Eskisehir Technical University Info Package Eskisehir Technical University Info Package
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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
  • Graduate School of Sciences
  • Department of Statistics
  • Master of Science (MS) Degree
  • Course Structure Diagram with Credits
  • Data Science with Julia
  • Description
  • Description
  • Learning Outcomes
  • Course's Contribution to Prog.
  • Learning Outcomes & Program Qualifications

Course Introduction Information

Code - Course Title İST559 - Data Science with Julia
Course Type Elective Courses
Language of Instruction Türkçe
Laboratory + Practice 3+0
ECTS 7.5
Course Instructor(s) DOKTOR ÖĞRETİM ÜYESİ İSMAİL YENİLMEZ
Mode of Delivery The mode of delivery of this course is face to face.
Prerequisites There is no recommended optional programme component for this course.
Courses Recomended There is no recommended optional programme component for this course.
Recommended Reading List https://julialang.org/learning/mooc/
Assessment methods and criteria 1 Midterm Exam, 1 Homework and Final Exam (Classic)
Work Placement Not suitable for this course.
Sustainability Development Goals

Content

Weeks Topics
Week - 1 Fundamentals for Data Science
Week - 2 Fundamentals for Data Science
Week - 3 Frequently Used Programming Languages for Data Science
Week - 4 Introduction to the Julia Programming Language: Installation, environment, and tools
Week - 5 Basic programming with Julia
Week - 6 Conditional statements with Julia
Week - 7 Loops and functions with Julia
Week - 8 Importing data into the programming environment with Julia
Week - 9 Data manipulation with Julia
Week - 10 Machine learning with Julia: Supervised learning
Week - 11 Machine learning with Julia: Unsupervised learning
Week - 12 Advantages of Julia in computational science
Week - 13 From Julia to other programming languages
Week - 14 Reproducibility

Learning Activities and Teaching Methods

  • Teaching Methods
  • Lecture
  • Discussion
  • Question & Answer
  • Demonstration
  • Drill - Practise
  • Problem Solving
  • Brain Storming
  • Report Preparation and/or Presentation
  • Proje Design/Management
  • Competences
  • True to core values
  • Rational
  • Questoning
  • Creative
  • Follow ethical and moral rules
  • Use time effectively
  • Abstract analysis and synthesis
  • Problem solving
  • Applying theoretical knowledge into practice
  • Organization and planning
  • Elementary computing skills
  • Decision making
  • Project Design and Management

Assessment Methods

Assessment Method and Passing Requirements
Quamtity Percentage (%)
Homework 1 40
Final Exam 1 60
Toplam (%) 100
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