A Study on Big Data Privacy Protection Models using Data Masking Methods.

Autor: R. A., Archana, Hegadi, Ravindra S., T. N., Manjunath
Předmět:
Zdroj: International Journal of Electrical & Computer Engineering (2088-8708); Oct2018 (Part II), Vol. 8 Issue 5, p3976-3983, 8p
Abstrakt: In today’s predictive analytics world, data engineering play a vital role, data acquisition is carried out from various source systems and process as per the business applications and domain. Big Data integrates, governs, and secures big data with repeatable, reliable, and maintainable processes. Through volume, speed, and assortment of information characteristics try to reveal business esteem from enormous information. However, with information that is frequently deficient, conflicting, ungoverned, and unprotected, which is hazardous and enormous information being a risk instead of an advantage. What's more, with conventional methodologies that are manual and unpredictable, huge information ventures take too long to acknowledge business esteem. Reasonably and over and again conveying business esteem from enormous information requires another technique. In this connection, raw data has to be moved between onsite and offshore environment during this course of action, data privacy is a major concern and challenge. A Big Data Privacy platform can make it easier to detect, investigate, assess, and remediate threats from intruders. We tried to do complete study of Big Data Privacy using data masking methods on various data loads and different types. This work will help data quality analyst and big data developers while building the big data applications. [ABSTRACT FROM AUTHOR]
Databáze: Complementary Index