MACHINE LEARNING BASED FIRMWARE VERSION RECOMMENDER

    公开(公告)号:US20240095012A1

    公开(公告)日:2024-03-21

    申请号:US17949106

    申请日:2022-09-20

    CPC classification number: G06F8/65 H04L41/082 H04L41/16

    Abstract: Examples of the presently disclosed technology provide automated firmware recommendation systems that inject the intelligence of machine learning into the firmware recommendation process. To accomplish this, examples train a machine learning model on troves of historical customer firmware update data on a dynamic basis (e.g., examples may train the machine learning model on weekly basis to predict accepted firmware updates made by a vendor's customers across the most recent 6 months). From this dynamic training, the machine learning model can learn to predict/recommend an optimal firmware version for a customer/network device cluster based on firmware-related features, recent customer preferences, and other customer-specific factors. Once trained, examples can deploy the machine learning model to make highly tailored firmware recommendations for individual network device clusters of individual customers taking the above described factors into account.

    SYSTEMS AND METHODS FOR IDENTIFYING CORRELATIONS OF CERTAIN SCENARIOS TO PERFORMANCE OF NETWORK COMMUNICATIONS

    公开(公告)号:US20220158927A1

    公开(公告)日:2022-05-19

    申请号:US17508879

    申请日:2021-10-22

    Abstract: Systems and methods are provided for receiving a set of feature vectors. Each feature vector in the set may comprise feature values for a plurality of features associated with network communications. A first score for a first subset of the feature vectors that have at least one common feature value for a first feature of the plurality of features may be determined. A second score for a second subset of the feature vectors may be determined. The second subset may comprise the first subset and other feature vectors that have a different feature value for the first feature. Based on a change between the first score and the second score, whether to group the common feature value and the different feature value together may be determined.

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