cs.AI updates on arXiv.org 08月11日
AquiLLM: a RAG Tool for Capturing Tacit Knowledge in Research Groups
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本文介绍了AquiLLM,一个专为科研团队设计的轻量级、模块化检索增强生成系统,旨在解决团队内部知识共享的难题,支持多种文档类型和隐私设置,以促进学术团队正式与非正式知识的有效获取。

arXiv:2508.05648v1 Announce Type: cross Abstract: Research groups face persistent challenges in capturing, storing, and retrieving knowledge that is distributed across team members. Although structured data intended for analysis and publication is often well managed, much of a group's collective knowledge remains informal, fragmented, or undocumented--often passed down orally through meetings, mentoring, and day-to-day collaboration. This includes private resources such as emails, meeting notes, training materials, and ad hoc documentation. Together, these reflect the group's tacit knowledge--the informal, experience-based expertise that underlies much of their work. Accessing this knowledge can be difficult, requiring significant time and insider understanding. Retrieval-augmented generation (RAG) systems offer promising solutions by enabling users to query and generate responses grounded in relevant source material. However, most current RAG-LLM systems are oriented toward public documents and overlook the privacy concerns of internal research materials. We introduce AquiLLM (pronounced ah-quill-em), a lightweight, modular RAG system designed to meet the needs of research groups. AquiLLM supports varied document types and configurable privacy settings, enabling more effective access to both formal and informal knowledge within scholarly groups.

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AquiLLM 知识共享 科研团队 RAG系统 隐私保护
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