Patents by Inventor Reka DANIEL-WEINER

Reka DANIEL-WEINER 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: 11803781
    Abstract: Systems and methods of the present disclosure use one or more processor(s) to receive a consumable preference and a daily score intake value associated with a user and to obtain a content data regarding consumable item including an amount of a first nutrient found in the consumable item. The processor(s) utilizes, in real-time, a nutrient prediction machine learning model to ingest the content data regarding the consumable item and predict an amount of a second nutrient in the consumable item based on the content data and a decision tree library of thousand nutrient decision trees. The processor(s) determines zero-scored consumable item based on the daily score intake value, the amount of the first nutrient, the amount of the second nutrient, and the consumable preference. The processor(s) instructs a computing device to utilize a graphical user interface element to identify the zero-scored consumable item on a screen of the computing device.
    Type: Grant
    Filed: September 8, 2022
    Date of Patent: October 31, 2023
    Assignee: Weight Watchers International, Inc.
    Inventors: Gary Foster, Ute Gerwig, Laura Smith, Reka Daniel-Weiner, Michael Skarlinski, Judith Bünker, Jacquelyn Zaydel
  • Patent number: 11727313
    Abstract: Some embodiments described herein relate to a computer-implemented method that includes accessing behavioral data, such as web visitation data, of multiple users. A sparse behavioral vector can be defined for each user based on the behavioral data. Each element of each sparse behavioral vector can represent a different potential detectable behavior such that each sparse behavioral vector encodes the behavioral data for that user. Multiple supervised learning models to each sparse behavioral vector to densify the vectors, defining multiple dense behavioral vectors. An unsupervised machine learning technique can be applied to the dense behavioral vectors to cluster, or define subpopulations, based on similarities between the dense behavioral vectors. Delivery of targeted content to a user can be facilitated based on a dense behavioral vector associated with that user being associated with one or more of the clusters or subpopulations.
    Type: Grant
    Filed: September 27, 2019
    Date of Patent: August 15, 2023
    Assignee: Dstillery, Inc.
    Inventors: Melinda Han Williams, Reka Daniel-Weiner, Amelia Grieve White, Claudia Reisz
  • Publication number: 20230079862
    Abstract: Systems and methods of the present disclosure use one or more processor(s) to receive a consumable preference and a daily score intake value associated with a user and to obtain a content data regarding consumable item including an amount of a first nutrient found in the consumable item. The processor(s) utilizes, in real-time, a nutrient prediction machine learning model to ingest the content data regarding the consumable item and predict an amount of a second nutrient in the consumable item based on the content data and a decision tree library of thousand nutrient decision trees. The processor(s) determines zero-scored consumable item based on the daily score intake value, the amount of the first nutrient, the amount of the second nutrient, and the consumable preference. The processor(s) instructs a computing device to utilize a graphical user interface element to identify the zero-scored consumable item on a screen of the computing device.
    Type: Application
    Filed: September 8, 2022
    Publication date: March 16, 2023
    Inventors: Gary Foster, Ute Gerwig, Laura Smith, Reka Daniel-Weiner, Michael Skarlinski, Judith Bünker, Jacquelyn Zaydel
  • Publication number: 20200104738
    Abstract: Some embodiments described herein relate to a computer-implemented method that includes accessing behavioral data, such as web visitation data, of multiple users. A sparse behavioral vector can be defined for each user based on the behavioral data. Each element of each sparse behavioral vector can represent a different potential detectable behavior such that each sparse behavioral vector encodes the behavioral data for that user. Multiple supervised learning models to each sparse behavioral vector to densify the vectors, defining multiple dense behavioral vectors. An unsupervised machine learning technique can be applied to the dense behavioral vectors to cluster, or define subpopulations, based on similarities between the dense behavioral vectors. Delivery of targeted content to a user can be facilitated based on a dense behavioral vector associated with that user being associated with one or more of the clusters or subpopulations.
    Type: Application
    Filed: September 27, 2019
    Publication date: April 2, 2020
    Inventors: Melinda Han WILLIAMS, Reka DANIEL-WEINER, Amelia Grieve WHITE, Claudia REISZ