View a PDF of the paper titled Step-DeepResearch Technical Report, by Chen Hu and 64 other authors
Abstract:As LLMs shift toward autonomous agents, Deep Research has emerged as a pivotal metric. However, existing academic benchmarks like BrowseComp often fail to meet real-world demands for open-ended research, which requires robust skills in intent recognition, long-horizon decision-making, and cross-source verification. To address this, we introduce Step-DeepResearch, a cost-effective, end-to-end agent. We propose a Data Synthesis Strategy Based on Atomic Capabilities to reinforce planning and report writing, combined with a progressive training path from agentic mid-training to SFT and RL. Enhanced by a Checklist-style Judger, this approach significantly improves robustness. Furthermore, to bridge the evaluation gap in the Chinese domain, we establish ADR-Bench for realistic deep research scenarios. Experimental results show that Step-DeepResearch (32B) scores 61.4% on Scale AI Research Rubrics. On ADR-Bench, it significantly outperforms comparable models and rivals SOTA closed-source models like OpenAI and Gemini DeepResearch. These findings prove that refined training enables medium-sized models to achieve expert-level capabilities at industry-leading cost-efficiency.
Submission history
From: Ruihang Miao [view email]
[v1]
Tue, 23 Dec 2025 16:32:27 UTC (407 KB)
[v2]
Wed, 24 Dec 2025 15:52:31 UTC (314 KB)
Source link
#StepDeepResearch #Technical #Report
















![[2512.20491] Step-DeepResearch Technical Report [2512.20491] Step-DeepResearch Technical Report](https://i0.wp.com/arxiv.org/static/browse/0.3.4/images/arxiv-logo-fb.png?w=750&resize=750,375&ssl=1)








