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US Patent 11373089 Serialized electro-optic neural network using optical weights encoding

Patent 11373089 was granted and assigned to Massachusetts Institute of Technology on June, 2022 by the United States Patent and Trademark Office.

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Is a
Patent
Patent

Patent attributes

Patent Applicant
Massachusetts Institute of Technology
Massachusetts Institute of Technology
Current Assignee
Massachusetts Institute of Technology
Massachusetts Institute of Technology
Patent Jurisdiction
United States Patent and Trademark Office
United States Patent and Trademark Office
Patent Number
11373089
Date of Patent
June 28, 2022
Patent Application Number
16268578
Date Filed
February 6, 2019
Patent Citations
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US Patent 10768659 Apparatus and methods for optical neural network
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US Patent 10608663 Real-number photonic encoding
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US Patent 10359272 Programmable photonic processing
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US Patent 10634851 Apparatus, systems, and methods for nonblocking optical switching
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US Patent 10268232 Apparatus and methods for optical neural network
Patent Citations Received
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US Patent 12113581 Photonic processing systems and methods
0
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US Patent 11626931 Photonic processing systems and methods
0
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US Patent 11671182 Systems and methods for analog computing using a linear photonic processor
0
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US Patent 11695378 Optical differential low-noise receivers and related methods
0
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US Patent 11914415 Apparatus and methods for optical neural network
0
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US Patent 11936434 Systems and methods for analog computing using a linear photonic processor
0
‌
US Patent 11546077 Scalable, ultra-low-latency photonic tensor processor
Patent Primary Examiner
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Benjamin P Geib
CPC Code
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G06N 3/08
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G06N 3/04
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G06N 3/0675

Most artificial neural networks are implemented electronically using graphical processing units to compute products of input signals and predetermined weights. The number of weights scales as the square of the number of neurons in the neural network, causing the power and bandwidth associated with retrieving and distributing the weights in an electronic architecture to scale poorly. Switching from an electronic architecture to an optical architecture for storing and distributing weights alleviates the communications bottleneck and reduces the power per transaction for much better scaling. The weights can be distributed at terabits per second at a power cost of picojoules per bit (versus gigabits per second and femtojoules per bit for electronic architectures). The bandwidth and power advantages are even better when distributing the same weights to many optical neural networks running simultaneously.

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