International audienceIn this paper, we consider a generic model of computational grids, seen as several clusters of homogeneous processors. In such systems, a key issue when designing efficient job allocation policies is to balance the workload over the different resources. We present a Markovian model for performance evaluation of such a policy, namely work stealing (idle processors steal work from others) in large-scale heterogeneous systems. Using mean field theory, we show that when the size of the system grows, it converges to a system of deterministic ordinary differential equations that allows one to compute the expectation of performance functions (such as average response times) as well as the distributions of these functions
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Load balancing plays a crucial role in many large scale systems. Several different load balancing pr...
International audienceIn distributed computing, the recent paradigm shift from centrally-owned clust...
International audienceIn this paper, we consider a generic model of computational grids, seen as sev...
In this paper, we consider a generic model of computational grids, seen as several clusters of homog...
This paper investigates a variant of the work-stealing algorithm that we call the localized work-ste...
In this paper we analyse a very simple dynamic work-stealing algorithm. In the work-generation model...
International audienceThis article presents a performance evaluation method for the dimensioning of ...
Large-scale heterogeneous distributed computing environments (such as Computational Grids and Clouds...
This paper addresses the mean-field behavior of large-scale systems of parallel servers with a proce...
This paper studies the performance of parallel stream computations on a multiprocessor architecture ...
International audienceThis paper studies the performance of parallel stream computations on a multip...
Processing computation-intensive jobs at multiple processing cores in parallel is essential in many ...
International audienceWe study the impact of communication latency on the classical Work Stealing lo...
International audienceMean field approximation is a powerful technique to study the performance of l...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Load balancing plays a crucial role in many large scale systems. Several different load balancing pr...
International audienceIn distributed computing, the recent paradigm shift from centrally-owned clust...
International audienceIn this paper, we consider a generic model of computational grids, seen as sev...
In this paper, we consider a generic model of computational grids, seen as several clusters of homog...
This paper investigates a variant of the work-stealing algorithm that we call the localized work-ste...
In this paper we analyse a very simple dynamic work-stealing algorithm. In the work-generation model...
International audienceThis article presents a performance evaluation method for the dimensioning of ...
Large-scale heterogeneous distributed computing environments (such as Computational Grids and Clouds...
This paper addresses the mean-field behavior of large-scale systems of parallel servers with a proce...
This paper studies the performance of parallel stream computations on a multiprocessor architecture ...
International audienceThis paper studies the performance of parallel stream computations on a multip...
Processing computation-intensive jobs at multiple processing cores in parallel is essential in many ...
International audienceWe study the impact of communication latency on the classical Work Stealing lo...
International audienceMean field approximation is a powerful technique to study the performance of l...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Load balancing plays a crucial role in many large scale systems. Several different load balancing pr...
International audienceIn distributed computing, the recent paradigm shift from centrally-owned clust...