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Distribution-Driven, Embedded Synthetic Data Generation System and Tool for RDBMS

机译:用于RDBMS的分发驱动,嵌入式合成数据生成系统和工具

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Many self-managing relational database management systems (RDBMS) need to programmatically generate synthetic data to train machine learning models. This paper proposes the concept of shadow database and a framework to derive shadow database from production database that matches distribution properties of source data. Moreover, we have designed and implemented an embedded synthetic data generation tool that takes data distribution profile as input and generates a shadow database according to histograms of source data. The distribution profile is passed into the tool either through an export-import mechanism or as a JSON string. The shadow database can scale to be larger or smaller than the original database and serve as a testbed to train learning models. Unlike most other data generation tools, our tool is implemented as SQL procedures that can be embedded in the underlying RDBMS.
机译:许多自我管理关系数据库管理系统(RDBMS)需要以编程方式地生成培训机器学习模型的合成数据。本文提出了暗影数据库的概念和从匹配源数据的分发属性的生产数据库中派生影数据库的框架。此外,我们已经设计并实现了一种嵌入式的合成数据生成工具,其将数据分发简档作为输入,并根据源数据的直方图生成阴影数据库。分发配置文件通过导出 - 导入机制或JSON字符串传递到工具中。影子数据库可以扩展到大于或小于原始数据库,并用作培训学习模型的测试平台。与大多数其他数据生成工具不同,我们的工具是实现为可以嵌入在底层RDBMS中的SQL过程。

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