hgpu.org » Metaheuristics
Pavel Kromer, Jan Platos, Vaclav Snasel, Ajith Abraham
Tags: Algorithms, Computer science, CUDA, Differential evolution, Genetic programming, Metaheuristics, nVidia, Task scheduling, Tesla C2050
November 2, 2011 by hgpu
Wojciech Bozejko
Tags: Algorithms, Book, Computer science, CUDA, Metaheuristics, nVidia, Optimization, Programming techniques, Task scheduling, Tesla C1060, Tesla C2050
October 2, 2011 by hgpu
Caner Candan, Johann Dreo, Pierre Saveant, Vincent Vidal
Tags: Algorithms, Artificial intelligence, Computer science, Evolutionary Computations, Metaheuristics, Programming techniques
September 19, 2011 by hgpu
Bilel Derbel, Sebastien Verel
September 19, 2011 by hgpu
Nicolas Soca, Jose Luis Blengio, Martin Pedemonte, Pablo Ezzatti
Tags: Algorithms, Computer science, CUDA, Evolutionary Computations, Metaheuristics, nVidia, nVidia GeForce 9800 GTX, Optimization
August 7, 2011 by hgpu
Robert C. Green, Lingfeng Wang, Mansoor Alam, Richard A. Formato
Tags: Algorithms, Computer science, CUDA, Metaheuristics, nVidia, Optimization
July 24, 2011 by hgpu
The Van Luong, Nouredine Melab, El-Ghazali Talbi
June 5, 2011 by hgpu
The Van Luong, Lakhdar Loukil, Nouredine Melab, El-Ghazali Talbi
May 11, 2011 by hgpu
The Van Luong, Nouredine Melab, El-Ghazali Talbi
December 23, 2010 by hgpu
Wojciech Bozejko, Mariusz Uchronski, Mieczyslaw Wodecki
Tags: Computer science, Metaheuristics
November 19, 2010 by hgpu
Recent source codes
* * *
Most viewed papers (last 30 days)
- Optimizing CUDA like a Human: Micro-Profiling Tools as Expert Surrogates for LLM-Based GPU Kernel Optimization
- MusaCoder: Native GPU Kernel Generation with Full-Stack Training on Moore Threads GPU
- KForge: LLM-Driven Cross-Platform Kernel Generation for AI Accelerators
- Towards Feedback-to-Plan Decisions for Self-Evolving LLM Agents in CUDA Kernel Generation
- CodegenBench: Can LLMs Write Efficient Code Across Architectures?
- daVinci-kernel: Co-Evolving Skill Selection, Summarization, and Utilization via RL for GPU Kernel Optimization
- Leveraging AI Ecosystem for Portable and Sustainable GPU Kernels in HPC
- AutoPass: Evidence-Guided LLM Agents for Compiler Performance Tuning
- Autonomous heterogeneous catalyst discovery with a self-evolving multi-agent digital twin
- Tangram: Hiding GPU Heterogeneity for Efficient LLM Parallelization
* * *



