Patents by Inventor Jenna Parenti

Jenna Parenti 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: 20210357838
    Abstract: A value chain system that provides recommendations for designing a logistics system generally includes a machine learning system that trains machine-learned models that output logistics design recommendations based on training data sets that each respectively defines one or more features of a respective logistic system and an outcome relating to the respective logistics system; an artificial intelligence system that receives a request for a logistics system design recommendation and determines the logistics system design recommendation based on one or more of the machine-learned models and the request; and a digital twin system that generates an environment digital twin of a logistics environment that incorporates the logistics system design recommendation, and one or more physical asset digital twins of physical assets. The digital twin system executes a simulation based on the logistics environment digital twin, the one or more physical asset digital twins.
    Type: Application
    Filed: May 28, 2021
    Publication date: November 18, 2021
    Applicant: STRONG FORCE VCN PORTFOLIO 2019, LLC
    Inventors: Charles Howard CELLA, Richard SPITZ, Andrew CARDNO, Jenna PARENTI, Brent BLIVEN, Joshua DOBROWITSKY
  • Publication number: 20210357827
    Abstract: A value chain system that provides recommendations for designing a logistics system generally includes a machine learning system that trains machine-learned models that output logistics design recommendations based on training data sets that each respectively defines one or more features of a respective logistic system and an outcome relating to the respective logistics system; an artificial intelligence system that receives a request for a logistics system design recommendation and determines the logistics system design recommendation based on one or more of the machine-learned models and the request; and a digital twin system that generates an environment digital twin of a logistics environment that incorporates the logistics system design recommendation, and one or more physical asset digital twins of physical assets. The digital twin system executes a simulation based on the logistics environment digital twin, the one or more physical asset digital twins.
    Type: Application
    Filed: May 28, 2021
    Publication date: November 18, 2021
    Applicant: STRONG FORCE VCN PORTFOLIO 2019, LLC
    Inventors: Charles Howard CELLA, Richard SPITZ, Andrew CARDNO, Jenna PARENTI, Brent BLIVEN, Joshua DOBROWITSKY
  • Publication number: 20210357823
    Abstract: A value chain system that provides recommendations for designing a logistics system generally includes a machine learning system that trains machine-learned models that output logistics design recommendations based on training data sets that each respectively defines one or more features of a respective logistic system and an outcome relating to the respective logistics system; an artificial intelligence system that receives a request for a logistics system design recommendation and determines the logistics system design recommendation based on one or more of the machine-learned models and the request; and a digital twin system that generates an environment digital twin of a logistics environment that incorporates the logistics system design recommendation, and one or more physical asset digital twins of physical assets. The digital twin system executes a simulation based on the logistics environment digital twin, the one or more physical asset digital twins.
    Type: Application
    Filed: May 28, 2021
    Publication date: November 18, 2021
    Applicant: STRONG FORCE VCN PORTFOLIO 2019, LLC
    Inventors: Charles Howard CELLA, Richard SPITZ, Andrew CARDNO, Jenna PARENTI, Brent BLIVEN, Joshua DOBROWITSKY
  • Publication number: 20210357959
    Abstract: A value chain system that provides recommendations for designing a logistics system generally includes a machine learning system that trains machine-learned models that output logistics design recommendations based on training data sets that each respectively defines one or more features of a respective logistic system and an outcome relating to the respective logistics system; an artificial intelligence system that receives a request for a logistics system design recommendation and determines the logistics system design recommendation based on one or more of the machine-learned models and the request; and a digital twin system that generates an environment digital twin of a logistics environment that incorporates the logistics system design recommendation, and one or more physical asset digital twins of physical assets. The digital twin system executes a simulation based on the logistics environment digital twin, the one or more physical asset digital twins.
    Type: Application
    Filed: May 28, 2021
    Publication date: November 18, 2021
    Applicant: STRONG FORCE VCN PORTFOLIO 2019, LLC
    Inventors: Charles Howard CELLA, Richard SPITZ, Andrew CARDNO, Jenna PARENTI, Brent BLIVEN, Joshua DOBROWITSKY
  • Publication number: 20210357850
    Abstract: A value chain system that provides recommendations for designing a logistics system generally includes a machine learning system that trains machine-learned models that output logistics design recommendations based on training data sets that each respectively defines one or more features of a respective logistic system and an outcome relating to the respective logistics system; an artificial intelligence system that receives a request for a logistics system design recommendation and determines the logistics system design recommendation based on one or more of the machine-learned models and the request; and a digital twin system that generates an environment digital twin of a logistics environment that incorporates the logistics system design recommendation, and one or more physical asset digital twins of physical assets. The digital twin system executes a simulation based on the logistics environment digital twin, the one or more physical asset digital twins.
    Type: Application
    Filed: May 28, 2021
    Publication date: November 18, 2021
    Applicant: STRONG FORCE VCN PORTFOLIO 2019, LLC
    Inventors: Charles Howard CELLA, Richard SPITZ, Andrew CARDNO, Jenna PARENTI, Brent BLIVEN, Joshua DOBROWITSKY
  • Publication number: 20210357422
    Abstract: A value chain system that provides recommendations for designing a logistics system generally includes a machine learning system that trains machine-learned models that output logistics design recommendations based on training data sets that each respectively defines one or more features of a respective logistic system and an outcome relating to the respective logistics system; an artificial intelligence system that receives a request for a logistics system design recommendation and determines the logistics system design recommendation based on one or more of the machine-learned models and the request; and a digital twin system that generates an environment digital twin of a logistics environment that incorporates the logistics system design recommendation, and one or more physical asset digital twins of physical assets. The digital twin system executes a simulation based on the logistics environment digital twin, the one or more physical asset digital twins.
    Type: Application
    Filed: May 28, 2021
    Publication date: November 18, 2021
    Applicant: STRONG FORCE VCN PORTFOLIO 2019, LLC
    Inventors: Charles Howard CELLA, Richard SPITZ, Andrew CARDNO, Jenna PARENTI, Brent BLIVEN, Joshua DOBROWITSKY
  • Publication number: 20210157312
    Abstract: A platform for updating one or more properties of one or more digital twins including receiving a request for one or more digital twins; retrieving the one or more digital twins required to fulfill the request from a digital twin datastore; retrieving one or more dynamic models corresponding to one or more properties that are depicted in the one or more digital twins indicated by the request; selecting data sources from a set of available data sources based on the one or more inputs of the one or more dynamic models; obtaining data from selected data sources; determining one or more outputs using the retrieved data as one or more inputs to the one or more dynamic models; and updating the one or more properties of the one or more digital twins based on the one or more outputs of the one or more dynamic models.
    Type: Application
    Filed: November 25, 2020
    Publication date: May 27, 2021
    Applicant: STRONG FORCE IOT PORTFOLIO 2016, LLC
    Inventors: Charles H. Cella, Gerald William Duffy, JR., Jeffrey P. McGuckin, Teymour S. El-Tahry, Andrew Cardno, Jenna Parenti