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Brain-inspired computing exploiting carbon nanotube FETs and resistive RAM: Hyperdimensional computing case study

机译:利用碳纳米管FET和电阻式RAM的大脑启发式计算:超维计算案例研究

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We demonstrate an end-to-end brain-inspired hyperdimensional (HD) computing nanosystem, effective for cognitive tasks such as language recognition, using heterogeneous integration of multiple emerging nanotechnologies. It uses monolithic 3D integration of carbon nanotube field-effect transistors (CNFETs, an emerging logic technology with significant energy-delay product (EDP) benefit vs. silicon CMOS [1]) and Resistive RAM (RRAM, an emerging memory that promises dense non-volatile and analog storage [2]). Due to their low fabrication temperature (<;250°C), CNFETs and RRAM naturally enable monolithic 3D integration with fine-grained and dense vertical connections (exceeding various chip stacking and packaging approaches) between computation and storage layers using back-end-of-line inter-layer vias [3]. We exploit RRAM and CNFETs to create area-and energy-efficient circuits for HD computing: approximate accumulation circuits using gradual RRAM reset operation (in addition to RRAM single-bit storage) and random projection circuits that embrace inherent variations in RRAM and CNFETs. Our results demonstrate: 1. pairwise classification of 21 European languages with measured accuracy of up to 98% on >20,000 sentences (6.4 million characters) per language pair. 2. One-shot learning (i.e., learning from few examples) using one text sample (~100,000 characters) per language. 3. Resilient operation (98% accuracy) despite 78% hardware errors (circuit outputs stuck at 0 or 1). Our HD nanosystem consists of 1,952 CNFETs integrated with 224 RRAM cells.
机译:我们演示了端对端大脑启发性的超尺寸(HD)计算纳米系统,它使用多种新兴纳米技术的异构集成,可有效用于诸如语言识别之类的认知任务。它使用碳纳米管场效应晶体管(CNFET,与硅CMOS [1]相比具有显着的能量延迟产品(EDP)优势的新兴逻辑技术)和电阻式RAM(RRAM)的单片3D集成,而该RAM则有望实现密集的非存储。 -volatile和模拟存储[2])。由于其较低的制造温度(<; 250°C),CNFET和RRAM自然实现了单片3D集成,并使用后端的计算层和存储层之间的细粒度且密集的垂直连接(超越了各种芯片堆叠和封装方法)线层间通孔[3]。我们利用RRAM和CNFET来创建用于HD计算的面积和节能电路:使用渐进式RRAM复位操作(除RRAM单位存储之外)的近似累加电路,以及包含RRAM和CNFET固有变化的随机投影电路。我们的结果表明:1.对21种欧洲语言进行成对分类,每个语言对超过20,000个句子(640万个字符)的测量精度高达98%。 2.每种语言使用一个文本样本(约100,000个字符)的一次性学习(即从几个示例中学习)。 3.尽管有78%的硬件错误(电路输出卡在0或1上),但仍具有弹性操作(98%的精度)。我们的高清纳米系统由集成了224个RRAM单元的1,952个CNFET组成。

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