Patents by Inventor Vu Pham

Vu Pham has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Publication number: 20250047701
    Abstract: A system, method, and device for visualizing network topology are disclosed. The method includes (i) automatically generating a network topology visualization of network assets for a network, and (ii) grouping the network assets into a plurality of groupings based on a set of user selected distinct criteria.
    Type: Application
    Filed: July 31, 2023
    Publication date: February 6, 2025
    Inventors: Kalyan Siddam, Daniel Pare, Yue Jiang, Jun Wang, Ling Zeng, Vu Pham, Ran Xia
  • Patent number: 11714996
    Abstract: A computer-implemented method of training a student machine learning system comprises receiving data indicating execution of an expert, determining one or more actions performed by the expert during the execution and a corresponding state-action Jacobian, and training the student machine learning system using a linear-feedback-stabilized policy. The linear-feedback-stabilized policy may be based on the state-action Jacobian. Also a neural network system for representing a space of probabilistic motor primitives, implemented by one or more computers. The neural network system comprises an encoder configured to generate latent variables based on a plurality of inputs, each input comprising a plurality of frames, and a decoder configured to generate an action based on one or more of the latent variables and a state.
    Type: Grant
    Filed: July 25, 2022
    Date of Patent: August 1, 2023
    Assignee: DeepMind Technologies Limited
    Inventors: Leonard Hasenclever, Vu Pham, Joshua Merel, Alexandre Galashov
  • Publication number: 20220374686
    Abstract: A computer-implemented method of training a student machine learning system comprises receiving data indicating execution of an expert, determining one or more actions performed by the expert during the execution and a corresponding state-action Jacobian, and training the student machine learning system using a linear-feedback-stabilized policy. The linear-feedback-stabilized policy may be based on the state-action Jacobian. Also a neural network system for representing a space of probabilistic motor primitives, implemented by one or more computers. The neural network system comprises an encoder configured to generate latent variables based on a plurality of inputs, each input comprising a plurality of frames, and a decoder configured to generate an action based on one or more of the latent variables and a state.
    Type: Application
    Filed: July 25, 2022
    Publication date: November 24, 2022
    Inventors: Leonard Hasenclever, Vu Pham, Joshua Merel, Alexandre Galashov
  • Patent number: 11403513
    Abstract: A computer-implemented method of training a student machine learning system comprises receiving data indicating execution of an expert, determining one or more actions performed by the expert during the execution and a corresponding state-action Jacobian, and training the student machine learning system using a linear-feedback-stabilized policy. The linear-feedback-stabilized policy may be based on the state-action Jacobian. Also a neural network system for representing a space of probabilistic motor primitives, implemented by one or more computers. The neural network system comprises an encoder configured to generate latent variables based on a plurality of inputs, each input comprising a plurality of frames, and a decoder configured to generate an action based on one or more of the latent variables and a state.
    Type: Grant
    Filed: September 27, 2019
    Date of Patent: August 2, 2022
    Assignee: DeepMind Technologies Limited
    Inventors: Leonard Hasenclever, Vu Pham, Joshua Merel, Alexandre Galashov
  • Publication number: 20200104685
    Abstract: A computer-implemented method of training a student machine learning system comprises receiving data indicating execution of an expert, determining one or more actions performed by the expert during the execution and a corresponding state-action Jacobian, and training the student machine learning system using a linear-feedback-stabilized policy. The linear-feedback-stabilized policy may be based on the state-action Jacobian. Also a neural network system for representing a space of probabilistic motor primitives, implemented by one or more computers. The neural network system comprises an encoder configured to generate latent variables based on a plurality of inputs, each input comprising a plurality of frames, and a decoder configured to generate an action based on one or more of the latent variables and a state.
    Type: Application
    Filed: September 27, 2019
    Publication date: April 2, 2020
    Inventors: Leonard Hasenclever, Vu Pham, Joshua Merel, Alexandre Galashov
  • Publication number: 20170262899
    Abstract: A computer has a processor and nontransitory memory. The computer receives a list of search keywords to propose to a search engine. For search keywords that are too infrequently used to have historical data to estimate keyword performance, the computer computes linguistic similarity between the sparse-data keyword to other keywords that have sufficient historical keyword performance data to permit a statistically sound estimate for keyword performance. The estimates are submitted to a search engine, and updated by grouping the sparse-data keywords into groups, including at least a high-performing group and a low-performing group, and reallocating budget from the keywords of the low-performing group to keywords of the high-performing group, by reducing estimates for keywords of the low-performing group and increasing estimates of keywords of the high-performing group.
    Type: Application
    Filed: February 11, 2017
    Publication date: September 14, 2017
    Applicant: 360i LLC
    Inventors: Michael Kevin Geraghty, Hua Ai, Henry Beaver, Jason B. Bell, Patrick D. Callow, Ye Chen, Amit Dingare, Jonathan M. Donovan, Samuel Franklin, Jason Hartley, Munehiro Nakayama, Lawrence Arthur O'Donnell, Vu Pham, Manoranjan Satapathy, Mehmet Eric Sonmezer, Bruce Williams, Aleksey Yurchenko
  • Patent number: D783113
    Type: Grant
    Filed: April 17, 2015
    Date of Patent: April 4, 2017
    Assignee: Burris Company, Inc.
    Inventors: Martin Noller, Sky Leighton, Patrick Beckett, RJ Dussart, Jessie Dussart, Vu Pham, Dorgan Trostel
  • Patent number: D783114
    Type: Grant
    Filed: April 17, 2015
    Date of Patent: April 4, 2017
    Assignee: Burris Company, Inc.
    Inventors: Martin Noller, Sky Leighton, Patrick Beckett, RJ Dussart, Jessie Dussart, Vu Pham, Dorgan Trostel
  • Patent number: D783115
    Type: Grant
    Filed: April 17, 2015
    Date of Patent: April 4, 2017
    Assignee: Burris Company, Inc.
    Inventors: Martin Noller, Sky Leighton, Patrick Beckett, RJ Dussart, Jessie Dussart, Vu Pham, Dorgan Trostel
  • Patent number: D805156
    Type: Grant
    Filed: April 17, 2015
    Date of Patent: December 12, 2017
    Assignee: BURRIS COMPANY, INC.
    Inventors: Martin Noller, Sky Leighton, Patrick Beckett, RJ Dussart, Jessie Dussart, Vu Pham, Dorgan Trostel
  • Patent number: D850568
    Type: Grant
    Filed: May 15, 2017
    Date of Patent: June 4, 2019
    Assignee: BURRIS COMPANY, INC.
    Inventors: Martin Noller, Sky Leighton, Patrick Beckett, RJ Dussart, Jessie Dussart, Vu Pham, Dorgan Trostel
  • Patent number: D905816
    Type: Grant
    Filed: May 29, 2019
    Date of Patent: December 22, 2020
    Assignee: Burris Company, Inc.
    Inventors: Martin Noller, Sky Leighton, Patrick Beckett, RJ Dussart, Jessie Dussart, Vu Pham, Dorgan Trostel