Cybersecurity in Cloud Computing: Leveraging AI for Enhanced Data Protection and Privacy

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Anrayan Kunar

Abstract

As cloud computing becomes ubiquitous, ensuring data security and privacy is paramount. This paper investigates the role of AI in enhancing cybersecurity measures for cloud environments, focusing on data protection, access control, and compliance. Our study proposes a machine learning model that analyzes user behaviors and access patterns to detect unauthorized access and data breaches. The findings highlight the model's effectiveness in reducing incidents of data loss and improving compliance with data protection regulations, showcasing how AI can strengthen cybersecurity in cloud computing architectures.

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Cybersecurity in Cloud Computing: Leveraging AI for Enhanced Data Protection and Privacy. (2024). International Meridian Journal, 6(6). https://meridianjournal.in/index.php/IMJ/article/view/85
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Articles

How to Cite

Cybersecurity in Cloud Computing: Leveraging AI for Enhanced Data Protection and Privacy. (2024). International Meridian Journal, 6(6). https://meridianjournal.in/index.php/IMJ/article/view/85

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