Universität Wien

290002 PS Spatial Data Science (2024W)

4.00 ECTS (2.00 SWS), SPL 29 - Geographie
Continuous assessment of course work
Mo 11.11. 12:30-14:30 GIS-Labor Geo NIG 1.OG

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).

Details

max. 35 participants
Language: English

Lecturers

Classes (iCal) - next class is marked with N

  • Monday 04.11. 12:30 - 14:30 GIS-Labor Geo NIG 1.OG
  • Monday 18.11. 12:30 - 14:30 GIS-Labor Geo NIG 1.OG
  • Monday 25.11. 12:30 - 14:30 GIS-Labor Geo NIG 1.OG
  • Monday 02.12. 12:30 - 14:30 GIS-Labor Geo NIG 1.OG
  • Monday 09.12. 12:30 - 14:30 GIS-Labor Geo NIG 1.OG
  • Monday 16.12. 12:30 - 14:30 GIS-Labor Geo NIG 1.OG
  • Monday 13.01. 12:30 - 14:30 GIS-Labor Geo NIG 1.OG
  • Monday 20.01. 12:30 - 14:30 GIS-Labor Geo NIG 1.OG
  • Monday 27.01. 12:30 - 14:30 GIS-Labor Geo NIG 1.OG

Information

Aims, contents and method of the course

This course will introduce students to Spatial Data Science as a "fourth paradigm" of science. The course will outline all stages from the initial conceptualization and representation of data to their creation, entry, cleaning, and analysis, e.g., using clustering or classification. We will discuss classics such as clustering via DBSCAN, outline common methods in point pattern analysis, review simple features as the foundation of vector data, develop a first understanding of issues of computational complexity, and also briefly cover FAIR principles (findability, accessibility, interoperability, and reusability) in (research) data management.

Topics will include introductory materials in knowledge representation, data engineering, geographic information retrieval (GIR), clustering, classification, and so on, thereby providing an introduction for future class work, e.g., in GIR. We will also touch on several application areas, such as social sensing and place recommendations.

Assessment and permitted materials

Active participation, assignments, mid-term exam, and final exam.

Minimum requirements and assessment criteria

Interest in the representation and analysis of data. We are also happy to invite students outside of geoinformation to participate.

A positive evaluation (passing grade) is given with an overall rating of 51% or more.

Examination topics

Immanent examination character:

• Active participation (10%)
• Assignment(s) (20%)
• Mid-term exam (30%)
• Final exam (40%)

A positive evaluation (passing grade) is given with an overall rating of 51% or more.

Reading list

will be announced during the course

Association in the course directory

(MK2-c-PI) (MK1-W2-PI)

Last modified: Su 03.11.2024 19:06