Argus: Evidence Assembly for Scalable Deep Research Agents
Zhen Zhang, Liangcai Su, Zhuo Chen, Xiang Lin, Haotian Xu, Simon Shaolei Du, Kaiyu Yang, Bo An, Lidong Bing, Xinyu Wang

TL;DR
Argus introduces a cooperative Searcher and Navigator system that assembles evidence pieces for deep research, significantly improving performance on complex information seeking tasks.
Contribution
The paper presents a novel evidence assembly approach with a cooperative Searcher and Navigator, enabling scalable, parallel deep research without retraining the core models.
Findings
Argus achieves 86.2 on BrowseComp with 64 Searchers.
The Navigator supports reasoning with under 21.5K tokens.
Performance surpasses proprietary agents on multiple benchmarks.
Abstract
Deep research agents have achieved remarkable progress on complex information seeking tasks. Even long ReAct style rollouts explore only a single trajectory, while recent state of the art systems scale inference time compute via parallel search and aggregation. Yet deep research answers are composed of complementary pieces of evidence, which parallel rollouts often duplicate rather than complete, yielding diminishing returns while pushing the aggregation context toward the model's limit. We propose Argus, an agentic system in which a Searcher and a Navigator cooperate to treat deep research as assembling a jigsaw from complementary evidence pieces, rather than brute forcing the whole answer in parallel. The Searcher collects evidence traces for a given sub-query through ReAct-style interaction. The Navigator maintains a shared evidence graph, verifying which pieces are still missing,…
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