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Bank Big Data Architecture Based on Massive Parallel Processing Database

机译:基于大规模并行处理数据库的银行大数据架构

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Banking systems generates lots of data (TB) daily and records PB historical transaction data, which requires a cost-effective and high performance data processing system for data management. This paper introduces the existing data processing architecture, and proposes a hybrid database solution based upon Massive Parallel Processing (MPP), transactional databases, Hadoop and Storm platforms, which has been applied in Fujian Rural Credit Union. Based on the high-performance features of MPP, a data loading method of Extraction-Load-Transform (ETL) is established. The performance of the hybrid prototype against the traditional Oracle one is validated through five common data processing models (insert only, truncate and insert, etc.) with practical data. The experiment results clearly show that the hybrid database prototype is more cost-effective and provides better performance.
机译:银行系统每日生成大量数据(TB)并记录PB历史事务数据,这需要具有用于数据管理的成本效益和高性能的数据处理系统。本文介绍了现有的数据处理架构,并提出了一种基于庞大的并行处理(MPP),交易数据库,Hadoop和Storm平台的混合数据库解决方案,这些解决方案已经应用于福建农村信用合作社。基于MPP的高性能特征,建立了提取负载变换(ETL)的数据加载方法。通过具有实际数据的五个常见数据处理模型(仅插入,截断和插入等)验证混合原型对传统oracle的性能。实验结果清楚地表明混合动力数据库原型更具成本效益,并提供了更好的性能。

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