Patents by Inventor Srinivasabharathi Selvaraj

Srinivasabharathi Selvaraj 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: 20240045991
    Abstract: Techniques for data lifecycle discovery and management are presented. Data lifecycle discovery platform (DLDP) can identify data of users, data type, and language of data stored in data stores (DSs) of entities based on scanning of data from databases. DLDP determines compliance of DLDP and DSs with obligations relating to data protection arising out of jurisdictional laws or agreements. DLDP generates rules to facilitate complying with and enforcing laws and agreements. DLDP can determine, and present to authorized users, risk scores relating to levels of compliance of the DLDP, associated platforms, or entities, risk indicator metrics, or a privacy health index of the organization associated with DLDP. DLDP can manage user rights regarding data, and access to data in DSs and information relating thereto stored in secure data store of DLDP. DLDP can remediate issues involving anomalies indicating non-compliance. DLDP can utilize machine learning to enhance various functions of DLDP.
    Type: Application
    Filed: September 6, 2023
    Publication date: February 8, 2024
    Inventors: Deepa Madhavan, Sudheer Kilari, Meena Nagarajan, Alejandro Picos, Vladimir Bacvanski, Arunkumar Kannimar Ponnaiah, Srinivasabharathi Selvaraj
  • Patent number: 11893130
    Abstract: Techniques for data lifecycle discovery and management are presented. Data lifecycle discovery platform (DLDP) can identify data of users, data type, and language of data stored in data stores (DSs) of entities based on scanning of data from databases. DLDP determines compliance of DLDP and DSs with obligations relating to data protection arising out of jurisdictional laws or agreements. DLDP generates rules to facilitate complying with and enforcing laws and agreements. DLDP can determine, and present to authorized users, risk scores relating to levels of compliance of the DLDP, associated platforms, or entities, risk indicator metrics, or a privacy health index of the organization associated with DLDP. DLDP can manage user rights regarding data, and access to data in DSs and information relating thereto stored in secure data store of DLDP. DLDP can remediate issues involving anomalies indicating non-compliance. DLDP can utilize machine learning to enhance various functions of DLDP.
    Type: Grant
    Filed: December 18, 2020
    Date of Patent: February 6, 2024
    Assignee: PayPal, Inc.
    Inventors: Deepa Madhavan, Sudheer Kilari, Meena Nagarajan, Alejandro Picos, Vladimir Bacvanski, Arunkumar Kannimar Ponnaiah, Srinivasabharathi Selvaraj
  • Publication number: 20230067285
    Abstract: A system can determine a cluster of tables from a plurality of tables, determine, using a neural network, a link between a pair of columns from respective tables of the cluster of tables, wherein the pair of columns satisfy a relatedness criterion, and classify, using the neural network, the link according to a link classification criterion, wherein the link satisfies the link classification criterion.
    Type: Application
    Filed: January 20, 2022
    Publication date: March 2, 2023
    Inventors: Sri Harish Sridhar, Sasikanth Natarajan, Karan Samirbhai Shah, Srinivasabharathi Selvaraj
  • Publication number: 20220198044
    Abstract: Techniques for data lifecycle discovery and management are presented. Data lifecycle discovery platform (DLDP) can identify data of users, data type, and language of data stored in data stores (DSs) of entities based on scanning of data from databases. DLDP determines compliance of DLDP and DSs with obligations relating to data protection arising out of jurisdictional laws or agreements. DLDP generates rules to facilitate complying with and enforcing laws and agreements. DLDP can determine, and present to authorized users, risk scores relating to levels of compliance of the DLDP, associated platforms, or entities, risk indicator metrics, or a privacy health index of the organization associated with DLDP. DLDP can manage user rights regarding data, and access to data in DSs and information relating thereto stored in secure data store of DLDP. DLDP can remediate issues involving anomalies indicating non-compliance. DLDP can utilize machine learning to enhance various functions of DLDP.
    Type: Application
    Filed: December 18, 2020
    Publication date: June 23, 2022
    Inventors: Deepa Madhavan, Srinivasabharathi Selvaraj, Sudheer Kilari, Meena Nagarajan, Alejandro Picos, Vladimir Bacvanski, Arunkumar Kannimar Ponnaiah
  • Publication number: 20220198054
    Abstract: Techniques for data lifecycle discovery and management are presented. Data lifecycle discovery platform (DLDP) can identify data of users, data type, and language of data stored in data stores (DSs) of entities based on scanning of data from databases. DLDP determines compliance of DLDP and DSs with obligations relating to data protection arising out of jurisdictional laws or agreements. DLDP generates rules to facilitate complying with and enforcing laws and agreements. DLDP can determine, and present to authorized users, risk scores relating to levels of compliance of the DLDP, associated platforms, or entities, risk indicator metrics, or a privacy health index of the organization associated with DLDP. DLDP can manage user rights regarding data, and access to data in DSs and information relating thereto stored in secure data store of DLDP. DLDP can remediate issues involving anomalies indicating non-compliance. DLDP can utilize machine learning to enhance various functions of DLDP.
