Patents by Inventor Renaud Levert

Renaud Levert 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: 20250028908
    Abstract: A text mining system providing NLP and NLU capabilities is operable to perform, at a first processing layer, a first operation on input data to produce metadata about the input data. At a second processing layer, a rules module applies a composite AI extraction rule to further process the input data. The composite AI extraction rule has a rule condition that leverages the metadata from the first operation and a rule action that involves a second operation. Other composite AI extraction rules involving multiple text mining operations may also be applied. For instance, a rule may specify using the tonality of a document from a sentiment analysis to classify the document according to a relevant taxonomy. Another rule may specify classifying documents of a particular type under a specific category. In this way, new/enhanced information about the input data can be deduced, validated, and/or enriched.
    Type: Application
    Filed: October 7, 2024
    Publication date: January 23, 2025
    Inventors: Paul O’Hagan, Isidre Royo Bonnin, Robert Kapitan, Ravinder Reddy Yeddla, Renaud Levert
  • Patent number: 12141528
    Abstract: A text mining system providing NLP and NLU capabilities is operable to perform, at a first processing layer, a first operation on input data to produce metadata about the input data. At a second processing layer, a rules module applies a composite AI extraction rule to further process the input data. The composite AI extraction rule has a rule condition that leverages the metadata from the first operation and a rule action that involves a second operation. Other composite AI extraction rules involving multiple text mining operations may also be applied. For instance, a rule may specify using the tonality of a document from a sentiment analysis to classify the document according to a relevant taxonomy. Another rule may specify classifying documents of a particular type under a specific category. In this way, new/enhanced information about the input data can be deduced, validated, and/or enriched.
    Type: Grant
    Filed: October 22, 2021
    Date of Patent: November 12, 2024
    Assignee: OPEN TEXT CORPORATION
    Inventors: Paul O'Hagan, Isidre Royo Bonnin, Robert Kapitan, Ravinder Reddy Yeddla, Renaud Levert
  • Publication number: 20240062013
    Abstract: Responsive to user interaction, a data subject assessment service, hosted on an artificial intelligence (AI) platform operating in a cloud computing environment, is operable to define a data subject, create and configure a data subject project, and add the data subject to the data subject project. The data subject project is associated with AI models, each of which models a risk having a user-adjustable risk level. The data subject project thus configured and/or customized, for instance, with a custom rule, can be run on a collection of documents to assess the data subject through data subject assessment operations. Data subject assessment results thus produced can be searched for data subject relationships, using metadata from the data subject assessment operations. This fine-tunes the data subject assessment results and produces more granular, more precise results, based on which a report can be viewed and/or generated.
    Type: Application
    Filed: October 31, 2023
    Publication date: February 22, 2024
    Inventors: Paul O’Hagan, Isidre Royo Bonnin, Robert Kapitan, Ravinder Reddy Yeddla, Renaud Levert
  • Publication number: 20230259710
    Abstract: An AI platform may receive a request for information on text. The text is processed through a text mining pipeline for dynamic attribute extraction. An engine determines entities in the text and utilizes the entities to determine a relationship pattern. The engine identifies a trigger by matching one of the entities with a predefined entity in a utility authority file, locates an entity in close proximity to the trigger, identifies a value or regular expression in close proximity to the trigger in the text, and creates a triplet containing the entity, the trigger, and the value or regular expression, the triplet representing the relationship pattern. The engine applies an action to the triplet, wherein the action comprises obtaining the value from the text or translating the regular expression. The engine attaches the value or a result from the translating to the entity as a dynamic attribute of the entity.
    Type: Application
    Filed: April 18, 2023
    Publication date: August 17, 2023
    Inventors: Martin Brousseau, Renaud Levert
  • Patent number: 11681874
    Abstract: An AI platform may receive a request for information on text. The text is processed through a text mining pipeline for dynamic attribute extraction. An engine determines entities in the text and utilizes the entities to determine a relationship pattern. The engine identifies a trigger by matching one of the entities with a predefined entity in a utility authority file, locates an entity in close proximity to the trigger, identifies a value or regular expression in close proximity to the trigger in the text, and creates a triplet containing the entity, the trigger, and the value or regular expression, the triplet representing the relationship pattern. The engine applies an action to the triplet, wherein the action comprises obtaining the value from the text or translating the regular expression. The engine attaches the value or a result from the translating to the entity as a dynamic attribute of the entity.
    Type: Grant
    Filed: October 9, 2020
    Date of Patent: June 20, 2023
    Assignee: OPEN TEXT CORPORATION
    Inventors: Martin Brousseau, Renaud Levert
  • Publication number: 20230131066
    Abstract: A text mining system providing NLP and NLU capabilities is operable to perform, at a first processing layer, a first operation on input data to produce metadata about the input data. At a second processing layer, a rules module applies a composite AI extraction rule to further process the input data. The composite AI extraction rule has a rule condition that leverages the metadata from the first operation and a rule action that involves a second operation. Other composite AI extraction rules involving multiple text mining operations may also be applied. For instance, a rule may specify using the tonality of a document from a sentiment analysis to classify the document according to a relevant taxonomy. Another rule may specify classifying documents of a particular type under a specific category. In this way, new/enhanced information about the input data can be deduced, validated, and/or enriched.
    Type: Application
    Filed: October 22, 2021
    Publication date: April 27, 2023
    Inventors: Paul O'Hagan, Isidre Royo Bonnin, Robert Kapitan, Ravinder Reddy Yeddla, Renaud Levert
  • Publication number: 20230127562
    Abstract: A text mining system providing NLP and NLU capabilities is operable to perform, at a first processing layer, a first operation on input data to produce metadata about the input data. At a second processing layer, a rules module applies a composite AI extraction rule to further process the input data. The composite AI extraction rule has a rule condition that leverages the metadata from the first operation and a rule action that involves a second operation. Other composite AI extraction rules involving multiple text mining operations may also be applied. For instance, a rule may specify using the tonality of a document from a sentiment analysis to classify the document according to a relevant taxonomy. Another rule may specify classifying documents of a particular type under a specific category. In this way, new/enhanced information about the input data can be deduced, validated, and/or enriched.
    Type: Application
    Filed: October 31, 2022
    Publication date: April 27, 2023
    Inventors: Paul O'Hagan, Isidre Royo Bonnin, Robert Kapitan, Ravinder Reddy Yeddla, Renaud Levert
  • Publication number: 20210110113
    Abstract: An AI platform may receive a request for information on text. The text is processed through a text mining pipeline for dynamic attribute extraction. An engine determines entities in the text and utilizes the entities to determine a relationship pattern. The engine identifies a trigger by matching one of the entities with a predefined entity in a utility authority file, locates an entity in close proximity to the trigger, identifies a value or regular expression in close proximity to the trigger in the text, and creates a triplet containing the entity, the trigger, and the value or regular expression, the triplet representing the relationship pattern. The engine applies an action to the triplet, wherein the action comprises obtaining the value from the text or translating the regular expression. The engine attaches the value or a result from the translating to the entity as a dynamic attribute of the entity.
    Type: Application
    Filed: October 9, 2020
    Publication date: April 15, 2021
    Inventors: Martin Brousseau, Renaud Levert