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NEURAL ADAPTER FOR CLASSICAL MACHINE LEARNING (ML) MODELS

机译:用于古典机器学习(ML)型号的神经适配器

摘要

Solutions for adapting machine learning (ML) models to neural networks (NNs) include receiving an ML pipeline comprising a plurality of operators; determining operator dependencies within the ML pipeline; determining recognized operators; for each of at least two recognized operators, selecting a corresponding NN module from a translation dictionary; and wiring the selected NN modules in accordance with the operator dependencies to generate a translated NN. Some examples determine a starting operator for translation, which is the earliest recognized operator having parameters. Some examples connect inputs of the translated NN to upstream operators of the ML pipeline that had not been translated. Some examples further tune the translated NN using backpropagation. Some examples determine whether an operator is trainable or non-trainable and flag related parameters accordingly for later training. Some examples determine whether an operator has multiple corresponding NN modules within the translation dictionary and make an optimized selection.
机译:将机器学习(ML)模型适用于神经网络(NNS)的解决方案包括接收包括多个操作员的ML管道;确定ML管道内的操作员依赖性;确定公认的运营商;对于至少两个识别的运算符中的每一个,从翻译字典中选择相应的NN模块;并根据操作员依赖项来将所选择的NN模块接线以生成翻译的NN。一些示例确定翻译的起始运算符,这是具有参数的最早识别的操作员。一些示例将翻译的NN的输入连接到尚未翻译的ML管道的上游运算符。一些示例进一步调整了使用BackPropagation的翻译的NN。一些示例确定操作员是否是可培训或不可培训的,并且相应地为以后的训练训练。一些示例确定操作员在翻译中是否在翻译中具有多个对应的NN模块,并进行优化选择。

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