Patents by Inventor Uday Veeramachaneni

Uday Veeramachaneni 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: 10264027
    Abstract: Methods and apparatuses employing outlier score detection method and apparatus for identifying and detecting threats to an enterprise or e-commerce system are disclosed, including grouping log lines belonging to one or more log line parameters from one or more enterprise or e-commerce system data sources and/or from incoming data traffic to the enterprise or e-commerce system; extracting one or more features from the grouped log lines into one or more features tables; using one or more statistical models on the one or more features tables to identify statistical outliers; using the one or more features tables to create one or more rules for identifying threats to the enterprise or e-commerce system; and using the one or more rules on incoming enterprise or e-commerce system data traffic to detect threats to the enterprise or e-commerce system. Other embodiments are described and claimed.
    Type: Grant
    Filed: July 28, 2017
    Date of Patent: April 16, 2019
    Assignee: PATTERNEX, INC.
    Inventors: Uday Veeramachaneni, Vamsi Korrapati, Constantinos Bassias, Ignacio Arnaldo
  • Patent number: 10044762
    Abstract: Methods and apparatuses employing copula optimization in building multivariate statistical models for identifying and detecting threats to an enterprise or e-commerce system are disclosed, including grouping log lines belonging to one or more log line parameters from one or more enterprise or e-commerce system data sources and/or from incoming data traffic to the enterprise or e-commerce system; extracting one or more features from the grouped log lines into one or more features tables; using one or more statistical models on the one or more features tables to identify statistical outliers and using the one or more rules on incoming enterprise or e-commerce system data traffic to detect threats to the enterprise or e-commerce system. Other embodiments are described and claimed.
    Type: Grant
    Filed: June 2, 2017
    Date of Patent: August 7, 2018
    Assignee: PATTERNEX, INC.
    Inventors: Uday Veeramachaneni, Vamsi Korrapati, Constantinos Bassias, Ignacio Arnaldo
  • Patent number: 9904893
    Abstract: Disclosed herein are a method and system for training a big data machine to defend, retrieve log lines belonging to log line parameters of a system's data source and from incoming data traffic, compute features from the log lines, apply an adaptive rules model with identified threat labels produce a features matrix, identify statistical outliers from execution of statistical outlier detection methods, and may generate an outlier scores matrix. Embodiments may combine a top scores model and a probability model to create a single top scores vector. The single top scores vector and the adaptive rules model may be displayed on a GUI for labeling of malicious or non-malicious scores. Labeled output may be transformed into a labeled features matrix to create a supervised learning module for detecting new threats in real time and reducing the time elapsed between threat detection of the enterprise or e-commerce system.
    Type: Grant
    Filed: December 16, 2016
    Date of Patent: February 27, 2018
    Assignee: Patternex, Inc.
    Inventors: Uday Veeramachaneni, Vamsi Korrapati, Constantinos Bassias, Ignacio Arnaldo, Ke Li
  • Publication number: 20170339192
    Abstract: Methods and apparatuses employing outlier score detection method and apparatus for identifying and detecting threats to an enterprise or e-commerce system for identifying and detecting threats to an enterprise or e-commerce system are disclosed, including grouping log lines belonging to one or more log line parameters from one or more enterprise or e-commerce system data sources and/or from incoming data traffic to the enterprise or e-commerce system; extracting one or more features from the grouped log lines into one or more features tables; using one or more statistical models on the one or more features tables to identify statistical outliers; using the one or more features tables to create one or more rules for identifying threats to the enterprise or e-commerce system; and using the one or more rules on incoming enterprise or e-commerce system data traffic to detect threats to the enterprise or e-commerce system. Other embodiments are described and claimed.
    Type: Application
    Filed: July 28, 2017
    Publication date: November 23, 2017
    Inventors: Uday Veeramachaneni, Vamsi Korrapati, Constantinos Bassias, Ignacio Arnaldo
  • Publication number: 20170272471
    Abstract: Methods and apparatuses employing copula optimization in building multivariate statistical models for identifying and detecting threats to an enterprise or e-commerce system are disclosed, including grouping log lines belonging to one or more log line parameters from one or more enterprise or e-commerce system data sources and/or from incoming data traffic to the enterprise or e-commerce system; extracting one or more features from the grouped log lines into one or more features tables; using one or more statistical models on the one or more features tables to identify statistical outliers and using the one or more rules on incoming enterprise or e-commerce system data traffic to detect threats to the enterprise or e-commerce system. Other embodiments are described and claimed.
