Divisible Load Scheduling of Image Processing Applications on the Heterogeneous Star Network Using a new Genetic Algorithm

S. Aali, H. Shahhoseini, N. Bagherzadeh
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引用次数: 16

Abstract

The divisible load scheduling of image processing applications on the heterogeneous star network is addressed in this paper. In our platform, processors and links have different speeds. Also the computation and communication overheads are considered. A new genetic algorithm for minimizing the processing time of low level image applications using divisible load theory is introduced. A closed form solution for the processing time and the image fractions that should be assigned to each processor are obtained. The optimum number of participating processors and the optimal sequence for load distribution with a new genetic algorithm are derived. The effect of different image and kernel sizes on processing time and speed up are investigated. Finally, to indicate the efficiency of our algorithm, several numerical experiments are presented.
基于新遗传算法的异构星型网络图像处理可分负载调度
研究了异构星型网络中图像处理应用的可分负载调度问题。在我们的平台中,处理器和链路具有不同的速度。同时还考虑了计算和通信开销。利用可分负载理论,提出了一种新的最小化低级图像处理时间的遗传算法。得到了处理时间和应分配给每个处理器的图像分数的封闭形式解。用一种新的遗传算法推导出了最优参与处理机数量和负载分配的最优顺序。研究了不同图像和核大小对处理时间和速度的影响。最后,通过数值实验验证了算法的有效性。
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