Patents by Inventor Michael Chatzidakis

Michael Chatzidakis 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: 12243308
    Abstract: Devices, methods, and non-transitory program storage devices (NPSDs) are disclosed herein to provide for the privacy-respectful learning of iconic scenes and places, wherein the learning is based on information received from one or more client devices in response to one or more collection criteria specified as part of one or more collection operations launched by a server device. In some embodiments, differential privacy techniques (such as the submission of predetermined amounts of noise-injecting, e.g., randomly-generated, data in conjunction with actual data) are employed by the client devices, such that any insights learned by the server device only relate to “hot spots,” “themes,” or other scenes, objects, and/or topics that are highly popular and captured in the digital assets (DAs) of many users, ensuring there is no way for the server device to learn or glean any insights related to particular users of individual client devices participating in the collection operations.
    Type: Grant
    Filed: April 8, 2022
    Date of Patent: March 4, 2025
    Assignee: Apple Inc.
    Inventors: Michael Chatzidakis, Kalu O. Kalu, Omid Javidbakht, Sowmya Gopalan, Eric Circlaeys, Rehan Rishi, Mayank Yadav
  • Patent number: 12052315
    Abstract: Embodiments described herein provide for a non-transitory machine-readable medium storing instructions to cause one or more processors to receive, at a client device, a machine learning model from a server, detect a usage pattern for a content item, store an association between the content item and the detected usage pattern in local data, train the machine learning model using local data for the content item with the detected usage pattern to generate a trained machine learning model, generate an update for the machine learning model, privatize the update for the machine learning model, and transmit the privatized update for the machine learning model to the server.
    Type: Grant
    Filed: December 21, 2020
    Date of Patent: July 30, 2024
    Assignee: Apple Inc.
    Inventors: Stephen Cosman, Kalu Onuka Kalu, Marcelo Lotif Araujo, Michael Chatzidakis, Thi Hai Van Do, Alexis Hugo Louis Durocher, Guillaume Tartavel, Sowmya Gopalan, Vignesh Jagadeesh, Abhishek Bhowmick, John Duchi, Julien Freudiger, Gaurav Kapoor, Ryan M. Rogers
  • Publication number: 20220392219
    Abstract: Devices, methods, and non-transitory program storage devices (NPSDs) are disclosed herein to provide for the privacy-respectful learning of iconic scenes and places, wherein the learning is based on information received from one or more client devices in response to one or more collection criteria specified as part of one or more collection operations launched by a server device. In some embodiments, differential privacy techniques (such as the submission of predetermined amounts of noise-injecting, e.g., randomly-generated, data in conjunction with actual data) are employed by the client devices, such that any insights learned by the server device only relate to “hot spots,” “themes,” or other scenes, objects, and/or topics that are highly popular and captured in the digital assets (DAs) of many users, ensuring there is no way for the server device to learn or glean any insights related to particular users of individual client devices participating in the collection operations.
    Type: Application
    Filed: April 8, 2022
    Publication date: December 8, 2022
    Inventors: Michael Chatzidakis, Kalu O. Kalu, Omid Javidbakht, Sowmya Gopalan, Eric Circlaeys, Rehan Rishi, Mayank Yadav
  • Publication number: 20210192078
    Abstract: Embodiments described herein provide for a non-transitory machine-readable medium storing instructions to cause one or more processors to receive, at a client device, a machine learning model from a server, detect a usage pattern for a content item, store an association between the content item and the detected usage pattern in local data, train the machine learning model using local data for the content item with the detected usage pattern to generate a trained machine learning model, generate an update for the machine learning model, privatize the update for the machine learning model, and transmit the privatized update for the machine learning model to the server.
    Type: Application
    Filed: December 21, 2020
    Publication date: June 24, 2021
    Inventors: Stephen Cosman, Kalu Onuka Kalu, Marcelo Lotif Araujo, Michael Chatzidakis, Thi Hai Van Do, Alexis Hugo Louis Durocher, Guillaume Tartavel, Sowmya Gopalan, Vignesh Jagadeesh, Abhishek Bhowmick, John Duchi, Julien Freudiger, Gaurav Kapoor, Ryan M. Rogers