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Deep learning approach to security enforcement in cloud workflow orchestration.
El-Kassabi, Hadeel T; Serhani, Mohamed Adel; Masud, Mohammad M; Shuaib, Khaled; Khalil, Khaled.
  • El-Kassabi HT; Department of Computer Science and Software Engineering, Gina Cody School of Engineering and Computer Science, Concordia University, Montreal, Canada.
  • Serhani MA; College of Computing and Informatics, Sharjah University, Sharjah, UAE.
  • Masud MM; College of Information Technology, UAEU, Al Ain, Abu Dhabi UAE.
  • Shuaib K; College of Information Technology, UAEU, Al Ain, Abu Dhabi UAE.
  • Khalil K; Faculty of Applied Science & Engineering, University of Toronto, Toronto, Ontario Canada.
J Cloud Comput (Heidelb) ; 12(1): 10, 2023.
Article in English | MEDLINE | ID: covidwho-2196451
ABSTRACT
Supporting security and data privacy in cloud workflows has attracted significant research attention. For example, private patients' data managed by a workflow deployed on the cloud need to be protected, and communication of such data across multiple stakeholders should also be secured. In general, security threats in cloud environments have been studied extensively. Such threats include data breaches, data loss, denial of service, service rejection, and malicious insiders generated from issues such as multi-tenancy, loss of control over data and trust. Supporting the security of a cloud workflow deployed and executed over a dynamic environment, across different platforms, involving different stakeholders, and dynamic data is a difficult task and is the sole responsibility of cloud providers. Therefore, in this paper, we propose an architecture and a formal model for security enforcement in cloud workflow orchestration. The proposed architecture emphasizes monitoring cloud resources, workflow tasks, and the data to detect and predict anomalies in cloud workflow orchestration using a multi-modal approach that combines deep learning, one class classification, and clustering. It also features an adaptation scheme to cope with anomalies and mitigate their effect on the workflow cloud performance. Our prediction model captures unsupervised static and dynamic features as well as reduces the data dimensionality, which leads to better characterization of various cloud workflow tasks, and thus provides better prediction of potential attacks. We conduct a set of experiments to evaluate the proposed anomaly detection, prediction, and adaptation schemes using a real COVID-19 dataset of patient health records. The results of the training and prediction experiments show high anomaly prediction accuracy in terms of precision, recall, and F1 scores. Other experimental results maintained a high execution performance of the cloud workflow after applying adaptation strategy to respond to some detected anomalies. The experiments demonstrate how the proposed architecture prevents unnecessary wastage of resources due to anomaly detection and prediction.
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Full text: Available Collection: International databases Database: MEDLINE Type of study: Experimental Studies / Prognostic study Language: English Journal: J Cloud Comput (Heidelb) Year: 2023 Document Type: Article Affiliation country: S13677-022-00387-2

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Full text: Available Collection: International databases Database: MEDLINE Type of study: Experimental Studies / Prognostic study Language: English Journal: J Cloud Comput (Heidelb) Year: 2023 Document Type: Article Affiliation country: S13677-022-00387-2