生成语法
催交
计算机科学
分类
生成设计
代表(政治)
数据科学
人工智能
机器学习
管理科学
系统工程
工程类
政治
公制(单位)
运营管理
法学
政治学
作者
Daniel Schwalbe‐Koda,Rafael Gómez‐Bombarelli
标识
DOI:10.1007/978-3-030-40245-7_21
摘要
Materials discovery is decisive for tackling urgent challenges related to energy, the environment, health care, and many others. In chemistry, conventional methodologies for innovation usually rely on expensive and incremental strategies to optimize properties from molecular structures. On the other hand, inverse approaches map properties to structures, thus expediting the design of novel useful compounds. In this chapter, we examine the way in which current deep generative models are addressing the inverse chemical discovery paradigm. We begin by revisiting early inverse design algorithms. Then, we introduce generative models for molecular systems and categorize them according to their architecture and molecular representation. Using this classification, we review the evolution and performance of important molecular generation schemes reported in the literature. Finally, we conclude highlighting the prospects and challenges of generative models as cutting edge tools in materials discovery.
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