-
Course Overview 0
No items in this section -
Introduction to Machine Learning 4
-
Introduction to Machine Learning 13 minLecture2.1
-
Key point in Machine Learning ( Basics of ML ) 10 minLecture2.2
-
Steps in Machine learning 05 minLecture2.3
-
Issue in Machine Learning 07 minLecture2.4
-
-
Learning with Regression and Trees 5
-
Linear Regression 09 minLecture3.1
-
Logistic Regression part 1 14 minLecture3.2
-
Logistic Regression part 2 14 minLecture3.3
-
Decision Tree Sum using ID3 24 minLecture3.4
-
Decision Tree Sum using CART 22 minLecture3.5
-
-
Learning with Classification and clustering 13
-
Bayes Theorem and Naive Bayes Classifier 11 minLecture4.1
-
Bayesian Belief Network 09 minLecture4.2
-
Markov Models 08 minLecture4.3
-
Hidden Markov Model 11 minLecture4.4
-
Support Vector Machine 10 minLecture4.5
-
K mean Clustering Algorithm 12 minLecture4.6
-
Apriori Algorithm with solved Example 12 minLecture4.7
-
Agglomerative Algorithm with solved Example Part #1 13 minLecture4.8
-
Agglomerative Algorithm with solved Example Part #2 05 minLecture4.9
-
FP Tree Algorithm with Solved Example 15 minLecture4.10
-
Hidden Markov model Basic Part 1 10 minLecture4.11
-
Hidden Markov model Basic Part 2 07 minLecture4.12
-
Hidden Markov model Basic Part 3 08 minLecture4.13
-
-
Dimensionality Reduction 5
-
Dimensionality Reduction 08 minLecture5.1
-
PCA (Principal component Analysis ) Concept 14 minLecture5.2
-
PCA (Principal Component Analysis) Sum 19 minLecture5.3
-
ICA ( Independent Component Analysis ) 07 minLecture5.4
-
Back Propagation 15 minLecture5.5
-
-
Introduction to Neural Network 13
-
Introduction to ANN and structure of ANN 06 minLecture6.1
-
Activation functions in ANN (Discrete and Continuous) 04 minLecture6.2
-
Neural Network Architecture 05 minLecture6.3
-
Linear Separability 04 minLecture6.4
-
Mc-Culloch-Pitts Neural Model 03 minLecture6.5
-
Hebbs Network/Hebbian Learning (with solved example) 17 minLecture6.6
-
Winners-Takes-All 05 minLecture6.7
-
Self Organizing Maps and KSOMs 10 minLecture6.8
-
Linear Vector Quantization (LVQs) 05 minLecture6.9
-
Derivation of Unipolar Continuous Function. 07 minLecture6.10
-
Derivation of Bipolar Continuous Function 11 minLecture6.11
-
Perceptron Learning (with solved example) 11 minLecture6.12
-
Backpropagation Network (with solved example) 19 minLecture6.13
-
-
Introduction to Optimization Techniques 7
-
Optimization Techniques 08 minLecture7.1
-
Derivative Free Optimization 06 minLecture7.2
-
Gradient (Steepest) Descent 07 minLecture7.3
-
Newton Method 05 minLecture7.4
-
Simulated Annealing 06 minLecture7.5
-
Random Search 03 minLecture7.6
-
Downhill Simplex Search 04 minLecture7.7
-
-
Notes 9
-
IndexLecture8.1
-
Module 1Lecture8.2
-
Module 4Lecture8.3
-
Module 5Lecture8.4
-
Module 6Lecture8.5
-
Module 7Lecture8.6
-
Module 8Lecture8.7
-
Optimization Technique NotesLecture8.8
-
Neural Network NotesLecture8.9
-
This content is protected, please login and enroll course to view this content!
Leave A Reply Cancel reply
You must be logged in to post a comment.


5 Comments
Can you advise if this is all in English please?
no sir its in hindi
I am registered in machine learning course.I tried to open your pdf notes but error shows.Please send me all pdf files on my mail id .
It shows click on the blue text below to download the notes as soon as I click on it 404 error is displayed. Please help me out here.
whatsapp us 7038604912