English

AutoTool: Dynamic Tool Selection and Integration for Agentic Reasoning

Computation and Language 2025-12-16 v1 Machine Learning

Abstract

Agentic reinforcement learning has advanced large language models (LLMs) to reason through long chain-of-thought trajectories while interleaving external tool use. Existing approaches assume a fixed inventory of tools, limiting LLM agents' adaptability to new or evolving toolsets. We present AutoTool, a framework that equips LLM agents with dynamic tool-selection capabilities throughout their reasoning trajectories. We first construct a 200k dataset with explicit tool-selection rationales across 1,000+ tools and 100+ tasks spanning mathematics, science, code generation, and multimodal reasoning. Building on this data foundation, AutoTool employs a dual-phase optimization pipeline: (i) supervised and RL-based trajectory stabilization for coherent reasoning, and (ii) KL-regularized Plackett-Luce ranking to refine consistent multi-step tool selection. Across ten diverse benchmarks, we train two base models, Qwen3-8B and Qwen2.5-VL-7B, with AutoTool. With fewer parameters, AutoTool consistently outperforms advanced LLM agents and tool-integration methods, yielding average gains of 6.4% in math & science reasoning, 4.5% in search-based QA, 7.7% in code generation, and 6.9% in multimodal understanding. In addition, AutoTool exhibits stronger generalization by dynamically leveraging unseen tools from evolving toolsets during inference.

Keywords

Cite

@article{arxiv.2512.13278,
  title  = {AutoTool: Dynamic Tool Selection and Integration for Agentic Reasoning},
  author = {Jiaru Zou and Ling Yang and Yunzhe Qi and Sirui Chen and Mengting Ai and Ke Shen and Jingrui He and Mengdi Wang},
  journal= {arXiv preprint arXiv:2512.13278},
  year   = {2025}
}

Comments

Best Paper Award at ICCV 2025 Workshop on Multi-Modal Reasoning for Agentic Intelligence

R2 v1 2026-07-01T08:25:10.571Z