Become an AI Researcher - LLM, Math, PyTorch, Neural Networks, Transformers

Become an AI Researcher - LLM, Math, PyTorch, Neural Networks, Transformers

freeCodeCamp.org via freeCodeCamp Direct link

- 00:55:03 Math Lesson: Matrices Multiplication, Transpose, Identity

7 of 25

7 of 25

- 00:55:03 Math Lesson: Matrices Multiplication, Transpose, Identity

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

Become an AI Researcher - LLM, Math, PyTorch, Neural Networks, Transformers

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

  1. 1 - 00:00:00 Welcome & Course Overview
  2. 2 - 00:05:28 Requirements & Setup for the Course
  3. 3 - 00:10:48 Math Lesson: Functions Linear, Quadratic, Cubic, Square Root
  4. 4 - 00:19:10 Math Lesson: Derivatives Rate of Change
  5. 5 - 00:33:19 Math Lesson: Vectors Magnitude, Dot Product, Normalization
  6. 6 - 00:46:07 Math Lesson: Gradients Steepest Ascent/Descent, Partial Derivatives
  7. 7 - 00:55:03 Math Lesson: Matrices Multiplication, Transpose, Identity
  8. 8 - 01:08:39 Math Lesson: Probability Expected Value, Conditional Probability
  9. 9 - 01:19:19 START: PyTorch Fundamentals & Creating Tensors
  10. 10 - 01:26:03 PyTorch Lesson: Reshaping and Viewing Tensors
  11. 11 - 01:27:48 PyTorch Lesson: Squeezing and Unsqueezing Dimensions
  12. 12 - 01:41:02 PyTorch Lesson: Indexing and Slicing Tensors
  13. 13 - 01:49:55 PyTorch Lesson: Special Tensors Zero, Ones, Linspace
  14. 14 - 01:54:00 START: Coding Neural Networks from Scratch
  15. 15 - 01:54:29 Neural Networks Lesson: Single Neuron Weights, Bias, Weighted Sum
  16. 16 - 01:57:11 Neural Networks Lesson: Activation Functions Sigmoid, ReLU, tanh
  17. 17 - 02:03:07 Neural Networks Lesson: Multi-Layer Networks & Backpropagation
  18. 18 - 02:11:59 START: Understanding Transformers for LLMs
  19. 19 - 02:14:14 Transformers Lesson: Attention Mechanism Query, Key, Value
  20. 20 - 02:32:39 Transformers Lesson: Self-Attention & Causal Self-Attention
  21. 21 - 02:40:48 Transformers Lesson: Rotary Positional Embeddings RoPE
  22. 22 - 02:44:07 Transformers Lesson: Multi-Head Attention
  23. 23 - 02:55:03 Transformers Lesson: Transformer Block Feed-Forward, Add & Norm
  24. 24 - 03:04:15 Tokenization for GPT Architecture
  25. 25 - 03:06:47 Conclusion & Next Steps

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.