首页> 外文会议>International conference on neural information processing;ICONIP 2011 >Introducing a Novel Data Management Approach for Distributed Large Scale Data Processing in Future Computer Clouds
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Introducing a Novel Data Management Approach for Distributed Large Scale Data Processing in Future Computer Clouds

机译:介绍一种用于未来计算机云中的分布式大规模数据处理的新型数据管理方法

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Deployment of pattern recognition applications for large-scale data sets is an open issue that needs to be addressed. In this paper, an attempt is made to explore new methods of partitioning and distributing data, that is, resource virtualization in the cloud by fundamentally re-thinking the way in which future data management models will need to be developed on the Internet. The work presented here will incorporate content-addressable memory into Cloud data processing to entail a large number of loosely-coupled parallel operations resulting in vastly improved performance. Using a lightweight associative memory algorithm known as Distributed Hierarchical Graph Neuron (DHGN), data retrieval/processing can be modeled as pattern recognition/matching problem, conducted across multiple records and data segments within a single-cycle, utilizing a parallel approach. The proposed model envisions a distributed data management scheme for large-scale data processing and database updating that is capable of providing scalable real-time recognition and processing with high accuracy while being able to maintain low computational cost in its function.
机译:针对大规模数据集的模式识别应用程序的部署是一个开放的问题,需要解决。在本文中,通过从根本上重新思考将来需要在Internet上开发数据管理模型的方式,尝试探索新的分区和分布数据的方法,即在云中进行资源虚拟化。此处介绍的工作将把内容可寻址的内存合并到Cloud数据处理中,以实现大量松散耦合的并行操作,从而显着提高性能。使用称为分布式层次图神经元(DHGN)的轻量级关联存储算法,可以使用并行方法将数据检索/处理建模为模式识别/匹配问题,并在一个周期内跨多个记录和数据段进行。提出的模型设想了一种用于大规模数据处理和数据库更新的分布式数据管理方案,该方案能够提供可扩展的实时识别和高精度处理,同时能够在其功能上保持较低的计算成本。

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