PROVIDING QUANTUM KEY DISTRIBUTION KEY DELIVERY PROOF OF ORIGIN AND TRANSIT

    公开(公告)号:US20240380587A1

    公开(公告)日:2024-11-14

    申请号:US18314543

    申请日:2023-05-09

    Abstract: A device may generate a first polynomial and a second polynomial, and may generate, based on the first polynomial, a primary path from a first network device to a second network device via a first set of intermediate network devices. The device may generate, based on the second polynomial, a secondary path from the first network device to the second network device via a second set of intermediate network devices, and may assign a point of the first and second polynomials to the device, to each of the first set of intermediate network devices and of the second set of intermediate network devices. The device may cause the primary path to be provided from the first network device to the second network device, and may cause the secondary path to be provided from the first network device to the second network device.

    TESTING AND BASELINING A MACHINE LEARNING MODEL AND TEST DATA

    公开(公告)号:US20240078289A1

    公开(公告)日:2024-03-07

    申请号:US17901261

    申请日:2022-09-01

    CPC classification number: G06K9/6265 G06N20/00

    Abstract: A device may receive a machine learning model, training data, and test data, and may perform a unit test on the machine learning model to generate unit test results. The device may perform regression tests on the machine learning model, with the training data and the test data, to calculate model scores, create graphs, determine inference delays, and identify missing points for the machine learning model. The device may perform scale and longevity tests on the machine learning model, with the training data and the test data, to identify additional missing points and calculate a resource utilization for the machine learning model. The device may update the machine learning model, to generate an updated machine learning model, based on the unit test results, the model scores, the graphs, the inference delays, the missing points, the additional missing points, or the resource utilization.

    ACCURACY OF MULTIVARIATE APPROACH FOR TIME-SERIES BASED FORECASTING

    公开(公告)号:US20240037419A1

    公开(公告)日:2024-02-01

    申请号:US17878514

    申请日:2022-08-01

    CPC classification number: G06N5/022

    Abstract: In some implementations, a monitoring device may obtain a plurality of time-series data streams respectively associated with a plurality of resources. The monitoring device may generate, using a plurality of machine learning models and based on the plurality of time-series data streams, a plurality of sets of multi-step forecast values, wherein each set of multi-step forecast values is associated with the plurality of resources. The monitoring device may determine, based on the plurality of sets of multi-step forecast values, a set of particular multi-step forecast values associated with the plurality of resources. The monitoring device may cause, based on the set of particular multi-step forecast values, one or more actions to be performed. In some implementations, the monitoring device may determine, based on the plurality of time-series data streams and the plurality of sets of multi-step forecast values, that a correlation exists between a first resource and a second resource.

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