International audienceIn this paper we present a performance evaluation of large scale matrix algebra applications on the Grid'5000 platform. Grid'5000 is a nation wide experimental set of clusters which provide a reconfigurable and highly controllable and monitorable instrument. We test the scalability of the experimental tool and some optimization techniques for large scale matrix algebra applications in grid infrastructures based on an efficient data locality, already presented for non-dedicated grid platforms. This includes persistent data placement and explicit management of local memories on the computational nodes. We discuss the performances of a block-based matrix-vector product and the Gauss-Jordan method for large matrix inversio...
Big data projects increasingly make use of networks of heterogeneous computational resources for sc...
(eng) This paper presents a parallel out-of-core algorithm to invert huge matrices, that is when siz...
Abstract. Generalized sparse matrix-matrix multiplication (or SpGEMM) is a key primitive for many hi...
International audienceIn this paper we present a performance evaluation of large scale matrix algebr...
Introduction We describe a novel architecture for a "linear algebra server" that operates...
Our experimental results showed that block based algorithms for numerically intensive applications a...
International audienceYML is a dedicated framework to develop and run parallel applications over a l...
Since data sizes of analytical applications are continuously growing, many data scientists are switc...
The article describes the matrix algebra libraries based on the modern technologies of parallel prog...
International audienceThis paper is aimed at designing efficient parallel matrix-product algorithms ...
This dissertation advances the state of the art for scalable high-performance graph analytics and da...
International audienceThis paper is focused on designing efficient parallel matrix-product algorithm...
This paper is aimed at designing efficient parallel matrix-product algorithms for homogeneous master...
This paper is aimed at designing efficient parallel matrix-product algorithms for heterogeneous mast...
International audienceWe study the implementation of dense linear algebra computations, such as matr...
Big data projects increasingly make use of networks of heterogeneous computational resources for sc...
(eng) This paper presents a parallel out-of-core algorithm to invert huge matrices, that is when siz...
Abstract. Generalized sparse matrix-matrix multiplication (or SpGEMM) is a key primitive for many hi...
International audienceIn this paper we present a performance evaluation of large scale matrix algebr...
Introduction We describe a novel architecture for a "linear algebra server" that operates...
Our experimental results showed that block based algorithms for numerically intensive applications a...
International audienceYML is a dedicated framework to develop and run parallel applications over a l...
Since data sizes of analytical applications are continuously growing, many data scientists are switc...
The article describes the matrix algebra libraries based on the modern technologies of parallel prog...
International audienceThis paper is aimed at designing efficient parallel matrix-product algorithms ...
This dissertation advances the state of the art for scalable high-performance graph analytics and da...
International audienceThis paper is focused on designing efficient parallel matrix-product algorithm...
This paper is aimed at designing efficient parallel matrix-product algorithms for homogeneous master...
This paper is aimed at designing efficient parallel matrix-product algorithms for heterogeneous mast...
International audienceWe study the implementation of dense linear algebra computations, such as matr...
Big data projects increasingly make use of networks of heterogeneous computational resources for sc...
(eng) This paper presents a parallel out-of-core algorithm to invert huge matrices, that is when siz...
Abstract. Generalized sparse matrix-matrix multiplication (or SpGEMM) is a key primitive for many hi...