Patents by Inventor Vamsi PEDDIREDDY

Vamsi PEDDIREDDY 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: 11823067
    Abstract: The present disclosure relates to system(s) and method(s) for tuning an analytical model. The system builds a global analytical model based on modelling data received from a user. Further, the system analyses a target eco-system to identify a set of target eco-system parameters. The system further selects a sub-set of model parameters, corresponding to the set of target eco-system parameters, from a set of model parameters. Further, the system generates a local analytical model based on updating the global analytical model, based on the sub-set of model parameters and one or more PMML wrappers. The system further deploys the local analytical model at each node, from a set of nodes, associated with the target eco-system. Further, the system gathers test results from each node based on executing the local analytical model. The system further tunes the sub-set of model parameters associated with the local analytical model using federated learning algorithms.
    Type: Grant
    Filed: June 20, 2018
    Date of Patent: November 21, 2023
    Assignee: HCL Technologies Limited
    Inventors: S U M Prasad Dhanyamraju, Satya Sai Prakash Kanakadandi, Sriganesh Sultanpurkar, Karthik Leburi, Vamsi Peddireddy
  • Publication number: 20200285984
    Abstract: The present disclosure relates to a system(s) and method(s) for generating a predictive model, the method comprises receiving data and extracting one or more predicator features from the data based on a feature selection methodology. In one example, the feature selection methodology comprises computing a degree connectedness for each of the plurality of features using a modified mutual information technique and a Pearson co-efficient and identifying the one or more predicator features on a comparison of degree of connectedness and a predefined threshold. Further, the method comprises identifying a data type associated with the data, and generating a predictive model to be applied on the data based on the data type and the one or more predicator features.
    Type: Application
    Filed: March 5, 2020
    Publication date: September 10, 2020
    Inventors: Deepthi Priya BEJJAM, S U M Prasad DHANYAMRAJU, Sriganesh SULTANPURKAR, Vamsi PEDDIREDDY
  • Publication number: 20200274920
    Abstract: Disclosed is a system to perform parallel processing on a distributed dataset. A receiving module, for receiving a dataset along with a set of functions. A partitioning module, for partitioning the dataset into a set of distributed datasets. A distributing module, for distributing the set of distributed datasets amongst a set of computing nodes. A determining module, for determining an applicability of the function on the distributed dataset. An executing module, for executing one or more functions applicable on the distributed dataset. A generating module, for generating processed data for the distributed dataset based upon the executing of the one or more functions.
    Type: Application
    Filed: February 14, 2020
    Publication date: August 27, 2020
    Applicant: HCL TECHNOLOGIES LIMITED
    Inventors: S U M Prasad DHANYAMRAJU, Sriganesh SULTANPURKAR, Vamsi PEDDIREDDY, Deepthi Priya BEJJAM
  • Publication number: 20180373988
    Abstract: The present disclosure relates to system(s) and method(s) for tuning an analytical model. The system builds a global analytical model based on modelling data received from a user. Further, the system analyses a target eco-system to identify a set of target eco-system parameters. The system further selects a sub-set of model parameters, corresponding to the set of target eco-system parameters, from a set of model parameters. Further, the system generates a local analytical model based on updating the global analytical model, based on the sub-set of model parameters and one or more PMML wrappers. The system further deploys the local analytical model at each node, from a set of nodes, associated with the target eco-system. Further, the system gathers test results from each node based on executing the local analytical model. The system further tunes the sub-set of model parameters associated with the local analytical model using federated learning algorithms.
    Type: Application
    Filed: June 20, 2018
    Publication date: December 27, 2018
    Inventors: S U M Prasad DHANYAMRAJU, Satya Sai Prakash KANAKADANDI, Sriganesh SULTANPURKAR, Karthik LEBURI, Vamsi PEDDIREDDY