Patents by Inventor Venkatesh Halappa

Venkatesh Halappa 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: 11734626
    Abstract: An embodiment includes extracting a capability from a dataset representative of a project description of a proposed project using a first machine learning process to form a cluster representative of the capability. The embodiment assigns the capability to a first node of a business operations graph based on a classification result of the capability by a second machine learning process. The embodiment generates a visual indicator based, at least in part, on the assigning of the capability to the first node. The embodiment generates the visual indicator by a process comprising generating a first visual indicator of the capability being assigned to the first node, and a second visual indicator of a development sequence for the capability relative to another capability from the project description based at least in part on an association from the business operations graph between the first node and a second node of the graph.
    Type: Grant
    Filed: July 6, 2020
    Date of Patent: August 22, 2023
    Assignee: INTERNATIONAL BUSINESS MACHINES CORPORATION
    Inventors: Sathya Santhar, Venkatesh Halappa, Gerhardt Jacobus Scriven
  • Patent number: 11281999
    Abstract: In an approach to improving the predictive accuracy of classifiers, one or more computer processors calculate one or more training set statistics. The one or more computer processors generate one or more balanced training sets based on one or more calculated training set statistics. The one or more computer processors train one or more cognitive models utilizing one or more unbalanced training sets and one or more generated balanced training sets. The one or more computer processors determine a fitness of the one or more trained cognitive models. The one or more computer processors adjust one or more training sets based on the determined fitness of the one or more cognitive models.
    Type: Grant
    Filed: May 14, 2019
    Date of Patent: March 22, 2022
    Assignee: International Business Machines Corporation Armonk, New York
    Inventors: Gerhardt Jacobus Scriven, Kartik Narayanaswamy, Venkatesh Halappa, Naganarasimha Subraveshti Vijayanarasimha
  • Publication number: 20220004951
    Abstract: An embodiment includes extracting a capability from a dataset representative of a project description of a proposed project using a first machine learning process to form a cluster representative of the capability. The embodiment assigns the capability to a first node of a business operations graph based on a classification result of the capability by a second machine learning process. The embodiment generates a visual indicator based, at least in part, on the assigning of the capability to the first node. The embodiment generates the visual indicator by a process comprising generating a first visual indicator of the capability being assigned to the first node, and a second visual indicator of a development sequence for the capability relative to another capability from the project description based at least in part on an association from the business operations graph between the first node and a second node of the graph.
    Type: Application
    Filed: July 6, 2020
    Publication date: January 6, 2022
    Applicant: International Business Machines Corporation
    Inventors: Sathya Santhar, Venkatesh Halappa, Gerhardt Jacobus Scriven
  • Publication number: 20210342645
    Abstract: Classifying unlabeled input data is provided. Euclidean distance and cosine similarity are calculated between an unlabeled input data point to be classified and a class label centroid of each class within a set of training data. A confidence value is calculated for each class label centroid based on the Euclidean distance and the cosine similarity between the unlabeled input data point and the class label centroid of each class. A highest confidence value equals a best matching class label centroid to the unlabeled input data point. A class label centroid having the highest confidence value is selected. The computer classifies the unlabeled input data point using a class label corresponding to the class label centroid having the highest confidence value.
    Type: Application
    Filed: May 4, 2020
    Publication date: November 4, 2021
    Inventors: Gerhardt Jacobus Scriven, Kartik Narayanaswamy, Venkatesh Halappa, Naganarasimha Subraveshti Vijayanarasimha
  • Publication number: 20200364609
    Abstract: In an approach to improving the predictive accuracy of classifiers, one or more computer processors calculate one or more training set statistics. The one or more computer processors generate one or more balanced training sets based on one or more calculated training set statistics. The one or more computer processors train one or more cognitive models utilizing one or more unbalanced training sets and one or more generated balanced training sets. The one or more computer processors determine a fitness of the one or more trained cognitive models. The one or more computer processors adjust one or more training sets based on the determined fitness of the one or more cognitive models.
    Type: Application
    Filed: May 14, 2019
    Publication date: November 19, 2020
    Inventors: Gerhardt Jacobus Scriven, Kartik Narayanaswamy, Venkatesh Halappa, Naganarasimha Subraveshti Vijayanarasimha