Patents by Inventor TIM HERRMANN

TIM HERRMANN 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: 20240370724
    Abstract: In a network discovery and management system, a machine learning (ML) DLAD processor trains, validates, updates, and stores machine learning models. A ML training data preparation program performs operations to process and format input data to generate ML training data that can be used to train ML models. ML training program uses the ML training data to train ML models, thereby generating trained ML models. The ML training program can re-train or update the training of ML models as the system collects additional data and produces additional estimates, predictions, and forecasts. ML model validation program performs validation testing on trained ML models to generate one or more metrics that can indicate accuracy of predictions generated by the trained models. The resulting ML model(s) can be used to manage the network including but not limited to retrieve, instantiate and execute dynamic applications based on predictions made based on the models.
    Type: Application
    Filed: July 11, 2024
    Publication date: November 7, 2024
    Inventors: Shankar ANANTHANARAYANAN, Nicole EICKHOFF, Tim HERRMANN, Matthew LUEBKE, Mathew MALONEY
  • Patent number: 12067489
    Abstract: In a network discovery and management system, a machine learning (ML) DLAD processor trains, validates, updates, and stores machine learning models. A ML training data preparation program performs operations to process and format input data to generate ML training data that can be used to train ML models. ML training program uses the ML training data to train ML models, thereby generating trained ML models. The ML training program can re-train or update the training of ML models as the system collects additional data and produces additional estimates, predictions, and forecasts. ML model validation program performs validation testing on trained ML models to generate one or more metrics that can indicate accuracy of predictions generated by the trained models. The resulting ML model(s) can be used to manage the network including but not limited to retrieve, instantiate and execute dynamic applications based on predictions made based on the models.
    Type: Grant
    Filed: December 2, 2021
    Date of Patent: August 20, 2024
    Assignee: ScienceLogic, Inc.
    Inventors: Shankar Ananthanarayanan, Nicole Eickhoff, Tim Herrmann, Matthew Luebke, Mathew Maloney
  • Patent number: 11817235
    Abstract: The device and the method are used for the automatic assembly of an in particular twisted pair of wires, wherein the pair of wires has two wire elements each with a contact element arranged at one end of a wire end. The respective contact elements are brought into a predetermined rotary position by gripping the wire pair with a main gripper which has an axis of rotation about which it can rotate, and wherein the wire ends are each gripped by a gripping element. The respective contact element is brought into the predetermined rotary position by rotating the pair of wires by way of the main gripper.
    Type: Grant
    Filed: May 18, 2020
    Date of Patent: November 14, 2023
    Assignee: LEONI Bordnetz-Systeme GmbH
    Inventors: Tim Herrmann, Roland Jaecklein, Sarah Kopp, Paulo Martins, Ana Carolina Roquez Buitrago
  • Publication number: 20220092421
    Abstract: In a network discovery and management system, a machine learning (ML) DLAD processor trains, validates, updates, and stores machine learning models. A ML training data preparation program performs operations to process and format input data to generate ML training data that can be used to train ML models. ML training program uses the ML training data to train ML models, thereby generating trained ML models. The ML training program can re-train or update the training of ML models as the system collects additional data and produces additional estimates, predictions, and forecasts. ML model validation program performs validation testing on trained ML models to generate one or more metrics that can indicate accuracy of predictions generated by the trained models. The resulting ML model(s) can be used to manage the network including but not limited to retrieve, instantiate and execute dynamic applications based on predictions made based on the models.
    Type: Application
    Filed: December 2, 2021
    Publication date: March 24, 2022
    Inventors: Shankar ANANTHANARAYANAN, Nicole EICKHOFF, Tim HERRMANN, Matthew LUEBKE, Mathew MALONEY
  • Patent number: 11210587
    Abstract: In a network discovery and management system, a machine learning (ML) DLAD processor trains, validates, updates, and stores machine learning models. A ML training data preparation program performs operations to process and format input data to generate ML training data that can be used to train ML models. ML training program uses the ML training data to train ML models, thereby generating trained ML models. The ML training program can re-train or update the training of ML models as the system collects additional data and produces additional estimates, predictions, and forecasts. ML model validation program performs validation testing on trained ML models to generate one or more metrics that can indicate accuracy of predictions generated by the trained models. The resulting ML model(s) can be used to manage the network including but not limited to retrieve, instantiate and execute dynamic applications based on predictions made based on the models.
    Type: Grant
    Filed: April 23, 2020
    Date of Patent: December 28, 2021
    Assignee: ScienceLogic, Inc.
    Inventors: Shankar Ananthanarayanan, Nicole Eickhoff, Tim Herrmann, Matthew Luebke, Mathew Maloney
  • Publication number: 20200365297
    Abstract: The device and the method are used for the automatic assembly of an in particular twisted pair of wires, wherein the pair of wires has two wire elements each with a contact element arranged at one end of a wire end. The respective contact elements are brought into a predetermined rotary position by gripping the wire pair with a main gripper which has an axis of rotation about which it can rotate, and wherein the wire ends are each gripped by a gripping element. The respective contact element is brought into the predetermined rotary position by rotating the pair of wires by way of the main gripper.
    Type: Application
    Filed: May 18, 2020
    Publication date: November 19, 2020
    Inventors: TIM HERRMANN, ROLAND JAECKLEIN, SARAH KOPP, PAULO MARTINS, ANA CAROLINA ROQUEZ BUITRAGO