Intelligent AI Systems and Secure Cloud Architectures for Next Generation Digital Transformation
DOI:
https://doi.org/10.15662/IJARCST.2025.0805032Keywords:
Artificial Intelligence, Cloud Computing, Cybersecurity, Digital Transformation, Zero Trust Architecture, Federated Learning, Intelligent Systems, Edge Computing, Cloud Security, Data GovernanceAbstract
The rapid acceleration of digital transformation across industries has been driven by the convergence of intelligent artificial intelligence (AI) systems and secure cloud computing architectures. Organizations are increasingly dependent on cloud-native infrastructures to process massive volumes of data while leveraging AI for automation, predictive analytics, and decision intelligence. However, this dependency introduces critical challenges related to cybersecurity, data privacy, system scalability, and operational resilience. This paper explores the integration of intelligent AI systems with secure cloud architectures to enable next-generation digital transformation. The proposed framework emphasizes adaptive intelligence, zero-trust security models, encryption-first design, and AI-driven cloud resource optimization.
Intelligent AI systems enhance decision-making by analyzing real-time data streams, automating workflows, and enabling predictive insights across sectors such as healthcare, finance, manufacturing, and governance. Secure cloud architectures ensure that these capabilities operate within a robust security perimeter supported by identity-based access control, continuous monitoring, and automated threat detection. The convergence of these technologies enables organizations to achieve scalability, agility, and resilience while minimizing security risks.
This study also examines federated learning, edge-cloud integration, and AI-powered cybersecurity mechanisms that strengthen cloud ecosystems. The findings highlight that the fusion of intelligent AI and secure cloud infrastructure is essential for building adaptive, self-healing, and autonomous digital enterprises capable of sustaining long-term innovation and trust in a highly interconnected digital economy.
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