CSC361
Artificial Intelligence CSC361 Spring 2011 |
||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||
Game rules for the project (New) Project Deliverables,Semester Schedule and Rubrics Attendence & Bonus: Any discripencies send an e-mail to basit@ksu.edu.sa Course Code: CSC 361 Course Title: Artificial Intelligence Credit Hours: 3(3,0,1) Lecture Time: 1:0 - 3:0 Sunday & 1:0 - 3:0 Tuesday Pre-requisites: CSC 212 Course Description: This course provides a general introduction to AI (Artificial Intelligence): Its techniques and its main sub-fields. It gives an overview of underlying ideas, such as search, knowledge representation, expert systems and learning. Course Objective: The objective of the course is to enable students to learn about the tools and techniques for understanding and applying their knowledge to solve real world problems. The course will focus on sharpening the practical skills of the students alongwith providing them the theoratical knowledge.
Syllabus (Course in Progress)
Recommended Books 1. “Artificial Intelligence: A modern approach” Stuart Russell, Peter Norvig, Prentice Hall, 2003 (new edition 2006) 2. "Artificial Intelligence - Structures and Strategies for Complex Problem Solving", George F. Luger, Pearson Internationl Edition, 2009 3. “Artificial Intelligence Illuminated” Ben Coppin, Jones andBartlett Publishers, 2004 4. “Artificial Intelligence: A new synthesis” Nils Nilsson, Morgan Kaufmann, 1998 5. “Introduction to expert systems” Peter Jackson, Addison Wesley, 1999 6. Lecture slides and your lecture notes! Grading
Tutorials & Project 1. Course project for current term (updated 10-05-2010) 2. Problem Formulation: Assignment, Solution 3. Blind Search : Assignment, Solution 4. Heuristic Search : Assignment, Solution, Assignment2 5. Optimization: Assignment, Solution 6. Constraint Satisfaction Problems: Assignment, Solution 8. Knowledge Representation & Expert System: Assignment, Solution 9. Prolog language and Samples 10. Machine Learning: Assignment, Solution Homework 1- Record Blog. , and eCorrect site Service 2- Assignment2 3- Assignment3
Exams - Solutions Old Exams
Office Hours Monday 9:00 am ------ 11:00 am Tuesday 9:00 am ------- 10:00 am Selected Topics for Presentation
Additional Information
|