.ipynb_checkpoints | ||
build/lib/gradio | ||
dist | ||
examples | ||
gradio | ||
gradio.egg-info | ||
screenshots | ||
test | ||
.gitignore | ||
index.html | ||
MANIFEST.in | ||
README.md | ||
setup.py | ||
Test Notebook.ipynb |
Gradiome / Gradio
Gradio
is a python library that allows you to place input and output interfaces over trained models to make it easy for you to "play around" with your model. Gradio runs entirely locally using your browser.
To get a sense of gradio
, take a look at the python notebooks in the examples
folder, or read on below!
Installation
pip install gradio
(you may need to replace pip
with pip3
if you're running python3
).
Usage
Gradio is very easy to use with your existing code. The general way it's used is something like this:
import tensorflow as tf
import gradio
mdl = tf.keras.models.Sequential()
# ... define and train the model as you would normally
iface = gradio.Interface(input=“sketchpad”, output=“class”, model_type=“keras”, model=mdl)
iface.launch()
Changing the input
and output
parameters in the Interface
face object allow you to create different interfaces, depending on the needs of your model. Take a look at the python notebooks for more examples. The currently supported interfaces are as follows:
Input interfaces:
- Sketchpad
- ImageUplaod
- Webcam
- Textbox
Output interfaces:
- Class
- Textbox
Screenshots
Here are a few screenshots that show examples of gradio interfaces
MNIST Digit Recognition (Input: Sketchpad, Output: Class)
iface = gradio.Interface(input='sketchpad', output='class', model=model, model_type='keras')
iface.launch()
Facial Emotion Detector (Input: Webcam, Output: Class)
iface = gradio.Interface(input='webcam', output='class', model=model, model_type='keras')
iface.launch()
Sentiment Analysis (Input: Textbox, Output: Class)
iface = gradio.Interface(input='textbox', output='class', model=model, model_type='keras')
iface.launch()