Determining Intrusion Attacks Against Online Applications Using Cloud-Based Data Security

Authors

  • Rekha M R. M. K. Engineering College
  • Shoba Rani P R.M.D. Engineering College image/svg+xml

DOI:

https://doi.org/10.4108/eetsis.5028

Keywords:

Cloud-Based Security, Personally Identifiable Information Leaking, Security Risks, Cyber-Attacks

Abstract

Cloud technology makes it possible for users to access information from anywhere, all the time, on any device, and that is the major cause of the many different types of assaults. In principle, multiple dangers, including data leakage, information leakage, and unauthorized information accessibility, are active in cloud environment layering. Modern technological advancements are made accessible on a daily basis through cloud technology. In the cloud, access control and encryption solutions are more complicated. Because of this greater level, security flaws in online applications and systems are more likely to occur. Somewhere at the ends of the end nodes, a malignant insider can carry out protection assaults. Nevertheless, problems with user privacy and data protection on cloud-based social networking sites continue to exist. Such problems are not known to users. On that social networking site, they post a variety of images, videos, and private information that endures even after eradication. However, some of the data that has been made public was intended to be kept private; as a result, online social information has significantly increased the risk of personally identifiable information leaking. The context of cloud technology depends on the customer capabilities such as quick storing and retrieving offered through cloud computing environments. Dependable cloud providers use a number of methodologies to deliver various digital services, creating a variety of security risks. In this paper, the study of determining intrusive cyber-attacks over the online applications using the cloud data security. Restricting access to shared resources is essential to prevent hackers from stealing vulnerabilities in cloud computing to get unauthorised access to a user's activities as well as information. Gaining access to customer information and obstructing the use of cloud computing are the primary objectives of intrusions on cloud services.

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Published

05-02-2024

How to Cite

1.
M R, P SR. Determining Intrusion Attacks Against Online Applications Using Cloud-Based Data Security. EAI Endorsed Scal Inf Syst [Internet]. 2024 Feb. 5 [cited 2024 Nov. 22];11(4). Available from: https://publications.eai.eu/index.php/sis/article/view/5028