Patents by Inventor Kim Cuong Phung

Kim Cuong Phung 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).

  • Patent number: 11989248
    Abstract: A centralized document system identifies content items for presentation to a user based initially on a cold-start algorithm and subsequently based on machine-learned models. The system detects a first access by the user. The system generates a user attribute vector for the user and a content vector for each content item. The system selects a first content item based on the initial cold-start algorithm and modifies a user interface to include the first content item. The system identifies an interaction with the first content item by the user. The system detects a second access by the user. The system selects a machine-learned model based on a set of interactions by the user with displayed content items. The system applies the selected machine-learned model to the set of interactions and the user attribute vector to identify a second content item and modifies the user interface to include the second content item.
    Type: Grant
    Filed: December 1, 2022
    Date of Patent: May 21, 2024
    Assignee: DOCUSIGN, INC.
    Inventors: Shrinivas Kiran Kaza, Taiwo Raphael Alabi, Farzaneh Rajabi, Ashwath Mohan, Kim Cuong Phung
  • Publication number: 20230367955
    Abstract: A highlighting engine modifies a target document by identifying and highlighting a set of text passages. The highlighting engine receives a training set of data including documents that each include a set of highlighted text passages. The highlighting engine trains a machine learned model using the training set of data. The trained machine learned model, when applied to subsequent identified candidate sets of text passages within the target document, identifies the set of text passages to highlight. The highlighting engine modifies the target document with the highlighted set of text passages and provides the modified target document for display via an interface. The highlighted set of text passages enable a user to quickly read and understand the target document.
    Type: Application
    Filed: July 28, 2023
    Publication date: November 16, 2023
    Inventors: Mangesh Bhandarkar, Shrinivas Kiran Kaza, Taiwo Raphael Alabi, Ashwath Mohan, Kim Cuong Phung
  • Patent number: 11755821
    Abstract: A highlighting engine modifies a target document by identifying and highlighting a set of text passages. The highlighting engine receives a training set of data including documents that each include a set of highlighted text passages. The highlighting engine trains a machine learned model using the training set of data. The trained machine learned model, when applied to subsequent identified candidate sets of text passages within the target document, identifies the set of text passages to highlight. The highlighting engine modifies the target document with the highlighted set of text passages and provides the modified target document for display via an interface. The highlighted set of text passages enable a user to quickly read and understand the target document.
    Type: Grant
    Filed: August 31, 2022
    Date of Patent: September 12, 2023
    Assignee: DOCUSIGN, INC.
    Inventors: Mangesh Bhandarkar, Shrinivas Kiran Kaza, Taiwo Raphael Alabi, Ashwath Mohan, Kim Cuong Phung
  • Publication number: 20230092079
    Abstract: A centralized document system identifies content items for presentation to a user based initially on a cold-start algorithm and subsequently based on machine-learned models. The system detects a first access by the user. The system generates a user attribute vector for the user and a content vector for each content item. The system selects a first content item based on the initial cold-start algorithm and modifies a user interface to include the first content item. The system identifies an interaction with the first content item by the user. The system detects a second access by the user. The system selects a machine-learned model based on a set of interactions by the user with displayed content items. The system applies the selected machine-learned model to the set of interactions and the user attribute vector to identify a second content item and modifies the user interface to include the second content item.
    Type: Application
    Filed: December 1, 2022
    Publication date: March 23, 2023
    Inventors: Shrinivas Kiran Kaza, Taiwo Raphael Alabi, Farzaneh Rajabi, Ashwath Mohan, Kim Cuong Phung
  • Patent number: 11544340
    Abstract: A centralized document system identifies content items for presentation to a user based initially on a cold-start algorithm and subsequently based on machine-learned models. The system detects a first access by the user. The system generates a user attribute vector for the user and a content vector for each content item. The system selects a first content item based on the initial cold-start algorithm and modifies a user interface to include the first content item. The system identifies an interaction with the first content item by the user. The system detects a second access by the user. The system selects a machine-learned model based on a set of interactions by the user with displayed content items. The system applies the selected machine-learned model to the set of interactions and the user attribute vector to identify a second content item and modifies the user interface to include the second content item.
    Type: Grant
    Filed: December 15, 2020
    Date of Patent: January 3, 2023
    Assignee: DOCUSIGN, INC.
    Inventors: Shrinivas Kiran Kaza, Taiwo Raphael Alabi, Farzaneh Rajabi, Ashwath Mohan, Kim Cuong Phung
  • Publication number: 20220414318
    Abstract: A highlighting engine modifies a target document by identifying and highlighting a set of text passages. The highlighting engine receives a training set of data including documents that each include a set of highlighted text passages. The highlighting engine trains a machine learned model using the training set of data. The trained machine learned model, when applied to subsequent identified candidate sets of text passages within the target document, identifies the set of text passages to highlight. The highlighting engine modifies the target document with the highlighted set of text passages and provides the modified target document for display via an interface. The highlighted set of text passages enable a user to quickly read and understand the target document.
