Towards Automatic Learning of Heuristics for Mechanical Transformations of Procedural Code

@article{Vigueras2016TowardsAL,
  title={Towards Automatic Learning of Heuristics for Mechanical Transformations of Procedural Code},
  author={G. Vigueras and M. Carro and S. Tamarit and Julio Mari{\~n}o-Carballo},
  journal={ArXiv},
  year={2016},
  volume={abs/1603.03022}
}
  • G. Vigueras, M. Carro, +1 author Julio Mariño-Carballo
  • Published 2016
  • Computer Science
  • ArXiv
  • The current trend in next-generation exascale systems goes towards integrating a wide range of specialized (co-)processors into traditional supercomputers. However, the integration of different specialized devices increases the degree of heterogeneity and the complexity in programming such type of systems. Due to the efficiency of heterogeneous systems in terms of Watt and FLOPS per surface unit, opening the access of heterogeneous platforms to a wider range of users is an important problem to… CONTINUE READING
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