Error Resilient Transformers: A Novel Soft Error Vulnerability Guided Approach to Error Checking and Suppression

Kwondo Ma, C. Amarnath, A. Chatterjee
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引用次数: 0

Abstract

Transformer networks have achieved remarkable success in Natural Language Processing (NLP) and Computer Vision applications. However, the underlying large volumes of Transformer computations demand high reliability and resilience to soft errors in processor hardware. The objective of this research is to develop efficient techniques for design of error resilient Transformer architectures. To enable this, we first perform a soft error vulnerability analysis of every fully connected layers in Transformer computations. Based on this study, error detection and suppression modules are selectively introduced into datapaths to restore Transformer performance under anticipated error rate conditions. Memory access errors and neuron output errors are detected using checksums of linear Transformer computations. Correction consists of determining output neurons with out-of-range values and suppressing the same to zero. For a Transformer with nominal BLEU score of 52.7, such vulnerability guided selective error suppression can recover language translation performance from a BLEU score of 0 to 50.774 with as much as 0.001 probability of activation error, incurring negligible memory and computation overheads.
错误弹性变压器:一种新的软错误漏洞导向的错误检测与抑制方法
变压器网络在自然语言处理(NLP)和计算机视觉应用方面取得了显著的成功。然而,底层的大量Transformer计算需要对处理器硬件中的软错误具有高可靠性和弹性。本研究的目的是开发有效的技术设计误差弹性变压器架构。为了启用这一点,我们首先对Transformer计算中的每个完全连接的层执行软错误漏洞分析。在此基础上,有选择地在数据路径中引入错误检测和抑制模块,以在预期错误率条件下恢复Transformer的性能。使用线性变压器计算的校验和来检测存储器访问错误和神经元输出错误。校正包括确定输出值超出范围的神经元并将其抑制为零。对于一个名义BLEU分数为52.7的Transformer,这种漏洞引导的选择性错误抑制可以在BLEU分数为0到50.774的情况下恢复语言翻译性能,激活错误的概率高达0.001,产生的内存和计算开销可以忽略不计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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