Training Plug-and-Play Knowledge Modules with Deep Context Distillation

Published: 08 Jul 2025, Last Modified: 26 Aug 2025COLM 2025EveryoneRevisionsBibTeXCC BY 4.0
Keywords: knowledge extraction, document understanding, modular learning
TL;DR: We encapsulate knowledge from a document inside a LoRA adapter via distillation
Abstract: Dynamically integrating new or rapidly evolving information after (Large) Language Model pre-training remains challenging, particularly in low-data scenarios or when dealing with private and specialized documents. In-context learning and retrieval-augmented generation (RAG) face limitations, including their high inference costs and their inability to capture global document information. In this paper, we propose a way of modularizing knowledge by training document-level Knowledge Modules (KMs). KMs are lightweight components implemented as parameter-efficient LoRA modules, which are trained to store information about new documents and can be easily plugged into models on demand. We show that next-token prediction performs poorly as the training objective for KMs. We instead propose Deep Context Distillation: we learn KMs parameters such as to simulate hidden states and logits of a teacher that takes the document in context. Our method outperforms standard next-token prediction and pre-instruction training techniques, across two datasets. Finally, we highlight synergies between KMs and retrieval-augmented generation.
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Submission Number: 187
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