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A Survey on Approximate Multiplier Designs for Energy Efficiency: From Algorithms to Circuits (2301.12181v2)

Published 28 Jan 2023 in cs.AR

Abstract: Given the stringent requirements of energy efficiency for Internet-of-Things edge devices, approximate multipliers, as a basic component of many processors and accelerators, have been constantly proposed and studied for decades, especially in error-resilient applications. The computation error and energy efficiency largely depend on how and where the approximation is introduced into a design. Thus, this article aims to provide a comprehensive review of the approximation techniques in multiplier designs ranging from algorithms and architectures to circuits. We have implemented representative approximate multiplier designs in each category to understand the impact of the design techniques on accuracy and efficiency. The designs can then be effectively deployed in high-level applications, such as machine learning, to gain energy efficiency at the cost of slight accuracy loss.

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Authors (9)
  1. Ying Wu (134 papers)
  2. Chuangtao Chen (9 papers)
  3. Weihua Xiao (3 papers)
  4. Xuan Wang (205 papers)
  5. Chenyi Wen (1 paper)
  6. Jie Han (93 papers)
  7. Xunzhao Yin (35 papers)
  8. Weikang Qian (9 papers)
  9. Cheng Zhuo (47 papers)
Citations (18)

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