Patents by Inventor Andrew James Weitz
Andrew James Weitz 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).
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Publication number: 20240278418Abstract: A mobility augmentation system monitors a user's motor intent data and augments the user's mobility based on the monitored motor intent data. A machine-learned model is trained to identify an intended movement based on the monitored motor intent data. The machine-learned model may be trained based on generalized or specific motor intent data (e.g., user-specific motor intent data). A machine-learned model initially trained on generalized motor intent data may be re-trained on user-specific motor intent data such that the machine-learned model is optimized to the movements of the user. The system uses the machine-learned model to identify a difference between the user's monitored movement and target movement signals. Based on the identified difference, the system determines actuation signals to augment the user's movement. The actuation signals determined can be an adjustment to a currently applied actuation such that the system optimizes the actuation strategy during application.Type: ApplicationFiled: May 2, 2024Publication date: August 22, 2024Inventors: Jeremiah Robison, Michael Dean Achelis, Lina Avancini Colucci, Sidney Rafael Primas, Andrew James Weitz
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Publication number: 20240216152Abstract: A mobility augmentation system monitors data representative of a user's motor intent and augments the user's mobility based on the monitored motor intent data. A machine-learned model is trained to identify an intended movement based on the monitored motor intent data. The machine-learned model may be trained based on generalized or specific motor intent data (e.g., user-specific motor intent data). A machine-learned model initially trained on generalized motor intent data may be re-trained on user-specific motor intent data such that the machine-learned model is optimized to the movements of the user. The system uses the machine-learned model to identify a difference between the user's monitored movement and target movement signals. Based on the identified difference, the system determines actuation signals to augment the user's movement. The actuation signals determined can be an adjustment to a currently applied actuation such that the system optimizes the actuation strategy during application.Type: ApplicationFiled: March 12, 2024Publication date: July 4, 2024Inventors: Jeremiah Robison, Michael Dean Achelis, Lina Avancini Colucci, Sidney Rafael Primas, Andrew James Weitz
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Patent number: 12005573Abstract: A mobility augmentation system monitors a user's motor intent data and augments the user's mobility based on the monitored motor intent data. A machine-learned model is trained to identify an intended movement based on the monitored motor intent data. The machine-learned model may be trained based on generalized or specific motor intent data (e.g., user-specific motor intent data). A machine-learned model initially trained on generalized motor intent data may be re-trained on user-specific motor intent data such that the machine-learned model is optimized to the movements of the user. The system uses the machine-learned model to identify a difference between the user's monitored movement and target movement signals. Based on the identified difference, the system determines actuation signals to augment the user's movement. The actuation signals determined can be an adjustment to a currently applied actuation such that the system optimizes the actuation strategy during application.Type: GrantFiled: December 6, 2020Date of Patent: June 11, 2024Assignee: Cionic, Inc.Inventors: Jeremiah Robison, Michael Dean Achelis, Lina Avancini Colucci, Sidney Rafael Primas, Andrew James Weitz
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Patent number: 11957605Abstract: A mobility augmentation system monitors data representative of a user's motor intent and augments the user's mobility based on the monitored motor intent data. A machine-learned model is trained to identify an intended movement based on the monitored motor intent data. The machine-learned model may be trained based on generalized or specific motor intent data (e.g., user-specific motor intent data). A machine-learned model initially trained on generalized motor intent data may be re-trained on user-specific motor intent data such that the machine-learned model is optimized to the movements of the user. The system uses the machine-learned model to identify a difference between the user's monitored movement and target movement signals. Based on the identified difference, the system determines actuation signals to augment the user's movement. The actuation signals determined can be an adjustment to a currently applied actuation such that the system optimizes the actuation strategy during application.Type: GrantFiled: December 6, 2020Date of Patent: April 16, 2024Assignee: Cionic, Inc.Inventors: Jeremiah Robison, Michael Dean Achelis, Lina Avancini Colucci, Sidney Rafael Primas, Andrew James Weitz
