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Pfad: VVZ SoSe 2024 > Verzeichnis der LV gegliedert nach Instituten und Abteilungen

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Nr. LV-Typ(en) LV-Titel
4963 PI Applications of Data Science Präsenz-Modus
Anmeldung über LPIS
vom 02.02.2024 14:00 bis 11.02.2024 23:59
Abmeldung über LPIS
vom 02.02.2024 14:00 bis 10.03.2024 23:59

LV-Leiter/in ao.Univ.Prof. Dr. Andreas Mild
Planpunkte Bachelor SBWL Kurs IV - Data Science
Course IV - Data Science
Kurs IV - Data Science
Semesterstunden 2
Unterrichtssprache Englisch

Termine
Mi, 13.03.2024 11:30-15:30 Uhr D4.0.019 (Lageplan)
Mi, 20.03.2024 11:30-15:30 Uhr D2.0.326 (Lageplan)
Mi, 10.04.2024 11:30-15:30 Uhr TC.3.07 (Lageplan)
Mi, 17.04.2024 11:30-15:30 Uhr D4.0.019 (Lageplan)
Mi, 24.04.2024 11:45-15:45 Uhr D2.0.326 (Lageplan)
Mi, 08.05.2024 11:00-14:00 Uhr TC.3.03 (Lageplan)
Termindownload (ical) | Termine abonnieren

Weitere Informationen https://learn.wu.ac.at/vvz/24s/4963

Kontakt:
andreas.mild@wu.ac.at
Inhalte der LV:

The course consists of several blocks:

In the first block, an introduction into applications of data science in the field of sensor data will be given. We will use data collected by everyday devices like smartphones, but the methods apply to all machine generated data. The following topics will be covered:  Basics of sensory data, Handling noise and missing values, feature engineering, learning based on sensory data.

In the second block, we will look at methods and models to make use of such data.

All practical examples will be done in R language.

Lernergebnisse (Learning Outcomes):

After completing this course students will have knowledge about different areas of application for data science. Students will have a basic understanding of area-specific challenges and algorithms. Besides an understanding of the problem structure, students will learn to apply mathematical and statistical tools to support decision making. Apart from that, completing this course will contribute to the students’ ability to efficiently work and communicate in a team, work on solutions for complex practical problems by using modern statistical software.

Regelung zur Anwesenheit:

The rules on the attendance of a Continuous Assessment Course (PI) apply.

Pursuant to the general guidelines issued by the Vice-Rector for Academic Programs and Student Affairs, the attendance requirement is met if a student is present at least 80% of the time. Students who fail to meet the attendance requirement will be de-registered from the continuous assessment course with a “fail” grade.

Lehr-/Lerndesign:
The course will combine alternative ways to deliver the different topics to the students. On the one hand, a classical lecture style approach where the instructor presents the software and the content will be used; on the other hand, students will have to solve hands-on problems in class and as homework.
Leistung(en) für eine Beurteilung:

The final grade will be computed on the basis of two assignments and a presentation.

 

First assignment: 35 %

Second assignment: 35%

Presentation: 30%

 

Grades:

1: =>90%

2: =>80%

3: =>70%

4: =>60%

 

Teilnahmevoraussetzung(en):

Successful conclusion of the course 1 of SBWL Data Science.

Please be aware that, for all courses in this SBWL, registration is only possibly for students who successfully have completed the entry course (Einstieg in die SBWL: Data Science).

Note that for courses within the SBWL "Data Science" we can only accept students enrolled in one of WU's bachelor programmes who qualify for starting an SBWL; particularly, we cannot accept students from other courses and programmes enrolled at WU as 'Mitbeleger' only.
Zuletzt bearbeitet: 15.11.2023 10:07

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