107 lines
3.9 KiB
C#
107 lines
3.9 KiB
C#
// Copyright (c) Microsoft. All rights reserved.
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using Microsoft.SemanticKernel;
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using Microsoft.SemanticKernel.Agents.OpenAI;
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using OpenAI.Responses;
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using Plugins;
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namespace GettingStarted.OpenAIResponseAgents;
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/// <summary>
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/// This example demonstrates using <see cref="OpenAIResponseAgent"/>.
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/// </summary>
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public class Step03_OpenAIResponseAgent_ReasoningModel(ITestOutputHelper output) : BaseResponsesAgentTest(output, "o4-mini")
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{
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[Fact]
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public async Task UseOpenAIResponseAgentWithAReasoningModelAsync()
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{
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// Define the agent
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OpenAIResponseAgent agent = new(this.Client, this.ModelId)
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{
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Name = "ResponseAgent",
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Instructions = "Answer all queries with a detailed response.",
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};
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// Invoke the agent and output the response
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var responseItems = agent.InvokeAsync("Which of the last four Olympic host cities has the highest average temperature?");
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await foreach (ChatMessageContent responseItem in responseItems)
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{
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WriteAgentChatMessage(responseItem);
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}
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}
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[Fact]
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public async Task UseOpenAIResponseAgentWithAReasoningModelAndSummariesAsync()
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{
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// Define the agent
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OpenAIResponseAgent agent = new(this.Client, this.ModelId);
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// ResponseCreationOptions allows you to specify tools for the agent.
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OpenAIResponseAgentInvokeOptions invokeOptions = new()
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{
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ResponseCreationOptions = new()
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{
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ReasoningOptions = new()
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{
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ReasoningEffortLevel = ResponseReasoningEffortLevel.High,
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// This parameter cannot be used due to a known issue in the OpenAI .NET SDK.
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// https://github.com/openai/openai-dotnet/issues/457
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// ReasoningSummaryVerbosity = ResponseReasoningSummaryVerbosity.Detailed,
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},
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},
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};
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// Invoke the agent and output the response
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var responseItems = agent.InvokeAsync(
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"""
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Instructions:
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- Given the React component below, change it so that nonfiction books have red
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text.
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- Return only the code in your reply
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- Do not include any additional formatting, such as markdown code blocks
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- For formatting, use four space tabs, and do not allow any lines of code to
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exceed 80 columns
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const books = [
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{ title: 'Dune', category: 'fiction', id: 1 },
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{ title: 'Frankenstein', category: 'fiction', id: 2 },
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{ title: 'Moneyball', category: 'nonfiction', id: 3 },
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];
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export default function BookList() {
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const listItems = books.map(book =>
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<li>
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{book.title}
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</li>
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);
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return (
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<ul>{listItems}</ul>
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);
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}
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""", options: invokeOptions);
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await foreach (ChatMessageContent responseItem in responseItems)
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{
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WriteAgentChatMessage(responseItem);
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}
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}
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[Fact]
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public async Task UseOpenAIResponseAgentWithAReasoningModelAndToolsAsync()
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{
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// Define the agent
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OpenAIResponseAgent agent = new(this.Client, this.ModelId)
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{
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Name = "ResponseAgent",
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Instructions = "Answer all queries with a detailed response.",
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};
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// Create a plugin that defines the tools to be used by the agent.
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KernelPlugin plugin = KernelPluginFactory.CreateFromType<MenuPlugin>();
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agent.Kernel.Plugins.Add(plugin);
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// Invoke the agent and output the response
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var responseItems = agent.InvokeAsync("What is the best value healthy meal?");
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await foreach (ChatMessageContent responseItem in responseItems)
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{
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WriteAgentChatMessage(responseItem);
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}
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}
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}
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