Patents by Inventor Shauna J. Moran

Shauna J. Moran 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: 11954565
    Abstract: A technology is described for automating deployment of a machine learning model. An example method may include receiving, via a graphical user interface, credentials for connecting to a data store containing a plurality of datasets and connecting to the data store using the credentials. A selection of a target metric to predict using the machine learning model can be received, via the graphical user interface, and datasets included in the plurality of datasets that correlate to the target metric can be identified by analyzing the datasets to identify an association between the target metric and data contained within the datasets. The datasets can be input to the machine learning model to train the machine learning model to generate predictions of the target metric, and the machine learning model can be deployed to computing resources in a service provider environment to generate predictions associated with the target metric.
    Type: Grant
    Filed: May 20, 2019
    Date of Patent: April 9, 2024
    Assignee: QLIKTECH INTERNATIONAL AB
    Inventors: Killian B. Dent, James M. Friedman, Allan D. Johnson, Shauna J. Moran, Tyler P. Cooper, Chris K. Knoch, Nicholas R. Magnuson, Daniel J. Wallace
  • Publication number: 20200012962
    Abstract: A technology is described for automating deployment of a machine learning model. An example method may include receiving, via a graphical user interface, credentials for connecting to a data store containing a plurality of datasets and connecting to the data store using the credentials. A selection of a target metric to predict using the machine learning model can be received, via the graphical user interface, and datasets included in the plurality of datasets that correlate to the target metric can be identified by analyzing the datasets to identify an association between the target metric and data contained within the datasets. The datasets can be input to the machine learning model to train the machine learning model to generate predictions of the target metric, and the machine learning model can be deployed to computing resources in a service provider environment to generate predictions associated with the target metric.
    Type: Application
    Filed: May 20, 2019
    Publication date: January 9, 2020
    Inventors: Killian B. Dent, James M. Friedman, Allan D. Johnson, Shauna J. Moran, Tyler P. Cooper, Chris K. Knoch, Nicholas R. Magnuson, Daniel J. Wallace