Patents by Inventor Ryan David Kappedal

Ryan David Kappedal 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: 12505396
    Abstract: A central database system trains and applies machine-learned models based on characteristics of one or more entities associated with the central database system. For instance, the central database system trains a machine-learned model configured to identify issues a target entity is likely to encounter based on training data identifying characteristics of historical entities and issues faced by the historical entities. Likewise, the central database system trains machine-learned models configured to predict actions that entities are likely to take in the future, and resources required to take those actions. The central database system can then perform one or more proactive actions or make one or more recommendations based on the predicted issues, the predicted future actions, and the predicted required resources.
    Type: Grant
    Filed: September 15, 2023
    Date of Patent: December 23, 2025
    Assignee: Gusto, Inc.
    Inventors: Christian Franklin Hillson, Jacques Robert Caspi, Andrew Collins Bessey, Lilly Anne Pieper, Ryan David Kappedal, Jasmine Walker Motupalli, Addison Woodford Bohannon, Rebecca Alice Carter
  • Publication number: 20250285766
    Abstract: This disclosure provides methods, devices, and systems for causal inferencing. The present implementations more specifically relate to determining causal relationships between clinical metrics associated with a procedure performed, at least in part, by a medical system. In some aspects, an inferencing system may receive case data or telemetry generated by the medical system and determine a set of clinical metrics associated with the procedure based on the case data. The inferencing system further maps the set of clinic metrics to a directed acyclic graph (DAG) based on one or more casual relationships between the various clinical metrics. For example, the DAG may indicate which of the clinical metrics are causally related, including which clinical metric has a causal effect on the other. The inferencing system further generates one or more inferences associated with the medical system based on the DAG and/or data generation information associated with the clinical metrics.
    Type: Application
    Filed: March 7, 2025
    Publication date: September 11, 2025
    Applicant: Auris Health, Inc.
    Inventors: Lauren Elizabeth Friend, Ryan David Kappedal
  • Publication number: 20250094452
    Abstract: A central database system trains and applies machine-learned models based on characteristics of one or more entities associated with the central database system. For instance, the central database system trains a machine-learned model configured to identify issues a target entity is likely to encounter based on training data identifying characteristics of historical entities and issues faced by the historical entities. Likewise, the central database system trains machine-learned models configured to predict actions that entities are likely to take in the future, and resources required to take those actions. The central database system can then perform one or more proactive actions or make one or more recommendations based on the predicted issues, the predicted future actions, and the predicted required resources.
    Type: Application
    Filed: September 15, 2023
    Publication date: March 20, 2025
    Inventors: Christian Franklin Hillson, Jacques Robert Caspi, Andrew Collins Bessey, Lilly Anne Pieper, Ryan David Kappedal, Jasmine Walker Motupalli, Addison Woodford Bohannon, Rebecca Alice Carter
  • Publication number: 20250094899
    Abstract: A central database system trains and applies machine-learned models based on characteristics of one or more entities associated with the central database system. For instance, the central database system trains a machine-learned model configured to identify issues a target entity is likely to encounter based on training data identifying characteristics of historical entities and issues faced by the historical entities. Likewise, the central database system trains machine-learned models configured to predict actions that entities are likely to take in the future, and resources required to take those actions. The central database system can then perform one or more proactive actions or make one or more recommendations based on the predicted issues, the predicted future actions, and the predicted required resources.
    Type: Application
    Filed: September 15, 2023
    Publication date: March 20, 2025
    Inventors: Christian Franklin Hillson, Jacques Robert Caspi, Andrew Collins Bessey, Lilly Anne Pieper, Ryan David Kappedal, Jasmine Walker Motupalli, Addison Woodford Bohannon, Rebecca Alice Carter
  • Publication number: 20250094859
    Abstract: A central database system trains and applies machine-learned models based on characteristics of one or more entities associated with the central database system. For instance, the central database system trains a machine-learned model configured to identify issues a target entity is likely to encounter based on training data identifying characteristics of historical entities and issues faced by the historical entities. Likewise, the central database system trains machine-learned models configured to predict actions that entities are likely to take in the future, and resources required to take those actions. The central database system can then perform one or more proactive actions or make one or more recommendations based on the predicted issues, the predicted future actions, and the predicted required resources.
    Type: Application
    Filed: September 15, 2023
    Publication date: March 20, 2025
    Inventors: Christian Franklin Hillson, Jacques Robert Caspi, Andrew Collins Bessey, Lilly Anne Pieper, Ryan David Kappedal, Jasmine Walker Motupalli, Addison Woodford Bohannon, Rebecca Alice Carter