The sustained growth of carbon emissions and global waste elicits significant sustainability concerns for our environment's future. The growing Internet of Things (IoT) has the potential to exacerbate this issue. However, an emerging area known as Tiny Machine Learning (TinyML) has the opportunity to help address these environmental challenges through sustainable computing practices. TinyML, the deployment of machine learning (ML) algorithms onto low-cost, low-power microcontroller systems, enables on-device sensor analytics that unlocks numerous always-on ML applications. This article discusses the potential of these TinyML applications to address critical sustainability challenges. Moreover, the footprint of this emerging technology is assessed through a complete life cycle analysis of TinyML systems. From this analysis, TinyML presents opportunities to offset its carbon emissions by enabling applications that reduce the emissions of other sectors. Nevertheless, when globally scaled, the carbon footprint of TinyML systems is not negligible, necessitating that designers factor in environmental impact when formulating new devices. Finally, research directions for enabling further opportunities for TinyML to contribute to a sustainable future are outlined.
翻译:碳排放和全球废物的持续增长引起了我们环境未来的重大可持续性关切。不断增长的“物联网”(IoT)有可能加剧这一问题。然而,一个被称为小机器学习(TinyML)的新兴领域有机会通过可持续计算做法帮助应对这些环境挑战。TinyML,将机器学习(ML)算法运用到低成本、低功率微控制器系统中,使得在设计新装置时,设计者必须把环境影响因素纳入环境因素中。最后,还概述了研究方向,为小ML提供更多机会,为可持续的未来作出贡献。