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Published:2026/1/7 2:00:13

5万ツール爆速展開!最強科学ツール🚀💨

超高速で5万以上の科学ツールをIT企業向けに展開!ビジネスチャンスを掴む方法✨

💎 ギャル的キラキラポイント✨ ● 5万個のツールを1日で構築って、マジ卍じゃん!? ● AIと科学ツールを合体させて、研究を爆速化🚀 ● IT企業が科学分野で大活躍できるチャンス到来!

詳細解説いくよ~💖

背景 科学研究(かがくけんきゅう)って、オープンソースのツールがいっぱいあるけど、使うのが大変だったの!インストールしたり、設定したり…時間かかるじゃん?😩それじゃあ、研究がなかなか進まないよね…

続きは「らくらく論文」アプリで

Deploy-Master: Automating the Deployment of 50,000+ Agent-Ready Scientific Tools in One Day

Yi Wang / Zhenting Huang / Zhaohan Ding / Ruoxue Liao / Yuan Huang / Xinzijian Liu / Jiajun Xie / Siheng Chen / Linfeng Zhang

Open-source scientific software is abundant, yet most tools remain difficult to compile, configure, and reuse, sustaining a small-workshop mode of scientific computing. This deployment bottleneck limits reproducibility, large-scale evaluation, and the practical integration of scientific tools into modern AI-for-Science (AI4S) and agentic workflows. We present Deploy-Master, a one-stop agentic workflow for large-scale tool discovery, build specification inference, execution-based validation, and publication. Guided by a taxonomy spanning 90+ scientific and engineering domains, our discovery stage starts from a recall-oriented pool of over 500,000 public repositories and progressively filters it to 52,550 executable tool candidates under license- and quality-aware criteria. Deploy-Master transforms heterogeneous open-source repositories into runnable, containerized capabilities grounded in execution rather than documentation claims. In a single day, we performed 52,550 build attempts and constructed reproducible runtime environments for 50,112 scientific tools. Each successful tool is validated by a minimal executable command and registered in SciencePedia for search and reuse, enabling direct human use and optional agent-based invocation. Beyond delivering runnable tools, we report a deployment trace at the scale of 50,000 tools, characterizing throughput, cost profiles, failure surfaces, and specification uncertainty that become visible only at scale. These results explain why scientific software remains difficult to operationalize and motivate shared, observable execution substrates as a foundation for scalable AI4S and agentic science.

cs / cs.SE / cs.AI