The use of GPU accelerators is becoming common in HPC platforms due to the their effective performance and energy efficiency. In addition, new generations of multicore processors are being designed with wider vector units and/or larger hardware thread counts, also contributing to the peak performance of the whole system. Although current directive–based paradigms, such as OpenMP or OpenACC, support both accelerators and multicore-based hosts, they do not provide an effective and efficient way to concurrently use them, usually resulting in accelerated programs in which the potential computational performance of the host is not exploited. In this paper we propose an extension to the OpenMP 4.5 directive-based programming model to support the...
With the introduction of more powerful and massively parallel embedded processors, embedded systems ...
Manycore accelerators have recently proven a promising solution for increasingly powerful and energy...
Editors: Michael Klemm; Bronis R. de Supinski et al.International audienceHeterogeneous supercompute...
OpenMP includes in its latest 4.0 specification the accelerator model. In this paper we present a pa...
This work was supported by MEEP project, which has received funding from the European High-Performan...
GPU devices are becoming a common element in current HPC platforms due to their high performance-per...
Heterogeneous supercomputers that incorporate computational ac-celerators such as GPUs are increasin...
This paper advances the state-of-the-art in programming models for exploiting task-level parallelis...
With the introduction of more powerful and massively parallel embedded processors, embedded systems ...
OpenMP has evolved recently towards expressing unstructured parallelism, targeting the parallelizati...
Graphics Processing Units (GPU) have been widely adopted to accelerate the execution of HPC workload...
In the fields of high performance computing (HPC) and embedded systems, the current trend is to empl...
This paper advances the state-of-the-art in programming models for exploiting task-level parallelism...
Current trends in High Performance Computing suggest a significant shift towards heterogeneous archi...
In this paper, we present OMPSs, a programming model based on OpenMP and StarSs, that can also incor...
With the introduction of more powerful and massively parallel embedded processors, embedded systems ...
Manycore accelerators have recently proven a promising solution for increasingly powerful and energy...
Editors: Michael Klemm; Bronis R. de Supinski et al.International audienceHeterogeneous supercompute...
OpenMP includes in its latest 4.0 specification the accelerator model. In this paper we present a pa...
This work was supported by MEEP project, which has received funding from the European High-Performan...
GPU devices are becoming a common element in current HPC platforms due to their high performance-per...
Heterogeneous supercomputers that incorporate computational ac-celerators such as GPUs are increasin...
This paper advances the state-of-the-art in programming models for exploiting task-level parallelis...
With the introduction of more powerful and massively parallel embedded processors, embedded systems ...
OpenMP has evolved recently towards expressing unstructured parallelism, targeting the parallelizati...
Graphics Processing Units (GPU) have been widely adopted to accelerate the execution of HPC workload...
In the fields of high performance computing (HPC) and embedded systems, the current trend is to empl...
This paper advances the state-of-the-art in programming models for exploiting task-level parallelism...
Current trends in High Performance Computing suggest a significant shift towards heterogeneous archi...
In this paper, we present OMPSs, a programming model based on OpenMP and StarSs, that can also incor...
With the introduction of more powerful and massively parallel embedded processors, embedded systems ...
Manycore accelerators have recently proven a promising solution for increasingly powerful and energy...
Editors: Michael Klemm; Bronis R. de Supinski et al.International audienceHeterogeneous supercompute...