import pandas as pd dataset = pd.read_csv('a1_RestaurantReviews_HistoricDump.tsv', delimiter = '\t', quoting = 3) import pickle tokenizer=pickle.load(open("tokenizer.pkl","rb")) from keras.utils import pad_sequences model=pickle.load(open("model.pkl","rb")) def calc(user_input): user_input=[user_input] seq=tokenizer.texts_to_sequences(user_input) inp=pad_sequences(seq,padding='post',maxlen=51) score=(model.predict(inp))[0][0] if score>0.6: return("positive") elif score <0.4: return("negative") else: return("neutral") import gradio as gr gr.Interface(fn=calc,inputs=gr.inputs.Textbox(placeholder="Input the feeedback to be reviewed"),outputs="textbox").launch();