[ { "name": "eta_predictions", "displayName": "ETA Predictions", "description": "Deep learning model for predicting estimated time of arrival using historical delivery data and real-time traffic patterns", "algorithm": "mlmodel", "dashboard": "sample_superset.eta_predictions_performance", "mlStore": { "storage": "mlflow-artifacts:/1/abc123def456/artifacts/model" }, "sourceUrl": "http://localhost:8088/#/models/eta_predictions", "mlFeatures": [ { "name": "distance", "dataType": "numerical" }, { "name": "traffic_density", "dataType": "numerical" }, { "name": "weather_condition", "dataType": "categorical" }, { "name": "day_of_week", "dataType": "categorical" } ], "mlHyperParameters": [ { "name": "learning_rate", "value": "0.001" }, { "name": "batch_size", "value": "32" }, { "name": "epochs", "value": "100" }, { "name": "dropout_rate", "value": "0.3" } ] }, { "name": "forecast_sales", "displayName": "Sales Forecast Predictions", "description": "Time series forecasting model for predicting future sales based on historical trends and seasonality patterns", "algorithm": "mlmodel", "dashboard": "sample_superset.forecast_sales_performance", "mlStore": { "storage": "mlflow-artifacts:/2/xyz789abc012/artifacts/model" }, "sourceUrl": "http://localhost:8088/#/models/forecast_sales", "mlFeatures": [ { "name": "historical_sales", "dataType": "numerical" }, { "name": "month", "dataType": "categorical" }, { "name": "promotion_flag", "dataType": "categorical" } ], "mlHyperParameters": [ { "name": "seasonality_mode", "value": "multiplicative" }, { "name": "changepoint_prior_scale", "value": "0.05" }, { "name": "seasonality_prior_scale", "value": "10.0" } ] }, { "name": "customer_segmentation", "displayName": "Customer Segmentation Model", "description": "Clustering model for customer segmentation based on purchase behavior and demographics", "algorithm": "mlmodel", "dashboard": "sample_superset.eta_predictions_performance", "mlStore": { "storage": "mlflow-artifacts:/3/seg456cluster/artifacts/model" }, "sourceUrl": "http://localhost:8088/#/models/customer_segmentation", "mlFeatures": [ { "name": "total_purchase_amount", "dataType": "numerical" }, { "name": "purchase_frequency", "dataType": "numerical" }, { "name": "avg_basket_size", "dataType": "numerical" }, { "name": "customer_age_group", "dataType": "categorical" }, { "name": "preferred_category", "dataType": "categorical" } ], "mlHyperParameters": [ { "name": "n_clusters", "value": "5" }, { "name": "max_iter", "value": "300" }, { "name": "init", "value": "k-means++" }, { "name": "random_state", "value": "42" } ] } ]