5.00 credits
30.0 h + 15.0 h
Q2
Teacher(s)
Schaus Pierre;
Language
English
> French-friendly
> French-friendly
Main themes
- Constraints and domains
- Practical aspects of constraint solvers
- Constraint Satisfaction Problems (CSP)
- Models and languages for constraint programming
- Methods and techniques for constraint solving (consistency, relaxation, optimization, search, linear programming, global constraints, ...)
- Search techniques and strategies
- Problem modelling and resolution
- Applications to differents problem classes (e.g. planification, scheduling, ressource allocation, economics, robotics)
Learning outcomes
At the end of this learning unit, the student is able to : | |
1 |
Given the learning outcomes of the "Master in Computer Science and Engineering" program, this course contributes to the development, acquisition and evaluation of the following learning outcomes:
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Content
- Constraint Programming : a Declarative Programming paradigm
- Architecture of a constraint programming solver
- Global contraints and implementation techniques (incrementality, etc)
- Search techniques and strategies
- Combinatorial optimization problem modeling and solving
- Applications to different problem classes (e.g. planification, scheduling, resource allocation, economics, robotics)
Teaching methods
Students will follow a MOOC on the EdX plateform (videos) and there will be programming exercises and quizzes graded on inginious.
Evaluation methods
For the first session, the global grade for the course is solely based on the grades of the computing projects, submitted and evaluated during the semester.
The projects are not evaluated again for the second session and may not be resubmitted.
The grades for projects are kept as such representing 50% and the other 50% are evaluated with a written exam, or when appropriate, on a computer.
Projects are invididual. It means that any source code of a project estimated to be
- copied or inspired by the one of another student, or
- copied or inspired by a source code found on the internet or another source,
will result in a zero grade for the student at the projects and the exam
The same consequences will hold for a student that voluntarily shares his code or make available to other students.
The projects are not evaluated again for the second session and may not be resubmitted.
The grades for projects are kept as such representing 50% and the other 50% are evaluated with a written exam, or when appropriate, on a computer.
Projects are invididual. It means that any source code of a project estimated to be
- copied or inspired by the one of another student, or
- copied or inspired by a source code found on the internet or another source,
will result in a zero grade for the student at the projects and the exam
The same consequences will hold for a student that voluntarily shares his code or make available to other students.
Other information
A good background in data-structure and algorithms is required to follow this course and a good knowledge of Java language
Online resources
Bibliography
Le site www.minicp.org + lectures suggérées pendant le semestre
Faculty or entity
INFO