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US Patent 11928602 Systems and methods to enable continual, memory-bounded learning in artificial intelligence and deep learning continuously operating applications across networked compute edges

Patent 11928602 was granted and assigned to Neurala on March, 2024 by the United States Patent and Trademark Office.

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Contents

Is a
Patent
Patent
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Patent attributes

Patent Applicant
Neurala
Neurala
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Current Assignee
Neurala
Neurala
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Patent Jurisdiction
United States Patent and Trademark Office
United States Patent and Trademark Office
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Patent Number
119286020
Patent Inventor Names
Matthew Luciw0
Massimiliano Versace0
Santiago Olivera0
Jeremy Wurbs0
Heather Marie Ames0
Anatoly Gorshechnikov0
Date of Patent
March 12, 2024
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Patent Application Number
159752800
Date Filed
May 9, 2018
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Patent Citations
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US Patent 9589595 Selection and tracking of objects for display partitioning and clustering of video frames
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US Patent 9626566 Methods and apparatus for autonomous robotic control
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US Patent 9754190 System and method for image classification based on Tsallis entropy
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US Patent 10037471 System and method for image analysis
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US Patent 10789291 Machine learning in video classification with playback highlighting
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US Patent 10503976 Methods and apparatus for autonomous robotic control
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US Patent 7587101 Facilitating computer-assisted tagging of object instances in digital images
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US Patent 7900225 Association of ads with tagged audiovisual content
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Patent Primary Examiner
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Marshall L Werner
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CPC Code
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G06N 3/0454
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G06N 3/08
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G06N 3/084
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G06N 3/0445
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G06N 3/0409
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G06K 9/6253
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G06K 9/6222
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G06V 20/13
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Patent abstract

Lifelong Deep Neural Network (L-DNN) technology revolutionizes Deep Learning by enabling fast, post-deployment learning without extensive training, heavy computing resources, or massive data storage. It uses a representation-rich, DNN-based subsystem (Module A) with a fast-learning subsystem (Module B) 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, dramatically shorter training time, and learning on-device instead of on servers. It can add new knowledge without re-training or storing data. As a result, an edge device with L-DNN can learn continuously after deployment, eliminating massive costs in data collection and annotation, memory and data storage, and compute power. This fast, local, on-device learning can be used for security, supply chain monitoring, disaster and emergency response, and drone-based inspection of infrastructure and properties, among other applications.

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