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Optimizing Pipelined Computation and Communication for Latency-Constrained Edge Learning

机译:针对延迟受限的边缘学习优化流水线计算和通信

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摘要

Consider a device that is connected to an edge processor via a communication channel. The device holds local data that is to be offloaded to the edge processor so as to train a machine learning model, e.g., for regression or classification. Transmission of the data to the learning processor, as well as training based on stochastic gradient descent (SGD), must be both completed within a time limit. Assuming that communication and computation can be pipelined, this letter investigates the optimal choice for the packet payload size, given the overhead of each data packet transmission and the ratio between the computation and the communication rates. This amounts to a tradeoff between bias and variance, since communicating the entire data set first reduces the bias of the training process but it may not leave sufficient time for learning. Analytical bounds on the expected optimality gap are derived so as to enable an effective optimization, which is validated in numerical results.
机译:考虑一个通过通信通道连接到边缘处理器的设备。该设备保存要卸载到边缘处理器的本地数据,以训练机器学习模型,例如,用于回归或分类。数据到学习处理器的传输以及基于随机梯度下降(SGD)的训练都必须在一个时限内完成。假设可以进行流水线通信和计算,考虑到每个数据包传输的开销以及计算速率与通信速率之间的比率,这封信将探讨数据包有效负载大小的最佳选择。这意味着在偏差和方差之间进行权衡,因为首先传递整个数据集会减少训练过程的偏差,但可能不会留出足够的时间进行学习。得出了预期的最优缺口的分析界限,以便能够进行有效的优化,这在数值结果中得到了验证。

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