Robust Rram-Based In-Memory Computing In Light Of Model Stability

2021 IEEE INTERNATIONAL RELIABILITY PHYSICS SYMPOSIUM (IRPS)(2021)

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摘要
Resistive random-access memory (RRAM)-based in-memory computing (IMC) architectures offer an energy-efficient solution for DNN acceleration. However, the performance of RRAM-based IMC is limited by device non-idealities, ADC precision, and algorithm properties. To address this, in this work, first, we perform statistical characterization of RRAM device variation and temporal degradation from 300mm wafers of a fully integrated CMOS/RRAM 1T1R test chip at 65nm. Through this, we build a realistic foundation to assess the robustness. Second, we develop a cross-layer simulation tool that incorporates device, circuit, architecture, and algorithm properties under a single roof for system evaluation. Finally, we propose a novel loss landscape-based DNN model selection for stability, which effectively tolerates device variations and achieves a post-mapping accuracy higher than that with 50% lower RRAM variations. We demonstrate the proposed method for different DNNs on both CIFAR-10 and CIFAR-100 datasets.
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关键词
In-Memory Computing, RRAM, Model Stability, Deep Neural Network, Robustness
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