Publication result detail

Privacy-enhancing Cloud Computing Solution for Big Data

SMÉKAL, D.; RICCI, S.; DZURENDA, P.; MARTINÁSEK, Z.

Original Title

Privacy-enhancing Cloud Computing Solution for Big Data

English Title

Privacy-enhancing Cloud Computing Solution for Big Data

Type

Paper in proceedings (conference paper)

Original Abstract

A variety of users cyber data are daily collected by enterprises and governments. These data are processed in order to improve users lifestyle, e.g. improving healthcare and optimizing traffic. Cloud computing is often the only possible strategy which allows processing these big amount of information due to the associated costs. However, data owners remain reluctant to outsource their data to a cloud which may read, use or even sell these data leading on user privacy leakage. These threats have been already observed by EU organization and reflected in many regulations and strategies. In this paper, we present data splitting techniques as one of the most promising technology for privacy-preserving computation in a cloud. At first, we propose a new protocol for secure scalar product resistant against honest-but-curious colluding cloud. Then, we compared our new proposal with two most efficient state-of-the-art schemes. These schemes are not secure in a colluding security model. While using higher security level of our proposal, we achieved comparable performance. The protocols were implemented in real environment based on Amazon Web Services and, then, an FPGA processor cards implementation is considered in order to speed up the computations.

English abstract

A variety of users cyber data are daily collected by enterprises and governments. These data are processed in order to improve users lifestyle, e.g. improving healthcare and optimizing traffic. Cloud computing is often the only possible strategy which allows processing these big amount of information due to the associated costs. However, data owners remain reluctant to outsource their data to a cloud which may read, use or even sell these data leading on user privacy leakage. These threats have been already observed by EU organization and reflected in many regulations and strategies. In this paper, we present data splitting techniques as one of the most promising technology for privacy-preserving computation in a cloud. At first, we propose a new protocol for secure scalar product resistant against honest-but-curious colluding cloud. Then, we compared our new proposal with two most efficient state-of-the-art schemes. These schemes are not secure in a colluding security model. While using higher security level of our proposal, we achieved comparable performance. The protocols were implemented in real environment based on Amazon Web Services and, then, an FPGA processor cards implementation is considered in order to speed up the computations.

Keywords

Cloud Computing; Data Splitting; Privacy; Big Data; FPGA

Key words in English

Cloud Computing; Data Splitting; Privacy; Big Data; FPGA

Authors

SMÉKAL, D.; RICCI, S.; DZURENDA, P.; MARTINÁSEK, Z.

RIV year

2020

Released

28.10.2019

Publisher

IEEE Computer Society

Location

Dublin, Ireland

ISBN

9781728157634

Book

2019 1th International Congress on Ultra Modern Telecommunications and Control Systems (ICUMT)

ISBN

2157-023X

Periodical

International Congress on Ultra Modern Telecommunications and Workshops

State

United States of America

Pages from

1

Pages to

6

Pages count

6

URL

BibTex

@inproceedings{BUT159159,
  author="David {Smékal} and Sara {Ricci} and Petr {Dzurenda} and Zdeněk {Martinásek}",
  title="Privacy-enhancing Cloud Computing Solution for Big Data",
  booktitle="2019 1th International Congress on Ultra Modern Telecommunications and Control Systems (ICUMT)",
  year="2019",
  journal="International Congress on Ultra Modern Telecommunications and Workshops",
  pages="1--6",
  publisher="IEEE Computer Society",
  address="Dublin, Ireland",
  doi="10.1109/ICUMT48472.2019.8970982",
  isbn="9781728157634",
  url="https://ieeexplore.ieee.org/abstract/document/8970982"
}