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Main Authors: Houliston, Sam, Odonnat, Ambroise, Arnal, Charles, Cabannes, Vivien
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2508.20755
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author Houliston, Sam
Odonnat, Ambroise
Arnal, Charles
Cabannes, Vivien
author_facet Houliston, Sam
Odonnat, Ambroise
Arnal, Charles
Cabannes, Vivien
contents Tool-augmented language models, equipped with retrieval, memory, or external APIs, are reshaping AI, yet their theoretical advantages remain underexplored. In this paper, we address this question by demonstrating the benefits of in-tool learning (external retrieval) over in-weight learning (memorization) for factual recall. We show that the number of facts a model can memorize solely in its weights is fundamentally limited by its parameter count. In contrast, we prove that tool-use enables unbounded factual recall via a simple and efficient circuit construction. These results are validated in controlled experiments, where tool-using models consistently outperform memorizing ones. We further show that for pretrained large language models, teaching tool-use and general rules is more effective than finetuning facts into memory. Our work provides both a theoretical and empirical foundation, establishing why tool-augmented workflows are not just practical, but provably more scalable.
format Preprint
id arxiv_https___arxiv_org_abs_2508_20755
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Provable Benefits of In-Tool Learning for Large Language Models
Houliston, Sam
Odonnat, Ambroise
Arnal, Charles
Cabannes, Vivien
Machine Learning
Artificial Intelligence
Tool-augmented language models, equipped with retrieval, memory, or external APIs, are reshaping AI, yet their theoretical advantages remain underexplored. In this paper, we address this question by demonstrating the benefits of in-tool learning (external retrieval) over in-weight learning (memorization) for factual recall. We show that the number of facts a model can memorize solely in its weights is fundamentally limited by its parameter count. In contrast, we prove that tool-use enables unbounded factual recall via a simple and efficient circuit construction. These results are validated in controlled experiments, where tool-using models consistently outperform memorizing ones. We further show that for pretrained large language models, teaching tool-use and general rules is more effective than finetuning facts into memory. Our work provides both a theoretical and empirical foundation, establishing why tool-augmented workflows are not just practical, but provably more scalable.
title Provable Benefits of In-Tool Learning for Large Language Models
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2508.20755