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From Failure to Mastery: Generating Hard Samples for Tool-use Agents

Bingguang Hao
Zengzhuang Xu
Yuntao Wen
Xinyi Xu
Yang Liu
Tong Zhao
Maolin Wang
Long Chen
Dong Wang
Yicheng Chen
Cunyin Peng
Xiangyu Zhao
Chenyi Zhuang
Ji Zhang
Main:8 Pages
15 Figures
Bibliography:2 Pages
12 Tables
Appendix:13 Pages
Abstract

The advancement of LLM agents with tool-use capabilities requires diverse and complex training corpora. Existing data generation methods, which predominantly follow a paradigm of random sampling and shallow generation, often yield simple and homogeneous trajectories that fail to capture complex, implicit logical dependencies. To bridge this gap, we introduce HardGen, an automatic agentic pipeline designed to generate hard tool-use training samples with verifiable reasoning. Firstly, HardGen establishes a dynamic API Graph built upon agent failure cases, from which it samples to synthesize hard traces. Secondly, these traces serve as conditional priors to guide the instantiation of modular, abstract advanced tools, which are subsequently leveraged to formulate hard queries. Finally, the advanced tools and hard queries enable the generation of verifiable complex Chain-of-Thought (CoT), with a closed-loop evaluation feedback steering the continuous refinement of the process. Extensive evaluations demonstrate that a 4B parameter model trained with our curated dataset achieves superior performance compared to several leading open-source and closed-source competitors (e.g., GPT-5.2, Gemini-3-Pro and Claude-Opus-4.5). Our code, models, and dataset will be open-sourced to facilitate future research.

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