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Artificial Intelligence

Artificial Intelligence. Assoc. Prof. Abdulwahab AlSammak. Course Information. Course Title : Artificial Intelligence Instructor : Assoc. Prof. Abdulwahab AlSammak Email : Sammaka@gmail.com Course Material : http://www.mediafire.com/? ygl6b6y653edd Course Grading : Midterm Exam 25

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Artificial Intelligence

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  1. Artificial Intelligence Assoc. Prof. AbdulwahabAlSammak

  2. Course Information • Course Title: Artificial Intelligence • Instructor : Assoc. Prof. AbdulwahabAlSammak • Email : Sammaka@gmail.com • Course Material : http://www.mediafire.com/?ygl6b6y653edd • Course Grading: • Midterm Exam 25 • Assignments 10 • Lab. & Tutorial 15 • Final Exam 75

  3. References : Textbooks • 1. "Artificial Intelligence", by Elaine Rich and Kevin Knight, (2006), McGraw Hill companies Inc., Chapter 1-22, page 1-613. • 2. "Artificial Intelligence: A Modern Approach" by Stuart Russell and Peter Norvig, (2002), Prentice Hall, Chapter 1-27, page 1-1057.

  4. Course Content 1. Introduction to AI ( 1 week) Definitions, Goals of AI, AI Approaches, AI Techniques, Branches of AI, Applications of AI. 2. Problem Solving, Search and Control Strategies : ( 2 weeks) General problem solving, Search and control strategies, Exhaustive searches, Heuristic search techniques, Constraint satisfaction problems (CSPs) and models . 3. Knowledge Representations Issues, Predicate Logic, Rules : ( 2 weeks) Knowledge representation, KR using predicate logic, KR using rules.

  5. 4. Reasoning System - Symbolic , Statistical : ( 2 weeks) Reasoning - Over view, Symbolic reasoning, Statistical reasoning. 5. Learning Systems: ( 2 weeks) Rote learning, Learning from example : Induction, Explanation Based Learning (EBL), Discovery, Clustering, Analogy, Neural net and genetic learning, Reinforcement learning. 6. Expert Systems : ( 2 weeks) Knowledge acquisition, Knowledge base, Working memory, Inference engine, Expert system shells, Explanation, Application of expert systems.

  6. 7. Natural Language Processing : ( 2 weeks) Introduction, Syntactic processing , Semantic and Pragmatic analysis. 8. Prolog Programming ( 5 weeks in the Lab)

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