通过基于图形着色的参照位置增强大数据性能

Methaq Kadhum, Mohammad Malkawi, Enas Rawashdeh, Article Info
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引用次数: 0

摘要

在大数据存储库中处理海量记录数据的检索和存储时,效率是一个关键因素。这些系统所需的数据子集可容纳在服务器集群的组合物理内存中。如果数据的大小超过了可用的内存容量,分析所有数据就变得不切实际。与从主存储器访问数据相比,从虚拟存储器(主要是硬盘)检索数据要慢得多,从而导致访问时间增加,性能降低。为了解决这个问题,我们提出了一个模型,旨在通过识别大数据集中最合适的数据局部性结构并相应地重组数据模式来提高性能;所谓局部性,是指特定的访问模式。这样就能在驻留在最快内存层(如高速缓存、主内存或磁盘高速缓存)的数据上执行事务。
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Enhancing Big Data Performance Through Graph Coloring-Based Locality of Reference
Efficiency is a crucial factor when handling the retrieval and storage of data from vast amounts of records in a Big Data repository. These systems require a subset of data that can be accommodated within the combined physical memory of a cluster of servers. It becomes impractical to analyze all of the data if its size exceeds the available memory capacity. Retrieving data from virtual storage, primarily hard disks, is significantly slower compared to accessing data from main memory, resulting in increased access time and diminished performance. To address this, a proposed model aims to enhance performance by identifying the most suitable data locality structure within a big data set and reorganizing the data schema accordingly; by locality, it has been referred to as a particular access pattern. This allows transactions to be executed on data residing in the fastest memory layer, such as cache, main memory, or disk cache
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来源期刊
CiteScore
0.70
自引率
0.00%
发文量
74
审稿时长
50 weeks
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