Patents by Inventor Gururaja Hebbar

Gururaja Hebbar 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: 12333607
    Abstract: A system can comprise a memory that stores computer executable components, and a processor, operably coupled to the memory, that executes the computer executable components comprising: an evaluating component that employs a quantum register to output a processed vector based on a first variable, of set of variables indexed over a selected dimension, and a valuation component that approximates a value function and that, based on the approximating, outputs a valuation amount representing provision of an aspect over the selected dimension, wherein the value function is a function of an inner product of a set of processing functions that are based on the set of variables, including the first variable, wherein a first processing function of the set of processing functions and of the inner product is based on the processed vector, and wherein the set of variables correspond to conditions defining the provision of the aspect.
    Type: Grant
    Filed: April 11, 2023
    Date of Patent: June 17, 2025
    Assignees: INTERNATIONAL BUSINESS MACHINES CORPORATION, E.ON Digital Technology GmbH
    Inventors: Gabriele Francesco Maria Agliardi, Kavitha Hassan Yogaraj, Francesco Tacchino, Antonio Mezzacapo, Gururaja Hebbar, Omar Shehab, Cortiana Giorgio, Corey O'Meara, Kumar Jang Bahadur Ghosh, Piergiacomo Sabino
  • Publication number: 20240354854
    Abstract: A system can comprise a memory that stores computer executable components, and a processor, operably coupled to the memory, that executes the computer executable components comprising: an evaluating component that employs a quantum register to output a processed vector based on a first variable, of set of variables indexed over a selected dimension, and a valuation component that approximates a value function and that, based on the approximating, outputs a valuation amount representing provision of an aspect over the selected dimension, wherein the value function is a function of an inner product of a set of processing functions that are based on the set of variables, including the first variable, wherein a first processing function of the set of processing functions and of the inner product is based on the processed vector, and wherein the set of variables correspond to conditions defining the provision of the aspect.
    Type: Application
    Filed: April 11, 2023
    Publication date: October 24, 2024
    Inventors: Gabriele Francesco Maria Agliardi, Kavitha Hassan Yogaraj, Francesco Tacchino, Antonio Mezzacapo, Gururaja Hebbar, Omar Shehab, Cortiana Giorgio, Corey O'Meara, Kumar Jang Bahadur Ghosh, Piergiacomo Sabino
  • Publication number: 20240303518
    Abstract: Using a model executing on a classical processor, a set of classical features is scored. The scored set of classical features is divided into a set of feature groups, a number of classical features in a group determined according to a qubit capability of a quantum processor. Using a model executing on the quantum processor and a group of the scored set of classical features, a set of quantum features is scored. The score of a quantum feature is adjusted according to an accuracy of the quantum data model. The scored set of classical features and the scored set of quantum features are combined according to a measure of differences between the scored set of classical features and the scored set of quantum features. Using the combined set of scored features and a first set of input data of a resource, a valuation of a resource is calculated.
    Type: Application
    Filed: May 20, 2024
    Publication date: September 12, 2024
    Applicant: International Business Machines Corporation
    Inventors: Aaron K. Baughman, GURURAJA HEBBAR, Micah Forster, Kavitha Hassan Yogaraj, Yoshika Chhabra
  • Patent number: 12061952
    Abstract: Using a model executing on a classical processor, a set of classical features is scored. The scored set of classical features is divided into a set of feature groups, a number of classical features in a group determined according to a qubit capability of a quantum processor. Using a model executing on the quantum processor and a group of the scored set of classical features, a set of quantum features is scored. The score of a quantum feature is adjusted according to an accuracy of the quantum data model. The scored set of classical features and the scored set of quantum features are combined according to a measure of differences between the scored set of classical features and the scored set of quantum features. Using the combined set of scored features and a first set of input data of a resource, a valuation of a resource is calculated.
    Type: Grant
    Filed: August 24, 2021
    Date of Patent: August 13, 2024
    Assignee: INTERNATIONAL BUSINESS MACHINES CORPORATION
    Inventors: Aaron K. Baughman, Gururaja Hebbar, Micah Forster, Kavitha Hassan Yogaraj, Yoshika Chhabra
  • Publication number: 20230409873
    Abstract: Providing a hybrid neural network architecture by training a plurality of models using a set of training data, the plurality comprising quantum models and classical models, evaluating each model using a common test data set, assigning one or more evaluation metrics to each model according to the evaluation, generating a plurality of networks, each network comprising a combination of the models, evaluating a flow of each network, selecting a network according to the flow, and providing the selected network to a user.
    Type: Application
    Filed: June 16, 2022
    Publication date: December 21, 2023
    Inventors: Aaron K. Baughman, Kavitha Hassan Yogaraj, Arjun Kashyap, GURURAJA HEBBAR, Rukhsan Ul Haq, Sudeep Ghosh
  • Publication number: 20230065684
    Abstract: Using a model executing on a classical processor, a set of classical features is scored. The scored set of classical features is divided into a set of feature groups, a number of classical features in a group determined according to a qubit capability of a quantum processor. Using a model executing on the quantum processor and a group of the scored set of classical features, a set of quantum features is scored. The score of a quantum feature is adjusted according to an accuracy of the quantum data model. The scored set of classical features and the scored set of quantum features are combined according to a measure of differences between the scored set of classical features and the scored set of quantum features. Using the combined set of scored features and a first set of input data of a resource, a valuation of a resource is calculated.
    Type: Application
    Filed: August 24, 2021
    Publication date: March 2, 2023
    Applicant: International Business Machines Corporation
    Inventors: Aaron K. Baughman, Gururaja Hebbar, Micah Forster, Kavitha Hassan Yogaraj, Yoshika Chhabra
  • Publication number: 20230010615
    Abstract: Using a classical data model executing on a classical processor, a set of classical features is scored. A classical feature comprises a first attribute of a resource, and a score of the classical feature comprises an evaluation of a utility of the classical feature in predicting a result involving the resource. Using a quantum data model executing on a quantum processor and the scored set of classical features, a set of quantum features is scored. The scored set of classical features and the scored set of quantum features are correlated, forming a combined set of scored features. Using the combined set of scored features and a first set of input data of a resource, a valuation of the resource is calculated.
    Type: Application
    Filed: July 6, 2021
    Publication date: January 12, 2023
    Applicant: International Business Machines Corporation
    Inventors: Aaron K. Baughman, Souvik Mazumder, Mohit Trivedi, Gururaja Hebbar, Daniel Joseph Fry, Kavitha Hassan Yogaraj, Herman Colquhoun