On-board processing requirements of future space missions are constantly increasing, calling for new hardware than the traditional ones used in space. Embedded GPUs are an attractive candidate offering both high performance capabilities and low power consumption, but there are no complex industrial case studies from the space domain demonstrating these advantages. In this Master Thesis we present the GPU parallelization of an on-board algorithm in multiple GPU programming languages, as well as its performance and energy efficiency on a selection of promising embedded GPU COTS platforms
The programming of GPUs (Graphics Processing Units) is ready for practical applications; the largest...
This paper explores the performance and energy efficiency of CUDA-enabled GPUs and multi-core SIMD C...
International audienceWhile general purpose graphics processing units now embark tremendous amount o...
In this contribution, we provide an overview of the results and lessons learnt from the on-going ESA...
Following the same trend of automotive and avionics, the space domain is witnessing an increase in t...
Following the same trend of automotive and avionics, the space domain is witnessing an increase in t...
Mobile processors continue to increase in performance while becoming more power efficient, providing...
A lot of effort from academia and industry has been invested in exploring the suitability of low-pow...
Abstract—In this paper, we parallelize and optimize the popular feature detection algorithms, i.e. S...
Graphic processors are becoming faster and faster. Computational power within graphic processing uni...
Map-Reduce is a framework for processing parallelizable problem across huge datasets using a large c...
It is commonplace for graphics processing units or GPUs today to render extremely complex 3D scenes ...
The interest of using GPU:s as general processing units for heavy computations (GPGPU) has increased...
Future space missions will require increased on-board computing power to process and compress massiv...
This paper explores the performance and energy efficiency of CUDA-enabled GPUs and multi-core SIMD C...
The programming of GPUs (Graphics Processing Units) is ready for practical applications; the largest...
This paper explores the performance and energy efficiency of CUDA-enabled GPUs and multi-core SIMD C...
International audienceWhile general purpose graphics processing units now embark tremendous amount o...
In this contribution, we provide an overview of the results and lessons learnt from the on-going ESA...
Following the same trend of automotive and avionics, the space domain is witnessing an increase in t...
Following the same trend of automotive and avionics, the space domain is witnessing an increase in t...
Mobile processors continue to increase in performance while becoming more power efficient, providing...
A lot of effort from academia and industry has been invested in exploring the suitability of low-pow...
Abstract—In this paper, we parallelize and optimize the popular feature detection algorithms, i.e. S...
Graphic processors are becoming faster and faster. Computational power within graphic processing uni...
Map-Reduce is a framework for processing parallelizable problem across huge datasets using a large c...
It is commonplace for graphics processing units or GPUs today to render extremely complex 3D scenes ...
The interest of using GPU:s as general processing units for heavy computations (GPGPU) has increased...
Future space missions will require increased on-board computing power to process and compress massiv...
This paper explores the performance and energy efficiency of CUDA-enabled GPUs and multi-core SIMD C...
The programming of GPUs (Graphics Processing Units) is ready for practical applications; the largest...
This paper explores the performance and energy efficiency of CUDA-enabled GPUs and multi-core SIMD C...
International audienceWhile general purpose graphics processing units now embark tremendous amount o...