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HR3AM: A Heat Resilient Design for RRAM-based Neuromorphic Computing

机译:HR 3 AM:用于RRAM的神经形态计算的热弹性设计

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RRAM based accelerators have been widely adopted in many neuromorphic designs. However, RRAM cells are sensitive to temperature, which changes RRAM's conductance. Such heat-induced interference can significantly decrease the computational accuracy because values are functions of RRAM conductance. In this paper, we propose HR3 AM, a heat resilience design, which improves accuracy and optimizes the thermal distribution of RRAM based neural network accelerators. HR3 AM consists of two key mechanisms: bitwidth downgrading and tile pairing. Bitwidth downgrading re-represents weights by shifting the conductance to improve the network inference accuracy. Tile pairing matches hot crossbar units with pre-defined idle units to mitigate high-temperature issues. We evaluated HR3 AM on four real world neural network models. Results show that HR3 AM improves classification accuracy by up to 41.8% compared with current state-of-the-art designs. For thermal optimization, HR3AM effectively decreases the maximum temperature by 6.2K and average temperature by 6K.
机译:基于RRAM的加速器已被广泛采用许多神经形态设计。然而,RRAM细胞对温度敏感,改变RRAM的电导。这种热诱导的干扰可以显着降低计算精度,因为值是RRAM电导的功能。在本文中,我们提出了HR 3 AM,一种热弹性设计,可提高准确性并优化基于RRAM的神经网络加速器的热分布。人力资源 3 我由两个关键机制组成:BitWidth降级和瓷砖配对。 BitWidth降级通过移位电导来改善网络推理精度来重新表示重量。瓷砖配对与具有预定义空闲单位的热横杆单元匹配,以减轻高温问题。我们评估了人力资源 3 我是四个真实世界神经网络模型。结果表明HR 3 与目前的最先进的设计相比,我将分类准确提高至41.8%。用于热优化,HR 3 AM有效地将最大温度降低6.2k,平均温度6K。

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