import tensorflow as tf import gradio as gr import cv2 import numpy as np new_model = tf.keras.models.load_model('breedclassification.h5') def predict_classes(link): img = cv2.resize(link,(224,224)) img = img/255 img = img.reshape(-1,224,224,3) pred = np.round(new_model.predict(img)).argmax(axis = 1) dic = {0: 'Herding breed', 1: 'Hound breed', 2: 'Non sporting breed', 3: 'Terrior breed', 4:'working breed', 5: 'sporting breed', 6: 'toy breed'} print(dic.get(int(pred))) a = dic.get(int(pred)) return a label = gr.outputs.Label(num_top_classes=7) gr.Interface(fn=predict_classes, inputs='image', outputs=label,interpretation='default').launch()