Partial Differential Equations (PDEs) are used ubiquitously in modelling natural phenomena. It is generally not possible to obtain an analytical solution and hence they are commonly discretized using schemes such as the Finite Difference Method (FDM) and the Finite Element Method (FEM), converting the continuous PDE to a discrete system of sparse algebraic equations. The solution of this system can be approximated using iterative methods, which are better suited to many sparse systems than direct methods. In this thesis we use the FDM to discretize linear, second order, Elliptic PDEs and consider parallel implementations of standard iterative solvers. The dominant paradigm in this field is distributed memory parallelism which requires the ...
This dissertation presents a multilevel algorithm to solve constant and variable coeffcient elliptic...
The solution of elliptic partial differential equations is a common performance bottleneck in scient...
It has been rightly predicted that parallel computing is inevitable. This thesis at-tempts to study ...
Stencil computations form the heart of numerical simulations to solve Partial Differential Equations...
In prior-research the authors have demonstrated that, for stencil-based numerical solvers for Partia...
Computer simulations that solve partial differential equations (PDEs) are common in many fields of s...
Given a discretization stencil, partitioning the problem domain is an important first step for the e...
Numerically solving elliptic partial differential equations for a large number of degrees of freedom...
In this work we propose a novel parallelization approach of two-level balancing domain decomposition...
Scientific computing is used frequently in an increasing number of disciplines to accelerate scienti...
The communication and synchronization overhead inherent in parallel processing can lead to situation...
In this paper we review several methods for solving large sparse linear systems arising from discret...
MasterThe purpose of this text is to offer an overview of the most popular domain decomposition meth...
We consider computations associated with data parallel iterative solvers used for the numerical solu...
This dissertation studies the sources of poor performance in scientific computing codes based on par...
This dissertation presents a multilevel algorithm to solve constant and variable coeffcient elliptic...
The solution of elliptic partial differential equations is a common performance bottleneck in scient...
It has been rightly predicted that parallel computing is inevitable. This thesis at-tempts to study ...
Stencil computations form the heart of numerical simulations to solve Partial Differential Equations...
In prior-research the authors have demonstrated that, for stencil-based numerical solvers for Partia...
Computer simulations that solve partial differential equations (PDEs) are common in many fields of s...
Given a discretization stencil, partitioning the problem domain is an important first step for the e...
Numerically solving elliptic partial differential equations for a large number of degrees of freedom...
In this work we propose a novel parallelization approach of two-level balancing domain decomposition...
Scientific computing is used frequently in an increasing number of disciplines to accelerate scienti...
The communication and synchronization overhead inherent in parallel processing can lead to situation...
In this paper we review several methods for solving large sparse linear systems arising from discret...
MasterThe purpose of this text is to offer an overview of the most popular domain decomposition meth...
We consider computations associated with data parallel iterative solvers used for the numerical solu...
This dissertation studies the sources of poor performance in scientific computing codes based on par...
This dissertation presents a multilevel algorithm to solve constant and variable coeffcient elliptic...
The solution of elliptic partial differential equations is a common performance bottleneck in scient...
It has been rightly predicted that parallel computing is inevitable. This thesis at-tempts to study ...