Patents by Inventor Jimish BHAYANI

Jimish BHAYANI 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: 11874939
    Abstract: An entity interlinkage platform may receive a corpus of enterprise documents and user profile data that corresponds to an individual user. The entity interlinkage platform utilizes topic extraction models to extract entities from the corpus and further utilizes the user profile data to generate a knowledge graph that includes interlinkages between the extracted entities. The entity interlinkage platform may identify a multitude of topic descriptions and corresponding topic terms from source documents that an access control list permits an individual user to access. Then, based on the user profile data, the entity interlinkage platform may generate a knowledge graph that is tailored for the individual user's specific purposes within the enterprise. For example, the knowledge graph may be generated based on knowledge graph preferences (which may be defined by the individual user) indicating preferred topic description types and/or levels of detail in association with specific topics and/or categories of topics.
    Type: Grant
    Filed: January 30, 2021
    Date of Patent: January 16, 2024
    Assignee: MICROSOFT TECHNOLOGY LICENSING, LLC
    Inventors: Vipindeep Vangala, Ranganath Kondapally, Pankaj Vasant Khanzode, Beethika Tripathi, Daraksha Parveen, Madan Gopal Jhanwar, Jimish Bhayani, Priyam Bakliwal, Jatin Kakkar
  • Publication number: 20220405290
    Abstract: Techniques for extracting and ranking multiple topic descriptions based on source contexts and subsequently selecting individual topic descriptions to surface based on recipient contexts. More specifically, a mining platform may extract, from a set of source documents making up a corpus, topic descriptions for various topics that are relevant to an enterprise. The mining platform may further rank the extracted topic descriptions based on a source context of those documents from which individual topic descriptions are extracted. Subsequently, when users access enterprise documents including term-usage instances of topics for which one or more topic descriptions have been extracted and ranked, a description serving module may select a topic description that is contextually appropriate for a recipient view the enterprise documents.
    Type: Application
    Filed: August 23, 2022
    Publication date: December 22, 2022
    Inventors: Vipindeep VANGALA, Ranganath KONDAPALLY, Beethika TRIPATHI, Madan Gopal JHANWAR, Jimish BHAYANI, Daraksha PARVEEN, Priyam BAKLIWAL, Pankaj Vasant KHANZODE
  • Patent number: 11461339
    Abstract: Techniques for extracting and ranking multiple topic descriptions based on source contexts and subsequently selecting individual topic descriptions to surface based on recipient contexts. More specifically, a mining platform may extract, from a set of source documents making up a corpus, topic descriptions for various topics that are relevant to an enterprise. The mining platform may further rank the extracted topic descriptions based on a source context of those documents from which individual topic descriptions are extracted. Subsequently, when users access enterprise documents including term-usage instances of topics for which one or more topic descriptions have been extracted and ranked, a description serving module may select a topic description that is contextually appropriate for a recipient view the enterprise documents.
    Type: Grant
    Filed: January 30, 2021
    Date of Patent: October 4, 2022
    Assignee: MICROSOFT TECHNOLOGY LICENSING, LLC
    Inventors: Vipindeep Vangala, Ranganath Kondapally, Beethika Tripathi, Madan Gopal Jhanwar, Jimish Bhayani, Daraksha Parveen, Priyam Bakliwal, Pankaj Vasant Khanzode
  • Publication number: 20220245159
    Abstract: Techniques for extracting and ranking multiple topic descriptions based on source contexts and subsequently selecting individual topic descriptions to surface based on recipient contexts. More specifically, a mining platform may extract, from a set of source documents making up a corpus, topic descriptions for various topics that are relevant to an enterprise. The mining platform may further rank the extracted topic descriptions based on a source context of those documents from which individual topic descriptions are extracted. Subsequently, when users access enterprise documents including term-usage instances of topics for which one or more topic descriptions have been extracted and ranked, a description serving module may select a topic description that is contextually appropriate for a recipient view the enterprise documents.
    Type: Application
    Filed: January 30, 2021
    Publication date: August 4, 2022
    Inventors: Vipindeep VANGALA, Ranganath KONDAPALLY, Beethika TRIPATHI, Madan Gopal JHANWAR, Jimish BHAYANI, Daraksha PARVEEN, Priyam BAKLIWAL, Pankaj Vasant KHANZODE
  • Publication number: 20220245267
    Abstract: An entity interlinkage platform may receive a corpus of enterprise documents and user profile data that corresponds to an individual user. The entity interlinkage platform utilizes topic extraction models to extract entities from the corpus and further utilizes the user profile data to generate a knowledge graph that includes interlinkages between the extracted entities. The entity interlinkage platform may identify a multitude of topic descriptions and corresponding topic terms from source documents that an access control list permits an individual user to access. Then, based on the user profile data, the entity interlinkage platform may generate a knowledge graph that is tailored for the individual user's specific purposes within the enterprise. For example, the knowledge graph may be generated based on knowledge graph preferences (which may be defined by the individual user) indicating preferred topic description types and/or levels of detail in association with specific topics and/or categories of topics.
    Type: Application
    Filed: January 30, 2021
    Publication date: August 4, 2022
    Inventors: Vipindeep VANGALA, Ranganath KONDAPALLY, Pankaj Vasant KHANZODE, Beethika TRIPATHI, Daraksha PARVEEN, Madan Gopal JHANWAR, Jimish BHAYANI, Priyam BAKLIWAL, Jatin KAKKAR