LGDCOct 14, 2022

Communication-Efficient Adam-Type Algorithms for Distributed Data Mining

arXiv:2210.07454v11 citationsh-index: 41
Originality Incremental advance
AI Analysis

This addresses the communication efficiency problem for distributed deep learning practitioners, offering an incremental improvement over existing gradient compression methods for adaptive optimizers.

The paper tackles the communication bottleneck in distributed data mining by proposing SketchedAMSGrad, a class of Adam-type algorithms that use sketching to reduce communication cost from O(d) to O(log(d)), achieving a convergence rate of O(1/√(nT) + 1/((k/d)^2 T)) with linear speedup relative to the number of workers.

Distributed data mining is an emerging research topic to effectively and efficiently address hard data mining tasks using big data, which are partitioned and computed on different worker nodes, instead of one centralized server. Nevertheless, distributed learning methods often suffer from the communication bottleneck when the network bandwidth is limited or the size of model is large. To solve this critical issue, many gradient compression methods have been proposed recently to reduce the communication cost for multiple optimization algorithms. However, the current applications of gradient compression to adaptive gradient method, which is widely adopted because of its excellent performance to train DNNs, do not achieve the same ideal compression rate or convergence rate as Sketched-SGD. To address this limitation, in this paper, we propose a class of novel distributed Adam-type algorithms (\emph{i.e.}, SketchedAMSGrad) utilizing sketching, which is a promising compression technique that reduces the communication cost from $O(d)$ to $O(\log(d))$ where $d$ is the parameter dimension. In our theoretical analysis, we prove that our new algorithm achieves a fast convergence rate of $O(\frac{1}{\sqrt{nT}} + \frac{1}{(k/d)^2 T})$ with the communication cost of $O(k \log(d))$ at each iteration. Compared with single-machine AMSGrad, our algorithm can achieve the linear speedup with respect to the number of workers $n$. The experimental results on training various DNNs in distributed paradigm validate the efficiency of our algorithms.

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