Patents by Inventor William A. Cluff

William A. Cluff 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: 11966570
    Abstract: Disclosed are systems and methods that automatically classify, segment, and parse content data using artificial intelligence and natural language processing technology, and generate graphical user interfaces that allow end users to dynamically filter content data for display. The systems processes volumes of content data to identify interrogative data, content sources that generated the interrogative data, and subject identifiers relating to the content data. The system generates graphical user interfaces that allow end users to effectively filter the data by choosing between layouts that display one or more of the various categories of data, including the interrogative data, content source identifiers, and/or subject identifiers.
    Type: Grant
    Filed: April 26, 2022
    Date of Patent: April 23, 2024
    Assignee: Truist Bank
    Inventors: Kenneth William Cluff, Harold Thomas Wood, III, Peter Councill, James Xu
  • Patent number: 11928128
    Abstract: A system for maintaining a meta-database including meta-data representing decentralized data from source databases, which cause inefficient selection of modeling data and/or variables. Each of source and meta-data interfaces communicate with the respective database(s). A key variable repository module operably couples the databases and includes an AI program with a scanner algorithm and a profiler algorithm. The scanner algorithm receives the source data from the source interface, compresses the data, and synchronizes the data with the meta-data using the meta-database interface. The profiler algorithm receives the meta-data from the meta-database interface, generates granular data types for the meta-data, determines variables indicative of the meta-data, generates variable probability distributions, produces variable associations, and modifies the meta-database to include the probability distributions and associations using the meta-data interface.
    Type: Grant
    Filed: May 12, 2022
    Date of Patent: March 12, 2024
    Assignee: Truist Bank
    Inventors: Peter Councill, Kenneth William Cluff, Glenn Thomas Nofsinger, James Xu, Qing Li
  • Patent number: 11921821
    Abstract: A system and method is described for labelling data for trigger identification. The system and method comprising receiving data, transforming the data, extracting content from the data, processing data content through a classification machine learning model to receive a label, and trigger a secondary system based on the label. The system and method may further include maintaining a database of labeled data.
    Type: Grant
    Filed: April 20, 2022
    Date of Patent: March 5, 2024
    Assignee: TRUIST BANK
    Inventors: Brian Franklin Kramer, Kevin Green, Kenneth William Cluff, Rinku Saha
  • Patent number: 11914844
    Abstract: Disclosed are systems and methods that automatically classify, segment, and parse content data using artificial intelligence and natural language processing technology, and generate graphical user interfaces that allow end users to dynamically filter content data for display. The systems processes volumes of content data to identify interrogative data, content sources that generated the interrogative data, and subject identifiers relating to the content data. The system generates graphical user interfaces that allow end users to effectively filter the data by choosing between layouts that display one or more of the various categories of data, including the interrogative data, content source identifiers, and/or subject identifiers.
    Type: Grant
    Filed: July 28, 2022
    Date of Patent: February 27, 2024
    Assignee: TRUIST BANK
    Inventors: Kenneth William Cluff, Harold Thomas Wood, III, Peter Councill, James Xu
  • Patent number: 11907500
    Abstract: Disclosed are systems and methods that automatically classify, segment, and parse content data using artificial intelligence and natural language processing technology, and generate graphical user interfaces that allow end users to dynamically filter content data for display. The systems processes volumes of content data to identify interrogative data, content sources that generated the interrogative data, and subject identifiers relating to the content data. The system generates graphical user interfaces that allow end users to effectively filter the data by choosing between layouts that display one or more of the various categories of data, including the interrogative data, content source identifiers, and/or subject identifiers.
    Type: Grant
    Filed: April 26, 2022
    Date of Patent: February 20, 2024
    Assignee: TRUIST BANK
    Inventors: Kenneth William Cluff, Harold Thomas Wood, III, Peter Councill, James Xu
  • Publication number: 20240037583
    Abstract: A computing system is configured to generate a predictive model during training of a machine learning program using a training data set including a personal data set of a plurality of first users. The predictive model is configured to generate predicted survey data with respect to a second user by correlating a personal data set of the second user to the personal data set of at least one of the first users. The predicted survey data includes data regarding the predicted responses of the second user to a survey from which the survey data of each first user is derived, as well as one or more assessment scores calculated from the survey. The computing system is configured to take an action with respect to a user device of the second user in reaction to the generating of the predicted survey data regarding the second user.
