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)
- Comparing Parallel Functional Array Languages: Programming and Performance
- Efficient Graph Embedding at Scale: Optimizing CPU-GPU-SSD Integration
- Can Large Language Models Predict Parallel Code Performance?
- Acceleration as a Service (XaaS) Source Containers
- Performance of Confidential Computing GPUs
- Low-cost edge computing using upcycled smartphones
- CASS: Nvidia to AMD Transpilation with Data, Models, and Benchmark
- Exploring SYCL for batched kernels with memory allocations
- GPU Performance Portability needs Autotuning
- Exploration of Cryptocurrency Mining-Specific GPUs in AI Applications: A Case Study of CMP 170HX
* * *