Optimization space pruning without regrets
2017pp. 34–44
Citations Over Time
Abstract
Many computationally-intensive algorithms benefit from the wide parallelism offered by Graphical Processing Units (GPUs). However, the search for a close-to-optimal implementation remains extremely tedious due to the specialization and complexity of GPU architectures.
Related Papers
- → Hybrid CUDA, OpenMP, and MPI parallel programming on multicore GPU clusters(2010)136 cited
- → Evaluation of CUDA for X-Ray Imaging System(2012)4 cited
- → Capability and Education Beliefs of Convergence Utilizing the Dietary Area among Adolescent Parents(2024)1 cited
- High speed molecular dynamics simulation approach based on CUDA(2013)
- REALIZATION OF ISLAND MODEL GENETIC ALGORITHM ON NVIDIA CUDA ARCHITECTURES(2016)