Patents by Inventor Naira Grigoryan

Naira Grigoryan 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: 9547710
    Abstract: Cycles and other patterns within time-series data are determined. Time-series data are transformed into discretized sets of clustered data that are organized by time period. Comparison is made of the organized data to determine similar time periods and multiclusters of the similar time periods are formed. From the multicluster data, cycles are identified from which thresholds and other useful data may be derived, or the data used for other useful purposes.
    Type: Grant
    Filed: August 5, 2008
    Date of Patent: January 17, 2017
    Assignee: VMware, Inc.
    Inventors: Mazda A. Marvasti, Astghik Grigoryan, Arnak Poghosyan, Naira Grigoryan, Ashot Harutyunyan
  • Patent number: 9298538
    Abstract: This disclosure presents systems and methods for run-time analysis of streams of log data for abnormalities using a statistical structure of meta-data associated with the log data. The systems and methods convert a log data stream into meta-data and perform statistical analysis in order to reveal a dominant statistical pattern within the meta-data. The meta-data is represented as a graph with nodes that represent each of the different event types, which are detected in the stream along with event sources associated with the events. The systems and methods use real-time analysis to compare a portion of a current log data stream collected in an operational window with historically collected meta-data represented by a graph in order to determine the degree of abnormality of the current log data stream collected in the operational window.
    Type: Grant
    Filed: August 6, 2013
    Date of Patent: March 29, 2016
    Assignee: VMware, Inc.
    Inventors: Mazda A. Marvasti, Arnak Poghosyan, Ashot Harutyunyan, Naira Grigoryan
  • Patent number: 9245000
    Abstract: Cycles and other patterns within time-series data are determined. Time-series data are transformed into discretized sets of clustered data that are organized by time period. Comparison is made of the organized data to determine similar time periods and multiclusters of the similar time periods are formed. From the multicluster data, cycles are identified from which thresholds and other useful data may be derived, or the data used for other useful purposes.
    Type: Grant
    Filed: August 5, 2008
    Date of Patent: January 26, 2016
    Assignee: VMware, Inc.
    Inventors: Mazda A. Marvasti, Astghik Grigoryan, Arnak Poghosyan, Naira Grigoryan, Ashot Harutyunyan
  • Patent number: 8751867
    Abstract: An approach to root cause determination in a complex systems based on monitoring and event data is disclosed. It includes a historical analysis of events with their probabilistic correlations. Applying information measures between the random variables which embody those events one can detect origins of problems and generate real-time recommendations for their locations in a hierarchical system. Estimation of system bottlenecks, as well as the risk of “black swan”-type events are also computed. The processes are based on a statistical processing of a virtual directed graph produced from historical events.
    Type: Grant
    Filed: October 12, 2011
    Date of Patent: June 10, 2014
    Assignee: VMware, Inc.
    Inventors: Mazda A. Marvasti, Arnak Poghosyan, Ashot Harutyunyan, Naira Grigoryan
  • Publication number: 20140053025
    Abstract: This disclosure presents systems and methods for run-time analysis of streams of log data for abnormalities using a statistical structure of meta-data associated with the log data. The systems and methods convert a log data stream into meta-data and perform statistical analysis in order to reveal a dominant statistical pattern within the meta-data. The meta-data is represented as a graph with nodes that represent each of the different event types, which are detected in the stream along with event sources associated with the events. The systems and methods use real-time analysis to compare a portion of a current log data stream collected in an operational window with historically collected meta-data represented by a graph in order to determine the degree of abnormality of the current log data stream collected in the operational window.
    Type: Application
    Filed: August 6, 2013
    Publication date: February 20, 2014
    Inventors: Mazda A. Marvasti, Arnak Poghosyan, Ashot Harutyunyan, Naira Grigoryan
  • Publication number: 20130097463
    Abstract: An approach to root cause determination in a complex systems based on monitoring and event data is disclosed. It includes a historical analysis of events with their probabilistic correlations. Applying information measures between the random variables which embody those events one can detect origins of problems and generate real-time recommendations for their locations in a hierarchical system. Estimation of system bottlenecks, as well as the risk of “black swan”-type events are also computed. The processes are based on a statistical processing of a virtual directed graph produced from historical events.
    Type: Application
    Filed: October 12, 2011
    Publication date: April 18, 2013
    Applicant: VMWARE, INC.
    Inventors: Mazda A. MARVASTI, Arnak POGHOSYAN, Ashot HARUTYUNYAN, Naira GRIGORYAN
  • Publication number: 20100036643
    Abstract: Cycles and other patterns within time-series data are determined. Time-series data are transformed into discretized sets of clustered data that are organized by time period. Comparison is made of the organized data to determine similar time periods and multiclusters of the similar time periods are formed. From the multicluster data, cycles are identified from which thresholds and other useful data may be derived, or the data used for other useful purposes.
    Type: Application
    Filed: August 5, 2008
    Publication date: February 11, 2010
    Inventors: Mazda A. Marvasti, Astghik Grigoryan, Arnak Poghosyan, Naira Grigoryan, Ashot Harutyunyan
  • Publication number: 20100036857
    Abstract: Cycles and other patterns within time-series data are determined. Time-series data are transformed into discretized sets of clustered data that are organized by time period. Comparison is made of the organized data to determine similar time periods and multiclusters of the similar time periods are formed. From the multicluster data, cycles are identified from which thresholds and other useful data may be derived, or the data used for other useful purposes.
    Type: Application
    Filed: August 5, 2008
    Publication date: February 11, 2010
    Inventors: Mazda A. Marvasti, Astghik Grigoryan, Arnak Poghosyan, Naira Grigoryan, Ashot Harutyunyan