Domain Wall Memory-Based Design of Deep Neural Network Convolutional Layers
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6

초록

In the hardware implementation of deep learning algorithms such as, convolutional neural networks (CNNs) and binarized neural networks (BNNs), multiple dot products and memories for storing parameters take a significant portion of area and power consumption. In this paper, we propose a domain wall memory (DWM) based design of CNN and BNN convolutional layers. In the proposed design, the resistive cell sensing mechanism is efficiently exploited to design low-cost DWM-based cell arrays for storing parameters. The unique serial access mechanism and small footprint of DWM are also used to reduce the area and energy cost of DWM-based design for filter sliding. Simulation results with 65 nm CMOS process show 45% and 43% of energy savings compared to the conventional CNN and BNN design approach, respectively.

키워드

Binarized neural networkconvolutional neural networkdeep neural networkdomain wall memory
제목
Domain Wall Memory-Based Design of Deep Neural Network Convolutional Layers
저자
Chung, JinilChoi, WoongPark, JongsunGhosh, Swaroop
DOI
10.1109/ACCESS.2020.2968081
발행일
2020-01
유형
Article
저널명
IEEE Access
8
페이지
19783 ~ 19798