Optimization of Parameter Values for Machine-Learned Models

    公开(公告)号:US20200167691A1

    公开(公告)日:2020-05-28

    申请号:US16615303

    申请日:2017-06-02

    Applicant: Google LLC

    Abstract: A computer-implemented method can include receiving, by one or more computing devices, one or more prior evaluations of performance of a machine learning model, the one or more prior evaluations being respectively associated with one or more prior variants of the machine-learning model, the one or more prior variants of the machine-learning model each having been configured using a different set of adjustable parameter values. The method can include utilizing, by the one or more computing devices, an optimization algorithm to generate a suggested variant of the machine-learning model based at least in part on the one or more prior evaluations of performance and the associated set of adjustable parameter values, the suggested variant of the machine-learning model being defined by a suggested set of adjustable parameter values.

    Optimization of parameters of a system, product, or process

    公开(公告)号:US12032464B2

    公开(公告)日:2024-07-09

    申请号:US16495295

    申请日:2017-06-02

    Applicant: Google LLC

    CPC classification number: G06F11/3409 G06F11/3006 G06N5/01 G06N7/01 G06N20/00

    Abstract: A computer-implemented method is provided for optimization of parameters of a system, product, or process. The method includes establishing an optimization procedure for a system, product, or process. The system, product, or process has an evaluable performance that is dependent on values of one or more adjustable parameters. The method includes receiving one or more prior evaluations of performance of the system, product, or process. The one or more prior evaluations are respectively associated with one or more prior variants of the system, product, or process. The one or more prior variants are each defined by a set of values for the one or more adjustable parameters. The method includes utilizing an optimization algorithm to generate a suggested variant based at least in part on the one or more prior evaluations of performance and the associated set of values.

    Optimization of parameter values for machine-learned models

    公开(公告)号:US12026612B2

    公开(公告)日:2024-07-02

    申请号:US16615303

    申请日:2017-06-02

    Applicant: Google LLC

    CPC classification number: G06N3/08 G06N7/01 G06N20/00

    Abstract: A computer-implemented method can include receiving, by one or more computing devices, one or more prior evaluations of performance of a machine learning model, the one or more prior evaluations being respectively associated with one or more prior variants of the machine-learning model, the one or more prior variants of the machine-learning model each having been configured using a different set of adjustable parameter values. The method can include utilizing, by the one or more computing devices, an optimization algorithm to generate a suggested variant of the machine-learning model based at least in part on the one or more prior evaluations of performance and the associated set of adjustable parameter values, the suggested variant of the machine-learning model being defined by a suggested set of adjustable parameter values.

    Optimization of Parameter Values for Machine-Learned Models

    公开(公告)号:US20230342609A1

    公开(公告)日:2023-10-26

    申请号:US18347406

    申请日:2023-07-05

    Applicant: Google LLC

    CPC classification number: G06N3/08 G06N20/00 G06N7/01

    Abstract: The present disclosure provides computing systems and associated methods for optimizing one or more adjustable parameters (e.g. operating parameters) of a system. In particular, the present disclosure provides a parameter optimization system that can perform one or more black-box optimization techniques to iteratively suggest new sets of parameter values for evaluation. The iterative suggestion and evaluation process can serve to optimize or otherwise improve the overall performance of the system, as evaluated by an objective function that evaluates one or more metrics. The present disclosure also provides a novel black-box optimization technique known as “Gradientless Descent” that is more clever and faster than random search yet retains most of random search's favorable qualities.

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