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Dynamic Data Migration in Hybrid Main Memories for In-Memory Big Data Storage

机译:混合主要内存中的动态数据迁移,用于内存中大数据存储

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For memory-based big data storage, using hybrid memories consisting of both dynamic random-access memory (DRAM) and non-volatile random-access memories (NVRAMs) is a promising approach. DRAM supports low access time but consumes much energy, whereas NVRAMs have high access time but do not need energy to retain data. In this paper, we propose a new data migration method that can dynamically move data pages into the most appropriate memories to exploit their strengths and alleviate their weaknesses. We predict the access frequency values of the data pages and then measure comprehensively the gains and costs of each placement choice based on these predicted values. Next, we compute the potential benefits of all choices for each candidate page to make page migration decisions. Extensive experiments show that our method improves over the existing ones the access response time by as much as a factor of four, with similar rates of energy consumption.
机译:对于基于存储器的大数据存储,使用由动态随机存取存储器(DRAM)和非易失性随机存取存储器(NVRAM)组成的混合存储器是一种很有前途的方法。 DRAM支持低访问时间,但消耗大量能量,而NVRAM具有高访问时间,但不需要能量来保留数据。在本文中,我们提出了一种新的数据迁移方法,该方法可以动态地将数据页移动到最合适的内存中,以利用其优势并缓解其劣势。我们预测数据页的访问频率值,然后根据这些预测值全面测量每个放置选择的收益和成本。接下来,我们为每个候选页面计算所有选择的潜在利益,以做出页面迁移决策。大量的实验表明,我们的方法将访问响应时间提高了四倍,并且能耗率相近,比现有方法提高了四倍。

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