软件部署
工作流程
计算机科学
适应性
集合(抽象数据类型)
领域(数学分析)
可扩展性
持续性
知识管理
过程管理
数据科学
环境数据
决策支持系统
工作(物理)
风险分析(工程)
管理科学
机器学习
软件工程
人工智能
生成语法
系统工程
通才与专种
生成模型
领域知识
作者
Chuke Chen,Nan Li,Jianchuan Qi,H. Chang,Wenjie Shi,Jinliang Xie,Jiayi Yuan,Hang Yang,Jing Guo,Changqing Xu,Ming Xu
标识
DOI:10.1021/acs.est.5c09526
摘要
Generative artificial intelligence, especially large language models (LLMs), could accelerate environmental analysis, but deployment is hindered by two gaps: limited structured domain knowledge and unclear strategies matched to environmental decision contexts. Here, this study constructs a textbook-based, China-centered environmental knowledge data set with hierarchical organization to enable reliable fine-tuning and benchmarking. Results show a consistent trade-off that fine-tuned models achieve modest gains in precision (+1%) and response efficiency (+52%) on standardized tasks but exhibit limited adaptability when embedded in agentic workflows (-3%). In contrast, state-of-the-art generalist models consistently outperform in system-level sustainability and interdisciplinary decision tasks (+10%), benefiting from stronger cross-domain reasoning and dynamic tool integration. Together, these findings support a layered LLMs' deployment strategy for environmental intelligence. Specifically, selective fine-tuning for stable, regulatory, and verification tasks, combined with agentic workflows anchored in up-to-date generalist backbone models for dynamic, data-intensive, and interdisciplinary decision-making. This work provides both a reusable data set foundation and a practical framework for deploying LLMs as scalable and reliable decision-support tools in environmental decision.
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