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Autori principali: Wisoff, Josh, Tang, Yao, Fang, Zhengyu, Guzman, Jordan, Wang, YuTang, Yu, Alex
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2509.03610
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author Wisoff, Josh
Tang, Yao
Fang, Zhengyu
Guzman, Jordan
Wang, YuTang
Yu, Alex
author_facet Wisoff, Josh
Tang, Yao
Fang, Zhengyu
Guzman, Jordan
Wang, YuTang
Yu, Alex
contents Note-taking is a critical practice for capturing, organizing, and reflecting on information in both academic and professional settings. The recent success of large language models has accelerated the development of AI-assisted tools, yet existing solutions often struggle with efficiency. We present NoteBar, an AI-assisted note-taking tool that leverages persona information and efficient language models to automatically organize notes into multiple categories and better support user workflows. To support research and evaluation in this space, we further introduce a novel persona-conditioned dataset of 3,173 notes and 8,494 annotated concepts across 16 MBTI personas, offering both diversity and semantic richness for downstream tasks. Finally, we demonstrate that NoteBar can be deployed in a practical and cost-effective manner, enabling interactive use without reliance on heavy infrastructure. Together, NoteBar and its accompanying dataset provide a scalable and extensible foundation for advancing AI-assisted personal knowledge management.
format Preprint
id arxiv_https___arxiv_org_abs_2509_03610
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle NoteBar: An AI-Assisted Note-Taking System for Personal Knowledge Management
Wisoff, Josh
Tang, Yao
Fang, Zhengyu
Guzman, Jordan
Wang, YuTang
Yu, Alex
Computation and Language
Note-taking is a critical practice for capturing, organizing, and reflecting on information in both academic and professional settings. The recent success of large language models has accelerated the development of AI-assisted tools, yet existing solutions often struggle with efficiency. We present NoteBar, an AI-assisted note-taking tool that leverages persona information and efficient language models to automatically organize notes into multiple categories and better support user workflows. To support research and evaluation in this space, we further introduce a novel persona-conditioned dataset of 3,173 notes and 8,494 annotated concepts across 16 MBTI personas, offering both diversity and semantic richness for downstream tasks. Finally, we demonstrate that NoteBar can be deployed in a practical and cost-effective manner, enabling interactive use without reliance on heavy infrastructure. Together, NoteBar and its accompanying dataset provide a scalable and extensible foundation for advancing AI-assisted personal knowledge management.
title NoteBar: An AI-Assisted Note-Taking System for Personal Knowledge Management
topic Computation and Language
url https://arxiv.org/abs/2509.03610