基于神经网络的高性能计算机体系结构替换策略

Humayun Khalid
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引用次数: 1

摘要

本文提出了一种高性能计算机系统中缓存线替换的新方案。迄今为止的初步研究表明,神经网络(nn)在统计预测领域具有巨大的潜力[1]。利用神经网络的这一特性,我们开发了一种基于神经网络的替换策略,该策略通过预测计算机系统中央处理器(CPU)引用的内存地址序列,有效地消除了缓存中的死线。因此,与传统的方案(如LRU(最近最少使用)、FIFO(先进先出)和MRU(最近使用)算法)相比,所提出的策略可能提供更好的缓存性能。事实上,我们从模拟实验中观察到,与LRU方案相比,精心设计的基于神经网络的替换方案确实提供了出色的性能。该方法可应用于虚拟内存系统中的页面替换和预取算法。
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A neural network-based replacement strategy for high performance computer architectures

We propose a new scheme for the replacement of cache lines in high performance computer systems. Preliminary research, to date, indicates that neural networks (NNs) have great potential in the area of statistical predictions [1]. This attribute of neural networks is used in our work to develop a neural network-based replacement policy which can effectively eliminate dead lines from the cache memory by predicting the sequence of memory addresses referenced by the central processing unit (CPU) of a computer system. The proposed strategy may, therefore, provide better cache performance as compared to the conventional schemes, such as: LRU (Least Recently Used), FIFO (First In First Out), and MRU (Most Recently Used) algorithms. In fact, we observed from the simulation experiments that a carefully designed neural network-based replacement scheme does provide excellent performance as compared to the LRU scheme. The new approach can be applied to the page replacement and prefetching algorithms in virtual memory systems.

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