© 2019, Pleiades Publishing, Ltd. Practical applicability of many statistical algorithms is limited by large sizes of corresponding covariance matrices. These limitations can be significantly weakened due to effective use of the structure of covariance matrices, properties of the autocorrelation function, and advantages of the architecture of modern GPUs. This paper presents GPU implementations of the algorithms for inversion of a covariance matrix and solution of a system of linear equations whose coefficient matrix is a covariance matrix. Inversion of close to sparse covariance matrices is also considered in the work. For all the cases considered, significant accelerations were obtained in comparison with Octave mathematical software and ...
Thesis (Ph.D.), Department of Mathematics, Washington State UniversityA new class of methods for acc...
IEEE Computer SocietyInternational audienceIn this paper, we aim to introduce a new perspective when...
The Conjugate Gradient (CG) method is a widely-used iterative method for solving linear systems desc...
© 2019, Pleiades Publishing, Ltd. Practical applicability of many statistical algorithms is limited ...
Covariance matrices are used for a wide range of applications in particle ohysics, including Kalman ...
In this paper, we tackle the inversion of large-scale dense matrices via conventional matrix factori...
none4Dense matrix inversion is a basic procedure in many linear algebra algorithms. A com...
An extremely common bottleneck encountered in statistical learning algorithms is inversion of huge c...
We study the use of massively parallel architectures for computing a matrix inverse. Two different ...
To deal with the massive computation workload between matrix multiplication, we developed a calculat...
Covariance matrices are used for a wide range of applications in particle physics, including Kalman ...
Modern graphics processing units (GPUs) have been at the leading edge of in-creasing chip-level para...
We present several algorithms to compute the solution of a linear system of equations on a graphics ...
Simulations are indispensable for engineering. They make it possible that one can perform fa...
State-of-the-art Graphics Processing Unit (GPU) has superior performances on float-pointing calculat...
Thesis (Ph.D.), Department of Mathematics, Washington State UniversityA new class of methods for acc...
IEEE Computer SocietyInternational audienceIn this paper, we aim to introduce a new perspective when...
The Conjugate Gradient (CG) method is a widely-used iterative method for solving linear systems desc...
© 2019, Pleiades Publishing, Ltd. Practical applicability of many statistical algorithms is limited ...
Covariance matrices are used for a wide range of applications in particle ohysics, including Kalman ...
In this paper, we tackle the inversion of large-scale dense matrices via conventional matrix factori...
none4Dense matrix inversion is a basic procedure in many linear algebra algorithms. A com...
An extremely common bottleneck encountered in statistical learning algorithms is inversion of huge c...
We study the use of massively parallel architectures for computing a matrix inverse. Two different ...
To deal with the massive computation workload between matrix multiplication, we developed a calculat...
Covariance matrices are used for a wide range of applications in particle physics, including Kalman ...
Modern graphics processing units (GPUs) have been at the leading edge of in-creasing chip-level para...
We present several algorithms to compute the solution of a linear system of equations on a graphics ...
Simulations are indispensable for engineering. They make it possible that one can perform fa...
State-of-the-art Graphics Processing Unit (GPU) has superior performances on float-pointing calculat...
Thesis (Ph.D.), Department of Mathematics, Washington State UniversityA new class of methods for acc...
IEEE Computer SocietyInternational audienceIn this paper, we aim to introduce a new perspective when...
The Conjugate Gradient (CG) method is a widely-used iterative method for solving linear systems desc...