Knoll: Creating a Knowledge Ecosystem for Large Language Models
Knoll: Creating a Knowledge Ecosystem for Large Language Models
Large language models are designed to encode general purpose knowledge about the world from Internet data. Yet, a wealth of information falls outside this scope -- ranging from personal preferences to organizational policies, from community-specific advice to up-to-date news -- that users want models to access but remains unavailable. In this paper, we propose a knowledge ecosystem in which end-users can create, curate, and configure custom knowledge modules that are utilized by language models, such as ChatGPT and Claude. To support this vision, we introduce Knoll, a software infrastructure that allows users to make modules by clipping content from the web or authoring shared documents on Google Docs and GitHub, add modules that others have made, and rely on the system to insert relevant knowledge when interacting with an LLM. We conduct a public deployment of Knoll reaching over 200 users who employed the system for a diverse set of tasks including personalized recommendations, advice-seeking, and writing assistance. In our evaluation, we validate that using Knoll improves the quality of generated responses.
Dora Zhao、Diyi Yang、Michael S. Bernstein
计算技术、计算机技术
Dora Zhao,Diyi Yang,Michael S. Bernstein.Knoll: Creating a Knowledge Ecosystem for Large Language Models[EB/OL].(2025-05-25)[2025-06-18].https://arxiv.org/abs/2505.19335.点此复制
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