E-waste challenges of generative artificial intelligence


연구 분야: Artificial Intelligence



학회: Nature Computational Science


초록

Generative artificial intelligence (GAI) requires substantial computational resources for model training and inference, but the electronic-waste (e-waste) implications of GAI and its management strategies remain underexplored. Here we introduce a computational power-driven material flow analysis framework to quantify and explore ways of managing the e-waste generated by GAI, with a particular focus on large language models. Our findings indicate that this e-waste stream could increase, potentially reaching a total accumulation of 1.2–5.0 million tons during 2020–2030, under different future GAI development settings. This may be intensified in the context of geopolitical restrictions on semiconductor imports and the rapid server turnover for operational cost savings. Meanwhile, we show that the implementation of circular economy strategies along the GAI value chain could reduce e-waste generation by 16–86%. This underscores the importance of proactive e-waste management in the face of advancing GAI technologies.


Author Profile
Peng Wang

Key Lab of Urban Environment and Health Institute of Urban Environment Chinese Academy of Sciences Xiamen China

Andorra
Author Profile
Ling-Yu Zhang

University of Chinese Academy of Sciences Beijing China

China
Author Profile
Asaf Tzachor

Key Lab of Urban Environment and Health Institute of Urban Environment Chinese Academy of Sciences Xiamen China

Andorra

📄 논문 정보

발행 연도 2024년
인용수 0
출판 국가 Israel, Andorra, China
사이트 Springer
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