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03_​Deployment_​and_​Signal_​Reconstruction

This workflow performs out-of-sample forecasting of hourly energy consumption. It accesses a pretrained machine learning model that predicts the residual part of the time series using lagged values as predictors. The out-of-sample forecasts are generated in a loop so that forecasted values are used for predicting values further ahead in time. Finally, seasonality and trend are restored to the time series, and the forecasting accuracy is shown by comparing the actual and forecasted values via scoring metrics and a line plot.

Time Series AnalysisModel DeploymentThis workflow generates dynamic forecasts trendtrained modelseed.tableSeasonalityDeployment.table Restore Seasonalityand Trend Visualizationand Metrics Loop Deployment RowID Table Rowto Variable PMML Reader Model Reader Table Reader Table Reader Table Reader Joiner Time Series AnalysisModel DeploymentThis workflow generates dynamic forecasts trendtrained modelseed.tableSeasonalityDeployment.table Restore Seasonalityand Trend Visualizationand Metrics Loop Deployment RowID Table Rowto Variable PMML Reader Model Reader Table Reader Table Reader Table Reader Joiner

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