Artificial Intelligence [30.0]
Students who have completed the "Artificial Intelligence" option will have to be able to:
• Identify and implement a class of methods and techniques enabling a software system to solve complex problems which, when solved by a human being, would require some form of "intelligence".
• Understand and effectively implement methods and techniques of artificial intelligence such as automated reasoning, search and heuristics, knowledge acquisition and representation, automated learning, constraint satisfaction problems.
• Identify those classes of applications where these methods and tools can be applied; be aware of particular classes of application and their specific techniques – for example, robotics, computer vision, planning, data mining, natural language processing and bioinformatics data processing.
• Formalize and structure complex bodies of knowledge by using a systematic and rigorous approach to develop "intelligent" systems of high quality.
Legend |
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Mandatory |
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Optional |
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Courses not taught this academic year |
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Periodic courses not taught this academic year |
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Periodic courses taught this academic year |
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Two year courses |
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Click on the course code to see detailed informations (objectives, methods, evaluation...) |
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Year |
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1 |
2 |
The student shall select 30 credits from amongst
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Compulsory courses in Artifficial intelligence
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LINGI2262
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Machine Learning :classification and evaluation |
Pierre Dupont |
30h + 30h |
5credits |
1q |
x |
x |
LINGI2263
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Computational Linguistics |
Pierre Dupont (coord.), Cédrick Fairon
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30h + 15h |
5credits |
2q |
x |
x |
LINGI2264
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Automated reasoning |
Charles Pecheur |
30h + 15h |
5credits |
1q |
x |
x |
LINGI2365
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Constraint programming |
Yves Deville |
30h + 15h |
5credits |
2q |
x |
x |
Elective courses in Artificial Itelligence The student shall select 10 credits from amongst
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LSINF2275
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Data mining & decision making |
Marco Saerens |
30h + 30h |
5credits |
2q |
x |
x |
LELEC2885
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Image processing and computer vision |
Christophe De Vleeschouwer (coord.), Laurent Jacques (supplée Benoît Macq), Benoît Macq
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30h + 30h |
5credits |
1q |
x |
x |
LINGI2368
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Computational biology |
Pierre Dupont |
30h + 15h |
5credits |
1q |
x |
x |
LGBIO2010
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Bioinformatics |
Yves Deville, Michel Ghislain
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30h + 30h |
5credits |
2q |
x |
x |
LINMA1702
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Applied mathematics : Optimization |
Vincent Blondel, François Glineur (coord.) |
30h + 22.5h |
5credits |
2q |
x |
x |
LINMA1691
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Discrete mathematics - Graph theory and algorithms
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Vincent Blondel |
30h + 22.5h |
5credits |
1q |
x |
x |
LINMA2111
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Discrete mathematics II : Algorithms and complexity
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Vincent Blondel |
30h + 22.5h |
5credits |
2q |
x |
x |
LSTAT2110
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Data Analysis |
Christian Hafner, Johan Segers
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22.5h + 7.5h |
5credits |
1q |
x |
x |
LSTAT2320
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Design of experiment. |
Patrick Bogaert, Bernadette Govaerts
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22.5h + 7.5h |
5credits |
2q |
x |
x |
LSTAT2020
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Statistical computing |
Bernadette Govaerts, Christian Ritter (supplée Bernadette Govaerts) |
20h + 20h |
6credits |
1q |
x |
x |
LELEC2870
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Machine Learning : regression, dimensionality reduction and data visualization |
Michel Verleysen |
30h + 30h |
5credits |
1q |
x |
x |
LINGE1222
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Multivariate Statistical Analysis
(in French)
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Johan Segers |
30h + 15h |
4credits |
2q |
x |
x |
LINMA2450
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Combinatorial optimization
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Jean-Charles Delvenne |
30h + 22.5h |
5credits |
1q |
x |
x |
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22/11/2010
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