Patents by Inventor Sara Beth Asher

Sara Beth Asher 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: 20230334367
    Abstract: A system may automatically generate a predictive machine learning model by automatically performing various processes based on an analysis of the data as well as metadata associated with the data. The system may accept a selection of data and a prediction field from the data. The system may automatically generate a set of features based on the data and may automatically remove certain features that cause inaccuracies in the model. The system may balance the data based on a representation rate of certain outcomes. The system may train and select a model based on several candidate models. The system may then perform the predictions based on the selected model and send an indication of the predictions to a user.
    Type: Application
    Filed: May 12, 2023
    Publication date: October 19, 2023
    Inventors: Sara Beth Asher, John Emery Ball, Vitaly Gordon, Till Christian Bergmann, Fai Kan, Chalenge Masekera, Shubha Nabar, Nihar Dandekar, James Reber Lewis
  • Patent number: 11663517
    Abstract: A system may automatically generate a predictive machine learning model by automatically performing various processes based on an analysis of the data as well as metadata associated with the data. The system may accept a selection of data and a prediction field from the data. The system may automatically generate a set of features based on the data and may automatically remove certain features that cause inaccuracies in the model. The system may balance the data based on a representation rate of certain outcomes. The system may train and select a model based on several candidate models. The system may then perform the predictions based on the selected model and send an indication of the predictions to a user.
    Type: Grant
    Filed: January 31, 2018
    Date of Patent: May 30, 2023
    Assignee: Salesforce, Inc.
    Inventors: Sara Beth Asher, John Emery Ball, Vitaly Gordon, Till Christian Bergmann, Kin Fai Kan, Chalenge Masekera, Shubha Nabar, Nihar Dandekar, James Reber Lewis
  • Patent number: 10984283
    Abstract: A method of training a predictive model to predict a likely field value for one or more user selected fields within an application. The method comprises providing a user interface for user selection of the one or more user selected fields within the application; analyzing a pre-existing, user provided data set of objects; training, based on the analysis, the predictive model; determining, for each user selected field based on the analysis, a confidence function for the predictive model that identifies the percentage of cases predicted correctly at different applied confidence levels, the percentage of cases predicted incorrectly at different applied confidence levels, and the percentage of cases in which the prediction model could not provide a prediction at different applied confidence levels; and providing a user interface for user review of the confidence functions for user selection of confidence threshold levels to be used with the predictive model.
    Type: Grant
    Filed: September 10, 2019
    Date of Patent: April 20, 2021
    Assignee: salesforce.com, inc.
    Inventors: Sarah Aerni, Natalie Casey, Shubha Nabar, Melissa Runfeldt, Sara Beth Asher
  • Publication number: 20210073579
    Abstract: A method of training a predictive model to predict a likely field value for one or more user selected fields within an application. The method comprises providing a user interface for user selection of the one or more user selected fields within the application; analyzing a pre-existing, user provided data set of objects; training, based on the analysis, the predictive model; determining, for each user selected field based on the analysis, a confidence function for the predictive model that identifies the percentage of cases predicted correctly at different applied confidence levels, the percentage of cases predicted incorrectly at different applied confidence levels, and the percentage of cases in which the prediction model could not provide a prediction at different applied confidence levels; and providing a user interface for user review of the confidence functions for user selection of confidence threshold levels to be used with the predictive model.
    Type: Application
    Filed: September 10, 2019
    Publication date: March 11, 2021
    Inventors: Sarah Aerni, Natalie Casey, Shubha Nabar, Melissa Runfeldt, Sara Beth Asher
  • Publication number: 20190138946
    Abstract: A system may automatically generate a predictive machine learning model by automatically performing various processes based on an analysis of the data as well as metadata associated with the data. The system may accept a selection of data and a prediction field from the data. The system may automatically generate a set of features based on the data and may automatically remove certain features that cause inaccuracies in the model. The system may balance the data based on a representation rate of certain outcomes. The system may train and select a model based on several candidate models. The system may then perform the predictions based on the selected model and send an indication of the predictions to a user.
    Type: Application
    Filed: January 31, 2018
    Publication date: May 9, 2019
    Inventors: Sara Beth Asher, John Emery Ball, Vitaly Gordon, Till Christian Bergmann, Kin Fai Kan, Chalenge Masekera, Shubha Nabar, Nihar Dandekar, James Reber Lewis