AI-Driven Cybersecurity for IoT–Cloud Ecosystems

Authors

  • Engr. Rukhsar Zaka Junior Lecturer, Department Computer Science, Iqra University North Campus, Karachi, Pakistan. Email: rukhsar.zaka@iqra.edu.pk
  • Syed Muhammad Mushtaher Uddin Lecturer, Department Computer Science, Indus University, Karachi, Pakistan. Email: smmushtaher@indus.edu.pk
  • Muhammad Ahsan Hayat Lecturer, Department Computer Science, Iqra University North Campus, Karachi, Pakistan. ORCID: https://orcid.org/0009-0001-5063-7603, Email: muhammad.ahsan@iqra.edu.pk https://orcid.org/0009-0001-5063-7603
  • Aribah Murtaza aribahmurtaza123@gmail.com
  • Syed Arsalan Haider Senior Lecturer, Department Computer Science, Iqra University North Campus, Karachi, Pakistan. arsalan.haider@iqra.edu.pk
  • Chaman lal Beejal Senior Lecturer, Department Computer Science, Indus University Karachi, Pakistan. Email: chamanbeejal31@gmail.com

DOI:

https://doi.org/10.63163/jpehss.v3i3.633

Keywords:

Artificial Intelligence, Cybersecurity, Internet of Things (IoT), Cloud Computing, Federated Learning, Deep Learning, Reinforcement Learning, Anomaly Detection, Edge Computing, Zero-Trust Architecture.

Abstract

The convergence of the Internet of Things (IoT) and cloud computing has created a highly distributed, data-intensive ecosystem that drives innovation across industries. However, the same integration introduces complex cybersecurity risks due to device heterogeneity, scalability requirements, and dynamic threat landscapes [1], [4], [7]. Traditional security measures are insufficient in such environments, creating demand for adaptive, intelligent, and proactive defense mechanisms [16], [17]. Artificial intelligence (AI) offers powerful capabilities for intrusion detection, anomaly detection, malware analysis, and predictive threat modeling [3], [6], [9]. This paper explores how AI techniques ranging from machine learning and deep learning to federated and reinforcement learning are being applied to strengthen IoT–cloud ecosystems against evolving cyberattacks [2], [10], [11]. The discussion covers architectural models, real-world deployments, challenges such as adversarial AI, privacy, and compliance, and emerging directions like explainable AI and quantum-safe security [13], [24], [30]. The study concludes that AI-driven cybersecurity has transformative potential but requires careful balancing of efficiency, interpretability, and resilience to ensure trust in IoT–cloud ecosystems [19], [23], [31].

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Published

2025-09-04

How to Cite

AI-Driven Cybersecurity for IoT–Cloud Ecosystems. (2025). Physical Education, Health and Social Sciences, 3(3), 63-76. https://doi.org/10.63163/jpehss.v3i3.633

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