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Near-Optimal Straggler Mitigation for Distributed Gradient Methods

机译:分布式梯度法的近乎理想的Straggler缓解

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Modern learning algorithms use gradient descent updates to train inferential models that best explain data. Scaling these approaches to massive data sizes requires proper distributed gradient descent schemes where distributed worker nodes compute partial gradients based on their partial and local data sets, and send the results to a master node where all the computations are aggregated into a full gradient and the learning model is updated. However, a major performance bottleneck that arises is that some of the worker nodes may run slow. These nodes a.k.a. stragglers can significantly slow down computation as the slowest node may dictate the overall computational time. We propose a distributed computing scheme, called Batched Coupon's Collector (BCC) to alleviate the effect of stragglers in gradient methods. We prove that our BCC scheme is robust to a near optimal number of random stragglers. We also empirically demonstrate that our proposed BCC scheme reduces the run-time by up to 85.4% over Amazon EC2 clusters when compared with other straggler mitigation strategies. We also generalize the proposed BCC scheme to minimize the completion time when implementing gradient descent-based algorithms over heterogeneous worker nodes.
机译:现代学习算法使用梯度下降更新来训练最能解释数据的推理模型。将这些方法扩展为海量数据需要适当的分布式梯度下降方案,其中分布式工作节点根据其局部和局部数据集计算局部梯度,并将结果发送到主节点,在该节点上所有计算都汇总为一个完整的梯度,并进行学习模型已更新。但是,出现的主要性能瓶颈是某些工作程序节点可能运行缓慢。由于最慢的节点可能会决定总体计算时间,因此这些节点(也称为straggler)可能会显着减慢计算速度。我们提出了一种称为批处理优惠券收集器(BCC)的分布式计算方案,以减轻散乱者在梯度方法中的影响。我们证明了我们的BCC方案对于接近最佳数量的随机散乱者具有鲁棒性。我们还凭经验证明,与其他散乱缓解策略相比,我们提出的BCC方案与Amazon EC2集群相比,可将运行时间减少多达85.4%。当在异构工作节点上实现基于梯度下降的算法时,我们还对提出的BCC方案进行了概括,以最大程度地减少完成时间。

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