Quick Start
Get up and running with AG2 in just 3 minutes! This guide will help you set up your environment and build your very first multi-agent workflow. In just a few steps, you'll have your first agent up and running. Let's make it happen!
Set Up Your Environment#
Tip
We recommend using a virtual environment for your project to keep your packages contained. See venv.
Install AG2
AG2 requires Python version >= 3.9, < 3.14. Install AG2 with OpenAI integration using pip:
The package is available under ag2
, pyautogen
, or autogen
names. The default installation includes minimal dependencies, you can add extra options based on your specific requirements.
Warning
From version 0.8: The OpenAI package, openai
, is not installed by default.
Install AG2 with your preferred model provider(s), for example:
pip install ag2[openai]
pip install ag2[gemini]
pip install ag2[anthropic,cohere,mistral]
On Mac OS, if you get "no matches found:", add a quote to the package name, for example: - pip install "ag2[openai]"
Build Your First Agent Workflow#
Let’s build a poetic AI assistant that responds in rhymes using AG2 and OpenAI’s GPT-4o-mini model.
This example demonstrates how to:
- Set up an LLM configuration
- Create a conversational AI agent
- Run an interactive multi-turn conversation
Create a Python script called first_agent.py
, and paste the following code into it:
# 1. Import our agent class
from autogen import ConversableAgent, LLMConfig
# 2. Define our LLM configuration for OpenAI's GPT-4o mini
# uses the OPENAI_API_KEY environment variable
llm_config = LLMConfig(api_type="openai", model="gpt-4o-mini")
# 3. Create our LLM agent
with llm_config:
my_agent = ConversableAgent(
name="helpful_agent",
system_message="You are a poetic AI assistant, respond in rhyme.",
)
# 4. Run the agent with a prompt
response = my_agent.run(
message="In one sentence, what's the big deal about AI?",
max_turns=3,
user_input=True
)
# 5. Iterate through the chat automatically with console output
response.process()
# 6. Print the chat
print(response.messages)
Info
Why Two Steps: run()
and process()
You might wonder why we need to call both run()
and process()
to get results.
👉 Here’s what’s happening:
When you call run()
, it doesn’t immediately give you the final output. Instead, it returns an iterator, a special object that holds a stream of events, messages, and metadata.
👉 Why? Because flexibility matters.
The workflow steps won’t actually start running until you iterate over this iterator. This design gives you full control and makes it easy to build things like:
- Custom UIs
- Real-time dashboards
- Interactive apps where you control how and when each event is handled
👉 Okay — so what does process()
do?
process()
is a built-in helper method that takes care of iterating through those events for you. It simulates a chat-like console experience — printing messages, handling user inputs, and making it feel like a live conversation.
👉 In short:
Use run()
when you want full control over the workflow’s events and outputs.
Use process()
along with run()
when you just want a quick, ready-to-go chat experience in the console.
👉 Learn more about the run()
method here →
Run Your Example#
Now you're ready to see your poetic AI agent in action!
Note
Before running this code, make sure to set your OPENAI_API_KEY
as an environment variable. This example uses gpt-4o-mini
, but you can replace it with any other model supported by AG2.
In your terminal, run:
If everything is set up correctly, the agent will reply to your initial message in rhyme, then prompt you for a response. You can either:
- Type a reply — and the agent will respond in rhyme to your message
- Press Enter — to send an empty message to the agent, and see how it creatively responds
- Type exit — to end the conversation
The interaction continues for up to 3 turns (or until you exit).
Example Output#
user (to helpful_agent):
In one sentence, what's the big deal about AI?
--------------------------------------------------------------------------------
>>>>>>>> USING AUTO REPLY...
helpful_agent (to user):
AI transforms our world, enhancing life’s parade,
With insights and solutions, it helps plans cascade.
--------------------------------------------------------------------------------
Replying as user. Provide feedback to helpful_agent. Press enter to skip and use auto-reply, or type 'exit' to end the conversation:
That's it—you've built your first multi-agent system with AG2 🎉