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Poster
in
Workshop: NeurIPS 2023 Workshop on Tackling Climate Change with Machine Learning: Blending New and Existing Knowledge Systems

DeepEn2023: Energy Datasets for Edge Artificial Intelligence

XIAOLONG TU · ANIK MALLIK · Jiang Xie · Haoxin Wang


Abstract: Climate change poses one of the most significant challenges to humanity. As a result of these climatic shifts,the frequency of weather, climate, and water-related disasters has multiplied fivefold over the past 50 years, resulting in over 2$ million deaths and losses exceeding U.S. $3.64 trillion.Leveraging AI-powered technologies for sustainable development and combating climate change is a promising avenue. Numerous significant publications are dedicated to using AI to improve renewable energy forecasting, enhance waste management, and monitor environmental changes in real-time. However, very few research studies focus on making AI itself environmentally sustainable. This oversight regarding the sustainability of AI within the field might be attributed to a mindset gap and the absence of comprehensive energy datasets. In addition, with the ubiquity of edge AI systems and applications, especially on-device learning, there is a pressing need to measure, analyze, and optimize their environmental sustainability, such as energy efficiency.To this end, in this paper, we propose large-scale energy datasets for edge AI, named DeepEn2023, covering a wide range of kernels, state-of-the-art deep neural network models, and popular edge AI applications.We anticipate that DeepEn2023 will enhance transparency regarding sustainability in on-device deep learning across a range of edge AI systems and applications.

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