Patents by Inventor Andrew BUNIN

Andrew BUNIN 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: 20260154435
    Abstract: A system may include a data classification module configured to classify data into classified data based on predefined sensitivity levels and regulatory compliance requirements. A system may include an access control module configured to manage permissions for different user roles within an enterprise, granting access to the classified data in accordance with the sensitivity levels and regulatory compliance requirements. A system may include a data formatting module configured to format classified data into formatted data with customized presentations for various enterprise departments. A system may include an integration module configured to interface with at least one of an Enterprise Resource Planning (ERP) system or a Customer Relationship Management (CRM) system to retrieve and classify the data. A system may include a user interface module configured to present the formatted data within the host application, providing a seamless user experience for accessing the embedded marketplace.
    Type: Application
    Filed: September 3, 2025
    Publication date: June 4, 2026
    Inventors: Charles H. Cella, Andrew Cardno, Andrew S. Locke, Brent D. Bliven, Anthony Cascio, Eric P. Vetter, David J. Stein, Teymour S. El-Tahry, Nicholas Rogosin, Taylor D. Charon, Jenna L. Parenti, Andrew Bunin, Henry Mohr, Kendra S. Heger, Leon Fortin, JR., Richard Spitz, Brad Kell, Hristo Malchev, Joshua B. Dobrowitsky
  • Publication number: 20260118837
    Abstract: An AI-based energy edge platform is provided herein with a wide range of features, components and capabilities for management and improvement of legacy infrastructure and coordination with distributed systems to support important use cases for a range of enterprises. The platform may incorporate emerging technologies to enable ecosystem and individual energy edge node efficiencies, agility, engagement, and profitability. Embodiments may forecast, plan for, and manage the demand and utilization of energy in greater distributed environments. Embodiments may use AI, IoT, and technologies that filter, process, and move data more effectively across communication networks. Embodiments of the platform may leverage energy market connection, communication, and transaction enablement platforms. Embodiments may employ intelligent provisioning, data aggregation, and analytics.
    Type: Application
    Filed: March 10, 2025
    Publication date: April 30, 2026
    Inventors: Charles Howard Cella, Andrew Cardno, Taylor Charon, David Stein, Andrew Bunin, Leon Fortin, JR., Teymour S. El-Tahry, Eric P. Vetter, Kunal Sharma, Anthony Cascio
  • Publication number: 20260105438
    Abstract: An artificial intelligence driven system of systems may include a layered architecture for providing transaction support to various types of enterprises. A governance layer implements automated governance and policy enforcement through specialized governance modules utilizing generative AI technology. An enterprise layer supports enterprise functions by integrating management and control platforms with digital infrastructure. An offering layer creates and manages system offerings via content generation, personalization, and smart product modules. A transactions layer enables automated transaction orchestration through API integration, execution, and fulfillment modules. An operations layer manages AI systems through generation, training, verification and orchestration modules. A network layer provides adaptive networking capabilities through routing, protocol selection and communication modules. A data layer processes fused data from multiple sources using machine learning and AI systems.
    Type: Application
    Filed: July 22, 2025
    Publication date: April 16, 2026
    Inventors: Charles H. Cella, Brent Bliven, Andrew Bunin, Taylor Charon, Joshua Dobrowitsky, Teymour S. El-Tahry, Jenna Parenti, Andrew Locke, David Stein
  • Patent number: 12585282
    Abstract: A VCN process may receive information associated with a value chain network. A VCN process may provide the information to a set of Artificial Intelligence (AI)-based learning models, wherein at least one member of the set of AI-based learning models is trained to classify at least one of: an operating state, a fault condition, an operating flow, or a behavior of the value chain network and at least one member of the set of AI-based learning models is trained on the training data set to determine, upon receiving the classification of the at least one of: the operating state, the fault condition, the operating flow, or the behavior, a task to be completed for the value chain network. A VCN process may configure a robotic process automation system to execute the task to facilitate an improvement in the value chain network.
