# Core ChainLit Integration Sample In this sample, we will demonstrate how to build simple chat interface that interacts with a [Core](https://microsoft.github.io/autogen/stable/user-guide/core-user-guide/index.html) agent or a team, using [Chainlit](https://github.com/Chainlit/chainlit), and support streaming messages. ## Overview The `core_chainlit` sample is designed to illustrate a simple use case of ChainLit integrated with a single-threaded agent runtime. It includes the following components: - **Single Agent**: A single agent that operates within the ChainLit environment. - **Group Chat**: A group chat setup featuring two agents: - **Assistant Agent**: This agent responds to user inputs. - **Critic Agent**: This agent reflects on and critiques the responses from the Assistant Agent. - **Closure Agent**: Utilizes a closure agent to aggregate output messages into an output queue. - **Token Streaming**: Demonstrates how to stream tokens to the user interface. - **Session Management**: Manages the runtime and output queue within the ChainLit user session. ## Requirements To run this sample, you will need: - Python 3.8 or higher - Installation of necessary Python packages as listed in `requirements.txt` ## Installation To run this sample, you will need to install the following packages: ```shell pip install -U chainlit autogen-core autogen-ext[openai] pyyaml ``` To use other model providers, you will need to install a different extra for the `autogen-ext` package. See the [Models documentation](https://microsoft.github.io/autogen/stable/user-guide/agentchat-user-guide/tutorial/models.html) for more information. ## Model Configuration Create a configuration file named `model_config.yaml` to configure the model you want to use. Use `model_config_template.yaml` as a template. ## Running the Agent Sample The first sample demonstrate how to interact with a single AssistantAgent from the chat interface. Note: cd to the sample directory. ```shell chainlit run app_agent.py ``` ## Running the Team Sample The second sample demonstrate how to interact with a team of agents from the chat interface. ```shell chainlit run app_team.py -h ``` There are two agents in the team: one is instructed to be generally helpful and the other one is instructed to be a critic and provide feedback.