RT info:eu-repo/semantics/article T1 Computational and mathematical models meet heterogeneous computing A1 Llanos Ferraris, Diego Rafael A1 Vigo Aguiar, Jesús AB During the first decade of the twenty-first century, the advent of multicore processing reached its maturity level, with the help of shared-memory programming models such as OpenMP [1], that allows to parallelize both legacy and new C and Fortran applications in a shared-memory environments. Meanwhile, message-passing programming models such as MPI [2] allowed to aggregate multicore systems in larger clusters, which dominated the TOP 500 supercomputing list [3]. However, at that time parallel computing seemed to face some limits that were hard to overcome. Physical limits prevented clock frequencies to increase, and the Law of Diminishing Returns reduced the usefulness of keep adding cores to a multiprocessor. Suddenly, the advent of GPU computing changed the game once again. Being initially developed as a way to accelerate graphical processing, GPUs were reused to speed up certain types of calculations that needed a similar processing to an entire set of independent elements. CUDA [4] programming model allowed programmers to translate to the GPU world many applications, and the TOP 500 list started to show more and more heterogeneous systems that incorporated accelerators to their cluster nodes. PB The Journal of Supercomputing SN 0920-8542 YR 2018 FD 2018 LK http://uvadoc.uva.es/handle/10324/39041 UL http://uvadoc.uva.es/handle/10324/39041 LA spa NO 8. Computational and mathematical models meet heterogeneous computing (Editorial, CMMSE Special Issue). Diego R. Llanos, Jesus Vigo-Aguiar. The Journal of Supercomputing (Q2), Springer, ISSN 0920-8542, DOI 10.1007/s11227-018-2713-y. DS UVaDOC RD 24-nov-2024