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04_​Model_​Comparison

Workflow to compare forecast performances and execution times of classical time series models, machine learning models, and an LSTM model

Data Access Forecasts by different time series models- Random Forest (Regression)- Linear Regression- Seasonal Naive- Moving Average- SARIMA- LSTM NetworkThe forecast horizon is one week (168 values) Access pretrained models Access seed data Forecast Restore seasonality and trend to forecasts Evaluate forecasts How fast is each model? substuting missing values with average ofprevious and nextLSTM.h51. Random Forest2. Linear Regression3. Seasonal Naive4. Moving average5. SARIMA6. LSTMRandomForest.modelLinReg.pmmlseed.tableseed.table ImputingMissing Values Loop Deployment- LSTM Loop Deployment- Random Forest Loop Deployment -Linear Regression Loop Deployment- SARIMA Loop Deployment -Seasonal Naive Loop Deployment- Mean Keras NetworkReader Table View Timer Info Deployment data Restore seasonalityand trend Line plots Execution time Merge Variables Model Reader PMML Reader Table Reader Table Reader Joiner Data Access Forecasts by different time series models- Random Forest (Regression)- Linear Regression- Seasonal Naive- Moving Average- SARIMA- LSTM NetworkThe forecast horizon is one week (168 values) Access pretrained models Access seed data Forecast Restore seasonality and trend to forecasts Evaluate forecasts How fast is each model? substuting missing values with average ofprevious and nextLSTM.h51. Random Forest2. Linear Regression3. Seasonal Naive4. Moving average5. SARIMA6. LSTMRandomForest.modelLinReg.pmmlseed.tableseed.tableImputingMissing Values Loop Deployment- LSTM Loop Deployment- Random Forest Loop Deployment -Linear Regression Loop Deployment- SARIMA Loop Deployment -Seasonal Naive Loop Deployment- Mean Keras NetworkReader Table View Timer Info Deployment data Restore seasonalityand trend Line plots Execution time Merge Variables Model Reader PMML Reader Table Reader Table Reader Joiner

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