A Multi-State Q-Learning Approach for the Dynamic Load Balancing of Time Warp

S. Meraji, Wei Zhang, C. Tropper
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引用次数: 22

Abstract

In this paper, we present a dynamic load-balancing algorithm for optimistic gate level simulation making use of a machine learning approach. We first introduce two dynamic load-balancing algorithms oriented towards balancing the computational and communication load respectively in a Time Warp simulator. In addition, we utilize a multi- state Q-learning approach to create an algorithm which is a combination of the first two algorithms. The Q-learning algorithm determines the value of three important parameters- the number of processors which participate in the algorithm, the load which is exchanged during its execution and the type of load-balancing algorithm. We investigate the algorithm on gate level simulations of several open source VLSI circuits.
时间扭曲动态负载平衡的多状态q学习方法
在本文中,我们提出了一种利用机器学习方法进行乐观门级仿真的动态负载平衡算法。首先介绍了两种动态负载平衡算法,分别用于在时间扭曲模拟器中平衡计算和通信负载。此外,我们利用多状态q学习方法来创建一个算法,该算法是前两个算法的组合。Q-learning算法决定了三个重要参数的值——参与算法的处理器数量、执行过程中交换的负载以及负载平衡算法的类型。我们研究了几种开源VLSI电路的门电平仿真算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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