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Reconfigurable Digital RRAM Logic Enables In-Situ Pruning and Learning for Edge AI

Reconfigurable Digital RRAM Logic Enables In-Situ Pruning and Learning for Edge AI

来源:Arxiv_logoArxiv
英文摘要

The human brain simultaneously optimizes synaptic weights and topology by growing, pruning, and strengthening synapses while performing all computation entirely in memory. In contrast, modern artificial-intelligence systems separate weight optimization from topology optimization and depend on energy-intensive von Neumann architectures. Here, we present a software-hardware co-design that bridges this gap. On the algorithmic side, we introduce a real-time dynamic weight-pruning strategy that monitors weight similarity during training and removes redundancies on the fly, reducing operations by 26.80% on MNIST and 59.94% on ModelNet10 without sacrificing accuracy (91.44% and 77.75%, respectively). On the hardware side, we fabricate a reconfigurable, fully digital compute-in-memory (CIM) chip based on 180 nm one-transistor-one-resistor (1T1R) RRAM arrays. Each array embeds flexible Boolean logic (NAND, AND, XOR, OR), enabling both convolution and similarity evaluation inside memory and eliminating all ADC/DAC overhead. The digital design achieves zero bit-error, reduces silicon area by 72.30% and overall energy by 57.26% compared to analogue RRAM CIM, and lowers energy by 75.61% and 86.53% on MNIST and ModelNet10, respectively, relative to an NVIDIA RTX 4090. Together, our co-design establishes a scalable brain-inspired paradigm for adaptive, energy-efficient edge intelligence in the future.

Songqi Wang、Yue Zhang、Jia Chen、Xinyuan Zhang、Yi Li、Ning Lin、Yangu He、Jichang Yang、Yingjie Yu、Yi Li、Zhongrui Wang、Xiaojuan Qi、Han Wang

半导体技术微电子学、集成电路计算技术、计算机技术

Songqi Wang,Yue Zhang,Jia Chen,Xinyuan Zhang,Yi Li,Ning Lin,Yangu He,Jichang Yang,Yingjie Yu,Yi Li,Zhongrui Wang,Xiaojuan Qi,Han Wang.Reconfigurable Digital RRAM Logic Enables In-Situ Pruning and Learning for Edge AI[EB/OL].(2025-06-16)[2025-07-17].https://arxiv.org/abs/2506.13151.点此复制

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