### 1. Imports and class names setup ### import gradio as gr import os import torch from model import create_effnetb2_model from timeit import default_timer as timer from typing import Tuple, Dict # Setup class names class_names = ["pizza", "steak", "sushi"] ### 2. Model and transforms preparation ### effnetb2, effnetb2_transforms = create_effnetb2_model( num_classes=3) # Load save weights effnetb2.load_state_dict( torch.load( f="09_pretrained_effnetb2_feature_extractor_pizza_steak_sushi_20_percent.pth", map_location=torch.device("cpu") # load the model to the CPU ) ) ### 3. Predicti function ### def predict(img) -> Tuple[Dict, float]: # Start a timer start_time = timer() # Transform the input image for use with EffNetB2 img = effnetb2_transforms(img).unsqueeze(0) # uqueeze = add batch dimension on 0th index # Put model into eval mode, make prediction effnetb2.eval() with torch.inference_mode(): pred_probs = torch.softmax(effnetb2(img), dim=1) # Create a prediction label and prediction probability dictionary pred_labels_and_probs = {class_names[i]: float(pred_probs[0][i]) for i in range(len(class_names))} # Calculate pred time end_time = timer() pred_time = round(end_time-start_time, 4) # Return pred dict and pred time return pred_labels_and_probs, pred_time ### 4. Gradio app ### import gradio as gr # Create title, description and article strings title = "FoodVision Mini 🍕🥩🍣" description = "An EfficientNetB2 feature extractor computer vision model to classify images of food as pizza, steak or sushi." article = "Created at Colab" # Create example list example_list = [["examples/" + example] for example in os.listdir("examples")] # Create the Gradio demo demo = gr.Interface(fn=predict, # Maps inputs to outputs inputs=gr.Image(type="pil"), outputs=[gr.Label(num_top_classes=3, label="Predictions"), gr.Number(label="Prediction time (s)")], examples=example_list, title=title, description=description, article=article) demo.launch(debug=False) # Don't need share=True in Hugging face Spaces