CSE, 1st Sem, 4th Year, Syllabus

JNTUH B.Tech 4th Year 1 sem Computer Science and Engineering R13 (4-1) Artificial Intelligence (Elective – II) R13 syllabus.

JNTUH B.Tech 4th year (4-1) Artificial Intelligence gives you detail information of Artificial Intelligence (Elective – II) R13 syllabus It will be help full to understand you complete curriculum of the year.

Objectives

  • To learn the difference between optimal reasoning vs human like reasoning
  • To understand the notions of state space representation, exhaustive search, heuristic search along with the time and space complexities
  • To learn different knowledge representation techniques
  • To understand the applications of Al: namely Game Playing, Theorem Proving, Expert Systems, Machine Learning and Natural. Language Processing

UNIT-I

Introduction, History, Intelligent Systems, Foundations of AI, Sub areas of AI, Applications. Problem Solving – State-Space Search and Control Strategies: Introduction, General Problem Solving, Characteristics of Problem, Exhaustive Searches, Heuristic Search Techniques, Iterative-Deepening A*, Constraint Satisfaction. Game Playing, Bounded Look-ahead Strategy and use of Evaluation Functions, Alpha-Beta Pruning

UNIT-II

Logic Concepts and Logic Programming: Introduction, Propositional Calculus, Propositional Logic, Natural Deduction System, Axiomatic System, Semantic Tableau System in Propositional Logic, Resolution Refutation in Propositional Logic, Predicate Logic, Logic Programming. Knowledge Representation: Introduction, Approaches to Knowledge Representation, Knowledge Representation using Semantic Network, Extended Semantic Networks for KR, Knowledge Representation using Frames.

UNIT-III

Expert System and Applications: Introduction, Phases in Building Expert Systems, Expert System Architecture, Expert Systems Vs Traditional Systems, Truth Maintenance Systems, Application of Expert Systems, List of Shells and Tools. Uncertainty Measure – Probability Theory: Introduction, Probability Theory, Bayesian Belief Networks, Certainty Factor Theory, Dempster-Shafer Theory.

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TEXT BOOKS

  • Saroj Kaushik. Artificial Intelligence. Cengage Learning, 2011.
  • Russell, Norvig: Artificial intelligence, A Modern Approach, Pearson Education, Second Edition. 2004.

REFERENCE BOOK

Rich, Knight, Nair: Artificial intelligence, Tata McGraw Hill, Third Edition 2009.

Outcomes

  • Possess the ability to formulate an efficient problem space for a problem expressed in English.
  • Possess the ability to select a search algorithm for a problem and characterize its time and space complexities.
  • Possess the skill for representing knowledge using the appropriate technique.
  • Possess the ability to apply Al techniques to solve problems of Game Playing, Expert Systems, Machine Learning and Natural Language Processing.

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