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Dynamic Adaptive Replacement Policy in Shared Last-Level Cache of DRAM/PCM Hybrid Memory for Big Data Storage

机译:大数据存储的DRAM / PCM混合内存共享末级缓存中的动态自适应替换策略

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摘要

The increasing demand on the main memory capacity is one of the main big data challenges. Dynamic random access memory (DRAM) does not represent the best choice for a main memory, due to high power consumption and low density. However, the nonvolatile memory, such as the phase-change memory (PCM), represents an additional choice because of the low power consumption and high-density characteristic. Nevertheless, the high access latency and limited write endurance have disabled the PCM to replace the DRAM currently. Therefore, a hybrid memory, which combines both the DRAM and the PCM, has become a good alternative to the traditional DRAM memory. Both DRAM and PCM disadvantages are challenges for the hybrid memory. In this paper, a dynamic adaptive replacement policy (DARP) in the shared last-level cache for the DRAM/PCM hybrid main memory is proposed. The DARP distinguishes the cache data into the PCM data and the DRAM data, then, the algorithm adopts different replacement policies for each data type. Specifically, for the PCM data, the least recently used (LRU) replacement policy is adopted, and for the DRAM data, the DARP is employed according to the process behavior. Experimental results have shown that the DARP improved the memory access efficiency by 25.4%.
机译:对主存储容量的需求不断增长是主要的大数据挑战之一。由于高功耗和低密度,动态随机存取存储器(DRAM)并不是主存储器的最佳选择。然而,由于低功耗和高密度特性,诸如相变存储器(PCM)之类的非易失性存储器代表了另外的选择。但是,高访问延迟和有限的写入耐久性已使PCM无法替换当前的DRAM。因此,结合了DRAM和PCM的混合存储器已经成为传统DRAM存储器的良好替代。对于混合存储器,DRAM和PCM的缺点都是挑战。本文提出了一种动态自适应替换策略(DARP),用于共享DRAM / PCM混合主存储器的末级缓存。 DARP将缓存数据分为PCM数据和DRAM数据,然后,该算法针对每种数据类型采用不同的替换策略。具体而言,对于PCM数据,采用最近最少使用(LRU)替换策略,对于DRAM数据,根据处理行为采用DARP。实验结果表明,DARP将内存访问效率提高了25.4%。

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