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Forschungsstelle
INNOSUISSE
Projektnummer
18571.1 PFES-ES
Projekttitel
Automated Dynamic Machine Learning for time based forecasts (for Energy, Utility & Commodity sectors)
Projekttitel Englisch
Automated Dynamic Machine Learning for time based forecasts (for Energy, Utility & Commodity sectors)

Texte zu diesem Projekt

 DeutschFranzösischItalienischEnglisch
Kurzbeschreibung
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Abstract
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Erfasste Texte


KategorieText
Kurzbeschreibung
(Deutsch)
Automated Dynamic Machine Learning for time based forecasts (for Energy, Utility & Commodity sectors)
Kurzbeschreibung
(Englisch)
Automated Dynamic Machine Learning for time based forecasts (for Energy, Utility & Commodity sectors)
Abstract
(Deutsch)
The project develops new algorithms to dynamically automate feature generation process of a machine learning platform during the learning phase, applied to time series. The solution will be used in Energy & Commodity sectors. The key benefits and objectives of this research will be (a) an increase in the speed of calculation by 90 %, (b) an operational cost reduction and (c) an improvement in the prediction accuracy by 20-40% compared to today's state of the art.
Abstract
(Englisch)