Hardware Approximate Techniques for Deep Neural Network Accelerators: A Survey

Author:

Armeniakos Giorgos1ORCID,Zervakis Georgios2,Soudris Dimitrios1,Henkel Jörg2

Affiliation:

1. National Technical University of Athens, Athens, Greece

2. Karlsruhe Institute of Technology, Karlsruhe, Germany

Abstract

Deep Neural Networks (DNNs) are very popular because of their high performance in various cognitive tasks in Machine Learning (ML). Recent advancements in DNNs have brought levels beyond human accuracy in many tasks, but at the cost of high computational complexity. To enable efficient execution of DNN inference, more and more research works, therefore, are exploiting the inherent error resilience of DNNs and employing Approximate Computing (AC) principles to address the elevated energy demands of DNN accelerators. This article provides a comprehensive survey and analysis of hardware approximation techniques for DNN accelerators. First, we analyze the state of the art, and by identifying approximation families, we cluster the respective works with respect to the approximation type. Next, we analyze the complexity of the performed evaluations (with respect to the dataset and DNN size) to assess the efficiency, potential, and limitations of approximate DNN accelerators. Moreover, a broad discussion is provided regarding error metrics that are more suitable for designing approximate units for DNN accelerators as well as accuracy recovery approaches that are tailored to DNN inference. Finally, we present how Approximate Computing for DNN accelerators can go beyond energy efficiency and address reliability and security issues as well.

Funder

German Research Foundation

ACCROSS: Approximate Computing aCROss the System Stack

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science,Theoretical Computer Science

Reference139 articles.

1. 9.1 A 7nm 4-Core AI Chip with 25.6TFLOPS Hybrid FP8 Training, 102.4TOPS INT4 Inference and Workload-Aware Throttling

2. A. Agrawal et al. 2019. DLFloat: A 16-b floating point format designed for deep learning training and inference. In 2019 IEEE 26th Symposium on Computer Arithmetic (ARITH’19). 92–95.

3. A. Al Bahou, G. Karunaratne, R. Andri, L. Cavigelli, and L. Benini. 2018. XNORBIN: A 95 TOp/s/W hardware accelerator for binary convolutional neural networks. In IEEE Symposium in Low-Power and High-Speed Chips. 1–3.

4. NPU Thermal Management

5. Renzo Andri, Lukas Cavigelli, Davide Rossi, and L. Benini. 2016. YodaNN: An ultra-low power convolutional neural network accelerator based on binary weights. In Computer Society Annual Symposium on VLSI (ISVLSI’16). 236–241.

Cited by 47 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. On energy complexity of fully-connected layers;Neural Networks;2024-10

2. A comprehensive exploration of approximate DNN models with a novel floating-point simulation framework;Performance Evaluation;2024-08

3. A Survey on Neural Network Hardware Accelerators;IEEE Transactions on Artificial Intelligence;2024-08

4. Deoxys: Defensive Approximate Computing for Secure Graph Neural Networks;2024 IEEE 35th International Conference on Application-specific Systems, Architectures and Processors (ASAP);2024-07-24

5. BitShare: An Efficient Precision-Scalable Accelerator with Combining-Like-Terms GEMM;2024 IEEE 35th International Conference on Application-specific Systems, Architectures and Processors (ASAP);2024-07-24

同舟云学术

1.学者识别学者识别

2.学术分析学术分析

3.人才评估人才评估

"同舟云学术"是以全球学者为主线,采集、加工和组织学术论文而形成的新型学术文献查询和分析系统,可以对全球学者进行文献检索和人才价值评估。用户可以通过关注某些学科领域的顶尖人物而持续追踪该领域的学科进展和研究前沿。经过近期的数据扩容,当前同舟云学术共收录了国内外主流学术期刊6万余种,收集的期刊论文及会议论文总量共计约1.5亿篇,并以每天添加12000余篇中外论文的速度递增。我们也可以为用户提供个性化、定制化的学者数据。欢迎来电咨询!咨询电话:010-8811{复制后删除}0370

www.globalauthorid.com

TOP

Copyright © 2019-2024 北京同舟云网络信息技术有限公司
京公网安备11010802033243号  京ICP备18003416号-3