Computer Engineering
Course Details
KTO KARATAY UNIVERSITY
Mühendislik ve Doğa Bilimleri Fakültesi
Programme of Computer Engineering
Course Details
Mühendislik ve Doğa Bilimleri Fakültesi
Programme of Computer Engineering
Course Details
Course Code | Course Name | Year | Period | Semester | T+A+L | Credit | ECTS |
---|---|---|---|---|---|---|---|
05051330 | Fuzzy Logic | 3 | Autumn | 5 | 3+0+0 | 3 | 5 |
Course Type | Elective |
Course Cycle | Bachelor's (First Cycle) (TQF-HE: Level 6 / QF-EHEA: Level 1 / EQF-LLL: Level 6) |
Course Language | Turkish |
Methods and Techniques | Yok |
Mode of Delivery | Face to Face |
Prerequisites | Yok |
Coordinator | - |
Instructor(s) | Asst. Prof. Ali Osman ÇIBIKDİKEN |
Instructor Assistant(s) | - |
Course Instructor(s)
Name and Surname | Room | E-Mail Address | Internal | Meeting Hours |
---|---|---|---|---|
Asst. Prof. Ali Osman ÇIBIKDİKEN | A-124 | [email protected] | 7585 | Monday 14.00-15.00 |
Course Content
Klasik Mantık, Sembolik Mantık, Çok Değerli Mantık, Bulanık kümeler, üyelik fonksiyonları, bulanık önermeler, bulanık modeller, bulanık değerler, bulanık niceleyiciler, koşullu ve kısıtlı bulanık önermeler , koşullu ve kısıtlı bulanık önermeler çıkarımları, bulanık küme işlemleri, genişletilmiş bulanık kümeler, bulanık ilişki denklemleri, kural tabanı çıkarımı, bulanıklaştırma, çıkarım mekanizmaları, durulaştırma, mamdani ve sugeno bulanık sistem modelleri, bulanık bağıntılar, bulanık fonksiyonlar, bilgisayar uygulamaları bilgisine sahip olur.
Objectives of the Course
Bulanık mantık tanım ve kavramlarının verilmesi ve uygulamaların tanımlanmasıdır
Contribution of the Course to Field Teaching
Basic Vocational Courses | |
Specialization / Field Courses | |
Support Courses | X |
Transferable Skills Courses | |
Humanities, Communication and Management Skills Courses |
Relationships between Course Learning Outcomes and Program Outcomes
Relationship Levels | ||||
Lowest | Low | Medium | High | Highest |
1 | 2 | 3 | 4 | 5 |
# | Program Learning Outcomes | Level |
---|---|---|
P2 | Ability to identify, formulate, and solve complex engineering problems; ability to select and apply appropriate analysis and modeling methods for this purpose | 3 |
P6 | Ability to work effectively in disciplinary and multi-disciplinary teams; individual study skills | 5 |
P10 | Information on business practices such as project management, risk management and change management; awareness of entrepreneurship and innovation; information about sustainable development | 1 |
Course Learning Outcomes
Upon the successful completion of this course, students will be able to: | |||
---|---|---|---|
No | Learning Outcomes | Outcome Relationship | Measurement Method ** |
O1 | Algorithm development knowledge and creation of appropriate data structure for the algorithm. | P.2.15 | |
O2 | Basic concepts of Machine Learning and deep learning | P.1.17 | |
O3 | Having information about libraries where Deep Learning methods can be used | P.1.18 | |
O4 | Understanding the principles of Artificial Neural Networks and learning their differences from traditional programs; | P.1.19 | |
** Written Exam: 1, Oral Exam: 2, Homework: 3, Lab./Exam: 4, Seminar/Presentation: 5, Term Paper: 6, Application: 7 |
Evaluation Method and Passing Criteria
In-Term Studies | Quantity | Percentage |
---|---|---|
Attendance | - | - |
Laboratory | - | - |
Practice | - | - |
Course Specific Internship (If Any) | - | - |
Homework | - | - |
Presentation | - | - |
Projects | - | - |
Quiz | - | - |
Midterms | 1 | 40 (%) |
Final Exam | 1 | 60 (%) |
Total | 100 (%) |
ECTS / Working Load Table
Quantity | Duration | Total Work Load | |
---|---|---|---|
Course Week Number and Time | 14 | 3 | 42 |
Out-of-Class Study Time (Pre-study, Library, Reinforcement) | 14 | 2 | 28 |
Midterms | 1 | 3 | 3 |
Quiz | 0 | 0 | 0 |
Homework | 0 | 0 | 0 |
Practice | 0 | 0 | 0 |
Laboratory | 0 | 0 | 0 |
Project | 0 | 0 | 0 |
Workshop | 0 | 0 | 0 |
Presentation/Seminar Preparation | 0 | 0 | 0 |
Fieldwork | 0 | 0 | 0 |
Final Exam | 1 | 3 | 3 |
Other | 0 | 0 | 0 |
Total Work Load: | 76 | ||
Total Work Load / 30 | 2,53 | ||
Course ECTS Credits: | 3 |
Course - Learning Outcomes Matrix
Relationship Levels | ||||
Lowest | Low | Medium | High | Highest |
1 | 2 | 3 | 4 | 5 |
# | Learning Outcomes | P1 | P2 |
---|---|---|---|
O1 | Basic concepts of Machine Learning and deep learning | 2 | - |
O2 | Having information about libraries where Deep Learning methods can be used | - | - |
O3 | Understanding the principles of Artificial Neural Networks and learning their differences from traditional programs; | 3 | - |
O4 | Algorithm development knowledge and creation of appropriate data structure for the algorithm. | - | 5 |