    Type: Grant
    Filed: November 30, 2023
    Date of Patent: March 24, 2026
    Assignee: STRONG FORCE VCN PORTFOLIO 2019, LLC
    Inventors: Charles H. Cella, Andrew Cardno, Jenna Parenti, Andrew S. Locke, Brad Kell, Teymour S. El-Tahry, Leon Fortin, Jr., Andrew Bunin, Kunal Sharma, Taylor Charon, Hristo Malchev, Eric P. Vetter, David Stein, Benjamin D. Goodman
  • Publication number: 20250299255
    Abstract: A method and a system for providing at least one of a process automation and artificial intelligence (PAAI), a market aggregation, or an embedded marketplace relating to transactions are disclosed. In particular, a method and a system for automation of transactions in a transaction environment (e.g., marketplace or a set of marketplaces) are disclosed. A method and a system for managing transactions in a transaction environment (e.g., marketplace or a set of marketplaces) are disclosed. A method and a system for automating processing of transactions in a transaction environment (e.g., marketplace or a set of marketplaces) are disclosed. A method and a system for automated orchestration of a transaction environment (e.g., marketplace or a set of marketplaces) are disclosed. A method and a system for augmenting of services in a transaction environment (e.g., marketplace or a set of marketplaces) are disclosed.
    Type: Application
    Filed: January 17, 2025
    Publication date: September 25, 2025
    Applicant: STRONG FORCE TX PORTFOLIO 2018, LLC
    Inventors: Charles Howard CELLA, Andrew CARDNO, Taylor CHARON, Andrew BUNIN, Teymour EL-TAHRY, Ben GOODMAN, Andrew SHARP, Brent BLIVEN, Jenna PARENTI, Leon FORTIN, JR., Brad KELL, Andrew LOCKE
  • Patent number: 12379729
    Abstract: A VCN process may receive, by a computing device, information associated with a set of value chain network entities of a value chain network, the information generated by at least one of: a set of sensors of the set of value chain network entities, a set of IoT devices configured to collect data relating to the set of value chain network entities, or a set of APIs configured to publish data relating to the set of value chain network entities. A VCN process may provide the information to a set of Artificial Intelligence (AI)-based learning models. A VCN process may determine a procurement action to be taken in the value chain network based upon, at least in part, an output of the set of AI-based learning models. A VCN process may execute the procurement action.
    Type: Grant
    Filed: November 30, 2023
    Date of Patent: August 5, 2025
    Assignee: STRONG FORCE VCN PORTFOLIO 2019, LLC
    Inventors: Charles H. Cella, Andrew Cardno, Jenna Parenti, Andrew S. Locke, Brad Kell, Teymour S. El-Tahry, Leon Fortin, Jr., Andrew Bunin, Kunal Sharma, Taylor Charon, Hristo Malchev, Eric P. Vetter, David Stein, Benjamin D. Goodman
  • Patent number: 12314060
    Abstract: A VCN process may receive, by a value chain network digital twin, information associated with a value chain network. A VCN process may provide the information to a set of Artificial Intelligence (AI)-based learning models, wherein at least one member of the set of AI-based learning models is trained to classify at least one of: an operating state, a fault condition, an operating flow, or a behavior of the value chain network and at least one member of the set of AI-based learning models is trained to determine a task to be completed for the value chain network. A VCN process may provide at least one of an instruction for executing the task in the value chain network digital twin and a recommendation for executing the task in the value chain network digital twin.
    Type: Grant
    Filed: November 30, 2023
    Date of Patent: May 27, 2025
    Assignee: STRONG FORCE VCN PORTFOLIO 2019, LLC
    Inventors: Charles H. Cella, Andrew Cardno, Jenna Parenti, Andrew S. Locke, Brad Kell, Teymour S. El-Tahry, Leon Fortin, Jr., Andrew Bunin, Kunal Sharma, Taylor Charon, Hristo Malchev, Eric P. Vetter, David Stein, Benjamin D. Goodman
  • Publication number: 20240144141
    Abstract: A VCN process may receive information associated with a value chain network. A VCN process may provide the information to a set of Artificial Intelligence (AI)-based learning models, wherein at least one member of the set of AI-based learning models is trained on a training data set of a set of value chain network entities operating data to classify at least one of: an operating state, a fault condition, an operating flow, or a behavior of at least one value chain entity of the set of value chain network entities. A VCN process may determine a task to be completed for the value chain network based upon, at least in part, on an output of the set of AI-based learning models. A VCN process may execute the task to facilitate an improvement in the value chain network.
