Showing posts with label JNTUH. Show all posts
Showing posts with label JNTUH. Show all posts

Deep Learning: UNIT 1 : Deep Learning Fundamentals

  Deep Learning

UNIT I

Deep Learning: Fundamentals

  • Introduction
  • Building Block of Neural Networks
  • Layers
  • MLPs
  • Forward pass
  • backward pass
  • class
  • trainer and optimizer
  • The Vanishing and Exploding Gradient Problems
  • Difficulties in Convergence
  • Local and Spurious Optima
  • Preprocessing
  • Momentum
  • learning rate Decay
  • Weight Initialization
  • Regularization
  • Dropout
  • SoftMax
  • Cross Entropy loss function
  • Activation Functions


πŸ‘‰Deep Learning: UNIT 1 (A) Notes: Deep Learning: Fundamentals Part 1 Notes

πŸ‘‰Deep Learning: UNIT 1 (A) PPTs: Deep Learning Fundamentals Part 1 PPTs

πŸ‘‰Deep Learning: Unit 1 (B) Notes: Deep Learning Fundamentals Part 2 Notes

πŸ‘‰Deep Learning: UNIT 1 (B): Deep Learning: Fundamentals Part2 PPTs

πŸ‘‰Deep Learning: UNIT 1: Deep Learning Fundamentals -Long Answer Questions

πŸ‘‰Deep Learning: UNIT 1: Deep Learning Fundamentals - Short Answer Questions

Deep Learning: UNIT 1 (B): Deep Learning: Fundamentals Part2 PPTs

                                                                             UNIT-1 B

Deep Learning: Fundamentals

1.     The Softmax Function

2.     Cross-Entropy Loss Function

3.     Activation Functions

4.     Preprocessing

5.     Momentum

6.     Learning Rate Decay

7.     Weight Initialization

8.     Regularization

9.     Dropout



About Deep Learning

 Deep Learning

UNIT I

Deep Learning: Fundamentals, Introduction, Building Block of Neural Networks, Layers, MLPs, Forward pass, backward pass, class, trainer and optimizer, The Vanishing and Exploding Gradient Problems, Difficulties in Convergence, Local and Spurious Optima, Preprocessing, Momentum, learning rate Decay, Weight Initialization, Regularization, Dropout, SoftMax, Cross Entropy loss function, Activation Functions.


πŸ‘‰Deep Learning: UNIT 1 (A) Notes: Deep Learning: Fundamentals Part 1 Notes

πŸ‘‰Deep Learning: UNIT 1 (A) PPTs: Deep Learning Fundamentals Part 1 PPTs

πŸ‘‰Deep Learning: Unit 1 (B) Notes: Deep Learning Fundamentals Part 2 Notes

πŸ‘‰Deep Learning: UNIT 1 (B): Deep Learning: Fundamentals Part2 PPTs

πŸ‘‰Deep Learning: UNIT 1: Deep Learning - Fundamentals: Long Answer Questions

πŸ‘‰Deep Learning: UNIT 1: Deep Learning - Fundamentals : Short Answer Questions


 UNIT II

CNN: Introduction, striding and padding, pooling layers, structure, operations and prediction of                  CNN with layers, CNN -Case study with MNIST, CNN VS Fully Connected.


πŸ‘‰Deep Learning: UNIT-2: CNN PPTs


πŸ‘‰Deep Learning: UNIT-2: CNN Notes


πŸ‘‰Deep Learning: UNIT 2: CNN : Long Answer Questions


πŸ‘‰Deep Learning: UNIT 2: CNN: Short Answer Questions



 UNIT III

RNN: Handling Branches, Layers, Nodes, Essential Elements-Vanilla RNNs, GRUs, LSTM 


πŸ‘‰Deep Learning: UNIT 3 (A): RNN: Notes

πŸ‘‰Deep Learning: UNIT 3 (A) : RNN : PPTs

πŸ‘‰Deep Learning: UNIT- 3: RNN: Long Answer Questions

πŸ‘‰Deep Learning: UNIT 3 : RNN : Short Answer Questions



UNIT IV

Autoencoders: Denoising Autoencoders, Sparse Autoencoders, Deep Autoencoders, Variational                                  Autoencoders, GANS 


πŸ‘‰Deep Learning: UNIT 4: Autoencoders PPTs

πŸ‘‰Deep Learning: UNIT 4: Autoencoders NOTEs


UNIT V

Transfer Learning- Types, Methodologies, Diving into Transfer Learning, Challenges 


πŸ‘‰Deep Learning : UNIT 5: Transfer Learning Notes

πŸ‘‰Deep Learning : UNIT 5: Transfer Learning PPTs

Text Books:

1.  Seth Weidman, “Deep Learning from Scratch”, O'Reilly Media, Inc., 2019

2.  Ian Goodfellow, Yoshua Bengio and Aaron Courville, “Deep Learning” , MIT Press, 2015

3.  Dipanjan Sarkar, Raghav Bali, “Transfer Learning in Action”, Manning Publications, 2021 

Reference Books:

1.  Giancarlo Zaccone, Md. Rezaul Karim, Ahmed Menshawy "Deep Learning with TensorFlow: Explore neural networks with Python", Packt Publisher, 2017.


