End-to-end autonomous scientific discovery on a real optical platform
Shuxing Yang, Fujia Chen, Rui Zhao, Junyao Wu, Yize Wang, Haiyao Luo, Ning Han, Qiaolu Chen, Yuze Hu, Wenhao Li, Mingzhu Li, Hongsheng Chen, Yihao Yang

TL;DR
The paper presents Qiushi Discovery Engine, an LLM-based autonomous system that conducts end-to-end scientific discovery on a real optical platform, discovering and validating a novel physical mechanism.
Contribution
It introduces a novel AI agentic system capable of autonomous scientific discovery and validation in a real physical experiment, a first in the field.
Findings
Reproduced a transmission-matrix experiment autonomously.
Converted coherence-order theory into experimental observables.
Discovered and validated a new optical bilinear interaction mechanism.
Abstract
Scientific research has long been human-led, driving new knowledge and transformative technologies through the continual revision of questions, methods and claims as evidence accumulates. Although large language model (LLM)-based agents are beginning to move beyond assisting predefined research workflows, none has yet demonstrated end-to-end autonomous discovery in a real physical system that produces a nontrivial result supported by experimental evidence. Here we introduce Qiushi Discovery Engine, an LLM-based agentic system for end-to-end autonomous scientific discovery on a real optical platform. Qiushi Engine combines nonlinear research phases, Meta-Trace memory and a dual-layer architecture to maintain adaptive and stable research trajectories across long-horizon investigations involving thousands of LLM-mediated reasoning, measurement and revision actions. It autonomously…
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