ML meets MLn: Machine learning in ligand promoted homogeneous catalysis

Jonathan D. Hirst , Samuel Boobier , Jennifer Coughlan , Jessica Streets , Philippa L. Jacob , Oska Pugh , Ender Özcan , Simon Woodward
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引用次数: 2

Abstract

The benefits of using machine learning approaches in the design, optimisation and understanding of homogeneous catalytic processes are being increasingly realised. We focus on the understanding and implementation of key concepts, which serve as conduits to more advanced chemical machine learning literature, much of which is (presently) outside the area of homogeneous catalysis. Potential pitfalls in the ‘workflow’ procedures needed in the machine learning process are identified and all the examples provided are in a chemical sciences context, including several from ‘real world’ catalyst systems. Finally, potential areas of expansion and impact for machine learning in homogeneous catalysis in the future are considered.

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ML与MLn相遇:配体促进均相催化的机器学习
在均匀催化过程的设计、优化和理解中使用机器学习方法的好处正在日益实现。我们专注于理解和实施关键概念,这些概念是通往更先进的化学机器学习文献的渠道,其中大部分(目前)不在均相催化领域。识别了机器学习过程中所需的“工作流程”程序中的潜在陷阱,提供的所有示例都是在化学科学背景下提供的,包括来自“现实世界”催化剂系统的几个示例。最后,考虑了机器学习在均相催化领域未来的潜在扩展和影响。
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来源期刊
Artificial intelligence chemistry
Artificial intelligence chemistry Chemistry (General)
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21 days
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