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1
Introduction
2
What is Machine Learning
3
Machine Learning is not Magic
4
History of Machine Learning
5
AI Winter
6
Patterns
7
orthogonal decomposition
8
lowdimensional patterns
9
boundary layer simulations
10
turbulent energy cascade
11
closure modeling
12
superresolution
13
autoencoders
14
reduced order models
15
flow control
16
inspiration from biology
Description:
Explore an overview of Machine Learning applications in Fluid Mechanics through this 30-minute video lecture. Discover how fluid mechanics, one of the original "big data" sciences, has contributed to many advances in ML. Delve into topics such as orthogonal decomposition, low-dimensional patterns, boundary layer simulations, turbulent energy cascade, closure modeling, super-resolution, autoencoders, reduced order models, and flow control. Learn about the history of Machine Learning, including the AI Winter, and gain insights into patterns inspired by biology. Access additional resources, including related papers and the presenter's lab website, to further expand your understanding of this interdisciplinary field.

Machine Learning for Fluid Mechanics

Steve Brunton
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