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Week_01_Assignment_01 | Week_01_Assignment_01 |
Week_02_Assignment_02 | Week_02_Assignment_02 |
Week_03_Assignment_03 | Week_03_Assignment_03 |
Week_04_Assignment_04 | Week_04_Assignment_04 |
Week_05_Assignment_05 | Week_05_Assignment_05 |
Week_06_Assignment_06 | Week_06_Assignment_06 |
Week_07_Assignment_07 | Week_07_Assignment_07 |
Week_08_Assignment_08 | Week_08_Assignment_08 |
Week_09_Assignment_09 | Week_09_Assignment_09 |
Week_10_Assignment_10 | Week_10_Assignment_10 |
Week_11_Assignment_11 | Week_11_Assignment_11 |
Week_12_Assignment_12 | Week_12_Assignment_12 |
Sl.No | Chapter Name | MP4 Download |
---|---|---|
1 | The human brain | Download |
2 | Introduction to Neural Networks | Download |
3 | Models of a neuron | Download |
4 | Feedback and network architectures | Download |
5 | Knowledge representation | Download |
6 | Prior information and invariances | Download |
7 | Learning processes | Download |
8 | Perceptron 1 | Download |
9 | Perceptron 2 | Download |
10 | Batch perceptron algorithm | Download |
11 | Perceptron and Bayes classifier | Download |
12 | Linear regression 1 | Download |
13 | Linear regression 2 | Download |
14 | Linear regression 3 | Download |
15 | Logistic regression | Download |
16 | Multi-layer perceptron 1 | Download |
17 | Multi-layer perceptron 2 | Download |
18 | Back propagation 1 | Download |
19 | Back propagation 2 | Download |
20 | XOR problem | Download |
21 | Universal approximation function | Download |
22 | Complexity Regularization and Cross validation | Download |
23 | Convolutional Neural Networks (CNN) | Download |
24 | Cover’s Theorem | Download |
25 | Multivariate interpolation problem | Download |
26 | Radial basis functions (RBF) | Download |
27 | Recursive least squares algorithm | Download |
28 | Comparison of RBF with MLP | Download |
29 | Kernel regression using RBFs | Download |
30 | Kernel Functions | Download |
31 | Basics of constrained optimization | Download |
32 | Optimization with equality constraint | Download |
33 | Optimization with inequality constraint | Download |
34 | Support Vector Machines (SVM) | Download |
35 | Optimal hyperplane for linearly separable patterns | Download |
36 | Quadratic optimization for finding optimal hyperplane | Download |
37 | Optimal hyperplane for non-linearly separable patterns | Download |
38 | Inner product kernel and Mercer’s theorem | Download |
39 | Optimal design of an SVM | Download |
40 | ε-insensitive loss function | Download |
41 | XOR problem revisited using SVMs | Download |
42 | Hilbert Space | Download |
43 | Reproducing Kernel Hilbert Space | Download |
44 | Representer Theorem | Download |
45 | Generalized applicability of the representer theorem | Download |
46 | Regularization Theory | Download |
47 | Euler-Lagrange Equation | Download |
48 | Regularization Networks | Download |
49 | Generalized RBF networks | Download |
50 | XOR problem revisited using RBF | Download |
51 | Structural Risk Minimization | Download |
52 | Bias-Variance Dilemma | Download |
53 | Estimation of regularization parameters | Download |
54 | Basics of L1 regularization | Download |
55 | Grafting | Download |
56 | Kernel PCA | Download |
57 | Hebbian based maximum eigen filter -1 | Download |
58 | Hebbian based maximum eigen filter -2 | Download |
59 | Hebbian based maximum eigen filter - 3 | Download |
60 | VC dimension | Download |
61 | Autoencoders | Download |
62 | Denoising Autoencoders | Download |
63 | Demo – Perceptron | Download |
64 | Demo – Motivation for CNN | Download |
65 | Back propagation in Convolutional Neural Network | Download |
66 | Ethics in AI research and coverage summary | Download |
Sl.No | Chapter Name | English |
---|---|---|
1 | The human brain | Download To be verified |
2 | Introduction to Neural Networks | Download To be verified |
