Patents by Inventor Daniel June Hyung Park

Daniel June Hyung Park 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: 20230121138
    Abstract: This document describes techniques and devices for a refined search with machine learning. These techniques improve computer-aided searches through enabling selection of search criteria used in a prior search and providing a refined search result based on that selection. Furthermore, a machine-learning component of a search engine can be altered to improve future search results based on the selection and an indication of the desirability of the refined search result.
    Type: Application
    Filed: December 21, 2022
    Publication date: April 20, 2023
    Inventors: Golden Gopal Krishna, Carl Magnus Borg, Miroslav Bojic, Henry Owen Newton-Dunn, Jacob M. Klinker, Mindy Pereira, Devin Mancuso, Daniel June Hyung Park, Lily Sin
  • Patent number: 11568003
    Abstract: This document describes techniques and devices for a refined search with machine learning. These techniques improve computer-aided searches through enabling selection of search criteria used in a prior search and providing a refined search result based on that selection. Furthermore, a machine-learning component of a search engine can be altered to improve future search results based on the selection and an indication of the desirability of the refined search result.
    Type: Grant
    Filed: June 13, 2018
    Date of Patent: January 31, 2023
    Assignee: Google LLC
    Inventors: Golden Gopal Krishna, Carl Magnus Borg, Miroslav Bojic, Henry Owen Newton-Dunn, Jacob M. Klinker, Mindy Pereira, Devin Mancuso, Daniel June Hyung Park, Lily Sin
  • Publication number: 20220365639
    Abstract: Systems and methods are described that include receiving, in a tab strip generated by a web browser application, a request to generate a tab group, generating the tab group, in response to receiving the request, where the generating includes generating a tab group identifier for the tab group, enabling pausing or starting of an activity associated with a resource accessed by a browser tab within the tab group based on whether the tab group is collapsed or expanded, and storing metadata about the tab group and the browser tab included in the tab group. The systems and methods may further include causing display of the generated tab group in the tab strip with the tab group identifier depicted in at least a portion of a user interface associated with the browser tab where the generated tab group is configured for display based on the metadata.
    Type: Application
    Filed: May 12, 2021
    Publication date: November 17, 2022
    Inventors: Kayce Audra Hawkins, Edward Jung, Joel Roger Beukelman, Sébastien Marchand, Xialin Yan, Dana Fried, Christopher Matthew Lee, Bret Alan Sepulveda, Monica Estela Gonzalez Veron, Collin Henry Baker, Taylor Bergquist, Connie Lee Wan, Mark Chang, Samuel Birch, Rachel Karin Popkin, Alan Bettes, Daniel June Hyung Park, Lukas Schubsda, Jason Randolph
  • Publication number: 20220318039
    Abstract: This document describes techniques for suggesting actions based on machine learning. These techniques determine a task that a user desires to perform, and presents a user interface through which to perform the task. To determine this task, the techniques can analyze content displayed on the user device or analyze contexts of the user and user device. With this determined task, the techniques determine an action that may assist the user in performing the task. This action is further determined to be performable through analysis of functionalities of an application, which may or may not be executing or installed on the user device. With some subset of the application's functionalities determined, the techniques presents the subset of functionalities via the user interface. By so doing, the techniques enable a user to complete a task more easily, quickly, or using fewer computing resources.
    Type: Application
    Filed: June 24, 2022
    Publication date: October 6, 2022
    Inventors: Golden Gopal Krishna, Carl Magnus Borg, Miroslav Bojic, Henry Owen Newton-Dunn, Jacob M. Klinker, Mindy Pereira, Devin Mancuso, Daniel June Hyung Park, Lily Sin
  • Patent number: 11403123
    Abstract: This document describes techniques for suggesting actions based on machine learning. These techniques determine a task that a user desires to perform, and presents a user interface through which to perform the task. To determine this task, the techniques can analyze content displayed on the user device or analyze contexts of the user and user device. With this determined task, the techniques determine an action that may assist the user in performing the task. This action is further determined to be performable through analysis of functionalities of an application, which may or may not be executing or installed on the user device. With some subset of the application's functionalities determined, the techniques presents the subset of functionalities via the user interface. By so doing, the techniques enable a user to complete a task more easily, quickly, or using fewer computing resources.
    Type: Grant
    Filed: March 4, 2021
    Date of Patent: August 2, 2022
    Assignee: Google LLC
    Inventors: Golden Gopal Krishna, Carl Magnus Borg, Miroslav Bojic, Henry Owen Newton-Dunn, Jacob M. Klinker, Mindy Pereira, Devin Mancuso, Daniel June Hyung Park, Lily Sin
  • Patent number: 11275630
    Abstract: This document describes techniques and devices for task-related sorting, application discovery, and unified bookmarking for application managers. Through use of an application manager, multiple applications (including standalone applications, instant applications, websites, and other content) that a person can use to accomplish a single task, or multiple related tasks, are sorted into discrete groups for display in the application manager. The application manager can automatically recognize relationships between activities performed with the applications and recognize user actions with the applications that are related to the activities. Based on the relationships and user actions, the application manager can automatically determine that the activities and actions represent a task and display a task group that includes the applications that represent the task.