    Type: Application
    Filed: December 18, 2020
    Publication date: June 23, 2022
    Inventors: Alejandro Picos, Vladimir Bacvanski, Meena Nagarajan, Sudheer Kilari, Arunkumar Kannimar Ponnaiah, Srinivasabharathi Selvaraj, Deepa Madhavan
  • Publication number: 20220198053
    Abstract: Techniques for data lifecycle discovery and management are presented. Data lifecycle discovery platform (DLDP) can identify data of users, data type, and language of data stored in data stores (DSs) of entities based on scanning of data from databases. DLDP determines compliance of DLDP and DSs with obligations relating to data protection arising out of jurisdictional laws or agreements. DLDP generates rules to facilitate complying with and enforcing laws and agreements. DLDP can determine, and present to authorized users, risk scores relating to levels of compliance of the DLDP, associated platforms, or entities, risk indicator metrics, or a privacy health index of the organization associated with DLDP. DLDP can manage user rights regarding data, and access to data in DSs and information relating thereto stored in secure data store of DLDP. DLDP can remediate issues involving anomalies indicating non-compliance. DLDP can utilize machine learning to enhance various functions of DLDP.
    Type: Application
    Filed: December 18, 2020
    Publication date: June 23, 2022
    Inventors: Deepa Madhavan, Sudheer Kilari, Meena Nagarajan, Alejandro Picos, Vladimir Bacvanski, Arunkumar Kannimar Ponnaiah, Srinivasabharathi Selvaraj
  • Publication number: 20210326457
    Abstract: Aspects of the present disclosure involve, a customizable system and infrastructure which can receive privacy data from varying data sources for privacy scanning, containment, and reporting. In one embodiment, data received is scanned for privacy data extraction using various data connectors and decryption techniques. In another embodiment, the data extracted is transferred to a privacy scanning container where the data is analyzed by various deep learning models for the correct classification of the data. In some instances, the data extracted may be unstructured data deriving form emails, case memos, surveys, social media posts, and the like. Once the data is classified, the data may be stored or contained according to the classification of the data. Still in another embodiment, the classified data may be retrieved by an analytics container for use in reporting.
    Type: Application
    Filed: July 1, 2021
    Publication date: October 21, 2021
    Inventors: AMIR HOSSEIN YOUSSEFI, Ravi Retineni, Alejandro Picos, Gaoyuan Wang, Li Cao, Deepa Madhavan, Srinivasabharathi Selvaraj
  • Patent number: 11062036
    Abstract: Aspects of the present disclosure involve, a customizable system and infrastructure which can receive privacy data from varying data sources for privacy scanning, containment, and reporting. In one embodiment, data received is scanned for privacy data extraction using various data connectors and decryption techniques. In another embodiment, the data extracted is transferred to a privacy scanning container where the data is analyzed by various deep learning models for the correct classification of the data. In some instances, the data extracted may be unstructured data deriving form emails, case memos, surveys, social media posts, and the like. Once the data is classified, the data may be stored or contained according to the classification of the data. Still in another embodiment, the classified data may be retrieved by an analytics container for use in reporting.
    Type: Grant
    Filed: June 29, 2018
    Date of Patent: July 13, 2021
    Assignee: PAYPAL, INC.
    Inventors: Amir Hossein Youssefi, Ravi Retineni, Alejandro Picos, Gaoyuan Wang, Li Cao, Deepa Madhavan, Srinivasabharathi Selvaraj
  • Publication number: 20190347428
    Abstract: Aspects of the present disclosure involve, a customizable system and infrastructure which can receive privacy data from varying data sources for privacy scanning, containment, and reporting. In one embodiment, data received is scanned for privacy data extraction using various data connectors and decryption techniques. In another embodiment, the data extracted is transferred to a privacy scanning container where the data is analyzed by various deep learning models for the correct classification of the data. In some instances, the data extracted may be unstructured data deriving form emails, case memos, surveys, social media posts, and the like. Once the data is classified, the data may be stored or contained according to the classification of the data. Still in another embodiment, the classified data may be retrieved by an analytics container for use in reporting.
    Type: Application
    Filed: June 29, 2018
    Publication date: November 14, 2019
    Inventors: Amir Hossein Youssefi, Ravi Retineni, Alejandro Picos, Gaoyuan Wang, Li Cao, Deepa Madhavan, Srinivasabharathi Selvaraj