Patents by Inventor Sandra Orozco Martin

Sandra Orozco Martin 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).

  • Publication number: 20230274217
    Abstract: Implementations include receiving demand data representing types of material and quantities of material demanded for each of a plurality of locations within a geographical area; receiving vessel data representing availabilities and capacities of each of a plurality of vessels; processing the demand data and the vessel data through a capacity optimization model to provide a first output comprising initial voyage plans for the plurality of vessels; receiving weather data representing predicted weather conditions within the geographical area; and processing the first output and the weather data through a sequence optimization model to provide a second output comprising updated voyage plans. Each initial voyage plan and each updated voyage plan defines a type of material, quantity of material, vessel, and sequence of locations.
    Type: Application
    Filed: February 24, 2023
    Publication date: August 31, 2023
    Inventors: Ghanshyam Devnani, Loganantha Naidu Esparan, Kumud Ranjan Jha, Vivek Luthra, Monto Paul Rodrigues, Sandra Orozco Martín, Aikansh Jain, Roman Buil Giné, Henrique Vázquez Muiños, Quim Arnau, Marc Blanchart Forne, Diinalan Gunasagaram, Rodrigo Baranda Castrillo
  • Patent number: 11514698
    Abstract: Methods, systems, and apparatus, including computer programs encoded on a computer storage medium, for performing intelligent extraction of information from a document. A computing module receives input data representing an image of a document. The module also receives context data for the document. The context data includes parameters that are descriptive of the document in the image. The module processes the input data and the context data to determine a complexity value that characterizes a level of complexity in identifying information to be extracted from the document. The system selects a machine-learning model to use in extracting information from the document. The model is selected based on the complexity value and from multiple candidate models. The system extracts information from the document using the selected model, including converting a portion of the image of the document that shows typed or handwritten text into a digitized text string.
    Type: Grant
    Filed: July 16, 2020
    Date of Patent: November 29, 2022
    Assignee: Accenture Global Solutions Limited
    Inventors: Carlos Gaston Besanson Tuma, Jaime Rodriguez Lagunas, Sandra Orozco Martín, Esperanza Eugenia Puigserver Martorell, Joan Verdu Arnal, Reynaldo Alberto España Rey
  • Patent number: 11501215
    Abstract: A system and method for hierarchical, clustered reinforcement learning is disclosed. A plurality of subject objects may be obtained, and a plurality of clusters of the subject objects may be determined. Clustered reinforcement learning may be performed on each cluster, including training a respective cluster agent for the each cluster. A first cluster of the plurality of clusters may be selected for revision based on selection criteria. After selection of the selected first cluster, individual reinforcement learning may be performed on each individual subject object included in the selected first cluster, including training a respective individual agent for the each individual subject object. An action may be controlled based on a result of the hierarchical, clustered reinforcement learning.
    Type: Grant
    Filed: October 31, 2019
    Date of Patent: November 15, 2022
    Assignee: Accenture Global Solutions Limited
    Inventors: Carlos Gaston Besanson Tuma, Franz Naselli, Sandra Orozco Martin, Ernest Benedito Saura, Lau Pera Itxart, Anna Costa Vilar
  • Publication number: 20210064860
    Abstract: Methods, systems, and apparatus, including computer programs encoded on a computer storage medium, for performing intelligent extraction of information from a document. A computing module receives input data representing an image of a document. The module also receives context data for the document. The context data comprises parameters that are descriptive of the document in the image. The module processes the input data and the context data to determine a complexity value that characterizes a level of complexity in identifying information to be extracted from the document. The system selects a machine-learning model to use in extracting information from the document. The model is selected based on the complexity value and from multiple candidate models. The system extracts information from the document using the selected model, comprising converting a portion of the image of the document that shows typed or handwritten text into a digitized text string.
    Type: Application
    Filed: July 16, 2020
    Publication date: March 4, 2021
    Inventors: Carlos Gaston Besanson Tuma, Jaime Rodriguez Lagunas, Sandra Orozco Martín, Esperanza Eugenia Puigserver Martorell, Joan Verdu Arnal, Reynaldo Alberto España Rey
  • Publication number: 20200143291
    Abstract: A system and method for hierarchical, clustered reinforcement learning is disclosed. A plurality of subject objects may be obtained, and a plurality of clusters of the subject objects may be determined. Clustered reinforcement learning may be performed on each cluster, including training a respective cluster agent for the each cluster. A first cluster of the plurality of clusters may be selected for revision based on selection criteria. After selection of the selected first cluster, individual reinforcement learning may be performed on each individual subject object included in the selected first cluster, including training a respective individual agent for the each individual subject object. An action may be controlled based on a result of the hierarchical, clustered reinforcement learning.
    Type: Application
    Filed: October 31, 2019
    Publication date: May 7, 2020
    Inventors: Carlos Gaston Besanson Tuma, Franz Naselli, Sandra Orozco Martin, Ernest Benedito Saura, Lau Pera Itxart, Anna Costa Vilar