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US Patent 11977967 Memory augmented generative temporal models

Patent 11977967 was granted and assigned to Deepmind Technologies Limited on May, 2024 by the United States Patent and Trademark Office.

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Is a
Patent
Patent
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Patent attributes

Patent Applicant
Deepmind Technologies Limited
Deepmind Technologies Limited
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Current Assignee
Deepmind Technologies Limited
Deepmind Technologies Limited
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Patent Jurisdiction
United States Patent and Trademark Office
United States Patent and Trademark Office
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Patent Number
119779670
Patent Inventor Names
Adam Anthony Santoro0
Mevlana Celaleddin Gemici0
Gregory Duncan Wayne0
Chia-Chun Hung0
Date of Patent
May 7, 2024
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Patent Application Number
171136690
Date Filed
December 7, 2020
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Patent Citations
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US Patent 10366158 Efficient word encoding for recurrent neural network language models
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US Patent 10565493 Pointer sentinel mixture architecture
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US Patent 10599701 Semantic category classification
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US Patent 10831577 Abnormality detection system, abnormality detection method, abnormality detection program, and method for generating learned model
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US Patent 11080587 Recurrent neural networks for data item generation
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US Patent 10832134 Augmenting neural networks with external memory
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US Patent 8630975 Knowledge discovery from citation networks
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US Patent 9015093 Intelligent control with hierarchical stacked neural networks
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Patent Primary Examiner
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Vincent Gonzales
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CPC Code
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G06N 3/084
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G05B 2219/33025
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G06N 20/00
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G06N 3/049
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G06N 3/06
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Patent abstract

Methods, systems, and apparatus, including computer programs encoded on a computer storage medium, for generating sequences of predicted observations, for example images. In one aspect, a system comprises a controller recurrent neural network, and a decoder neural network to process a set of latent variables to generate an observation. An external memory and a memory interface subsystem is configured to, for each of a plurality of time steps, receive an updated hidden state from the controller, generate a memory context vector by reading data from the external memory using the updated hidden state, determine a set of latent variables from the memory context vector, generate a predicted observation by providing the set of latent variables to the decoder neural network, write data to the external memory using the latent variables, the updated hidden state, or both, and generate a controller input for a subsequent time step from the latent variables.

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