Reconciling the contrasting narratives on the environmental impact of large language models
Shaolei Ren,
Bill Tomlinson,
Rebecca W. Black
et al.
Abstract:The recent proliferation of large language models (LLMs) has led to divergent narratives about their environmental impacts. Some studies highlight the substantial carbon footprint of training and using LLMs, while others argue that LLMs can lead to more sustainable alternatives to current practices. We reconcile these narratives by presenting a comparative assessment of the environmental impact of LLMs vs. human labor, examining their relative efficiency across energy consumption, carbon emissions, water usage… Show more
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