(eng) This paper is devoted to mapping iterative algorithms onto heterogeneous clusters. The application data is partitioned over the processors, which are arranged along a virtual ring. At each iteration, independent calculations are carried out in parallel, and some communications take place between consecutive processors in the ring. The question is to determine how to slice the application data into chunks, and to assign these chunks to the processors, so that the total execution time is minimized. One major difficulty is to embed a processor ring into a network that typically is not fully connected, so that some communication links have to be shared by several processor pairs. We establish a complexity result that assesses the difficul...
AbstractÐIn this paper, we address the issue of implementing matrix multiplication on heterogeneous ...
(eng) In this paper, we consider the problem of allocating a large number of independent, equal-size...
Abstract — In this paper we address the problem of bal-ancing the processing load of MapReduce tasks...
This paper is devoted to mapping iterative algorithms onto heterogeneous clusters. The application d...
International audienceWe focus on mapping iterative algorithms onto heterogeneous clusters. The appl...
International audienceThis paper is devoted to mapping iterative algorithms onto heterogeneous clust...
This paper is devoted to mapping iterative algorithms onto heterogeneous clusters. The application d...
(eng) This paper is devoted to static load balancing techniques for mapping iterative algorithms ont...
(eng) We consider the problem of redistributing data on homogeneous and heterogeneous ring of proces...
Abstract. We consider the problem of redistributing data on homogeneous and heterogeneous processor ...
Clusters of homogeneous workstations built around fast networks have become popular means of solving...
In this paper, we study the problem of scheduling parallel loops at compile-time for a heterogeneous...
We consider the problem of redistributing data on homo-geneous and heterogeneous rings of processors...
Abstract. Traditional load balancing algorithms for data-intensive iterative routines can successful...
In this thesis, we study iterative algorithms onto heterogeneous platforms. These iterative algorith...
AbstractÐIn this paper, we address the issue of implementing matrix multiplication on heterogeneous ...
(eng) In this paper, we consider the problem of allocating a large number of independent, equal-size...
Abstract — In this paper we address the problem of bal-ancing the processing load of MapReduce tasks...
This paper is devoted to mapping iterative algorithms onto heterogeneous clusters. The application d...
International audienceWe focus on mapping iterative algorithms onto heterogeneous clusters. The appl...
International audienceThis paper is devoted to mapping iterative algorithms onto heterogeneous clust...
This paper is devoted to mapping iterative algorithms onto heterogeneous clusters. The application d...
(eng) This paper is devoted to static load balancing techniques for mapping iterative algorithms ont...
(eng) We consider the problem of redistributing data on homogeneous and heterogeneous ring of proces...
Abstract. We consider the problem of redistributing data on homogeneous and heterogeneous processor ...
Clusters of homogeneous workstations built around fast networks have become popular means of solving...
In this paper, we study the problem of scheduling parallel loops at compile-time for a heterogeneous...
We consider the problem of redistributing data on homo-geneous and heterogeneous rings of processors...
Abstract. Traditional load balancing algorithms for data-intensive iterative routines can successful...
In this thesis, we study iterative algorithms onto heterogeneous platforms. These iterative algorith...
AbstractÐIn this paper, we address the issue of implementing matrix multiplication on heterogeneous ...
(eng) In this paper, we consider the problem of allocating a large number of independent, equal-size...
Abstract — In this paper we address the problem of bal-ancing the processing load of MapReduce tasks...