Patents by Inventor Anjaneya Shenoy

Anjaneya Shenoy 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: 9800605
    Abstract: Threat risks to an enterprise are detected and assessed by assembling singular threats identified using both direct and behavioral threat indicators into composite threats to create complex use cases across multiple domains, and to amplify risks along kill chains of known attacks for early detection. Composite threat risk scores are computed from risk scores of singular threats to exponentially increase with the number of events observed along the kill chain. Composite threats are combined with normalized values of static risk and inherent risk for an entity of the enterprise to produce an entity risk score representative of the overall risk to the entity.
    Type: Grant
    Filed: October 30, 2015
    Date of Patent: October 24, 2017
    Assignee: Securonix, Inc.
    Inventors: Igor A. Baikalov, Tanuj Gulati, Sachin Nayyar, Anjaneya Shenoy, Ganpatrao H. Patwardhan
  • Patent number: 9544321
    Abstract: Anomalous activities in a computer network are detected using adaptive behavioral profiles that are created by measuring at a plurality of points and over a period of time observables corresponding to behavioral indicators related to an activity. Normal kernel distributions are created about each point, and the behavioral profiles are created automatically by combining the distributions using the measured values and a Gaussian kernel density estimation process that estimates values between measurement points. Behavioral profiles are adapted periodically using data aging to de-emphasize older data in favor of current data. The process creates behavioral profiles without regard to the data distribution. An anomaly probability profile is created as a normalized inverse of the behavioral profile, and is used to determine the probability that a behavior indicator is indicative of a threat. The anomaly detection process has a low false positive rate.
    Type: Grant
    Filed: July 28, 2015
    Date of Patent: January 10, 2017
    Assignee: Securonix, Inc.
    Inventors: Igor A. Baikalov, Tanuj Gulati, Sachin Nayyar, Anjaneya Shenoy, Ganpatrao H. Patwardhan
  • Publication number: 20160226905
    Abstract: Threat risks to an enterprise are detected and assessed by assembling singular threats identified using both direct and behavioral threat indicators into composite threats to create complex use cases across multiple domains, and to amplify risks along kill chains of known attacks for early detection. Composite threat risk scores are computed from risk scores of singular threats to exponentially increase with the number of events observed along the kill chain. Composite threats are combined with normalized values of static risk and inherent risk for an entity of the enterprise to produce an entity risk score representative of the overall risk to the entity.
    Type: Application
    Filed: October 30, 2015
    Publication date: August 4, 2016
    Applicant: SECURONIX, INC.
    Inventors: Igor A. Baikalov, Tanuj Gulati, Sachin Nayyar, Anjaneya Shenoy, Ganpatrao H. Patwardhan
  • Publication number: 20160226901
    Abstract: Anomalous activities in a computer network are detected using adaptive behavioral profiles that are created by measuring at a plurality of points and over a period of time observables corresponding to behavioral indicators related to an activity. Normal kernel distributions are created about each point, and the behavioral profiles are created automatically by combining the distributions using the measured values and a Gaussian kernel density estimation process that estimates values between measurement points. Behavioral profiles are adapted periodically using data aging to de-emphasize older data in favor of current data. The process creates behavioral profiles without regard to the data distribution. An anomaly probability profile is created as a normalized inverse of the behavioral profile, and is used to determine the probability that a behavior indicator is indicative of a threat. The anomaly detection process has a low false positive rate.
    Type: Application
    Filed: July 28, 2015
    Publication date: August 4, 2016
    Applicant: Securonix, Inc.
    Inventors: Igor A. Baikalov, Tanuj Gulati, Sachin Nayyar, Anjaneya Shenoy, Ganpatrao H. Patwardhan