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Update app.py
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import gradio as gr
from transformers import pipeline
# Load the models
MODEL_PATHS = {
"Toxic Bert-based model": "unitary/toxic-bert",
"Martin-HA-toxic-comment-model": "martin-ha/toxic-comment-model"
}
classifiers = {name: pipeline("text-classification", model=path, tokenizer=path) for name, path in MODEL_PATHS.items()}
def predict_toxicity(text, model_choice):
# Get predictions
classifier = classifiers[model_choice]
predictions = classifier(text, return_all_scores=True)[0]
# Format results
results = {}
for pred in predictions:
results[pred['label']] = f"{pred['score']:.4f}"
return results
# Create the Gradio interface
iface = gr.Interface(
fn=predict_toxicity,
inputs=[
gr.Textbox(lines=5, label="Enter text to analyze"),
gr.Radio(choices=list(MODEL_PATHS.keys()), label="Choose a model", value="Toxic Bert-based model")
],
outputs=gr.Label(num_top_classes=6, label="Toxicity Scores"),
title="Toxicity Prediction",
description="This POC uses trained & pre-trained models to predict toxicity in text. Choose between two models: 'Toxic Bert-based model' for multi-class labeling and 'Martin-HA-toxic-comment-model' for binary clasification.",
examples=[
["Great game everyone!", "Toxic Bert-based model"],
["You're such a noob, uninstall please.", "Martin-HA-toxic-comment-model"],
["I hope you die in real life, loser.", "Toxic Bert-based model"],
["Nice move! How did you do that?", "Martin-HA-toxic-comment-model"],
["Go back to the kitchen where you belong.", "Toxic Bert-based model"],
]
)
# Launch the app
iface.launch()