SYSTEMS AND METHODS FOR CROSS-DOMAIN TRAINING OF SENSING-SYSTEM-MODEL INSTANCES

Disclosed herein are systems and methods for cross-domain training of sensing-system-model instances. In an embodiment, a system receives, via a first application programming interface (API), an input-dataset selection identifying an input dataset, which includes a plurality of dataframes that are i...

Ausführliche Beschreibung

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Bibliographische Detailangaben
Hauptverfasser: Jarquin Arroyo, Julio Fernando, Alvarez Martinez, Ignacio Javier
Format: Patent
Sprache:eng
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Zusammenfassung:Disclosed herein are systems and methods for cross-domain training of sensing-system-model instances. In an embodiment, a system receives, via a first application programming interface (API), an input-dataset selection identifying an input dataset, which includes a plurality of dataframes that are in a first dataframe format and that have annotations corresponding to one or more sensing tasks performed with respect to the dataframes. The system executes a plurality of dataframe-transformation functions to convert the plurality of dataframes of the input dataset into a predetermined dataframe format. The system trains an instance of a first machine-learning model using the converted dataframes of the input dataset to perform at least a subset of the one or more sensing tasks. The system outputs, via the first API, one or more model-validation metrics pertaining to the training of the instance of the first machine-learning model.