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NEGOTIATING MACHINE LEARNING MODEL INPUT FEATURES BASED ON COST IN CONSTRAINED NETWORKS

机译:基于约束网络的成本谈判机器学习模型输入特征

摘要

In one embodiment, a service receives a feature availability report indicative of which telemetry variables are available at a device in a network and resource costs associated with data features that the device could compute from the telemetry variables. The service selects at least a subset of the data features for input to a machine learning model, based on their associated resource costs and on their respective impacts on one or more performance metrics for the machine learning model. The service trains the machine learning model to evaluate the selected data features. The service sends the trained machine learning model to the device. The device computes the selected data features from the telemetry variables available at the device and uses the computed data features as input to the machine learning model.
机译:在一个实施例中,服务接收特征可用性报告,该报告指示在网络中的设备中可用的遥测变量可用,并且与设备可以从遥测变量计算的数据特征相关联的资源成本。该服务基于其相关资源成本以及对机器学习模型的一个或多个性能度量的各自影响,至少选择用于输入到机器学习模型的数据特征的子集。该服务培训机器学习模型来评估所选数据功能。该服务将培训的机器学习模型发送到设备。该设备从设备上可用的遥测变量计算所选择的数据特征,并使用计算的数据功能作为输入到机器学习模型的输入。

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