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Publication number: 20220175555Abstract: A mobility augmentation system monitors data representative of a user's motor intent and augments the user's mobility based on the monitored motor intent data. A machine-learned model is trained to identify an intended movement based on the monitored motor intent data. The machine-learned model may be trained based on generalized or specific motor intent data (e.g., user-specific motor intent data). A machine-learned model initially trained on generalized motor intent data may be re-trained on user-specific motor intent data such that the machine-learned model is optimized to the movements of the user. The system uses the machine-learned model to identify a difference between the user's monitored movement and target movement signals. Based on the identified difference, the system determines actuation signals to augment the user's movement. The actuation signals determined can be an adjustment to a currently applied actuation such that the system optimizes the actuation strategy during application.Type: ApplicationFiled: December 6, 2020Publication date: June 9, 2022Inventors: Jeremiah Robison, Michael Dean Achelis, Lina Avancini Colucci, Sidney Rafael Primas, Andrew James Weitz
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Publication number: 20220176545Abstract: A mobility augmentation system monitors a user's motor intent data and augments the user's mobility based on the monitored motor intent data. A machine-learned model is trained to identify an intended movement based on the monitored motor intent data. The machine-learned model may be trained based on generalized or specific motor intent data (e.g., user-specific motor intent data). A machine-learned model initially trained on generalized motor intent data may be re-trained on user-specific motor intent data such that the machine-learned model is optimized to the movements of the user. The system uses the machine-learned model to identify a difference between the user's monitored movement and target movement signals. Based on the identified difference, the system determines actuation signals to augment the user's movement. The actuation signals determined can be an adjustment to a currently applied actuation such that the system optimizes the actuation strategy during application.Type: ApplicationFiled: December 6, 2020Publication date: June 9, 2022Inventors: Jeremiah Robison, Michael Dean Achelis, Lina Avancini Colucci, Sidney Rafael Primas, Andrew James Weitz
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Publication number: 20220061741Abstract: A symptom intervention system monitors data representative of a user's movement, identifies an onset of a symptom of a physical condition, and applies an actuation to intervene with the identified onset. A machine-learned model is trained to identify an onset of a symptom based on the monitored data . The system may use the machine-learned model to determine whether to modify an upcoming administration of a chemical stimulus that is administered to the user to treat their physical condition. The system may determine a modification to a dose or a time associated with the upcoming administration of the stimulus and apply the stimulus to the user based on the determined modification. The system may use the machine-learned model to determine that the user is exhibiting a particular symptom of their physical condition. Depending on the symptom, the system may depolarize or hyperpolarize neurons of the user.Type: ApplicationFiled: August 25, 2021Publication date: March 3, 2022Inventors: Jeremiah Robison, Michael Dean Achelis, Lina Avancini Colucci, Sidney Rafael Primas, Jonathan Sakai, Andrew James Weitz
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Publication number: 20220062549Abstract: A symptom intervention system monitors data representative of a user's movement, identifies an onset of a symptom of a physical condition, and applies an actuation to intervene with the identified onset. A machine-learned model is trained to identify an onset of a symptom based on the monitored data . The system may use the machine-learned model to determine whether to modify an upcoming administration of a chemical stimulus that is administered to the user to treat their physical condition. The system may determine a modification to a dose or a time associated with the upcoming administration of the stimulus and apply the stimulus to the user based on the determined modification. The system may use the machine-learned model to determine that the user is exhibiting a particular symptom of their physical condition. Depending on the symptom, the system may depolarize or hyperpolarize neurons of the user.Type: ApplicationFiled: August 25, 2021Publication date: March 3, 2022Inventors: Jeremiah Robison, Michael Dean Achelis, Lina Avancini Colucci, Sidney Rafael Primas, Jonathan Sakai, Andrew James Weitz
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Publication number: 20210346617Abstract: The present disclosure includes a method for vaporizing a product of a plurality of different products including receiving, by a processor of a vaporizing device, a desired dosage amount that is indicative of an amount of a compound to release during one or more inhalation events. The method includes determining, by the processor, an occurrence of a current inhalation event and during the current inhalation event determining, by the processor, an inhalation pressure being applied to a container that contains the product; determining, by the processor, a predicted dosage that is indicative of a predicted amount of the compound that has been released in the vapor during the current inhalation event based on the inhalation pressure; and selectively adjusting, by the processor, a vaporizing temperature being applied to the product by the vaporizer based on the desired dosage and the predicted dosage.Type: ApplicationFiled: August 16, 2019Publication date: November 11, 2021Inventors: Akiva Wagner, Robert Steven Walter Bates, Sidney Primas, Yisroel Kirsh, Jeroen Arnold Norbert Kools, Andrew James Weitz, Prasad K Panchalan