Analysis of Big Data Using Two Mapper Files in Hadoop

Jyotsna Malhotra, J. K. Sethi, Mamta Mittal
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引用次数: 1

Abstract

Nowadays, a large amount of valuable uncertain data is easily available in many real-life applications. Many industries and government organizations can exploit this data to extract valuable information. This information can help the managers to enhance their strategies and optimize their plans in making decisions. In fact, various private companies and governments have launched programs with investments and funds in order to maximize profits and optimize resources. This vast amount of data is called big data. The analysis of big data is important for future growth. This paper depicts big data analytics through experimental results. In this paper, data for New York stock exchange has been analyzed using two mapper files in Hadoop. For each year, the calculation of maximum and minimum price of every stock exchange and the average stock price is done.
Hadoop中使用两个Mapper文件的大数据分析
如今,在许多实际应用中,大量有价值的不确定数据很容易获得。许多行业和政府组织可以利用这些数据提取有价值的信息。这些信息可以帮助管理者在决策过程中提高策略,优化计划。事实上,各种私营公司和政府已经启动了投资和基金项目,以实现利润最大化和资源优化。这种海量的数据被称为大数据。对大数据的分析对未来的增长很重要。本文通过实验结果来描述大数据分析。本文使用Hadoop中的两个mapper文件对纽约证券交易所的数据进行了分析。每年计算各证券交易所的最高、最低股价和平均股价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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