多目标DSE算法在处理器优化中的评价

R. Chis, M. Vintan, L. Vintan
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引用次数: 10

摘要

非常复杂的微体系结构,如复杂的超标量/SMT或多核系统,有很多配置。探索这个巨大的设计空间并尝试优化多个目标(如性能、功耗和硬件复杂性)是一个真正的挑战。本文利用多目标设计空间探索工具FADSE,对复杂超标量网格ALU处理器的硬件参数进行了优化设计。我们比较了不同的启发式算法如何处理DSE优化。其中三种算法(NSGAII, SPEA2和SMPSO)来自jMetal库,另外两种算法(NSGAII和MOHC)由我们实现。我们表明,在这个巨大的设计空间中,每种算法找到的最佳个体之间的差异非常小,只是它们得到这些解决方案的时间不同。为了加速DSE过程,我们还通过机器学习技术进行了特征选择,并使用较少数量的输入参数再次运行所有DSE算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-objective DSE algorithms' evaluations on processor optimization
Very complex micro-architectures, like complex superscalar/SMT or multicore systems, have lots of configurations. Exploring this huge design space and trying to optimize multiple objectives, like performance, power consumption and hardware complexity is a real challenge. In this paper, using the multi-objective design space exploration tool FADSE, we tried to optimize the hardware parameters of the complex superscalar Grid ALU Processor. We compared how different heuristic algorithms handle the DSE optimization. Three of these algorithms are taken from the jMetal library (NSGAII, SPEA2 and SMPSO) while the other two, CNSGAII and MOHC were implemented by us. We show that in this huge design space the differences between the best found individuals by every algorithm are very small, only the time in which they got to these solutions differs. In order to accelerate the DSE process we also did a feature selection through machine learning techniques and ran all DSE algorithms again with a smaller number of input parameters.
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