Patents by Inventor Bhargav Pandillapalli

Bhargav Pandillapalli 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: 20230377038
    Abstract: A growth predictor includes a monitor, a prediction engine, and a prioritization engine. The monitor receives or generates first information of a network already identified as a candidate money laundering (ML) network by an anti-money-laundering system. The prediction engine predicts second information indicative of a growth size of the ML network at a future time based on the first information. The prediction engine executes one or more predictive models to generate the second information indicative of growth size based on the first information, which indicates one or more changes that have occurred in the candidate ML network over a past period of time. The prioritization engine determines a priority of the candidate ML network based on the second information.
    Type: Application
    Filed: May 20, 2022
    Publication date: November 23, 2023
    Applicant: MASTERCARD INTERNATIONAL INCORPORATED
    Inventors: Shiv Markam, Rupesh Kumar Sankhala, Bhargav Pandillapalli, Aniruddha Mitra, Akash Singh
  • Publication number: 20230063333
    Abstract: A computing device for analyzing data from user spending patterns to determine offers to be presented to credit card customers comprises a processing element configured to: receive transaction data for a plurality of transactions for each of a plurality of credit card numbers; input the transaction data into an encoder that performs linear transformations and nonlinear transformations to produce latent space data with each latent space data point being associated with one credit card number; input the latent space data into a clustering element which associates each credit card number with one of a plurality of clusters; and make an upgrade offer to credit card numbers that have a normal credit status and which are associated with clusters that include credit card numbers that have a preferred credit status.
    Type: Application
    Filed: August 30, 2021
    Publication date: March 2, 2023
    Applicant: Mastercard International Incorporated
    Inventors: Bhargav Pandillapalli, Yatin Katyal, Karamjit Singh, Sangam Verma, Tanmoy Bhowmik
  • Publication number: 20220358508
    Abstract: Embodiments provide artificial intelligence-based methods and systems for predicting account-level risk scores associated with cardholders. Method performed by server system includes accessing payment transaction data and cardholder risk data associated with cardholder. The payment transaction data includes transaction variables associated with past payment transactions performed at Point of Interaction (POI) terminals within a particular time window. Method includes generating cardholder profile data based on the transaction variables and the cardholder risk data. Method includes determining account-level risk scores associated with the cardholder based on cardholder profile data. Each account-level risk score of account-level risk scores is determined by a trained machine learning model. The account-level risk scores include a wallet reload risk score, an account reissuance risk score, and a transaction channel risk score.
    Type: Application
    Filed: May 6, 2022
    Publication date: November 10, 2022
    Inventors: Bhargav Pandillapalli, Rajesh Kumar Ranjan, Ankur Saraswat, Kshitij Gangwar, Kamal Kant, Sonali Syngal, Suhas Powar, Debasmita Das, Pritam Kumar Nath, Nishant Pant, Yatin Katyal, Nitish Kumar, Karamjit Singh
  • Publication number: 20220012817
    Abstract: Aspects of the disclosure provide a computerized method and system that utilizes reference expense reports to build and train one or more neural network learning models that intelligently determine the riskiness of to-be-determined expense reports submitted for reimbursement. In examples, a determined riskiness may inform a reimbursement entity manager when determining whether to approve, reject, and/or flag for further review a to-be-determined expense report. In instances, computerized expense report resolution systems and methods may be further automated in order to omit user interactions with to-be-determined expense reports, such that an intelligent computer determines whether to approve, reject, and/or flag a to-be-determined expense report based on the intelligently determined riskiness of the to-be-determined expense report.
    Type: Application
    Filed: May 26, 2021
    Publication date: January 13, 2022
    Inventors: Karamjit Singh, Bhargav Pandillapalli, Tanmoy Bhowmik, Deepak Bhatt, Ganesh Nagendra Prasad, Srinivasan Chandrasekharan