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Modifying the results of the forecast

PreviousscoresNextpostprocessing

Last updated 1 year ago

The postprocessing function is integral to refining and adjusting the initial outcomes produced by the forecasting model. This stage involves implementing specific operations that enhance the usability and accuracy of the forecast results.

By effectively utilizing postprocessing, you can tailor the forecast outputs to better align with business objectives and operational requirements. This customization ensures that the results are not only technically accurate but also practically applicable and relevant to specific business contexts and challenges.

postprocessing