题目/Title:An Energy-Efficient Gain-Cell Embedded DRAM Design with Weight Encoding for CNN Applications
作者/Author:
Tao Huang, Run Run, Yi Hu, Li Yin, Liyang Pan, Guolin Li, Xiang Xie
会议/Conference:ICTA 2023
地点/Location:Hefei, China
年份/Issue Date:2023.27-29 Oct.
页码/pages:pp.1-2
摘要/Abstract:
In the inference process of convolutional neural networks (CNNs), reading weights from on-chip memory numerous times consumes a significant amount of energy, which is one of the bottlenecks for low-power design. Based on the analysis of the characteristics of CNN weight distribution and the reading mechanism of GC-eDRAM, an energy-efficient GC-eDRAM design with weight encoding is proposed for CNN inferences. By minimizing the instances of reading bit ‘1’, the proposed GC-eDRAM design achieves a reduction of energy dissipation in reading operations for CNNs, as indicated by the post-simulation results, with a decrease of 13.7% to 16.4%.