Official course description, subject to change:

Basic info last published 15/03-24
Course info
Language:
English
ECTS points:
7.5
Course code:
KSSEDAS1KU
Participants max:
40
Offered to guest students:
no
Offered to exchange students:
no
Offered as a single subject:
no
Programme
Level:
MSc. Master
Programme:
MSc in Data Science
Staff
Course manager
Associate Professor
Teacher
Associate Professor
Teacher
Associate Professor
Teacher
Associate Professor
Course semester
Semester
EfterÄr 2024
Start
26 August 2024
End
24 January 2025
Exam
Abstract

This course is a seminar-based overview of recent research on data science application areas. This course consists of a series of research-based seminars in application areas of data science. The aim is to get an overview of recent research advances in data science areas, which are possible topics for students to specialize in later parts of their MSc studies. Guest lecturers will introduce a data science topic, provide recent research samples and stipulate discussion in that area.

Description

In this seminar-based course, students will learn about the latest advances in various data science applications. The course will consist of a set of themes in Data Science each with seminars with lectures and exercise sessions, complemented by invited experts. Teachers will introduce the students to a data science research area and expose them to a latest research project

This course will cover the following main topics applied to research on Data Science:

  • Natural Language Processing
  • Computational Social Science
  • Health Informatics
  • Games Theory

This round-robin of topics will provide the students with a breadth of topics, to get them acquainted with various fields and stipulate possible projects and specializations in their later semesters. 

Formal prerequisites
Intended learning outcomes

After the course, the student should be able to:

  • Discuss, explain, and reflect upon central concepts, algorithms, and challenges in recent research for the selected Data Science areas covered in the course.
  • Engage critically with the academic literature, pointing out both strengths and weaknesses in the four research areas.
  • Distinguish and relate different theories, modeling approaches and scientific argumentations put forth in the research themes covered in this course.
  • Apply theories, computational approaches and implement methods to analyze problems in Data Science areas (e.g. Games, Health, Language and Social Science).
Ordinary exam
Exam type:
B: Oral exam, Internal (7-point scale)
Exam variation:
B1H: Oral exam with time for preparation. Home.