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Hardware Architecture Exploration for Deep Neural Networks

Authors
Zheng, WenqiZhao, YangyiChen, YunfanPark, JinhongShin, Hyunchul
Issue Date
Oct-2021
Publisher
SPRINGER HEIDELBERG
Keywords
AI architecture; Neural network architecture; CNN; Design space exploration
Citation
ARABIAN JOURNAL FOR SCIENCE AND ENGINEERING, v.46, no.10, pp 9703 - 9712
Pages
10
Indexed
SCIE
SCOPUS
Journal Title
ARABIAN JOURNAL FOR SCIENCE AND ENGINEERING
Volume
46
Number
10
Start Page
9703
End Page
9712
URI
https://scholarworks.bwise.kr/erica/handle/2021.sw.erica/630
DOI
10.1007/s13369-021-05455-4
ISSN
2193-567X
2191-4281
Abstract
Owing to good performance, deep Convolution Neural Networks (CNNs) are rapidly rising in popularity across a broad range of applications. Since high accuracy CNNs are both computation intensive and memory intensive, many researchers have shown significant interest in the accelerator design. Furthermore, the AI chip market size grows and the competition on the performance, cost, and power consumption of the artificial intelligence SoC designs is increasing. Therefore, it is important to develop design techniques and platforms that are useful for the efficient design of optimized AI architectures to satisfy the given specifications in a short design time. In this research, we have developed design space exploration techniques and environments for the optimal design of the overall system including computing modules and memories. Our current design platform is built using NVIDIA Deep Learning Accelerator as a computing model, SRAM as a buffer, and DRAM with GDDR6 as an off-chip memory. We also developed a program to estimate the processing time of a given neural network. By modifying both the on-chip SRAM size and the computing module size, a designer can explore the design space efficiently, and then choose the optimal architecture which shows the minimal cost while satisfying the performance specification. To illustrate the operation of the design platform, two well-known deep CNNs are used, which are YOLOv3 and faster RCNN. This technology can be used to explore and to optimize the hardware architectures of the CNNs so that the cost can be minimized.
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