TY - JOUR
T1 - A survey on privacy and security in distributed cloud computing: exploring federated learning and beyond
AU - Rahdari, Ahmad
AU - Keshavarz, Elham
AU - Nowroozi, Ehsan
AU - Taheri, Rahim
AU - Hajizadeh, Mehrdad
AU - Mohammadi, Mohammadreza
AU - Sinaei, Sima
AU - Bauschert, Thomas
PY - 2025/4/11
Y1 - 2025/4/11
N2 - The increasing need to process large, high-dimensional datasets and the substantial computational power required have made the use of distributed cloud servers essential. These servers provide cost-effective solutions that make storage and computing accessible to ordinary users. However, they might face significant vulnerabilities, including data leakage, metadata spoofing, insecure programming interfaces, malicious insiders, and denial of service. To gain public trust in distributed computing, addressing concerns related to privacy and security while ensuring high performance and efficiency is crucial. Multiparty computation, differential privacy, trusted execution environments, and federated learning are the four major approaches developed to address these issues. This survey paper reviews and compares these four approaches based on a structured framework, by highlighting recent top-tier research papers published in prestigious journals and conferences. Particular attention is given to progress in federated learning, which trains a model across multiple devices without sharing the actual data, keeping data private and secure. The survey also highlights federated learning techniques, including secure federated learning, by detecting malicious updates and privacy-preserving federated learning via data encryption, data perturbation, and anonymization, as new paradigms for building responsible computing systems. Finally, the survey discusses future research directions for connecting academic innovations with real-world industrial applications.
AB - The increasing need to process large, high-dimensional datasets and the substantial computational power required have made the use of distributed cloud servers essential. These servers provide cost-effective solutions that make storage and computing accessible to ordinary users. However, they might face significant vulnerabilities, including data leakage, metadata spoofing, insecure programming interfaces, malicious insiders, and denial of service. To gain public trust in distributed computing, addressing concerns related to privacy and security while ensuring high performance and efficiency is crucial. Multiparty computation, differential privacy, trusted execution environments, and federated learning are the four major approaches developed to address these issues. This survey paper reviews and compares these four approaches based on a structured framework, by highlighting recent top-tier research papers published in prestigious journals and conferences. Particular attention is given to progress in federated learning, which trains a model across multiple devices without sharing the actual data, keeping data private and secure. The survey also highlights federated learning techniques, including secure federated learning, by detecting malicious updates and privacy-preserving federated learning via data encryption, data perturbation, and anonymization, as new paradigms for building responsible computing systems. Finally, the survey discusses future research directions for connecting academic innovations with real-world industrial applications.
KW - Distributed Cloud Computing
KW - Edge Computing
KW - Privacy-Preserving Computing
KW - Federated Learning
KW - Multi-Party Computation
KW - Differential Privacy
KW - Trusted Execution Environments
UR - https://ieeexplore.ieee.org/document/10963898
U2 - 10.1109/OJCOMS.2025.3560034
DO - 10.1109/OJCOMS.2025.3560034
M3 - Article
SN - 2644-125X
JO - IEEE Open Journal of the Communications Society
JF - IEEE Open Journal of the Communications Society
ER -