cs.AI updates on arXiv.org 10月03日 12:18
绿色AI:小模型节能新趋势
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本文探讨绿色AI的发展趋势,通过选择高效的小模型进行推理,实现节能减排,分析不同AI任务和模型的选择对能源消耗的影响,预测模型选择可能降低AI能耗27.8%,节省31.9太瓦时电力。

arXiv:2510.01889v1 Announce Type: cross Abstract: The energy consumption and carbon footprint of Artificial Intelligence (AI) have become critical concerns due to rising costs and environmental impacts. In response, a new trend in green AI is emerging, shifting from the "bigger is better" paradigm, which prioritizes large models, to "small is sufficient", emphasizing energy sobriety through smaller, more efficient models. We explore how the AI community can adopt energy sobriety today by focusing on model selection during inference. Model selection consists of choosing the most appropriate model for a given task, a simple and readily applicable method, unlike approaches requiring new hardware or architectures. Our hypothesis is that, as in many industrial activities, marginal utility gains decrease with increasing model size. Thus, applying model selection can significantly reduce energy consumption while maintaining good utility for AI inference. We conduct a systematic study of AI tasks, analyzing their popularity, model size, and efficiency. We examine how the maturity of different tasks and model adoption patterns impact the achievable energy savings, ranging from 1% to 98% for different tasks. Our estimates indicate that applying model selection could reduce AI energy consumption by 27.8%, saving 31.9 TWh worldwide in 2025 - equivalent to the annual output of five nuclear power reactors.

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绿色AI 节能模型 AI能耗 模型选择 能源效率
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