    Type: Grant
    Filed: August 5, 2020
    Date of Patent: March 15, 2022
    Assignee: Google LLC
    Inventors: Golden Gopal Krishna, Carl Magnus Borg, Miroslav Bojic, Henry Owen Newton-Dunn, Jacob M. Klinker, Mindy Pereira, Devin Mancuso, Daniel June Hyung Park, Lily Sin
  • Publication number: 20210208908
    Abstract: This document describes techniques for suggesting actions based on machine learning. These techniques determine a task that a user desires to perform, and presents a user interface through which to perform the task. To determine this task, the techniques can analyze content displayed on the user device or analyze contexts of the user and user device. With this determined task, the techniques determine an action that may assist the user in performing the task. This action is further determined to be performable through analysis of functionalities of an application, which may or may not be executing or installed on the user device. With some subset of the application's functionalities determined, the techniques presents the subset of functionalities via the user interface. By so doing, the techniques enable a user to complete a task more easily, quickly, or using fewer computing resources.
    Type: Application
    Filed: March 4, 2021
    Publication date: July 8, 2021
    Applicant: Google LLC
    Inventors: Golden Gopal Krishna, Carl Magnus Borg, Miroslav Bojic, Henry Owen Newton-Dunn, Jacob M. Klinker, Mindy Pereira, Devin Mancuso, Daniel June Hyung Park, Lily Sin
  • Patent number: 10970096
    Abstract: This document describes techniques for suggesting actions based on machine learning. These techniques determine a task that a user desires to perform, and presents a user interface through which to perform the task. To determine this task, the techniques can analyze content displayed on the user device or analyze contexts of the user and user device. With this determined task, the techniques determine an action that may assist the user in performing the task. This action is further determined to be performable through analysis of functionalities of an application, which may or may not be executing or installed on the user device. With some subset of the application's functionalities determined, the techniques presents the subset of functionalities via the user interface. By so doing, the techniques enable a user to complete a task more easily, quickly, or using fewer computing resources.
    Type: Grant
    Filed: September 21, 2020
    Date of Patent: April 6, 2021
    Assignee: Google LLC
    Inventors: Golden Gopal Krishna, Carl Magnus Borg, Miroslav Bojic, Henry Owen Newton-Dunn, Jacob M. Klinker, Mindy Pereira, Devin Mancuso, Daniel June Hyung Park, Lily Sin
  • Publication number: 20210004247
    Abstract: This document describes techniques for suggesting actions based on machine learning. These techniques determine a task that a user desires to perform, and presents a user interface through which to perform the task. To determine this task, the techniques can analyze content displayed on the user device or analyze contexts of the user and user device. With this determined task, the techniques determine an action that may assist the user in performing the task. This action is further determined to be performable through analysis of functionalities of an application, which may or may not be executing or installed on the user device. With some subset of the application's functionalities determined, the techniques presents the subset of functionalities via the user interface. By so doing, the techniques enable a user to complete a task more easily, quickly, or using fewer computing resources.
    Type: Application
    Filed: September 21, 2020
    Publication date: January 7, 2021
    Applicant: Google LLC
    Inventors: Golden Gopal Krishna, Carl Magnus Borg, Miroslav Bojic, Henry Owen Newton-Dunn, Jacob M. Klinker, Mindy Pereira, Devin Mancuso, Daniel June Hyung Park, Lily Sin
  • Patent number: 10846109
    Abstract: This document describes techniques for suggesting actions based on machine learning. These techniques determine a task that a user desires to perform, and presents a user interface through which to perform the task. To determine this task, the techniques can analyze content displayed on the user device or analyze contexts of the user and user device. With this determined task, the techniques determine an action that may assist the user in performing the task. This action is further determined to be performable through analysis of functionalities of an application, which may or may not be executing or installed on the user device. With some subset of the application's functionalities determined, the techniques presents the subset of functionalities via the user interface. By so doing, the techniques enable a user to complete a task more easily, quickly, or using fewer computing resources.
    Type: Grant
    Filed: May 8, 2018
    Date of Patent: November 24, 2020
    Assignee: Google LLC
    Inventors: Golden Gopal Krishna, Carl Magnus Borg, Miroslav Bojic, Henry Owen Newton-Dunn, Jacob M. Klinker, Mindy Pereira, Devin Mancuso, Daniel June Hyung Park, Lily Sin
  • Publication number: 20200364099
    Abstract: This document describes techniques and devices for task-related sorting, application discovery, and unified bookmarking for application managers. Through use of an application manager, multiple applications (including standalone applications, instant applications, websites, and other content) that a person can use to accomplish a single task, or multiple related tasks, are sorted into discrete groups for display in the application manager. The application manager can automatically recognize relationships between activities performed with the applications and recognize user actions with the applications that are related to the activities. Based on the relationships and user actions, the application manager can automatically determine that the activities and actions represent a task and display a task group that includes the applications that represent the task.
