Patents by Inventor Volodymyr Iashyn

Volodymyr Iashyn 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: 11562176
    Abstract: Systems, methods, and computer-readable mediums for distributing machine learning model training to network edge devices, while centrally monitoring training of the models and controlling deployment of the models. A machine learning model architecture can be generated at a machine learning structure controller. The machine learning model architecture can be deployed to network edge devices in a network environment to instantiate and train a machine learning model at the network edge devices. Performance reports indicating performance of the machine learning model at the network edge devices can be received by the machine learning structure controller from the network edge devices.
    Type: Grant
    Filed: February 22, 2019
    Date of Patent: January 24, 2023
    Assignee: Cisco Technology, Inc.
    Inventors: Volodymyr Iashyn, Gonzalo Salgueiro, M. David Hanes
  • Patent number: 11537877
    Abstract: In one embodiment, an apparatus obtains unstructured text generated by a device regarding operation of the device. The apparatus identifies the unstructured text as associated with a particular command or process that generated the unstructured text. The apparatus classifies a portion of the unstructured text as anomalous by inputting the portion of the unstructured text to a machine learning-based model trained to predict text generated by the particular command or process. The apparatus provides provide the unstructured text for display that includes an indication that the portion of the unstructured text is anomalous.
    Type: Grant
    Filed: April 4, 2019
    Date of Patent: December 27, 2022
    Assignee: Cisco Technology, Inc.
    Inventors: Dmitry Goloubew, Nassim Benoussaid, Volodymyr Iashyn, Borys Viacheslavovych Berlog, Carlos M. Pignataro
  • Publication number: 20210342543
    Abstract: A method includes associating anomalous first text, from a first unstructured data set, with a first classification; processing the first unstructured data set using at least one of ML or AI to identify a second text that is in close context to the first text, and adding the second text to a text list associated with the first classification; enriching the text list by processing the second text to generate a third text, and adding the third text to the text list to produce an enriched text list and such that the third text is also associated with the first classification; matching the text in the enriched text list to text in a second unstructured data set; and classifying the text in the second unstructured data set as having the first classification when the text in the second unstructured data set matches text in the enriched text list.
    Type: Application
    Filed: June 29, 2020
    Publication date: November 4, 2021
    Inventors: Dmitri Goloubev, Nassim Benoussaid, Volodymyr Iashyn, Borys Viacheslavovych Berlog, Carlos M. Pignataro
  • Publication number: 20200272859
    Abstract: Systems, methods, and computer-readable mediums for distributing machine learning model training to network edge devices, while centrally monitoring training of the models and controlling deployment of the models. A machine learning model architecture can be generated at a machine learning structure controller. The machine learning model architecture can be deployed to network edge devices in a network environment to instantiate and train a machine learning model at the network edge devices. Performance reports indicating performance of the machine learning model at the network edge devices can be received by the machine learning structure controller from the network edge devices.
    Type: Application
    Filed: February 22, 2019
    Publication date: August 27, 2020
    Inventors: Volodymyr Iashyn, Gonzalo Salgueiro, M. David Hanes
  • Publication number: 20200257969
    Abstract: In one embodiment, an apparatus obtains unstructured text generated by a device regarding operation of the device. The apparatus identifies the unstructured text as associated with a particular command or process that generated the unstructured text. The apparatus classifies a portion of the unstructured text as anomalous by inputting the portion of the unstructured text to a machine learning-based model trained to predict text generated by the particular command or process. The apparatus provides provide the unstructured text for display that includes an indication that the portion of the unstructured text is anomalous.
    Type: Application
    Filed: April 4, 2019
    Publication date: August 13, 2020
    Inventors: Dmitry Goloubew, Nassim Benoussaid, Volodymyr Iashyn, Borys Viacheslavovych Berlog, Carlos M. Pignataro
  • Patent number: 10742516
    Abstract: Systems, methods, and computer-readable media for distributing machine learning. In some examples, a first GAN model is deployed to a first network edge device and a second GAN model is deployed to a second network edge device. A generator of the first GAN model can be trained using real telemetry data of a first computing node and a generator of the second GAN model can be trained using real telemetry data of a second IoT device. The generator of the first GAN model and the generator of the second GAN model can be received. Additionally, a unified generator of a unified GAN model can be trained using the generator of the first GAN model and the generator of the second GAN model. Subsequently, the unified GAN model can be deployed to a third computing node for monitoring operation of the third IoT device.
    Type: Grant
    Filed: February 6, 2019
    Date of Patent: August 11, 2020
    Assignee: CISCO TECHNOLOGY, INC.
    Inventors: Volodymyr Iashyn, Borys Viacheslavovych Berlog, Dmitri Goloubev
  • Publication number: 20200252296
    Abstract: Systems, methods, and computer-readable media for distributing machine learning. In some examples, a first GAN model is deployed to a first network edge device and a second GAN model is deployed to a second network edge device. A generator of the first GAN model can be trained using real telemetry data of a first computing node and a generator of the second GAN model can be trained using real telemetry data of a second IoT device. The generator of the first GAN model and the generator of the second GAN model can be received. Additionally, a unified generator of a unified GAN model can be trained using the generator of the first GAN model and the generator of the second GAN model. Subsequently, the unified GAN model can be deployed to a third computing node for monitoring operation of the third IoT device.
    Type: Application
    Filed: February 6, 2019
    Publication date: August 6, 2020
    Inventors: Volodymyr Iashyn, Borys Viacheslavovych Berlog, Dmitri Goloubev