    Type: Application
    Filed: June 2, 2017
    Publication date: September 21, 2017
    Inventors: Uday Veeramachaneni, Vamsi Korrapati, Constantinos Bassias, Ignacio Arnaldo
  • Publication number: 20170169360
    Abstract: Disclosed herein are a method and system for training a big data machine to defend, retrieve log lines belonging to log line parameters of a system's data source and from incoming data traffic, compute features from the log lines, apply an adaptive rules model with identified threat labels produce a features matrix, identify statistical outliers from execution of statistical outlier detection methods, and may generate an outlier scores matrix. Embodiments may combine a top scores model and a probability model to create a single top scores vector. The single top scores vector and the adaptive rules model may be displayed on a GUI for labeling of malicious or non-malicious scores. Labeled output may be transformed into a labeled features matrix to create a supervised learning module for detecting new threats in real time and reducing the time elapsed between threat detection of the enterprise or e-commerce system.
    Type: Application
    Filed: December 16, 2016
    Publication date: June 15, 2017
    Inventors: Uday Veeramachaneni, Vamsi Korrapati, Constantinos Bassias, Ignacio Arnaldo, Ke Li
  • Patent number: 9661025
    Abstract: Methods and apparatuses for identifying and detecting threats to an enterprise or e-commerce system are disclosed, including grouping log lines belonging to one or more log line parameters from one or more enterprise or e-commerce system data sources and/or from incoming data traffic to the enterprise or e-commerce system; extracting one or more features from the grouped log lines into one or more features tables; using one or more statistical models on the one or more features tables to identify statistical outliers; labeling the statistical outliers to create one or more labeled features tables; using the one or more labeled features tables to create one or more rules for identifying threats to the enterprise or e-commerce system; and using the one or more rules on incoming enterprise or e-commerce system data traffic to detect threats to the enterprise or e-commerce system. Other embodiments are described and claimed.
    Type: Grant
    Filed: September 7, 2016
    Date of Patent: May 23, 2017
    Assignee: PATTERNEX, INC.
    Inventors: Constantinos Bassias, Vamsi Korrapati, Uday Veeramachaneni
  • Publication number: 20160381077
    Abstract: Methods and apparatuses for identifying and detecting threats to an enterprise or e-commerce system are disclosed, including grouping log lines belonging to one or more log line parameters from one or more enterprise or e-commerce system data sources and/or from incoming data traffic to the enterprise or e-commerce system; extracting one or more features from the grouped log lines into one or more features tables; using one or more statistical models on the one or more features tables to identify statistical outliers; labeling the statistical outliers to create one or more labeled features tables; using the one or more labeled features tables to create one or more rules for identifying threats to the enterprise or e-commerce system; and using the one or more rules on incoming enterprise or e-commerce system data traffic to detect threats to the enterprise or e-commerce system. Other embodiments are described and claimed.
    Type: Application
    Filed: September 7, 2016
    Publication date: December 29, 2016
    Applicant: Patternex, Inc.
    Inventors: Constantinos Bassias, Vamsi Korrapati, Uday Veeramachaneni
  • Publication number: 20160127402
    Abstract: Methods and apparatuses for identifying and detecting threats to an enterprise or e-commerce system are disclosed, including grouping log lines belonging to one or more log line parameters from one or more enterprise or e-commerce system data sources and/or from incoming data traffic to the enterprise or e-commerce system; extracting one or more features from the grouped log lines into one or more features tables; using one or more statistical models on the one or more features tables to identify statistical outliers; labeling the statistical outliers to create one or more labeled features tables; using the one or more labeled features tables to create one or more rules for identifying threats to the enterprise or e-commerce system; and using the one or more rules on incoming enterprise or e-commerce system data traffic to detect threats to the enterprise or e-commerce system. Other embodiments are described and claimed.
    Type: Application
    Filed: November 4, 2014
    Publication date: May 5, 2016
    Applicant: Patternex, Inc.
    Inventors: Uday Veeramachaneni, Vamsi Korrapati, Constantinos Bassias, Kaylan Veeramachaneni