We propose a new strategy for the parallelization of mesh processing algorithms. Our main contribution is the definition of distributed combinatorial maps (called n-dmaps), which allow us to represent the topology of big meshes by splitting them into independent parts. Our mathematical definition ensures the global consistency of the meshes at their interfaces. Thus, an n-dmap can be used to represent a mesh, to traverse it, or to modify it by using different mesh processing algorithms. Moreover, an nD mesh with a huge number of elements can be considered, which is not possible with a sequential approach and a regular data structure. We illustrate the interest of our solution by presenting a parallel adaptive subdivision method of a 3D hexa...
In this paper, we present a new approach for the parallel generation and partitioning of unstructure...
Anisotropic mesh adaptation is a powerful way to directly minimise the computational cost of mesh ba...
To enable the solution of large-scale applications on distributed memory architectures, we are desig...
We propose a new strategy for the parallelization of mesh processing algorithms. Our main contributi...
This paper presents a parallel remeshing algorithm for distributed-memory architectures. It is an it...
We develop a distributed poly-square mapping algorithm for large-scale 2D geometric regions, which i...
The efficient solution of many large-scale scientific calculations depends on unstructured mesh stra...
The motivation of this thesis was to develop strategies that would enable unstructured mesh based co...
Computational methods based on the use of adaptively constructed nonuniform meshes reduce the amount...
AbstractIn this paper, we present a scalable three dimensional hybrid parallel Delaunay image-to-mes...
AbstractIn this paper, we present a scalable three dimensional hybrid MPI+Threads parallel Delaunay ...
A new method is described for optimising graph partitions which arise in mapping unstructured mesh ...
AbstractComputers with multiple processor cores using shared memory are now ubiquitous. In this pape...
A parallel distributed approach to refine a mesh while preserving the curvature of a target geometry...
Parallelism, Optimal Data Distribution/Collection, P3L This document describes the MAP paradigm of ...
In this paper, we present a new approach for the parallel generation and partitioning of unstructure...
Anisotropic mesh adaptation is a powerful way to directly minimise the computational cost of mesh ba...
To enable the solution of large-scale applications on distributed memory architectures, we are desig...
We propose a new strategy for the parallelization of mesh processing algorithms. Our main contributi...
This paper presents a parallel remeshing algorithm for distributed-memory architectures. It is an it...
We develop a distributed poly-square mapping algorithm for large-scale 2D geometric regions, which i...
The efficient solution of many large-scale scientific calculations depends on unstructured mesh stra...
The motivation of this thesis was to develop strategies that would enable unstructured mesh based co...
Computational methods based on the use of adaptively constructed nonuniform meshes reduce the amount...
AbstractIn this paper, we present a scalable three dimensional hybrid parallel Delaunay image-to-mes...
AbstractIn this paper, we present a scalable three dimensional hybrid MPI+Threads parallel Delaunay ...
A new method is described for optimising graph partitions which arise in mapping unstructured mesh ...
AbstractComputers with multiple processor cores using shared memory are now ubiquitous. In this pape...
A parallel distributed approach to refine a mesh while preserving the curvature of a target geometry...
Parallelism, Optimal Data Distribution/Collection, P3L This document describes the MAP paradigm of ...
In this paper, we present a new approach for the parallel generation and partitioning of unstructure...
Anisotropic mesh adaptation is a powerful way to directly minimise the computational cost of mesh ba...
To enable the solution of large-scale applications on distributed memory architectures, we are desig...