6135

Exploring Fine-Grained Task-based Execution on Multi-GPU Systems

Long Chen, Oreste Villa, Guang R. Gao
Qualcomm Incorporated, San Diego, CA 92121
IEEE International Conference on Cluster Computing (CLUSTER), 2011

@inproceedings{chen2011exploring,

   title={Exploring Fine-Grained Task-based Execution on Multi-GPU Systems},

   author={Chen, L. and Villa, O. and Gao, G.R.},

   booktitle={Cluster Computing (CLUSTER), 2011 IEEE International Conference on},

   pages={386–394},

   organization={IEEE},

   year={2011}

}

Download Download (PDF)   View View   Source Source   

1410

views

Using multi-GPU systems, including GPU clusters, is gaining popularity in scientific computing. However, when using multiple GPUs concurrently, the conventional data parallel GPU programming paradigms, e.g., CUDA, cannot satisfactorily address certain issues, such as load balancing, GPU resource utilization, overlapping fine grained computation with communication, etc. In this paper, we present a fine-grained task-based execution framework for multi-GPU systems. By scheduling finer-grained tasks than what is supported in the conventional CUDA programming method among multiple GPUs, and allowing concurrent task execution on a single GPU, our framework provides means for solving the above issues and efficiently utilizing multi-GPU systems. Experiments with a molecular dynamics application show that, for nonuniform distributed workload, the solutions based on our framework achieve good load balance, and considerable performance improvement over other solutions based on the standard CUDA programming methodologies.
No votes yet.
Please wait...

* * *

* * *

HGPU group © 2010-2024 hgpu.org

All rights belong to the respective authors

Contact us: