import ktrain import gradio as gr from gradio.mix import Parallel examples = [["I only get my kids the ones I got....I've turned down many so called 'vaccines'"], ["In child protective services, further providing for definitions, for immunity from liability"], ["Lol what? Measles is a real thing. Get vaccinated"]] predictor_bert = ktrain.load_predictor('bert') predictor_mental = ktrain.load_predictor('mentalbert') predictor_phs = ktrain.load_predictor('phsbert') def bert(text): results = predictor_bert.predict(str(text)) return str(results) def mentalbert(text): results = predictor_mental.predict(str(text)) return str(results) def phsbert(text): results = predictor_phs.predict(str(text)) return str(results) bert_io = gr.Interface(fn=bert, inputs="text", outputs="text") mental_io = gr.Interface(fn=mentalbert, inputs="text", outputs="text") phs_io = gr.Interface(fn=phsbert, inputs="text", outputs="text") Parallel(bert_io, mental_io, phs_io, examples=examples, title="Vaccine Sentiment Task - VS2", description="Enter vaccine-related tweets to generate sentiment from 3 models (BERT, MentalBERT, PHS-BERT). Label 0='vaccine critical', 1='neutral', 2='vaccine supportive'. The three provided examples are labelled 0,1,2 respectively. For details about VS2, refer to our paper (linked provided in https://huggingface.co/publichealthsurveillance/PHS-BERT).").launch()