6 ECTS credits
150 u studietijd

Aanbieding 1 met studiegidsnummer 4004728DNR voor alle studenten in het 2e semester met een inleidend master niveau.

Semester
2e semester
Inschrijving onder examencontract
Niet mogelijk
Beoordelingsvoet
Beoordeling (0 tot 20)
2e zittijd mogelijk
Ja
Onderwijstaal
Engels
Onder samenwerkingsakkoord
Onder uitwisselingsakkoord mbt studiedelen
Faculteit
Faculteit Ingenieurswetenschappen
Verantwoordelijke vakgroep
Elektronica en Informatica
Onderwijsteam
Andrei Covaci
Lesley De Cruz (titularis)
Ali Royat
Onderdelen en contacturen
36 contacturen Hoorcollege
24 contacturen Werkcolleges, practica en oefeningen
Inhoud

This course introduces the field of Artificial Intelligence and highlights several key techniques. A first part of the course focuses on the history and principles of AI, and how intelligent agents interact with various kinds of environments. 

The basic principles of machine learning form the second part of the course, which introduces supervised and unsupervised learning, and classification and regression problems.  

To obtain insight into the workings of such methods, several key techniques such as decision trees, artificial neural networks, and Bayesian probabilistic classifiers are discussed in detail. 

A third part deals with classical or rule-based AI, including problem-solving methods and search such as A* search, and gameplay strategies such as minimax and alpha-beta pruning. The basics of knowledge representation and reasoning are also discussed. 

The last part of the course deals with the ethical considerations of AI, exploring aspects such as fairness, bias, and dual use.  

Studiemateriaal
Digitaal cursusmateriaal (Vereist) : slides, Lesley De Cruz, Canvas
Handboek (Aanbevolen) : Artificial Intelligence: a Modern Approach (4th Edition), Stuart Russell, Peter Norvig, 4th edition, Pearson, 9780070428072, 2021
Praktisch cursusmateriaal (Aanbevolen) : Exercise material, Arthur Moraux, Andrei Covaci, Canvas
Bijkomende info

For more information about the specifics of this course, please consult the online learning platform Canvas. 

 

Leerresultaten

Algemene competenties

Knowledge and insight 
 

The student is acquainted with commonly used AI techniques, including learning algorithms.  

The student can recognize, explain, and illustrate key concepts of AI such as intelligent agents, performance metrics and environments. 

The student can describe how knowledge is represented and how reasoning can take place in an automated way. 

The student can explain and illustrate some commonly used AI techniques, including search strategies and machine learning algorithms.  

The student can correctly trace a machine learning algorithm, such as building a decision tree from a small data set. 

The student can autonomously design a machine learning experiment, including a correct use of the data for training, validation and testing. 

The student can autonomously choose the appropriate techniques given a concrete learning problem.  

The student can correctly apply a machine learning technique on a complex learning problem. 

The student can analyse and interpret the outcome of a given algorithm when applied to problems with varying degrees of complexity. 

The student can apply evaluation methods to estimate the performance of a machine learning algorithm given a concrete application. 

Judgement ability 

The student can devise and sustain arguments in favor of, or against some choice of (learning) technique for a given problem.  

The student can identify potential biases and limitations of a machine learning application. 
 
Communication 

The student can motivate the chosen approach to specialist and non-specialists. 
 
Skills 

The student has obtained the skills to autonomously program, analyse, and apply AI techniques to a wide variety of problems. 

The student can write well-documented code to prepare a dataset, apply a machine learning technique and evaluate the results.  

 

This course contributes to the following programme outcomes of the Master in Applied Computer Sciences: 

MA_A: Knowledge oriented competence 

1. The Master in Engineering Sciences has in-depth knowledge and understanding of exact sciences with the specificity of their application to engineering 
3. The Master in Engineering Sciences has in-depth knowledge and understanding of the advanced methods and theories to schematize and model complex problems or processes 
4. The Master in Engineering Sciences can reformulate complex engineering problems in order to solve them (simplifying assumptions, reducing complexity) 
5. The Master in Engineering Sciences can conceive, plan and execute a research project, based on an analysis of its objectives, existing knowledge and the relevant literature, with attention to innovation and valorization in industry and society 
6. The Master in Engineering Sciences can correctly report on research or design results in the form of a technical report or in the form of a scientific paper 
7. The Master in Engineering Sciences can present and defend results in a scientifically sound way, using contemporary communication tools, for a national as well as for an international professional or lay audience 

11. The Master in Engineering Sciences can think critically about and evaluate projects, systems and processes, particularly when based on incomplete, contradictory and/or redundant information 

MA_B:  Attitude 

13. The Master in Engineering Sciences has a critical attitude towards one’s own results and those of others 

27. The Master in Applied Computer Science is aware of and critical about the impact of ICT on society. 

Beoordelingsinformatie

De beoordeling bestaat uit volgende opdrachtcategorieën:
Examen Schriftelijk bepaalt 50% van het eindcijfer

Examen Andere bepaalt 50% van het eindcijfer

Binnen de categorie Examen Schriftelijk dient men volgende opdrachten af te werken:

  • written closed book exam met een wegingsfactor 1 en aldus 50% van het totale eindcijfer.

    Toelichting: 50% closed book exam.

Binnen de categorie Examen Andere dient men volgende opdrachten af te werken:

  • project work met een wegingsfactor 1 en aldus 50% van het totale eindcijfer.

    Toelichting: 50% project work.

Aanvullende info mbt evaluatie

The exam consists of a closed book written exam and a project related to machine learning.  

The goal of the project is to design ML solutions for a given problem and data set in a scientifically correct way. Project deliverables include well-documented source code implementing the machine learning project and a scientific presentation. The realization of the learning outcomes and the student's understanding and authorship of the project are assessed in a thorough individual oral Q&A session.  

Intermediate deadlines may be imposed to ensure continuous evaluation.   

Weighting: 
50% closed book exam. 
50% project work. 

Partial results: If the total mark is unsatisfactory, a passing mark on either of the parts will be retained to the second examination period.  

A late submission of the project report will result in a mark of 0 for the project work.  

Toegestane onvoldoende
Kijk in het aanvullend OER van je faculteit na of een toegestane onvoldoende mogelijk is voor dit opleidingsonderdeel.

Academische context

Deze aanbieding maakt deel uit van de volgende studieplannen:
Master in de ingenieurswetenschappen: biomedische ingenieurstechnieken: Standaard traject
Master of Applied Sciences and Engineering: Applied Computer Science: Standaard traject (enkel aangeboden in het Engels)
Master of Biomedical Engineering: Startplan (enkel aangeboden in het Engels)
Master of Biomedical Engineering: Profiel Radiation Physics (enkel aangeboden in het Engels)
Master of Biomedical Engineering: Profiel Biomechanics and Biomaterials (enkel aangeboden in het Engels)
Master of Biomedical Engineering: Profiel Sensors and Medical Devices (enkel aangeboden in het Engels)
Master of Biomedical Engineering: Profiel Neuro-Engineering (enkel aangeboden in het Engels)
Master of Biomedical Engineering: Standaard traject (NIEUW) (enkel aangeboden in het Engels)
Master of Biomedical Engineering: Profiel Artificial intelligence and Digital Health (enkel aangeboden in het Engels)