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arXiv 提交日期: 2026-03-11
📄 Abstract - Conversational AI-Enhanced Exploration System to Query Large-Scale Digitised Collections of Natural History Museums

Recent digitisation efforts in natural history museums have produced large volumes of collection data, yet their scale and scientific complexity often hinder public access and understanding. Conventional data management tools, such as databases, restrict exploration through keyword-based search or require specialised schema knowledge. This paper presents a system design that uses conversational AI to query nearly 1.7 million digitised specimen records from the life-science collections of the Australian Museum. Designed and developed through a human-centred design process, the system contains an interactive map for visual-spatial exploration and a natural-language conversational agent that retrieves detailed specimen data and answers collection-specific questions. The system leverages function-calling capabilities of contemporary large language models to dynamically retrieve structured data from external APIs, enabling fast, real-time interaction with extensive yet frequently updated datasets. Our work provides a new approach of connecting large museum collections with natural language-based queries and informs future designs of scientific AI agents for natural history museums.

顶级标签: llm agents systems
详细标签: conversational ai museum collections natural language query function calling data exploration 或 搜索:

对话式AI增强的探索系统:用于查询自然历史博物馆大规模数字化馆藏 / Conversational AI-Enhanced Exploration System to Query Large-Scale Digitised Collections of Natural History Museums


1️⃣ 一句话总结

这项研究设计了一个结合交互式地图和自然语言对话AI的系统,让普通用户无需专业知识就能轻松查询和理解澳大利亚博物馆近170万件数字化生物标本,为公众探索大型科学数据集提供了新方法。

源自 arXiv: 2603.10285