工作流程
计算机科学
过程(计算)
可视化
工艺工程
工艺优化
班级(哲学)
化学
鉴定(生物学)
数据可视化
化学空间
数据挖掘
采样(信号处理)
工作流管理系统
抽象
工作流技术
大数据
贝叶斯优化
口译(哲学)
肟
软件工程
贝叶斯概率
反应条件
作者
Jonas Düker,Lukas Hebing,Samuel Leweke,Rachel L. Nicholls,Maximilian Lübbesmeyer,Giulio Volpin,Burkhard König,Julius Hillenbrand
标识
DOI:10.1021/acs.oprd.5c00384
摘要
We present a newly developed, data-assisted workflow at Bayer that integrates Bayesian optimization (BO) with CIME4R, an open-source data visualization tool with explainable AI features, to facilitate chemical reaction optimization. The workflow leverages the efficiency of BO for navigating high-dimensional reaction spaces while using CIME4R to visualize the algorithm’s decision-making process, exploration of the reaction space, and the influence and interactions of individual variables. These visualizations aid the interpretation of complex data sets and provide a platform for scientists to efficiently develop a deeper understanding of machine-learning-guided optimization campaigns, thereby improving accessibility and user trust, as well as decision-making efficiency. We demonstrate the workflow in a case study involving a new class of oxime amide ligands evaluated in Ullmann-type C–N cross-coupling reactions. This data-science-driven approach enabled the rapid identification of high-yielding conditions by sampling only 0.5% of the full parameter space within 4 days of experimental work. Feature-importance analysis revealed the solvent, propylene glycol methyl ether, as the most influential parameter, followed by K3PO4 as the preferred base.
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