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首页> 外文期刊>Computers & Chemical Engineering >Accelerating multi-dimensional population balance model simulations via a highly scalable framework using GPUs
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Accelerating multi-dimensional population balance model simulations via a highly scalable framework using GPUs

机译:通过使用GPU的高度可扩展框架加速多维人口平衡模型模拟

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摘要

The solution of high-dimensional PBMs using CPUs are often computationally intractable. This study focuses on the development of a scalable algorithm to parallelize the nested loops inside the PBM via a GPU framework. The developed PBM is unique since it adapts to the size of the problem and uses the GPU cores accordingly. This algorithm was parallelized for NVIDIA® GPUs as it was written in CUDA® and C/C++. The major bottleneck of such algorithms is the communication time between the CPU and the GPU. In our studies, communication time contributed to less than 1% of the total run time and a maximum speedup of about 12 over the serial CPU code was achieved. The GPU PBM achieved a speedup of about two times compared to the PBM's multi-core configuration on a desktop computer. The speed improvements are also reported for various CPU and GPU architectures and configurations.
机译:使用CPU的高维PBMS的解​​决方案通常是在计算上棘手的。本研究侧重于开发可扩展算法,并通过GPU框架将嵌套环平行化。开发的PBM是唯一的,因为它适应问题的大小并相应地使用GPU核心。该算法对NVIDIA®GPU并行化,因为它是用Cuda®和C / C ++编写的。此类算法的主要瓶颈是CPU和GPU之间的通信时间。在我们的研究中,通信时间贡献到总运行时间的少于1%,并且实现了串行CPU代码上大约12的最大加速。与桌面计算机上的PBM的多核配置相比,GPU PBM达到了大约两次的加速。还报告了各种CPU和GPU架构和配置的速度改进。

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