[CFD] Conjugate Gradient for CFD (Part 1): Background and Steepest Descent
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34:26
[CFD] Conjugate Gradient for CFD (Part 2): Optimum Distance and Directions
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28:31
[CFD] Gauss-Seidel Method in CFD
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32:22
Gradient descent, Newton's method
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32:40
[CFD] Multi-Grid for CFD (Part 1): Smoothing, Aliasing and the Correction Equation
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19:27
How Paul Erdős Cracked This Geometry Problem | The Anning-Erdős Theorem
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28:33
Terence Tao on how we measure the cosmos | The Distance Ladder Part 1
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12:02
F-16 Falcons: O Fim dos Hawks ao Amanhecer
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29:49