用于良品率恢复的 RRAM 尖峰神经网络的特征驱动制造后测试与调谐

Anurup Saha, C. Amarnath, Kwondo Ma, Abhijit Chatterjee
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引用次数: 0

摘要

基于电阻式随机存取存储器(RRAM)的尖峰神经网络(SNN)对普遍的高能效分类任务越来越有吸引力。然而,由于制造 RRAM 器件时工艺变化的影响,此类网络的性能(由分类准确性决定)会下降,导致制造良率损失。为了解决这种产量损失问题,我们开发了一种分两步走的方法。首先,使用另一种测试框架,利用 SNN 对测试图像数据集中一小部分图像的响应(称为 SNN 响应特征,以最大限度地降低测试成本)来预测基于制造的 RRAM SNN 的性能。这样就能诊断出哪些 SNN 需要进行性能调整以恢复良率。接下来,SNN 的调整是通过逐层调制 SNN 神经元的尖峰阈值来进行的,使用训练有素的回归器将 SNN 响应特征映射到调整期间的最佳尖峰阈值。最佳尖峰阈值由离线优化算法确定。实验表明,所提出的框架可将不合规格的 SNN 器件数量减少 54%,产量提高 8.6%。
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Signature Driven Post-Manufacture Testing and Tuning of RRAM Spiking Neural Networks for Yield Recovery
Resistive random access Memory (RRAM) based spiking neural networks (SNN) are becoming increasingly attractive for pervasive energy-efficient classification tasks. However, such networks suffer from degradation of performance (as determined by classification accuracy) due to the effects of process variations on fabricated RRAM devices resulting in loss of manufacturing yield. To address such yield loss, a two-step approach is developed. First, an alternative test framework is used to predict the performance of fabricated RRAM based SNNs using the SNN response to a small subset of images from the test image dataset, called the SNN response signature (to minimize test cost). This diagnoses those SNNs that need to be performance-tuned for yield recovery. Next, SNN tuning is performed by modulating the spiking thresholds of the SNN neurons on a layer-by-layer basis using a trained regressor that maps the SNN response signature to the optimal spiking threshold values during tuning. The optimal spiking threshold values are determined by an off-line optimization algorithm. Experiments show that the proposed framework can reduce the number of out-of-spec SNN devices by up to 54% and improve yield by as much as 8.6%.
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