2.  Antonio Gulli, Sujit Pal, "Deep Learning with Keras", Packt Publishers, 2017.

3.  Francois Chollet, "Deep Learning with Python", Manning Publications, 2017.

Machine Learning2 - UNIT 2(B) PPTs : Artificial Neural Networks PPTs


UNIT – II (B)

Artificial Neural Networks

Introduction

Neural Network Representation

Appropriate Problems for Neural Network Learning

Perceptron’s

 Multilayer Networks and

the Back-Propagation Algorithm.



Machine Learning 2 - UNIT-2 (A) PPTs : Decision Tree Learning PPTs

UNIT-2 (A) 
Decision Tree Learning 

 Decision Tree Learning :
  • Introduction
  • Decision Tree Representation
  • Appropriate Problems for Decision Tree Learning
  • The Basic Decision Tree Learning Algorithm
  • Issues In Decision Tree Learning

 

Machine Learning 2 - UNIT-2 (A) NOTEs: Decision Tree Learning Notes

UNIT-2 (A)
Decision Tree Learning 

 Decision Tree Learning:
  • Introduction
  • Decision Tree Representation
  • Appropriate Problems for Decision Tree Learning
  • The Basic Decision Tree Learning Algorithm
  • Issues In Decision Tree Learning

 

About Machine Learning 2

Machine Learning 

πŸ‘‰Machine Learning 2 Syllabus


UNIT-1 : Introduction & Concept Learning and the General to Specific Ordering

Introduction- Well-Posed Learning Problems, Designing a Learning System, Perspectives and Issues in Machine Learning, Introduction to Supervised, Unsupervised and Reinforcement Learning.

Concept Learning and the General to Specific Ordering – Introduction, A Concept Learning Task, Concept Learning as Search, Find-S: Finding a Maximally Specific Hypothesis, Version Spaces and the Candidate Elimination Algorithm.

πŸ‘‰Machine Learning 2- UNIT-1 (A) Notes: Introduction & Concept Learning and the General to Specific Ordering Notes

πŸ‘‰Machine Learning 2 UNIT-1 (A) PPTs: Introduction PPTs

πŸ‘‰Machine Learning 2- UNIT-1 (B) PPTs: Concept Learning and the General to Specific Ordering PPTs

πŸ‘‰Machine Learning 2 - UNIT-1 Questions

UNIT-2: Decision Tree Learning & Artificial Neural Networks

Decision Tree Learning – Introduction, Decision Tree Representation, Appropriate Problems for Decision Tree Learning, The Basic Decision Tree Learning Algorithm, Issues In Decision Tree Learning.

Artificial Neural Networks- Introduction, Neural Network Representation, Appropriate Problems for Neural Network Learning, Perceptrons, Multilayer Networks and the Back-Propagation Algorithm.

πŸ‘‰Machine Learning 2 - UNIT-2 (A) NOTEs: Decision Tree Learning

πŸ‘‰Machine Learning 2 - UNIT-2 (A) PPTs : Decision Tree Learning PPTs

πŸ‘‰Machine Learning2 - UNIT-2(B) Notes: Artificial Neural Networks Notes

πŸ‘‰Machine Learning2 - UNIT 2(B) PPTs : Artificial Neural Networks PPTs

πŸ‘‰Machine Learning2 - UNIT 2 : Decision Tree and Artificial Neural Network Questions

UNIT-3: Bayesian Learning & Instance-Based Learning

Bayesian Learning – Introduction, Bayes Theorem, Bayes Theorem and Concept Learning, Bayes Optimal Classifier, Naive Bayes Classifier, Bayesian Belief Networks, EM Algorithm.

Instance-Based Learning- Introduction, K-Nearest Neighbor Algorithm, Locally Weighted Regression, Remarks on Lazy and Eager Learning.

πŸ‘‰Machine Learning 2 - UNIT-3 (A) Notes: Bayesian Learning Notes

πŸ‘‰Machine Learning 2 : UNIT-3 (A) PPTs: Bayesian Learning PPTs

πŸ‘‰Machine Learning 2 : UNIT-3 (B) NOTEs: Instance-Based Learning NOTEs

πŸ‘‰Machine Learning 2 : UNIT-3 (B) PPTs: Instance-Based Learning PPTs

πŸ‘‰Machine Learning2- UNIT-3 Questions

UNIT-4: Genetic Algorithms & Learning Sets of Rules

Genetic Algorithms – Motivation, Genetic Algorithms, An Illustrative Example, Genetic Programming, Models of Evolution and Learning, Parallelizing Genetic Algorithms.

