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(Partial Module) Artificial Intellligence28567/3857/1617/30539/64
Study guide

(Partial Module) Artificial Intellligence

28567/3857/1617/30539/64
Academic year 2016-17
Is found in:
  • International Curriculum, programme stage 3
This is a part of the course unit Future IT (English taught).
Study load: 2 credits
Weight: 2,00
Total study time: 50,00 hours
Possible deadlines for learning account: 01.12.2016 ()

Organisation of education

Teaching Activities, Learning Activities, Assessment Activities
Lecture
Self-study26,00 hours
Seminar24,00 hours
Supervised independent work
This part of the course unit 'Future IT (English taught)' is marked out of 20 (rounded to an integer).
Re-sit exam: 
  • is possible.
  • in the event of a fail mark for the composite course 'Future IT (English taught)', only the failed part(s) need(s) to be retaken.
Co-ordinator: Lievens Stijn
Language course: No
Languages: Dutch
Scheduled for: Semester 1

Objectives

Studying of problems, techniques, models and solutions from knowledge technology.
Insight in the current state of the art.
Understanding the software agent paradigm.
Confrontation with and discussion about ethical and philosophical aspects of AI and recent developments in ICT.

Contents

Defining and situating artificial intelligence.
The software agent paradigm.
Techniques of machine learning.
Introduction to speech and language processing.
Ethical and philosophical aspects of AI.

Prerequisites

probleming solving II, general competences professional bachelor 2TI

Final objectives

Partial competence 1: problem solving  (AC1)

Indicators:

1.1.0The student knows specific knowledge technology structures and methods and is able to analyse them

Partial competence 2: development of intelligent systems (AC1)

Indicators:

2.1. The student knows some techniques for classification and clustering

2.2. The student understands the structure and the operation of different types of software agents

2.3. The student understands machine learning techniques and is able to analyse these.


Organisation of education

Seminar.

Study guidance

Individual learning problems may be reported to the lecturer and will be remedied.

Evaluation

  • First exam session:
    • period bound evaluation: 100% (written exam, closed book)
    • non-period bound evaluation: 0%
  • Second exam session:
    • period bounded evaluation : 100% (written exam, closed book)
    • non-period bound evaluation: 0%