Authors :
Mande Priyanka Santosh; Malve Swaraj Sanjay; Chaugule Sonali Dyaneshwar; Chaugule Swapnali Dyaneshwar
Volume/Issue :
Volume 10 - 2025, Issue 5 - May
Google Scholar :
https://tinyurl.com/ydcmwkjc
DOI :
https://doi.org/10.38124/ijisrt/25may922
Note : A published paper may take 4-5 working days from the publication date to appear in PlumX Metrics, Semantic Scholar, and ResearchGate.
Abstract :
Cloud computing is a promising and inexpensive solution for scaling and cost-effective computing of high
quality. Aspects of cloud computing that are frequently encountered include serious security issues such as
confidentiality/integrity threats as well as access control threats. In this paper, we propose an artificial intelligence-based
security device which uses machine learning algorithms to detect and mitigate threat in cloud environments in real time.
The proposed device is based on a deep learning-based intrusion detection system (IDS) trained on set of cloud traffic
datasets including NSL-KDD and CICIDS2017 which uncover anomalies and vulnerabilities to detect and defend against
threats. We utilize supervised learning models such as Random Forest and LSTM to obtain highly accurate threat
classification and response metrics. Results of experiments show that the proposed device has 96. 3% detection accuracy
and low false positives compared to traditional IDS systems. The proposed device can also learn to adapt and response to
new threats by continuously learning using continuous learning mechanisms. Our work suggests that intelligent systems
can be applied in cloud security frameworks in order to achieve a more resilient and self-sustaining defence architecture.
This contribution comes with the benefits of proactive threat management and also improves trust in cloud service
providers, especially enterprise in sensitive data management. Further works will explore implementation of federated
learning for privacy-preserving model training across distributed cloud systems.
Keywords :
Cloud Computing, AI Security, Intrusion Detection System, Machine Learning, Data Protection, Deep Learning.
References :
- Bhuvana, J., Srivastav, V., Singh, P., Mishra, A., & Kaur, S. (2024). Enhancing Cloud Security: Artificial Intelligence-based Data Classification Model for Cloud Computing. International Journal of Intelligent Systems and Applications in Engineering, 12(4), 233–240.
- Parkash, D., & Mittal, S. (2024). An Enhanced Security Framework for Storage using PSO in Cloud Computing. IJISAE, 11(1), 118–125.
- Wang, Y., & Yang, X. (2025). Research on Enhancing Cloud Computing Network Security using Artificial Intelligence Algorithms. arXiv preprint arXiv: 2502.17801.
- Abdel-Wahid, T. (2024). AI-Powered Cloud Security: A Study on the Integration of Artificial Intelligence and Machine Learning. International Journal of Information Technology and Electrical Engineering, 13(3), 145–155.
- Farzaan, M. A. M., Ghanem, M. C., El-Hajjar, A., & Ratnayake, D. N. (2024). AI-Enabled System for Efficient Cyber Incident Response in Cloud Environments. ArXiv preprint arXiv: 2404.05602.
Cloud computing is a promising and inexpensive solution for scaling and cost-effective computing of high
quality. Aspects of cloud computing that are frequently encountered include serious security issues such as
confidentiality/integrity threats as well as access control threats. In this paper, we propose an artificial intelligence-based
security device which uses machine learning algorithms to detect and mitigate threat in cloud environments in real time.
The proposed device is based on a deep learning-based intrusion detection system (IDS) trained on set of cloud traffic
datasets including NSL-KDD and CICIDS2017 which uncover anomalies and vulnerabilities to detect and defend against
threats. We utilize supervised learning models such as Random Forest and LSTM to obtain highly accurate threat
classification and response metrics. Results of experiments show that the proposed device has 96. 3% detection accuracy
and low false positives compared to traditional IDS systems. The proposed device can also learn to adapt and response to
new threats by continuously learning using continuous learning mechanisms. Our work suggests that intelligent systems
can be applied in cloud security frameworks in order to achieve a more resilient and self-sustaining defence architecture.
This contribution comes with the benefits of proactive threat management and also improves trust in cloud service
providers, especially enterprise in sensitive data management. Further works will explore implementation of federated
learning for privacy-preserving model training across distributed cloud systems.
Keywords :
Cloud Computing, AI Security, Intrusion Detection System, Machine Learning, Data Protection, Deep Learning.