06ME846 Artificial Intelligence syllabus for ME


Part A
Unit-1 Artificial Intelligence 6 hours

Introduction, definition, underlying assumption, importance f A1, AI and related fields.

Unit-2 Space Representation 7 hours

Defining a problem. Production systems and its characteristics, Search and Control strategies – Generate and Test, Hill Climbing, Best – first Search, Problem reduction, Constraint Satisfaction, Means – Ends Analysis.

Unit-3 Knowledge Representation Issues 7 hours

Representations and Mappings, Types of knowledge – Procedural Vs Declarative, Logic programming. Forward Vs Backward reasoning, Matching.

Unit-4 Use of Predicate Logic 6 hours

Representing simple facts, Instance and Isa relationships, Syntax and Semantics for Prepositional logic, FQPL and properties of Wffs, Conversion to Clausal form, Resolution, Natural deduction.

Part B
Unit-5 Statistical and Probabilistic Reasoning 7 hours

Symbolic reasoning under uncertainty, Probability and Bayes’ theorem, Certainity factors and Rule based systems, Bayesian Networks, Shafer Theory, Fuzzy Logic.

Unit-6 Expert Systems 7 hours

Structure and uses, Representing and using domain knowledge, Expert System Shells. Pattern recognition Learning classification patterns, recognizing and understanding speech. Introduction to knowledge Acquisition, Types of Learning.

Unit-7 Typical Expert Systems 6 hours

MYCIN, Variants of MYCIN, PROSPECTOR, DENDRAL, PUFF, ETC.

Unit-8 Introduction to Machine Learning 6 hours

Perceptrons, Checker Playing Examples, Learning Automata, Genetic Algorithms, Intelligent Editors.

Last Updated: Tuesday, January 24, 2023