Warning: session_start(): open(/var/cpanel/php/sessions/ea-php56/sess_4d5bac3074d238ac22a90d88295dc90f, O_RDWR) failed: No such file or directory (2) in /home/snscourseware/public_html/ct.snscourseware.org/syllabus.php on line 2

Warning: session_start(): Failed to read session data: files (path: /var/cpanel/php/sessions/ea-php56) in /home/snscourseware/public_html/ct.snscourseware.org/syllabus.php on line 2
Connected successfully
Warning: Undefined variable $hostname in /home/snscourseware/public_html/ct.snscourseware.org/syllabus.php on line 18
Syllabus || SNS Courseware
Subject Details
Dept     : AIML
Sem      : 3
Regul    : 2023
Faculty : Ms S Rajarajeswari
phone  : 9488704705
E-mail  : rajarajeswari.s.aiml@snsct.org
385
Page views
7
Files
2
Videos
2
R.Links

Icon
Syllabus

UNIT
1
PROBLEM SOLVING

Introduction – AI problems – Problem Characteristics –Agents – Structure of an agent – Problem formulation – uninformed search strategies – heuristics – informed search strategies – constraint satisfaction.

UNIT
2
LOGICAL REASONING

Logical agents – propositional logic – propositional theorem proving – propositional model checking – agents based on propositional logic - inferences – first-order logic – inferences in first order logic – propositional Vs. first order inference – unification &lifts – forward chaining – backward chaining – resolution. Case Study: Wumpus Problem

UNIT
3
PLANNING

Classical planning – algorithms for classical planning – heuristics for planning – hierarchical planning – non-deterministic domains – time, schedule, and resources – analysis – Knowledge Representation. Case Study: Weapons selling to hostile nations

UNIT
4
UNCERTAIN KNOWLEDGE AND REASONING

Uncertainty – review of probability - probabilistic Reasoning – Semantic networks – Bayesian networks – inferences in Bayesian networks – Temporal models – Hidden Markov models. Case Study: Prediction on Weather

UNIT
5
LEARNING

Learning from observation – Inductive learning – Decision trees – Explanation based learning –Statistical Learning methods –Reinforcement Learning. Case Study: Chat bot System

Reference Book:

1 G. Luger, “Artificial Intelligence: Structures and Strategies for complex problem solving”, Sixth Edition, Pearson Education, 2008. 2 Elaine Rich, Kevin Knight, “Artificial Intelligence”, Third Edition, Tata McGraw Hill, 2009 3 Anindita Das, “Artificial Intelligence & Soft Computing for Beginners”, First Edition, Shroff Publishers & Distributors Pvt Ltd, 2013. 4 Wolfgang Ertel, “Introduction to Artificial Intelligence”, 1st Edition, Springer, 2017. 5 David L. Poole and Alan K. Mackworth, “Artificial Intelligence: Foundations of Computational Agents”, 2nd Edition, Cambridge University Press, 2010.

Text Book:

S. Russel and P. Norvig, “Artificial Intelligence – A Modern Approach”, Third Edition, Pearson Education, 2010.