3 | Models of a neuron | Download To be verified |
4 | Feedback and network architectures | Download To be verified |
5 | Knowledge representation | Download To be verified |
6 | Prior information and invariances | Download To be verified |
7 | Learning processes | Download To be verified |
8 | Perceptron 1 | Download To be verified |
9 | Perceptron 2 | Download To be verified |
10 | Batch perceptron algorithm | Download To be verified |
11 | Perceptron and Bayes classifier | Download To be verified |
12 | Linear regression 1 | Download To be verified |
13 | Linear regression 2 | Download To be verified |
14 | Linear regression 3 | Download To be verified |
15 | Logistic regression | Download To be verified |
16 | Multi-layer perceptron 1 | Download To be verified |
17 | Multi-layer perceptron 2 | PDF unavailable |
18 | Back propagation 1 | PDF unavailable |
19 | Back propagation 2 | PDF unavailable |
20 | XOR problem | PDF unavailable |
21 | Universal approximation function | PDF unavailable |
22 | Complexity Regularization and Cross validation | PDF unavailable |
23 | Convolutional Neural Networks (CNN) | PDF unavailable |
24 | Cover’s Theorem | PDF unavailable |
25 | Multivariate interpolation problem | PDF unavailable |
26 | Radial basis functions (RBF) | PDF unavailable |
27 | Recursive least squares algorithm | PDF unavailable |
28 | Comparison of RBF with MLP | PDF unavailable |
29 | Kernel regression using RBFs | PDF unavailable |
30 | Kernel Functions | PDF unavailable |
31 | Basics of constrained optimization | PDF unavailable |
32 | Optimization with equality constraint | PDF unavailable |
33 | Optimization with inequality constraint | PDF unavailable |
34 | Support Vector Machines (SVM) | PDF unavailable |
35 | Optimal hyperplane for linearly separable patterns | PDF unavailable |
36 | Quadratic optimization for finding optimal hyperplane | PDF unavailable |
37 | Optimal hyperplane for non-linearly separable patterns | PDF unavailable |
38 | Inner product kernel and Mercer’s theorem | PDF unavailable |
39 | Optimal design of an SVM | PDF unavailable |
40 | ε-insensitive loss function | PDF unavailable |
41 | XOR problem revisited using SVMs | PDF unavailable |
42 | Hilbert Space | PDF unavailable |
43 | Reproducing Kernel Hilbert Space | PDF unavailable |
44 | Representer Theorem | PDF unavailable |
45 | Generalized applicability of the representer theorem | PDF unavailable |
46 | Regularization Theory | PDF unavailable |
47 | Euler-Lagrange Equation | PDF unavailable |
48 | Regularization Networks | PDF unavailable |
49 | Generalized RBF networks | PDF unavailable |
50 | XOR problem revisited using RBF | PDF unavailable |
51 | Structural Risk Minimization | PDF unavailable |
52 | Bias-Variance Dilemma | PDF unavailable |
53 | Estimation of regularization parameters | PDF unavailable |
54 | Basics of L1 regularization | PDF unavailable |
55 | Grafting | PDF unavailable |
56 | Kernel PCA | PDF unavailable |
57 | Hebbian based maximum eigen filter -1 | PDF unavailable |
58 | Hebbian based maximum eigen filter -2 | PDF unavailable |
59 | Hebbian based maximum eigen filter - 3 | PDF unavailable |
60 | VC dimension | PDF unavailable |
61 | Autoencoders | PDF unavailable |
62 | Denoising Autoencoders | PDF unavailable |
63 | Demo – Perceptron | PDF unavailable |
64 | Demo – Motivation for CNN | PDF unavailable |
65 | Back propagation in Convolutional Neural Network | PDF unavailable |
66 | Ethics in AI research and coverage summary | PDF unavailable |
Sl.No | Language | Book link |
---|---|---|
1 | English | Not Available |
2 | Bengali | Not Available |
3 | Gujarati | Not Available |
4 | Hindi | Not Available |
5 | Kannada | Not Available |
6 | Malayalam | Not Available |
7 | Marathi | Not Available |
8 | Tamil | Not Available |
9 | Telugu | Not Available |