hgpu.org » Data parallelism
Bingsheng He, Wenbin Fang, Qiong Luo, Naga K. Govindaraju, Tuyong Wang
Tags: Computer science, CUDA, Data parallelism, MapReduce, nVidia, nVidia GeForce 8800 GTX, Package, Programming techniques, Web Analysis
October 30, 2010 by hgpu
Recent source codes
* * *
Most viewed papers (last 30 days)
- Revealing NVIDIA Closed-Source Driver Command Streams for CPU-GPU Runtime Behavior Insight
- Evaluating CUDA Tile for AI Workloads on Hopper and Blackwell GPUs
- FACT: Compositional Kernel Synthesis with a Three-Stage Agentic Workflow
- DITRON: Distributed Multi-level Tiling Compiler for Parallel Tensor Programs
- CuBridge: An LLM-Based Framework for Understanding and Reconstructing High-Performance Attention Kernels
- ARGUS: Agentic GPU Optimization Guided by Data-Flow Invariants
- Kerncap: Automated Kernel Extraction and Isolation for AMD GPUs
- KEET: Explaining Performance of GPU Kernels Using LLM Agents
- A Human–Machine Collaborative Tuning Framework for Triton Kernel Optimization on SIMD Platforms
- CUDAHercules: Benchmarking Hardware-Aware Expert-level CUDA Optimization for LLMs
* * *




