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Minimum-cost data allocation with guaranteed probability on multiple types of memory

机译:在多种类型的存储器上具有保证概率的最小成本数据分配

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As the advance of memory technologies, multiple types of memory such as different kinds of non-volatile memory (NVM), SRAM, DRAM, etc. provide a flexible configuration considering performance, energy and cost. For improving the performance of systems with multiple types of memory, data allocation is one of the most important tasks. The previous studies on data allocation problem assume the worst (fixed) case of data-access frequencies. However, the data allocation produced by employing worst case usually leads to an inferior performance for most of time. In this paper, we model this problem by probabilities and design efficient algorithms that can give optimal-cost data allocation with a guaranteed probability. The proposed DAGP algorithm produces a set of feasible data allocation solutions which generates the minimum access time or cost guaranteed by a given probability. The experiments show that our technique can significantly reduce the access time or cost compared with the technique considering worst case scenario. For example, comparing with the optimal result generated by employing the worst cases, our technique can reduce memory access time by 10.35% on average when guaranteed probability is set to be 0.8. Moreover, for 80 percents of cases, memory access time is reduced by 23.98% on average.
机译:随着存储器技术的进步,考虑到性能,能量和成本,诸如不同种类的非易失性存储器(NVM),SRAM,DRAM等的多种类型的存储器提供了灵活的配置。为了提高具有多种内存类型的系统的性能,数据分配是最重要的任务之一。先前有关数据分配问题的研究假设数据访问频率是最坏的(固定的)情况。但是,在大多数情况下,采用最坏情况产生的数据分配通常会导致性能下降。在本文中,我们通过概率对问题进行建模,并设计有效的算法,以保证的概率提供最优成本的数据分配。提出的DAGP算法产生了一组可行的数据分配解决方案,该解决方案生成了由给定概率保证的最小访问时间或成本。实验表明,与考虑最坏情况的技术相比,我们的技术可以显着减少访问时间或成本。例如,与采用最坏情况产生的最佳结果相比,当保证概率设置为0.8时,我们的技术可以平均将内存访问时间减少10.35%。此外,在80%的情况下,内存访问时间平均减少了23.98%。

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