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Experimental Results on Statistical Approaches to Page Replacement Policies

机译:有关页面替换策略统计方法的实验结果

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摘要

This paper investigates the questions of what statistical information about a memory request sequence is useful to have in making page replacement decisions. Our starting point is the Markov Request Model for page request sequences. Although the utility of modeling page request sequences by the Markov model has been recently put into doubt ([13)], we find that two previously suggested algorithms (Maximum Hitting Time [11] and Dominating Distribution [14]) which are based on the Markov model work well on the trace data used in this study. Interestingly, both of these algorithms perform equally well despite the fact that the theoretical results for these two algorithms differ dramatically. We then develop succinct characteristics of memory access patterns in an attempt to approximate the simpler of the two algorithms. Finally, we investigate how to collect these characteristics in an online manner in order to have a purely online algorithm.
机译:本文研究了有关内存请求序列的哪些统计信息对于制定页面替换决策有用的问题。我们的起点是页面请求序列的马尔可夫请求模型。尽管最近有人怀疑用马尔可夫模型对页面请求序列进行建模的实用性([13]),但我们发现,先前提出的两种算法(最大击中时间[11]和支配分布[14])是基于马尔可夫模型在本研究中使用的跟踪数据上效果很好。有趣的是,尽管这两种算法的理论结果差异很大,但两种算法的性能均相当好。然后,我们开发出内存访问模式的简洁特征,以试图近似两种算法中的简单算法。最后,我们研究如何以在线方式收集这些特征,以便获得纯在线算法。

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