    Type: Application
    Filed: November 30, 2023
    Publication date: May 2, 2024
    Inventors: Charles H. Cella, Andrew Cardno, Jenna Parenti, Andrew S. Locke, Brad Kell, Teymour S. El-Tahry, Leon Fortin, JR., Andrew Bunin, Kunal Sharma, Taylor Charon, Hristo Malchev, Eric P. Vetter, David Stein, Benjamin D. Goodman
  • Publication number: 20240144140
    Abstract: A VCN process may receive information associated with a set of value chain network entities. A VCN process may provide the information to a first set of Artificial Intelligence (AI)-based learning models, wherein at least one member of the first set of AI-based learning models is trained to generate a prediction of future demand for an item. A VCN process may provide the information to a second set of AI-based learning models, wherein at least one member of the second set of AI-based learning models is trained to classify at least one of: an operating state, a fault condition, an operating flow, or a behavior of at least one value chain entity. A VCN process may determine a potential risk in the value chain network associated with the at least one value chain network entity based upon, at least in part, an output of the AI-based learning models.
    Type: Application
    Filed: November 30, 2023
    Publication date: May 2, 2024
    Inventors: Charles H. Cella, Andrew Cardno, Jenna Parenti, Andrew S. Locke, Brad Kell, Teymour S. El-Tahry, Leon Fortin, JR., Andrew Bunin, Kunal Sharma, Taylor Charon, Hristo Malchev, Eric P. Vetter, David Stein, Benjamin D. Goodman
  • Publication number: 20240144138
    Abstract: A VCN process may receive, by a computing device, information associated with a set of value chain network entities of a value chain network, the information generated by at least one of a set of sensors of the set of value chain network entities, a set of IoT devices configured to collect data relating to the set of value chain network entities, or a set of APIs configured to publish data relating to the set of value chain network entities. A VCN process may provide the information to a set of Artificial Intelligence (AI)-based learning models. A VCN process may determine a potential risk in the value chain based upon, at least in part, an output of the AI-based learning classification. A VCN process may execute an action to mitigate the potential risk in the value chain network.
    Type: Application
    Filed: November 30, 2023
    Publication date: May 2, 2024
    Inventors: Charles H. Cella, Andrew Cardno, Jenna Parenti, Andrew S. Locke, Brad Kell, Teymour S. El-Tahry, Leon Fortin, JR., Andrew Bunin, Kunal Sharma, Taylor Charon, Hristo Malchev, Eric P. Vetter, David Stein, Benjamin D. Goodman
  • Publication number: 20240144181
    Abstract: A VCN process may receive information associated with a value chain network. A VCN process may provide the information to a set of Artificial Intelligence (AI)-based learning models, wherein at least one member of the set of AI-based learning models is trained to classify at least one of: an operating state, a fault condition, an operating flow, or a behavior of the value chain network and at least one member of the set of AI-based learning models is trained on the training data set to determine, upon receiving the classification of the at least one of: the operating state, the fault condition, the operating flow, or the behavior, a task to be completed for the value chain network. A VCN process may configure a robotic process automation system to execute the task to facilitate an improvement in the value chain network.
