BPP231 Artificial Intelligence Applications

3 ECTS - 2-0 Duration (T+A)- 3. Semester- 2 National Credit

Information

Unit ADANA VOCATIONAL SCHOOL
Code BPP231
Name Artificial Intelligence Applications
Term 2020-2021 Academic Year
Semester 3. Semester
Duration (T+A) 2-0 (T-A) (17 Week)
ECTS 3 ECTS
National Credit 2 National Credit
Teaching Language Türkçe
Level Belirsiz
Type Normal
Label E Elective
Mode of study Uzaktan Öğretim
Catalog Information Coordinator Öğr. Gör. Dr. YILMAZ KOÇAK
Course Instructor Öğr. Gör. Dr. YILMAZ KOÇAK (Güz) (A Group) (Ins. in Charge)


Course Goal / Objective

To learn definition and methods of artificial intelligence, to learn general structure of intelligent algorithms, to have knowledge about artificial neural networks, deep learning, expert systems, fuzzy logic techniques. To prepare basic artificial intelligence applications with artificial intelligence programs (Python, Matlab, etc.).

Course Content

Definition of artificial intelligence, algorithms and general structure of systems, expert systems, artificial neural networks, deep networks and deep learning, crips logic and fuzzy logic, software tools using artificial intelligence.

Course Precondition

Resources

Notes



Course Learning Outcomes

Order Course Learning Outcomes
LO01 Define artificial intelligence
LO02 Understand the structure of artificial intelligence algorithms and systems
LO03 Define brain function and neuron structures
LO04 Establish network structures according to types and functions of neural networks
LO05 understand of deep learning and expert systems
LO06 Understand fuzzy logic systems and algorithms
LO07 Prepare beginners level applications


Relation with Program Learning Outcome

Order Type Program Learning Outcomes Level
PLO01 - Explains computer software and hardware. 2
PLO02 - Define the data and hardware necessary for solving well-defined problems in Computer Technologies and Programming. 2
PLO03 - Evaluate the developments in computer and computer network using scientific methods and techniques. 0
PLO04 - Explains the simple software and hardware failures encountered in the computer. 3
PLO05 - Explains the methods necessary for solving well-defined problems in Computer Technologies and Programming. 3
PLO06 - Explain the teaching methods, techniques and strategies of information technologies. 1
PLO07 - Use appropriate methods and techniques for the development of critical and creative thinking and problem solving skills. 1
PLO08 - Plans simple software and hardware failures in the computer and solutions to non-specialist problems. 2
PLO09 - Use appropriate techniques with verbal, numerical and graphical expression. 0
PLO10 - Use information technologies effectively in learning and learning process. 0
PLO11 - To be able to know, edit and query data in computer environment. 2
PLO12 - Takes responsibility as an individual and as a team in solving the problems. 2
PLO13 - It becomes a responsible citizen against the public and private sectors. 0
PLO14 - Gains the ability of self-learning, critically evaluates the information learned. 2
PLO15 - Evaluates independently what they learn and learn in the field of Computer Technologies and Programming. 4
PLO16 - Communicates well with students, teachers, school management, employers and customers. 0
PLO17 - Use computer and communication technologies effectively. 0
PLO18 - It attempts to think and develop on its own professional performance. 0
PLO19 - It follows current scientific, professional and artistic events. 0
PLO20 - Express their ideas in a foreign language orally and in writing, read foreign professional resources. 0


Week Plan

Week Topic Preparation Methods
1 Introduction to Artificial Intelligence Getting information from source books
2 Artificial Neural Networks and Basic Elements Review of previous course notes and getting information from source books
3 Creation of Artificial Neural Networks Read the subject of artificial neural networks
4 Structures of Artificial Neural Networks Read the subject of artificial neural networks
5 Supervised Learning Read the subject of supervised learning
6 Unsupervised Learning Read the subject of supervised learning
7 Deep Networks and Deep Learning Review of subjects of deep learning and deep networks
8 Mid-Term Exam Exam preparation
9 Introduction to Fuzzy Logic Review of the subject of fuzzy logic
10 Crisp Sets and Fuzzy Sets Review of Crisp and fuzzy sets subjects
11 Applications of Fuzzy Logic Review of the application of Fuzzy Logic
12 Genetics Algorithms Review of genetic algorithms
13 Expert Systems Get information about expert systems
14 Machine Learning Get information about machine learning
15 Applications of Artificial Intelligence Review of the applications of Artificial Intelligence
16 Term Exams Exam preparation
17 Term Exams Exam preparation


Assessment (Exam) Methods and Criteria

Assessment Type Midterm / Year Impact End of Term / End of Year Impact
1. Midterm Exam 100 40
General Assessment
Midterm / Year Total 100 40
1. Final Exam - 60
Grand Total - 100

Update Time: 27.05.2020 01:38