RÉSUMÉ: La résolution de problèmes combinatoires en programmation par contraintes (CP) se fait par énumération des solutions. Cette procédure exhaustive est très coûteuse et la conception d'heuristiques de branchement visant à accélérer l'exploration de l'espace des solutions est souvent indispensable. Néanmoins, la conception d'heuristiques dédiées est un processus long, nécessitant une expertise et ne se généralise pas à un large nombre de problèmes différents. Ce constat a motivé l'utilisation de modèles d'apprentissage machine pour automatiquement apprendre des heuristiques performantes sans expertise humaine. Ces modèles entraînés par apprentissage par renforcement (RL) peuvent alors être intégrés à des solveurs de programmation par co...
As single processing unit performance has reached a technological limit, the power wall, the past de...
Application specific instruction set processors (ASIP) are a well known compromise between the high ...
International audienceL'apprentissage par renforcement profond a connu un succès remarquable au cour...
RÉSUMÉ: Ce mémoire se concentre sur la programmation par contraintes (CP), une approche puissante po...
The last couple of decades have seen a surge of interest and sophistication in using heuristics to s...
The goal of this work is to propose some approaches that solve functional constraint hierarchies. Fi...
As soon as a structure is organized, the ability to put the right people at the right time is critic...
As soon as a structure is organized, the ability to put the right people at the right time is critic...
As soon as a structure is organized, the ability to put the right people at the right time is critic...
As soon as a structure is organized, the ability to put the right people at the right time is critic...
As soon as a structure is organized, the ability to put the right people at the right time is critic...
RÉSUMÉ: Motivation : La programmation par contraintes (PPC) propose un cadre formel pour représenter...
Automatic parallelization is one of the approaches aimed at a better and easier use of parallel comp...
On many problems, it is hard to find an algorithm that solves all its instances with the shortest ex...
In this thesis, we deal with modeling and solving various problems including vehicle routing and sch...
As single processing unit performance has reached a technological limit, the power wall, the past de...
Application specific instruction set processors (ASIP) are a well known compromise between the high ...
International audienceL'apprentissage par renforcement profond a connu un succès remarquable au cour...
RÉSUMÉ: Ce mémoire se concentre sur la programmation par contraintes (CP), une approche puissante po...
The last couple of decades have seen a surge of interest and sophistication in using heuristics to s...
The goal of this work is to propose some approaches that solve functional constraint hierarchies. Fi...
As soon as a structure is organized, the ability to put the right people at the right time is critic...
As soon as a structure is organized, the ability to put the right people at the right time is critic...
As soon as a structure is organized, the ability to put the right people at the right time is critic...
As soon as a structure is organized, the ability to put the right people at the right time is critic...
As soon as a structure is organized, the ability to put the right people at the right time is critic...
RÉSUMÉ: Motivation : La programmation par contraintes (PPC) propose un cadre formel pour représenter...
Automatic parallelization is one of the approaches aimed at a better and easier use of parallel comp...
On many problems, it is hard to find an algorithm that solves all its instances with the shortest ex...
In this thesis, we deal with modeling and solving various problems including vehicle routing and sch...
As single processing unit performance has reached a technological limit, the power wall, the past de...
Application specific instruction set processors (ASIP) are a well known compromise between the high ...
International audienceL'apprentissage par renforcement profond a connu un succès remarquable au cour...