International audienceIn this work we propose an efficient branch-and-bound (B&B) algorithm for the permutation flow-shop problem (PFSP) with makespan objective. We present a new node decomposition scheme that combines dynamic branching and lower bound refinement strategies in a computationally efficient way. To alleviate the computational burden of the two-machine bound used in the refinement stage, we propose an online learning-inspired mechanism to predict promising couples of bottleneck machines. The algorithm offers multiple choices for branching and bounding operators and can explore the search tree either sequentially or in parallel on multi-core CPUs. In order to empirically determine the most efficient combination of these componen...
The optimization of scheduling problems is based on different criteria to optimize. One of the most ...
The m-machine permutation flowshop problem with the total tardiness objective is a common scheduling...
A large number of real-world planning problems are combinatorial optimization problems which are eas...
Makespan minimization in permutation flow-shop scheduling is a well-known hard combinatorial optimiz...
International audienceMakespan minimization in permutation flow-shop scheduling is a well-known hard...
International audienceSolving exactly Combinatorial Optimization Problems (COPs) using a Branch-and-...
In this paper we address the problem of makespan optimal sequencing in a flow shop with parallel mac...
In this paper we face the permutation flow-shop scheduling problem with a makespan objective functio...
The m-machine permutation flowshop problem with the total flow-time objective is a common scheduling...
International audienceBranch-and-Bound (B&B) algorithms are time intensive tree-based exploration me...
this paper minimizes the makespan, i. e. the maximum completion time required to process all jobs. A...
This work addresses the minimization of the makespan criterion for the permutation flow shop problem...
In this doctoral dissertation we construct and improve Branch-and- Price algorithms for parallel mac...
International audienceIn this paper,we propose a pioneering work on designing and programming B&B al...
Solving large permutation Combinatorial Optimization Problems (COPs) using Branch-and-Bound (B&B) al...
The optimization of scheduling problems is based on different criteria to optimize. One of the most ...
The m-machine permutation flowshop problem with the total tardiness objective is a common scheduling...
A large number of real-world planning problems are combinatorial optimization problems which are eas...
Makespan minimization in permutation flow-shop scheduling is a well-known hard combinatorial optimiz...
International audienceMakespan minimization in permutation flow-shop scheduling is a well-known hard...
International audienceSolving exactly Combinatorial Optimization Problems (COPs) using a Branch-and-...
In this paper we address the problem of makespan optimal sequencing in a flow shop with parallel mac...
In this paper we face the permutation flow-shop scheduling problem with a makespan objective functio...
The m-machine permutation flowshop problem with the total flow-time objective is a common scheduling...
International audienceBranch-and-Bound (B&B) algorithms are time intensive tree-based exploration me...
this paper minimizes the makespan, i. e. the maximum completion time required to process all jobs. A...
This work addresses the minimization of the makespan criterion for the permutation flow shop problem...
In this doctoral dissertation we construct and improve Branch-and- Price algorithms for parallel mac...
International audienceIn this paper,we propose a pioneering work on designing and programming B&B al...
Solving large permutation Combinatorial Optimization Problems (COPs) using Branch-and-Bound (B&B) al...
The optimization of scheduling problems is based on different criteria to optimize. One of the most ...
The m-machine permutation flowshop problem with the total tardiness objective is a common scheduling...
A large number of real-world planning problems are combinatorial optimization problems which are eas...