GPU devices are becoming a common element in current HPC platforms due to their high performance-per-Watt ratio. However, developing applications able to exploit their dazzling performance is not a trivial task, which becomes even harder when they have irregular data access patterns or control flows. Dynamic Parallelism (DP) has been introduced in the most recent GPU architecture as a mechanism to improve applicability of GPU computing in these situations, resource utilization and execution performance. DP allows to launch a kernel within a kernel without intervention of the CPU. Current experiences reveal that DP is offered to programmers at the expenses of an excessive overhead which, together with its architecture dependency, makes it di...
With processor clock speeds having stagnated, parallel computing architectures have achieved a break...
Clusters of GPUs are emerging as a new computational scenario. Programming them requires the use of ...
OpenMP [13] is the dominant programming model for shared-memory parallelism in C, C++ and Fortran du...
GPU devices are becoming a common element in current HPC platforms due to their high performance-per...
Graphics Processing Units (GPU) have been widely adopted to accelerate the execution of HPC workload...
Early programs for GPU (Graphics Processing Units) acceleration were based on a flat, bulk parallel ...
The use of GPU accelerators is becoming common in HPC platforms due to the their effective performan...
With the introduction of more powerful and massively parallel embedded processors, embedded systems ...
Heterogeneous supercomputers that incorporate computational ac-celerators such as GPUs are increasin...
In this paper, we present OMPSs, a programming model based on OpenMP and StarSs, that can also incor...
A major shift in technology from maximizing single-core performance to integrating multiple cores ha...
OpenMP is a very convenient programming model to parallelize critical real-time applications for sev...
The proliferation of accelerators in modern clusters makes efficient coprocessor programming a key r...
The objective of this thesis is the development, implementation and optimization of a GPU execution ...
In the past decade, accelerators, commonly Graphics Processing Units (GPUs), have played a key role ...
With processor clock speeds having stagnated, parallel computing architectures have achieved a break...
Clusters of GPUs are emerging as a new computational scenario. Programming them requires the use of ...
OpenMP [13] is the dominant programming model for shared-memory parallelism in C, C++ and Fortran du...
GPU devices are becoming a common element in current HPC platforms due to their high performance-per...
Graphics Processing Units (GPU) have been widely adopted to accelerate the execution of HPC workload...
Early programs for GPU (Graphics Processing Units) acceleration were based on a flat, bulk parallel ...
The use of GPU accelerators is becoming common in HPC platforms due to the their effective performan...
With the introduction of more powerful and massively parallel embedded processors, embedded systems ...
Heterogeneous supercomputers that incorporate computational ac-celerators such as GPUs are increasin...
In this paper, we present OMPSs, a programming model based on OpenMP and StarSs, that can also incor...
A major shift in technology from maximizing single-core performance to integrating multiple cores ha...
OpenMP is a very convenient programming model to parallelize critical real-time applications for sev...
The proliferation of accelerators in modern clusters makes efficient coprocessor programming a key r...
The objective of this thesis is the development, implementation and optimization of a GPU execution ...
In the past decade, accelerators, commonly Graphics Processing Units (GPUs), have played a key role ...
With processor clock speeds having stagnated, parallel computing architectures have achieved a break...
Clusters of GPUs are emerging as a new computational scenario. Programming them requires the use of ...
OpenMP [13] is the dominant programming model for shared-memory parallelism in C, C++ and Fortran du...