Brief Review of De Duplication over Cloud for Optimizing Storage
Journal Title: International Journal for Research in Applied Science and Engineering Technology (IJRASET) - Year 2017, Vol 5, Issue 4
Abstract
Cloud storage is one of the services provide in cloud computing which has been increasing in reputation. With the growing data size of cloud computing, a decrease in data volumes could help provider reducing the costs of running large storage system and saving energy use. So data de-duplication techniques have been brought to recover storage competence in cloud storages. In this paper, we suggest a dynamic de-duplication system for cloud storage, which aim to advance storage competence and maintain redundancy for fault acceptance.
Authors and Affiliations
Anju Bala Malhotra, Er. Jasbeer Narwal
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