能源消耗
计算机科学
碳足迹
环境影响评价
高效能源利用
能量(信号处理)
比例(比率)
生产(经济)
仪表(计算机编程)
数据中心
消费(社会学)
采购
环境经济学
生态足迹
足迹
转化式学习
代理(哲学)
推论
软件
人工智能
数据收集
环境监测
保证
环境数据
基线(sea)
影响评估
作者
Cooper Elsworth,Keguo Huang,David A. Patterson,Ian Schneider,Robert Sedivy,Steven L. Goodman,Ben Townsend,Parthasarathy Ranganathan,Jeff Dean,Amin Vahdat,Ben Gomes,James Manyika
标识
DOI:10.48550/arxiv.2508.15734
摘要
The transformative power of AI is undeniable - but as user adoption accelerates, so does the need to understand and mitigate the environmental impact of AI serving. However, no studies have measured AI serving environmental metrics in a production environment. This paper addresses this gap by proposing and executing a comprehensive methodology for measuring the energy usage, carbon emissions, and water consumption of AI inference workloads in a large-scale, AI production environment. Our approach accounts for the full stack of AI serving infrastructure - including active AI accelerator power, host system energy, idle machine capacity, and data center energy overhead. Through detailed instrumentation of Google's AI infrastructure for serving the Gemini AI assistant, we find the median Gemini Apps text prompt consumes 0.24 Wh of energy - a figure substantially lower than many public estimates. We also show that Google's software efficiency efforts and clean energy procurement have driven a 33x reduction in energy consumption and a 44x reduction in carbon footprint for the median Gemini Apps text prompt over one year. We identify that the median Gemini Apps text prompt uses less energy than watching nine seconds of television (0.24 Wh) and consumes the equivalent of five drops of water (0.26 mL). While these impacts are low compared to other daily activities, reducing the environmental impact of AI serving continues to warrant important attention. Towards this objective, we propose that a comprehensive measurement of AI serving environmental metrics is critical for accurately comparing models, and to properly incentivize efficiency gains across the full AI serving stack.
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