Wafer-Scale Taox Device Variability And Implications For Neuromorphic Computing Applications

2019 IEEE INTERNATIONAL RELIABILITY PHYSICS SYMPOSIUM (IRPS)(2019)

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摘要
Scaling arrays of non-volatile memory devices from academic demonstrations to reliable, manufacturable systems requires a better understanding of variability at array and wafer-scale levels. CrossSim models the accuracy of neural networks implemented on an analog resistive memory accelerator using the cycle-to-cycle variability of a single device. In this work, we extend this modeling tool to account for device-to-device variation in a realistic way, and evaluate the impact of this reliability issue in the context of neuromorphic online learning tasks.
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关键词
non-volatile memory, neuromorphic computing, device-to-device variability, wafer-scale reliability
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