    Type: Application
    Filed: July 27, 2022
    Publication date: February 1, 2024
    Applicant: Truist Bank
    Inventors: Dontá Lamar Wilson, Jane Moury Kane, Kenneth William Cluff, Peter Councill, Qing Li, James Xu
  • Publication number: 20240037585
    Abstract: A computing system is configured to generate a predictive model during training of a machine learning program using a training data set including a personal data set of a plurality of first users. The predictive model is configured to generate a predicted assessment score with respect to a second user by correlating a personal data set of the second user to the personal data set of at least one of the first users, with the generating of the predicted assessment score occurring automatically when a data entry of the personal data set of the second user is determined to have changed by the computing system. The computing system is configured to report the automatically generated predicted assessment score to the second user via a user device of the second user.
    Type: Application
    Filed: July 27, 2022
    Publication date: February 1, 2024
    Applicant: Truist Bank
    Inventors: Dontá Lamar Wilson, Jane Moury Kane, Kenneth William Cluff, Peter Councill, Qing Li, James Xu
  • Publication number: 20240037406
    Abstract: A computing system is configured to generate a predictive model during training of a machine learning program using a training data set including a personal data set of a plurality of first users. The predictive model is configured to predict a predicted assessment score of a second user. A test personal data set is generated with at least one different data entry different from the personal data set utilized in predicting the predicted assessment score, the at least one different data entry corresponding to a change in relationship between the computing system and the second user. The predictive model predicts a test predicted assessment score of the second user based on the test personal data set. The computing system takes further action with respect to the second user when a difference between the predicted assessment score and the test predicted assessment score meets or exceeds a threshold value.
    Type: Application
    Filed: July 27, 2022
    Publication date: February 1, 2024
    Applicant: Truist Bank
    Inventors: Dontá Lamar Wilson, Jane Moury Kane, Kenneth William Cluff, Peter Councill, Qing Li, James Xu
  • Publication number: 20240037584
    Abstract: A computing system is configured to generate a predictive model during training of a machine learning program using a training data set including a personal data set of a plurality of first users. The predictive model is configured to predict a first predicted assessment score at a first instance and a second predicted assessment score at a second instance with respect to a second user. The computing system determines whether the first predicted assessment score is different from the second predicted assessment score, and whether a first data entry of the personal data set of the second user changed between the first instance and the second instance. The computing system takes or recommends an action corresponding to a reversal in the change in the first data entry in order to alter the predicted assessment score of the second user.
    Type: Application
    Filed: July 27, 2022
    Publication date: February 1, 2024
    Applicant: Truist Bank
    Inventors: Dontá Lamar Wilson, Jane Moury Kane, Kenneth William Cluff, Peter Councill, Qing Li, James Xu
  • Patent number: 11860824
    Abstract: Disclosed are systems and methods that automatically classify, filter, and reduce large volumes of feedback data as a function of time using artificial intelligence technology. The aggregated feedback data is reduced by representing the feedback data as sets of descriptors corresponding to one or more time periods that are displayed on a graphical user interface. Feedback data packets are parsed by labeling the feedback data packets with a time period identifier. The feedback data packets are processed utilizing neural network technology to classify the feedback data according to one or more subject identifiers that are each associated with a subject vector. A descriptor analysis is used to process the subject vectors and the feedback data packets to generate descriptor sets comprising one or more descriptors as well as weighting data for each descriptor.
