arXiv Open Access 2025

What can large language models do for sustainable food?

Anna T. Thomas Adam Yee Andrew Mayne Maya B. Mathur Dan Jurafsky +1 lainnya
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Abstrak

Food systems are responsible for a third of human-caused greenhouse gas emissions. We investigate what Large Language Models (LLMs) can contribute to reducing the environmental impacts of food production. We define a typology of design and prediction tasks based on the sustainable food literature and collaboration with domain experts, and evaluate six LLMs on four tasks in our typology. For example, for a sustainable protein design task, food science experts estimated that collaboration with an LLM can reduce time spent by 45% on average, compared to 22% for collaboration with another expert human food scientist. However, for a sustainable menu design task, LLMs produce suboptimal solutions when instructed to consider both human satisfaction and climate impacts. We propose a general framework for integrating LLMs with combinatorial optimization to improve reasoning capabilities. Our approach decreases emissions of food choices by 79% in a hypothetical restaurant while maintaining participants' satisfaction with their set of choices. Our results demonstrate LLMs' potential, supported by optimization techniques, to accelerate sustainable food development and adoption.

Topik & Kata Kunci

Penulis (6)

A

Anna T. Thomas

A

Adam Yee

A

Andrew Mayne

M

Maya B. Mathur

D

Dan Jurafsky

K

Kristina Gligorić

Format Sitasi

Thomas, A.T., Yee, A., Mayne, A., Mathur, M.B., Jurafsky, D., Gligorić, K. (2025). What can large language models do for sustainable food?. https://arxiv.org/abs/2503.04734

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Tahun Terbit
2025
Bahasa
en
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arXiv
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Open Access ✓