The Carbon Footprint of Machine Learning Training Will Plateau, Then Shrink

David Patterson, Joseph Gonzalez, Urs Hölzle, Quoc Le, Chen Liang, Lluis-Miquel Munguia, Daniel Rothchild, David So, Maud Texier, Jeff Dean
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Abstract

Machine Learning (ML) workloads have rapidly grown in importance, but raised concerns about their carbon footprint. Four best practices can reduce ML training energy by up to 100x and CO2 emissions up to 1000x. By following best practices, overall ML energy use (across research, development, and production) held steady at <15% of Google's total energy use for the past three years. If the whole ML field were to adopt best practices, total carbon emissions from training would reduce. Hence, we recommend that ML papers include emissions explicitly to foster competition on more than just model quality. Estimates of emissions in papers that omitted them have been off 100x-100,000x, so publishing emissions has the added benefit of ensuring accurate accounting. Given the importance of climate change, we must get the numbers right to make certain that we work on its biggest challenges.
机器学习训练的碳足迹将趋于平稳,然后缩小
机器学习(ML)工作负载的重要性迅速增长,但也引发了对其碳足迹的担忧。四项最佳实践可将MLtraining的能耗减少100倍,二氧化碳排放量减少1000倍。通过遵循最佳实践,在过去三年中,机器学习的总体能源消耗(包括研究、开发和生产)稳定在谷歌总能源消耗的15%以下。如果整个机器学习领域都采用最佳实践,那么培训产生的碳排放总量将会减少。因此,我们建议机器学习论文明确地包括排放,以促进竞争,而不仅仅是模型质量。论文中省略它们的排放量估计已经偏离了100 -10万倍,因此公布排放量还有一个额外的好处,即确保准确的核算。考虑到气候变化的重要性,我们必须制定正确的数字,以确保我们应对最大的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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