Patents by Inventor Eitan ANZENBERG

Eitan ANZENBERG 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).

  • Publication number: 20240062571
    Abstract: Particular embodiments receive a plurality of values associated with a document. One or more keywords associated with the document are also received. A first score is generated for each value, of the plurality of values. The generation of the first score excluding sending, over a computer network, a first request to one or more remote computing devices to generate the first score. Based at least in part on the generating of the first score, each value, of the plurality of values is ranked. The ranking of each value excluding sending, over the computer network, a second request to the one or more remote computing devices to rank each value. Based on the ranking, at least one value, of the plurality of values, is selected. The selecting being indicative that the at least one value is a candidate to be a constituent of the one or more keywords. Based on the ranking, an indicator indicating that the at least one value is the candidate to be the constituent of the one or more keywords is presented.
    Type: Application
    Filed: August 19, 2022
    Publication date: February 22, 2024
    Inventors: Eitan Anzenberg, Dalton Purnell, Corby Campbell, Darin Dooley, Amol Jayant Thatte, Jay Daniel Dunbar, Craig Jon Pickett, Derrick Jacob Hathaway, Bei Zhang
  • Patent number: 11710304
    Abstract: Image data having text associated with a plurality of text-field types is received, the image data including target image data and context image data. The target image data including target text associated with a text-field type. The context image data providing a context for the target image data. A trained neural network that is constrained to a set of characters for the text-field type is applied to the image data. The trained neural network identifies the target text of the text-field type using a vector embedding that is based on learned patterns for recognizing the context provided by the context image data. One or more predicted characters are provided for the target text of the text-field type in response to identifying the target text using the trained neural network.
    Type: Grant
    Filed: August 23, 2022
    Date of Patent: July 25, 2023
    Assignee: BILL.COM, LLC
    Inventor: Eitan Anzenberg
  • Publication number: 20220406084
    Abstract: Image data having text associated with a plurality of text-field types is received, the image data including target image data and context image data. The target image data including target text associated with a text-field type. The context image data providing a context for the target image data. A trained neural network that is constrained to a set of characters for the text-field type is applied to the image data. The trained neural network identifies the target text of the text-field type using a vector embedding that is based on learned patterns for recognizing the context provided by the context image data. One or more predicted characters are provided for the target text of the text-field type in response to identifying the target text using the trained neural network.
    Type: Application
    Filed: August 23, 2022
    Publication date: December 22, 2022
    Inventor: Eitan Anzenberg
  • Publication number: 20220300735
    Abstract: The accuracy of existing machine learning models, software technologies, and computers are improved by estimating whether a particular page belongs to a same document as another page or whether the page belongs to a different document. Such document distinguishing can be based on deriving relationship information between a first feature vector representing the page and a second feature vector representing the other page. This also improves the user experience and model building experience, among other things.
    Type: Application
    Filed: March 22, 2021
    Publication date: September 22, 2022
    Inventors: Xin Geng Kelly, Sangammohan Harimohan Singh, Derek Chan, Eitan Anzenberg
  • Patent number: 11436851
    Abstract: Image data having text associated with a plurality of text-field types is received, the image data including target image data and context image data. The target image data including target text associated with a text-field type. The context image data providing a context for the target image data. A trained neural network that is constrained to a set of characters for the text-field type is applied to the image data. The trained neural network identifies the target text of the text-field type using a vector embedding that is based on learned patterns for recognizing the context provided by the context image data. One or more predicted characters are provided for the target text of the text-field type in response to identifying the target text using the trained neural network.
    Type: Grant
    Filed: May 22, 2020
    Date of Patent: September 6, 2022
    Assignee: Bill.com, LLC
    Inventor: Eitan Anzenberg
  • Patent number: 11244388
    Abstract: Methods and systems for assessing performance and risk in financing supply chain are disclosed. The method includes accessing a behavioral data of an entity. The behavioral data comprises at least one of a primary data and a secondary data. The primary data is associated with one or more assets of the entity and comprises historical transaction data of the entity with financial institutions. The secondary data is sourced from an external system and comprises at least a credit information and a business transaction information of the entity. The method also includes generating a unified model for the entity based on the behavioral data of the entity. The method includes predicting a plurality of risk metrics based on the unified model using one or more machine learning models, and determining a credit rating of the entity based on the plurality of risk metrics and a confidence measure.
    Type: Grant
    Filed: June 5, 2018
    Date of Patent: February 8, 2022
    Assignee: Flowcast, Inc.
    Inventors: Kenneth So, James Patrick McGuire, Eitan Anzenberg
  • Publication number: 20210365677
    Abstract: Image data having text associated with a plurality of text-field types is received, the image data including target image data and context image data. The target image data including target text associated with a text-field type. The context image data providing a context for the target image data. A trained neural network that is constrained to a set of characters for the text-field type is applied to the image data. The trained neural network identifies the target text of the text-field type using a vector embedding that is based on learned patterns for recognizing the context provided by the context image data. One or more predicted characters are provided for the target text of the text-field type in response to identifying the target text using the trained neural network.
    Type: Application
    Filed: May 22, 2020
    Publication date: November 25, 2021
    Inventor: Eitan Anzenberg
  • Publication number: 20180357714
    Abstract: Methods and systems for assessing performance and risk in financing supply chain are disclosed. The method includes accessing a behavioral data of an entity. The behavioral data comprises at least one of a primary data and a secondary data. The primary data is associated with one or more assets of the entity and comprises historical transaction data of the entity with financial institutions. The secondary data is sourced from an external system and comprises at least a credit information and a business transaction information of the entity. The method also includes generating a unified model for the entity based on the behavioral data of the entity. The method includes predicting a plurality of risk metrics based on the unified model using one or more machine learning models, and determining a credit rating of the entity based on the plurality of risk metrics and a confidence measure.
    Type: Application
    Filed: June 5, 2018
    Publication date: December 13, 2018
    Inventors: Kenneth SO, James Patrick McGUIRE, Eitan ANZENBERG