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Optimization of relational database usage involving Big Data a model architecture for Big Data applications

机译:优化涉及大数据的关系数据库使用量的大数据应用模型架构

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Effective Big Data applications dynamically handle the retrieval of decisioned results based on stored large datasets efficiently. One effective method of requesting decisioned results, or querying, large datasets is the use of SQL and database management systems such as MySQL. But a problem with using relational databases to store huge datasets is the decisioned result retrieval time, which is often slow largely due to poorly written queries/decision requests. This work presents a model to re-architect Big Data applications in order to efficiently present decisioned results: lowering the volume of data being handled by the application itself, and significantly decreasing response wait times while allowing the flexibility and permanence of a standard relational SQL database, supplying optimal user satisfaction in today's Data Analytics world. We experimentally demonstrate the effectiveness of our approach.
机译:有效的大数据应用程序在有效地基于存储的大型数据集动态地处理决策结果。请求决策结果或查询大型数据集的一种有效方法是使用SQL和数据库管理系统,如MySQL。但是使用关系数据库来存储巨大数据集的问题是决策结果检索时间,这通常是由于验证/决策请求知之甚少。这项工作介绍了重新建立大数据应用程序的模型,以便有效地存在决策结果:降低应用程序本身处理的数据量,并显着降低响应等待时间,同时允许标准关系SQL数据库的灵活性和永久性,在当今数据分析世界中提供最佳用户满意度。我们通过实验证明了我们方法的有效性。

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