Chapters (62)
- 0:00Intro
- 3:07Getting started
- 5:07Vectors
- 21:51Operation on vectors
- 38:52Matrices
- 52:02Operation on Matrices
- 52:27Matrix Scalar Multiplication
- 55:47Addition of Matrices
- 59:27Properties of Matrix addition
- 1:03:07Matrix Multiplication
- 1:08:02Properties of Matrix Multiplication
- 1:18:32Linear Combination Concept
- 1:36:20Span
- 1:50:57Linear Transformation
- 2:05:30Transpose
- 2:14:02Properties of Transpose
- 2:19:52Dot Product
- 2:25:22Geometric Meaning of Dot Product
- 2:34:32Types of Matrices
- 3:04:22Determinant
- 3:11:17Geometric Meaning of Determinant
- 3:15:42Calculating Determinant
- 3:23:37Properties of Determinant
- 3:27:22Rule of Sarus
- 3:48:42Minor
- 3:56:49Cofactor of a Matrix
- 4:00:42Steps to calculate Cofactor of a Matrix
- 4:03:17Adjoint of a Matrix
- 4:18:47Trace of a Matrix
- 4:17:22Properties of Trace
- 4:38:17System of Equations
- 5:03:07Example
- 5:17:42Determinant
- 5:57:47Single Variable Calculus
- 6:02:48What is Calculus?
- 6:11:07Ideas in Calculus
- 6:11:33Differentiation
- 6:18:38Integration
- 6:22:07Precalculus Functions
- 6:43:52Single Variable Calculus (Trigonometry Review)
- 6:45:02Trigonometry functions
- 7:12:02Unit Circle
- 7:24:32Limit Concept
- 7:51:47Definition of a limit
- 7:53:27Continuity
- 8:00:17Evaluating Limits
- 8:17:12Sandwich Theorem
- 8:21:12Differentiation
- 8:45:42Differentiation as rate of Change
- 8:52:37Differentiation in terms of Limit
- 9:04:51Example
- 9:09:54Important Differentiation Rules
- 9:53:12Rule Chain Rule
- 10:17:27What is Deep Learning
- 10:18:27What is Machine Learning
- 10:36:37Definition of Deep Learning
- 10:43:07Applications
- 10:47:19Introduction to Neural Networks
- 10:51:17Artificial Neural Networks
- 11:08:31The Perceptron
- 11:19:57Linear Neural Network
- 11:21:32Intuition Behind Activation function and Backpropagation Algorithm
Show the creator's full description
This deep learning course is designed to take you from beginner to proficient in deep learning. You will learn the fundamental concepts, architectures, and applications of deep learning in a clear and practical way. So get ready to build, train, and deploy models that can tackle real-world problems across various industries.
Course created by @AyushSinghSh
GitHub: https://github.com/ayush714/core-deep-learning-course/tree/main
❤️ Try interactive JavaScript courses we love, right in your browser: https://scrimba.com/freeCodeCamp-JavaScript (Made possible by a grant from our friends at Scrimba)
⭐️ Contents ⭐️
0:00:00 Intro
0:03:07 Getting started
0:05:07 Vectors
0:21:51 Operation on vectors
0:38:52 Matrices
0:52:02 Operation on Matrices
0:52:27 Matrix Scalar Multiplication
0:55:47 Addition of Matrices
0:59:27 Properties of Matrix addition
1:03:07 Matrix Multiplication
1:08:02 Properties of Matrix Multiplication
1:18:32 Linear Combination Concept
1:36:20 Span
1:50:57 Linear Transformation
2:05:30 Transpose
2:14:02 Properties of Transpose
2:19:52 Dot Product
2:25:22 Geometric Meaning of Dot Product
2:34:32 Types of Matrices
3:04:22 Determinant
3:11:17 Geometric Meaning of Determinant
3:15:42 Calculating Determinant
3:23:37 Properties of Determinant
3:27:22 Rule of Sarus
3:48:42 Minor
3:56:49 Cofactor of a Matrix
4:00:42 Steps to calculate Cofactor of a Matrix
4:03:17 Adjoint of a Matrix
4:18:47 Trace of a Matrix
4:17:22 Properties of Trace
4:38:17 System of Equations
5:03:07 Example
5:17:42 Determinant
5:57:47 Single Variable Calculus
6:02:48 What is Calculus?
6:11:07 Ideas in Calculus
6:11:33 Differentiation
6:18:38 Integration
6:22:07 Precalculus Functions
6:43:52 Single Variable Calculus (Trigonometry Review)
6:45:02 Trigonometry functions
7:12:02 Unit Circle
7:24:32 Limit Concept
7:51:47 Definition of a limit
7:53:27 Continuity
8:00:17 Evaluating Limits
8:17:12 Sandwich Theorem
8:21:12 Differentiation
8:45:42 Differentiation as rate of Change
8:52:37 Differentiation in terms of Limit
9:04:51 Example
9:09:54 Important Differentiation Rules
9:53:12 Rule Chain Rule
10:17:27 What is Deep Learning
10:18:27 What is Machine Learning
10:36:37 Definition of Deep Learning
10:43:07 Applications
10:47:19 Introduction to Neural Networks
10:51:17 Artificial Neural Networks
11:08:31 The Perceptron
11:19:57 Linear Neural Network
11:21:32 Intuition Behind Activation function and Backpropagation Algorithm
🎉 Thanks to our Champion and Sponsor supporters:
👾 davthecoder
👾 jedi-or-sith
👾 南宮千影
👾 Agustín Kussrow
👾 Nattira Maneerat
👾 Heather Wcislo
👾 Serhiy Kalinets
👾 Justin Hual
👾 Otis Morgan
👾 Oscar Rahnama
--
Learn to code for free and get a developer job: https://www.freecodecamp.org
Read hundreds of articles on programming: https://freecodecamp.org/news
Description and video by freeCodeCamp.org. This page is an independent companion view; the video is embedded from YouTube.