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原始链接: https://news.ycombinator.com/item?id=40941056

TBC, this is about deep learning for physics problems, not a general approach to deep learning from a physicist's perspective.> This document contains a practical and comprehensive introduction of everything related to deep learning in the context of physical simulations. 所有主题都尽可能以 Jupyter 笔记本的形式提供实践代码示例,以便快速入门。 除了标准的数据监督学习之外,我们还将研究物理损失约束、与可微分模拟更紧密耦合的学习算法、针对物理问题定制的训练算法,以及强化学习和不确定性建模。 我们生活在激动人心的时代:这些方法具有从根本上改变计算机模拟所能实现的目标的巨大潜力。

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TBC, this is about deep learning for physics problems, not a general approach to deep learning from a physicist's perspective.

> This document contains a practical and comprehensive introduction of everything related to deep learning in the context of physical simulations. As much as possible, all topics come with hands-on code examples in the form of Jupyter notebooks to quickly get started. Beyond standard supervised learning from data, we’ll look at physical loss constraints, more tightly coupled learning algorithms with differentiable simulations, training algorithms tailored to physics problems, as well as reinforcement learning and uncertainty modeling. We live in exciting times: these methods have a huge potential to fundamentally change what computer simulations can achieve.

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