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The Carbon Cost of Conversation, Sustainability in the Age of Language Models

Published: July 26, 2025 | arXiv ID: 2507.20018v1

By: Sayed Mahbub Hasan Amiri , Prasun Goswami , Md. Mainul Islam and more

Potential Business Impact:

AI uses lots of energy, harming the planet.

Plain English Summary

Imagine AI that can write and talk like us, but it's secretly using a lot of electricity and water, like hundreds of cars running all year for just one AI. This is a problem because it's bad for the planet and uses up resources that are already scarce. We need to find ways to make these AI systems more eco-friendly, like using less power or developing smarter, smaller AI, so we can enjoy their benefits without harming the environment.

Large language models (LLMs) like GPT-3 and BERT have revolutionized natural language processing (NLP), yet their environmental costs remain dangerously overlooked. This article critiques the sustainability of LLMs, quantifying their carbon footprint, water usage, and contribution to e-waste through case studies of models such as GPT-4 and energy-efficient alternatives like Mistral 7B. Training a single LLM can emit carbon dioxide equivalent to hundreds of cars driven annually, while data centre cooling exacerbates water scarcity in vulnerable regions. Systemic challenges corporate greenwashing, redundant model development, and regulatory voids perpetuate harm, disproportionately burdening marginalized communities in the Global South. However, pathways exist for sustainable NLP: technical innovations (e.g., model pruning, quantum computing), policy reforms (carbon taxes, mandatory emissions reporting), and cultural shifts prioritizing necessity over novelty. By analysing industry leaders (Google, Microsoft) and laggards (Amazon), this work underscores the urgency of ethical accountability and global cooperation. Without immediate action, AIs ecological toll risks outpacing its societal benefits. The article concludes with a call to align technological progress with planetary boundaries, advocating for equitable, transparent, and regenerative AI systems that prioritize both human and environmental well-being.

Page Count
22 pages

Category
Computer Science:
Computers and Society