Eskisehir Technical University Info Package Eskisehir Technical University Info Package
  • Info on the Institution
  • Info on Degree Programmes
  • Info for Students
  • Türkçe
About the Program Educational Objectives Key Learning Outcomes Course Structure Diagram with Credits Field Qualifications Matrix of Course& Program Qualifications Matrix of Program Outcomes&Field Qualifications
  • Institute of Graduate Programmes
  • Department of Computer Engineering
  • Artifical Intelligence (MS) (with Thesis) (English)
  • Course Structure Diagram with Credits
  • Artificial Intelligence
  • Description
  • Description
  • Learning Outcomes
  • Course's Contribution to Prog.
  • Learning Outcomes & Program Qualifications
  • ECTS Credit Load

Course Introduction Information

Code - Course Title BİL539 - Artificial Intelligence
Course Type Required Courses
Language of Instruction İngilizce
Laboratory + Practice 3+0
ECTS 7.5
Course Instructor(s) DOKTOR ÖĞRETİM ÜYESİ BURCU YILMAZEL
Mode of Delivery The mode of delivery of this course is Face to face.
Prerequisites There is no prerequisite or co-requisite for this course.
Courses Recomended None.
Required or Recommended Resources Russell, S. J. & Norvig, P. Artificial Intelligence: A Modern Approach. 4. baskı. Pearson, 2020.
Recommended Reading List Goodfellow, I., Bengio, Y. & Courville, A. Deep Learning. MIT Press, 2016. Reddi, V. J. ve ark. Machine Learning Systems: Principles and Practices of Engineering Artificially Intelligent Systems. mlsysbook.ai.
Assessment methods and criteria Midterm Exam, Homework, and Final.
Work Placement None.
Sustainability Development Goals Quality Education , Industry, Innovation and Infrastructure

Content

Weeks Topics
Week - 1 Introduction to artificial intelligence and intelligent agents
Week - 2 Problem solving: Uninformed and informed (heuristic) search methods
Week - 3 Local search, adversarial search, and game-theoretic approaches
Week - 4 Constraint satisfaction problems and symbolic reasoning
Week - 5 Knowledge representation, knowledge-based agents, and logical inference
Week - 6 Foundations of machine learning
Week - 7 Foundations of machine learning
Week - 8 Deep learning and representation learning approaches
Week - 9 Reinforcement learning
Week - 10 AI applications
Week - 11 AI applications
Week - 12 AI applications
Week - 13 Ethics, trustworthiness, and social responsibility in artificial intelligence
Week - 14 Current research directions and future perspectives in artificial intelligence

Learning Activities and Teaching Methods

  • Teaching Methods
  • Lecture
  • Discussion
  • Question & Answer
  • Drill - Practise
  • Problem Solving
  • Report Preparation and/or Presentation
  • Proje Design/Management
  • Competences
  • Productive
  • Rational
  • Questoning
  • Follow ethical and moral rules
  • Effective use of a foreign language
  • Eleştirel düşünebilme
  • Problem solving
  • Information Management
  • Elementary computing skills
  • Project Design and Management

Assessment Methods

Assessment Method and Passing Requirements
Quamtity Percentage (%)
1.Midterm Exam 1 35
Homework 1 25
Final Exam 1 40
Toplam (%) 100
  • Info on the Institution
  • Name and Adress
  • Academic Calendar
  • Academic Authorities
  • General Description
  • List of Programmes Offered
  • General Admission Requirements
  • Recognition of Prior Learning
  • Registration Procedures
  • ECTS Credit Allocation
  • Academic Guidance
  • Info on Degree Programmes
  • PhD / Proficiency in Art
  • Master's Degree
  • Bachelor's Degree
  • Associate Degree
  • Info for Students
  • Cost of living
  • Accommodation
  • Meals
  • Medical Facilities
  • Facilities for Special Needs Students ı
  • Insurance
  • Financial Support for Students
  • Student Affairs Office
  • Info for Students
  • Learning Facilities
  • International Programmes r
  • Practical Information for Mobile Students
  • Language courses
  • Internships
  • Sports and Leisure Facilities
  • Student Associations