• Title of article

    Comprehensive Security and Privacy Framework against Malicious Insider in Cloud-based Machine Learning

  • Author/Authors

    Tariq ، Hafsa University of Engineering and Technology , Naushad ، Muhammad Sajid University of Engineering and Technology , Ahmad ، Tauqir University of Engineering and Technology

  • From page
    49
  • To page
    66
  • Abstract
    Cloud-based machine learning has become an increasingly popular approach for training and deploying machine learning models, thanks to its scalability, cost-effectiveness, and ease of access. However, the use of cloud-based machine learning also introduces new security and privacy challenges, particularly with respect to insider threats. In this proposed research project, we aim to develop a multi-faceted approach to enhancing security and privacy in cloud-based machine learning. Our approach will draw on a range of techniques, including fully homomorphic encryption, multi-factor authentication. The proposed framework conducts a comprehensive evaluation using a variety of datasets and use cases, and this approach provides higher security and privacy as compared to existing security and privacy frameworks for cloud-based machine learning. The ultimate goal is to provide practical and effective solutions for enhancing security and privacy in cloud-based machine learning, and to contribute to the ongoing efforts to address the challenges of insider threats in this rapidly evolving field.
  • Keywords
    Security , Privacy , Malicious Insider , Cloud , based Machine Learning
  • Journal title
    Journal of Computing and Security
  • Journal title
    Journal of Computing and Security
  • Record number

    2772953