Learn TensorFlow and Deep Learning Fundamentals with Python - Code-First Introduction Part 2/2

Learn TensorFlow and Deep Learning Fundamentals with Python - Code-First Introduction Part 2/2

Daniel Bourke via YouTube Direct link

- Intro/hello/have you watched part 1? If not, you should

1 of 24

1 of 24

- Intro/hello/have you watched part 1? If not, you should

Class Central Classrooms beta

YouTube playlists curated by Class Central.

Classroom Contents

Learn TensorFlow and Deep Learning Fundamentals with Python - Code-First Introduction Part 2/2

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

  1. 1 - Intro/hello/have you watched part 1? If not, you should
  2. 2 - 66. Non-linearity part 1 (straight lines and non-straight lines)
  3. 3 - 67. Non-linearity part 2 (building our first neural network with a non-linear activation function)
  4. 4 - 68. Non-linearity part 3 (upgrading our non-linear model with more layers)
  5. 5 - 69. Non-linearity part 4 (modelling our non-linear data)
  6. 6 - 70. Non-linearity part 5 (reproducing our non-linear functions from scratch)
  7. 7 - 71. Getting great results in less time by tweaking the learning rate
  8. 8 - 72. Using the history object to plot a model’s loss curves
  9. 9 - 73. Using callbacks to find a model’s ideal learning rate
  10. 10 - 74. Training and evaluating a model with an ideal learning rate
  11. 11 - [Keynote] 75. Introducing more classification methods
  12. 12 - 76. Finding the accuracy of our model
  13. 13 - 77. Creating our first confusion matrix
  14. 14 - 78. Making our confusion matrix prettier
  15. 15 - 79. Multi-class classification part 1 (preparing data)
  16. 16 - 80. Multi-class classification part 2 (becoming one with the data)
  17. 17 - 81. Multi-class classification part 3 (building a multi-class model)
  18. 18 - 82. Multi-class classification part 4 (improving our multi-class model)
  19. 19 - 83. Multi-class classification part 5 (normalised vs non-normalised)
  20. 20 - 84. Multi-class classification part 6 (finding the ideal learning rate)
  21. 21 - 85. Multi-class classification part 7 (evaluating our model)
  22. 22 - 86. Multi-class classification part 8 (creating a confusion matrix)
  23. 23 - 87. Multi-class classification part 9 (visualising random samples)
  24. 24 - 88. What patterns is our model learning?

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.