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Device placement optimization with reinforcement learning

机译:通过强化学习优化设备放置

摘要

A method for determining a placement for machine learning model operations across multiple hardware devices is described. The method includes receiving data specifying a machine learning model to be placed for distributed processing on multiple hardware devices; generating, from the data, a sequence of operation embeddings, each operation embedding in the sequence characterizing respective operations necessary to perform the processing of the machine learning model; processing the sequence of operation embeddings using a placement recurrent neural network in accordance with first values of a plurality network parameters of the placement recurrent neural network to generate a network output that defines a placement of the operations characterized by the operation embeddings in the sequence across the plurality of devices; and scheduling the machine learning model for processing by the multiple hardware devices by placing the operations on the multiple devices according to the placement defined by the network output.
机译:描述了一种用于确定用于跨多个硬件设备的机器学习模型操作的放置的方法。该方法包括:接收指定要放置以在多个硬件设备上进行分布式处理的机器学习模型的数据;以及从数据中生成一系列的操作嵌入,每个嵌入该操作的序列表征了执行机器学习模型的处理所需的各个操作;根据放置递归神经网络的多个网络参数的第一值,使用放置递归神经网络处理操作嵌入的序列,以生成网络输出,该网络输出定义了以嵌入在序列中的操作为特征的操作的放置多个设备;通过根据网络输出定义的放置在多个设备上的操作,调度机器学习模型以供多个硬件设备处理。

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