Gradio-Lite: Serverless Gradio Running Entirely in Your Browser

Published October 19, 2023
Update on GitHub

This article is also available in Chinese 简体中文.

Gradio is a popular Python library for creating interactive machine learning apps. Traditionally, Gradio applications have relied on server-side infrastructure to run, which can be a hurdle for developers who need to host their applications.

Enter Gradio-lite (@gradio/lite): a library that leverages Pyodide to bring Gradio directly to your browser. In this blog post, we'll explore what @gradio/lite is, go over example code, and discuss the benefits it offers for running Gradio applications.

What is @gradio/lite?

@gradio/lite is a JavaScript library that enables you to run Gradio applications directly within your web browser. It achieves this by utilizing Pyodide, a Python runtime for WebAssembly, which allows Python code to be executed in the browser environment. With @gradio/lite, you can write regular Python code for your Gradio applications, and they will run seamlessly in the browser without the need for server-side infrastructure.

Getting Started

Let's build a "Hello World" Gradio app in @gradio/lite

1. Import JS and CSS

Start by creating a new HTML file, if you don't have one already. Importing the JavaScript and CSS corresponding to the @gradio/lite package by using the following code:

<html>
    <head>
        <script type="module" crossorigin src="https://cdn.jsdelivr.net/npm/@gradio/lite/dist/lite.js"></script>
        <link rel="stylesheet" href="https://cdn.jsdelivr.net/npm/@gradio/lite/dist/lite.css" />
    </head>
</html>

Note that you should generally use the latest version of @gradio/lite that is available. You can see the versions available here.

2. Create the <gradio-lite> tags

Somewhere in the body of your HTML page (wherever you'd like the Gradio app to be rendered), create opening and closing <gradio-lite> tags.

<html>
    <head>
        <script type="module" crossorigin src="https://cdn.jsdelivr.net/npm/@gradio/lite/dist/lite.js"></script>
        <link rel="stylesheet" href="https://cdn.jsdelivr.net/npm/@gradio/lite/dist/lite.css" />
    </head>
    <body>
        <gradio-lite>
        </gradio-lite>
    </body>
</html>

Note: you can add the theme attribute to the <gradio-lite> tag to force the theme to be dark or light (by default, it respects the system theme). E.g.

<gradio-lite theme="dark">
...
</gradio-lite>

3. Write your Gradio app inside of the tags

Now, write your Gradio app as you would normally, in Python! Keep in mind that since this is Python, whitespace and indentations matter.

<html>
    <head>
        <script type="module" crossorigin src="https://cdn.jsdelivr.net/npm/@gradio/lite/dist/lite.js"></script>
        <link rel="stylesheet" href="https://cdn.jsdelivr.net/npm/@gradio/lite/dist/lite.css" />
    </head>
    <body>
        <gradio-lite>
        import gradio as gr

        def greet(name):
            return "Hello, " + name + "!"
        
        gr.Interface(greet, "textbox", "textbox").launch()
        </gradio-lite>
    </body>
</html>

And that's it! You should now be able to open your HTML page in the browser and see the Gradio app rendered! Note that it may take a little while for the Gradio app to load initially since Pyodide can take a while to install in your browser.

Note on debugging: to see any errors in your Gradio-lite application, open the inspector in your web browser. All errors (including Python errors) will be printed there.

More Examples: Adding Additional Files and Requirements

What if you want to create a Gradio app that spans multiple files? Or that has custom Python requirements? Both are possible with @gradio/lite!

Multiple Files

Adding multiple files within a @gradio/lite app is very straightforward: use the <gradio-file> tag. You can have as many <gradio-file> tags as you want, but each one needs to have a name attribute and the entry point to your Gradio app should have the entrypoint attribute.

Here's an example:

<gradio-lite>

<gradio-file name="app.py" entrypoint>
import gradio as gr
from utils import add

demo = gr.Interface(fn=add, inputs=["number", "number"], outputs="number")

demo.launch()
</gradio-file>

<gradio-file name="utils.py" >
def add(a, b):
    return a + b
</gradio-file>

</gradio-lite>		

Additional Requirements

If your Gradio app has additional requirements, it is usually possible to install them in the browser using micropip. We've created a wrapper to make this paticularly convenient: simply list your requirements in the same syntax as a requirements.txt and enclose them with <gradio-requirements> tags.

Here, we install transformers_js_py to run a text classification model directly in the browser!

<gradio-lite>

<gradio-requirements>
transformers_js_py
</gradio-requirements>

<gradio-file name="app.py" entrypoint>
from transformers_js import import_transformers_js
import gradio as gr

transformers = await import_transformers_js()
pipeline = transformers.pipeline
pipe = await pipeline('sentiment-analysis')

async def classify(text):
    return await pipe(text)

demo = gr.Interface(classify, "textbox", "json")
demo.launch()
</gradio-file>

</gradio-lite>	

Try it out: You can see this example running in this Hugging Face Static Space, which lets you host static (serverless) web applications for free. Visit the page and you'll be able to run a machine learning model without internet access!

Benefits of Using @gradio/lite

1. Serverless Deployment

The primary advantage of @gradio/lite is that it eliminates the need for server infrastructure. This simplifies deployment, reduces server-related costs, and makes it easier to share your Gradio applications with others.

2. Low Latency

By running in the browser, @gradio/lite offers low-latency interactions for users. There's no need for data to travel to and from a server, resulting in faster responses and a smoother user experience.

3. Privacy and Security

Since all processing occurs within the user's browser, @gradio/lite enhances privacy and security. User data remains on their device, providing peace of mind regarding data handling.

Limitations

  • Currently, the biggest limitation in using @gradio/lite is that your Gradio apps will generally take more time (usually 5-15 seconds) to load initially in the browser. This is because the browser needs to load the Pyodide runtime before it can render Python code.

  • Not every Python package is supported by Pyodide. While gradio and many other popular packages (including numpy, scikit-learn, and transformers-js) can be installed in Pyodide, if your app has many dependencies, its worth checking whether the dependencies are included in Pyodide, or can be installed with micropip.

Try it out!

You can immediately try out @gradio/lite by copying and pasting this code in a local index.html file and opening it with your browser:

<html>
    <head>
        <script type="module" crossorigin src="https://cdn.jsdelivr.net/npm/@gradio/lite/dist/lite.js"></script>
        <link rel="stylesheet" href="https://cdn.jsdelivr.net/npm/@gradio/lite/dist/lite.css" />
    </head>
    <body>
        <gradio-lite>
        import gradio as gr

        def greet(name):
            return "Hello, " + name + "!"
        
        gr.Interface(greet, "textbox", "textbox").launch()
        </gradio-lite>
    </body>
</html>

We've also created a playground on the Gradio website that allows you to interactively edit code and see the results immediately!

Playground: https://www.gradio.app/playground