Next Generation AI Powered Cloud Systems for Cybersecurity Healthcare Financial Analytics and Risk Management
DOI:
https://doi.org/10.21590/Keywords:
Artificial Intelligence, Cloud Computing, Cybersecurity, Healthcare Analytics, Financial Analytics, Risk Management, Machine Learning, Deep Learning, Big Data, Predictive Analytics, Data Privacy, Automation, Intelligent SystemsAbstract
The rapid evolution of artificial intelligence (AI) and cloud computing has transformed the digital landscape, enabling scalable, intelligent, and adaptive systems across multiple domains. This paper explores next-generation AI-powered cloud systems and their applications in cybersecurity, healthcare, financial analytics, and risk management. These systems leverage machine learning, deep learning, and distributed cloud architectures to process vast amounts of data in real time, enhancing decision-making, automation, and predictive capabilities. In cybersecurity, AI-driven cloud platforms enable proactive threat detection, anomaly identification, and automated response mechanisms. In healthcare, they facilitate personalized medicine, predictive diagnostics, and efficient patient data management while ensuring compliance with privacy regulations. In financial analytics, AI enhances fraud detection, algorithmic trading, and customer behavior analysis, contributing to more accurate forecasting and strategic planning. Furthermore, AI-powered risk management systems improve the identification, assessment, and mitigation of uncertainties across industries. Despite these advancements, challenges such as data privacy, ethical considerations, system reliability, and integration complexity remain critical. This paper provides a comprehensive overview of current developments, highlights interdisciplinary applications, and proposes a robust research methodology to evaluate the effectiveness of these systems, ultimately contributing to the development of resilient and intelligent cloud ecosystems.


