Patents by Inventor Esteban Moro

Esteban Moro 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: 10992541
    Abstract: In some implementations of this invention, the performance of a network of reinforcement learning agents is maximized by optimizing the communication topology between the agents for the communication of gradients, weights or rewards. For instance, a sparse Erdos-Renyi network may be employed, and network density may be selected in such a way as to maximize reachability and to minimize homogeneity. In some cases, a sparse network topology is employed for massively distributed learning, such as across entire fleets of autonomous vehicles or mobile phones that learn from each other instead of requiring a master to coordinate learning.
    Type: Grant
    Filed: June 1, 2020
    Date of Patent: April 27, 2021
    Assignee: Massachusetts Institute of Technology
    Inventors: Dhaval Adjodah, Alex Paul Pentland, Esteban Moro, Yan Leng, Peter Krafft, Daniel Calacci, Abhimanyu Dubey
  • Publication number: 20200296002
    Abstract: In some implementations of this invention, the performance of a network of reinforcement learning agents is maximized by optimizing the communication topology between the agents for the communication of gradients, weights or rewards. For instance, a sparse Erdos-Renyi network may be employed, and network density may be selected in such a way as to maximize reachability and to minimize homogeneity. In some cases, a sparse network topology is employed for massively distributed learning, such as across entire fleets of autonomous vehicles or mobile phones that learn from each other instead of requiring a master to coordinate learning.
    Type: Application
    Filed: June 1, 2020
    Publication date: September 17, 2020
    Inventors: Dhaval Adjodah, Alex Paul Pentland, Esteban Moro, Yan Leng, Peter Krafft, Daniel Calacci, Abhimanyu Dubey
  • Patent number: 10715395
    Abstract: In some implementations of this invention, the performance of a network of reinforcement learning agents is maximized by optimizing the communication topology between the agents for the communication of gradients, weights or rewards. For instance, a sparse Erdos-Renyi network may be employed, and network density may be selected in such a way as to maximize reachability and to minimize homogeneity. In some cases, a sparse network topology is employed for massively distributed learning, such as across entire fleets of autonomous vehicles or mobile phones that learn from each other instead of requiring a master to coordinate learning.
    Type: Grant
    Filed: November 27, 2018
    Date of Patent: July 14, 2020
    Assignee: Massachusetts Institute of Technology
    Inventors: Dhaval Adjodah, Alex Paul Pentland, Esteban Moro, Yan Leng, Peter Krafft, Daniel Calacci, Abhimanyu Dubey
  • Publication number: 20190166005
    Abstract: In some implementations of this invention, the performance of a network of reinforcement learning agents is maximized by optimizing the communication topology between the agents for the communication of gradients, weights or rewards. For instance, a sparse Erdos-Renyi network may be employed, and network density may be selected in such a way as to maximize reachability and to minimize homogeneity. In some cases, a sparse network topology is employed for massively distributed learning, such as across entire fleets of autonomous vehicles or mobile phones that learn from each other instead of requiring a master to coordinate learning.
    Type: Application
    Filed: November 27, 2018
    Publication date: May 30, 2019
    Inventors: Dhaval Adjodah, Alex Paul Pentland, Esteban Moro, Yan Leng, Peter Krafft, Daniel Calacci, Abhimanyu Dubey