Patents by Inventor Steven Andrew LOEPPKY

Steven Andrew LOEPPKY 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: 12045693
    Abstract: Techniques for using scoring algorithms utilizing containers for flexible machine learning inference are described. In some embodiments, a request to host a machine learning (ML) model within a service provider network on behalf of a user is received, the request identifying an endpoint to perform scoring using the ML model. An endpoint is initialized as a container running on a virtual machine based on a container image and used to score data and return a result of said scoring to a user device.
    Type: Grant
    Filed: June 6, 2018
    Date of Patent: July 23, 2024
    Assignee: Amazon Technologies, Inc.
    Inventors: Charles Drummond Swan, Edo Liberty, Steven Andrew Loeppky, Stefano Stefani, Alexander Johannes Smola, Swaminathan Sivasubramanian, Craig Wiley, Richard Shawn Bice, Thomas Albert Faulhaber, Jr., Taylor Goodhart
  • Patent number: 11257002
    Abstract: Techniques for dynamic accuracy-based experimentation and deployment of machine learning (ML) models are described. Inference traffic flowing to ML models and the accuracy of the models is analyzed and used to ensure that better performing models are executed more often via model selection. A predictive component can evaluate which model is more likely to be accurate for certain input data elements. Ensemble techniques can combine inference results of multiple ML models to aim to achieve a better overall result than any individual model could on its own.
    Type: Grant
    Filed: March 13, 2018
    Date of Patent: February 22, 2022
    Assignee: Amazon Technologies, Inc.
    Inventors: Thomas Albert Faulhaber, Jr., Edo Liberty, Stefano Stefani, Zohar Karnin, Craig Wiley, Steven Andrew Loeppky, Swaminathan Sivasubramanian, Alexander Johannes Smola, Taylor Goodhart
  • Patent number: 11126927
    Abstract: Techniques for auto-scaling hosted machine learning models for production inference are described. A machine learning model can be deployed in a hosted environment such that the infrastructure supporting the machine learning model scales dynamically with demand so that performance is not impacted. The model can be auto-scaled using reactive techniques or predictive techniques.
    Type: Grant
    Filed: November 24, 2017
    Date of Patent: September 21, 2021
    Assignee: Amazon Technologies, Inc.
    Inventors: Stefano Stefani, Steven Andrew Loeppky, Thomas Albert Faulhaber, Jr., Craig Wiley, Edo Liberty
  • Publication number: 20200311617
    Abstract: Techniques for using scoring algorithms utilizing containers for flexible machine learning inference are described. In some embodiments, a request to host a machine learning (ML) model within a service provider network on behalf of a user is received, the request identifying an endpoint to perform scoring using the ML model. An endpoint is initialized as a container running on a virtual machine based on a container image and used to score data and return a result of said scoring to a user device.
    Type: Application
    Filed: June 6, 2018
    Publication date: October 1, 2020
    Inventors: Charles Drummond SWAN, Edo LIBERTY, Steven Andrew LOEPPKY, Stefano STEFANI, Alexander Johannes SMOLA, Swaminathan SIVASUBRAMANIAN, Craig WILEY, Richard Shawn BICE, Thomas Albert FAULHABER, JR., Taylor GOODHART
  • Patent number: 10713589
    Abstract: A determination that a machine learning data set is to be shuffled is made. Tokens corresponding to the individual observation records are generated based on respective identifiers of the records' storage objects and record key values. Respective representative values are derived from the tokens. The observation records are rearranged based on a result of sorting the representative values and provided to a shuffle result destination.
    Type: Grant
    Filed: March 3, 2016
    Date of Patent: July 14, 2020
    Assignee: Amazon Technologies, Inc.
    Inventors: Saman Zarandioon, Nicolle M. Correa, Leo Parker Dirac, Aleksandr Mikhaylovich Ingerman, Steven Andrew Loeppky, Robert Matthias Steele, Tianming Zheng
  • Publication number: 20190164080
    Abstract: Techniques for auto-scaling hosted machine learning models for production inference are described. A machine learning model can be deployed in a hosted environment such that the infrastructure supporting the machine learning model scales dynamically with demand so that performance is not impacted. The model can be auto-scaled using reactive techniques or predictive techniques.
    Type: Application
    Filed: November 24, 2017
    Publication date: May 30, 2019
    Inventors: Stefano STEFANI, Steven Andrew LOEPPKY, Thomas Albert FAULHABER, JR., Craig WILEY, Edo LIBERTY
  • Publication number: 20190156247
    Abstract: Techniques for dynamic accuracy-based experimentation and deployment of machine learning (ML) models are described. Inference traffic flowing to ML models and the accuracy of the models is analyzed and used to ensure that better performing models are executed more often via model selection. A predictive component can evaluate which model is more likely to be accurate for certain input data elements. Ensemble techniques can combine inference results of multiple ML models to aim to achieve a better overall result than any individual model could on its own.
    Type: Application
    Filed: March 13, 2018
    Publication date: May 23, 2019
    Inventors: Thomas Albert FAULHABER, JR., Edo LIBERTY, Stefano STEFANI, Zohar KARNIN, Craig WILEY, Steven Andrew LOEPPKY, Swaminathan SIVASUBRAMANIAN, Alexander Johannes SMOLA, Taylor GOODHART