Methods based on Monte Carlo for solving linear systems have some interesting properties which make them, in many instances, preferable to classic methods. Namely, these statistical methods allow the computation of individual entries of the output, hence being able to handle problems where the size of the resulting matrix would be too large. In this paper, we propose a distributed linear algebra solver based on Monte Carlo. The proposed method is based on an algorithm that uses random walks over the system’s matrix to calculate powers of this matrix, which can then be used to compute a given matrix function. Distributing the matrix over several nodes enables the handling of even larger problem instances, however it entails a communication p...
This paper presents a parallel computation approach for the efficient solution of very large multist...
International audienceA new Walk on Equations (WE) Monte Carlo algorithm for Linear Algebra (LA) pro...
AbstractThe construction of distributed algorithms for matrix computations built on top of distribut...
Methods based on Monte Carlo for solving linear systems have some interesting properties which make ...
We describe a new Monte Carlo method based on a multilevel method for computing the action of the re...
We propose a novel stochastic algorithm that randomly samples entire rows and columns of the matrix ...
The work is devoted to solving systems of linear algebraic equations on distributed memory computers...
Linear algebra operations play an important role in scientific computing and data analysis. With inc...
In this paper a distributed iterative GMRES algorithm for solving huge and sparse linear systems (th...
A Monte Carlo method for computing the action of a matrix exponential for a certain class of matrice...
Many scientific and engineering applications involve inverting large matrices or solving systems of ...
Big data projects increasingly make use of networks of heterogeneous computational resources for sci...
A novel algorithm for computing the action of a matrix exponential over a vector is proposed. The al...
Over the past twenty years, we have witnessed an unprecedented growth in data, inaugurating the so-c...
In this paper we want to present problems connected with the generation and storing of huge sparse m...
This paper presents a parallel computation approach for the efficient solution of very large multist...
International audienceA new Walk on Equations (WE) Monte Carlo algorithm for Linear Algebra (LA) pro...
AbstractThe construction of distributed algorithms for matrix computations built on top of distribut...
Methods based on Monte Carlo for solving linear systems have some interesting properties which make ...
We describe a new Monte Carlo method based on a multilevel method for computing the action of the re...
We propose a novel stochastic algorithm that randomly samples entire rows and columns of the matrix ...
The work is devoted to solving systems of linear algebraic equations on distributed memory computers...
Linear algebra operations play an important role in scientific computing and data analysis. With inc...
In this paper a distributed iterative GMRES algorithm for solving huge and sparse linear systems (th...
A Monte Carlo method for computing the action of a matrix exponential for a certain class of matrice...
Many scientific and engineering applications involve inverting large matrices or solving systems of ...
Big data projects increasingly make use of networks of heterogeneous computational resources for sci...
A novel algorithm for computing the action of a matrix exponential over a vector is proposed. The al...
Over the past twenty years, we have witnessed an unprecedented growth in data, inaugurating the so-c...
In this paper we want to present problems connected with the generation and storing of huge sparse m...
This paper presents a parallel computation approach for the efficient solution of very large multist...
International audienceA new Walk on Equations (WE) Monte Carlo algorithm for Linear Algebra (LA) pro...
AbstractThe construction of distributed algorithms for matrix computations built on top of distribut...