Patents by Inventor Robert Bryant Kaspar

Robert Bryant Kaspar 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: 11961115
    Abstract: In some examples, a computing device may receive data from a plurality of groups of data sources. The computing device may access a plurality of data synthetization machine learning models configured for generating synthetic data. Respective ones of the data synthetization machine learning models may correspond to respective ones of the groups of data sources. The computing device generates first synthetic data by inputting, to a first data synthetization machine learning model, first data received from a first data source group, and generates second synthetic data by inputting, to a second data synthetization machine learning model, second data received from a second data source group. The computing device determines an allocation of resources based at least in part on comparing the first data and the first synthetic data with the second data and the second synthetic data.
    Type: Grant
    Filed: May 18, 2023
    Date of Patent: April 16, 2024
    Assignee: DOORDASH, INC.
    Inventors: Robert Bryant Kaspar, Alok Gupta, Aman Dhesi
  • Publication number: 20230289847
    Abstract: In some examples, a computing device may receive data from a plurality of groups of data sources. The computing device may access a plurality of data synthetization machine learning models configured for generating synthetic data. Respective ones of the data synthetization machine learning models may correspond to respective ones of the groups of data sources. The computing device generates first synthetic data by inputting, to a first data synthetization machine learning model, first data received from a first data source group, and generates second synthetic data by inputting, to a second data synthetization machine learning model, second data received from a second data source group. The computing device determines an allocation of resources based at least in part on comparing the first data and the first synthetic data with the second data and the second synthetic data.
    Type: Application
    Filed: May 18, 2023
    Publication date: September 14, 2023
    Inventors: Robert Bryant Kaspar, Alok Gupta, Aman Dhesi
  • Patent number: 11682036
    Abstract: In some examples, a computing device may receive data from a plurality of groups of data sources. The computing device may create a training data set from a first portion of the received data and may create a plurality of validation data sets from a second portion of the received data. For example, each validation data set may correspond to a respective one of the groups of data sources. The computing device may train, using the training data set, a plurality of machine learning models configured for synthesizing data. For instance, respective ones of the machine learning models may correspond to respective ones of the groups of data sources. Further, the computing device may validate the respective machine learning models using the respective validation data set corresponding to the respective group to which the respective machine learning model being validated corresponds.
    Type: Grant
    Filed: March 10, 2021
    Date of Patent: June 20, 2023
    Assignee: DOORDASH, INC.
    Inventors: Robert Bryant Kaspar, Alok Gupta, Aman Dhesi
  • Publication number: 20220292542
    Abstract: In some examples, a computing device may receive data from a plurality of groups of data sources. The computing device may create a training data set from a first portion of the received data and may create a plurality of validation data sets from a second portion of the received data. For example, each validation data set may correspond to a respective one of the groups of data sources. The computing device may train, using the training data set, a plurality of machine learning models configured for synthesizing data. For instance, respective ones of the machine learning models may correspond to respective ones of the groups of data sources. Further, the computing device may validate the respective machine learning models using the respective validation data set corresponding to the respective group to which the respective machine learning model being validated corresponds.
    Type: Application
    Filed: March 10, 2021
    Publication date: September 15, 2022
    Inventors: Robert Bryant KASPAR, Alok GUPTA, Aman DHESI
  • Publication number: 20200356927
    Abstract: This disclosure describes a transportation matching system that utilizes one or more balancer models to generate an electronic communication distribution strategy based on relative impacts of provider-specific and requester-specific levers over a target time horizon. The disclosed systems utilize the balancer models to generate predictive functions for providers and requesters to determine lever content to distribute (e.g., within electronic communications) to providers and/or requesters to efficiently and/or effectively produce acquisition and/or engagement for a target time horizon. Based on the predictive functions, the disclosed systems generate an electronic communication distribution strategy to provide (or cause to be provided) electronic communications to providers and requesters to efficiently and effectively increase or decrease acquisition and/or engagement.
    Type: Application
    Filed: May 6, 2019
    Publication date: November 12, 2020
    Inventors: Jose Alberto Abelenda, Alkan William Borges, Anna Grace Campanelli, Carolyn Jones Conway, Ismail Can Coskuner, Jared Matthew Gabor, Alok Gupta, Langfei He, Robert Bryant Kaspar, Ivan Kirigin, Patrick Michael McGrath, Quang Huy Nguyen, Ajay Pankaj Sampat, Karthik Subramaniam, Muhammad Usman, Su Wang