Patents by Inventor Rongjing Xiang

Rongjing Xiang 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: 10341390
    Abstract: Systems and techniques are provided for aggregation of asynchronous trust outcomes in a mobile device. Trust levels may be determined from the signals. Each trust level may be determined independently of any other trust level. Each trust level may be determined based on applying to the signals heuristics, mathematical optimization, decisions trees, machine learning systems, or artificial intelligence systems. An aggregated trust outcome may be determined by aggregating the trust levels. Aggregating the trust levels may include applying heuristics, mathematical optimization, decisions trees, machine learning systems, or artificial intelligence systems to the trust levels, and wherein the aggregated trust outcome; and sending the aggregated trust outcome to be implemented by the enabling, disabling, or relaxing of at least one security measure based on the aggregated trust outcome.
    Type: Grant
    Filed: October 24, 2018
    Date of Patent: July 2, 2019
    Assignee: Google LLC
    Inventors: Tal Dayan, Maya Ben Ari, Tanton Holt Gibbs, Ido Ofir, Jay Pierre Civelli, Brandon Keely, Christiaan Prins, Zheng Sun, Ning Zheng, James Brooks Miller, Jennifer Seth, Rongjing Xiang, Hugh Brendan McMahan
  • Publication number: 20190068647
    Abstract: Systems and techniques are provided for aggregation of asynchronous trust outcomes in a mobile device. Trust levels may be determined from the signals. Each trust level may be determined independently of any other trust level. Each trust level may be determined based on applying to the signals heuristics, mathematical optimization, decisions trees, machine learning systems, or artificial intelligence systems. An aggregated trust outcome may be determined by aggregating the trust levels. Aggregating the trust levels may include applying heuristics, mathematical optimization, decisions trees, machine learning systems, or artificial intelligence systems to the trust levels, and wherein the aggregated trust outcome; and sending the aggregated trust outcome to be implemented by the enabling, disabling, or relaxing of at least one security measure based on the aggregated trust outcome.
    Type: Application
    Filed: October 24, 2018
    Publication date: February 28, 2019
    Inventors: Tal Dayan, Maya Ben Ari, Tanton Holt Gibbs, Ido Ofir, Jay Pierre Civelli, Brandon Keely, Christiaan Prins, Zheng Sun, Ning Zheng, James Brooks Miller, Jennifer Seth, Rongjing Xiang, Hugh Brendan McMahan
  • Patent number: 10148692
    Abstract: Systems and techniques are provided for aggregation of asynchronous trust outcomes in a mobile device. Trust levels may be determined from the signals. Each trust level may be determined independently of any other trust level. Each trust level may be determined based on applying to the signals heuristics, mathematical optimization, decisions trees, machine learning systems, or artificial intelligence systems. An aggregated trust outcome may be determined by aggregating the trust levels. Aggregating the trust levels may include applying heuristics, mathematical optimization, decisions trees, machine learning systems, or artificial intelligence systems to the trust levels, and wherein the aggregated trust outcome; and sending the aggregated trust outcome to be implemented by the enabling, disabling, or relaxing of at least one security measure based on the aggregated trust outcome.
    Type: Grant
    Filed: June 23, 2014
    Date of Patent: December 4, 2018
    Assignee: Google LLC
    Inventors: Tal Dayan, Maya Ben Ari, Tanton Holt Gibbs, Ido Ofir, Jay Pierre Civelli, Brandon Keely, Christiaan Prins, Zheng Sun, Ning Zheng, James Brooks Miller, Jennifer Fernquist, Rongjing Xiang, Hugh Brendan McMahan
  • Publication number: 20150373050
    Abstract: Systems and techniques are provided for aggregation of asynchronous trust outcomes in a mobile device. Trust levels may be determined from the signals. Each trust level may be determined independently of any other trust level. Each trust level may be determined based on applying to the signals heuristics, mathematical optimization, decisions trees, machine learning systems, or artificial intelligence systems. An aggregated trust outcome may be determined by aggregating the trust levels. Aggregating the trust levels may include applying heuristics, mathematical optimization, decisions trees, machine learning systems, or artificial intelligence systems to the trust levels, and wherein the aggregated trust outcome; and sending the aggregated trust outcome to be implemented by the enabling, disabling, or relaxing of at least one security measure based on the aggregated trust outcome.
    Type: Application
    Filed: June 23, 2014
    Publication date: December 24, 2015
    Inventors: Tal Dayan, Maya Ben Ari, Tanton Holt Gibbs, Ido Ofir, Jay Pierre Civelli, Brandon Keely, Christiaan Prins, Zheng Sun, Ning Zheng, James Brooks Miller, Jennifer Fernquist, Rongjing Xiang, Hugh Brendan McMahan
  • Publication number: 20140067901
    Abstract: Systems and methods are provided that presents interesting local content to users at times when the content is most actionable and engaging without the user explicitly entering a search term or expressing intent. In one implementation, the system uses contextual signals about a user to rank local content. Signals may include, for example, who they (one or more users) are, what kinds of places they like, where they are, how familiar they are with the area, the time of day, where the user's friends have been nearby, among other information related to the one or more users. A system may be provided that uses contextual rules and machine learning to target content to users. The system learns which of these contextual signals are most important and alters its ranking function to optimize user engagement in terms of conversions.
    Type: Application
    Filed: August 23, 2013
    Publication date: March 6, 2014
    Inventors: Blake Shaw, Andrew Hogue, Daniel Salinas, Rongjing Xiang, Tianhui Li, Anoop Ranganath, Siddhartha Sinha, Jon Shea, Jackson Davis, Noah Weiss, Jason Liszka, Timothy Julien, Mark Wyszomierski, Dennis Crowley, Patrick Hayes, Geoffroy Bablon, Siobhan Quinn