Patents by Inventor Paul Luo Li

Paul Luo Li 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: 20230409311
    Abstract: The present disclosure is directed to automated generation and management of update estimates relative to application of an update to a computing device. One or more updated to be applied to a computing device are identified. A trained artificial intelligence (AI) model is applied that is adapted to generate an update estimate predicting an amount of time that is required to apply an update to the computing device. An update estimate is generated based on a contextual analysis that evaluates one or more of: parameters associated with the update; device characteristics of the computing device to be updated; a state of current user activity on the computing device; historical predictions relating to prior update estimates for one or more computing devices (e.g., that comprise the computing device); or a combination thereof. A notification of the update estimate is then automatically generated and caused to be rendered.
    Type: Application
    Filed: August 4, 2023
    Publication date: December 21, 2023
    Inventors: Yutong LIAO, Cheng WU, Nicolas Justin LAVIGNE, Frederick Douglass CAMPBELL, Chan CHAIYOCHLARB, Raymond Duane PARSONS, Alexander OOT, Paul Luo LI, Minsuk KANG, Abhinav MISHRA
  • Patent number: 11762649
    Abstract: The present disclosure is directed to automated generation and management of update estimates relative to application of an update to a computing device. One or more updates to be applied to a computing device are identified. A trained artificial intelligence (AI) model is applied that is adapted to generate an update estimate predicting an amount of time that is required to apply an update to the computing device. An update estimate is generated based on a contextual analysis that evaluates one or more of: parameters associated with the update; device characteristics of the computing device to be updated; a state of current user activity on the computing device; historical predictions relating to prior update estimates for one or more computing devices (e.g., that comprise the computing device); or a combination thereof. A notification of the update estimate is then automatically generated and caused to be rendered.
    Type: Grant
    Filed: June 30, 2021
    Date of Patent: September 19, 2023
    Assignee: MICROSOFT TECHNOLOGY LICENSING, LLC
    Inventors: Yutong Liao, Cheng Wu, Nicolas Justin Lavigne, Frederick Douglass Campbell, Chan Chaiyochlarb, Raymond Duane Parsons, Alexander Oot, Paul Luo Li, Minsuk Kang, Abhinav Mishra
  • Publication number: 20230137131
    Abstract: A server computing device generates training data based upon an identifier for a device, a timestamp, and a label received from a developer computing device. The server computing device trains a computer-implemented machine learning (ML) model based upon the training data. The server computing device also generates client configuration data for the ML model that specifies transformations that are to be applied to values in order to generate input values for the ML model. The server computing device deploys ML assets to client computing devices, the ML assets comprising the ML model and the client configuration data. The client computing devices execute the ML model using input values derived via transformations of (local) values produced by the client computing devices and transmit telemetry data to the server computing device. The server computing device updates the ML assets based upon the telemetry data.
    Type: Application
    Filed: December 29, 2022
    Publication date: May 4, 2023
    Applicant: Microsoft Technology Licensing, LLC
    Inventors: Paul Luo LI, Ho Jeannie CHUNG, Xiaoyu CHAI, Irina Ioana NICULESCU, Minsuk KANG, Brandon H. PADDOCK, Jilong LIAO, Neeraja ABBURU, James Henry DOOLEY, IV, Frederick Douglass CAMPBELL
  • Patent number: 11544625
    Abstract: A server computing device generates training data based upon an identifier for a device, a timestamp, and a label received from a developer computing device. The server computing device trains a computer-implemented machine learning (ML) model based upon the training data. The server computing device also generates client configuration data for the ML model that specifies transformations that are to be applied to values in order to generate input values for the ML model. The server computing device deploys ML assets to client computing devices, the ML assets comprising the ML model and the client configuration data. The client computing devices execute the ML model using input values derived via transformations of (local) values produced by the client computing devices and transmit telemetry data to the server computing device. The server computing device updates the ML assets based upon the telemetry data.
