--- title: chatbotappgradio app_file: app.py sdk: gradio sdk_version: 5.14.0 --- # `hyperbolic-gradio` is a Python package that makes it very easy for developers to create machine learning apps that are powered by Hyperbolic AI's API. # Installation You can install `hyperbolic-gradio` directly using pip: ```bash pip install hyperbolic-gradio ``` That's it! # Basic Usage Just like if you were to use the `hyperbolic` API, you should first save your Hyperbolic API key to this environment variable: ``` export HYPERBOLIC_API_KEY= ``` Then in a Python file, write: ```python import gradio as gr import hyperbolic_gradio gr.load( name='meta-llama/Meta-Llama-3-70B-Instruct', src=hyperbolic_gradio.registry, ).launch() ``` Run the Python file, and you should see a Gradio Interface connected to the model on Hyperbolic AI! ![ChatInterface](https://raw.githubusercontent.com/HyperbolicLabs/hyperbolic-gradio/master/chatinterface.png) # Customization Once you can create a Gradio UI from an Hyperbolic API endpoint, you can customize it by setting your own input and output components, or any other arguments to `gr.Interface`. For example, the screenshot below was generated with: ```py import gradio as gr import hyperbolic_gradio gr.load( name='meta-llama/Meta-Llama-3-70B-Instruct', src=hyperbolic_gradio.registry, title='Hyperbolic-Gradio Integration', description="Chat with Meta-Llama-3-70B-Instruct model.", examples=["Explain quantum gravity to a 5-year old.", "How many R are there in the word Strawberry?"] ).launch() ``` ![ChatInterface with customizations](https://raw.githubusercontent.com/HyperbolicLabs/hyperbolic-gradio/master/hyperbolic-gradio.png) # Composition Or use your loaded Interface within larger Gradio Web UIs, e.g. ```python import gradio as gr import hyperbolic_gradio with gr.Blocks() as demo: with gr.Tab("Meta-Llama-3-70B-Instruct"): gr.load('meta-llama/Meta-Llama-3-70B-Instruct', src=hyperbolic_gradio.registry) with gr.Tab("Llama-3.2-3B-Instruct"): gr.load('meta-llama/Llama-3.2-3B-Instruct', src=hyperbolic_gradio.registry) demo.launch() ``` # Under the Hood The `hyperbolic-gradio` Python library has two dependencies: `hyperbolic` and `gradio`. It defines a "registry" function `hyperbolic_gradio.registry`, which takes in a model name and returns a Gradio app. # Supported Models in Hyperbolic AI All chat API models supported by Hyperbolic AI are compatible with this integration. For a comprehensive list of available models and their specifications, please refer to the [Hyperbolic AI Models documentation](https://platform.hyperbolic.ai/docs/models). ------- Note: if you are getting a 401 authentication error, then the Hyperbolic API Client is not able to get the API token from the environment variable. This happened to me as well, in which case save it in your Python session, like this: ```py import os os.environ["HYPERBOLIC_API_KEY"] = ... ```