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A Review of Machine Learning Algorithms for Cloud Computing Security

Journal

ELECTRONICS
Volume 9, Issue 9, Pages -

Publisher

MDPI
DOI: 10.3390/electronics9091379

Keywords

cloud computing; cloud security; security threats; cybersecurity; machine learning; network-based attacks; VM-based attacks; storage-based attacks; application-based attacks

Funding

  1. MSIT (Ministry of Science and ICT), Korea, under the Grand Information Technology Research Center support program [IITP-2020-2015-0-00742]

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Cloud computing (CC) is on-demand accessibility of network resources, especially data storage and processing power, without special and direct management by the users. CC recently has emerged as a set of public and private datacenters that offers the client a single platform across the Internet. Edge computing is an evolving computing paradigm that brings computation and information storage nearer to the end-users to improve response times and spare transmission capacity. Mobile CC (MCC) uses distributed computing to convey applications to cell phones. However, CC and edge computing have security challenges, including vulnerability for clients and association acknowledgment, that delay the rapid adoption of computing models. Machine learning (ML) is the investigation of computer algorithms that improve naturally through experience. In this review paper, we present an analysis of CC security threats, issues, and solutions that utilized one or several ML algorithms. We review different ML algorithms that are used to overcome the cloud security issues including supervised, unsupervised, semi-supervised, and reinforcement learning. Then, we compare the performance of each technique based on their features, advantages, and disadvantages. Moreover, we enlist future research directions to secure CC models.

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