A Potential Solutions-Based Parallelized GA for Application Graph Mapping in Reconfigurable Hardware

S. M. Mohtavipour, H. Shahhoseini
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引用次数: 1

Abstract

High-performance computing systems including Reconfigurable Hardware (RH) such as Field Programmable Gate Array (FPGA) proved a significant impact on the speed of application execution with useful reconfiguration and parallelism attributes. To make one application executable on RH, it is required to perform some heavy computational compilation preprocessing phases. In this paper, we aim to reduce compilation overhead in the NP-hard problem of the mapping phase by utilizing a novel Parallelized Genetic Algorithm (PGA) which is based on potential solutions in the search space. In the search space of possible solutions, we analytically separate weak and potential solutions to guide the GA for reaching the optimal solution faster. Moreover, this separation has been carried out independently to add parallelism into our GA and also, to switch between search spaces for keeping the generalization of GA exploration. Comparison results showed that our approach could make a considerable gap at the starting points of solution searching and therefore, found the optimal solution in a more reasonable time.
基于潜在解的并行遗传算法在可重构硬件中的应用图映射
高性能计算系统,包括可重构硬件(RH),如现场可编程门阵列(FPGA),具有有用的可重构和并行性属性,对应用程序执行速度有重大影响。为了使一个应用程序在RH上可执行,需要执行一些繁重的计算编译预处理阶段。在本文中,我们的目标是利用一种新的基于搜索空间中潜在解的并行遗传算法(PGA)来减少映射阶段np困难问题的编译开销。在可能解的搜索空间中,我们解析分离弱解和势解,以指导遗传算法更快地达到最优解。此外,这种分离是独立进行的,以增加我们的遗传算法的并行性,也可以在搜索空间之间切换,以保持遗传算法探索的泛化。对比结果表明,我们的方法在解搜索的起始点上有较大的差距,可以在更合理的时间内找到最优解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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