Hadoop Map Reduce Techniques: Simplified Data Processing on Large Clusters with Data Mining

S. Suresh, T. Rajesh kumar, M. Nagalakshmi, J. Bennilo Fernandes, S. Kavitha
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Abstract

Data mining applications have become outdated and outmoded in recent years. The use of incremental processing to refresh mining results is a promising method. It makes use of previously saved states to save time and energy on re-computation. In this research, we offer a novel increment processing addition to the Map Reduce, the most extensively used methodology for mining the big data by using the Naive Bayes, the J48, and the Random Forest algorithms. Map reduction is a programming model for simultaneous processing and generation of massive amounts of data. We examine Map Reduce employing Naive Bayes, J48, and Random Forest algorithms with a variety of processing features for efficient mining that also saves energy. The Naive Bayes algorithm generates more energy and fewer maps. Priority-based scheduling is a task that allocates schedules based on the jobs’ requirements and utilization. As a result of decreasing the maps, the system’s workload is reduced, and energy efficiency is improved. The experimental comparison of the several algorithm techniques (Naive Bayes, J48, and Random Forest) have applied in this article and found that the Random forest is performed better than remaining two algorithms i.e. 92%.
Hadoop Map Reduce技术:使用数据挖掘简化大型集群上的数据处理
近年来,数据挖掘应用已经过时了。使用增量处理来刷新挖掘结果是一种很有前途的方法。它利用先前保存的状态来节省重新计算的时间和精力。在这项研究中,我们为Map Reduce提供了一种新的增量处理方法,Map Reduce是使用朴素贝叶斯、J48和随机森林算法挖掘大数据的最广泛的方法。映射还原是一种用于同时处理和生成大量数据的编程模型。我们研究了使用朴素贝叶斯、J48和随机森林算法的Map Reduce,这些算法具有各种处理特征,可以有效地挖掘并节省能源。朴素贝叶斯算法产生更多的能量和更少的地图。基于优先级调度是一种根据作业的需求和利用率分配调度的任务。由于减少了地图,减少了系统的工作量,提高了能源效率。本文应用了几种算法技术(朴素贝叶斯,J48和随机森林)的实验比较,发现随机森林的性能优于其余两种算法,即92%。
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