Download CS3491 Artificial Intelligence and Machine Learning (AIML) Books Lecture Notes Syllabus Part-A 2 marks with answers CS3491 Artificial Intelligence and Machine Learning Important Part-B 16 marks Questions, PDF Books, Question Bank with answers Key, CS3491 Artificial Intelligence and Machine Learning Syllabus & Anna University CS3491 Artificial Intelligence and Machine Learning Question Papers Collection.
Students Click to Join our WhatsApp Group | Telegram Channel
Download link is provided for Students to download the Anna University CS3491 Artificial Intelligence and Machine Learning Syllabus Question Bank Lecture Notes Part A 2 marks with answers & Part B 16 marks Question Bank with answer, Anna University Question Paper Collection, All the materials are listed below for the students to make use of it and get good (maximum) marks with our study materials.
“CS3491 Artificial Intelligence and Machine Learning Notes, Lecture Notes, Previous Years Question Papers “
“CS3491 Artificial Intelligence and Machine Learning Important 16 marks Questions with Answers”
“CS3491 Artificial Intelligence and Machine Learning Important 2 marks & 16 marks Questions with Answers”
“CS3491 Artificial Intelligence and Machine Learning Important Part A & Part B Questions”
“CS3491 Artificial Intelligence and Machine Learning Syllabus, Local Author Books, Question Banks”
You all must have this kind of questions in your mind. Below article will solve this puzzle of yours. Just take a look and download the study materials for your preparation.
CS3491 Artificial Intelligence and Machine Learning (AIML) Notes Part A & Part B Important Questions with Answers
CS3491 Artificial Intelligence and Machine Learning – Study Materials – Details
Semester | 04 |
Department | Computer Science and Engineering (CSE) |
Year | Second Year |
Regulation | R2021 |
Subject Code / Name | CS3491 Artificial Intelligence and Machine Learning (AIML) |
Content | Syllabus, Question Banks, Local Authors Books, Lecture Notes, Important Part A 2 Marks Questions and Important Part B 16 Mark Questions, Previous Years Anna University Question Papers Collections. |
Material Format | PDF (Free Download) |
CS3491 Artificial Intelligence and Machine Learning (AIML) “R2021 – SYLLABUS”
CS3491 ARTIFICIAL INTELLIGENCE AND MACHINE LEARNING
UNIT I PROBLEM SOLVING
Introduction to AI – AI Applications – Problem solving agents – search algorithms – uninformed search strategies – Heuristic search strategies – Local search and optimization problems – adversarial search – constraint satisfaction problems (CSP)
UNIT II PROBABILISTIC REASONING
Acting under uncertainty – Bayesian inference – naïve bayes models. Probabilistic reasoning – Bayesian networks – exact inference in BN – approximate inference in BN – causal networks.
UNIT III SUPERVISED LEARNING
Introduction to machine learning – Linear Regression Models: Least squares, single & multiple variables, Bayesian linear regression, gradient descent, Linear Classification Models: Discriminant function – Probabilistic discriminative model – Logistic regression, Probabilistic generative model – Naive Bayes, Maximum margin classifier – Support vector machine, Decision Tree, Random forests
UNIT IV ENSEMBLE TECHNIQUES AND UNSUPERVISED LEARNING
Combining multiple learners: Model combination schemes, Voting, Ensemble Learning – bagging, boosting, stacking, Unsupervised learning: K-means, Instance Based Learning: KNN, Gaussian mixture models and Expectation maximization
UNIT V NEURAL NETWORKS
Perceptron – Multilayer perceptron, activation functions, network training – gradient descent optimization – stochastic gradient descent, error backpropagation, from shallow networks to deep networks –Unit saturation (aka the vanishing gradient problem) – ReLU, hyperparameter tuning, batch normalization, regularization, dropout.
PRACTICAL EXERCISES: 30 PERIODS
- Implementation of Uninformed search algorithms (BFS, DFS)
- Implementation of Informed search algorithms (A*, memory-bounded A*)
- Implement naïve Bayes models
- Implement Bayesian Networks
- Build Regression models
- Build decision trees and random forests
- Build SVM models
- Implement ensembling techniques
- Implement clustering algorithms
- Implement EM for Bayesian networks
- Build simple NN models
- Build deep learning NN models
TEXT BOOKS:
- Stuart Russell and Peter Norvig, “Artificial Intelligence – A Modern Approach”, Fourth Edition, Pearson Education, 2021.