    Type: Application
    Filed: August 5, 2020
    Publication date: November 19, 2020
    Applicant: Google LLC
    Inventors: Golden Gopal Krishna, Carl Magnus Borg, Miroslav Bojic, Henry Owen Newton-Dunn, Jacob M. Klinker, Mindy Pereira, Devin Mancuso, Daniel June Hyung Park, Lily Sin
  • Patent number: 10783013
    Abstract: This document describes techniques and devices for task-related sorting, application discovery, and unified bookmarking for application managers. Through use of an application manager, multiple applications (including standalone applications, instant applications, websites, and other content) that a person can use to accomplish a single task, or multiple related tasks, are sorted into discrete groups for display in the application manager. The application manager can automatically recognize relationships between activities performed with the applications and recognize user actions with the applications that are related to the activities. Based on the relationships and user actions, the application manager can automatically determine that the activities and actions represent a task and display a task group that includes the applications that represent the task.
    Type: Grant
    Filed: August 24, 2018
    Date of Patent: September 22, 2020
    Assignee: Google LLC
    Inventors: Golden Gopal Krishna, Carl Magnus Borg, Miroslav Bojic, Henry Owen Newton-Dunn, Jacob M. Klinker, Mindy Pereira, Devin Mancuso, Daniel June Hyung Park, Lily Sin
  • Publication number: 20190188322
    Abstract: This document describes techniques and devices for a refined search with machine learning. These techniques improve computer-aided searches through enabling selection of search criteria used in a prior search and providing a refined search result based on that selection. Furthermore, a machine-learning component of a search engine can be altered to improve future search results based on the selection and an indication of the desirability of the refined search result.
    Type: Application
    Filed: June 13, 2018
    Publication date: June 20, 2019
    Applicant: Google LLC
    Inventors: Golden Gopal Krishna, Carl Magnus Borg, Miroslav Bojic, Henry Owen Newton-Dunn, Jacob M. Klinker, Mindy Pereira, Devin Mancuso, Daniel June Hyung Park, Lily Sin
  • Publication number: 20190188059
    Abstract: This document describes techniques and devices for task-related sorting, application discovery, and unified bookmarking for application managers. Through use of an application manager, multiple applications (including standalone applications, instant applications, websites, and other content) that a person can use to accomplish a single task, or multiple related tasks, are sorted into discrete groups for display in the application manager. The application manager can automatically recognize relationships between activities performed with the applications and recognize user actions with the applications that are related to the activities. Based on the relationships and user actions, the application manager can automatically determine that the activities and actions represent a task and display a task group that includes the applications that represent the task.
    Type: Application
    Filed: August 24, 2018
    Publication date: June 20, 2019
    Applicant: Google LLC
    Inventors: Golden Gopal Krishna, Carl Magnus Borg, Miroslav Bojic, Henry Owen Newton-Dunn, Jacob M. Klinker, Mindy Pereira, Devin Mancuso, Daniel June Hyung Park, Lily Sin
  • Publication number: 20190188013
    Abstract: This document describes techniques for suggesting actions based on machine learning. These techniques determine a task that a user desires to perform, and presents a user interface through which to perform the task. To determine this task, the techniques can analyze content displayed on the user device or analyze contexts of the user and user device. With this determined task, the techniques determine an action that may assist the user in performing the task. This action is further determined to be performable through analysis of functionalities of an application, which may or may not be executing or installed on the user device. With some subset of the application's functionalities determined, the techniques presents the subset of functionalities via the user interface. By so doing, the techniques enable a user to complete a task more easily, quickly, or using fewer computing resources.
    Type: Application
    Filed: May 8, 2018
    Publication date: June 20, 2019
    Applicant: Google LLC
    Inventors: Golden Gopal Krishna, Carl Magnus Borg, Miroslav Bojic, Henry Owen Newton-Dunn, Jacob M. Klinker, Mindy Pereira, Devin Mancuso, Daniel June Hyung Park, Lily Sin
  • Patent number: D845971
    Type: Grant
    Filed: March 6, 2018
    Date of Patent: April 16, 2019
    Assignee: Google LLC
    Inventors: Artur Tsurkan, Allyson Elaine Tong, Lucas Dupin Moreira Costa, Selim Flavio Cinek, Daniel June Hyung Park
  • Patent number: D874479
    Type: Grant
    Filed: March 6, 2018
    Date of Patent: February 4, 2020
    Assignee: Google LLC
    Inventors: Artur Tsurkan, Allyson Elaine Tong, Lucas Dupin Moreira Costa, Selim Flavio Cinek, Daniel June Hyung Park
  • Patent number: D889477
    Type: Grant
    Filed: March 6, 2018
    Date of Patent: July 7, 2020
    Assignee: Google LLC
    Inventors: Artur Tsurkan, Allyson Elaine Tong, Lucas Dupin Moreira Costa, Selim Flavio Cinek, Daniel June Hyung Park