    Type: Application
    Filed: November 30, 2023
    Publication date: May 2, 2024
    Inventors: Charles H. Cella, Andrew Cardno, Jenna Parenti, Andrew S. Locke, Brad Kell, Teymour S. El-Tahry, Leon Fortin, JR., Andrew Bunin, Kunal Sharma, Taylor Charon, Hristo Malchev, Eric P. Vetter, David Stein, Benjamin D. Goodman
  • Publication number: 20240144011
    Abstract: A VCN process may receive information associated with a value chain network. A VCN process may provide the information to a set of Artificial Intelligence (AI)-based learning models, wherein at least one member of the set of AI-based learning models is trained to classify at least one of: an operating state, a fault condition, an operating flow, or a behavior of the value chain network and at least one member of the set of AI-based learning models is trained on the training data set to determine, upon receiving the classification of the at least one of: the operating state, the fault condition, the operating flow, or the behavior, a task to be completed for the value chain network. A VCN process may provide a computer code instruction set to a machine to execute the task to facilitate an improvement in the operation of the value chain network.
    Type: Application
    Filed: November 30, 2023
    Publication date: May 2, 2024
    Inventors: Charles H. Cella, Andrew Cardno, Jenna Parenti, Andrew S. Locke, Brad Kell, Teymour S. El-Tahry, Leon Fortin, JR., Andrew Bunin, Kunal Sharma, Taylor Charon, Hristo Malchev, Eric P. Vetter, David Stein, Benjamin D. Goodman
  • Publication number: 20240144103
    Abstract: A VCN process may receive, by a value chain network digital twin, information associated with a value chain network. A VCN process may provide the information to a set of Artificial Intelligence (AI)-based learning models, wherein at least one member of the set of AI-based learning models is trained to classify at least one of: an operating state, a fault condition, an operating flow, or a behavior of the value chain network and at least one member of the set of AI-based learning models is trained to determine a task to be completed for the value chain network. A VCN process may provide at least one of an instruction for executing the task in the value chain network digital twin and a recommendation for executing the task in the value chain network digital twin.
    Type: Application
    Filed: November 30, 2023
    Publication date: May 2, 2024
    Inventors: Charles H. Cella, Andrew Cardno, Jenna Parenti, Andrew S. Locke, Brad Kell, Teymour S. El-Tahry, Leon Fortin, JR., Andrew Bunin, Kunal Sharma, Taylor Charon, Hristo Malchev, Eric P. Vetter, David Stein, Benjamin D. Goodman
  • Publication number: 20240144139
    Abstract: A VCN process may receive, by a computing device, information associated with a set of value chain network entities of a value chain network, the information generated by at least one of: a set of sensors of the set of value chain network entities, a set of IoT devices configured to collect data relating to the set of value chain network entities, or a set of APIs configured to publish data relating to the set of value chain network entities. A VCN process may provide the information to a set of Artificial Intelligence (AI)-based learning models. A VCN process may determine a procurement action to be taken in the value chain network based upon, at least in part, an output of the set of AI-based learning models. A VCN process may execute the procurement action.
    Type: Application
    Filed: November 30, 2023
    Publication date: May 2, 2024
    Inventors: Charles H. Cella, Andrew Cardno, Jenna Parenti, Andrew S. Locke, Brad Kell, Teymour S. El-Tahry, Leon Fortin, Jr., Andrew Bunin, Kunal Sharma, Taylor Charon, Hristo Malchev, Eric P. Vetter, David Stein, Benjamin D. Goodman
  • Publication number: 20230419304
    Abstract: Systems and methods for integrating a gaming engine and a smart contract system in a platform are provided. The gaming engine is programmed with a software development environment and an architecture that provides a set of gaming engine services with predefined tools for digital content developers to create a set of game engine generated environments. The smart contract system programmed with smart contract services associated with transactions that are based on electronically verifiable conditions. The integration platform is programmed with an execution framework that is common to the gaming engine and to the smart contract system to integrate the smart contract services with at least one of the gaming engine and the set of game engine generated environments.
    Type: Application
    Filed: September 6, 2023
    Publication date: December 28, 2023
    Applicant: STRONG FORCE TX PORTFOLIO 2018, LLC
    Inventors: Charles H. CELLA, Richard SPITZ, Teymour S. EL-TAHRY, Jenna PARENTI, Andrew CARDNO, Taylor CHARON, Brad KELL, Andrew BUNIN, Joshua DOBROWITSKY, Brent BLIVEN, Andrew SHARP, Kunal SHARMA