053631 LP Data Analysis Project (2021W)
Continuous assessment of course work
Labels
MIXED
Registration/Deregistration
Note: The time of your registration within the registration period has no effect on the allocation of places (no first come, first served).
- Registration is open from Mo 13.09.2021 09:00 to Mo 20.09.2021 09:00
- Deregistration possible until Th 14.10.2021 23:59
Details
max. 25 participants
Language: English
Lecturers
- Drew Dimmery
- Christa Cuchiero
- Karl Franz Dörner
- Jan Fabian Ehmke
- Bernhard Fröhler
- Wilfried Gansterer
- Philipp Grohs
- Pavol Harár
- Nikolaus Hautsch
- Johann Hillmann
- Maria Knobelsdorf
- Laura Koesten
- Tatyana Krivobokova
- Lukas Miklautz
- Torsten Möller
- Arndt Niebisch
- Martin Perdacher
- Claudia Plant
- Sebastian Ratzenböck
- Rafael Reisenhofer
- Benjamin Roth
- Michael Scherbela
- Anastasiia Sedova
- Lukas Steinberger
- Sebastian Tschiatschek
Classes
In order to take part in the course, you have to register in u:space.
Then, we will need additional information to match you to an appropriate project. Once you have been assigned to a project, you will be accepted into the course.
Information
Aims, contents and method of the course
In the course of a data analysis project, students acquire the ability to solve data science projects using the methods and techniques that the students have already learned during their studies. The range of possible project topics is quite broad, ranging from theoretical questions to applied topics with a potential industry partnership. Each project should be targeted at groups of 1-4 students, who will work on the project for the full semester, in addition to taking other classes. Each project will be supervised by our teaching staff, sometimes in cooperation with an industry partner. Common sessions and meetings will be arranged and agreed upon with the respective supervisor/s.We are planning a joint "Data Science Day" at the beginning of next term, in which the students present their work in a poster session to a broader audience including first and second semester students of the Data Science programs.
Assessment and permitted materials
The project must be completed by the end of the January.Each project will consist of an implementation part (25%), documentation part (25%), presentation/poster part (25%), and participation part (25%) – to be specified by the particular project supervisor/s.
Minimum requirements and assessment criteria
The project must be completed by the end of January. To pass, the average grade based on above examinations must be at least sufficient / 4.0.
Examination topics
To be determined by project supervisors.
Reading list
To be determined by project supervisors.
Association in the course directory
Last modified: We 27.09.2023 00:11