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Main Authors: Shen, Xintian, Chen, Jiawei, Zheng, Lihao, Ma, Hao, Wei, Tao, Zhan, Kun
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.01983
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author Shen, Xintian
Chen, Jiawei
Zheng, Lihao
Ma, Hao
Wei, Tao
Zhan, Kun
author_facet Shen, Xintian
Chen, Jiawei
Zheng, Lihao
Ma, Hao
Wei, Tao
Zhan, Kun
contents Existing Tool-Integrated Reasoning (TIR) models have effectively extended the question-answering capabilities of LLMs by incorporating external tools. However, real-world scenarios present numerous open-ended problems where fixed tools often fail to meet task requirements. Furthermore, the lack of self-optimization mechanisms means that erroneous tool outputs can mislead the LLM's responses. Additionally, the construction of existing tools entails significant manual effort, which consequently constrains their applicability. Recognizing that the reasoning traces of LLMs encapsulate implicit problem-solving capabilities, we propose UCT, a novel training-free framework that transforms agents from tool users to tool creators. This approach harvests reasoning experiences and distills them into reusable assets. This method transforms the agent from a mere tool user into a tool creator, enabling adaptive tool creation and self-updating during the inference process. We also introduce a memory consolidation mechanism to maintain the tool library, ensuring high reusability of retained experiential memory for subsequent reasoning tasks. This novel automated tool construction paradigm continuously improves tool quality during reasoning, allowing the overall agent system to progress without additional training. Extensive experiments demonstrate that our method serves as a novel paradigm for enhancing the capabilities of TIR models. In particular, the significant performance gains achieved +20.86%$\uparrow$ and +23.04%$\uparrow$ on benchmarks across multi-domain mathematical and scientific reasoning tasks validate the self-evolving capability of the agent.
format Preprint
id arxiv_https___arxiv_org_abs_2602_01983
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Evolving from Tool User to Creator via Training-Free Experience Reuse in Multimodal Reasoning
Shen, Xintian
Chen, Jiawei
Zheng, Lihao
Ma, Hao
Wei, Tao
Zhan, Kun
Artificial Intelligence
Existing Tool-Integrated Reasoning (TIR) models have effectively extended the question-answering capabilities of LLMs by incorporating external tools. However, real-world scenarios present numerous open-ended problems where fixed tools often fail to meet task requirements. Furthermore, the lack of self-optimization mechanisms means that erroneous tool outputs can mislead the LLM's responses. Additionally, the construction of existing tools entails significant manual effort, which consequently constrains their applicability. Recognizing that the reasoning traces of LLMs encapsulate implicit problem-solving capabilities, we propose UCT, a novel training-free framework that transforms agents from tool users to tool creators. This approach harvests reasoning experiences and distills them into reusable assets. This method transforms the agent from a mere tool user into a tool creator, enabling adaptive tool creation and self-updating during the inference process. We also introduce a memory consolidation mechanism to maintain the tool library, ensuring high reusability of retained experiential memory for subsequent reasoning tasks. This novel automated tool construction paradigm continuously improves tool quality during reasoning, allowing the overall agent system to progress without additional training. Extensive experiments demonstrate that our method serves as a novel paradigm for enhancing the capabilities of TIR models. In particular, the significant performance gains achieved +20.86%$\uparrow$ and +23.04%$\uparrow$ on benchmarks across multi-domain mathematical and scientific reasoning tasks validate the self-evolving capability of the agent.
title Evolving from Tool User to Creator via Training-Free Experience Reuse in Multimodal Reasoning
topic Artificial Intelligence
url https://arxiv.org/abs/2602.01983