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Course Details
KTO KARATAY UNIVERSITY
Mühendislik ve Doğa Bilimleri Fakültesi
Programme of Mechatronics Engineering
Course Details
Course Code Course Name Year Period Semester T+A+L Credit ECTS
05581004 Advanced Programming 4 Spring 8 3+0+0 5 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 -
Mode of Delivery Face to Face
Prerequisites -
Coordinator Prof. Ali Bülent UŞAKLI
Instructor(s) -
Instructor Assistant(s) -
Course Content
History of Programming Languages, Syntax and Meaning, Control Structures, Data Types, Data Flow, Logic Programming, Functional Programming and Lambda Calculation, Simultaneous and Distributed Programming, Agent-Based Programming, Subject-Based Programming, View-Based Programming, Service-Based Programming.
Objectives of the Course
This course will introduce learners to data science through the python programming language. This skills-based specialization is intended for learners who have a basic python or programming background, and want to apply statistical, machine learning, information visualization and text analysis techniques through popular python toolkits such as pandas, matplotlib, scikit-learn, nltk, opencv, keras, tensorflow, yolo to gain insight into their data.
Contribution of the Course to Field Teaching
Basic Vocational Courses
Specialization / Field Courses X
Support Courses
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 Mechatronics Engineering problems; ability to select and apply appropriate analysis and modeling methods for this purpose. 5
P4 Ability to select and use modern techniques and tools necessary for the analysis and solution of complex problems encountered in Mechatronics Engineering applications; Ability to use information technologies effectively 5
P5 An ability to design and conduct experiments, collect data, analyze, and interpret results for the study of complex engineering problems or research topics specific to Mechatronics Engineering 5
Course Learning Outcomes
Upon the successful completion of this course, students will be able to:
No Learning Outcomes Outcome Relationship Measurement Method **
O1 Ability to have detailed knowledge about the concepts, costs and limitations of high-level programming languages P.2.26 1
O2 Ability to know high level abstraction techniques of programming P.4.13 1
O3 Ability to become familiar with advanced software development principles, techniques and best practices P.4.14 1
O4 Ability to have knowledge about programming language domains and their purposes P.4.15 1
O5 Ability to know the classes of programming languages P.5.10 1
** Written Exam: 1, Oral Exam: 2, Homework: 3, Lab./Exam: 4, Seminar/Presentation: 5, Term Paper: 6, Application: 7
Weekly Detailed Course Contents
Week Topics
1 Introduction and familiarization with the teaching environment.
2 Introduction to python: the first python program, basics of python syntax, data types of python, basic operations of python, functions, modules and packages of python, conditions, range, loops.
3 Introduction to python: break, continue and else in loops, self-defined functions, recursions, scope of variable: standart library functions, exceptions.
4 Data acqusition and presentation
5 Powerful data structures and python extension libraries: dictionary use, extension library SciPy, ndarray, dataframe
6 Python data statistics and visualization: data preperations, data display, data selection, simple statistics and processing, grouping, merge, cluster, basics of matplotlib plotting.
7 Project 1 Presentation
8 Midterm Exam
9 Applied machine learning in python
10 Introduction to keras in python
11 Digit classification using deep learning and conventional methods
12 Introduction to Darknet YOLO in python
13 Object Detection and recognition using YOLO
14 Project 2 Presentation
15 Final Exam
Textbook or Material
Resources Robert W. Sebesta: ''Concepts of Programming Languages'', 9th ed., Addison Wesley 2009
Robert W. Sebesta: ''Concepts of Programming Languages'', 9th ed., Addison Wesley 2009
Evaluation Method and Passing Criteria
In-Term Studies Quantity Percentage
Attendance - -
Laboratory - -
Practice - -
Course Specific Internship (If Any) - -
Homework - -
Presentation - -
Projects 1 35 (%)
Quiz - -
Midterms 1 30 (%)
Final Exam 1 35 (%)
Total 100 (%)
ECTS / Working Load Table
Quantity Duration Total Work Load
Course Week Number and Time 13 3 39
Out-of-Class Study Time (Pre-study, Library, Reinforcement) 13 3 39
Midterms 1 20 20
Quiz 0 0 0
Homework 8 2 16
Practice 0 0 0
Laboratory 0 0 0
Project 1 20 20
Workshop 0 0 0
Presentation/Seminar Preparation 0 0 0
Fieldwork 0 0 0
Final Exam 1 30 30
Other 0 0 0
Total Work Load: 164
Total Work Load / 30 5,47
Course ECTS Credits: 5
Course - Learning Outcomes Matrix
Relationship Levels
Lowest Low Medium High Highest
1 2 3 4 5
# Learning Outcomes P2 P4 P5
O1 Ability to have detailed knowledge about the concepts, costs and limitations of high-level programming languages 5 - -
O2 Ability to know high level abstraction techniques of programming - 5 -
O3 Ability to become familiar with advanced software development principles, techniques and best practices - 5 -
O4 Ability to have knowledge about programming language domains and their purposes - 5 -
O5 Ability to know the classes of programming languages - - 5