Patents by Inventor Anukool Rege

Anukool Rege 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: 20240061873
    Abstract: This disclosure relates to data association, attribution, annotation, and interpretation systems and related methods of efficiently organizing heterogeneous data at a massive scale. Incoming data is received and extracted for identifying information (“information”). Multiple dimensionality reducing functions are applied to the information, and based on the function results, the information are grouped into sets of similar information. Filtering rules are applied to the sets to exclude non-matching information in the sets. The sets are then merged into groups of information based on whether the sets contain at least one common information. A common link may be associated with information in a group. If the incoming data includes the identifying information associated with to the common link, the incoming data is assigned the common link. In some embodiments, incoming data are not altered but assigned into domains.
    Type: Application
    Filed: May 2, 2023
    Publication date: February 22, 2024
    Inventors: Anukool Rege, Prashant Kumar Sahay, Mervyn Lally, Shirish Kumar, Sanskar Sahay
  • Patent number: 11681733
    Abstract: This disclosure relates to data association, attribution, annotation, and interpretation systems and related methods of efficiently organizing heterogeneous data at a massive scale. Incoming data is received and extracted for identifying information (“information”). Multiple dimensionality reducing functions are applied to the information, and based on the function results, the information are grouped into sets of similar information. Filtering rules are applied to the sets to exclude non-matching information in the sets. The sets are then merged into groups of information based on whether the sets contain at least one common information. A common link may be associated with information in a group. If the incoming data includes the identifying information associated with to the common link, the incoming data is assigned the common link. In some embodiments, incoming data are not altered but assigned into domains.
    Type: Grant
    Filed: December 6, 2021
    Date of Patent: June 20, 2023
    Assignee: Experian Information Solutions, Inc.
    Inventors: Anukool Rege, Prashant Kumar Sahay, Mervyn Lally, Shirish Kumar, Sanskar Sahay
  • Publication number: 20220138238
    Abstract: This disclosure relates to data association, attribution, annotation, and interpretation systems and related methods of efficiently organizing heterogeneous data at a massive scale. Incoming data is received and extracted for identifying information (“information”). Multiple dimensionality reducing functions are applied to the information, and based on the function results, the information are grouped into sets of similar information. Filtering rules are applied to the sets to exclude non-matching information in the sets. The sets are then merged into groups of information based on whether the sets contain at least one common information. A common link may be associated with information in a group. If the incoming data includes the identifying information associated with to the common link, the incoming data is assigned the common link. In some embodiments, incoming data are not altered but assigned into domains.
    Type: Application
    Filed: December 6, 2021
    Publication date: May 5, 2022
    Inventors: Anukool Rege, Prashant Kumar Sahay, Mervyn Lally, Shirish Kumar, Sanskar Sahay
  • Patent number: 11227001
    Abstract: This disclosure relates to data association, attribution, annotation, and interpretation systems and related methods of efficiently organizing heterogeneous data at a massive scale. Incoming data is received and extracted for identifying information (“information”). Multiple dimensionality reducing functions are applied to the information, and based on the function results, the information are grouped into sets of similar information. Filtering rules are applied to the sets to exclude non-matching information in the sets. The sets are then merged into groups of information based on whether the sets contain at least one common information. A common link may be associated with information in a group. If the incoming data includes the identifying information associated with to the common link, the incoming data is assigned the common link. In some embodiments, incoming data are not altered but assigned into domains.
    Type: Grant
    Filed: January 31, 2018
    Date of Patent: January 18, 2022
    Assignee: Experian Information Solutions, Inc.
    Inventors: Anukool Rege, Prashant Kumar Sahay, Mervyn Lally, Shirish Kumar, Sanskar Sahay
  • Publication number: 20180218069
    Abstract: This disclosure relates to data association, attribution, annotation, and interpretation systems and related methods of efficiently organizing heterogeneous data at a massive scale. Incoming data is received and extracted for identifying information (“information”). Multiple dimensionality reducing functions are applied to the information, and based on the function results, the information are grouped into sets of similar information. Filtering rules are applied to the sets to exclude non-matching information in the sets. The sets are then merged into groups of information based on whether the sets contain at least one common information. A common link may be associated with information in a group. If the incoming data includes the identifying information associated with to the common link, the incoming data is assigned the common link. In some embodiments, incoming data are not altered but assigned into domains.
    Type: Application
    Filed: January 31, 2018
    Publication date: August 2, 2018
    Inventors: Anukool Rege, Prashant Kumar Sahay, Mervyn Lally, Shirish Kumar, Sanskar Sahay