Learning Sets of Rules – Introduction, Sequential Covering Algorithms, Learning Rule Sets: Summary, Learning First-Order Rules, Learning Sets Of First-Order Rules: FOIL

πŸ‘‰Machine Learning2 - UNIT-4 (A) NOTEs: Genetic Algorithms NOTEs

πŸ‘‰Machine Learning2- UNIT -4 (A) PPTs: Genetic Algorithms PPTs

 πŸ‘‰Machine Learning2: UNIT-4 (B) NOTEs: Learning Sets of Rules NOTEs

πŸ‘‰Machine Learning2: UNIT-4 (B) PPTs: Learning Sets of Rules PPTs

πŸ‘‰Machine Learning2: UNIT-4 Questions

UNIT-5: Analytical Learning & Reinforcement Learning

Analytical Learning- Introduction, Learning With Perfect Domain Theories: PROLOG-EBG, Explanation-Based Learning Of Search Control Knowledge.

Reinforcement Learning – Introduction, The learning task, Q–learning, Nondeterministic, Rewards and Actions, Temporal Difference Learning, Generalizing from Examples, Relationship to Dynamic Programming.

πŸ‘‰Machine Learning2: UNIT-5(A) NOTES: Analytical Learning NOTES

πŸ‘‰Machine Learning2: UNIT-5(A) PPTs: ANALYTICAL LEARNING PPTs

πŸ‘‰Machine Learning2: UNIT-5(B) NOTEs: Reinforcement Learning NOTEs

πŸ‘‰Machine Learning2: UNIT-5(B) PPTs: Reinforcement Learning PPTs

πŸ‘‰Machine Learning2: UNIT-5 Questions


Text Books:

1. Machine Learning – Tom M. Mitchell, – MGH

2. Machine Learning: An Algorithmic Perspective, Stephen Marsland, Taylor & Francis (CRC)

Reference Books:

1. Machine Learning Methods in the Environmental Sciences, Neural Networks, William W Hsieh, Cambridge Univ. Press.

2. Richard o. Duda, Peter E. Hart and David G. Stork, pattern classification, John Wiley & Sons Inc., 2001.





 



About Machine Learning

 

Machine Learning

πŸ‘‰  About Machine Learning 1

  • The Machine Learning Landscape
  • Classification
  • Support Vector Machines
  • Decision Trees
  • Ensemble Learning and Random Forests
  • Dimensionality Reduction
  • Clustering
  • πŸ‘‰ YouTube Link: https://www.youtube.com/@drrambabupemula

πŸ‘‰ About Machine Learning 2 
  • Introduction 
  • Data Pre-processing
  • Performance measurement of models 
  • Supervised Learning 
  • Decision Tree Learning 
  • Unsupervised Learning 
  • Ensemble Models

Deep Learning

Deep Learning  


UNIT I
Deep Learning: Fundamentals, Introduction, Building Block of Neural Networks, Layers, MLPs, Forward pass, backward pass, class, trainer and optimizer, The Vanishing and Exploding Gradient Problems, Difficulties in Convergence, Local and Spurious Optima, Preprocessing, Momentum, learning rate Decay, Weight Initialization, Regularization, Dropout, SoftMax, Cross Entropy loss function, Activation Functions.

UNIT II
CNN: Introduction, striding and padding, pooling layers, structure, operations and prediction of CNN with layers, CNN -Case study with MNIST, CNN VS Fully Connected

UNIT III
RNN: Handling Branches, Layers, Nodes, Essential Elements-Vanilla RNNs, GRUs, LSTM

UNIT IV
Autoencoders: Denoising Autoencoders, Sparse Autoencoders, Deep Autoencoders, Variational Autoencoders, GANS

UNIT V
Transfer Learning- Types, Methodologies, Diving into Transfer Learning, Challenges



Text Books:

1.  Seth Weidman, “Deep Learning from Scratch”, O'Reilly Media, Inc., 2019

2.  Ian Goodfellow, Yoshua Bengio and Aaron Courville, “Deep Learning” , MIT Press, 2015

3.  Dipanjan Sarkar, Raghav Bali, “Transfer Learning in Action”, Manning Publications, 2021

 

Reference Books:

1.  Giancarlo Zaccone, Md. Rezaul Karim, Ahmed Menshawy "Deep Learning with  TensorFlow: Explore neural networks with Python", Packt Publisher, 2017.


2.  Antonio Gulli, Sujit Pal, "Deep Learning with Keras", Packt Publishers, 2017.

3.  Francois Chollet, "Deep Learning with Python", Manning Publications, 2017.


MCQsπŸ‘‡


About Machine Learning

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