日本語
 
Help Privacy Policy ポリシー/免責事項
  詳細検索ブラウズ

アイテム詳細

  Random and Adversarial Bit Error Robustness: Energy-Efficient and Secure DNN Accelerators

Stutz, D., Chandramoorthy, N., Hein, M., & Schiele, B. (2021). Random and Adversarial Bit Error Robustness: Energy-Efficient and Secure DNN Accelerators. Retrieved from https://arxiv.org/abs/2104.08323.

Item is

基本情報

表示: 非表示:
アイテムのパーマリンク: https://hdl.handle.net/21.11116/0000-0009-8108-C 版のパーマリンク: https://hdl.handle.net/21.11116/0000-0009-8109-B
資料種別: 成果報告書
LaTeX : Random and Adversarial Bit Error Robustness: {E}nergy-Efficient and Secure {DNN} Accelerators

ファイル

表示: ファイル
非表示: ファイル
:
arXiv:2104.08323.pdf (プレプリント), 3MB
ファイルのパーマリンク:
https://hdl.handle.net/21.11116/0000-0009-810A-A
ファイル名:
arXiv:2104.08323.pdf
説明:
File downloaded from arXiv at 2021-11-22 09:36 arXiv admin note: substantial text overlap with arXiv:2006.13977
OA-Status:
Not specified
閲覧制限:
公開
MIMEタイプ / チェックサム:
application/pdf / [MD5]
技術的なメタデータ:
著作権日付:
-
著作権情報:
© 2023 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses, in any current or future media, including reprinting/republishing this material for advertising or promotional purposes, creating new collective works, for resale or redistribution to servers or lists, or reuse of any copyrighted component of this work in other works

関連URL

表示:

作成者

表示:
非表示:
 作成者:
Stutz, David1, 著者           
Chandramoorthy, Nandhini2, 著者
Hein, Matthias2, 著者
Schiele, Bernt1, 著者           
所属:
1Computer Vision and Machine Learning, MPI for Informatics, Max Planck Society, ou_1116547              
2External Organizations, ou_persistent22              

内容説明

表示:
非表示:
キーワード: Computer Science, Learning, cs.LG,Computer Science, Architecture, cs.AR,Computer Science, Cryptography and Security, cs.CR,Computer Science, Computer Vision and Pattern Recognition, cs.CV
 要旨: Deep neural network (DNN) accelerators received considerable attention in
recent years due to the potential to save energy compared to mainstream
hardware. Low-voltage operation of DNN accelerators allows to further reduce
energy consumption significantly, however, causes bit-level failures in the
memory storing the quantized DNN weights. Furthermore, DNN accelerators have
been shown to be vulnerable to adversarial attacks on voltage controllers or
individual bits. In this paper, we show that a combination of robust
fixed-point quantization, weight clipping, as well as random bit error training
(RandBET) or adversarial bit error training (AdvBET) improves robustness
against random or adversarial bit errors in quantized DNN weights
significantly. This leads not only to high energy savings for low-voltage
operation as well as low-precision quantization, but also improves security of
DNN accelerators. Our approach generalizes across operating voltages and
accelerators, as demonstrated on bit errors from profiled SRAM arrays, and
achieves robustness against both targeted and untargeted bit-level attacks.
Without losing more than 0.8%/2% in test accuracy, we can reduce energy
consumption on CIFAR10 by 20%/30% for 8/4-bit quantization using RandBET.
Allowing up to 320 adversarial bit errors, AdvBET reduces test error from above
90% (chance level) to 26.22% on CIFAR10.

資料詳細

表示:
非表示:
言語: eng - English
 日付: 2021-04-162021
 出版の状態: オンラインで出版済み
 ページ: 39 p.
 出版情報: -
 目次: -
 査読: -
 識別子(DOI, ISBNなど): arXiv: 2104.08323
URI: https://arxiv.org/abs/2104.08323
BibTex参照ID: Stutz2104.08323
 学位: -

関連イベント

表示:

訴訟

表示:

Project information

表示:

出版物

表示: