Hongda Li , Huarui Wu , Qingxue Li , Chunjiang Zhao
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Addressing core challenges in domain adaptation, including knowledge acquisition and integration, logical reasoning, multimodal data processing, agent collaboration, and dynamic knowledge updating, the paper proposes targeted solutions. The study further explores the innovative applications of LLMs in scenarios such as precision crop management and market dynamics analysis, providing theoretical support and technical pathways for the development of agricultural intelligence. 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引用次数: 0
摘要
本文系统探讨了大型语言模型(large language models, LLMs)在农业智能领域的应用潜力,重点探讨了关键技术和实践路径。本研究的重点是法学硕士对农业知识的适应,从建筑设计、预培训策略和微调技术等基本概念开始,构建农业领域知识整合的技术框架。利用向量数据库和知识图谱等工具,本研究实现了专业农业知识库的结构化开发。通过多模态学习与智能问答系统设计相结合,验证法学硕士在农业知识服务中的应用价值。针对领域自适应中的知识获取与集成、逻辑推理、多模态数据处理、智能体协作和动态知识更新等核心挑战,提出了针对性的解决方案。研究进一步探索法学硕士在作物精准管理、市场动态分析等场景中的创新应用,为农业智能化发展提供理论支撑和技术路径。通过大语言模型的技术创新,与农业领域深度融合,有效提升农业生产、决策、服务的智能化水平。
A review on enhancing agricultural intelligence with large language models
This paper systematically explores the application potential of large language models (LLMs) in the field of agricultural intelligence, focusing on key technologies and practical pathways. The study focuses on the adaptation of LLMs to agricultural knowledge, starting with foundational concepts such as architecture design, pre-training strategies, and fine-tuning techniques, to build a technical framework for knowledge integration in the agricultural domain. Using tools such as vector databases and knowledge graphs, the study enables the structured development of professional agricultural knowledge bases. Additionally, by combining multimodal learning and intelligent question-answering (Q&A) system design, it validates the application value of LLMs in agricultural knowledge services. Addressing core challenges in domain adaptation, including knowledge acquisition and integration, logical reasoning, multimodal data processing, agent collaboration, and dynamic knowledge updating, the paper proposes targeted solutions. The study further explores the innovative applications of LLMs in scenarios such as precision crop management and market dynamics analysis, providing theoretical support and technical pathways for the development of agricultural intelligence. Through the technological innovation of large language models and their deep integration with the agricultural sector, the intelligence level of agricultural production, decision-making, and services can be effectively enhanced.