Abstract: Machine learning model re-training based on distributed feedback received from a plurality of edge computing devices is provided. A trained instance of a machine learning model is transmitted, via one or more communications networks, to the plurality of edge computing devices. Feedback data is collected, via the one or more communications networks, from the plurality of edge computing devices. The feedback data includes labeled observations generated by the execution of the trained instance of the machine learning model at the plurality of edge computing devices on unlabeled observations captured by the plurality of edge computing devices. A re-trained instance of the machine learning model is generated from the trained instance using the collected feedback data. The re-trained instance of the machine learning model is transmitted, via the one or more communications networks, to the plurality of edge computing devices.
Abstract: Machine learning (ML) is provided at edge computing devices based on distributed feedback received from the edge computing devices. A trained instance of an ML model is received at the edge computing devices via communications networks from an ML model manager. Feedback data including labeled observations is generated by the execution of the trained instance of the ML model at the edge computing devices on unlabeled observations captured by the edge computing devices. The feedback data is transmitted from the edge computing devices to a machine learning model manager. A re-trained instance of the machine learning model is generated from the trained instance using the collected feedback data. The re-trained instance of the machine learning model is received at the edge computing devices from the machine learning model manager. The re-trained instance of the machine learning model is executed at the edge computing devices.
Type:
Grant
Filed:
May 31, 2019
Date of Patent:
September 6, 2022
Assignee:
NAMI ML Inc.
Inventors:
Joseph D. Pezzillo, Daniel Burcaw, Alejandro Cantarero