Files
T
wehub-resource-sync db620d33df
dotnet-build-and-test / dotnet-test-functions (push) Has been cancelled
dotnet-build-and-test / paths-filter (push) Has been cancelled
dotnet-build-and-test / dotnet-build (Debug, windows-latest, net9.0) (push) Has been cancelled
dotnet-build-and-test / dotnet-build (Release, ubuntu-latest, net10.0) (push) Has been cancelled
dotnet-build-and-test / dotnet-build (Release, ubuntu-latest, net8.0) (push) Has been cancelled
dotnet-build-and-test / dotnet-build (Release, windows-latest, net472) (push) Has been cancelled
dotnet-build-and-test / dotnet-test (Release, integration, true, ubuntu-latest, net10.0) (push) Has been cancelled
dotnet-build-and-test / dotnet-test (Release, integration, true, windows-latest, net472) (push) Has been cancelled
dotnet-build-and-test / dotnet-foundry-hosted-it (push) Has been cancelled
dotnet-build-and-test / dotnet-build-and-test-check (push) Has been cancelled
dotnet-build-and-test / Integration Test Report (push) Has been cancelled
CodeQL / Analyze (csharp) (push) Has been cancelled
CodeQL / Analyze (python) (push) Has been cancelled
chore: import upstream snapshot with attribution
2026-07-13 13:39:25 +08:00

92 lines
3.7 KiB
C#
Raw Blame History

This file contains ambiguous Unicode characters
This file contains Unicode characters that might be confused with other characters. If you think that this is intentional, you can safely ignore this warning. Use the Escape button to reveal them.
// Copyright (c) Microsoft. All rights reserved.
// This sample demonstrates how to define Agent Skills entirely in code using AgentInlineSkill.
// No SKILL.md files are needed — skills, resources, and scripts are all defined programmatically.
//
// Three approaches are shown using a unit-converter skill:
// 1. Static resources — inline content provided via AddResource
// 2. Dynamic resources — computed at runtime via a factory delegate
// 3. Code scripts — executable delegates the agent can invoke directly
using System.Text.Json;
using Azure.AI.Projects;
using Azure.Identity;
using Microsoft.Agents.AI;
// --- Configuration ---
string endpoint = Environment.GetEnvironmentVariable("FOUNDRY_PROJECT_ENDPOINT") ?? throw new InvalidOperationException("FOUNDRY_PROJECT_ENDPOINT is not set.");
string deploymentName = Environment.GetEnvironmentVariable("FOUNDRY_MODEL") ?? "gpt-5.4-mini";
// --- Build the code-defined skill ---
var unitConverterSkill = new AgentInlineSkill(
name: "unit-converter",
description: "Convert between common units using a multiplication factor. Use when asked to convert miles, kilometers, pounds, or kilograms.",
instructions: """
Use this skill when the user asks to convert between units.
1. Review the conversion-table resource to find the factor for the requested conversion.
2. Check the conversion-policy resource for rounding and formatting rules.
3. Use the convert script, passing the value and factor from the table.
""")
// 1. Static Resource: conversion tables
.AddResource(
"conversion-table",
"""
# Conversion Tables
Formula: **result = value × factor**
| From | To | Factor |
|-------------|-------------|----------|
| miles | kilometers | 1.60934 |
| kilometers | miles | 0.621371 |
| pounds | kilograms | 0.453592 |
| kilograms | pounds | 2.20462 |
""")
// 2. Dynamic Resource: conversion policy (computed at runtime)
.AddResource("conversion-policy", () =>
{
const int Precision = 4;
return $"""
# Conversion Policy
**Decimal places:** {Precision}
**Format:** Always show both the original and converted values with units
**Generated at:** {DateTime.UtcNow:O}
""";
})
// 3. Code Script: convert
.AddScript("convert", (double value, double factor) =>
{
double result = Math.Round(value * factor, 4);
return JsonSerializer.Serialize(new { value, factor, result });
});
// --- Skills Provider ---
var skillsProvider = new AgentSkillsProvider(unitConverterSkill);
// --- Agent Setup ---
// WARNING: DefaultAzureCredential is convenient for development but requires careful consideration in production.
// In production, consider using a specific credential (e.g., ManagedIdentityCredential) to avoid
// latency issues, unintended credential probing, and potential security risks from fallback mechanisms.
AIAgent agent = new AIProjectClient(new Uri(endpoint), new DefaultAzureCredential())
.AsAIAgent(new ChatClientAgentOptions
{
Name = "UnitConverterAgent",
ChatOptions = new()
{
ModelId = deploymentName,
Instructions = "You are a helpful assistant that can convert units.",
},
AIContextProviders = [skillsProvider],
});
// --- Example: Unit conversion ---
Console.WriteLine("Converting units with code-defined skills");
Console.WriteLine(new string('-', 60));
AgentResponse response = await agent.RunAsync(
"How many kilometers is a marathon (26.2 miles)? And how many pounds is 75 kilograms?");
Console.WriteLine($"Agent: {response.Text}");