近似梯度编码的基本极限

Sinong Wang, Jiashang Liu, N. Shroff
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引用次数: 2

摘要

在分布式梯度编码问题中,已经确定,要准确恢复s台慢机下的梯度,每个worker的最小计算负载(存储数据分区数)至少是线性的($s+1$),当s很大时,会产生很大的开销[13]。在本文中,我们重点研究近似梯度编码,旨在恢复具有有界误差ε的梯度。在理论上,我们的主要贡献有三方面:(i)分析了最优梯度码的结构,推导出最小计算负荷的信息理论下界:ε = 0时O(log(n)/log(n/s)), ε>0时d≥O(log(1/ε)/log(n/s)),其中d为计算负荷,ε为梯度计算误差;(ii)基于随机边缘去除过程,设计了两种精确匹配下界的近似梯度编码方案;(iii)我们实现了我们的方案,并证明了这些方法相对于目前最快的梯度编码策略的优势。所提出的方案在计算负载方面提供了对现有技术的顺序改进,并且在计算负载和延迟方面也是最佳的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fundamental Limits of Approximate Gradient Coding
In the distributed graident coding problem, it has been established that, to exactly recover the gradient under s slow machines, the mmimum computation load (number of stored data partitions) of each worker is at least linear ($s+1$), which incurs a large overhead when s is large[13]. In this paper, we focus on approximate gradient coding that aims to recover the gradient with bounded error ε. Theoretically, our main contributions are three-fold: (i) we analyze the structure of optimal gradient codes, and derive the information-theoretical lower bound of minimum computation load: O(log(n)/log(n/s)) for ε = 0 and d≥ O(log(1/ε)/log(n/s)) for ε>0, where d is the computation load, and ε is the error in the gradient computation; (ii) we design two approximate gradient coding schemes that exactly match such lower bounds based on random edge removal process; (iii) we implement our schemes and demonstrate the advantage of the approaches over the current fastest gradient coding strategies. The proposed schemes provide order-wise improvement over the state of the art in terms of computation load, and are also optimal in terms of both computation load and latency.
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