Patents by Inventor Emily KRUGER

Emily KRUGER 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: 11983384
    Abstract: A machine learning feature studio comprises a user interface configured to allow a user to define features associated with an entity. The features are calculated using historical or real-time data stored in an event store and associated with the entity. Visualizations and values of the calculated feature are displayed in the user interface and the user may interact with the features, such as to edit and compare them. The user commits the features to the project associated with a machine learning model and selects to export the project. Feature vectors may are calculated using the committed features and are exported to a production environment.
    Type: Grant
    Filed: January 14, 2022
    Date of Patent: May 14, 2024
    Assignee: Kaskada, Inc.
    Inventors: Davor Bonaci, Benjamin Chambers, Andrew Concordia, Corinne DiGiovanni, Emily Kruger, Ryan Michael
  • Publication number: 20220214780
    Abstract: A machine learning feature studio comprises a user interface configured to allow a user to define features associated with an entity. The features are calculated using historical or real-time data stored in an event store and associated with the entity. Visualizations and values of the calculated feature are displayed in the user interface and the user may interact with the features, such as to edit and compare them. The user commits the features to the project associated with a machine learning model and selects to export the project. Feature vectors may are calculated using the committed features and are exported to a production environment.
    Type: Application
    Filed: January 14, 2022
    Publication date: July 7, 2022
    Inventors: Davor Bonaci, Benjamin Chambers, Andrew Concordia, Corinne DiGiovanni, Emily Kruger, Ryan Michael
  • Patent number: 11354596
    Abstract: Machine learning feature engineering systems and methods comprise an event ingestion module that receives event data associated with entities. The ingestion module determines which entities are associated with events of the event data. The ingestion module stores the events, grouped by associated entity, in a related event store. A user defines features associated with the entities via an API and/or a feature studio. A feature computation layer determines values for the features based on the grouped events stored to the related event store. The feature computation layer stores the computed feature values and timestamps to a feature store. When new data is received, the feature computation layer computes one or more of the feature values for different times based on the timestamps. Feature vectors are generated using the computed feature values and output to the user via the API and/or feature studio.
    Type: Grant
    Filed: May 18, 2020
    Date of Patent: June 7, 2022
    Assignee: KASKADA, INC.
    Inventors: Davor Bonaci, Benjamin Chambers, Andrew Concordia, Emily Kruger, Ryan Michael
  • Publication number: 20220156254
    Abstract: A system for generating machine learning feature vectors or examples is disclosed herein. The system comprises at least one database configured to store data indicative of events associated with a plurality of entities, an application programming interface (API) server configured to receive a user query from at least one user device, and at least one computing node in communication with the API server and the at least one database. The at least one computing node is configured at least to receive, from the API server and at a first time, a first indication of the user query. The at least one computing node is configured to generate, based at least on the data indicative of events and the first indication of the user query, results associated with the user query, wherein the results comprise one or more feature vectors or examples for use with a machine learning algorithm. The at least one computing node is configured to cause storage of data indicative of the results in the at least one database.
    Type: Application
    Filed: January 31, 2022
    Publication date: May 19, 2022
    Inventors: Davor Bonaci, Benjamin Chambers, Jordan Frazier, Emily Kruger, Ryan Michael, Charles Maxwell Scofield Boyd, Chama Parkey
  • Publication number: 20220043540
    Abstract: A machine learning feature studio comprises a user interface configured to allow a user to define features associated with an entity. The features are calculated using historical or real-time data stored in an event store and associated with the entity. Visualizations and values of the calculated feature are displayed in the user interface and the user may interact with the features, such as to edit and compare them. The user commits the features to the project associated with a machine learning model and selects to export the project. Feature vectors may are calculated using the committed features and are exported to a production environment.
    Type: Application
    Filed: February 16, 2021
    Publication date: February 10, 2022
    Inventors: Davor BONACI, Benjamin CHAMBERS, Andrew CONCORDIA, Corinne DIGIOVANNI, Emily KRUGER, Ryan MICHAEL
  • Patent number: 11238354
    Abstract: A method for generating machine learning training examples using data indicative of events associated with a plurality of entities. The method comprises receiving an indication of one or more selected entities of the plurality of entities, receiving information indicative of selecting one or more prediction times associated with each of the one or more selected entities, and receiving information indicative of selecting one or more label times associated with each of the one or more selected entities. Each of the one or more label times corresponds to at least one of the one or more prediction times, and the one or more label times occur after the corresponding one or more prediction times. Data associated with the one or more prediction times and the one or more label times is extracted from the data indicative of events associated with the plurality of entities.
    Type: Grant
    Filed: February 16, 2021
    Date of Patent: February 1, 2022
    Assignee: Kaskada, Inc.
    Inventors: Davor Bonaci, Benjamin Chambers, Jordan Frazier, Emily Kruger, Ryan Michael, Charles Maxwell Scofield Boyd, Charna Parkey
  • Patent number: 11226725
    Abstract: A machine learning feature studio comprises a user interface configured to allow a user to define features associated with an entity. The features are calculated using historical or real-time data stored in an event store and associated with the entity. Visualizations and values of the calculated feature are displayed in the user interface and the user may interact with the features, such as to edit and compare them. The user commits the features to the project associated with a machine learning model and selects to export the project. Feature vectors may are calculated using the committed features and are exported to a production environment.
    Type: Grant
    Filed: February 16, 2021
    Date of Patent: January 18, 2022
    Assignee: Kaskada, Inc.
    Inventors: Davor Bonaci, Benjamin Chambers, Andrew Concordia, Corinne Digiovanni, Emily Kruger, Ryan Michael
  • Publication number: 20210241146
    Abstract: A method for generating machine learning training examples using data indicative of events associated with a plurality of entities. The method comprises receiving an indication of one or more selected entities of the plurality of entities, receiving information indicative of selecting one or more prediction times associated with each of the one or more selected entities, and receiving information indicative of selecting one or more label times associated with each of the one or more selected entities. Each of the one or more label times corresponds to at least one of the one or more prediction times, and the one or more label times occur after the corresponding one or more prediction times. Data associated with the one or more prediction times and the one or more label times is extracted from the data indicative of events associated with the plurality of entities.
    Type: Application
    Filed: February 16, 2021
    Publication date: August 5, 2021
    Inventors: Davor BONACI, Benjamin CHAMBERS, Jordan FRAZIER, Emily KRUGER, Ryan MICHAEL, Charles Maxwell Scofield BOYD, Charna PARKEY
  • Publication number: 20210241171
    Abstract: Machine learning feature engineering systems and methods comprise an event ingestion module that receives event data associated with entities. The ingestion module determines which entities are associated with events of the event data. The ingestion module stores the events, grouped by associated entity, in a related event store. A user defines features associated with the entities via an API and/or a feature studio. A feature computation layer determines values for the features based on the grouped events stored to the related event store. The feature computation layer stores the computed feature values and timestamps to a feature store. When new data is received, the feature computation layer computes one or more of the feature values for different times based on the timestamps. Feature vectors are generated using the computed feature values and output to the user via the API and/or feature studio.
    Type: Application
    Filed: May 18, 2020
    Publication date: August 5, 2021
    Inventors: Davor Bonaci, Benjamin Chambers, Andrew Concordia, Emily Kruger, Ryan Michael