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书香西城数字阅读空间技术实现模式探讨 被引量:1
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作者 成鑫 《图书馆研究》 2017年第2期93-95,共3页
重视文化与科技的融合发展,对有效提升文化服务的深度和广度,真正促进公共文化服务的均等化具有重要意义。论述了书香西城数字阅读空间的内涵、建设规划、技术方案和创新意义。
关键词 书香西城 知识管理 知识发现 移动服务
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Machine-Learning-Assisted Molecular Design of Innovative Polymers
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作者 Tianle Yue Jianxin He Ying Li 《Accounts of Materials Research》 2025年第8期1033-1045,共13页
A new paradigm driven by artificial intelligence(AI)and machine learning(ML)is significantly accelerating the iterative pace of polymer materials research.Traditional experimental approaches to polymer discovery have ... A new paradigm driven by artificial intelligence(AI)and machine learning(ML)is significantly accelerating the iterative pace of polymer materials research.Traditional experimental approaches to polymer discovery have long relied on trial and error,requiring extensive time and resources while offering limited access to the vast chemical design space.In contrast,ML-assisted strategies provide a transformative framework for efficiently navigating this complex landscape.This paper focuses specifically on polymer design at the molecular level.By integrating data-driven methodologies,researchers can extract structure−property relationships,predict polymer properties,and optimize molecular architectures with unprecedented speed.ML-driven polymer design follows a structured approach:(1)database construction,(2)structural representation and feature engineering,(3)development of ML-based property prediction models,(4)virtual screening of potential candidates,and(5)validation through experiments and/or numerical simulations.This workflow faces two central challenges.First is the limited availability of high-quality polymer datasets,particularly for advanced materials with specialized properties.Second is the generation of virtual polymer structures.Unlike small-molecule drug discovery,where vast libraries of candidate compounds exist,polymer chemistry lacks an equivalent repository of hypothetical structures.Recent efforts have leveraged rule-based polymerization reactions and generative models to create large-scale databases of hypothetical polymers,significantly expanding the design space.Additionally,the diversity of polymer structures,the broad range of their properties,and the limited availability of training samples add complexity to developing accurate predictive models.Addressing these challenges requires innovative ML techniques,such as transfer learning,multitask learning,and generative models,to extract meaningful insights from sparse data and improve prediction reliability.This data-driven approach has enabled the discovery of novel,high-performance polymers for applications in aerospace,electronics,energy storage,and biomedical engineering.Despite these advancements,several hurdles remain.The interpretability of ML models,particularly deep neural networks,is a pressing concern.While black-box models can achieve remarkable predictive accuracy,understanding their decision-making processes remains challenging.Explainable AI methods are increasingly being explored to provide insights into feature importance,model uncertainty,and the underlying chemistry driving polymer properties.Additionally,the synthesizability and processability of ML-generated candidates must be carefully considered to ensure practical experimental validation and real-world application.In this paper,we review recent progress in ML-assisted molecular design of polymer materials,focusing on database development,feature representation,predictive modeling,and virtual polymer generation.We highlight emerging methodologies,including transformer-based language models,physics-informed neural networks,and closed-loop discovery frameworks,which collectively enhance the efficiency and accuracy of polymer informatics.Finally,we discuss the future outlook of ML-driven polymer research,emphasizing the need for collaborative efforts between data scientists,chemists,and engineers to refine predictive models,integrate experimental validation,and accelerate the development of next-generation polymeric materials.By leveraging the synergy between computational modeling and experimental insights,ML-assisted design is poised to revolutionize polymer discovery,enabling the rapid development of sustainable,high-performance materials tailored for diverse applications. 展开更多
关键词 molecular level trial errorrequiring machine learning ml structure property relationships artificial intelligence ai chemical design spacein data driven methodologies polymer design
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