Aligning artificial intelligence with climate change mitigation

被引:0
作者
Lynn H. Kaack
Priya L. Donti
Emma Strubell
George Kamiya
Felix Creutzig
David Rolnick
机构
[1] Hertie School,Data Science Lab
[2] ETH Zurich,Energy and Technology Policy Group, Department of Humanities, Social and Political Sciences
[3] ETH Zurich,Institute of Science, Technology, and Policy
[4] Carnegie Mellon University,School of Computer Science
[5] Carnegie Mellon University,Department of Engineering and Public Policy
[6] International Energy Agency,Sustainability Economics of Human Settlements
[7] Mercator Research Institute on Global Commons and Climate Change,School of Computer Science
[8] Technical University Berlin,undefined
[9] McGill University,undefined
[10] Mila – Quebec AI Institute,undefined
来源
Nature Climate Change | 2022年 / 12卷
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学科分类号
摘要
There is great interest in how the growth of artificial intelligence and machine learning may affect global GHG emissions. However, such emissions impacts remain uncertain, owing in part to the diverse mechanisms through which they occur, posing difficulties for measurement and forecasting. Here we introduce a systematic framework for describing the effects of machine learning (ML) on GHG emissions, encompassing three categories: computing-related impacts, immediate impacts of applying ML and system-level impacts. Using this framework, we identify priorities for impact assessment and scenario analysis, and suggest policy levers for better understanding and shaping the effects of ML on climate change mitigation.
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页码:518 / 527
页数:9
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