横杆开关
延迟(音频)
计算机科学
卷积(计算机科学)
并行计算
低延迟(资本市场)
人工智能
电信
计算机网络
人工神经网络
作者
Hasita Veluri,Umesh Chand,Chun-Kuei Chen,Aaron Thean
标识
DOI:10.1109/tnnls.2023.3327122
摘要
Analog resistive random access memory (RRAM) devices enable parallelized nonvolatile in-memory vector-matrix multiplications for neural networks eliminating the bottlenecks posed by von Neumann architecture. While using RRAMs improves the accelerator performance and enables their deployment at the edge, the high tuning time needed to update the RRAM conductance states adds significant burden and latency to real-time system training. In this article, we develop an in-memory discrete Fourier transform (DFT)-based convolution methodology to reduce system latency and input regeneration. By storing the static DFT/inverse DFT (IDFT) coefficients within the analog arrays, we keep digital computational operations using digital circuits to a minimum. By performing the convolution in reciprocal Fourier space, our approach minimizes connection weight updates, which significantly accelerates both neural network training and interference. Moreover, by minimizing RRAM conductance update frequency, we mitigate the endurance limitations of resistive nonvolatile memories. We show that by leveraging the symmetry and linearity of DFT/IDFTs, we can reduce the power by for convolution over conventional execution. The designed hardware-aware deep neural network (DNN) inference accelerator enhances the peak power efficiency by and area efficiency by over state-of-the-art accelerators. This article paves the way for ultrafast, low-power, compact hardware accelerators.
科研通智能强力驱动
Strongly Powered by AbleSci AI