In-Memory and Error-Immune Differential RRAM Implementation of Binarized Deep Neural Networks

M. Bocquet, T. Hirtzlin, Jacques-Olivier Klein, E. Nowak, E. Vianello, J. Portal, D. Querlioz
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引用次数: 56

Abstract

RRAM-based in-Memory Computing is an exciting road for implementing highly energy efficient neural networks. This vision is however challenged by RRAM variability, as the efficient implementation of in-memory computing does not allow error correction. In this work, we fabricated and tested a differential HfO2-based memory structure and its associated sense circuitry, which are ideal for in-memory computing. For the first time, we show that our approach achieves the same reliability benefits as error correction, but without any CMOS overhead. We show, also for the first time, that it can naturally implement Binarized Deep Neural Networks, a very recent development of Artificial Intelligence, with extreme energy efficiency, and that the system is fully satisfactory for image recognition applications. Finally, we evidence how the extra reliability provided by the differential memory allows programming the devices in low voltage conditions, where they feature high endurance of billions of cycles.
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二值化深度神经网络的内存和免错误差分RRAM实现
基于随机存储器的内存计算是实现高能效神经网络的一条令人兴奋的道路。然而,这种愿景受到RRAM可变性的挑战,因为内存计算的有效实现不允许纠错。在这项工作中,我们制造并测试了基于hfo2的差分记忆结构及其相关的感觉电路,这是内存计算的理想选择。我们首次证明,我们的方法实现了与纠错相同的可靠性优势,但没有任何CMOS开销。我们也首次证明,它可以自然地实现二值化深度神经网络,这是人工智能的最新发展,具有极高的能源效率,并且该系统完全适合图像识别应用。最后,我们证明了差分存储器提供的额外可靠性如何允许在低电压条件下对设备进行编程,在低电压条件下,它们具有数十亿次循环的高耐久性。
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