import gradio as gr from sklearn.hub import HubLoader hub = HubLoader("risingodegua/wine-quality-model", "sklearn_model.joblib") model = hub.load() def wine_quality_predictor(X): '''Predicts the quality of wine Parameters ---------- X : numpy, list A list containing values used for prediction. Returns ------- List The list of predicted values. ''' return model.predict(X.to_numpy()) headers = [ "fixed acidity", "volatile acidity", "citric acid", "residual sugar", "chlorides", "free sulfur dioxide", "total sulfur dioxide", "density", "pH", "sulphates", "alcohol", ] default = [ [7.4, 0.7, 0, 1.9, 0.076, 11, 34, 0.9978, 3.51, 0.56, 9.4], [7.8, 0.88, 0, 2.6, 0.098, 25, 67, 0.9968, 3.2, 0.68, 9.8], [7.8, 0.76, 0.04, 2.3, 0.092, 15, 54, 0.997, 3.26, 0.65, 9.8], ] iface = gr.Interface( wine_quality_predictor, gr.inputs.Dataframe( headers=headers, default=default, ), ["numpy"], description="Enter wine properties for prediction" ) iface.launch()