# Import necessary libraries import gradio as gr from fastai.vision.all import * import skimage # Load a pre-trained deep learning model for image classification learn = load_learner('export.pkl') # Get the labels (classes) for the model's predictions labels = learn.dls.vocab # Define a function to make predictions on input images def predict(img): # Create a PIL image from the input image img = PILImage.create(img) # Use the loaded model to make predictions on the image pred,pred_idx,probs = learn.predict(img) # Create a dictionary to map labels to their corresponding probabilities return {labels[i]: float(probs[i]) for i in range(len(labels))} # Set up the Gradio interface with relevant information title = "What's my Pet Breed?" description = "A pet breed classifier trained on the Oxford Pets dataset with fastai. Created as a demo for Gradio and HuggingFace Spaces." interpretation='default' enable_queue=True # Launch the Gradio interface with the predict function for image classification gr.Interface(fn=predict,inputs="image",outputs="label").launch()