Patents by Inventor Roei Levi

Roei Levi 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: 20260064495
    Abstract: The present disclosure discloses systems and methods for generating application programming interface (API) schema by using ontological constructs. The system may receive an ontology file comprising a domain-specific conceptual model, wherein the domain-specific conceptual model comprises ontological entities and corresponding relationship between ontological entities. Further, a schema generation strategy may be determined from at least one of a simple strategy, a nearest neighbor strategy, and a shortest path strategy for the received ontology file based on a user requirement and the received ontology file. Moreover, the system may generate an ontological data structure for the received ontology file based on the determined schema generation strategy. Thereafter, the system may transform the generated ontological data structure into a graphical schema structure by mapping each of the ontological entities to corresponding graphical entities.
    Type: Application
    Filed: August 28, 2024
    Publication date: March 5, 2026
    Applicant: ACCENTURE GLOBAL SOLUTIONS LIMITED
    Inventors: Roei LEVI, Moshe Hadad, Lior Bass
  • Patent number: 12476998
    Abstract: Implementations are directed to methods, systems, and apparatus for automated prioritization of cyber risk to digital identities. Actions include obtaining graph data defining a knowledge graph including nodes and edges, the nodes representing respective objects of the enterprise network including digital identities and resources, each node being associated with an explicit risk score and properties of the represented object, each edge representing a relation between objects; determining priority scores for the objects, including, for a first object represented by a first node: determining an implicit risk score for the first node; determining a total risk score for the first node; and determining a priority score for the first node based on the total risk score and properties associated with the first node; generating a ranking of the objects according to the priority scores; and providing, for presentation on a display, cyber security risk data indicating the ranking of the objects.
    Type: Grant
    Filed: March 19, 2024
    Date of Patent: November 18, 2025
    Assignee: ACCENTURE GLOBAL SOLUTIONS LIMITED
    Inventors: Gal Engelberg, Dan Klein, Moshe Hadad, Roei Levi, Daniel Voicu, Victor Daniel Corvalan, Daniel Nahmias, Yossef Tahar, Lior Bass
  • Patent number: 12335296
    Abstract: Implementations include a computer-implemented method for reducing cyber-security risk, comprising: accessing a knowledge mesh including a plurality of modules, wherein each module is associated with a respective aspect and maintains a knowledge graph specific to the respective aspect, wherein each knowledge graph is generated using data from one or more cyber-security repositories and includes nodes and connections between the nodes; performing an information completion process to generate connections between nodes of knowledge graphs maintained by different modules of the knowledge mesh, including performing at least one of: inheritance-based inference; natural language processing classifier-based inference; or natural language processing-based object matching inference; and identifying, using the generated connections between the nodes of the knowledge graphs, one or more actions to reduce cyber-security risk.
    Type: Grant
    Filed: June 15, 2023
    Date of Patent: June 17, 2025
    Assignee: Accenture Global Solutions Limited
    Inventors: Hodaya Binyamini, Louis William DiValentin, Gal Engelberg, Dan Klein, Moshe Hadad, Petra Genc, Roei Levi
  • Publication number: 20240430289
    Abstract: Implementations are directed to methods, systems, and apparatus for automated prioritization of cyber risk to digital identities. Actions include obtaining graph data defining a knowledge graph including nodes and edges, the nodes representing respective objects of the enterprise network including digital identities and resources, each node being associated with an explicit risk score and properties of the represented object, each edge representing a relation between objects; determining priority scores for the objects, including, for a first object represented by a first node: determining an implicit risk score for the first node; determining a total risk score for the first node; and determining a priority score for the first node based on the total risk score and properties associated with the first node; generating a ranking of the objects according to the priority scores; and providing, for presentation on a display, cyber security risk data indicating the ranking of the objects.
    Type: Application
    Filed: March 19, 2024
    Publication date: December 26, 2024
    Inventors: Gal Engelberg, Dan Klein, Moshe Hadad, Roei Levi, Daniel Voicu, Victor Daniel Corvalan, Daniel Nahmias, Yossef Tahar, Lior Bass
  • Publication number: 20230412635
    Abstract: Implementations include a computer-implemented method for reducing cyber-security risk, comprising: accessing a knowledge mesh including a plurality of modules, wherein each module is associated with a respective aspect and maintains a knowledge graph specific to the respective aspect, wherein each knowledge graph is generated using data from one or more cyber-security repositories and includes nodes and connections between the nodes; performing an information completion process to generate connections between nodes of knowledge graphs maintained by different modules of the knowledge mesh, including performing at least one of: inheritance-based inference; natural language processing classifier-based inference; or natural language processing-based object matching inference; and identifying, using the generated connections between the nodes of the knowledge graphs, one or more actions to reduce cyber-security risk.
    Type: Application
    Filed: June 15, 2023
    Publication date: December 21, 2023
    Inventors: Hodaya Binyamini, Louis William DiValentin, Gal Engelberg, Dan Klein, Moshe Hadad, Petra Genc, Roei Levi