Bohrium + SciMaster: Building the Infrastructure and Ecosystem for Agentic Science at Scale
Linfeng Zhang, Siheng Chen, Yuzhu Cai, Jingyi Chai, Junhan Chang, Kun Chen, Zhi X. Chen, Zhaohan Ding, Yuwen Du, Yuanpeng Gao, Yuan Gao, Jing Gao, Zhifeng Gao, Qiangqiang Gu, Yanhui Hong, Yuan Huang, Xi Fang, Xiaohong Ji, Guolin Ke, Zixing Lei, Xinyu Li, Yongge Li, Ruoxue Liao

TL;DR
This paper introduces Bohrium and SciMaster, an infrastructure and ecosystem designed to enable scalable agentic science by organizing scientific tools, data, and workflows into traceable, reusable components that accelerate scientific discovery.
Contribution
The paper presents Bohrium+SciMaster as a comprehensive infrastructure and ecosystem for agentic science, enabling scalable, reproducible workflows and systematic improvement from real signals.
Findings
Achieved orders-of-magnitude reduction in scientific cycle time.
Demonstrated multi-million scale execution-grounded signals.
Built eleven representative master agents for real workflows.
Abstract
AI agents are emerging as a practical way to run multi-step scientific workflows that interleave reasoning with tool use and verification, pointing to a shift from isolated AI-assisted steps toward \emph{agentic science at scale}. This shift is increasingly feasible, as scientific tools and models can be invoked through stable interfaces and verified with recorded execution traces, and increasingly necessary, as AI accelerates scientific output and stresses the peer-review and publication pipeline, raising the bar for traceability and credible evaluation. However, scaling agentic science remains difficult: workflows are hard to observe and reproduce; many tools and laboratory systems are not agent-ready; execution is hard to trace and govern; and prototype AI Scientist systems are often bespoke, limiting reuse and systematic improvement from real workflow signals. We argue that…
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Taxonomy
TopicsScientific Computing and Data Management · Machine Learning in Materials Science · Research Data Management Practices
