Fastātracking ecological interpretation using bespoke quantitative large language models
Abstrak
Abstract The Anthropocene presents significant challenges for global biodiversity, public health and ecosystem stability. The wealth of publicly available nearārealātime ecology and climate data can be used to monitor these challenges and allow practitioners to develop mitigation strategies. There is untapped potential to apply large language models (LLMs) to quantitative ecological and environmental datasets, enabling researchers and practitioners to use natural language queries to transform ecological observations into actionable insights for both conservation action and communication of results to diverse audiences. Advances in artificial intelligence (AI), and particularly in LLMs, offer emerging opportunities to address these challenges. LLMs are increasingly proficient at identifying patterns and semantic relationships within textual data and are highly customisable. Accessible AI tools can facilitate communication across research and policy sectors. Here, we present a roadmap for designing and implementing multiāmodal LLMs to answer ecological research questions. To build robust āvirtual quantitative assistantsā capable of fastātracking data interpretation, we advocate for strategic planning, data stewardship practices, careful prompt engineering and model evaluation as key steps in the LLM development process. We discuss potential useācase examples that apply the LangChain framework to analyse citizen science data. Using our LLM roadmap, we highlight the importance of iterative and strategic prompt engineering and agent selection, in addition to iteratively evaluating model output. As LLM software continues to evolve, its integration into ecological and environmental research can empower ecologists with purposeābuilt tools that bridge the gap between data collection and actionable solutions.
Penulis (5)
Elise C. Gallois
Arianna SaliliāJames
Sanson T. S. Poon
Artur Trebski
David W. Redding
Akses Cepat
- Tahun Terbit
- 2025
- Sumber Database
- DOAJ
- DOI
- 10.1111/2041-210X.70184
- Akses
- Open Access ā