    Type: Grant
    Filed: April 27, 2022
    Date of Patent: January 2, 2024
    Assignee: Truist Bank
    Inventors: Kenneth William Cluff, Qing Li, Peter Councill
  • Patent number: 11822564
    Abstract: A system for interfacing with a meta-database representing data from a plurality of source databases. A key variable repository module operably couples the databases and includes an AI program with a scanner algorithm and a profiler algorithm. The scanner algorithm receives the source data from a source interface, compresses the data, and synchronizes the data with the meta-data using a meta-database interface. The profiler algorithm receives the meta-data from the meta-database interface, generates granular data types for the meta-data, determines variables indicative of the meta-data, generates variable probability distributions, produces variable associations, and modifies the meta-database to include the probability distributions and associations using the meta-data interface.
    Type: Grant
    Filed: May 12, 2022
    Date of Patent: November 21, 2023
    Assignee: TRUIST BANK
    Inventors: Peter Councill, Kenneth William Cluff, Glenn Thomas Nofsinger, James Xu, Qing Li
  • Publication number: 20230367787
    Abstract: A system for maintaining a meta-database including meta-data representing decentralized data from source databases, which cause inefficient selection of modeling data and/or variables. Each of source and meta-data interfaces communicate with the respective database(s). A key variable repository module operably couples the databases and includes an AI program with a scanner algorithm and a profiler algorithm. The scanner algorithm receives the source data from the source interface, compresses the data, and synchronizes the data with the meta-data using the meta-database interface. The profiler algorithm receives the meta-data from the meta-database interface, generates granular data types for the meta-data, determines variables indicative of the meta-data, generates variable probability distributions, produces variable associations, and modifies the meta-database to include the probability distributions and associations using the meta-data interface.
    Type: Application
    Filed: May 12, 2022
    Publication date: November 16, 2023
    Applicant: Truist Bank
    Inventors: Peter Councill, Kenneth William Cluff, Glenn Thomas Nofsinger, James Xu, Qing Li
  • Publication number: 20230368013
    Abstract: A system for training a model from a subset of data representing decentrally stored source databases. A key variable repository module operably couples the databases and includes an AI program with a scanner algorithm and a profiler algorithm. The scanner algorithm receives the training data from a source interface, compresses the training data, and synchronizes the training data with the meta-data using a meta-database interface. The profiler algorithm receives the meta-data from the meta-database interface, generates granular data types for the meta-data, determines training variables indicative of the meta-data, generates variable probability distributions, produces training variable associations, and modifies the meta-database to include the probability distributions and associations using the meta-data interface. The key interface allows for searching the meta-database for training variables, variable probability distributions, and/or variable associations.
    Type: Application
    Filed: May 12, 2022
    Publication date: November 16, 2023
    Applicant: Truist Bank
    Inventors: Peter Councill, Kenneth William Cluff, Glenn Thomas Nofsinger, James Xu, Qing Li
  • Publication number: 20230367782
    Abstract: A system for interfacing with a meta-database representing data from a plurality of source databases. A key variable repository module operably couples the databases and includes an AI program with a scanner algorithm and a profiler algorithm. The scanner algorithm receives the source data from a source interface, compresses the data, and synchronizes the data with the meta-data using a meta-database interface. The profiler algorithm receives the meta-data from the meta-database interface, generates granular data types for the meta-data, determines variables indicative of the meta-data, generates variable probability distributions, produces variable associations, and modifies the meta-database to include the probability distributions and associations using the meta-data interface.
    Type: Application
    Filed: May 12, 2022
    Publication date: November 16, 2023
    Applicant: Truist Bank
    Inventors: Peter Councill, Kenneth William Cluff, Glenn Thomas Nofsinger, James Xu, Qing Li
  • Publication number: 20230351170
    Abstract: Disclosed are systems and methods that automatically classify, filter, and reduce large volumes of feedback data as a function of time using artificial intelligence technology. The aggregated feedback data is reduced by representing the feedback data as sets of descriptors corresponding to one or more time periods that are displayed on a graphical user interface. Feedback data packets are parsed by labeling the feedback data packets with a time period identifier. The feedback data packets are processed utilizing neural network technology to classify the feedback data according to one or more subject identifiers that are each associated with a subject vector. A descriptor analysis is used to process the subject vectors and the feedback data packets to generate descriptor sets comprising one or more descriptors as well as weighting data for each descriptor.
