Patents by Inventor Rajesh Jugulum

Rajesh Jugulum 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: 10248672
    Abstract: Methods and systems for assessing data involve, collecting samples of data elements from a database storing a population of data elements representing attributes of each numerous different financial transactions. Critical data elements from the collected samples are determined. Data quality rules are built and data dimensions are calculated for the critical data elements. A quality of data within the critical data elements for different data quality dimensions is monitored. Critical data elements that produce a high number of outliers are identified and causes for the outliers are identified. Thereafter, a corrective action plan to address a solution for the causes for the outliers may be developed and executed.
    Type: Grant
    Filed: September 19, 2011
    Date of Patent: April 2, 2019
    Assignee: CITIGROUP TECHNOLOGY, INC.
    Inventors: Rajesh Jugulum, Rajalakshmi Ramachandran, Jagmeet Singh, Robert A. Granese, Kenneth Brzozowski, Harold Ian Joyce, Don Gray
  • Publication number: 20140379310
    Abstract: Multidimensional methods and systems for evaluating and comparing predictive models involve, for example, receiving data related to predictions produced by each of a plurality of different predictive models and determining a score for each of a plurality of dimensions for each of the predictive models. A composite score may be calculated for each of the predictive models based at least partly on the dimension scores, and a recommendation may be generated based on comparing the composite scores.
    Type: Application
    Filed: June 25, 2013
    Publication date: December 25, 2014
    Inventors: Raji Ramachandran, Scott Lustig, H. Ian Joyce, Rajesh Jugulum, Eliud Polanco, Satya Vithala, Ron Guggenheimer, Sami Huovilainen, Jagmeet Singh, Robert Granese
  • Publication number: 20130073594
    Abstract: Methods and systems for assessing data involve, collecting samples of data elements from a database storing a population of data elements representing attributes of each numerous different financial transactions. Critical data elements from the collected samples are determined. Data quality rules are built and data dimensions are calculated for the critical data elements. A quality of data within the critical data elements for different data quality dimensions is monitored. Critical data elements that produce a high number of outliers are identified and causes for the outliers are identified. Thereafter, a corrective action plan to address a solution for the causes for the outliers may be developed and executed.
    Type: Application
    Filed: September 19, 2011
    Publication date: March 21, 2013
    Applicant: Citigroup Technology, Inc.
    Inventors: Rajesh Jugulum, Rajalakshmi Ramachandran, Jagmeet Singh, Robert A. Granese, Kenneth Brzozowski, Harold Ian Joyce, Don Gray
  • Publication number: 20100250274
    Abstract: A process for health management of participants includes gathering data on health attributes of the participants. The Kanri index value for each of the participants is then calculated by performing Gram-Schmidt orthogonalization and Mahalanobis distance for each of the participants from a mean of the Gram-Schmidt variables. The participant is then provided with a high impact prescription from the health attributes to improve participant health.
    Type: Application
    Filed: March 23, 2010
    Publication date: September 30, 2010
    Inventors: Rajesh Jugulum, Don Gray, Raymond G. Cadogan
  • Patent number: 7043401
    Abstract: A process involves collecting data relating to a particular condition and parsing the data from an original set of variables into subsets. For each subset defined, Mahalanobis distances are computed for known normal and abnormal values and the square root of these Mahalanobis distances is computed. A multiple Mahalanobis distance is calculated based upon the square root of Mahalanobis distances. Signal to noise ratios are obtained for each run of an orthogonal array in order to identify important subsets. This process has applications in identifying important variables or combinations thereof from a large number of potential contributors to a condition. The multidimensional system is robust and performs predictive data analysis well even when there are incidences of multi-collinearity and variables with zero standard deviations in reference group or unit space.
    Type: Grant
    Filed: February 6, 2004
    Date of Patent: May 9, 2006
    Inventors: Genichi Taguchi, Rajesh Jugulum, Shin Taguchi
  • Publication number: 20040215424
    Abstract: A process involves collecting data relating to a particular condition and parsing the data from an original set of variables into subsets. For each subset defined, Mahalanobis distances are computed for known normal and abnormal values and the square root of these Mahalanobis distances is computed. A multiple Mahalanobis distance is calculated based upon the square root of Mahalanobis distances. Signal to noise ratios are obtained for each run of an orthogonal array in order to identify important subsets. This process has applications in identifying important variables or combinations thereof from a large number of potential contributors to a condition. The multidimensional system is robust and performs predictive data analysis well even when there are incidences of multi-collinearity and variables with zero standard deviations in reference group or unit space.
    Type: Application
    Filed: February 6, 2004
    Publication date: October 28, 2004
    Inventors: Genichi Taguchi, Rajesh Jugulum, Shin Taguchi
  • Publication number: 20030233198
    Abstract: A process involves collecting data relating to a particular condition and parsing the data from an original set of variables into subsets. For each subset defined, Mahalanobis distances are computed for known normal and abnormal values and the square root of these Mahalanobis distances is computed. A multiple Mahalanobis distance is calculated based upon the square root of Mahalanobis distances. Signal to noise ratios are obtained for each run of an orthogonal array in order to identify important subsets. This process has applications in identifying important variables or combinations thereof from a large number of potential contributors to a condition.
    Type: Application
    Filed: November 13, 2002
    Publication date: December 18, 2003
    Inventors: Genichi Taguchi, Rajesh Jugulum, Shin Taguchi