Automatic performance monitoring and health check of learning based wireless optimization framework

    公开(公告)号:US10405208B2

    公开(公告)日:2019-09-03

    申请号:US15803586

    申请日:2017-11-03

    Abstract: Network traffic data associated with computer applications is collected based on static policies. First network parameter vectors are generated over a time period. Each network parameter vector of the first network parameter vectors comprises first optimal values, estimated by a Bayesian learning module using a generative model, for network parameters. Second network parameter vectors are generated over the same time period. Each network parameter vector of the second network parameter vectors comprises second optimal values, computed by a best parameter generator through optimizing an objective function, for the network parameters. It is determined whether the first network parameter vectors converge to the second network parameter vectors and whether network parameter optimization for the network parameters is performing normally.

    Automatic performance monitoring and health check of learning based wireless optimization framework

    公开(公告)号:US10959113B2

    公开(公告)日:2021-03-23

    申请号:US16398990

    申请日:2019-04-30

    Abstract: Network traffic data associated with computer applications is collected based on static policies. First network parameter vectors are generated over a time period. Each network parameter vector of the first network parameter vectors comprises first optimal values, estimated by a Bayesian learning module using a generative model, for network parameters. Second network parameter vectors are generated over the same time period. Each network parameter vector of the second network parameter vectors comprises second optimal values, computed by a best parameter generator through optimizing an objective function, for the network parameters. It is determined whether the first network parameter vectors converge to the second network parameter vectors and whether network parameter optimization for the network parameters is performing normally.

    AUTOMATIC PERFORMANCE MONITORING AND HEALTH CHECK OF LEARNING BASED WIRELESS OPTIMIZATION FRAMEWORK

    公开(公告)号:US20190261200A1

    公开(公告)日:2019-08-22

    申请号:US16398990

    申请日:2019-04-30

    Abstract: Network traffic data associated with computer applications is collected based on static policies. First network parameter vectors are generated over a time period. Each network parameter vector of the first network parameter vectors comprises first optimal values, estimated by a Bayesian learning module using a generative model, for network parameters. Second network parameter vectors are generated over the same time period. Each network parameter vector of the second network parameter vectors comprises second optimal values, computed by a best parameter generator through optimizing an objective function, for the network parameters. It is determined whether the first network parameter vectors converge to the second network parameter vectors and whether network parameter optimization for the network parameters is performing normally.

    AUTOMATIC PERFORMANCE MONITORING AND HEALTH CHECK OF LEARNING BASED WIRELESS OPTIMIZATION FRAMEWORK

    公开(公告)号:US20190141543A1

    公开(公告)日:2019-05-09

    申请号:US15803586

    申请日:2017-11-03

    CPC classification number: H04W24/02 H04W24/08

    Abstract: Network traffic data associated with computer applications is collected based on static policies. First network parameter vectors are generated over a time period. Each network parameter vector of the first network parameter vectors comprises first optimal values, estimated by a Bayesian learning module using a generative model, for network parameters. Second network parameter vectors are generated over the same time period. Each network parameter vector of the second network parameter vectors comprises second optimal values, computed by a best parameter generator through optimizing an objective function, for the network parameters. It is determined whether the first network parameter vectors converge to the second network parameter vectors and whether network parameter optimization for the network parameters is performing normally.

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