作者
Geng Yuan, Payman Behnam, Zhengang Li, Ali Shafiee, Xiaolong Ma, Hang Liu, Xuehai Qian, Mahdi Bojnordi, Yanzhi Wang, Caiwen Ding
发表日期
2021/6
研讨会论文
(ISCA'21) The 48th International Symposium on Computer Architecture, 2021
简介
Recent work demonstrated the promise of using resistive random access memory (ReRAM) as an emerging technology to perform inherently parallel analog domain in-situ matrix-vector multiplication—the intensive and key computation in deep neural networks (DNNs). One key problem is the weights that are signed values. However, in a ReRAM crossbar, weights are stored as conductance of the crossbar cells, and the in-situ computation assumes all cells on each crossbar column are of the same sign. The current architectures either use two ReRAM crossbars for positive and negative weights (PRIME), or add an offset to weights so that all values become positive (ISAAC). Neither solution is ideal: they either double the cost of crossbars, or incur extra offset circuity. To better address this problem, we propose FORMS, a fine-grained ReRAM-based DNN accelerator with algorithm/hardware co-design. Instead of trying to …
引用总数
学术搜索中的文章
G Yuan, P Behnam, Z Li, A Shafiee, S Lin, X Ma, H Liu… - 2021 ACM/IEEE 48th Annual International Symposium …, 2021