The Map-Reduce computing framework rose to prominence with datasets of such size that dozens of machines on a single cluster were needed for individual jobs. As datasets approach the exabyte scale, a single job may need distributed processing not only on multiple machines, but on multiple clusters. We consider a scheduling problem to minimize weighted average completion time of n jobs on m distributed clusters of parallel machines. In keeping with the scale of the problems motivating this work, we assume that (1) each job is divided into m “subjobs” and (2) distinct subjobs of a given job may be processed concurrently. When each cluster is a single machine, this is the NP-Hard concurrent open shop problem. A clear limitation of such a model...
Scheduling problems are essential for decision making in many academic disciplines, including operat...
We consider the well known problem of scheduling jobs with release dates to minimize their average w...
International audienceThe distributed nature of new computing platforms results in the problem of sc...
The Map-Reduce computing framework rose to prominence with datasets of such size that dozens of mach...
International audienceThe Multiple Cluster Scheduling Problem corresponds to minimize the maximum co...
International audienceWe consider the Multiple Cluster Scheduling Problem (MCSP), where the objectiv...
MapReduce framework is established as the standard approach for parallel processing of massive amoun...
International audienceIn this paper, we tackle the well‐known problem of scheduling a collection of ...
Scheduling is a crucial problem in parallel and distributed processing. It consists of determining w...
International audienceMany scientific applications can be structured as Parallel Task Graphs (PTGs),...
EuroPar 2012In this paper we tackle the well-known problem of scheduling a collection of parallel jo...
The model of malleable task (MT) was introduced some years ago and has been proved to be an efficien...
We consider a scheduling problem where a set of jobs is a-priori distributed over parallel machines....
International audienceApplications structured as parallel task graphs exhibit both data and task par...
In this paper we give efficient distributed algorithms computing approximate solutions to general sc...
Scheduling problems are essential for decision making in many academic disciplines, including operat...
We consider the well known problem of scheduling jobs with release dates to minimize their average w...
International audienceThe distributed nature of new computing platforms results in the problem of sc...
The Map-Reduce computing framework rose to prominence with datasets of such size that dozens of mach...
International audienceThe Multiple Cluster Scheduling Problem corresponds to minimize the maximum co...
International audienceWe consider the Multiple Cluster Scheduling Problem (MCSP), where the objectiv...
MapReduce framework is established as the standard approach for parallel processing of massive amoun...
International audienceIn this paper, we tackle the well‐known problem of scheduling a collection of ...
Scheduling is a crucial problem in parallel and distributed processing. It consists of determining w...
International audienceMany scientific applications can be structured as Parallel Task Graphs (PTGs),...
EuroPar 2012In this paper we tackle the well-known problem of scheduling a collection of parallel jo...
The model of malleable task (MT) was introduced some years ago and has been proved to be an efficien...
We consider a scheduling problem where a set of jobs is a-priori distributed over parallel machines....
International audienceApplications structured as parallel task graphs exhibit both data and task par...
In this paper we give efficient distributed algorithms computing approximate solutions to general sc...
Scheduling problems are essential for decision making in many academic disciplines, including operat...
We consider the well known problem of scheduling jobs with release dates to minimize their average w...
International audienceThe distributed nature of new computing platforms results in the problem of sc...