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# pylint: disable=line-too-long,useless-suppression
# ------------------------------------
# Copyright (c) Microsoft Corporation.
# Licensed under the MIT License.
# ------------------------------------
"""
DESCRIPTION:
This sample demonstrates how to use agent operations with code interpreter from
the Azure Agents service using a synchronous client.
USAGE:
python sample_agents_code_interpreter.py
Before running the sample:
pip install azure-ai-projects azure-identity
Set these environment variables with your own values:
1) PROJECT_ENDPOINT - The project endpoint, as found in the overview page of your
Azure AI Foundry project.
2) MODEL_DEPLOYMENT_NAME - The deployment name of the AI model, as found under the "Name" column in
the "Models + endpoints" tab in your Azure AI Foundry project.
"""
# <imports>
import os
from azure.ai.projects import AIProjectClient
from azure.ai.agents.models import CodeInterpreterTool
from azure.ai.agents.models import FilePurpose, MessageRole
from azure.identity import DefaultAzureCredential
from pathlib import Path
# </imports>
# <client_initialization>
endpoint = os.environ["PROJECT_ENDPOINT"]
model_deployment_name = os.environ["MODEL_DEPLOYMENT_NAME"]
with AIProjectClient(
endpoint=endpoint,
credential=DefaultAzureCredential(exclude_interactive_browser_credential=False),
) as project_client:
# </client_initialization>
# Upload a file and wait for it to be processed
# [START upload_file_and_create_agent_with_code_interpreter]
# <file_upload>
file = project_client.agents.upload_file_and_poll(
file_path=str(Path(__file__).parent / "nifty_500_quarterly_results.csv"), purpose=FilePurpose.AGENTS
)
print(f"Uploaded file, file ID: {file.id}")
# </file_upload>
# <code_interpreter_setup>
code_interpreter = CodeInterpreterTool(file_ids=[file.id])
# </code_interpreter_setup>
# <agent_creation>
# Create agent with code interpreter tool and tools_resources
agent = project_client.agents.create_agent(
model=os.environ["MODEL_DEPLOYMENT_NAME"],
name="my-assistant",
instructions="You are helpful assistant",
tools=code_interpreter.definitions,
tool_resources=code_interpreter.resources,
)
# [END upload_file_and_create_agent_with_code_interpreter]
print(f"Created agent, agent ID: {agent.id}")
# </agent_creation>
# <thread_management>
thread = project_client.agents.create_thread()
print(f"Created thread, thread ID: {thread.id}")
# Create a message
message = project_client.agents.create_message(
thread_id=thread.id,
role="user",
content="Could you please create bar chart in TRANSPORTATION sector for the operating profit from the uploaded csv file and provide file to me?",
)
print(f"Created message, message ID: {message.id}")
# </thread_management>
# <message_processing>
run = project_client.agents.create_and_process_run(thread_id=thread.id, agent_id=agent.id)
print(f"Run finished with status: {run.status}")
if run.status == "failed":
# Check if you got "Rate limit is exceeded.", then you want to get more quota
print(f"Run failed: {run.last_error}")
# </message_processing>
# <file_handling>
project_client.agents.delete_file(file.id)
print("Deleted file")
# [START get_messages_and_save_files]
messages = project_client.agents.list_messages(thread_id=thread.id)
print(f"Messages: {messages}")
for image_content in messages.image_contents:
file_id = image_content.image_file.file_id
print(f"Image File ID: {file_id}")
file_name = f"{file_id}_image_file.png"
project_client.agents.save_file(file_id=file_id, file_name=file_name)
print(f"Saved image file to: {Path.cwd() / file_name}")
for file_path_annotation in messages.file_path_annotations:
print(f"File Paths:")
print(f"Type: {file_path_annotation.type}")
print(f"Text: {file_path_annotation.text}")
print(f"File ID: {file_path_annotation.file_path.file_id}")
print(f"Start Index: {file_path_annotation.start_index}")
print(f"End Index: {file_path_annotation.end_index}")
# [END get_messages_and_save_files]
# </file_handling>
last_msg = messages.get_last_text_message_by_role(MessageRole.AGENT)
if last_msg:
print(f"Last Message: {last_msg.text.value}")
# <cleanup>
project_client.agents.delete_agent(agent.id)
print("Deleted agent")
# </cleanup>