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Design-technology co-optimization for OxRRAM-based synaptic processing unit

机译:基于OxRRAM的突触处理单元的设计技术协同优化

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In this paper, we present a design-technology tradeoff analysis to implement a fully connected neural network using non-volatile OxRRAM cells. The requirement of a high number of distinct levels in synaptic weight has been established as a primary bottleneck for using a single NVM as a synaptic unit. We propose a mixed-radix encoding system for a multi-device synaptic unit achieving high classification accuracy (94%) including device variability. To our knowledge, this is the first paper to discuss the tradeoff between single and multi-device synaptic weight in terms of design and technology using silicon data. We have demonstrated that high level of variability can be handled by the neuromorphic algorithm. The results presented in the paper has been obtained from 1Mb array.
机译:在本文中,我们提出了一种设计技术折衷分析,以使用非易失性OxRRAM单元实现完全连接的神经网络。对于使用单个NVM作为突触单位的主要瓶颈,已经确立了对突触重量具有大量不同水平的要求。我们提出了一种用于多设备突触单元的混合基数编码系统,该系统可实现包括设备可变性在内的高分类精度(94%)。据我们所知,这是第一篇讨论使用硅数据的设计和技术在单设备和多设备突触权重之间进行权衡的论文。我们已经证明,神经形态算法可以处理高水平的可变性。本文提供的结果是从1Mb阵列获得的。

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