mpsoc的近最优元启发式调度

Amin Majd, M. Daneshtalab, J. Plosila, N. Khalilzad, Golnaz Sahebi, E. Troubitsyna
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引用次数: 5

摘要

多处理器单片系统(MPSoC)的任务调度问题是一个NP-hard问题,对系统的性能起着至关重要的作用。为了找到最优解而探索整个搜索空间是不节省时间的,因此元启发式主要用于在合理的时间内找到接近最优解。我们提出了一种新的元启发式近最优调度方法,可以为在共享平台上实现的多个应用程序提供性能保证。应用程序表示为有向无循环任务图(DAG),并在给定通信成本的MPSoC平台上执行。我们引入了一种受遗传算法和帝国主义竞争算法启发的新型多种群方法。它专门用于求解调度问题,其目标是改善收敛策略和选择压力。通过使用Sobel滤波器、SUSAN滤波器、RASTA-PLP和JPEG编码器作为实际案例研究的实验,证明了该方法的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NOMeS: Near-optimal metaheuristic scheduling for MPSoCs
The task scheduling problem for Multiprocessor System-on-Chips (MPSoC), which plays a vital role in performance, is an NP-hard problem. Exploring the whole search space in order to find the optimal solution is not time efficient, thus metaheuristics are mostly used to find a near-optimal solution in a reasonable amount of time. We propose a novel metaheuristic method for near-optimal scheduling that can provide performance guarantees for multiple applications implemented on a shared platform. Applications are represented as directed acyclic task graphs (DAG) and are executed on an MPSoC platform with given communication costs. We introduce a novel multi-population method inspired by both genetic and imperialist competitive algorithms. It is specialized for the scheduling problem with the goal to improve the convergence policy and selection pressure. The potential of the approach is demonstrated by experiments using a Sobel filter, a SUSAN filter, RASTA-PLP and JPEG encoder as real-world case studies.
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