ENHANCING MACHINE LEARNING PERFORMANCE: THE ROLE OF GPU-BASED AI COMPUTE ARCHITECTURES
##doi.readerDisplayName##:
https://doi.org/10.60087/jklst.vol3.n3.p40关键词:
embedded intelligence, GPU, multi-GPU, parallel architecture, machine learning摘要
This paper advances the field of GPU-based embedded intelligence (EI) by providing a comprehensive review of current and emerging architectures and applications. It covers key paradigms in GPU-based EI, focusing on architecture, technologies, and practical applications. The paper is structured as follows: (1) An overview and classification of GPU-based EI research, providing a broad perspective and concise summary of the paper's scope; (2) An in-depth discussion of various architectural technologies for GPU-based deep learning techniques and applications; and (3) A detailed examination of architectural technologies for GPU-based machine learning techniques and applications. This paper aims to offer valuable insights into the research area, encouraging further development of GPU-based EI for practical deployment and applications.
##plugins.themes.default.displayStats.downloads##
##submission.downloads##
已出版
期次
栏目
##submission.license##
##submission.copyrightStatement##
##submission.license.cc.by4.footer##©2024 All rights reserved by the respective authors and JKLST.