Scalable AI and data processing strategies for hybrid cloud environments

International Journal of Science and Research Archive 10 (03):482-492 (2021)
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Abstract

Hybrid cloud infrastructure is increasingly becoming essential to enable scalable artificial intelligence (AI) as well as data processing, and it offers organizations greater flexibility, computational capabilities, and cost efficiency. This paper discusses the strategic use of hybrid cloud environments to enhance AI-based data workflows while addressing key challenges such as latency, integration complexity, infrastructure management, and security. In-depth discussions of solutions like federated multi-cloud models, cloud-native workload automation, quantum computing, and blockchaindriven data governance are presented. Examples of real-world implementation case studies in industries including healthcare, retail, finance, and manufacturing are provided to prove the real benefit of hybrid cloud adoption. New trends like explainable AI (XAI), automated machine learning (AutoML) and federated learning are also discussed here as key enablers of future hybrid cloud expansion.

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