Back to Search Start Over

EG-STC: An Efficient Secure Two-Party Computation Scheme Based on Embedded GPU for Artificial Intelligence Systems.

Authors :
Zhenjiang Dong
Xin Ge
Yuehua Huang
Jiankuo Dong
Jiang Xu
Source :
Computers, Materials & Continua; 2024, Vol. 79 Issue 3, p4021-4044, 24p
Publication Year :
2024

Abstract

This paper presents a comprehensive exploration into the integration of Internet of Things (IoT), big data analysis, cloud computing, and Artificial Intelligence (AI), which has led to an unprecedented era of connectivity. We delve into the emerging trend of machine learning on embedded devices, enabling tasks in resource-limited environments. However, the widespread adoption of machine learning raises significant privacy concerns, necessitating the development of privacy-preserving techniques. One such technique, secure multi-party computation (MPC), allows collaborative computations without exposing private inputs. Despite its potential, complex protocols and communication interactions hinder performance, especially on resource-constrained devices. Efforts to enhance efficiency have been made, but scalability remains a challenge. Given the success of GPUs in deep learning, leveraging embedded GPUs, such as those offered by NVIDIA, emerges as a promising solution. Therefore, we propose an Embedded GPU-based Secure Two-party Computation (EG-STC) framework for Artificial Intelligence (AI) systems. To the best of our knowledge, this work represents the first endeavor to fully implement machine learning model training based on secure two-party computing on the Embedded GPU platform. Our experimental results demonstrate the effectiveness of EG-STC. On an embedded GPU with a power draw of 5 W, our implementation achieved a secure two-party matrix multiplication throughput of 5881.5 kilo-operations per millisecond (kops/ms), with an energy efficiency ratio of 1176.3 kops/ms/W. Furthermore, lever-aging our EG-STC framework, we achieved an overall time acceleration ratio of 5--6 times compared to solutions running on server-grade CPUs. Our solution also exhibited a reduced runtime, requiring only 60% to 70% of the runtime of previously best-known methods on the same platform. In summary, our research contributes to the advancement of secure and efficient machine learning implementations on resource-constrained embedded devices, paving the way for broader adoption of AI technologies in various applications. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
15462218
Volume :
79
Issue :
3
Database :
Complementary Index
Journal :
Computers, Materials & Continua
Publication Type :
Academic Journal
Accession number :
178256382
Full Text :
https://doi.org/10.32604/cmc.2024.049233