A Review Study on Big Data Analysis Using R Studio

Authors

  • Sangita  Department of Computer Science & Engineering Manav Institutes of Technology & Mgt, Haryana, India
  • Shugan  Department of Computer Science & Engineering Manav Institutes of Technology & Mgt, Haryana, India

Keywords:

Huge Statistics

Abstract

Abstract:- During the last decade, large statistics evaluation has seen an exponential boom and will absolutely retain to witness outstanding tendencies due to the emergence of new interactive multimedia packages and extraordinarily incorporated systems driven via the speedy growth in statistics services and microelectronic gadgets. up to now, maximum of the modern mobile structures are especially centered to voice communications with low transmission fees. Inside the near destiny, however, huge information access at excessive transmission costs might be. that is a evaluate on available big-records systems that include a hard and fast of tools and approach to load, extract, and enhance distinct data whilst leveraging the immensely parallel processing strength to carry out complicated adjustments and evaluation. “massive-statistics” device faces a series of technical challenges.

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Published

2018-06-30

Issue

Section

Research Articles

How to Cite

[1]
Sangita, Shugan, " A Review Study on Big Data Analysis Using R Studio, IInternational Journal of Scientific Research in Computer Science, Engineering and Information Technology(IJSRCSEIT), ISSN : 2456-3307, Volume 3, Issue 5, pp.166-171, May-June-2018.