Syllabus

Title
5148 Semantic Artificial Intelligence Technologies for Knowledge Management
Instructors
Dipl.-Ing. Majlinda Llugiqi Rexha
Contact details
Type
PI
Weekly hours
2
Language of instruction
Englisch
Registration
02/04/25 to 02/28/25
Registration via LPIS
Notes to the course
Dates
Day Date Time Room
Tuesday 03/11/25 05:00 PM - 08:00 PM D5.0.002
Thursday 03/13/25 01:00 PM - 04:00 PM TC.5.15
Friday 03/14/25 01:00 PM - 04:00 PM TC.5.05
Tuesday 03/18/25 02:30 PM - 05:30 PM TC.4.03
Thursday 03/20/25 01:00 PM - 04:00 PM TC.4.03
Tuesday 04/08/25 02:00 PM - 06:00 PM TC.3.21
Thursday 04/10/25 10:00 AM - 12:00 PM TC.0.01
Thursday 04/24/25 10:00 AM - 12:00 PM TC.5.05
Contents

This course focuses on how techniques from semantic Artificial Intelligence (AI) can provide a technological foundation for enabling Knowledge Management (KM) tasks and processes. Semantic Artificial Intelligence denotes an emerging family of technologies which currently enjoy large-scale up-take in the industry. After a broad introduction of AI techniques for KM, the course will focus on semantic based AI techniques. Firstly, it will cover the basics of how (expert) knowledge can be captured in information artifacts such as taxonomies, ontologies and knowledge graphs. Secondly, the course will introduce methods to build such information artifacts from implicit knowledge (from employees) and explicit knowledge residing in data and documents in an enterprise. Thirdly, the course will also cover topics related to storing and querying such novel knowledge structures.

Learning outcomes

This course enables the participants to learn and apply fundamental techniques of semantic AI. Participants will be able to:

  • explain how Artificial Intelligence techniques in general can support  Knowledge Management
  • clearly identify various knowledge representation technologies (taxonomies, ontologies, knowledge graphs) and understand differences between them
  • apply ontology engineering methods for capturing implicit knowledge from experts through ontology engineering
  • use methods for capturing explicit knowledge from structured data and unstructured/textual sources;
  • apply methods and use tools for storing and querying knowledge structures

After completing this course,  participants will be able to reliably understand and practice a number of core methods and tools relevant for these technologies.

Furthermore, students will get familiar with the recent research developments in this field.

Attendance requirements

Attendance is mandatory, with at least 80% of the hours attended, as per WU requirements regarding PI courses. The absences can be compensated in cases of illness with the doctor's note.  

Teaching/learning method(s)

This course builds on lectures, discussions, class exercises, individual assignments and student presentations. Teaching methods will include:

  • research-based teaching relying on the latest research advances in the area
  • use-cases from real-life settings.
Assessment

Graded components: 

  • 50p Exam [ >= 25p needed for a positive grade]
  • 40p Group Assignment 
  • 10p  In-class quizzes 

Grading scale:

  • < 60 points or < 25 points on the exam: 5 (Fail)
  • 60 ≤ points < 70: 4
  • 70 ≤ points < 80: 3
  • 80 ≤ points < 90: 2
  • 90 ≤ points: 1
Readings

Please log in with your WU account to use all functionalities of read!t. For off-campus access to our licensed electronic resources, remember to activate your VPN connection connection. In case you encounter any technical problems or have questions regarding read!t, please feel free to contact the library at readinglists@wu.ac.at.

Open Science

In line with Open Science principles, information artifacts created as part of course assignments may be utilized for research purposes following anonymization.  

Last edited: 2024-12-18



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