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Pyramid: Enhancing Selectivity in Big Data Protection with Count Featurization
[article]
2017
arXiv
pre-print
Protecting vast quantities of data poses a daunting challenge for the growing number of organizations that collect, stockpile, and monetize it. The ability to distinguish data that is actually needed from data collected "just in case" would help these organizations to limit the latter's exposure to attack. A natural approach might be to monitor data use and retain only the working-set of in-use data in accessible storage; unused data can be evicted to a highly protected store. However, many of
arXiv:1705.07512v1
fatcat:u2ey66wplnbq7o5oeryjhp75q4