Assessment of Integrity Auditing Protocols for Outsourced Big Data

  • Ajeet Ram Pathak
  • Manjusha Pandey
  • Siddharth Rautaray
Conference paper
Part of the Advances in Intelligent Systems and Computing book series (AISC, volume 695)

Abstract

Due to overwhelming advancement in sensor networks and communication technology, Internet of Things is taking shape to help make our lives smarter. Devices working on Internet of Things are responsible for generating multifarious and mammoth data. In addition to this, academia, business firms, etc., add vast amount of data to the pool of storage systems. This data are big data. Cloud computing provides paramount solution to store and process this big data through database outsourcing, thus reducing capital expenditure and operational costs. As big data are hosted by third party service providers in the cloud, security of such data becomes one of the significant concerns of data owners. The untrustworthy nature of service providers does not guarantee the security of data and computation results. This necessitates the owners to audit the integrity of data. Therefore, integrity auditing becomes the part and parcel of outsourced big data. Maintaining confidentiality, privacy, and trust for such big data are sine qua non for seamless and secure execution of big data-related applications. This paper gives a thorough analysis of integrity auditing protocols applied for big data residing in cloud environment.

Keywords

Big data Database outsourcing Third party auditing Provable data possession Integrity auditing Proof of retrievability 

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Copyright information

© Springer Nature Singapore Pte Ltd. 2018

Authors and Affiliations

  • Ajeet Ram Pathak
    • 1
  • Manjusha Pandey
    • 1
  • Siddharth Rautaray
    • 1
  1. 1.School of Computer EngineeringKalinga Institute of Industrial Technology University, (KIIT)BhubaneswarIndia

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