Patents by Inventor Marta Arias

Marta Arias 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: 11153196
    Abstract: An autonomous controller for SDN, virtual, and/or physical networks can be used to optimize a network automatically and determine new optimizations as a network scales. The controller trains models that can determine in real-time the optimal path for the flow of data from node A to B in an arbitrary network. The controller processes a network topology to determine relative importance of nodes in the network. The controller reduces a search space for a machine learning model by selecting pivotal nodes based on the determined relative importance. When a demand to transfer traffic between two hosts is detected, the controller utilizes an AI model to determine one or more of the pivotal nodes to be used in routing the traffic between the two hosts. The controller determines a path between the two hosts which comprises the selected pivotal nodes and deploys a routing configuration for the path to the network.
    Type: Grant
    Filed: April 21, 2020
    Date of Patent: October 19, 2021
    Assignee: CA, Inc.
    Inventors: David Sanchez Charles, Giorgio Stampa, Victor Muntés-Mulero, Marta Arias
  • Publication number: 20200252324
    Abstract: An autonomous controller for SDN, virtual, and/or physical networks can be used to optimize a network automatically and determine new optimizations as a network scales. The controller trains models that can determine in real-time the optimal path for the flow of data from node A to B in an arbitrary network. The controller processes a network topology to determine relative importance of nodes in the network. The controller reduces a search space for a machine learning model by selecting pivotal nodes based on the determined relative importance. When a demand to transfer traffic between two hosts is detected, the controller utilizes an AI model to determine one or more of the pivotal nodes to be used in routing the traffic between the two hosts. The controller determines a path between the two hosts which comprises the selected pivotal nodes and deploys a routing configuration for the path to the network.
    Type: Application
    Filed: April 21, 2020
    Publication date: August 6, 2020
    Inventors: David Sanchez Charles, Giorgio Stampa, Victor Muntés-Mulero, Marta Arias
  • Patent number: 10666547
    Abstract: An autonomous controller for SDN, virtual, and/or physical networks can be used to optimize a network automatically and determine new optimizations as a network scales. The controller trains models that can determine in real-time the optimal path for the flow of data from node A to B in an arbitrary network. The controller processes a network topology to determine relative importance of nodes in the network. The controller reduces a search space for a machine learning model by selecting pivotal nodes based on the determined relative importance. When a demand to transfer traffic between two hosts is detected, the controller utilizes an AI model to determine one or more of the pivotal nodes to be used in routing the traffic between the two hosts. The controller determines a path between the two hosts which comprises the selected pivotal nodes and deploys a routing configuration for the path to the network.
    Type: Grant
    Filed: October 25, 2018
    Date of Patent: May 26, 2020
    Assignee: CA, Inc.
    Inventors: David Sanchez Charles, Giorgio Stampa, Victor Muntés-Mulero, Marta Arias
  • Publication number: 20200136957
    Abstract: An autonomous controller for SDN, virtual, and/or physical networks can be used to optimize a network automatically and determine new optimizations as a network scales. The controller trains models that can determine in real-time the optimal path for the flow of data from node A to B in an arbitrary network. The controller processes a network topology to determine relative importance of nodes in the network. The controller reduces a search space for a machine learning model by selecting pivotal nodes based on the determined relative importance. When a demand to transfer traffic between two hosts is detected, the controller utilizes an AI model to determine one or more of the pivotal nodes to be used in routing the traffic between the two hosts. The controller determines a path between the two hosts which comprises the selected pivotal nodes and deploys a routing configuration for the path to the network.
    Type: Application
    Filed: October 25, 2018
    Publication date: April 30, 2020
    Inventors: David Sanchez Charles, Giorgio Stampa, Victor Muntés-Mulero, Marta Arias
  • Patent number: 7945524
    Abstract: A machine learning system creates failure-susceptibility rankings for feeder cables in a utility's electrical distribution system. The machine learning system employs martingale boosting algorithms and Support Vector Machine (SVM) algorithms to generate a feeder failure prediction model, which is trained on static and dynamic feeder attribute data. Feeders are dynamically ranked by failure susceptibility and the rankings displayed to utility operators and engineers so that they can proactively service the distribution system to prevent local power outages. The feeder rankings may be used to redirect power flows and to prioritize repairs. A feedback loop is established to evaluate the responses of the electrical distribution system to field actions taken to optimize preventive maintenance programs.
    Type: Grant
    Filed: July 23, 2008
    Date of Patent: May 17, 2011
    Assignees: The Trustess of Columbia University in the City of New York, Consolidated Edison of New York, Inc.
    Inventors: Roger N. Anderson, Albert Boulanger, David L. Waltz, Phil Long, Marta Arias, Philip Gross, Hila Becker, Arthur Kressner, Mark Mastrocinque, Matthew Koenig, John A. Johnson