Patents by Inventor Amir ALAMDARI

Amir ALAMDARI 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: 12106217
    Abstract: Methods and apparatus are provided for generating a graph neural network (GNN) model based on an entity-entity graph. The entity-entity graph comprising a plurality of entity nodes in which each entity node is connected to one or more entity nodes of the plurality of entity nodes by one or more corresponding relationship edges. The method comprising: generating an embedding based on data representative of the entity-entity graph for the GNN model, wherein the embedding comprises an attention weight assigned to each relationship edge of the entity-entity graph; and updating weights of the GNN model including the attention weights by minimising a loss function associated with at least the embedding; wherein the attention weights indicate the relevancy of each relationship edge between entity nodes of the entity-entity graph. The entity-entity graph may be filtered based on the attention weights of a trained GNN model.
    Type: Grant
    Filed: May 16, 2019
    Date of Patent: October 1, 2024
    Assignee: BenevolentAI Technology Limited
    Inventors: Paidi Creed, Aaron Sim, Amir Alamdari, Joss Briody, Daniel Neil, Alix Lacoste
  • Publication number: 20210081717
    Abstract: Methods and apparatus are provided for generating a graph neural network (GNN) model based on an entity-entity graph. The entity-entity graph comprising a plurality of entity nodes in which each entity node is connected to one or more entity nodes of the plurality of entity nodes by one or more corresponding relationship edges. The method comprising: generating an embedding based on data representative of the entity-entity graph for the GNN model, wherein the embedding comprises an attention weight assigned to each relationship edge of the entity-entity graph; and updating weights of the GNN model including the attention weights by minimising a loss function associated with at least the embedding; wherein the attention weights indicate the relevancy of each relationship edge between entity nodes of the entity-entity graph. The entity-entity graph may be filtered based on the attention weights of a trained GNN model.
    Type: Application
    Filed: May 16, 2019
    Publication date: March 18, 2021
    Applicant: BENEVOLENTAI TECHNOLOGY LIMITED
    Inventors: Paidi CREED, Aaron SIM, Amir ALAMDARI, Joss BRIODY, Daniel NEIL, Alix LACOSTE