ETN-Code: DSME504
Titel der Veranstaltung: Data Science
Untertitel:
Art der Lehrveranstaltung: Vorlesung
Kreditpunkte: 6
Semester: SoSe 2024/25
Turnus: gemäß Curricula
Semesterwochenstunden: 2
Kursverantwortliche/r: HERBERGER Tim Alexander [1201800033]
Dozent/in: Farou Zakarya [1202400037]
Tarcsi Ádám [1202400036]
Organisationseinheit: Andrássy Universität Budapest
Ziele und Inhalt des Kurses: Students interested in practical data analysis and decision-making - No programming skills required!
Thema der einzelnen Lehreinheiten:
Course Description:
This practical workshop focuses on the basics of Data Science, on effectively utilizing data for analysis and drawing insights without the need for prior programming expertise Participants will learn to apply theoretical concepts through practical examples and gain an understanding of data visualization and research methodology as well. Within the course the participants are going to learn and use some of the most common tools for data analysis, like Excel (advanced), Power BI, Python. The practical exercises are partly completed through self-study using the Datacamp platform.
Course Outline:
1. Introduction to Data Science (2 hours)
2. Data Preparation and Cleaning (4 hours)
3. Basics of Python for data analysis (8 hours)
Course Methodology:
The course mainly relies on hands-on work, including group work among participants, analysis of case studies, and project-based learning. Through interactive demonstrations and practical examples, participants will be able to apply theoretical concepts to real-life situations.
Course Supplements:
Regular practical assignments and projects allowing participants to apply theory to practice.
Empfohlene Literatur (für die Gesamtveranstaltung):
Recommended Reading:
- "Data Science for Business" by Foster Provost and Tom Fawcett
- "Storytelling with Data" by Cole Nussbaumer Knaflic
- "Data Visualization: A Practical Introduction" by Kieran Healy
Sprache der Lehrveranstaltung: Englisch (eng)
Notenskala: Prüfung (fünfstufig)
Form und Umfang der Leistungskontrolle:
Students, taking the course with the Doctoral School course code for 6 ECTS, will receive extra assignments in relation to their research topic for completing the course. More information will follow at the first lecture.
Prüfungsanmeldung: über das elektronische Studienverwaltungssystem
Anmerkungen: