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title-long: "Addressing the Environmental Costs and Impact of AI" | |
title-short: Energy and Environmental Costs | |
document-id: environment | |
tags: | |
- environment | |
# abstract in text format | |
abstract: > | |
Developing and deploying AI systems requires natural resources (energy, water, rare earth metals), | |
which puts pressure on energy grids, which are already under immense strain, as well as potentially | |
causing harm to ecosystems and communities. There is a lack of meaningful evaluation of AI's | |
environmental impacts and transparency around them; and a lot of greenwashing around AI's potential to “solve climate change”. | |
# introduction and sections in HTML format | |
introduction: > | |
<p> | |
Recent generations of AI models, especially large language models (LLMs), have been using increasing amounts | |
of compute; this is often presented in terms of GPU hours or millions of dollars used to buy cloud compute credits. | |
However, this compute also comes with a cost to the environment; this can be conceptualized in a life cycle analysis (LCA) approach to AI. | |
</p> | |
<p> | |
From the rare earth minerals that are extracted and transformed into computing hardware, to the energy used | |
to power model training and deployment, and the water used for purifying layers of silicone and cool data centers; | |
the usage of all these resources taxes planetary boundaries that are already under strain. Also, the concentration | |
of power in AI means that a select few organizations are responsible for a large portion of the impacts, and yet the | |
communities that are harmed by these impacts do not have a say in these; parallel with climate justice considerations | |
that have already existed in the climate change space. | |
</p> | |
<p> | |
Finally, while AI is part of the myriad of technologies that can help mitigate and adapt to climate change by improving | |
weather forecasting, proposing new combinations of molecules for batteries, and even improving the efficiency of existing and | |
future energy grids, it is currently unclear whether the environmental costs of AI technologies outweigh their benefits, and | |
more transparency is needed to allow informed decision-making in the space. | |
</p> | |
sections: | |
- section-title: Commercial and Infrastructure Effects of Energy Grid Demands | |
section-text: > | |
<p> | |
Section text, HTML-formatted, TODO | |
</p> | |
- section-title: "Categories of Environmental Costs: Carbon, Water, Minerals" | |
section-text: > | |
<p> | |
Section text, HTML-formatted, TODO | |
</p> | |
- section-title: Disparate Environmental Impacts and Cross-National Dynamics | |
section-text: > | |
<p> | |
Section text, HTML-formatted, TODO | |
</p> | |
resources: | |
- resource-name: Google Doc topic Card | |
resource-url: https://docs.google.com/document/d/1fgi2NEb4glP8QGansroHmL9BZJ6Ja8zQKWQY4STRQ3k/ | |
- resource-name: Primer on AI's Environmental Impact | |
resource-url: https://huggingface.co/blog/sasha/ai-environment-primer | |
contributions: > | |
Sasha Luccioni and Yacine Jernite wrote this document. | |