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A smart method for spark using neural network for big data

机译:一种使用神经网络进行大数据的火花的智能方法

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Apache spark, famously known for big data handling ability, is a distributed open-source framework that utilizes the idea of distributed memory to process big data. As the performance of the spark is mostly being affected by the spark predominant configuration parameters, it is challenging to achieve the optimal result from spark. The current practice of tuning the parameters is ineffective, as it is performed manually. Manual tuning is challenging for large space of parameters and complex interactions with and among the parameters. This paper proposes a more effective, self-tuning approach subject to a neural network called Smart method for spark using neural network for big data (SSNNB) to avoid the disadvantages of manual tuning of the parameters. The paper has selected five predominant parameters with five different sizes of data to test the approach. The proposed approach has increased the speed of around 30% compared with the default parameter configuration.
机译:Apache Spark,最着名的数据处理能力,是一种分布式开源框架,它利用分布式内存的想法来处理大数据。 随着火花的性能大多受火花主要配置参数的影响,实现了从火花的最佳结果挑战。 调谐参数的当前实践无效,因为它是手动执行的。 手动调谐对于大型参数空间和与参数复杂的相互作用有挑战性。 本文提出了一种更有效的自我调整方法,该方法受到一种名为Spart方法的神经网络,用于使用神经网络进行大数据(SSNNB),以避免参数手动调谐的缺点。 本文已选择五个主要参数,具有五种不同的数据来测试该方法。 与默认参数配置相比,所提出的方法增加了大约30%的速度。

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