    Type: Application
    Filed: August 31, 2022
    Publication date: December 29, 2022
    Inventors: Mangesh Bhandarkar, Shrinivas Kiran Kaza, Taiwo Raphael Alabi, Ashwath Mohan, Kim Cuong Phung
  • Publication number: 20220405503
    Abstract: An electronic document system can allow users to upload a document package containing multiple individual component documents. Each component document includes a subset of a plurality of pages that are included in the document package. The electronic document system identifies a page of each component document by applying a machine learning model to the document package. The electronic document system partitions the document package into the individual component documents based on the identified pages. For each individual component document, the electronic document system identifies a document topic corresponding to the component document by applying another machine learning model. The electronic document system modifies a user interface to display each component document and corresponding document topic.
    Type: Application
    Filed: June 22, 2021
    Publication date: December 22, 2022
    Inventors: Shrinivas Kiran Kaza, Taiwo Raphael Alabi, Ashwath Mohan, Varsha Sri Raghavan, Kim Cuong Phung
  • Patent number: 11461539
    Abstract: A highlighting engine modifies a target document by identifying and highlighting a set of text passages. The highlighting engine receives a training set of data including documents that each include a set of highlighted text passages. The highlighting engine trains a machine learned model using the training set of data. The trained machine learned model, when applied to subsequent identified candidate sets of text passages within the target document, identifies the set of text passages to highlight. The highlighting engine modifies the target document with the highlighted set of text passages and provides the modified target document for display via an interface. The highlighted set of text passages enable a user to quickly read and understand the target document.
    Type: Grant
    Filed: July 29, 2020
    Date of Patent: October 4, 2022
    Assignee: DOCUSIGN, INC.
    Inventors: Mangesh Bhandarkar, Shrinivas Kiran Kaza, Taiwo Raphael Alabi, Ashwath Mohan, Kim Cuong Phung
  • Publication number: 20220188371
    Abstract: A centralized document system identifies content items for presentation to a user based initially on a cold-start algorithm and subsequently based on machine-learned models. The system detects a first access by the user. The system generates a user attribute vector for the user and a content vector for each content item. The system selects a first content item based on the initial cold-start algorithm and modifies a user interface to include the first content item. The system identifies an interaction with the first content item by the user. The system detects a second access by the user. The system selects a machine-learned model based on a set of interactions by the user with displayed content items. The system applies the selected machine-learned model to the set of interactions and the user attribute vector to identify a second content item and modifies the user interface to include the second content item.
    Type: Application
    Filed: December 15, 2020
    Publication date: June 16, 2022
    Inventors: Shrinivas Kiran Kaza, Taiwo Raphael Alabi, Farzaneh Rajabi, Ashwath Mohan, Kim Cuong Phung
  • Publication number: 20220035990
    Abstract: An auto-tagging engine receives a training set of data comprising documents including a set of tagged fields with each tagged field corresponding to a portion of the document. The auto-tagging engine trains a machine learned model using the training set of data. The trained machine learned model, when applied to a target document in a document management environment, identifies portions of the target document each corresponding to fields of the target document. For each field of the target document, the auto-tagging engine identifies text of the target document associated with the identified potions of the target document corresponding to fields. Natural language processing is performed on the identified text in order to identify field types for the fields. The target document is automatically modified to include a tag identifying the portion of the target document corresponding to each field and identifying a field type of the field.
    Type: Application
    Filed: July 29, 2020
    Publication date: February 3, 2022
    Inventors: Shrinivas Kiran Kaza, Eric M. Zenz, Roshan Satish, Michael Anthony Palazzolo, Patrick Beukema, Kim Cuong Phung, Boon Sun Song, Taiwo Raphael Alabi
  • Publication number: 20220035993
    Abstract: A highlighting engine modifies a target document by identifying and highlighting a set of text passages. The highlighting engine receives a training set of data including documents that each include a set of highlighted text passages. The highlighting engine trains a machine learned model using the training set of data. The trained machine learned model, when applied to subsequent identified candidate sets of text passages within the target document, identifies the set of text passages to highlight. The highlighting engine modifies the target document with the highlighted set of text passages and provides the modified target document for display via an interface. The highlighted set of text passages enable a user to quickly read and understand the target document.
    Type: Application
    Filed: July 29, 2020
    Publication date: February 3, 2022
    Inventors: Mangesh Bhandarkar, Shrinivas Kiran Kaza, Taiwo Raphael Alabi, Ashwath Mohan, Kim Cuong Phung