Byzantine-Resilient Gradient Coding through Local Gradient Computations

Christoph Hofmeister, Luis Maßny, Eitan Yaakobi, Rawad Bitar
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Abstract

We consider gradient coding in the presence of an adversary controlling so-called malicious workers trying to corrupt the computations. Previous works propose the use of MDS codes to treat the responses from malicious workers as errors and correct them using the error-correction properties of the code. This comes at the expense of increasing the replication, i.e., the number of workers each partial gradient is computed by. In this work, we propose a way to reduce the replication to $s+1$ instead of $2s+1$ in the presence of $s$ malicious workers. Our method detects erroneous inputs from the malicious workers, transforming them into erasures. This comes at the expense of $s$ additional local computations at the main node and additional rounds of light communication between the main node and the workers. We define a general framework and give fundamental limits for fractional repetition data allocations. Our scheme is optimal in terms of replication and local computation and incurs a communication cost that is asymptotically, in the size of the dataset, a multiplicative factor away from the derived bound. We furthermore show how additional redundancy can be exploited to reduce the number of local computations and communication cost, or, alternatively, tolerate straggling workers.
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通过局部梯度计算实现拜占庭弹性梯度编码
我们考虑的是在对手控制所谓的恶意工作者试图破坏计算的情况下进行梯度编码的问题。之前的研究提出使用 MDS 代码将恶意工作者的响应视为错误,并利用代码的纠错特性对其进行纠正。但这样做的代价是增加复制量,即每个部分梯度由多少个工作程序计算。在这项工作中,我们提出了一种方法,在存在 $s$ 恶意工作者的情况下,将复制量减少到 $s+1$,而不是 $2s+1$。我们的方法可以检测到恶意工作人员的错误输入,并将其转化为擦除。这样做的代价是,主节点需要额外进行 $s$ 的本地计算,主节点和工人之间还需要额外的轻量级通信。我们定义了一个通用框架,并给出了分数重复数据分配的基本限制。我们的方案在复制和本地计算方面都是最优的,而且产生的通信成本在数据集大小上与推导出的限值渐进地相差一个乘法因子。此外,我们还展示了如何利用额外的冗余来减少本地计算的次数和通信成本,或者如何容忍散兵游勇。
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