We study the problem of minimizing the makespan on m parallel machines. We introduce a very large-scale neighborhood of exponential size (in the number of machines) that is based on a matching in a complete graph. The idea is to partition the jobs assigned to the same machine into two sets. This partitioning is done for every machine with some chosen rule to receive 2m parts. A new assignment is received by putting to every machine exactly two parts. The neighborhood Nsplit consists of all possible rearrangements of the parts to the machines. The best assignment of Nsplit can be calculated in time O(mlogm) by determining the perfect matching having minimum maximal edge weight in an improvement graph, where the vertices correspond to parts a...
Over the past decade, there has been increasing interest in distributed/parallel algorithms for proc...
Increasing interest has recently been shown in analyzing the worst-case behavior of local search alg...
Increasing interest has recently been shown in analyzing the worst-case behavior of local search alg...
We study the problem of minimizing the makespan on $m$ parallel machines. We introduce a very large-...
We investigate the quality of local search heuristics for the scheduling problem of minimizing the m...
We investigate the quality of local search heuristics for the scheduling problem of minimizing the m...
In this paper we study very large-scale neighborhoods for the minimum total weighted completion time...
In this paper, the problem of minimizing the total completion time on a single machine with the pres...
We study the performance of two popular jump neighborhoods on the classical scheduling problem of mi...
We study the worst case performance guarantee of locally optimal solutions for the problem of schedu...
International audienceThis paper addresses the parallel machine scheduling problem where jobs have d...
The Massively Parallel Computation (MPC) model is an emerging model that distills core aspects of di...
Local search heuristics are an important class of algorithms for obtaining good solutions for hard c...
The unrelated parallel machine scheduling problem with sequence dependent setup times (UPMSP-SDST) a...
We propose new local search algorithms for minimum makespan parallel machine scheduling problems, wh...
Over the past decade, there has been increasing interest in distributed/parallel algorithms for proc...
Increasing interest has recently been shown in analyzing the worst-case behavior of local search alg...
Increasing interest has recently been shown in analyzing the worst-case behavior of local search alg...
We study the problem of minimizing the makespan on $m$ parallel machines. We introduce a very large-...
We investigate the quality of local search heuristics for the scheduling problem of minimizing the m...
We investigate the quality of local search heuristics for the scheduling problem of minimizing the m...
In this paper we study very large-scale neighborhoods for the minimum total weighted completion time...
In this paper, the problem of minimizing the total completion time on a single machine with the pres...
We study the performance of two popular jump neighborhoods on the classical scheduling problem of mi...
We study the worst case performance guarantee of locally optimal solutions for the problem of schedu...
International audienceThis paper addresses the parallel machine scheduling problem where jobs have d...
The Massively Parallel Computation (MPC) model is an emerging model that distills core aspects of di...
Local search heuristics are an important class of algorithms for obtaining good solutions for hard c...
The unrelated parallel machine scheduling problem with sequence dependent setup times (UPMSP-SDST) a...
We propose new local search algorithms for minimum makespan parallel machine scheduling problems, wh...
Over the past decade, there has been increasing interest in distributed/parallel algorithms for proc...
Increasing interest has recently been shown in analyzing the worst-case behavior of local search alg...
Increasing interest has recently been shown in analyzing the worst-case behavior of local search alg...