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Long Live TIME: Improving Lifetime for Training-In-Memory Engines by Structured Gradient Sparsification

机译:长时间的休息时间:通过结构梯度稀疏化改善用于记忆训练引擎的寿命

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Deeper and larger Neural Networks (NNs) have made breakthroughs in many fields. While conventional CMOS-based computing platforms are hard to achieve higher energy efficiency. RRAM-based systems provide a promising solution to build efficient Training-In-Memory Engines (TIME). While the endurance of RRAM cells is limited, it's a severe issue as the weights of NN always need to be updated for thousands to millions of times during training. Gradient sparsification can address this problem by dropping off most of the smaller gradients but introduce unacceptable computation cost. We proposed an effective framework, SGS-ARS, including Structured Gradient Sparsification (SGS) and Aging-aware Row Swapping (ARS) scheme, to guarantee write balance across whole RRAM crossbars and prolong the lifetime of TIME. Our experiments demonstrate that 356× lifetime extension is achieved when TIME is programmed to train ResNet-50 on Imagenet dataset with our SGS-ARS framework.
机译:更深层次和更大的神经网络(NNS)在许多领域取得了突破。虽然传统的基于CMOS的计算平台很难实现更高的能效。基于RRAM的系统提供了一个有希望的解决方案来构建高效的内存引擎(时间)。虽然RRAM细胞的耐力是有限的,但由于NN的重量总是需要在训练期间始终需要更新数百万次的严重问题。梯度稀疏可以通过掉下大部分较小梯度来解决这个问题,但引入不可接受的计算成本。我们提出了一种有效的框架,SGS-ARS,包括结构化梯度稀疏(SGS)和老化感知行交换(ARS)方案,以保证整个RRAM横梁的写入余额并延长时间的寿命。我们的实验表明,当时间被编程为使用我们的SGS-ARS框架将Reset-50训练Reset-50时,实现了356×寿命扩展。

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