    Type: Grant
    Filed: February 3, 2020
    Date of Patent: January 3, 2023
    Assignee: Microsoft Technology Licensing, LLC
    Inventors: Paul Luo Li, Ho Jeannie Chung, Xiaoyu Chai, Irina Ioana Niculescu, Minsuk Kang, Brandon H. Paddock, Jilong Liao, Neeraja Abburu, James Henry Dooley, IV, Frederick Douglass Campbell
  • Publication number: 20220350588
    Abstract: The present disclosure is directed to automated generation and management of update estimates relative to application of an update to a computing device. One or more updated to be applied to a computing device are identified. A trained artificial intelligence (AI) model is applied that is adapted to generate an update estimate predicting an amount of time that is required to apply an update to the computing device. An update estimate is generated based on a contextual analysis that evaluates one or more of: parameters associated with the update; device characteristics of the computing device to be updated; a state of current user activity on the computing device; historical predictions relating to prior update estimates for one or more computing devices (e.g., that comprise the computing device); or a combination thereof. A notification of the update estimate is then automatically generated and caused to be rendered.
    Type: Application
    Filed: June 30, 2021
    Publication date: November 3, 2022
    Inventors: Yutong LIAO, Cheng WU, Nicolas Justin LAVIGNE, Frederick Douglass CAMPBELL, Chan CHAIYOCHLARB, Raymond Duane PARSONS, Alexander OOT, Paul Luo LI, Minsuk KANG, Abhinav MISHRA
  • Publication number: 20210241167
    Abstract: A server computing device generates training data based upon an identifier for a device, a timestamp, and a label received from a developer computing device. The server computing device trains a computer-implemented machine learning (ML) model based upon the training data. The server computing device also generates client configuration data for the ML model that specifies transformations that are to be applied to values in order to generate input values for the ML model. The server computing device deploys ML assets to client computing devices, the ML assets comprising the ML model and the client configuration data. The client computing devices execute the ML model using input values derived via transformations of (local) values produced by the client computing devices and transmit telemetry data to the server computing device. The server computing device updates the ML assets based upon the telemetry data.
    Type: Application
    Filed: February 3, 2020
    Publication date: August 5, 2021
    Inventors: Paul Luo LI, Ho Jeannie CHUNG, Xiaoyu CHAI, Irina Ioana NICULESCU, Minsuk KANG, Brandon H. PADDOCK, Jilong LIAO, Neeraja ABBURU, James Henry DOOLEY, IV, Frederick Douglass CAMPBELL
  • Patent number: 10902149
    Abstract: Methods, systems, apparatuses, and computer-readable storage medium are described herein for remotely analyzing testing results based on LDP-based data obtained from client devices in order to determine an effect of a software application with respect to its features and/or the population in which the application is tested. The analysis is based on a series of statistical computations for conducting hypothesis tests to compare population means, while ensuring LDP for each user. For example, an LDP scheme is used on the client-side that privatizes a measured value corresponding to a usage of a resource of the client. A data collector receives the privatized data from two sets of populations. Each population's clients have a software application that may differ in terms of features or user group. The privatized data received from each population is analyzed to determine an effect of the difference between the software applications of the different populations.
    Type: Grant
    Filed: March 22, 2018
    Date of Patent: January 26, 2021
    Assignee: Microsoft Technology Licensing, LLC
    Inventors: Bolin Ding, Harsha Prasad Nori, Paul Luo Li, Joshua Stanley Allen
  • Publication number: 20190236306
    Abstract: Methods, systems, apparatuses, and computer-readable storage medium are described herein for remotely analyzing testing results based on LDP-based data obtained from client devices in order to determine an effect of a software application with respect to its features and/or the population in which the application is tested. The analysis is based on a series of statistical computations for conducting hypothesis tests to compare population means, while ensuring LDP for each user. For example, an LDP scheme is used on the client-side that privatizes a measured value corresponding to a usage of a resource of the client. A data collector receives the privatized data from two sets of populations. Each population's clients have a software application that may differ in terms of features or user group. The privatized data received from each population is analyzed to determine an effect of the difference between the software applications of the different populations.
    Type: Application
    Filed: March 22, 2018
    Publication date: August 1, 2019
    Inventors: Bolin Ding, Harsha Prasad Nori, Paul Luo Li, Joshua Stanley Allen