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Query and Resource Optimization: Bridging the Gap

机译:查询和资源优化:弥补差距

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Modern big data systems run on cloud environments where resources are shared among several users and applications. As a result, declarative user queries need to be optimized and executed over resources that constantly change and are provisioned on demand for each job. This requires us to rethink traditional query optimization designed for systems that run on dedicated resources. In this paper, we show evidence that the choice of query plans depends heavily on the resources that the plan will be executed on. The current practice of determining query plans without accounting for resources could lead to significant performance loss in popular big data systems, such as Hive and SparkSQL. Therefore, we make a case for Query and Resource Optimization (or QROP), i.e., choosing both the query plan and the resource configuration at the same time, and present a research agenda towards this direction.
机译:现代大数据系统在云环境上运行,其中资源在几个用户和应用程序之间共享。因此,需要优化和执行陈述的用户查询,并在不断更改的资源上进行优化,并根据每项作业的需求配置。这要求我们重新考虑传统查询优化,专为在专用资源上运行的系统而设计。在本文中,我们显示了查询计划的选择大量取决于计划将执行的资源。目前在不核算资源的情况下确定查询计划的实践可能导致流行的大数据系统中的显着性能损失,例如蜂巢和Sparksql。因此,我们进行查询和资源优化(或QROP),即选择查询计划和资源配置的情况,并在此方向上展示研究议程。

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