一种新的数据关联模型:面向未来计算机云的分布式大规模数据处理方案

Amir H. Basirat, Asad I. Khan
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引用次数: 1

摘要

现有的云框架涉及隔离应用程序中的低级操作,以便进行数据分发和分区。这限制了它们对许多具有复杂数据依赖性的应用程序的适用性。本文旨在通过从根本上重新思考未来需要在互联网上开发的数据管理模型的方式,探索在云中划分和分发数据的新方法。到目前为止还没有考虑到的松耦合关联计算技术可以为分布式数据管理方案提供所需的突破。使用一种称为边缘检测分层图神经元(Edge HGN)的新型轻量级联想记忆算法,数据检索/处理可以建模为模式识别问题,利用并行方法在单个周期内跨多个记录进行。该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,该方案能够提供高精度的可扩展实时识别和处理,同时能够保持其功能的低计算成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Associative Model of Data: Toward a Distributed Large-Scale Data Processing Scheme for Future Computer Clouds
Existing cloud frameworks involve isolating low-level operations within an application for data distribution and partitioning. This limits their applicability for many applications with complex data dependency considerations. This paper aims to explore new methods of partitioning and distributing data in the cloud by fundamentally re-thinking the way in which future data management models will need to be developed on the Internet. Loosely-coupled associative computing techniques, which have so far not been considered, can provide the break-through needed for a distributed data management scheme. Using a novel lightweight associative memory algorithm known as Edge Detecting Hierarchical Graph Neuron (Edge HGN), data retrieval/processing can be modeled as a pattern recognition problem, conducted across multiple records 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.
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