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Prevention of Big Data by Secure Deduplication in Cloud Storage


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1 CSE Department, Babu Banarasi Das University, Lucknow, Uttar Pradesh, India
     

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As we seen Big data include a huge amount of data or massive data. Nowadays generation big data increases everywhere like microblogs and cloud storage also. Big data have three basic characteristics, velocity, volume, and variety. It is important to think about the storage capacity of cloud, speed and time while uploading and downloading the data in the cloud. Deduplication scheme utilizes to reduce the area and bandwidth requirements of services by removing redundant data and storing a single instance of them in the cloud storage. The powerfulness of deduplication method has occurred when multiple utiliser outsource the same data to turn out to cloud storage server. But somewhere we can get a problem of security and ownership. Recently several deduplication techniques have been seen to solve this matter of security, ownership, and operation on big data can generate in the cloud. Consideration to this we devise a server-side deduplication method to prevent big data in cloud storage for encrypted data. It permits utiliser to outsource the data even when ownership changes dynamically by exploiting randomized convergent encryption and secure ownership group key distribution. By using deduplication we try to reduce space and save the time while uploading and downloading the data in cloud storage. The proposed scheme is almost effective, preventing big data and saving time. In this paper we use this method in cloud storage onwards we try to use anywhere if there is big data available.

Keywords

Big Data, Cloud Storage, Deduplication, Dynamic Ownership, Encryption.
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  • Prevention of Big Data by Secure Deduplication in Cloud Storage

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Authors

Rashmi Gopalrao Mate
CSE Department, Babu Banarasi Das University, Lucknow, Uttar Pradesh, India
Mohd. Saif Wajid
CSE Department, Babu Banarasi Das University, Lucknow, Uttar Pradesh, India

Abstract


As we seen Big data include a huge amount of data or massive data. Nowadays generation big data increases everywhere like microblogs and cloud storage also. Big data have three basic characteristics, velocity, volume, and variety. It is important to think about the storage capacity of cloud, speed and time while uploading and downloading the data in the cloud. Deduplication scheme utilizes to reduce the area and bandwidth requirements of services by removing redundant data and storing a single instance of them in the cloud storage. The powerfulness of deduplication method has occurred when multiple utiliser outsource the same data to turn out to cloud storage server. But somewhere we can get a problem of security and ownership. Recently several deduplication techniques have been seen to solve this matter of security, ownership, and operation on big data can generate in the cloud. Consideration to this we devise a server-side deduplication method to prevent big data in cloud storage for encrypted data. It permits utiliser to outsource the data even when ownership changes dynamically by exploiting randomized convergent encryption and secure ownership group key distribution. By using deduplication we try to reduce space and save the time while uploading and downloading the data in cloud storage. The proposed scheme is almost effective, preventing big data and saving time. In this paper we use this method in cloud storage onwards we try to use anywhere if there is big data available.

Keywords


Big Data, Cloud Storage, Deduplication, Dynamic Ownership, Encryption.

References