发明者
Massimiliano Versace, Daniel Glasser, Vesa Tormanen, Anatoli Gorchechnikov, Heather Ames Versace, Jeremy Wurbs
发表日期
2021/7/15
专利局
US
专利申请号
16952250
简介
An artificial neural network (ANN) that learns at the Edge (eg, on a smart phone) can be faster and use less network bandwidth than an ANN trained on a server and distributed to the Edge. Learning at the compute edge can be accomplished by executing Lifelong Deep Neural Network (L-DNN) technology at the compute edge. L-DNN technology uses a representation-rich, DNN-based subsystem with a fast-learning subsystem to learn new features quickly without forgetting previously learned features. Compared to a conventional DNN, L-DNN uses much less data to build robust networks, has dramatically shorter training time, and learns on-device instead of on servers without re-training or storing data. An edge device with L-DNN can learn continuously after deployment, eliminating costs in data collection and annotation, memory, and compute power. This fast, local, on-device learning can be used in …
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