标杆管理
计算机科学
计算模型
计算复杂性理论
计算模拟
催化作用
极限(数学)
工作(物理)
产品(数学)
缩放比例
系统工程
新产品开发
生化工程
产品设计
复杂系统
领域(数学)
工艺工程
纳米技术
模型验证
设计工具
复杂性管理
作者
Xingyu Wang,Zihao Jiao,Ziyun Wang
出处
期刊:SmartMat
[Wiley]
日期:2026-04-01
卷期号:7 (2)
摘要
ABSTRACT Despite advances in computational catalysis, the complexity of theoretical calculations and specialised expertise requirements limit the broader adoption of catalyst design tools. This work introduces CatPath‐GPT, a mixture‐of‐experts framework that democratizes computational catalyst design by integrating three AI specialists: product prediction (77.2% accuracy), computational planning, and automated code generation through a unified BERT‐based router. Experimental validation through two case studies demonstrates practical impact: systematic screening of Cu x Zn 1 − x catalysts identifies optimal compositions for selective CO 2 RR (Cu 75 Zn 25 for ethanol), while high‐throughput metal oxide screening reproduces Nørskov's classical scaling relationships and identifies high‐activity materials. Benchmarking against GPT‐4 and Mistral‐7B demonstrates superior performance across catalyst‐related tasks, particularly in modeling complex surface reactions. The open‐source framework enables researchers without computational expertise to perform advanced catalyst design, potentially transforming how catalytic materials are discovered and optimized.
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