International audienceThe paper proposes and discusses distributed processor load balancing algorithms which are based on nature inspired approach of multi-objective Extremal Optimization. Extremal Optimization is used for defining task migration aiming at processor load balancing in execution of graph-represented distributed programs. The analysed multi-objective algorithms are based on three or four criteria selected from the following four choices: the balance of computational loads of processors in the system, the minimal total volume of application data transfers between processors, the number of task migrations during program execution and the influence of task migrations on computational load imbalance and the communication volume. T...
In parallel computing, obtaining maximal performance is often mandatory to solve large and complex p...
A distributed operating system loses its essence if it cannot manage its resources efficiently. But ...
Load balancing in large parallel systems with distributed memory is a difficult task often influenci...
International audienceThe paper describes methods for using Extremal Optimization (EO) for processor...
10 pagesInternational audiencehe paper shows how to use Extremal Optimization in load balancing of d...
International audienceThe paper concerns parallel methods for Extremal Optimization (EO) applied for...
The study investigates various load balancing strategies to improve the performance of distributed c...
The overall efficiency of parallel algorithms is most decisively effected by the strategy applied fo...
Dynamic load balancing techniques have been shown to be the most critical part of an efficient imple...
Efficient parallel computing on distributed platforms still presents many obstacles. This paper addr...
A desirable feature in a Distributed Computing System is to balance the load of processors of a syst...
Dynamic load balancing techniques have proved to be the most critical part of an efficient implement...
Load balancing in large parallel systems with distributed memory is a difficult task often influenci...
With the advent of distributed computer systems with a largely transparent user interface, new quest...
A fundamental issue affecting the performance of a parallel application running on message-passing p...
In parallel computing, obtaining maximal performance is often mandatory to solve large and complex p...
A distributed operating system loses its essence if it cannot manage its resources efficiently. But ...
Load balancing in large parallel systems with distributed memory is a difficult task often influenci...
International audienceThe paper describes methods for using Extremal Optimization (EO) for processor...
10 pagesInternational audiencehe paper shows how to use Extremal Optimization in load balancing of d...
International audienceThe paper concerns parallel methods for Extremal Optimization (EO) applied for...
The study investigates various load balancing strategies to improve the performance of distributed c...
The overall efficiency of parallel algorithms is most decisively effected by the strategy applied fo...
Dynamic load balancing techniques have been shown to be the most critical part of an efficient imple...
Efficient parallel computing on distributed platforms still presents many obstacles. This paper addr...
A desirable feature in a Distributed Computing System is to balance the load of processors of a syst...
Dynamic load balancing techniques have proved to be the most critical part of an efficient implement...
Load balancing in large parallel systems with distributed memory is a difficult task often influenci...
With the advent of distributed computer systems with a largely transparent user interface, new quest...
A fundamental issue affecting the performance of a parallel application running on message-passing p...
In parallel computing, obtaining maximal performance is often mandatory to solve large and complex p...
A distributed operating system loses its essence if it cannot manage its resources efficiently. But ...
Load balancing in large parallel systems with distributed memory is a difficult task often influenci...