SciResearcher: Scaling Deep Research Agents for Frontier Scientific Reasoning

arXiv cs.AI / 5/5/2026

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Key Points

  • SciResearcher is introduced as a fully automated agentic framework aimed at enabling frontier scientific reasoning by constructing high-quality, evidence-grounded scientific data.
  • The approach addresses limitations of prior deep research agents by handling sparse and heterogeneous academic sources and supporting computation- and reasoning-heavy workflows beyond simple fact recall.
  • SciResearcher synthesizes conceptual and computational tasks, and then enables long-horizon, tool-integrated reasoning through curated information acquisition.
  • Using the constructed data, the team trains SciResearcher-8B via supervised fine-tuning and agentic reinforcement learning, reporting new state-of-the-art results at the 8B scale.
  • Reported benchmark gains include 19.46% on HLE-Bio/Chem-Gold and absolute improvements of 13–15% on SuperGPQA-Hard-Biology and TRQA-Literature, alongside outperforming multiple larger proprietary agents.

Abstract

Frontier scientific reasoning is rapidly emerging as a key foundation for advancing AI agents in automated scientific discovery. Deep research agents offer a promising approach to this challenge. These models develop robust problem-solving capabilities through post-training on information-seeking tasks, which are typically curated via knowledge graph construction or iterative web browsing. However, these strategies face inherent limitations in frontier science, where domain-specific knowledge is scattered across sparse and heterogeneous academic sources, and problem solving requires sophisticated computation and reasoning far beyond factual recall. To bridge this gap, we introduce SciResearcher, a fully automated agentic framework for frontier-science data construction. SciResearcher synthesizes diverse conceptual and computational tasks grounded in academic evidence, while eliciting information acquisition, tool-integrated reasoning, and long-horizon capabilities. Leveraging the curated data for supervised fine-tuning and agentic reinforcement learning, we develop SciResearcher-8B, an agent foundation model that achieves 19.46% on the HLE-Bio/Chem-Gold benchmark, establishing a new state of the art at its parameter scale and surpassing several larger proprietary agents. It further achieves 13-15% absolute gains on SuperGPQA-Hard-Biology and TRQA-Literature benchmarks. Overall, SciResearcher introduces a new paradigm for automated data construction for frontier scientific reasoning and offers a scalable path toward future scientific agents.