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US Patent 11593707 Compressed unsupervised quantum state preparation with quantum autoencoders

Patent 11593707 was granted and assigned to Zapata Computing on February, 2023 by the United States Patent and Trademark Office.

OverviewStructured DataIssuesContributors
Is a
Patent
Patent
Current Assignee
Zapata Computing
Zapata Computing
Date Filed
July 2, 2019
Date of Patent
February 28, 2023
Patent Applicant
Zapata Computing
Zapata Computing
Patent Application Number
16460827
Patent Citations
‌
US Patent 10133984 Adiabatic phase gates in parity-based quantum computers
‌
US Patent 10452989 Quanton representation for emulating quantum-like computation on classical processors
‌
US Patent 11468357 Hybrid quantum-classical computer for packing bits into qubits for quantum optimization algorithms
Patent Citations Received
‌
US Patent 12067458 Parameter initialization on quantum computers through domain decomposition
0
‌
US Patent 12008433 Variational quantum state preparation
0
‌
US Patent 11924334 Quantum neural network
0
Patent Jurisdiction
United States Patent and Trademark Office
United States Patent and Trademark Office
Patent Number
11593707
Patent Primary Examiner
‌
Dave Misir
CPC Code
‌
G06F 17/12
‌
G06F 15/82
‌
G06F 15/08
‌
B82Y 10/00
‌
G06G 7/58
‌
G06F 9/48
‌
G06F 9/455
‌
G06N 99/00
‌
G06N 10/00
‌
G06N 20/00
•••

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