Switching Towards a Proactive Grid Based Data Management Approach

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引用次数: 0

Abstract

Over time, an exorbitant data quantity is generating which indeed requires a shrewd technique for handling such a big database to smoothen the data storage and disseminating process. Storing and exploiting such big data quantities require enough capable systems with a proactive mechanism to meet the technological challenges too. The available traditional Distributed File System (DFS) becomes inevitable while handling the dynamic variations and requires undefined settling time. Therefore, to address such huge data handling challenges, a proactive grid base data management approach is proposed which arranges the huge data into various tiny chunks called grids and makes the placement according to the currently available slots. The data durability and computation speed have been aligned by designing data disseminating and data eligibility replacement algorithms. This approach scrumptiously enhances the durability of data accessing and writing speed. The performance has been tested through numerous grid datasets and therefore, chunks have been analysed through various iterations by fixing the initial chunks statistics, then making a predefined chunk suggestion and then relocating the chunks after the substantial iterations and found that chunks are in an optimal node from the first iteration of replacement which is more than 21% of working clusters as compared to the traditional approach.
转向主动的基于网格的数据管理方法
随着时间的推移,产生的数据量过高,这确实需要一种精明的技术来处理如此大的数据库,以平滑数据存储和传播过程。存储和利用如此大的数据量也需要足够有能力的系统和主动机制来应对技术挑战。在处理动态变化时,传统的分布式文件系统(DFS)不可避免地需要不确定的建立时间。因此,为了应对这种巨大的数据处理挑战,提出了一种主动网格基数据管理方法,该方法将庞大的数据排列成各种称为网格的小块,并根据当前可用的槽位进行放置。通过设计数据传播算法和数据合格性替换算法,使数据持久性和计算速度保持一致。这种方法显著提高了数据访问的持久性和写入速度。性能已经通过许多网格数据集进行了测试,因此,通过固定初始块统计数据,然后提出预定义的块建议,然后在大量迭代后重新定位块,通过各种迭代来分析块,并发现从替换的第一次迭代开始块处于最佳节点,与传统方法相比,这超过21%的工作簇。
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