# Copyright (c) Microsoft. All rights reserved. import asyncio import os from collections.abc import Callable from typing import Any from agent_framework import Agent, MCPStreamableHTTPTool, tool from agent_framework.foundry import FoundryChatClient from agent_framework_foundry_hosting import ResponsesHostServer from azure.core.credentials import TokenCredential from azure.identity import DefaultAzureCredential, get_bearer_token_provider from dotenv import load_dotenv # Load environment variables from .env file load_dotenv() def _resolve_toolbox_endpoint() -> str: """Resolve the toolbox MCP endpoint URL. Prefers the explicit ``FOUNDRY_TOOLBOX_ENDPOINT`` env var; falls back to constructing the URL from ``FOUNDRY_PROJECT_ENDPOINT`` and ``TOOLBOX_NAME`` (the variables injected by the Foundry hosting scaffolding after ``azd provision``). """ if (endpoint := os.environ.get("FOUNDRY_TOOLBOX_ENDPOINT")) is not None: if not endpoint: raise ValueError("FOUNDRY_TOOLBOX_ENDPOINT is set but empty") return endpoint project_endpoint = os.environ["FOUNDRY_PROJECT_ENDPOINT"].rstrip("/") toolbox_name = os.environ["TOOLBOX_NAME"] return f"{project_endpoint}/toolsets/{toolbox_name}/mcp?api-version=v1" def make_toolbox_header_provider(credential: TokenCredential) -> Callable[[dict[str, Any]], dict[str, str]]: """Build a header_provider that injects a fresh Azure AI bearer token on every MCP request.""" get_token = get_bearer_token_provider(credential, "https://ai.azure.com/.default") def provide(_kwargs: dict[str, Any]) -> dict[str, str]: return { "Authorization": f"Bearer {get_token()}", } return provide @tool(description="Get the current working directory.", approval_mode="never_require") def get_cwd() -> str: """Get the current working directory.""" try: return os.getcwd() except Exception as e: return f"Error getting current working directory: {e}" @tool(description="List files in a directory.", approval_mode="never_require") def list_files(directory: str) -> list[str]: """List files in a directory.""" try: return os.listdir(directory) except Exception as e: return [f"Error listing files in {directory}: {e}"] @tool(description="Read the contents of a file.", approval_mode="never_require") def read_file(file_path: str) -> str: """Read the contents of a file.""" try: with open(file_path) as f: return f.read() except Exception as e: return f"Error reading file {file_path}: {e}" async def main(): credential = DefaultAzureCredential() client = FoundryChatClient( project_endpoint=os.environ["FOUNDRY_PROJECT_ENDPOINT"], model=os.environ["AZURE_AI_MODEL_DEPLOYMENT_NAME"], credential=credential, ) # Connect to the toolbox MCP endpoint and expose only the code_interpreter tool. # The toolbox deployed has two tools: (see agent.manifest.yaml) # - `code_interpreter` # - `web_search` # We only need the `code_interpreter` tool for this sample. toolbox_tool = MCPStreamableHTTPTool( name="foundry_toolbox", description="Tools exposed by the configured Foundry toolbox", url=_resolve_toolbox_endpoint(), header_provider=make_toolbox_header_provider(credential), load_prompts=False, allowed_tools=["code_interpreter"], ) async with Agent( client=client, instructions=( "You are a friendly assistant. Keep your answers brief. " "Make sure all mathematical calculations are performed using the code interpreter " "instead of mental arithmetic." ), tools=[get_cwd, list_files, read_file, toolbox_tool], # History will be managed by the hosting infrastructure, thus there # is no need to store history by the service. Learn more at: # https://developers.openai.com/api/reference/resources/responses/methods/create default_options={"store": False}, ) as agent: server = ResponsesHostServer(agent) await server.run_async() if __name__ == "__main__": asyncio.run(main())