分子和材料的深度学习。

Andrew D White
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引用次数: 18

摘要

深度学习正在成为化学和材料科学领域的标准工具。虽然有深度学习的学习材料,但都没有涵盖化学和材料科学中的应用或分子工作的特殊性。这里介绍的教科书系统地介绍了深度学习在化学和材料科学中的最新研究。它涵盖了数学基础、必要的机器学习、当今常用的神经网络架构,以及作为深度学习实践者所必需的细节。这本教科书是一本活的文件,将随着瞬息万变的深度学习领域的发展而不断更新。
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Deep Learning for Molecules and Materials.

Deep learning is becoming a standard tool in chemistry and materials science. Although there are learning materials available for deep learning, none cover the applications in chemistry and materials science or the peculiarities of working with molecules. The textbook described here provides a systematic and applied introduction to the latest research in deep learning in chemistry and materials science. It covers the math fundamentals, the requisite machine learning, the common neural network architectures used today, and the details necessary to be a practitioner of deep learning. The textbook is a living document and will be updated as the rapidly changing deep learning field evolves.

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A Suite of Tutorials for the WESTPA 2.0 Rare-Events Sampling Software [Article v2.0]. Computing absolute binding affinities by Streamlined Alchemical Free Energy Perturbation [Article v1.0] Deep Learning for Molecules and Materials. Enhanced Sampling Methods for Molecular Dynamics Simulations [Article v1.0] A Guide to the Continuous Constant pH Molecular Dynamics Methods in Amber and CHARMM [Article v1.0].
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