将商品商品价格面值与SPARKR和R STUDIO进行比较

Dedy Sugiarto, Dimmas Mulya, Abdul Rochman, Is Mardianto
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引用次数: 0

摘要

具有大量数据等特征的大数据时代的到来,使得在进行数据分析过程(如预测粮食商品价格)时,计算执行时间成为一个问题。本研究旨在通过使用sparkR来检验大数据框架的效果。通过改变几个深度学习预测模型,即多层感知器模型,并使用2018年至2020年一种食品的价格来进行测试。结果表明,与R studio相比,sparkR的执行时间明显缩短。测试MLP模型影响的结果还表明,与仅使用1个隐藏层的5个节点或使用两个隐藏层的5个节点和3个节点相比,在隐藏层1和隐藏层2中最大节点为13个节点的隐藏层模型产生的执行时间最长。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PERBANDINGAN WAKTU EKSEKUSI PERAMALAN HARGA KOMODITAS PANGAN MENGGUNAKAN SPARKR DAN R STUDIO
The arrival of the big data era with characteristics such as large volumes of data makes the calculation of execution time a concern when carrying out data analytics processes, such as forecasting food commodity prices. This study aims to examine the effect of the big data framework through the use of sparkR. The test is carried out by varying several deep learning forecasting models, namely the multi-layer perceptron model and by using the price of one food commodity from 2018 to 2020. The results show that sparkR is significantly shorter its execution time when compared to R studio. The results of testing the influence of the MLP model also show that a model with two hidden layers with a maximum node of 13 nodes in hidden layers 1 and 2 produces the longest execution time compared to only using 1 hidden layer with 5 nodes or using two hidden layers with a number of nodes of 5 and 3.
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