import gradio as gr from transformers import pipeline # repo_id = "YOUR_USERNAME/YOUR_LEARNER_NAME" repo_id = "luisvarona/clasificador-trek" resumidor = pipeline('text2text-generation', model='luisvarona/modelo_resumen') # Definimos una funciĆ³n que se encarga de llevar a cabo las predicciones def predict(str): # dic_label_score = classifier(str)[0] # label = dic_label_score['label'] # score = dic_label_score['score'] # dicc = {'LABEL_0': 'ABBR', 'LABEL_1': 'ENTY', 'LABEL_2': 'DESC', 'LABEL_3': 'HUM', 'LABEL_4': 'LOC', 'LABEL_5': 'NUM'} # label = dicc[label] return resumidor(str) # Creamos la interfaz y la lanzamos. gr.Interface(fn=predict, inputs="textbox", outputs="textbox", examples=['How old are you?','What time is it?']).launch(share=True)