The Hidden AI Race: Tracking Environmental Costs of Innovation
Shyam Agarwal, Mahasweta Chakraborti

TL;DR
This paper analyzes the environmental impact of AI development, revealing key factors influencing carbon emissions and proposing sustainable practices to reduce AI's ecological footprint.
Contribution
It provides a comprehensive analysis of AI models' environmental costs across domains, highlighting factors like model size and organizational context affecting emissions.
Findings
Model size and versioning frequency correlate with higher emissions
NLP models tend to have lower carbon footprints than audio-based systems
University projects exhibit the highest emissions among organizational types
Abstract
The past decade has seen a massive rise in the popularity of AI systems, mainly owing to the developments in Gen AI, which has revolutionized numerous industries and applications. However, this progress comes at a considerable cost to the environment as training and deploying these models consume significant computational resources and energy and are responsible for large carbon footprints in the atmosphere. In this paper, we study the amount of carbon dioxide released by models across different domains over varying time periods. By examining parameters such as model size, repository activity (e.g., commits and repository age), task type, and organizational affiliation, we identify key factors influencing the environmental impact of AI development. Our findings reveal that model size and versioning frequency are strongly correlated with higher emissions, while domain-specific trends…
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Taxonomy
TopicsGreen IT and Sustainability · Ethics and Social Impacts of AI · Explainable Artificial Intelligence (XAI)
