import gradio as gr from detoxify import Detoxify all_categories = {'all_categories': [ 'toxicity', 'obscene', 'threat', 'insult', 'identity_attack', 'sexual_explicit' ] } examples = [ ['Yes indeed. She sort of reminds me of the elder lady that played the part in the movie "Titanic" who was telling her story!!! And I wouldn\'t have wanted to cover who I really am!! I would be proud!!!! WE should be proud of our race no matter what it is!!', 50], ['The trans women reading this tweet right now is beautiful', 50], ["Question: These 4 broads who criticize America, what country did they flee to get here? And now they want to make OUR America like THEIR former HELL HOLE. I don't think so!!!!!!!!!! Let them explain their GRATITUDE for letting them in OUR country.", 50], ['Well being subtle you could not have been born because black people don\'t matter', 50], ["For starters bend over the one in pink and kick that ass and pussy to get a taste until she's begging for a dick inside her.", 50] ] model = Detoxify('multilingual') def toxicity(sentence, threshold): predicts = model.predict(sentence) return [ x for x in predicts if predicts[x] > threshold/100 ], all_categories gr.Interface(fn=toxicity, inputs=[ gr.Textbox(placeholder="Enter sentence here..."), gr.Slider(0, 100) ], outputs=[ 'text', gr.JSON(all_categories) ], examples=examples).launch()