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arXiv 提交日期: 2026-06-22
📄 Abstract - AI Scientists as Engines of Discovery: A Case for Development within Reformed Institutions

Agentic artificial intelligence (AI) systems are beginning to assist, accelerate, and partially automate scientific discovery, performing tasks that span literature synthesis, code generation, data analysis, hypothesis proposal, and model criticism. We argue that this transition is qualitative rather than incremental, and that suitably designed multi-agent systems may evolve from passive computational tools into ``AI scientists'' that can expand the hypothesis-generating and verification capacity of science. Such systems must be developed and deployed within a scientific ecosystem fit for purpose: institutions must be redesigned for verification, accountability, interpretability, and dual-use safety. We sketch how multi-agent architectures, illustrated by the prototype framework \textit{Denario}, accelerate the discovery cycle and traverse model spaces beyond human reach; examine what this implies for authorship, peer review, and the enduring role of human scientists; and close with recommendations for governing AI as an epistemic actor rather than a mere instrument.

顶级标签: agents multi-agents systems
详细标签: ai scientists scientific discovery multi-agent systems institutional reform dual-use safety 或 搜索:

作为发现引擎的AI科学家:在改革制度框架内的发展案例 / AI Scientists as Engines of Discovery: A Case for Development within Reformed Institutions


1️⃣ 一句话总结

本文提出,由多智能体系统构成的人工智能不应仅被视为辅助工具,而应发展为能够自主假设生成与验证的“AI科学家”,并呼吁改革科研体制(如署名、同行评议与安全监管),以负责任地驾驭这一质变性的科研范式转型。

源自 arXiv: 2606.22859