import gradio as gr import torch from transformers import pipeline import numpy as np import time pipe_base = pipeline("automatic-speech-recognition", model="aitor-medrano/lara-base-pushed") pipe_small = pipeline("automatic-speech-recognition", model="aitor-medrano/whisper-small-lara") pipe_base_1600 = pipeline("automatic-speech-recognition", model="aitor-medrano/whisper-base-lara-1600") def greet(grabacion): inicio = time.time() sr, y = grabacion # Pasamos el array de muestras a tipo NumPy de 32 bits y = y.astype(np.float32) y /= np.max(np.abs(y)) inicio_base = time.time() result_base = "base:" + pipe_base({"sampling_rate": sr, "raw": y})["text"] fin_base = time.time() inicio_small = time.time() result_small = "small:" + pipe_small({"sampling_rate": sr, "raw": y})["text"] fin_small = time.time() inicio_1600 = time.time() result_base_1600 = "base_2000:" + pipe_base_1600({"sampling_rate": sr, "raw": y})["text"] fin_1600 = time.time() fin = time.time() return result_base, fin_base - inicio_base, result_small, fin_small - inicio_small, result_base_1600, fin_1600 - inicio_1600, fin - inicio #return result_base, result_small, fin - inicio demo = gr.Interface(fn=greet, inputs=[ gr.Audio(), ], outputs=[ gr.Text(label="Salida (Base)"), gr.Number(label="Tiempo (Base)"), gr.Text(label="Salida (Small)"), gr.Number(label="Tiempo (Small)"), gr.Text(label="Salida (Base 1600)"), gr.Number(label="Tiempo (1600)"), gr.Number(label="Tiempo") ]) demo.launch()