International audienceWe present a GPU implementation in C and CUDA of a matrix-by-vector procedure that is particularly tailored to a special class of distance geometry problems in dimension 1, which we name "paradoxical DGP instances". This matrix-byvector reformulation was proposed in previous studies on an optical processor specialized for this kind of computations. Our computational experiments show that a consistent speed-up is observed when comparing our GPU implementation against a standard algorithm for distance geometry, called the Branchand-Prune algorithm. These results confirm that a suitable implementation of the matrix-by-vector procedure in the context of optic computing is very promising. We also remark, however, that the t...
We propose, in this paper, three parallel algorithms to accelerate the Euclidean matrix computation ...
Tensor cores (TCs) are a type of Application-Specific Integrated Circuit (ASIC) and are a recent add...
We present novel parallel algorithms for collision detection and separation distance computation for...
International audienceWe present a GPU implementation in C and CUDA of a matrix-by-vector procedure ...
International audienceWe present the architecture of a new optical processor specialized in matrix-b...
This paper describes a fast approximate approach for the GPU-based computation of 3D Euclidean dista...
The aim of the thesis is implementation of certain algorithms in computational geometry on the CUDA ...
Multicore computational accelerators such as Graphics Processor Units(GPUs) became common for gainin...
Abstract-A distance matrix is simply an n×n two-dimensional array that contains pairwise distances o...
The ever-increasing size of data sets and the need for real-time processing drives the need for high...
The advent of GPGPU technologies has allowed for sensible speed-ups in many high-dimension, memory-i...
The distance calculation in an image is a basic operation in computer vision, pattern recognition, a...
General purpose computing on graphics processing units (GPGPU) is fast becoming a common feature of ...
Given a 2-D binary image of size n×n, Euclidean Distance Map (EDM) is a 2-D array of the same size s...
Nearest neighbor analysis is one of the classic methods to find out the tendency of the observed poi...
We propose, in this paper, three parallel algorithms to accelerate the Euclidean matrix computation ...
Tensor cores (TCs) are a type of Application-Specific Integrated Circuit (ASIC) and are a recent add...
We present novel parallel algorithms for collision detection and separation distance computation for...
International audienceWe present a GPU implementation in C and CUDA of a matrix-by-vector procedure ...
International audienceWe present the architecture of a new optical processor specialized in matrix-b...
This paper describes a fast approximate approach for the GPU-based computation of 3D Euclidean dista...
The aim of the thesis is implementation of certain algorithms in computational geometry on the CUDA ...
Multicore computational accelerators such as Graphics Processor Units(GPUs) became common for gainin...
Abstract-A distance matrix is simply an n×n two-dimensional array that contains pairwise distances o...
The ever-increasing size of data sets and the need for real-time processing drives the need for high...
The advent of GPGPU technologies has allowed for sensible speed-ups in many high-dimension, memory-i...
The distance calculation in an image is a basic operation in computer vision, pattern recognition, a...
General purpose computing on graphics processing units (GPGPU) is fast becoming a common feature of ...
Given a 2-D binary image of size n×n, Euclidean Distance Map (EDM) is a 2-D array of the same size s...
Nearest neighbor analysis is one of the classic methods to find out the tendency of the observed poi...
We propose, in this paper, three parallel algorithms to accelerate the Euclidean matrix computation ...
Tensor cores (TCs) are a type of Application-Specific Integrated Circuit (ASIC) and are a recent add...
We present novel parallel algorithms for collision detection and separation distance computation for...