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Azure AI Agent Service Code Interpreter

Code Interpreter allows the agents to write and run Python code in a sandboxed execution environment. With Code Interpreter enabled, your agent can run code iteratively to solve more challenging code, math, and data analysis problems. When your Agent writes code that fails to run, it can iterate on this code by modifying and running different code until the code execution succeeds.

Important

Code Interpreter has additional charges beyond the token based fees for Azure OpenAI usage. If your Agent calls Code Interpreter simultaneously in two different threads, two code interpreter sessions are created. Each session is active by default for one hour.

Supported models

The models page contains the most up-to-date information on regions/models where agents and code interpreter are supported.

We recommend using Agents with the latest models to take advantage of the new features, larger context windows, and more up-to-date training data.

Define imports and create a project client

To use code interpreter, first add the import statements shown in the example, and create a project client, which will contain a connection string to your AI project, and will be used to authenticate API calls.

import os
from azure.ai.projects import AIProjectClient
from azure.ai.projects.models import CodeInterpreterTool
from azure.ai.projects.models import FilePurpose
from azure.identity import DefaultAzureCredential
from pathlib import Path

# Create an Azure AI Client from a connection string, copied from your Azure AI Foundry project.
# At the moment, it should be in the format "<HostName>;<AzureSubscriptionId>;<ResourceGroup>;<HubName>"
# Customer needs to login to Azure subscription via Azure CLI and set the environment variables
project_client = AIProjectClient.from_connection_string(
    credential=DefaultAzureCredential(), conn_str=os.environ["PROJECT_CONNECTION_STRING"]
)

Upload a file

Upload the file using the upload_and_poll() function, specifying the file path and the FilePurpose.AGENTS purpose.

# Upload a file and add it to the client 
file = project_client.agents.upload_file_and_poll(
    file_path="nifty_500_quarterly_results.csv", purpose=FilePurpose.AGENTS
)
print(f"Uploaded file, file ID: {file.id}")

Create an agent with the code interpreter tool

Define the code_interpreter tool with CodeInterpreterTool() and include the file ID of the file you uploaded. Afterwards, create the agent with tools set to code_interpreter.definitions and tool_resources set to code_interpreter.resources.


code_interpreter = CodeInterpreterTool(file_ids=[file.id])

# create agent with code interpreter tool and tools_resources
agent = project_client.agents.create_agent(
    model="gpt-4o-mini",
    name="my-agent",
    instructions="You are helpful agent",
    tools=code_interpreter.definitions,
    tool_resources=code_interpreter.resources,
)

Create a thread, message, and get the agent response

Next create a thread with create_thread() and attach a message to it using create_message() that will trigger the code interpreter tool. Afterwards, create and execute a run with create_and_process_run(). Once the run finishes, you can delete the file from the agent with delete_file() to free up space in the agent. Finally, print the messages from the agent.

# create a thread
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 the TRANSPORTATION sector for the operating profit from the uploaded csv file and provide file to me?",
)
print(f"Created message, message ID: {message.id}")

# create and execute a run
run = project_client.agents.create_and_process_run(thread_id=thread.id, assistant_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}")

# delete the original file from the agent to free up space (note: this does not delete your version of the file)
project_client.agents.delete_file(file.id)
print("Deleted file")

# print the messages from the agent
messages = project_client.agents.list_messages(thread_id=thread.id)
print(f"Messages: {messages}")

# get the most recent message from the assistant
last_msg = messages.get_last_text_message_by_sender("assistant")
if last_msg:
    print(f"Last Message: {last_msg.text.value}")

Download files generated by code interpreter

Files generated by Code Interpreter can be found in the Agent message responses. You can download image file generated by code interpreter, by iterating through the response's image_contents and calling save_file() with a name and the file ID.

# save the newly created file
for image_content in messages.image_contents:
  print(f"Image File ID: {image_content.image_file.file_id}")
  file_name = f"{image_content.image_file.file_id}_image_file.png"
  project_client.agents.save_file(file_id=image_content.image_file.file_id, file_name=file_name)
  print(f"Saved image file to: {Path.cwd() / file_name}") 

Supported file types

File format MIME Type
.c text/x-c
.cpp text/x-c++
.csv application/csv
.docx application/vnd.openxmlformats-officedocument.wordprocessingml.document
.html text/html
.java text/x-java
.json application/json
.md text/markdown
.pdf application/pdf
.php text/x-php
.pptx application/vnd.openxmlformats-officedocument.presentationml.presentation
.py text/x-python
.py text/x-script.python
.rb text/x-ruby
.tex text/x-tex
.txt text/plain
.css text/css
.jpeg image/jpeg
.jpg image/jpeg
.js text/javascript
.gif image/gif
.png image/png
.tar application/x-tar
.ts application/typescript
.xlsx application/vnd.openxmlformats-officedocument.spreadsheetml.sheet
.xml application/xml or text/xml
.zip application/zip

See also