|国家预印本平台
首页|Energy-Aware Deep Learning on Resource-Constrained Hardware

Energy-Aware Deep Learning on Resource-Constrained Hardware

Energy-Aware Deep Learning on Resource-Constrained Hardware

来源:Arxiv_logoArxiv
英文摘要

The use of deep learning (DL) on Internet of Things (IoT) and mobile devices offers numerous advantages over cloud-based processing. However, such devices face substantial energy constraints to prolong battery-life, or may even operate intermittently via energy-harvesting. Consequently, \textit{energy-aware} approaches for optimizing DL inference and training on such resource-constrained devices have garnered recent interest. We present an overview of such approaches, outlining their methodologies, implications for energy consumption and system-level efficiency, and their limitations in terms of supported network types, hardware platforms, and application scenarios. We hope our review offers a clear synthesis of the evolving energy-aware DL landscape and serves as a foundation for future research in energy-constrained computing.

Josh Millar、Hamed Haddadi、Anil Madhavapeddy

电子技术应用

Josh Millar,Hamed Haddadi,Anil Madhavapeddy.Energy-Aware Deep Learning on Resource-Constrained Hardware[EB/OL].(2025-05-18)[2025-06-24].https://arxiv.org/abs/2505.12523.点此复制

评论