feat: integrate ModelPerformanceCallback and ConstantQuantileForecaster into workflows#879
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Signed-off-by: lschilders <lars.schilders@alliander.com>
Signed-off-by: lschilders <lars.schilders@alliander.com>
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This pull request introduces enhancements to the forecasting workflow configuration by adding a new model type and enabling model performance evaluation via a callback. The changes allow users to select a constant quantile forecaster and to configure a callback that checks model performance at the end of training against a configurable metric and threshold.
New model support:
ConstantQuantileForecasteras a selectable model type in theForecastingWorkflowConfig, allowing users to choose a model that predicts constant quantiles. [1] [2] [3]Model performance evaluation:
ModelPerformanceCallbackand made it available for use in both standard and ensemble forecasting workflows. This callback can be enabled via the configuration and will evaluate model performance at the end of fitting, based on a user-specified metric, direction, quantile, and threshold. [1] [2] [3] [4] [5] [6] [7]These changes improve the flexibility and robustness of the forecasting workflow by allowing more model selection options and providing automated performance checks.