PARAMETER AND STATE INITIALIZATION FOR MODEL TRAINING

    公开(公告)号:US20230281362A1

    公开(公告)日:2023-09-07

    申请号:US17649472

    申请日:2022-01-31

    CPC classification number: G06F30/27

    Abstract: A set of conditions is defined that to be simulated via execution of a machine-learning model. For each condition, a set of learnable condition-specific parameters is identified to configure a model architecture. A first learnable condition-specific parameter associated with a first condition of the set of conditions can be identified a shared or global parameter that is to have a same value as at least another learnable condition-specific parameter (associated with another condition). One or more parameter data structures can be configured with parameter values for the sets of condition-specific parameters for the sets of conditions, where the configuration imposes a constraint that a value for the first condition-specific parameter and the at least one value for the at least one other condition-specific parameter are the same. The machine-learning model can be trained using the configured parameter data structure(s).

    Scalable experimental workflow for parameter estimation

    公开(公告)号:US11688487B2

    公开(公告)日:2023-06-27

    申请号:US16527380

    申请日:2019-07-31

    CPC classification number: G16B5/00 C12M41/32 C12M41/36 C12M41/46 G16B40/00

    Abstract: The present disclosure relates to a scalable experimental workflow that uses a culture system to maintain a steady state in a biological system, and techniques for identifying values for parameters in a in silico model based on experimental data obtained from the biological system. Particularly, aspects of the present disclosure are directed to obtaining measurement data for one or more characteristics of a biological system developed in a culture system, where the measurement data is indicative of each of the one or more characteristics at a physiological steady state where growth of the biological system is occurring at a substantially constant growth rate, determining a value for a parameter of a model of the biological system based on an growth formula, the measurement data, and the substantially constant growth rate, and parametrizing the model with at least the value determined for the parameter.

    SCALABLE EXPERIMENTAL WORKFLOW FOR PARAMETER ESTIMATION

    公开(公告)号:US20210035655A1

    公开(公告)日:2021-02-04

    申请号:US16527380

    申请日:2019-07-31

    Abstract: The present disclosure relates to a scalable experimental workflow that uses a culture system to maintain a steady state in a biological system, and techniques for identifying values for parameters in a in silico model based on experimental data obtained from the biological system. Particularly, aspects of the present disclosure are directed to obtaining measurement data for one or more characteristics of a biological system developed in a culture system, where the measurement data is indicative of each of the one or more characteristics at a physiological steady state where growth of the biological system is occurring at a substantially constant growth rate, determining a value for a parameter of a model of the biological system based on an growth formula, the measurement data, and the substantially constant growth rate, and parametrizing the model with at least the value determined for the parameter.

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