The course is connected to the following study programs

  • Bachelor's Programme in IT and Information Systems

Teaching language

English

Recommended prerequisites

Students should have a basic understanding of the digitalization process and the role of IS within it. Basic programming skills are desirable for analyzing big datasets.

Course contents

The cross-disciplinary nature of Information Systems can be the driving force to give meaning to the massive amounts of data generated every moment and improve the relation among data and business models. The course builds on concepts and techniques from multiple fields including business, management, economics, sociology, computer science, philosophy. The students will be able to have the broadest perspective on real life problems, view a challenge as a whole taking into account different perspectives and see how different pieces fit together leading them to propose, design or develop data-driven solutions. The course introduces the students in data science and the role of IS in digital transformation. 
The course will develop the conceptual foundations, frameworks and methods for analyzing the relationships between organizations and data. The course gives students a systematic basis for addressing change in the digital business, and bridging digital transformation with digital sustainability for shared value that impacts society as a whole. Focus will be given on discussing big data analytics ecosystems and strategies for digital transformation as paths to change and disruption.

Learning outcomes

Upon completion of the course, the students will be able to:

  • Provide an initial understanding of data science and its fundamental principles by offering a high-level overview of concepts and principles

  • Foster data-analytic thinking and explain how to extract knowledge from different types of data

  • Discuss why and how the change in the digital era and data availability can transform business and society

  • Understand the notions of digital transformation, data science, big data and analytics, their relations and their differences.

  • Explore data-centered business problems, propose and develop data-driven business models, strategies, and solutions

  • Evaluate and assess practical applications of (big) data and analytics

  • Create a common understanding that will lead to more efficient communication between management, technical/development, and data science teams.

Examination requirements

Mandatory assignments must be passed. Further information in Canvas.

Teaching methods

Up to 6 hours of lectures/organized group work per week. Group work including project based mandatory exercises/presentations. Standard work load for 7,5 ECTS courses is 210 hours per semester.

Evaluation

The person responsible for the course decides, in cooperation with student representative, the form of student evaluation and whether the course is to have a midway or end of course evaluation in accordance with the quality system for education, chapter 4.1.

Admission for external candidates

No

Offered as Single Standing Module

Yes. Subject to availability or capacity.

Assessment methods and criteria

Group project report. Gradert karakter, A-F

Other information

Not taught the academic year 2022-2023.

Last updated from FS (Common Student System) July 1, 2024 1:53:11 AM