
services.AddHttpClient();
|
|
services.AddAzureOpenAIChatCompletion(
|
|
deploymentName: TestConfiguration.AzureOpenAI.ChatDeploymentName,
|
|
endpoint: TestConfiguration.AzureOpenAI.Endpoint,
|
|
apiKey: TestConfiguration.AzureOpenAI.ApiKey,
|
|
modelId: TestConfiguration.AzureOpenAI.ChatModelId);
|
|
Kernel kernel4 = new(services.BuildServiceProvider());
|
|
|
|
// Kernels can also be constructed and resolved via such a dependency injection container.
|
|
services.AddTransient<Kernel>();
|
|
Kernel kernel5 = services.BuildServiceProvider().GetRequiredService<Kernel>();
|
|
}
|
|
|
|
[Fact]
|
|
public void BuildKernelUsingServiceCollectionExtension()
|
|
{
|
|
// In fact, the AddKernel method exists to simplify this, registering a singleton KernelPluginCollection
|
|
// that can be populated automatically with all IKernelPlugins registered in the collection, and a
|
|
// transient Kernel that can then automatically be constructed from the service provider and resulting
|
|
// plugins collection.
|
|
var services = new ServiceCollection();
|
|
services.AddLogging(c => c.AddConsole().SetMinimumLevel(LogLevel.Information));
|
|
services.AddHttpClient();
|
|
services.AddKernel().AddAzureOpenAIChatCompletion(
|
|
deploymentName: TestConfiguration.AzureOpenAI.ChatDeploymentName,
|
|
endpoint: TestConfiguration.AzureOpenAI.Endpoint,
|
|
apiKey: TestConfiguration.AzureOpenAI.ApiKey,
|
|
modelId: TestConfiguration.AzureOpenAI.ChatModelId);
|
|
services.AddSingleton<KernelPlugin>(sp => KernelPluginFactory.CreateFromType<TimePlugin>(serviceProvider: sp));
|
|
services.AddSingleton<KernelPlugin>(sp => KernelPluginFactory.CreateFromType<HttpPlugin>(serviceProvider: sp));
|
|
Kernel kernel6 = services.BuildServiceProvider().GetRequiredService<Kernel>();
|
|
}
|
|
}
|