ISSN : 2583-2646

Integrating AI and Machine Learning in Cloud Systems for Enhanced Automation

ESP Journal of Engineering & Technology Advancements
© 2025 by ESP JETA
Volume 5  Issue 2
Year of Publication : 2025
Authors : Srinivasa Subramanyam Katreddy
:10.56472/25832646/JETA-V5I2P123

Citation:

Srinivasa Subramanyam Katreddy, 2025. "Integrating AI and Machine Learning in Cloud Systems for Enhanced Automation", ESP Journal of Engineering & Technology Advancements  5(2): 216-224.

Abstract:

The integration of AI and machine learning tools into cloud systems marks a transformative step in automation and intelligence for cloud environments. This paper explores initial methodologies for embedding AI/ML models into cloud-based infrastructures to optimize resource management, enhance data processing, and automate routine operations. The proposed approach uses containerized ML models deployed alongside scalable cloud services, enabling adaptive automation and seamless integration. Experimental studies highlight significant gains in operational efficiency, predictive analytics, and cost optimization. These findings set a foundation for advancing AI-driven cloud systems.

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Keywords:

AI Integration, Machine Learning, Cloud Automation, Predictive Analytics, Scalable Cloud Systems.