Lecture 19: Graph Neural Networks. Attention Mechanisms (Basics).
Lecture Series Advanced Machine Learning for Physics, Science, and Artificial Scientific Discovery". Graph Neural Network: implementation, example (solving a wave equation on a graph). Attention mechanisms (motivation and basics).
Lecture series 2021/22 by Florian Marquardt. See the course website: https://pad.gwdg.de/s/2021_AdvancedMachineLearningForScience
Видео Lecture 19: Graph Neural Networks. Attention Mechanisms (Basics). канала Florian Marquardt
Lecture series 2021/22 by Florian Marquardt. See the course website: https://pad.gwdg.de/s/2021_AdvancedMachineLearningForScience
Видео Lecture 19: Graph Neural Networks. Attention Mechanisms (Basics). канала Florian Marquardt
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