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Simulation of Inference Accuracy Using Realistic RRAM Devices

机译:使用现实的RRAM器件模拟推理精度

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摘要

Resistive Random Access Memory (RRAM) is a promising technology for power efficient hardware in applications of artificial intelligence (AI) and machine learning (ML) implemented in non-von Neumann architectures. However, there is an unanswered question if the device non-idealities preclude the use of RRAM devices in this potentially disruptive technology. Here we investigate the question for the case of inference. Using experimental results from silicon oxide (SiOx) RRAM devices, that we use as proxies for physical weights, we demonstrate that acceptable accuracies in classification of handwritten digits (MNIST data set) can be achieved using non-ideal devices. We find that, for this test, the ratio of the high- and low-resistance device states is a crucial determinant of classification accuracy, with ~96.8% accuracy achievable for ratios >3, compared to ~97.3% accuracy achieved with ideal weights. Further, we investigate the effects of a finite number of discrete resistance states, sub-100% device yield, devices stuck at one of the resistance states, current/voltage non-linearities, programming non-linearities and device-to-device variability. Detailed analysis of the effects of the non-idealities will better inform the need for the optimization of particular device properties.
机译:电阻随机存取存储器(RRAM)是一种有前景的技术,可用于在非冯·诺依曼体系结构中实现的人工智能(AI)和机器学习(ML)应用中的节能硬件。但是,存在一个未解决的问题,即设备的非理想性是否会阻止在这种潜在破坏性技术中使用RRAM设备。在这里,我们调查有关推理情况的问题。使用氧化硅(SiOx)RRAM设备的实验结果(我们用作物理权重的代理),我们证明了使用非理想设备可以实现手写数字(MNIST数据集)分类的可接受精度。我们发现,对于该测试,高阻设备状态和低阻设备状态的比率是分类精度的关键决定因素,比率> 3时可达到〜96.8%的准确度,而理想砝码可达到约97.3%的准确度。此外,我们研究了有限数量的离散电阻状态,低于100%的器件良率,器件卡在电阻状态之一,电流/电压非线性,编程非线性以及器件间差异的影响。对非理想因素的影响的详细分析将更好地告知优化特定器件性能的需求。

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