Data-parallel computing
Chas. Boyd
MICROSOFT
Queue, Vol. 6, No. 2. (2008), pp. 30-39
BibTeX
@article{boyd2008data,
title={Data-parallel computing},
author={Boyd, C.},
journal={Queue},
volume={6},
number={2},
pages={30–39},
issn={1542-7730},
year={2008},
publisher={ACM}
}
Data parallelism is a key concept in leveraging the power of today’s manycore GPUs.
Tags: Computer science, Data parallelism, Review
January 5, 2011 by hgpu
No votes yet.
Please wait...
Recent source codes
* * *
Most viewed papers (last 30 days)
- A Microbenchmark Framework for Performance Evaluation of OpenMP Target Offloading
- pyATF: Constraint-Based Auto-Tuning in Python
- TritonBench: Benchmarking Large Language Model Capabilities for Generating Triton Operators
- WgPy: GPU-accelerated NumPy-like array library for web browsers
- CRIUgpu: Transparent Checkpointing of GPU-Accelerated Workloads
- LLMPerf: GPU Performance Modeling meets Large Language Models
- The Shamrock code: I- Smoothed Particle Hydrodynamics on GPUs
- Concurrent Scheduling of High-Level Parallel Programs on Multi-GPU Systems
- TransCL: An Automatic CUDA-to-OpenCL Programs Transformation Framework
- Can Tensor Cores Benefit Memory-Bound Kernels? (No!)
* * *