Transformations and Automatic Differentiation in Computational Thinking - Lecture 3

Transformations and Automatic Differentiation in Computational Thinking - Lecture 3

The Julia Programming Language via YouTube Direct link

Agenda of Lecture0-1:30 Transformations and Automatic Differentiations

2 of 20

2 of 20

Agenda of Lecture0-1:30 Transformations and Automatic Differentiations

Class Central Classrooms beta

YouTube playlists curated by Class Central.

Classroom Contents

Transformations and Automatic Differentiation in Computational Thinking - Lecture 3

Automatically move to the next video in the Classroom when playback concludes

  1. 1 Introduction by MIT's Prof. Alan Edelman
  2. 2 Agenda of Lecture0-1:30 Transformations and Automatic Differentiations
  3. 3 General Linear Transformation
  4. 4 Shear Transformation
  5. 5 Non-Linear Transformation(Warp)
  6. 6 Rotation
  7. 7 Compose Transformation(Rotate followed by Warp)
  8. 8 More Transformations(xy, rθ)
  9. 9 Linear and Non-Linear Transformations
  10. 10 Linear combinations of Images
  11. 11 Functions in Maths and in Julia(Short form, anonymous and long form)
  12. 12 Automatic Differentiation of Univariates
  13. 13 Scalar Valued Multivariate Functions
  14. 14 Automatic Differentiation: Scalar valued and Multivariate Functions
  15. 15 Minimizing "loss function" in Machine Learning
  16. 16 Transformations: Vector Valued Multivariate Functions
  17. 17 Automatic Differentiation of Transformations
  18. 18 But what is a transformation, really?
  19. 19 Significance of Determinants in Scaling
  20. 20 Resource for Automatic Differentiation in 10 minutes with Julia

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.