    Type: Application
    Filed: May 16, 2022
    Publication date: November 2, 2023
    Applicant: Truist Bank
    Inventors: Kenneth William Cluff, Qing Li, Peter Councill
  • Publication number: 20230350847
    Abstract: Disclosed are systems and methods that automatically classify, filter, and reduce large volumes of feedback data as a function of time using artificial intelligence technology. The aggregated feedback data is reduced by representing the feedback data as sets of descriptors corresponding to one or more time periods that are displayed on a graphical user interface. Feedback data packets are parsed by labeling the feedback data packets with a time period identifier. The feedback data packets are processed utilizing neural network technology to classify the feedback data according to one or more subject identifiers that are each associated with a subject vector. A descriptor analysis is used to process the subject vectors and the feedback data packets to generate descriptor sets comprising one or more descriptors as well as weighting data for each descriptor.
    Type: Application
    Filed: April 27, 2022
    Publication date: November 2, 2023
    Applicant: Truist Bank
    Inventors: Kenneth William Cluff, Qing Li, Peter Councill
  • Publication number: 20230351009
    Abstract: A system and method for training an artificial intelligence engine for real-time monitoring to eliminate false positives is disclosed. The system includes at least one processor, a communication interface coupled to the processor, and a memory device storing executable code. Executing the executable code causes the processor to receive data from an AI security model, receive data from a false positive database, and correlate both sets of data. The correlated data is used to generate a training dataset and a test dataset used to train a false positive identification model. After evaluating the false positive identification model, an AI engine is applied to user registration. The AI engine includes an AI security model and the false positive identification model. Additionally, a system for evaluating the security of user registration utilizing the false positive identification model is disclosed.
    Type: Application
    Filed: April 29, 2022
    Publication date: November 2, 2023
    Applicant: Truist Bank
    Inventors: David Wright, David Pham, Adam Thomas Lewis, Kenneth William Cluff
  • Publication number: 20230351154
    Abstract: Disclosed are systems and methods that automatically classify, filter, and reduce large volumes of feedback data as a function of time using artificial intelligence technology. The aggregated feedback data is reduced by representing the feedback data as sets of descriptors corresponding to one or more time periods that are displayed on a graphical user interface. Feedback data packets are parsed by labeling the feedback data packets with a time period identifier. The feedback data packets are processed utilizing neural network technology to classify the feedback data according to one or more subject identifiers that are each associated with a subject vector. A descriptor analysis is used to process the subject vectors and the feedback data packets to generate descriptor sets comprising one or more descriptors as well as weighting data for each descriptor.
    Type: Application
    Filed: April 27, 2022
    Publication date: November 2, 2023
    Applicant: Truist Bank
    Inventors: Kenneth William Cluff, Qing Li, Peter Councill
  • Publication number: 20230342012
    Abstract: Disclosed are systems and methods that automatically classify, segment, and parse content data using artificial intelligence and natural language processing technology, and generate graphical user interfaces that allow end users to dynamically filter content data for display. The systems processes volumes of content data to identify interrogative data, content sources that generated the interrogative data, and subject identifiers relating to the content data. The system generates graphical user interfaces that allow end users to effectively filter the data by choosing between layouts that display one or more of the various categories of data, including the interrogative data, content source identifiers, and/or subject identifiers.
    Type: Application
    Filed: April 26, 2022
    Publication date: October 26, 2023
    Applicant: Truist Bank
    Inventors: Kenneth William Cluff, Harold Thomas Wood, III, Peter Councill, James Xu
  • Publication number: 20230342428
    Abstract: A system and method is described for labelling data for trigger identification. The system and method comprising receiving data, transforming the data, extracting content from the data, processing data content through a classification machine learning model to receive a label, and trigger a secondary system based on the label. The system and method may further include maintaining a database of labeled data.
    Type: Application
    Filed: April 20, 2022
    Publication date: October 26, 2023
    Applicant: Truist Bank
    Inventors: Brian Franklin Kramer, Kevin Green, Kenneth William Cluff, Rinku Saha