- Ethem Alpaydin, “Introduction to Machine Learning”, MIT Press, Fourth Edition, 2020.
REFERENCES:
- Dan W. Patterson, “Introduction to Artificial Intelligence and Expert Systems”, Pearson Education,2007
- Kevin Night, Elaine Rich, and Nair B., “Artificial Intelligence”, McGraw Hill, 2008
- Patrick H. Winston, “Artificial Intelligence”, Third Edition, Pearson Education, 2006
- Deepak Khemani, “Artificial Intelligence”, Tata McGraw Hill Education, 2013 (http://nptel.ac.in/)
- Christopher M. Bishop, “Pattern Recognition and Machine Learning”, Springer, 2006.
- Tom Mitchell, “Machine Learning”, McGraw Hill, 3rd Edition,1997.
- Charu C. Aggarwal, “Data Classification Algorithms and Applications”, CRC Press, 2014
- Mehryar Mohri, Afshin Rostamizadeh, Ameet Talwalkar, “Foundations of Machine Learning”, MIT Press, 2012.
9. Ian Goodfellow, Yoshua Bengio, Aaron Courville, “Deep Learning”, MIT Press, 2016
DOWNLOAD LINK
Anna University CS3491 Artificial Intelligence and Machine Learning Books Question Banks Lecture Notes Syllabus CS3491 Artificial Intelligence and Machine Learning Part A 2 Marks with Answers Part – B 16 Marks Questions with Answers & Anna University CS3491 Artificial Intelligence and Machine Learning Question Paper Collection and Local Author Books.
Click below the link “DOWNLOAD” to save the Book/Material (PDF)
Kindly Note : There are different collection of CS3491 Artificial Intelligence and Machine Learning study materials are listed below. Based on your requirement choose the suitable material for your preparation.
Lecture Notes
|
CS3491 Artificial Intelligence and Machine Learning Unit wise 2 marks Question with Answers
-
CS3491 Important Question Collection – DOWNLOAD (Coming Soon)
Part B – 16 Marks & Student Notes
|
CS3491 Artificial Intelligence and Machine Learning Important Questions & Question Bank Collection
-
CS3491 Questions Bank Collection – DOWNLOAD (Coming Soon)
Anna University Question Paper Collection
|
CS3491 Artificial Intelligence and Machine Learning Anna University Question Paper Collection
-
CS3491 Anna University Question Papers Collection – DOWNLOAD (Coming Soon)
We need Your Support, Kindly Share this Web Page with Other Friends
If you have any Engg study materials with you kindly share it, It will be useful to other friends & We Will Publish The Book/Materials Submitted By You Immediately Including The Book/Materials Credits (Your Name) Soon After We Receive It (If The Book/Materials Is Not Posted Already By Us)
If You Think This Materials Is Useful, Kindly Share it.
-
-
Click Here To Check Anna University Recent Updates.
-
Click Here To Download Anna University UG/ PG Regulation 2021 Syllabus.
-
Click Here To Check Anna University Results
-
-
-
Click Here To Download Other Semester Civil Engineering R2021Study Material.
-
Click Here To Download Other Semester CSE R2021Study Material.
-
Click Here To Download Other Semester ECE R2021Study Material.
-
Click Here To Download Other Semester EEE R2021Study Material.
-
Click Here To Download Other Semester Mechanical Engineering R2021Study Material.
-
Click Here To Download Department Wise R2017 & R2013 Study Materials.
-
Click Here To Download GATE Exam Study Materials.
-
Click Here To Download Competitive Exam (RRB & SSC) Study Materials.
-
Click Here To Download Competitive Exam (IIT – JEE Exam) Study Materials.
-
Click Here To Download Engineering Text Books (All Departments) Collection.
-
Thank you for visiting my thread. Hope this post is helpful to you. Have a great day !
Kindly share this post with your friends to make this exclusive release more useful.