import gradio as gr import hopsworks project = hopsworks.login() fs = project.get_feature_store() dataset_api = project.get_dataset_api() wine_pred_fg = fs.get_feature_group(name="wine_predictions", version=1) df = wine_pred_fg.read() latest_pred = df['prediction'].iloc[-1] latest_label = df['label'].iloc[-1] latest_pred = {'High Quality': float(latest_pred[2]), 'Good Quality': float(latest_pred[1]), 'Low Quality': float(latest_pred[0])} latest_label = 'Low Quality' if latest_label == 0 else 'Good Quality' if latest_label == 1 else 'High Quality' dataset_api.download("Resources/images/df_recent.png", overwrite=True) dataset_api.download("Resources/images/confusion_matrix.png", overwrite=True) with gr.Blocks() as demo: with gr.Row(): with gr.Column(): gr.Label("Today's Predicted Wine Quality") gr.Label(latest_pred, num_top_classes=3, ) with gr.Column(): gr.Label("Today's Actual Wine Quality ") gr.Label(latest_label) with gr.Row(): with gr.Column(): gr.Label("Recent Prediction History") input_img = gr.Image("df_recent.png", elem_id="recent-predictions") with gr.Column(): gr.Label("Confusion Maxtrix with Historical Prediction Performance") input_img = gr.Image("confusion_matrix.png", elem_id="confusion-matrix") demo.launch()